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1044 Commits

Author SHA1 Message Date
Benoit Jacob
e18e51d891 bump 2010-06-22 22:22:11 -04:00
Stuart Glaser
58fc972ed3 LU on limited-size matrices no longer allocates for temporaries. 2010-06-21 21:29:45 -07:00
Benoit Jacob
e7b6a4bcba fix bug introduced yesterday preventing vectorization of vectors when the storage order is not "the right one".
expand a little the vectorization_logic test and backport EIGEN_DEBUG_ASSIGN.
2010-06-22 09:24:07 -04:00
Benoit Jacob
eaa81c135a fix brain dead computation of the aligned bit.
When using a max-size that is fixed and not a multiple of 16 bit, we're not aligned.
2010-06-21 21:07:53 -04:00
Benoit Jacob
ad8b6c2342 fix #127: remove static keywords that had no effect anyway since the forward-declaration wasn't static,
and that would have been bad if they had taken effect.
2010-06-16 08:28:34 -04:00
Benoit Jacob
37fe67372b Added tag 2.0.13 for changeset ee499a855c 2010-06-10 08:06:38 -04:00
Benoit Jacob
ee499a855c bump version 2010-06-10 08:06:06 -04:00
Benoit Jacob
bc0ce37395 mention that that issue has been solved in GCC 4.5 2010-06-10 08:02:20 -04:00
Benoit Jacob
65c0b2a04d install the Eigen and Dense public headers !!!!! 2010-06-10 08:02:02 -04:00
Benoit Jacob
93d8d0e1b5 add unit test for bug #132 2010-06-09 20:50:18 -04:00
Benoit Jacob
501063d9e9 Fix bug #132
In the matrix-vector products, we were calling coeffRef on the vector xpr without checking it has DirectAccess.

Will add unit test (since it's in 2.0, just import the test case provided in the bug report).

Confirming that this can't happen in the devel branch, and that if we tried to call coeffRef on an xpr
without DirectAccess, that would not compile (since the DenseCoeffsBase class was introduced).
2010-06-09 19:39:05 -04:00
Gael Guennebaud
c76c8d6917 fix issue #125 2010-05-31 22:53:02 +02:00
Thomas Capricelli
0bb8688d70 sync .hgignore with tip 2010-05-26 02:37:52 +02:00
Thomas Capricelli
ea87337647 fix readcost for complex types (backport from tip) 2010-05-26 02:34:55 +02:00
Piotr Trojanek
12557fb2a2 more std:: namespace fixups for 2.0 branch 2010-05-01 09:25:36 +09:00
Benoit Jacob
8a95876825 with QCC, don't try passing --version 2010-04-29 07:58:47 -04:00
Benoit Jacob
82d7c4e1d0 forgot hg add 2010-04-26 07:54:19 -04:00
Benoit Jacob
8d4b0aae04 Fix bug #93: add platform check for how to link to the standard math library.
This allows to support QNX.
2010-04-19 11:30:46 -04:00
Gael Guennebaud
4785e27d6a fix btl compilation 2010-04-01 12:34:55 +02:00
Benoit Jacob
20b544b444 disable all alignment with QCC/QNX in eigen 2.0 2010-03-06 00:31:55 -05:00
Piotr Trojanek
135013c608 EIGEN_ALIGN std:: fixup 2010-03-04 16:38:37 +01:00
Piotr Trojanek
1625a5e3f8 fixups for clean QCC compilation (add std:: in front of size_t, memcpy, etc.) 2010-03-05 11:21:11 +01:00
Piotr Trojanek
47a61bbd80 posix_memalign check for QNX 2010-03-04 17:12:30 +01:00
Benoit Jacob
12bcfae0c5 clarify EIGEN_DONT_ALIGN docs wrt versions 2010-02-28 15:56:50 -05:00
Benoit Jacob
5f42104e0a really fix the LDLt, at the expense of letting isPositiveDefinite() always return true (it was fundamentally broken anyway, especially as in 2.0 we don't even pivot at all).
also, fix compilation
2010-02-23 18:10:31 -05:00
Benoit Jacob
6b3f81b414 precision improvement. Wtf were we using sqrt(precision) for the cutoff? Replaced by precision*biggest. 2010-02-23 16:26:39 -05:00
Gael Guennebaud
1f4b8e6a36 compilation fix in ldlt() for non matrix types
(transplanted from 608959aa6f
)
2010-02-21 10:29:19 +01:00
Benoit Jacob
e1f61b40c8 oops, this had to be done here, not at the end. 2010-02-12 09:02:25 -05:00
Benoit Jacob
f369dc873e Piotr's patch was missing many occurences of size_t. So,
using std::size_t;
This is the only way that we can ensure QCC support in the long term without having to think about it everytime.
2010-02-12 08:57:04 -05:00
Benoit Jacob
c03bca21c4 Added tag 2.0.12 for changeset ed6eb5a625 2010-02-11 21:39:46 -05:00
Benoit Jacob
ed6eb5a625 bump 2010-02-11 21:39:41 -05:00
Benoit Jacob
9488a12125 work around brain dead ICC 2010-02-11 19:32:56 -05:00
Piotr Trojanek
7b44957c4b std:: namespace fixup for more restricive compilers such as QNX's QCC 2010-02-10 22:27:35 +01:00
Hauke Heibel
743ad75595 BenchTimer backport (clock_gettime & QueryPerformanceCounter). 2010-02-03 21:55:01 +01:00
Benoit Jacob
a9eabed421 Patch by 'Wolf' from the issue tracker:
Fix bug #90, missing type cast in LU, allow to use LU with MPFR.
2010-02-02 07:06:15 -05:00
Benoit Jacob
cd34a1d351 backport bug fix by Jitse. 2010-01-28 14:00:09 -05:00
Benoit Jacob
3e963ee69d EIGEN_ENUM_MIN ---> EIGEN_SIZE_MIN 2010-01-26 20:37:57 -05:00
Benoit Jacob
6cc9dc17f2 In LU / Inverse, decouple the output type from the input type.
This has long been done in the default branch
2010-01-26 18:45:23 -05:00
Gael Guennebaud
7852a48a2f fix matrix product with EIGEN_DEFAULT_TO_ROW_MAJOR 2010-01-25 21:56:01 +01:00
Benoit Jacob
d209120180 * Introduce EIGEN_DEFAULT_TO_ROW_MAJOR tests option
---> Now only product_large fails with EIGEN_DEFAULT_TO_ROW_MAJOR.
* Fix EIGEN_NO_ASSERTION_CHECKING tests option
* Fix a crash in Tridiagonalization on row-major matrices + SSE
* Fix inverse test (numeric stability noise)
* Extend map test (see previous fixes in MapBase)
* Fix vectorization_logic test for row-major
* Disable sparse tests with EIGEN_DEFAULT_TO_ROW_MAJOR
2010-01-25 14:00:02 -05:00
Thomas Capricelli
55c0707b1d fix the script again (definitely?) + cleaning 2010-01-22 19:28:33 +01:00
Benoit Jacob
72044ca925 fix a super nasty bug: on row-major expressions that are NOT vectors but that
do have LinearAccess, the MapBase::coeff(int) and MapBase::coeffRef(int)
methods were broken.
2010-01-21 23:33:20 -05:00
Benoit Jacob
c2b8ca7493 if EIGEN_DONT_ALIGN then don't try to vectorize (was giving a #error later on). 2010-01-21 22:32:16 -05:00
Gael Guennebaud
018cb8975a fix plugin doc 2010-01-17 19:55:08 +01:00
Benoit Jacob
3ab280ce4e add missing semicolon in the example 2010-01-17 12:40:19 -05:00
Benoit Jacob
b40030753b Added tag 2.0.11 for changeset 5f73a8df20 2010-01-10 11:30:40 -05:00
Benoit Jacob
5f73a8df20 bump 2010-01-10 11:30:10 -05:00
Thomas Capricelli
8a6d5f10dc backport from tip : actually stop on compile failure 2010-01-06 17:17:40 +01:00
Benoit Jacob
ba6ed5fa5f Fix CoeffReadCost in Part: it must account for the cost of the
conditional jump. This makes Part considered an "expensive" xpr
 that must be evaluated in operations such as Product.
This fixes bug #80.
2010-01-02 13:04:04 -05:00
Benoit Jacob
e4c88c14ec clarify docs as requested on the forum 2010-01-02 12:54:55 -05:00
Benoit Jacob
74207a31fa backport the fix to bug #79, and the unit test 2010-01-02 12:45:49 -05:00
Benoit Jacob
6fd9248c09 add Intel copyright info 2009-12-15 08:43:31 -05:00
Benoit Jacob
4262117f84 backport 4x4 inverse changes:
- use cofactors
 - use Intel's SSE code in the float case
2009-12-15 08:16:48 -05:00
Gael Guennebaud
b581cb870c fix #74: sparse triangular solver for lower/row-major matrices 2009-12-14 10:20:35 +01:00
Gael Guennebaud
72fc81dd9d backport quaternion slerp precision fix 2009-12-05 18:28:17 +01:00
Gael Guennebaud
f36650b00a fix MSVC10 compilation issues 2009-12-02 19:34:37 +01:00
Benoit Jacob
8d31f58ea1 fix bug #70
Was trying to apply stupid invertibility check to top-left 2x2 corner.
2009-11-26 15:33:07 -05:00
Benoit Jacob
a161a70696 Added tag 2.0.10 for changeset 8f1ce52e76 2009-11-25 08:54:17 -05:00
Benoit Jacob
8f1ce52e76 bump 2009-11-25 08:46:42 -05:00
Benoit Jacob
268df314f1 make the inverse_4x4 test pass more consistently 2009-11-25 08:43:20 -05:00
Benoit Jacob
522022ebfc wow, restore Gael's changeset 5455d6fbe8
that I had accidentally undone in my changeset c64ca6870e
.
2009-11-25 08:31:25 -05:00
Thomas Capricelli
d048d7e712 fix bitbucket url after recent change 2009-11-24 23:08:16 +01:00
Benoit Jacob
cd3c8a9404 typo 2009-11-23 11:23:30 -05:00
Benoit Jacob
ec8f37ac75 improve precision test 2009-11-23 11:20:48 -05:00
Benoit Jacob
fc7f39980c backport improvement in 4x4 inverse precisio, and rigorous precision test 2009-11-23 10:27:10 -05:00
Gael Guennebaud
70af59c455 an attempt to fix compilation with recent MSVC 2009-11-23 10:29:40 +01:00
Benoit Jacob
f4dd399499 fix warnings 2009-11-16 14:15:47 -05:00
Benoit Jacob
153557527e backport: init-by-zero option: resize with same size must be a NOP 2009-11-16 13:47:02 -05:00
Benoit Jacob
6aad7f80ff avoid infinite loop, optimization not important, so a plain for loop is the safe way 2009-11-12 14:09:53 -05:00
Benoit Jacob
e3f6c3115a backport the initialize-by-0 option 2009-11-12 12:53:24 -05:00
Benoit Jacob
a2c838ff8f fix PowerPC platform detection 2009-11-11 10:52:00 -05:00
Thomas Capricelli
1e2f56c35a backport of b53c2fcc99
: fix install dir for *.pc

Ingmar Vanhassel <ingmar@exherbo.org>:
Packages that don't install architecture-specific files should install
their pkg-config file to datadir, not libdir.
2009-11-11 15:35:12 +01:00
Hauke Heibel
808c4e9581 Fixed the packport of 62 - Packet4f/d/i does not exist in 2.0. 2009-11-05 10:49:49 +01:00
Hauke Heibel
65331c3884 backporting3979f6d8aad001174160774b49b747430a7686b5
: fixed bug #62
2009-11-04 17:49:34 +01:00
Benoit Jacob
e158cdd61d fix Matrix::Map/MapAligned documentation, and rephrase the tutorial on Map 2009-10-31 14:45:50 -04:00
Benoit Jacob
c64ca6870e this explicit keyword can't hurt 2009-10-31 11:49:20 -04:00
Benoit Jacob
6a90f6c5f0 * default MatrixBase ctor: make it protected, make it a static assert, only do the check when debugging eigen to avoid slowing down compilation for everybody (this check is paranoiac, it's very seldom useful)
* add private MatrixBase ctors to catch cases when the user tries to construct MatrixBase objects directly
2009-10-31 11:48:33 -04:00
Gael Guennebaud
22dd13fdb9 backporting fix of #65 2009-10-29 14:26:38 +01:00
Gael Guennebaud
5455d6fbe8 backporting fix of #65 2009-10-29 14:26:00 +01:00
Benoit Jacob
de693cf34a remove extra ; 2009-10-28 10:04:13 -04:00
Benoit Jacob
21c4e0802d fix potential warning 2009-10-28 09:45:09 -04:00
Benoit Jacob
241b9d34a7 Hey, I was insomniac too ;)
This restores much of the performance benefit of Euler's method, without compromising accuracy (tested on 1e+7 matrices). Namely, my benchmark now runs in 1.5 s instead of 2.2 s. The same in the default branch runs in 1.08 s instead of 1.9 s, so the default branch benefits even more!
2009-10-28 03:50:29 -04:00
Benoit Jacob
9e15a6da2e Fix 4x4 matrix inversion. Applying Euler's trick is more tricky than what "high performance matrix inversion" websites would have you believe. Our 4x4 matrix inversion wasn't numerically stable, because in applying the Euler trick we didn't take the 2x2 block of biggest determinant. As a result, with float, we got relative errors above 1% every 1000 random matrices, and we got completely wrong results every 10000 matrices.
Note that this decreases the performance, but we're still significantly faster than the brutal cofactors approach.
2009-10-27 07:35:25 -04:00
Benoit Jacob
3d365a75cd Added tag 2.0.9 for changeset 38bc82a6f7 2009-10-24 19:38:58 -04:00
Benoit Jacob
38bc82a6f7 bump 2009-10-24 16:35:46 -04:00
Benoit Jacob
6173eb67ff really fix pkgconfig support and make install.
* mistake: was using the install dir instead of binary dir
* was also using INCLUDE_INSTALL_DIR before it was set, so on a first cmake run, the pkgconfig file was bad
2009-10-24 16:16:48 -04:00
Benoit Jacob
9f89431cea install NewStdVector 2009-10-23 19:58:37 -04:00
Benoit Jacob
79e392472a Added tag 2.0.8 for changeset e1c96f3fe0 2009-10-23 18:47:33 -04:00
Benoit Jacob
e1c96f3fe0 bump 2009-10-23 18:37:05 -04:00
Benoit Jacob
46f0fe3b4b SVD:
* implement default ctor, users were relying on the compiler generater one and reported issues on the forum
* turns out that we crash on 1x1 matrices but work on Nx1. No interest in fixing that, so just guard by assert and unit test.
2009-10-23 18:05:55 -04:00
Benoit Jacob
e17e4f3654 just this is enough 2009-10-23 17:51:32 -04:00
Benoit Jacob
2b006ae430 fix "make install"
aaargh
my shiny birthday release, it's broken already!
2009-10-23 17:47:12 -04:00
Benoit Jacob
df6923fd2b Added tag 2.0.7 for changeset 21d081c6da 2009-10-22 16:15:15 -04:00
Benoit Jacob
21d081c6da bump 2009-10-22 16:14:03 -04:00
Benoit Jacob
81fd1e9060 support gcc 3.3 2009-10-22 15:53:23 -04:00
Benoit Jacob
be8ae0d45f * CMakeLists: only pass -Wextra if it's supported (it's not on gcc 3.3)
* MapBase: put static first (fix gcc 3.3 warning)
* StdVector: add missing newline at end
2009-10-22 15:20:02 -04:00
Hauke Heibel
fc8b54c142 Code cleanup. 2009-10-22 20:06:05 +02:00
Hauke Heibel
76d578fb99 This does fix #61. See the comments in #61 for details. 2009-10-22 09:29:59 +02:00
Benoit Jacob
9af431e78e tentative fix for bug #61 2009-10-21 18:55:54 -04:00
Hauke Heibel
a4a3e511d0 Added missing resize case for m_outerSize==0. 2009-10-15 23:30:15 +02:00
Hauke Heibel
ffee27bf72 Fixed uninitialized variables in unit tests.
Fixed /W4 warning C4512 (LU was left out on purpose).
2009-10-14 08:33:36 +02:00
Benoit Jacob
5e24fbbead add assert for M>=N 2009-10-13 14:17:25 -04:00
Benoit Jacob
09364c8d05 fix compilation with gcc 3.3 2009-10-12 12:29:07 -04:00
Gael Guennebaud
3b8938ee1a backport d97d307fcf 2009-10-06 10:36:59 +02:00
Gael Guennebaud
e43d630d80 fix #10: the reallocateSparse function was half coded
(transplanted from 55de162cf6
)
2009-06-08 14:05:23 +02:00
Thomas Capricelli
eb1df142a3 backport changes in tip related to eigen_gen_docs 2009-10-04 03:38:13 +02:00
Thomas Capricelli
746d8b7ce9 update URL for adol-c (backport from tip) 2009-09-27 02:00:45 +02:00
Benoit Jacob
656c8faeb8 merge 2009-09-25 09:09:49 -04:00
Benoit Jacob
8084dbc86a copy the Memory.h file from the devel branch and remove some added trailing spaces.
This is now very harmless to do as the big change (EIGEN_ALIGN preprocessor stuff and the body of ei_aligned_malloc) was already introduced in 2.0.6.

Should address Björn's issue, and also improve FreeBSD platform detection.
2009-09-25 09:09:14 -04:00
Thomas Capricelli
79ebba4f52 clean tags... 2.0.6 was tagged three times, with two different values.
The best way to "push" a tag is to edit the .hgtags instead of using 'hg
tag xx' several times with the same value 'xx'.
2009-09-25 03:19:28 +02:00
Benoit Jacob
b362b45cff update .hgignore to ignore files created by eigen_gen_credits 2009-09-24 07:06:31 -04:00
Rhys Ulerich
c67b8b7ce0 Added pkgconfig support 2009-09-23 22:05:46 -04:00
Benoit Jacob
bcd621fcd5 Added tag 2.0.6 for changeset de88fb67d6 2009-09-23 12:11:26 -04:00
Benoit Jacob
de88fb67d6 bump that too 2009-09-23 12:11:19 -04:00
Benoit Jacob
4936720648 Added tag 2.0.6 for changeset 922e11e184 2009-09-23 12:08:22 -04:00
Benoit Jacob
922e11e184 bump 2009-09-23 12:08:16 -04:00
Benoit Jacob
8c2ace33c9 backport Rohit's vectorized quaternion product 2009-09-22 13:39:30 -04:00
Benoit Jacob
b66516e746 fix bug #42: add missing Transform::Identity() 2009-09-19 20:00:36 -04:00
Benoit Jacob
ecf64d2dc3 Allow to override EIGEN_RESTRICT, to satisfy a smart ass blogger who claims
that eigen2 owes all its performance to nonstandard restrict keyword.
well, this can also improve portability in case some compiler doesn't have __restrict.
2009-09-19 19:46:40 -04:00
Benoit Jacob
6af2c2c67a backported the following to 2.0:
* EIGEN_ALIGN and EIGEN_DONT_ALIGN and the corresponding logic in Macros.h
  (instead of using EIGEN_ARCH_WANTS_ALIGNMENT)
* The body of ei_aligned_malloc and ei_aligned_free

The reason for this backporting is that a user complained that with eigen 2.0 he got a warning at Memory.h:81 that the return value of posix_memalign was not used, and that function was declared with an attribute warn_unused_result.

Looking at this, it seemed that the body of this function was already overly complicated, and fixing this warning made it even worse, while the devel branch had a much simpler body and didn't suffer from that problem.

Then it was necessary to update ei_aligned_free too, and to backport EIGEN_ALIGN.

Inch' Allah....
2009-09-21 05:39:55 -04:00
Benoit Jacob
d0ac4fa479 explain how to get rid of it 2009-09-18 22:02:28 -04:00
Benoit Jacob
09f77b356d hg add the unit test 2009-09-16 14:29:44 -04:00
Benoit Jacob
8097487b9d backport bugfix in visitor (didn't work on rowvectors, fixed by splitting the vector case away from the matrix case) 2009-09-16 14:28:49 -04:00
Benoit Jacob
aaf1826384 backport: the first fix was the good one 2009-09-03 01:28:12 -04:00
Benoit Jacob
3590911de2 backport the fix to bug #50: compilation errors with swap 2009-09-02 17:04:34 -04:00
Benoit Jacob
21e97f07d8 update to reflect NewStdVector 2009-08-29 12:35:44 -04:00
Benoit Jacob
82df5b4a24 backport the new StdVector as NewStdVector
make StdVector be a wrapper around it if EIGEN_USE_NEW_STDVECTOR is defined
otherwise StdVector doesn't change ---> compatibility is preserved
backport unit-test
2009-08-29 12:13:52 -04:00
Benoit Jacob
35e88996c7 add missing parentheses after bug #42 2009-08-24 09:14:32 -04:00
Benoit Jacob
5dfb7204bd Added tag 2.0.5 for changeset e0cbf79e5a 2009-08-22 17:19:13 -04:00
Benoit Jacob
e0cbf79e5a bump to 2.0.5 2009-08-22 17:19:08 -04:00
Benoit Jacob
3af177058e fix nasty bug: when calling the cache friendly product, one used the product xpr flags instead of the destination flags, resulting in a transposed result when the storage orders didn't match. 2009-08-21 16:03:14 -04:00
Marcus D. Hanwell
258ea3ea02 Proper fix for linking to the Qt libraries (and others)
My initial fix was incorrect, the libraries must be quoted when being
passed to the add test macro, but must be unquoted when passed to the
target_link_libraries function.
2009-08-21 14:08:53 -04:00
Benoit Jacob
6580278e2c fix potential compilation issue 2009-08-21 12:08:59 -04:00
Benoit Jacob
dcefb66283 Fix bug #41, our resize() method didn't work with gcc 4.1 2009-08-21 11:53:04 -04:00
Benoit Jacob
9d64571963 disable fortran by default, because of bug http://public.kitware.com/Bug/view.php?id=9220 in cmake. 2009-08-21 11:48:59 -04:00
Benoit Jacob
65724def70 more useful error message about the including order 2009-08-20 12:27:01 -04:00
Benoit Jacob
7a44945a16 fix casting warning with MSVC 2009-08-18 07:41:17 -04:00
Gael Guennebaud
ed33d688e1 forgot to remove the link to the example list page 2009-08-17 18:23:21 +02:00
Gael Guennebaud
d7bf8b8581 remove the broken examplelist 2009-08-17 18:20:53 +02:00
Gael Guennebaud
a9c60954ed add EIGEN_TRANSFORM_PLUGIN 2009-08-17 09:16:04 +02:00
Gael Guennebaud
78ea8b2dbd fix #32 even though I agree this feature should be removed, or put somewhere else... 2009-08-15 22:35:33 +02:00
Benoit Jacob
d4e25e5acf in the 2.0 branch, that stuff isn't wanted anymore 2009-08-14 22:08:14 -04:00
Thomas Capricelli
36b324fe7b backport from main branch : basic .hgignore file 2009-08-15 03:43:40 +02:00
Thomas Capricelli
d37de5db30 todo list for the script eigen_gen_docs 2009-08-15 03:42:04 +02:00
Thomas Capricelli
456b6abed5 backport from the main branch : this script is used to create and upload
the documentation to the website
2009-08-15 03:39:08 +02:00
Gael Guennebaud
4a50ee8c21 fix issue #36 (missing return *this in Rotation2D
(transplanted from a4f6642518
)
2009-08-11 15:11:47 +02:00
Gael Guennebaud
c9f7a19053 make LU::solve() not to crash when rank=0
(transplanted from fe813911f2
)
2009-08-09 00:06:53 +02:00
Gael Guennebaud
47973c4963 set EIGEN_STACK_ALLOCATION_LIMIT as in the devel branch 2009-08-08 10:45:57 +02:00
Marcus D. Hanwell
65487176e3 Improved quoting of tests when added to the build.
This fixes an issue where multiple versions of the Qt libraries are
available, if the Qt library variable is not quoted an error was
generated as only the first part 'optimized' was used by the create test
macro.
2009-08-01 13:43:06 -04:00
Benoit Jacob
d28fae5bdf Added tag 2.0.4 for changeset d4f9515ca0 2009-08-01 00:58:16 +02:00
Benoit Jacob
d4f9515ca0 bump to 2.0.4 2009-08-01 00:58:09 +02:00
Gael Guennebaud
0361e8a7aa no more workaround, the -r option of clone works with branch name too 2009-07-31 17:24:57 +02:00
Gael Guennebaud
b7035b67b7 workaround to make the testsuite ctest script to work with the 2.0 branch, but that's only for unix systems 2009-07-31 17:07:43 +02:00
Gael Guennebaud
a1eae7ad00 update the ctest script for the 2.0 branch 2009-07-31 16:27:31 +02:00
Gael Guennebaud
30b605bef8 update the CTestConfig file to upload 2.0 reports to a different cdash project 2009-07-31 16:15:37 +02:00
Benoit Jacob
990615e884 backport 126284d08b
.
2009-07-31 13:30:12 +02:00
Gael Guennebaud
841ec959e5 s/std::atan2/ei_atan2 2009-07-31 10:08:23 +02:00
Manuel Yguel
2dce3311f7 add missing ei_atan2 without painfull warnings 2009-07-31 09:21:31 +02:00
Anthony Truchet
8eab0bccbf Bugfix in the Qt's QTransform and QMatrix support in Geometry/Transform.h
Function 'Transform<Scalar,Dim>::toQMatrix(void) const' :
  - 'other' was a hasty copy/paste to be replaced my m_matrix
	- 'coeffRef' was incorect for const Transform

Function 'Transform<Scalar,Dim>::toQTransform(void) const' :
	- return type was incorrect 'QMatrix' to be replaced by 'QTransform'
	- same bigfixes as in the previous point
2009-07-30 10:09:41 +02:00
Gael Guennebaud
f5a167b3e7 apply patch from Hauke Heibel cleaning overloaded operator new/detete 2009-05-07 20:33:48 +00:00
Gael Guennebaud
f845d15192 enable our own ctest dashboard 2009-07-20 23:55:43 +02:00
Gael Guennebaud
7ae2bc6109 compilation fix
(transplanted from c10b919edb
)
2009-07-20 10:56:03 +02:00
Gael Guennebaud
654fea39dc bugfix in operator*= (matrix product)
(transplanted from b3ad796d40
)
2009-07-20 10:44:07 +02:00
Gael Guennebaud
fa44566305 bugfix for a = a * b; when a has to be resized
(transplanted from a551107cce
)
2009-07-20 10:35:47 +02:00
Gael Guennebaud
8302ce6cdc remove the special version of ei_pow(int,int) for gcc >= 4.3 that was stupid
because gcc convert it to a pow(double,double)
2009-07-16 09:10:34 +02:00
Gael Guennebaud
c6eb9ef60e backporting bugfix in Quaternion::setFromTwoVectors() 2009-07-06 09:05:48 +02:00
Benoit Jacob
9bff5e4f67 some docs improvements 2009-07-05 01:52:42 +02:00
Gael Guennebaud
5f350c51b3 update the stack alignment doc 2009-06-22 10:46:03 +02:00
Benoit Jacob
df0b107243 Added tag 2.0.3 for changeset 55bf82c923 2009-06-21 17:46:35 +02:00
Benoit Jacob
55bf82c923 backport improvements to transpose documentation 2009-06-21 17:41:55 +02:00
Benoit Jacob
0b341486db document the "wrong stack alignment" issue 2009-06-21 17:34:17 +02:00
Benoit Jacob
9db0038c42 add Eigen/Eigen 2009-06-19 20:49:02 +02:00
Benoit Jacob
89d7ba0be0 add Dense header 2009-06-19 19:11:50 +02:00
Benoit Jacob
c3bab0edb7 fix #12, but the fix is not optimal, householder transformations need to be rethought in the complex case, see:
http://download.tuxfamily.org/eigen/complex-householder.pdf
2009-06-19 18:50:22 +02:00
Benoit Jacob
a1a26f45d3 fix #14: make llt::solve() and also ldlt::solve() work with uninitialized result 2009-06-19 17:01:32 +02:00
Benoit Jacob
f5ae3a4b5a result of our experiments with LU tuning: implement very simple formula, that
turns out to be similar to Higham's formula already in use in LDLt
2009-05-07 20:35:26 +00:00
Gael Guennebaud
8817798273 backporting accuracy fixes in QR module 2009-06-11 16:24:54 +02:00
Gael Guennebaud
287c7b8818 backporting LLT accuracy fixes 2009-06-11 16:18:37 +02:00
Benoit Jacob
5ec4922349 forgot to add the unsupported IterativeSolvers module needed by Step 2009-06-04 18:40:16 +02:00
Benoit Jacob
5a18f7545d this is essentially backporting all the changes made in the Sparse module up to KDE SVN revision r945600, aka changeset:
df9dfa1455


This is what is needed to make Step (in KDE/kdeedu) build.

The rest of Eigen (outside of Sparse) is unaffected except for a few trivial changes that were needed.

calling this 2.0.3, will tag if no problem.
2009-06-04 18:02:20 +02:00
Benoit Jacob
12570d97ce Added tag 2.0.2 for changeset 3fc53d2564 2009-05-22 15:41:27 +02:00
Benoit Jacob
3fc53d2564 bump version number 2009-05-22 15:41:22 +02:00
Benoit Jacob
9ff0baa680 the EIGEN_CAT macro is needed for the latest change in CacheFriendlyProduct 2009-05-22 15:03:40 +02:00
Gael Guennebaud
1c4b4e136b backporting warning fixes in cache friendly product 2009-05-19 02:20:04 +02:00
Thomas Capricelli
57934b9c30 backport ddb6e96d48
: fix warnings with recent gcc(4.3.3)
2009-05-19 00:05:33 +02:00
Thomas Capricelli
52aed8ac58 Remove this old file. It was stalling in history because of a bug in
svn, which did not prevent the commit (svn r722564) to 'svn copy' a
directory called 'Core/' on top of an existing file 'Core'

see http://websvn.kde.org/?view=rev&revision=722564
or
http://www.freehackers.org/thomas/2009/05/18/feedback-about-converting-eigen2-to-mercurial/
2009-05-18 15:20:56 +02:00
Benoit Jacob
1304e43f15 backport 964558: add missing setZero (etc) overloads that were mentioned in the tutorial
this should be safe as it's covered by the updated unit-test
2009-05-06 21:42:31 +00:00
Gael Guennebaud
e47593fb28 backporting 964177 (gcc 3.3 fix) 2009-05-06 09:41:36 +00:00
Gael Guennebaud
0104c34b7d backporting r964165 (gcc 3.3 fixes) 2009-05-06 09:40:41 +00:00
Benoit Jacob
f82d9bdf9a backport r963940, reimplement linearRegression on top of the better fitHyperplane 2009-05-05 17:16:45 +00:00
Benoit Jacob
c9edcc5acd backport 963931: fix linearRegression 2009-05-05 16:52:10 +00:00
Benoit Jacob
487edbf325 backport 963281, fix msvc detection on win64 2009-05-04 12:14:37 +00:00
Benoit Jacob
a29a390afa backport 958657: fix posix_memalign detection (Ross Smith) 2009-04-24 13:28:25 +00:00
Benoit Jacob
a16d18a632 update version number to 2.0.1 2009-04-14 14:32:00 +00:00
Benoit Jacob
3c3653b9de merge 953719: fix 4x4 inverse 2009-04-14 13:43:21 +00:00
Gael Guennebaud
c15842c374 backporting rev 951682 (compilation fix in aligned allocator) 2009-04-09 21:23:25 +00:00
Benoit Jacob
3c90fc2e64 patch by Hauke Heibel: compilation fix with VS 9 2009-04-09 12:05:36 +00:00
Benoit Jacob
d9c9508a12 backport 947492 -- fix static assertion / patch by Markus Moll 2009-03-31 16:08:06 +00:00
Gael Guennebaud
d6bb34fa5a backporting various bug fixes related to MapBase/Map/Block and new
StdVector workaround because the previous was really too limited. I hope
it is not a too big change for a "stable" branch.
2009-03-24 08:20:43 +00:00
Gael Guennebaud
e5b5ab53b8 backporting bugfix in SliceVectorization 2009-03-07 15:12:42 +00:00
Gael Guennebaud
f2829c1358 backporting rev 918446: fix MSVC internal compilation error 2009-03-06 22:18:26 +00:00
Benoit Jacob
d38504a4c8 backport 921254-921261 to the branch: disable alignment altogether on exotic platforms 2009-02-16 16:29:33 +00:00
Gael Guennebaud
95e4508b04 backporting rev925153 (bugfix in MapBase::coeffRef(int) ) 2009-02-12 15:32:32 +00:00
Benoit Jacob
b064b5e68e forgot to update version number 2009-02-02 16:18:42 +00:00
Benoit Jacob
f7df9f92ff backport 919961 and 920175 2009-02-02 14:26:40 +00:00
Benoit Jacob
d2dcca52a3 backport 920106: BSD's don't have aligned malloc 2009-02-02 13:24:17 +00:00
Gael Guennebaud
7408e923a7 backporting commit 918468 (fix MSVC internal error) 2009-01-29 23:14:51 +00:00
Gael Guennebaud
18ca438a62 backport r917694 (Patch from Frank fixing stupid MSVC internal crash) 2009-01-28 15:18:28 +00:00
Benoit Jacob
d286300362 backport unit-tests fixes 2009-01-27 20:56:47 +00:00
Benoit Jacob
02ba4e2f54 backport compilation fix 2009-01-27 17:46:02 +00:00
Benoit Jacob
2eef21a8d5 branch eigen 2.0 2009-01-27 17:26:44 +00:00
Gael Guennebaud
bea1737a5a FindUmfPack: add AMD and COLAMD libraries only if they are found 2009-01-27 16:22:08 +00:00
Gael Guennebaud
4b09865b8f check GSL version in cmake files 2009-01-27 16:04:16 +00:00
Benoit Jacob
f6aa60bcf3 centralize those static asserts more upstream, reduces duplication and ensures they can't be bypassed (e.g.
until now it was possible to bypass the static assert on sizes)
2009-01-27 15:40:05 +00:00
Benoit Jacob
8d236e74a1 add a missing static assertion on the scalar types 2009-01-27 15:29:07 +00:00
Benoit Jacob
046a84c0ef fix doc for norm() and squaredNorm(): these are not only for vectors 2009-01-27 14:05:20 +00:00
Gael Guennebaud
d7f60257dd small fix related to GSL cmake stuff 2009-01-26 20:00:41 +00:00
Benoit Jacob
874ff5a0b4 fix msvc warnings (useful ones again) reported by gael on CDash 2009-01-26 17:56:04 +00:00
Benoit Jacob
062d6bd47a documentation update/improvement 2009-01-26 16:22:40 +00:00
Benoit Jacob
b05c5dd1be compute the rank on the fly rather than at the end, and stop early
in the case of non-full rank (so big optimization in case the rank is low)
2009-01-26 16:14:20 +00:00
Gael Guennebaud
9ea1050281 fix MatrixNase::fillrand bug 2009-01-26 14:01:16 +00:00
Benoit Jacob
2776a3197b make these functions inline, thanks to Mek 2009-01-26 13:59:52 +00:00
Benoit Jacob
670de11dca forgot to backport an update to Mainpage.dox 2009-01-26 13:55:58 +00:00
Benoit Jacob
a79deafc6d * mark Geometry as experimental
* install QtAlignedMalloc
* finish the renaming Regression->LeastSquares
* install LeastSquares directory (!!!)
* misc dox fixes
2009-01-26 13:53:43 +00:00
Gael Guennebaud
65e4ae4ff4 disable unordered_map for ICC 2009-01-26 12:47:58 +00:00
Benoit Jacob
00d7f8e567 * solveTriangularInPlace(): take a const ref and const_cast it, to allow passing temporary xprs.
* improvements, simplifications in LU::solve()
* remove remnant of old norm2()
2009-01-25 23:46:51 +00:00
Benoit Jacob
414ee1db4b Optimization in LU::solve: when rows<=cols, no need to compute the L matrix
Remove matrixL() and matrixU() methods: they were tricky, returning a Part,
and matrixL() was useless for non-square LU. Also they were untested. This is
the occasion to simplify the docs (class_LU.cpp) removing the most confusing part.
I think that it's better to let the user do his own cooking with Part's.
2009-01-25 16:33:06 +00:00
Gael Guennebaud
56c7e164f0 add partial count redux (adapted patch from Ricard Marxer) 2009-01-24 15:22:44 +00:00
Gael Guennebaud
81b0ab53cf add fill() function as an alias for setConstant 2009-01-24 10:52:18 +00:00
Gael Guennebaud
9849931500 eventually it turns out that our current
EIGEN_WORK_AROUND_QT_BUG_CALLING_WRONG_OPERATOR_NEW_FIXED_IN_QT_4_5
is the right way to go for allowing placement new on a class having
overloaded operator new. Qt 4.5 won't add the :: prefix. (I still do not
understand how you can distinghish a placement new from an overloaded
operator new taking an allocator as argument...)
2009-01-23 16:31:03 +00:00
Gael Guennebaud
e7c48fac9b sparse module: makes -= and += operator working
Question 1: why are *=scalar and /=scalar working right away ?
Same weirdness in DynamicSparseMatrix where operators += and -= work wihout
  having to redefine them ???
2009-01-23 13:59:32 +00:00
Gael Guennebaud
899e2ada15 very minor update in test/CMakeLists.txt 2009-01-23 13:17:57 +00:00
Gael Guennebaud
6a722602e6 fix a few remaining warnings
and fix commainitializer unit test with MSVC
2009-01-23 12:26:32 +00:00
Gael Guennebaud
d3dcb04f2d * fix compilation with gcc 3.4
* add an option to disable Qt testing
2009-01-23 09:50:16 +00:00
Benoit Jacob
291ee89684 add computeRotationScaling and computeScalingRotation in SVD
add convenience functions in Transform
reimplement Transform::rotation() to use that
add unit-test
2009-01-22 16:39:08 +00:00
Benoit Jacob
876b1fb842 add polar decomposition on both sides, in SVD, with test 2009-01-22 15:00:47 +00:00
Gael Guennebaud
32754d806d I hope this one fix the issue with MSVC and sparse module 2009-01-22 13:59:28 +00:00
Benoit Jacob
9e3c73110a fix a bunch of warnings (actual issues) reported by Frank 2009-01-22 00:09:34 +00:00
Gael Guennebaud
4225b7bf57 perhaps fix a compilation issue in the sparse module with MSVC 2009-01-21 21:02:55 +00:00
Benoit Jacob
7ccea9222c fix warnings 2009-01-21 20:06:16 +00:00
Gael Guennebaud
52cf07d266 sparse module:
* add row(i), col(i) functions
* add prune() function to remove small coefficients
2009-01-21 18:46:04 +00:00
Gael Guennebaud
25f1658fce update sparse matrix tutorial (far to be satisfactory yet) 2009-01-21 17:44:58 +00:00
Benoit Jacob
5f43a42ee7 * remove set(), revert to old behavior where = resizes
* try to be clever in matrix ctors and operator=: be lazy when we can, always allow
  to copy rowvector into columnvector, check the template parameters,
  try to factor the code better
* add missing copy ctor in UnalignedType
* fix bug in the traits of DiagonalProduct
* renaming: EIGEN_TUNE_FOR_CPU_CACHE_SIZE
* update the dox a little
2009-01-21 17:10:23 +00:00
Marijn Kruisselbrink
a5fbf27843 don't claim googlehash is there when only qt4 has been found :) 2009-01-20 22:15:51 +00:00
Benoit Jacob
294682a25a lu test:don't fail 2009-01-20 19:06:39 +00:00
Gael Guennebaud
f645d1f911 * complete the support of QVector via a QtAlignedMalloc header
* add a unit test for QVector which shows the issue with QVector::fill
2009-01-20 16:50:47 +00:00
Gael Guennebaud
8973d12cda * QR: add a rank() method and improve the accuracy of the rank
* computation
* Array: add a count() method and rename AllAndAny.h file to
  BooleanRedux.h
2009-01-20 16:37:52 +00:00
Benoit Jacob
81cb887baf fix bug in the computation of rank
very difficult to catch in unit-tests because this is very noisy
2009-01-20 16:21:56 +00:00
Gael Guennebaud
3134d5290b forgot to include the update of the qr test 2009-01-20 10:38:56 +00:00
Gael Guennebaud
3e5b3a33fa quick bugfix in QR::isFullRank() (not 100% sure about the reference value
for the comparison to 0)
2009-01-20 10:37:39 +00:00
Marijn Kruisselbrink
8690ba923c I assume these files where supposed to be installed 2009-01-19 22:58:15 +00:00
Gael Guennebaud
36c478cd6e optimize A * v product for A sparse and row major 2009-01-19 22:29:28 +00:00
Gael Guennebaud
178858f1bd add a flexible sparse matrix class designed for fast matrix assembly 2009-01-19 15:20:45 +00:00
Benoit Jacob
385fd3d918 * clarify the situation with experimental parts
* remove all what was marked deprecated
2009-01-19 15:02:24 +00:00
Benoit Jacob
dcaa58744e #error if min or max is defined 2009-01-19 13:23:41 +00:00
Gael Guennebaud
9ae03f4589 add a compilation test in FindGoogleHash.cmake to catch configuration
issues when multiple compilers are used on the same system.
2009-01-19 08:51:06 +00:00
Gael Guennebaud
708fa36750 revert bad commit 2009-01-19 08:21:32 +00:00
Gael Guennebaud
d58bb54e7f add a smart realloc algorithm when filling a sparse matrix 2009-01-18 18:00:19 +00:00
Gael Guennebaud
0c7974dd4d bugfix in Map by Keir Mierle 2009-01-18 09:53:06 +00:00
Gael Guennebaud
22792c696f add ublas vector of vector in sparse setter bench 2009-01-17 16:24:49 +00:00
Benoit Jacob
61b85b1436 update documentation (thanks Kenneth) 2009-01-17 14:24:09 +00:00
Gael Guennebaud
cc6c4d807b add a sparse setter bench 2009-01-17 14:05:01 +00:00
Gael Guennebaud
c5020c6e8e patch from Ricard Marxer: add doc example for select() 2009-01-17 09:59:32 +00:00
Gael Guennebaud
1eec38dc36 Rewrite the vectorized meta unroller of sum to reduce instruction
dependency => significant speed up
2009-01-17 09:48:58 +00:00
Benoit Jacob
e556e647f4 typo found by Ben Axelrod
CCMAIL:baxelrod@coroware.com
2009-01-17 00:53:38 +00:00
Gael Guennebaud
86a192681e * Started a tutorial page for sparse matrix.
* Updated Mainpage.dox's directives used by kde's scripts
2009-01-16 17:20:12 +00:00
Gael Guennebaud
48df9ed715 Add a data() function in Map and Block 2009-01-16 10:25:53 +00:00
Gael Guennebaud
ccdcebcf03 Sparse module: add support for sparse selfadjoint * dense 2009-01-15 18:52:14 +00:00
Gael Guennebaud
9a4b7998cf Sparse module: add row/col methods to the iterators 2009-01-15 14:16:41 +00:00
Gael Guennebaud
87241089e1 Sparse module: bugfix in SparseMatrix::resize(), now the indices are
correctly initialized to 0.
2009-01-15 13:30:50 +00:00
Gael Guennebaud
96e1e582ff Sparse module:
* add a MappedSparseMatrix class (like Eigen::Map but for sparse
  matrices)
* rename SparseArray to CompressedStorage
2009-01-15 12:52:59 +00:00
Gael Guennebaud
4f33fbfc07 two compilation fixes 2009-01-15 08:26:40 +00:00
Gael Guennebaud
2d53466fa9 Sparse module:
* improved performance of mat*=scalar
* bug fix in cwise*
2009-01-14 21:27:54 +00:00
Gael Guennebaud
f5741d4277 add a sparse * dense_vector bench 2009-01-14 18:27:17 +00:00
Gael Guennebaud
0b606dcccd Add support for sparse * dense and dense * sparse matrix/vector products 2009-01-14 17:41:55 +00:00
Gael Guennebaud
c4c70669d1 Big rewrite in the Sparse module: SparseMatrixBase no longer inherits MatrixBase.
That means a lot of features which were available for sparse matrices
via the dense (and super slow) implemention are no longer available.
All features which make sense for sparse matrices (aka can be implemented efficiently) will be
implemented soon, but don't expect to see an API as rich as for the dense path.
Other changes:
* no block(), row(), col() anymore.
* instead use .innerVector() to get a col or row vector of a matrix.
* .segment(), start(), end() will be back soon, not sure for block()
* faster cwise product
2009-01-14 14:24:10 +00:00
Gael Guennebaud
ee87f5ee49 s/EIGEN_WORK_DIRECTORY/EIGEN_WORK_DIR in testsuite script 2009-01-14 10:43:36 +00:00
Benoit Jacob
a5632fe1db add EIGEN_FUNCTORS_PLUGIN 2009-01-13 16:27:26 +00:00
Benoit Jacob
e8e1084267 add EIGEN_CWISE_PLUGIN support for extending class Cwise 2009-01-13 15:31:06 +00:00
Gael Guennebaud
ec0b2f900c fix a couple of doxygen issues 2009-01-13 08:30:17 +00:00
Benoit Jacob
b179f8e1a4 add NetBSD to the list of OSes on which malloc is guaranteed to be 16
byte aligned, after discussion with Mark Davies.

CCMAIL: mark@ecs.vuw.ac.nz
2009-01-12 22:39:26 +00:00
Gael Guennebaud
62d01d3cf4 hm it seems cmake does not understand CYGWIN (=> UNIX) 2009-01-12 19:39:50 +00:00
Gael Guennebaud
534dc60672 improved a bit the testsuite script 2009-01-12 18:10:41 +00:00
Benoit Jacob
38d916d50f just a stub for the householder stuff we did with keir yesterday... 2009-01-12 16:56:11 +00:00
Benoit Jacob
24fd14dab6 * minor dox tweaks
* pretext to bump to beta6
2009-01-12 16:14:13 +00:00
Benoit Jacob
4d44ca226e * make std::vector specializations also for Transform and for Quaternion
* update test_stdvector
* Quaternion() does nothing (instead of bug)
* update test_geometry
* some renaming
2009-01-12 16:06:04 +00:00
Gael Guennebaud
b26e12abcf make ei_traist<Select> honors nested types 2009-01-12 15:55:56 +00:00
Gael Guennebaud
a7554023a4 bugfix in ei_unaligned_type copy ctor 2009-01-12 15:51:49 +00:00
Gael Guennebaud
9d97c06d9d fix a warning in test/alignedbox 2009-01-12 15:29:51 +00:00
Gael Guennebaud
1fc17c4792 remove stupid output in test/meta 2009-01-12 15:27:25 +00:00
Gael Guennebaud
6efaece8ce disable/enable msvc headers are allowed to be included multiple times 2009-01-12 14:46:11 +00:00
Benoit Jacob
294f5f16dd muuuch improved documentation for the unaligned array assert.
also split into several pages for better reusability (more generally useful than
just for this assert)
2009-01-12 14:41:12 +00:00
Gael Guennebaud
f86818b5a6 bug fix in ei_stack_free 2009-01-12 14:20:21 +00:00
Benoit Jacob
336ad58213 * move cwise *= and /= to Core (like * and /)
* tidy the StdVector module
* fix warnings (especially a | instead of ||) in stdvector test
2009-01-12 13:41:40 +00:00
Gael Guennebaud
af5034b3c0 add a clean configuration summary for the unit tests (useful to analyze the dashboards) 2009-01-12 13:40:02 +00:00
Gael Guennebaud
7f881e814f another warning fix 2009-01-12 13:01:31 +00:00
Gael Guennebaud
a4252584ed bugfix in ei_handmade_aligned_free for null pointers 2009-01-12 12:54:32 +00:00
Gael Guennebaud
b365f443a2 make the testsuite works on windows with nmake 2009-01-12 12:53:41 +00:00
Gael Guennebaud
484ed3bbe2 fix a warning in test/sparse.h 2009-01-12 12:52:36 +00:00
Gael Guennebaud
92959aa5f3 add the possiblity to disable Fortran (workaround cmake's bug 2009-01-12 12:51:40 +00:00
Gael Guennebaud
2db5888253 update testsuite script 2009-01-12 11:55:52 +00:00
Gael Guennebaud
f268e79709 simplify some ei_traits<> using inheritance
(less loc and slight compilation speed up)
2009-01-11 22:03:40 +00:00
Gael Guennebaud
9e8f437a6f extend stdvector test with more push_back... 2009-01-11 21:59:04 +00:00
Benoit Jacob
824b75f182 forgot to commit updated test 2009-01-11 21:04:23 +00:00
Benoit Jacob
a30b498ab4 add cwise operator *= and /=.
Keir says hi!!
2009-01-11 20:48:56 +00:00
James Richard Tyrer
28e15574df updating FindEigen2.cmake for proper search order 2009-01-11 16:18:59 +00:00
Armin Berres
6c84b03d77 add missing newline at EOF 2009-01-11 13:32:55 +00:00
Benoit Jacob
4361cb8913 EIGEN_NO_MALLOC must also block traditional unaligned malloc 2009-01-10 14:24:55 +00:00
Benoit Jacob
50ad8b9010 fix potential compilation issue on MSVC + no vectorization 2009-01-10 14:10:40 +00:00
Benoit Jacob
0c1ef2f4c6 make the std::vector fix work also with dynamic size Eigen objects, e.g.
std::vector<VectorXd>
update unit test
2009-01-10 13:10:23 +00:00
Benoit Jacob
3efe6e4176 remove ei_new_allocator
remove corresponding part of test_dynalloc
2009-01-10 02:50:09 +00:00
Benoit Jacob
335d3bcf05 Based on code + help from Alex Stapleton:
*Add Eigen/StdVector header.
Including it #includes<vector> and "Core" and generates a partial
specialization of std::vector<T> for T=Eigen::Matrix<...>
that will work even with vectorizable fixed-size Eigen types
(working around a design issue in the c++ STL)
*Add unit-test

CCMAIL: alex.stapleton@gmail.com
2009-01-09 23:26:45 +00:00
Benoit Jacob
5052d3659b oops, fix compilation (sorry for all that noise!) 2009-01-09 21:43:46 +00:00
Benoit Jacob
5bef59e371 (previous commit was bad) 2009-01-09 21:32:44 +00:00
Benoit Jacob
265ab86005 overloaded operator delete should call ei_conditinal_aligned_free, not
ei_aligned_free
2009-01-09 21:28:53 +00:00
Benoit Jacob
b3d580dec7 ei_aligned_delete was running through the various paths in the wrong
order
2009-01-09 20:57:06 +00:00
Benoit Jacob
fd831d5a12 * implement handmade aligned malloc, fast but always wastes 16 bytes of memory.
only used as fallback for now, needs benchmarking.
  also notice that some malloc() impls do waste memory to keep track of alignment
  and other stuff (check msdn's page on malloc).
* expand test_dynalloc to cover low level aligned alloc funcs. Remove the old
  #ifdef EIGEN_VECTORIZE...
* rewrite the logic choosing an aligned alloc, some new stuff:
  * malloc() already aligned on freebsd and windows x64 (plus apple already)
  * _mm_malloc() used only if EIGEN_VECTORIZE
  * posix_memalign: correct detection according to man page (not necessarily
    linux specific), don't attempt to declare it if the platform didn't declare it
    (there had to be a reason why it didn't declare it, right?)
2009-01-09 14:56:44 +00:00
Kenneth Frank Riddile
f52a9e5315 * Added aligned_allocator for using 16-byte aligned types with STL containers. There is still a compile-time problem with STL containers that have a standard-conformant resize() method, but this should resolve the original user issue which was storing aligned objects in a std::map. 2009-01-09 00:55:53 +00:00
Benoit Jacob
003d0ce03e add missing inline keywords (compilation error) spotted by timvdm 2009-01-08 20:20:11 +00:00
Gael Guennebaud
208b273106 change the day switch time to 5:00 UTC 2009-01-08 18:45:26 +00:00
Gael Guennebaud
b315f4c359 add a ctest testsuite.cmake script to simplify the generation of nightly builds 2009-01-08 18:38:58 +00:00
Benoit Jacob
51aa62a5d4 add EIGEN_WORK_AROUND_QT_BUG_CALLING_WRONG_OPERATOR_NEW_FIXED_IN_QT_4_5
an ugly hack that allows people to do QVector<Vector4f> with Qt <= 4.4
the Qt bug this is working around is fixed by Gael in Qt 4.5
2009-01-08 16:03:24 +00:00
Benoit Jacob
eb7dcbbfce EIGEN_MAKE_ALIGNED_OPERATOR_NEW didn't actually need to get the class
name as parameter
2009-01-08 15:37:13 +00:00
Benoit Jacob
1d52bd4cad the big memory changes. the most important changes are:
ei_aligned_malloc now really behaves like a malloc
 (untyped, doesn't call ctor)
ei_aligned_new is the typed variant calling ctor
EIGEN_MAKE_ALIGNED_OPERATOR_NEW now takes the class name as parameter
2009-01-08 15:20:21 +00:00
Benoit Jacob
e2d2a7d222 fix a bug -- bad read found by valgrind 2009-01-08 14:23:30 +00:00
Gael Guennebaud
af27fb7590 Add cdash.org support:
* the dashboard is there: http://my.cdash.org/index.php?project=Eigen
* now you can run the tests from the top build dir
  and submit report like that (from the top build dir):
  ctest -D Experimental
* todo:
 - add some nighlty builds (I'll add a few on my computer)
 - add valgrind memory checks, performances tests, compilation time tests, etc.
2009-01-08 11:53:21 +00:00
Gael Guennebaud
8d3469ca44 add BLAS dependency in FindSuperLU.cmake 2009-01-08 11:27:02 +00:00
Gael Guennebaud
4432cf8ca3 bugfix in sum 2009-01-08 10:36:54 +00:00
Gael Guennebaud
cb71dc4bbf Add a vectorization_logic unit test for assign and sum.
Need to add dot and more tests, but it seems I've already
found some room for improvement in sum.
2009-01-07 22:20:03 +00:00
Gael Guennebaud
709e903335 Sparse module:
* extend unit tests
* add support for generic sum reduction and dot product
* optimize the cwise()* : this is a special case of CwiseBinaryOp where
  we only have to process the coeffs which are not null for *both* matrices.
  Perhaps there exist some other binary operations like that ?
2009-01-07 17:01:57 +00:00
Kenneth Frank Riddile
7078cfaeaa * re-enabled deprecation warning on msvc now that eigen isn't using functions microsoft deems deprecated 2009-01-07 16:59:43 +00:00
Gael Guennebaud
336f0a8486 fine tuning in dot() and sum(), and prepare for the sparse versions... 2009-01-07 16:58:17 +00:00
Gael Guennebaud
6b9d647fc2 add custom implementation of hypot 2009-01-07 16:53:09 +00:00
Kenneth Frank Riddile
3e90940189 * disabled deprecation warning under msvc that was being triggered due to microsoft deprecating portable functions in favor of non-portable ones ( ex: hypot() deprecated in favor of _hypot() ) 2009-01-07 16:50:35 +00:00
Gael Guennebaud
8cea5f6b31 remove non standard hypotf function call 2009-01-07 16:24:27 +00:00
Gael Guennebaud
94efa16187 more Scalar conversions fixes 2009-01-07 10:22:46 +00:00
Gael Guennebaud
ac9d805c2f two scalar conversion fixes 2009-01-07 09:47:16 +00:00
Benoit Jacob
2db434265b remove the Matrix_ prefix 2009-01-06 18:07:16 +00:00
Armin Berres
8e888a45d0 call methods from the eigen namespace with prepended Eigen:: in define 2009-01-06 11:20:36 +00:00
Kenneth Frank Riddile
6736e52d25 * suppressed some minor warnings 2009-01-06 04:38:00 +00:00
Benoit Jacob
1c29d70312 * introduce macros to replace inheritance for operator new overloading
(former solution still available and tested)
  This plays much better with classes that already have base classes --
  don't force the user to mess with multiple inheritance, which gave
  much trouble with MSVC.
* Expand the unaligned assert dox page
* Minor fixes in the lazy evaluation dox page
2009-01-06 03:16:50 +00:00
Benoit Jacob
e71de20f16 ...so the placement new is really trivial:) 2009-01-05 20:06:52 +00:00
Benoit Jacob
1eec8488a2 oops, placement new should take a void* 2009-01-05 19:56:32 +00:00
Benoit Jacob
9dcde48980 we also had to overload the placement new... issue uncovered by Tim when
doing QVector<Vector3d>...
2009-01-05 19:49:07 +00:00
Benoit Jacob
215ce5bdc1 forgot to install the LeastSquares header 2009-01-05 19:12:35 +00:00
Benoit Jacob
10f9478f35 release beta5, fix a doc typo 2009-01-05 19:00:10 +00:00
Benoit Jacob
9c8a653c0b gaaaaaaaaaaaaaaaaaah
can't believe that 3 people wasted so much time because of a missing &
!!!!!
and this time MSVC didn't catch it so it was really copying the vector
on the stack at an unaligned location!
2009-01-05 18:33:39 +00:00
Benoit Jacob
8551505436 problem solved, we really want public inheritance and it is only
automatic when the _child_ class is a struct.
2009-01-05 18:21:44 +00:00
Benoit Jacob
1b88042880 the empty base class optimization is not standard. Most compilers implement a basic form of it; however MSVC won't implement it if there is more than one empty base class.
For that reason, we shouldn't give Matrix two empty base classes, since sizeof(Matrix) must be optimal.
So we overload operator new and delete manually rather than inheriting an empty struct for doing that.
2009-01-05 16:46:19 +00:00
Benoit Jacob
7db3f2f72a *fix compilation with MSVC 2005 in the Transform::construct_from_matrix
*fix warnings with MSVC 2005: converting M_PI to float gives loss-of-precision warnings
2009-01-05 14:47:38 +00:00
Armin Berres
dae7f065d4 didn't meant to commit the fortran check. but anyway, unfortunately it doesn't work the way iot should. the test fails and cmake will terminate if it doesn't find a fortran compiler 2009-01-05 14:40:27 +00:00
Armin Berres
ab660a4d29 inherit from ei_with_aligned_operator_new even with disabled vectorization 2009-01-05 14:35:07 +00:00
Benoit Jacob
986f301233 *add PartialRedux::cross() with unit test
*add transform-from-matrices test
*undo an unwanted change in Matrix
2009-01-05 14:26:34 +00:00
Benoit Jacob
d316d4f393 fix compilation on apple: _mm_malloc was undefined. the fix is to just use malloc since on apple it already returns aligned ptrs 2009-01-05 13:15:27 +00:00
Benoit Jacob
e1ee876daa fix segfault due to non-aligned packets 2009-01-04 23:23:32 +00:00
Benoit Jacob
3de311f497 oops forgot important parentheses 2009-01-04 21:23:02 +00:00
Benoit Jacob
06fd84cdb1 Fix bug in Matrix, in determining whether to overload operator new with an aligned one, introduced in r905543 2009-01-04 21:20:42 +00:00
Benoit Jacob
0e5c640563 * fix a unused variable warning
* if svnversion returns prose such as "exported" then discard that
2009-01-04 17:32:20 +00:00
Benoit Jacob
be64619ab6 * require CMake 2.6.2 everywhere, Alexander Neundorf says it'd make it
easier to have a uniform requirement in kdesupport for when he makes
fixes.
* add eigen versioning macros
2009-01-04 16:19:12 +00:00
Benoit Jacob
269bf67796 rename Regression --> LeastSquares 2009-01-04 15:55:54 +00:00
Benoit Jacob
15ca6659ac * the 4th template param of Matrix is now Options. One bit for storage
order, one bit for enabling/disabling auto-alignment. If you want to
disable, do:
Matrix<float,4,1,Matrix_DontAlign>
The Matrix_ prefix is the only way I can see to avoid
ambiguity/pollution. The old RowMajor, ColMajor constants are
deprecated, remain for now.
* this prompted several improvements in matrix_storage. ei_aligned_array
renamed to ei_matrix_array and moved there. The %16==0 tests are now
much more centralized in 1 place there.
* unalignedassert test: updated
* update FindEigen2.cmake from KDElibs
* determinant test: use VERIFY_IS_APPROX to fix false positives; add
testing of 1 big matrix
2009-01-04 15:26:32 +00:00
Benoit Jacob
d9e5fd393a * In LU solvers: no need anymore to use row-major matrices
* Matrix: always inherit WithAlignedOperatorNew, regardless of
vectorization or not
* rename ei_alloc_stack to ei_aligned_stack_alloc
* mixingtypes test: disable vectorization as SSE intrinsics don't allow
mixing types and we just get compile errors there.
2009-01-03 22:33:08 +00:00
Gael Guennebaud
fd7eba3394 Added a SparseVector class (not tested yet) 2009-01-02 08:47:09 +00:00
Benoit Jacob
d671205755 fix the nomalloc test: it didn't catch the ei_stack_alloc in
cachefriendlyproduct, that should be banned as well as depending on the
platform they can give a malloc, and they could happen even with (large
enough) fixed size matrices. Corresponding fix in Product.h:
cachefriendly is now only used for dynamic matrices -- fixedsize, no
matter how large, doesn't use the cachefriendly product. We don't need
to care (in my opinion) about performance for large fixed size, as large
fixed size is a bad idea in the first place and it is more important to
be able to guarantee clearly that fixed size never causes a malloc.
2008-12-31 00:25:31 +00:00
Benoit Jacob
3958e7f751 add unit-test checking the assertion on unaligned arrays -- checking
that it's triggered when and only when it should.
2008-12-31 00:05:22 +00:00
Benoit Jacob
164f410bb5 * make WithAlignedOperatorNew always align even when vectorization is disabled
* make ei_aligned_malloc and ei_aligned_free honor custom operator new and delete
2008-12-30 14:11:35 +00:00
Gael Guennebaud
a2782964c1 Sparse module, add an assertion and make the use of CHOLMOD's solve method the default. 2008-12-27 19:51:54 +00:00
Gael Guennebaud
ce3984844d Sparse module:
* enable complex support for the CHOLMOD LLT backend
   using CHOLMOD's triangular solver
 * quick fix for complex support in SparseLLT::solve
2008-12-27 18:13:29 +00:00
Benoit Jacob
361225068d fix bug discovered by Frank:
ei_alloc_stack must really return aligned pointers
2008-12-24 13:59:24 +00:00
Benoit Jacob
6f158fb7fc one last compilation fix ... 2008-12-22 21:04:13 +00:00
Benoit Jacob
789ea9d676 unless i find more failures in the tests, this will be beta3...
* fixes for mistakes (especially in the cast() methods in Geometry) revealed by the new "mixing types" test
* dox love, including a section on coeff access in core and an overview in geometry
2008-12-22 20:50:47 +00:00
Benoit Jacob
4336cf3833 * add unit-tests to check allowed and forbiddent mixing of different scalar types
* fix issues in Product revealed by this test
* in Dot.h forbid mixing of different types (at least for now, might allow real.dot(complex) in the future).
2008-12-22 19:17:44 +00:00
Benoit Jacob
f5a05e7ed1 unfuck v.cwise()*w where v is real and w is complex 2008-12-21 20:55:46 +00:00
Benoit Jacob
9e00d94543 * the Upper->UpperTriangular change
* finally get ei_add_test right
2008-12-20 13:36:12 +00:00
Benoit Jacob
21ab65e4b3 fix nasty little bug in ei_add_test 2008-12-20 01:13:38 +00:00
Gael Guennebaud
ebf906a23a add matrix * transform product 2008-12-19 16:31:22 +00:00
Benoit Jacob
df4bd5e46f * fix a test giving some false positives
* add coverage for various operator*=
2008-12-19 16:16:39 +00:00
Benoit Jacob
a3fad2e3c3 Transform*Transform should return Transform
unit test compiles again
2008-12-19 15:55:35 +00:00
Gael Guennebaud
5f6fbaa0e7 * fix a vectorization issue in Product
* use _mm_malloc/_mm_free on other platforms than linux of MSVC (eg., cygwin, OSX)
* replace a lot of inline keywords by EIGEN_STRONG_INLINE to compensate for
  poor MSVC inlining
2008-12-19 15:38:39 +00:00
Gael Guennebaud
8679d895d3 various MSVC fixes in BTL 2008-12-19 15:31:47 +00:00
Benoit Jacob
22875683b9 * extractRotation ---> rotation
* expand the geometry/Transform tests, after Mek's reports
* fix my own stupidity in eigensolver test
2008-12-19 14:52:03 +00:00
Benoit Jacob
e4980616fd SelfAdjointEigenSolver: add operatorSqrt() and operatorInverseSqrt() 2008-12-19 14:15:32 +00:00
Benoit Jacob
84bb868f07 * more MSVC warning fixes from Kenneth Riddile
* actually GCC 4.3.0 has a bug, "deprecated" placed at the end
  of a function prototype doesn't have any effect, moving them to
  the start of the function prototype makes it actually work!
* finish porting the cholesky unit-test to the new LLT/LDLT,
  after the above fix revealed a deprecated warning
2008-12-19 02:59:04 +00:00
Benoit Jacob
f34a4fa335 * forgot to svn add 2 files
* idea of Keir Mierle: make the static assert error msgs UPPERCASE
2008-12-18 21:04:06 +00:00
Benoit Jacob
8106d35408 Patch by Kenneth Riddile: disable MSVC warnings, reenable them outside
of Eigen, and add a MSVC-friendly path in StaticAssert.
2008-12-18 20:48:02 +00:00
Benoit Jacob
fabaa6915b * fix in IO.h, a useless copy was made because of assignment from
Derived to MatrixBase.
* the optimization of eval() for Matrix now consists in a partial
  specialization of ei_eval, which returns a reference type for Matrix.
  No overriding of eval() in Matrix anymore. Consequence: careful,
  ei_eval is no longer guaranteed to give a plain matrix type!
  For that, use ei_plain_matrix_type, or the PlainMatrixType typedef.
* so lots of changes to adapt to that everywhere. Hope this doesn't
  break (too much) MSVC compilation.
* add code examples for the new image() stuff.
* lower a bit the precision for floats in the unit tests as
  we were already doing some workarounds in inverse.cpp and we got some
  failed tests.
2008-12-18 20:36:25 +00:00
Benoit Jacob
b27a3644a2 Macros: add MSVC paths, add an important comment on EIGEN_ALIGN_128 2008-12-18 13:36:31 +00:00
Gael Guennebaud
93f8d56789 improved MSVC support in cmake files (SSE) 2008-12-18 09:07:36 +00:00
Benoit Jacob
15d72d3f9a somehow we had forgotten this very important static assertion... 2008-12-18 03:47:49 +00:00
Gael Guennebaud
9084e2a216 oops I commited bad stuff in the previous commit 2008-12-17 18:54:28 +00:00
Gael Guennebaud
6e138d0069 more MSVC cmake fixes 2008-12-17 18:37:04 +00:00
Gael Guennebaud
4cb63808d4 some cmake fixes for windows and GSL 2008-12-17 17:50:43 +00:00
Gael Guennebaud
c98fe0185e fix non standard non-const std::complex::real/imag issue 2008-12-17 17:31:23 +00:00
Benoit Jacob
5f582aa4e8 fix bad typos, thanks to Kenneth Riddile 2008-12-17 17:14:37 +00:00
Benoit Jacob
c22d10f94c LU class:
* add image() and computeImage() methods, with unit test
* fix a mistake in the definition of KernelResultType
* fix and improve comments
2008-12-17 16:47:55 +00:00
Gael Guennebaud
e3a8431a4a found one bug in the previous ++ changes 2008-12-17 16:04:21 +00:00
Benoit Jacob
89f468671d * replace postfix ++ by prefix ++ wherever that makes sense in Eigen/
* fix some "unused variable" warnings in the tests; there remains a libstdc++ "deprecated"
warning which I haven't looked much into
2008-12-17 14:30:01 +00:00
Benoit Jacob
2110cca431 actually honor EIGEN_STACK_ALLOCATION.
Can set it to 0 to disable stack alloc which guarantees that bad alloc throws exceptions if they are enabled.
2008-12-16 15:44:48 +00:00
Benoit Jacob
38b83b4157 * throw bad_alloc if exceptions are enabled, after patch by Kenneth Riddile
* disable vectorization on MSVC 2005, as it doesn't have all the required intrinsics. require 2008.
2008-12-16 15:17:29 +00:00
Benoit Jacob
50105c3ed6 Hopefully fix compilation of SSE Packetmath with MSVC.
The reason why we didn't realize until now that it didn't compile at all
with MSVC is that before today with MSVC the SSE2 detection didn't work.
2008-12-16 03:48:49 +00:00
Benoit Jacob
0a220721d1 Finally work around enough of MSVC preprocessor dumbness so that it actually detects SSE2 2008-12-15 21:20:40 +00:00
Benoit Jacob
1ad751b991 only enable the "unaligned array" assert if vectorization is enabled.
if vectorization is disabled, WithAlignedOperatorNew is empty!
2008-12-15 20:49:03 +00:00
Benoit Jacob
55b603e457 * fix a bug I introduced in WithAlignedOperatorNew
* add an important comment
2008-12-15 20:14:59 +00:00
Benoit Jacob
763f0a2434 use ei_aligned_malloc and ei_aligned_free also in WithAlignedOperatorNew, so this too should now work with MSVC. 2008-12-15 17:55:11 +00:00
Benoit Jacob
9b1a3d6e19 small optimization (for MSVC) and simplification of ei_alligned_malloc 2008-12-15 17:33:19 +00:00
Benoit Jacob
dd139b92b4 work around the braindead msvc preprocessor 2008-12-15 17:16:22 +00:00
Benoit Jacob
11c8a6bf63 Fix detection of SSE2 with MSVC. 2008-12-15 16:14:54 +00:00
Benoit Jacob
703951d5cd Fix memory alignment (hence vectorization) on MSVC thanks to help from Armin Berres. 2008-12-15 15:54:33 +00:00
Gael Guennebaud
d11c8704e0 oops, forget to remove a line 2008-12-15 12:35:46 +00:00
Gael Guennebaud
a164646c77 more warning fixes by Armin Berres 2008-12-15 12:30:04 +00:00
Benoit Jacob
936eaf600a compilation fix thanks to Dennis Schridde 2008-12-13 21:09:19 +00:00
Gael Guennebaud
ef0cd3a289 one more warning fix, thanks to Armin Berres 2008-12-12 13:50:01 +00:00
Gael Guennebaud
1ed17b037d * fix a couple of warnings (patch from Armin Berres)
* allow Map to map null data
2008-12-12 12:54:45 +00:00
Gael Guennebaud
5015e48361 Sparse module: add a more flexible SparseMatrix::fillrand() function
which allows to fill a matrix with random inner coordinates (makes sense
only when a very few coeffs are inserted per col/row)
2008-12-11 18:26:24 +00:00
Gael Guennebaud
beabf008b0 bugfix in DiagonalProduct: a "DiagonalProduct<SomeXpr>" expression
is now evaluated as a "DiagonalProduct<Matrix<SomeXpr::Eval> >".
Note that currently this only happens in DiagonalProduct.
2008-12-10 19:02:13 +00:00
Gael Guennebaud
ba9a53f9c6 fix compilation issue for 64bit systems (pointer <=> size_t) 2008-12-08 15:07:42 +00:00
Gael Guennebaud
52a30c1d54 fix minor mistake in the inside eigen example 2008-12-08 10:07:09 +00:00
Benoit Jacob
cb409914e0 * call it beta2
* improvements in Matrix documentation
* document copyCoeff and copyPacket even if it's hidden from doxygen
2008-12-07 23:23:36 +00:00
Benoit Jacob
069ecbb4ab * complete the change norm2->squaredNorm in PartialRedux
* somehow the NICE_RANDOM stuff wasn't being used anymore and
  tests were sometimes failing again. Fixed by #including Eigen/Array
  instead of cherry-picking just Random.h.
* little fixes in the unaligned assert page
2008-12-07 21:40:53 +00:00
Benoit Jacob
09fd69d734 * add Transform explicit constructors taking translation/scaling/rotation
* add Transform::operator= taking rotation.
  An old remnant was left commented out. Why was it disabled?
* slight optimization in operator= taking translation
* slight optimization (perhaps) in the new memory assertion
2008-12-07 17:49:56 +00:00
Benoit Jacob
6700f07fb0 actually this message is probably more effective at making people read the web page... 2008-12-07 16:38:45 +00:00
Benoit Jacob
08e6b7ad80 Make deluxe assertion with deluxe error message with link to deluxe web page
for this very nasty bug (unaligned member in dynamically allocated struct)
that our friends at Krita just encountered:

http://bugs.kde.org/show_bug.cgi?id=177133

CCBUG:177133
2008-12-07 16:31:32 +00:00
Benoit Jacob
7e8ee5b527 hide internal stuff from doxygen by using #ifndef EIGEN_PARSED_BY_DOXYGEN.
Sadly, \internal didn't hide internal stuff, it only hides the documentation!
2008-12-07 15:40:40 +00:00
Benoit Jacob
93c1f62979 Use an aligned IOFormat in the docs 2008-12-06 23:20:30 +00:00
Benoit Jacob
2b20da624a * improvements in the tutorial: triangular matrices, linear algebra
* minor fixes in Part and StaticAssert
* EulerAngles: remove the FIXME as I think the current version is fine
2008-12-06 22:21:29 +00:00
Benoit Jacob
bb33ec4ef3 * fix compile error when C++0x is enabled: static_assert() needs ;
thanks to devurandom for reporting
* remove redundant ; in ei_internal_assert
* minor fixes in InsideEigenExample.dox
2008-12-06 16:49:03 +00:00
Gael Guennebaud
9c0deb55ca bugfix in matrix to Euler-angles function 2008-12-06 11:04:33 +00:00
Gael Guennebaud
faf942a947 Add a generic matrix to Euler-angles function.
Perhaps the prototype of this function could be improved,
see comments in the code
2008-12-05 15:56:28 +00:00
Benoit Jacob
6d1439a52f add big "what happens inside eigen" tutorial for people interested in
Eigen internals
2008-12-05 14:45:42 +00:00
Benoit Jacob
2ff7961c10 split off the lazy evaluation part from the quickstartguide; actually by mistake i had
already committed part of that change so i commit the rest even if it's not much, so
building docs from trunk works again.
2008-12-03 23:15:26 +00:00
Benoit Jacob
c1e2156d8a * Much better, consistent error msgs when mixing different scalar types:
- in matrix-matrix product, static assert on the two scalar types to be the same.
- Similarly in CwiseBinaryOp. POTENTIALLY CONTROVERSIAL: we don't allow anymore binary
  ops to take two different scalar types. The functors that we defined take two args
  of the same type anyway; also we still allow the return type to be different.
  Again the reason is that different scalar types are incompatible with vectorization.
  Better have the user realize explicitly what mixing different numeric types costs him
  in terms of performance.
  See comment in CwiseBinaryOp constructor.
- This allowed to fix a little mistake in test/regression.cpp, mixing float and double
- Remove redundant semicolon (;) after static asserts
2008-12-03 21:01:55 +00:00
Alexander Neundorf
84cc69f0f3 -add quotes around the configured directories so build dirs with spaces produce some errors less
Alex
2008-12-02 13:04:32 +00:00
Gael Guennebaud
20c11bc52c prefix all Eigen cmake variable with EIGEN_ and switched to lowercase for all cmake files 2008-12-02 12:59:10 +00:00
Gael Guennebaud
eb9dadf3b2 clean FindUmfpack.cmake wrt enable_language(Fortran) 2008-12-02 12:20:13 +00:00
Alexander Neundorf
6b3d0e68e2 -use the cmake-provided Eigen_(SOURCE|BINARY)_DIR variables instead of setting own versions (EIGEN_(SOURCE|BINARY)_DIR
Alex
2008-12-02 11:00:51 +00:00
Benoit Jacob
aba378eb1a add internal documentation 2008-11-30 21:49:02 +00:00
Benoit Jacob
00f89a8f37 Update e-mail address 2008-11-24 13:40:43 +00:00
Gael Guennebaud
582c1f92c8 doc: add a "non stable" warning for parts which are not part
of the stable API yet and a couple of other minor doc updates...
2008-11-22 19:51:05 +00:00
Gael Guennebaud
a040b7f15d tutorial: extend casting section with set 2008-11-20 11:01:17 +00:00
Gael Guennebaud
cc6121b98d tutorial: add the cast function 2008-11-20 10:47:12 +00:00
Gael Guennebaud
a3b89e0ee6 tutorial: add array module warnings when needed 2008-11-17 15:38:57 +00:00
Benoit Jacob
3614321401 * add Gael a (c) line in IO.h
* let user change default format by defining EIGEN_DEFAULT_IO_FORMAT
* improve docs a little
2008-11-17 12:45:57 +00:00
Gael Guennebaud
139529e97b * add .imag() function
* fix a very old bug in EigenSolver that I had completely forgotten
  (thanks to Timothy to refresh my mind)
* fix doc of Matrix::Map
2008-11-14 09:55:25 +00:00
Gael Guennebaud
86ccd99d8d Several improvements in sparse module:
* add a LDL^T factorization with solver using code from T. Davis's LDL
  library (LPGL2.1+)
* various bug fixes in trianfular solver, matrix product, etc.
* improve cmake files for the supported libraries
* split the sparse unit test
* etc.
2008-11-05 13:47:55 +00:00
Laurent Montel
9aba671cfc Remove executable here too 2008-11-04 08:25:19 +00:00
Laurent Montel
2a4fdf31c8 Remove executable attribute 2008-11-04 08:24:27 +00:00
Benoit Jacob
033ac82c9d refinements in Matrix doc 2008-11-03 23:41:33 +00:00
Benoit Jacob
12f84acda6 Matrix documentation rework 2008-11-03 23:27:29 +00:00
Benoit Jacob
e80099932a add lpNorm<p>() method to MatrixBase, implemented in Array module, with
specializations for cases p=1,2,Eigen::Infinity.
2008-11-03 22:47:00 +00:00
Benoit Jacob
a0ec0fca5a Add Matrix::Map() and Matrix::AlignedMap() static methods 2008-11-03 21:49:03 +00:00
Benoit Jacob
3d90c13970 norm2() renamed to squaredNorm(), kept as deprecated for now. 2008-11-03 19:14:17 +00:00
Gael Guennebaud
3f580e240e add Eigen namespace in front of Transpose (I needed that to add a Transpose function, sorry for this little inconvenience) 2008-10-30 00:59:37 +00:00
Gael Guennebaud
ebe14aae7d add transposeInPlace (not optimized yet for rectangular matrix) 2008-10-29 15:24:08 +00:00
Gael Guennebaud
48137e28d8 add the possibility to extend Matrix outside Eigen, just like MatrixBase 2008-10-28 12:18:00 +00:00
Gael Guennebaud
3e502abfda add Eigen namespace in EIGEN_STATIC_ASSERT 2008-10-27 18:09:37 +00:00
Gael Guennebaud
b26e04f40b add Eigen namespace in EIGEN_INHERIT_ASSIGNMENT_OPERATOR 2008-10-27 13:26:18 +00:00
Gael Guennebaud
9f873a855f unit-tests: link to external libs only for the tests which require them 2008-10-26 21:38:30 +00:00
Gael Guennebaud
ca048aaf77 fix compilation with gcc 4.3 2008-10-26 20:43:05 +00:00
Gael Guennebaud
94f6f2a7de Add an axis aligned box in the geometry module.
Some naming questions:
- for "extend" we could also think of: "expand", "union", "add"
- same for "clamp": "crop", "intersect"
- same for "contains": "isInside", "intersect"
=> ah "intersect" is conflicting, so that eliminates this one !
2008-10-26 15:04:31 +00:00
Gael Guennebaud
ec0a423862 Add isApprox in Geometry module's classes.
Complete unit tests wrt previous commits.
2008-10-25 23:10:21 +00:00
Gael Guennebaud
505ce85814 oops forgot the inline keyword (though for gcc it was implicit) 2008-10-25 22:41:53 +00:00
Gael Guennebaud
e5b8a59cfa Add smart cast functions and ctor with scalar conversion (explicit)
to all classes of the Geometry module. By smart I mean that if current
type == new type, then it returns a const reference to *this => zero overhead
2008-10-25 22:38:22 +00:00
Gael Guennebaud
568a7e8eba improve assertion checking in product 2008-10-25 11:52:13 +00:00
Gael Guennebaud
72f2c7eed5 bugfix in Quaternion found by Daniel Stonier 2008-10-25 09:25:29 +00:00
Gael Guennebaud
0c5a09d93f some cleaning and doc in ParametrizedLine and HyperPlane
Just a thought: what about ParamLine instead of the verbose ParametrizedLine ?
2008-10-25 00:08:52 +00:00
Gael Guennebaud
8ea8b481de As discussed on ML:
* remove the automatic resizing feature of operator =
 * add function Matrix::set() to be used when the previous
   behavior is wanted
 * the default constructor of dynamic-size matrices now
   creates a "null" matrix (data=0, rows = cols = 0)
   instead of a 1x1 matrix
 * fix UnixX typos ;)
2008-10-24 21:42:03 +00:00
Gael Guennebaud
65abb4c52e compilation fix for ICC 2008-10-21 15:43:25 +00:00
Gael Guennebaud
cf0f82ecbe sparse module:
- remove some useless stuff => let's focus on a single sparse matrix format
 - finalize the new RandomSetter
2008-10-21 13:35:04 +00:00
Gael Guennebaud
9e02e42ff6 add the bench file for the RandomSetter 2008-10-21 00:05:45 +00:00
Gael Guennebaud
3645d6c138 sparse module: add a RandomSetter based on a user defined map implementation
as described on the wiki (one map per N column)
Here's some bench results for the 4 currently supported map impl:
std::map =>             18.3385 (581 MB)
gnu::hash_map =>        6.52574 (555 MB)
google::dense =>        2.87982 (315 MB)
google::sparse =>       15.7441 (165 MB)
This is the time is second (and memory consumption) to insert/lookup
10 million of coeffs with random coords inside a 10000^2 matrix,
with one map per packet of 64 columns => google::dense really rocks !
Note I use for the key value the index of the column in the packet (between 0 and 63)
times the number of rows and I used the default hash function.... so maybe there is
room for improvement here....
2008-10-20 23:42:20 +00:00
Gael Guennebaud
96538b976d remove debug message in FindCholmod.cmake 2008-10-20 20:58:43 +00:00
Gael Guennebaud
5066fe8bbe * sparse LU: add extraction of L,U,P, and Q, as well as determinant
for both backends.
* extended a bit the sparse unit tests
2008-10-20 17:03:09 +00:00
Gael Guennebaud
e1c50a3cb1 add unit tests for sparse LU and fix a couple of warnings 2008-10-20 11:37:45 +00:00
Gael Guennebaud
fa27cd1ed0 * add cmake files to find (optional) supported libraries
* add unit tests for sparse cholesky
2008-10-20 10:43:11 +00:00
Gael Guennebaud
f44316e5f8 UmfPack support: add support for complex<double> 2008-10-20 00:39:11 +00:00
Gael Guennebaud
3a231c2349 sparse module: add support for umfpack, the sparse direct LU
solver from suitesparse (as cholmod). It seems to be even faster
than SuperLU and it was much simpler to interface ! Well,
the factorization is faster, but for the solve part, SuperLU is
quite faster. On the other hand the solve part represents only a
fraction of the whole procedure. Moreover, I bench random matrices
that does not represents real cases, and I'm not sure at all
I use both libraries with their best settings !
2008-10-19 22:44:21 +00:00
Gael Guennebaud
64f7fbe3f2 sparse module: some trivial bugfixes 2008-10-19 17:07:20 +00:00
Gael Guennebaud
76fe2e1b34 add/update some benchmark files used to test/compare sparse module features 2008-10-19 17:06:11 +00:00
Gael Guennebaud
ecc6c43dba sparse module: add preliminary support for direct sparse LU solver
using SuperLU. Calling SuperLU was very painful, but it was worth it,
it seems to be damn fast !
2008-10-19 15:26:28 +00:00
Gael Guennebaud
6be0131774 sparse module: added some documentation for the LLT solver 2008-10-18 18:33:56 +00:00
Gael Guennebaud
cfca7f71fe sparse module: much much faster transposition code 2008-10-18 11:11:10 +00:00
Gael Guennebaud
727dfa1c43 fix some documentation issues 2008-10-17 11:20:46 +00:00
Gael Guennebaud
e747b338ee Started the third chapter of the tutorial on linear solvers.
It is only a first draft and I think it should be reorganized a bit in 2 parts:
1 - a compact table summarizing the main API and its use
    (this is what would expect an "expert" user)
2 - a discussion about the various algorithm in Eigen to guide the newbies in linear algebra
Currently I mixed the discussion with the API, but it is still better than nothing !
2008-10-16 22:28:23 +00:00
Gael Guennebaud
28d32f9bd8 add my copyright in MatrixBase.h 2008-10-13 16:09:16 +00:00
Gael Guennebaud
765219aa51 Big API change in Cholesky module:
* rename Cholesky to LLT
 * rename CholeskyWithoutSquareRoot to LDLT
 * rename MatrixBase::cholesky() to llt()
 * rename MatrixBase::choleskyNoSqrt() to ldlt()
 * make {LLT,LDLT}::solve() API consistent with other modules

Note that we are going to keep a source compatibility untill the next beta release.
E.g., the "old" Cholesky* classes, etc are still available for some time.
To be clear, Eigen beta2 should be (hopefully) source compatible with beta1,
and so beta2 will contain all the deprecated API of beta1. Those features marked
as deprecated will be removed in beta3 (or in the final 2.0 if there is no beta 3 !).

Also includes various updated in sparse Cholesky.
2008-10-13 15:53:27 +00:00
Gael Guennebaud
e2bd8623f8 Solve the issue found by Timothy in solveTriangular:
=> row-major rhs are now evaluated to a column-major
     temporary before the computations.
Add solveInPlace in Cholesky*
2008-10-13 13:14:43 +00:00
Scott Wheeler
537a0e0a52 fix typos 2008-10-12 16:09:12 +00:00
Scott Wheeler
e80d6a95d9 note that norm2() is *not* an l2 norm as it is in other APIs 2008-10-11 21:01:59 +00:00
Urs Wolfer
8466244faa SVN_SILENT pendantic 2008-10-11 17:52:45 +00:00
Scott Wheeler
b46c327133 Clear up the docs some. I'd also suggest making Dynamic the default template parameter for matrices. 2008-10-11 08:43:18 +00:00
Benoit Jacob
4e502dd6b0 very little fixes: cast literals to Scalar, rephrase some doc, add some const (maybe completely
useless but at least doesn't hurt)
2008-10-06 22:10:36 +00:00
Gael Guennebaud
22507fa645 Sparse module: refactoring of the cholesky factorization,
now the backends are well separated from the default impl, etc.
2008-10-05 20:19:47 +00:00
Gael Guennebaud
b8fc1edb2c Sparse module: enable support for incomplete cholesky factorization in CHOLMOD backend. 2008-10-05 13:45:43 +00:00
Gael Guennebaud
3c155ab073 Sparse module: removed some extra copies using markAsRValue() 2008-10-05 13:39:49 +00:00
Gael Guennebaud
b730c6f57d Sparse module: add experimental support for TAUCS and CHOLMOD with:
* bidirectionnal mapping
 * full cholesky factorization
2008-10-05 13:38:38 +00:00
Gael Guennebaud
a930dfb229 extend sparse unit tests with transpose and matrix product 2008-10-04 14:25:00 +00:00
Gael Guennebaud
98d3c0a413 Cleaned a bit the sparse cholesky code 2008-10-04 14:24:15 +00:00
Gael Guennebaud
068ff3370d Sparse module:
* several fixes (transpose, matrix product, etc...)
 * Added a basic cholesky factorization
 * Added a low level hybrid dense/sparse vector class
   to help writing code involving intensive read/write
   in a fixed vector. It is currently used to implement
   the matrix product itself as well as in the Cholesky
   factorization.
2008-10-04 14:23:00 +00:00
Gael Guennebaud
1fc503e3ce add EigenSolver::eigenvectors() method for non symmetric matrices.
However, for matrices larger than 5, it seems there is constantly a quite large error for a very
few coefficients. I don't what's going on, but that's certainely not due to numerical issues only.
(also note that the test with the pseudo eigenvectors fails the same way)
2008-10-03 13:22:54 +00:00
Gael Guennebaud
d907cd4410 Fixes in Eigensolver:
* eigenvectors => pseudoEigenvectors
 * added pseudoEigenvalueMatrix
 * clear the documentation
 * added respective unit test
Still missing: a proper eigenvectors() function.
2008-10-01 10:17:08 +00:00
Benoit Jacob
618de17bf7 block(int,int)->segment 2008-09-24 20:35:07 +00:00
Gael Guennebaud
373331e3bf remove apidox_preprocessing script which is not used anymore 2008-09-16 13:26:46 +00:00
Gael Guennebaud
42e88b1724 resurrected root/Mainpage.dox, the directives are needed by kde's scripts 2008-09-16 12:53:03 +00:00
Gael Guennebaud
fb5b62fbac block => segment in the tutorial 2008-09-15 16:26:55 +00:00
Benoit Jacob
af991a6bdb small dox fixes 2008-09-15 16:19:48 +00:00
Benoit Jacob
247f2b0ffa * block() for vectors ---> segment()
* documentation improvements, especially in quickstart guide
2008-09-15 15:45:41 +00:00
Gael Guennebaud
0940ad7127 add normalization functions to Quaternion and fix compilation
issue with custom types
2008-09-14 12:21:22 +00:00
Gael Guennebaud
db030d4e28 * fix issues with "long double" type (useful to enforce the use of x87 registers)
* extend the documentation on "extending Eigen"
2008-09-14 11:59:10 +00:00
Gael Guennebaud
8473a77f2f move CommaInitializer out of MatrixBase and documment it (because of .finished()) 2008-09-13 18:51:51 +00:00
Gael Guennebaud
a62bd110a2 fix doc compilation 2008-09-13 10:44:23 +00:00
Gael Guennebaud
e5c50afed6 * Quaternion: added dot product and angularDistance functions. The latter is
based on the former.
* opengl_demo: makes IcoSphere better (vertices are instanciated only once) and
               removed the generation of a big geometry for the fancy spheres...
2008-09-11 11:19:34 +00:00
Gael Guennebaud
5e9ee8863e opengl demo, now working:
- quaternion vs euler angles interpolation (though the Euler angle version looks a bit too bad)
 - navigation using either a mapping from 2D screen coordinates to 3D points on a sphere
   or the standard approach mapping mouse displacements as rotations around camera's axes.
2008-09-09 23:17:14 +00:00
Gael Guennebaud
146c9e4494 various stuff in opengl demos such as a better model,
stable trackball for the fly navigation mode, and started
to put some GUI elements...
2008-09-09 18:50:45 +00:00
Gael Guennebaud
d3a70b7fac fix a numerical instability in Quaternion::slerp 2008-09-09 15:25:03 +00:00
Gael Guennebaud
703539110b add the missing templated version of block for sub-vectors 2008-09-09 09:30:23 +00:00
Gael Guennebaud
c41ceee750 2 typos 2008-09-08 17:08:27 +00:00
Gael Guennebaud
31c33b9ed4 started a small OpenGL demo making use of Eigen's geometry features 2008-09-07 23:15:11 +00:00
Gael Guennebaud
12e9de4abb fix stupid numerical stability issue in SVD::solve (though it is not yet as stable as LU with full pivoting) 2008-09-04 14:38:42 +00:00
Benoit Jacob
6add33e2c2 fix warning 2008-09-04 01:35:39 +00:00
Gael Guennebaud
52406aecad * Extend a bit ParametrizedLine and move it to a separate file,
add unit-tests for it.
* remove "using namespace std" in test/main.h such that the compilation
  bug found today in SVD won't happen again.
2008-09-03 22:35:45 +00:00
Gael Guennebaud
c29c7b0ea9 Fix bugs reported by Timothy Hunter:
* CholeskyWithoutSqrt with 1x1 matrices
 * .part<Diagonal>()
Updated unit tests to handle these cases
2008-09-03 20:52:26 +00:00
Gael Guennebaud
e14aa8c8aa Add coeff-wise comparisons to scalar operators. You can now write:
mat.cwise() < 2
instead of:
   mat.cwise() < MatrixType::Constant(mat.rows(), mat.cols(), 2)
2008-09-03 17:56:06 +00:00
Gael Guennebaud
59dc1da5bf Add a Select expression in the Array module which mimics a coeff-wise ?: operator.
Example:
  mat = (mat.cwise().abs().cwise() < Ones()).select(0,mat);
replaces all small values by 0. (the scalar version is "s = abs(s)<1 ? 0 : s")
2008-09-03 17:16:28 +00:00
Gael Guennebaud
622f2d5eae trivial compilation fix in SVD 2008-09-03 15:52:44 +00:00
Gael Guennebaud
3bbd1b3114 Bugfix regarding alignent in Assign.h (updated map unit test to detect this bug)
Anyway: LinearVectorization+CompleteUnrolling actually uses the InnerVectorization
unrollers, so these two cases could be merged to a single one...
2008-09-03 14:42:36 +00:00
Gael Guennebaud
75649551c2 compilation fixes with MSVC 2008-09-03 11:26:19 +00:00
Gael Guennebaud
2a2c305c4d not yet 2008-09-03 10:34:05 +00:00
Gael Guennebaud
f52d119b9c Solve a big issue with data alignment and dynamic allocation:
* add a WithAlignedOperatorNew class with overloaded operator new
* make Matrix (and Quaternion, Transform, Hyperplane, etc.) use it
  if needed such that "*(new Vector4) = xpr" does not failed anymore.
* Please: make sure your classes having fixed size Eigen's vector
  or matrice attributes inherit WithAlignedOperatorNew
* add a ei_new_allocator STL memory allocator to use with STL containers.
  This allocator really calls operator new on your types (unlike GCC's
  new_allocator). Example:
  std::vector<Vector4f> data(10);
  will segfault if the vectorization is enabled, instead use:
  std::vector<Vector4f,ei_new_allocator<Vector4f> > data(10);
NOTE: you only have to worry if you deal with fixed-size matrix types
with "sizeof(matrix_type)%16==0"...
2008-09-03 00:32:56 +00:00
Gael Guennebaud
d8df318d77 resurrected sparse triangular solver 2008-09-02 19:55:26 +00:00
Daniel Gomez Ferro
8fb1678f0f Extended sparse unit-test: nested blocks and InnerIterators.
Block specialization for sparse matrices.
InnerIterators for Blocks and fixes in CoreIterators.
2008-09-02 15:28:49 +00:00
Benoit Jacob
46fe7a3d9e if EIGEN_NICE_RANDOM is defined, the random functions will return numbers with
few bits left of the comma and for floating-point types will never return zero.
This replaces the custom functions in test/main.h, so one does not anymore need
to think about that when writing tests.
2008-09-01 17:31:21 +00:00
Gael Guennebaud
49ff9b204c remove the conceptualy broken "NoShear" transformation traits,
and rename NonAfine => Projective, GenericAffine => Affine, NoScaling => Isometry
2008-09-01 17:14:34 +00:00
Gael Guennebaud
6825c8dd6b QTransform conversion and doc 2008-09-01 06:33:19 +00:00
Gael Guennebaud
994629721a update of the geometry tutorial 2008-08-31 17:30:09 +00:00
Benoit Jacob
d74916e4fe same thing with EIGEN_BINARY_DIR. Now the doc generation works from kdesupport. 2008-08-31 15:20:25 +00:00
Benoit Jacob
c931867909 also use EIGEN_SOURCE_DIR here. according to grep this was the last place to
change.
2008-08-31 15:12:55 +00:00
Benoit Jacob
ff60c9ccb1 fix cmakelists: wrong assumption on CMAKE_SOURCE_DIR. One can now use
EIGEN_SOURCE_DIR for that use, guaranteed to point to eigen2/ directory.
2008-08-31 15:08:41 +00:00
Gael Guennebaud
7e8aa63bb7 * Add Hyperplane::transform(Matrix/Transform)
* Fix compilations with gcc 3.4, ICC and doxygen
* Fix krazy directives (hopefully)
2008-08-31 13:32:29 +00:00
Benoit Jacob
5c34d8e20a The discussed changes to Hyperplane, the ParametrizedLine class, and the
API update in Regression...
2008-08-31 04:25:30 +00:00
Gael Guennebaud
5c8c09e021 add uniform scale/prescale functions in Tranform 2008-08-30 23:10:46 +00:00
Gael Guennebaud
9c450a52a2 Split Rotation.h to Rotation2D.h and RotationBase.h,
and more code factorization based on RotationBase.
Added notes about the main aim of the Translation and Scaling classes.
2008-08-30 21:36:04 +00:00
Gael Guennebaud
6ba991aa3a * added a RotationBase class following the CRT pattern
This allow code factorization and generic template specialization
  of functions
* added any_rotation * {Translation,Scaling,Transform} products methods
* rewrite of the actually broken ToRoationMatrix helper class to
  a global ei_toRotationMatrix function.
2008-08-30 20:11:04 +00:00
Gael Guennebaud
027ee14f31 api.kde.org is still bugged, let's do another try... 2008-08-30 16:30:58 +00:00
Gael Guennebaud
f1e6c56b77 * rename TranformationKnowledge to TransformTraits
* apply the same principle to extractRotation and fix it to
  extract a rotation corresponding to a positive scaling
2008-08-30 15:22:45 +00:00
Gael Guennebaud
236b7a545d update Transform::inverse() to take an optional argument stating whether the transformation is:
NonAffine, Affine (default), contains NoShear, contains NoScaling
that allows significant speed improvements. If you like it, this concept could be applied to
Transform::extractRotation (or to a more advanced decomposition function) and to Hyperplane::transformed()
and maybe to some other places... e.g., I think a Transform::normalMatrix() function would not harm and
warn user that the transformation of normals is not that trivial (I saw this mistake much too often)
2008-08-30 12:42:06 +00:00
Gael Guennebaud
9e7a9cde14 Add Scaling and Translation class as discussed on ML, still missing:
* handling Quaternion, AngleAxis and Rotation2D, 2 options here:
 1- make all of them inheriting a common base class Rotation such that we can
    have a single version of operator* for all the rotation type (they all get converted to a matrix)
 2- write a version for all type (so 3 rotations types * 3 for Transform,Translation and Scaling)
* real documentation
2008-08-30 00:08:23 +00:00
Gael Guennebaud
13a9d93bc0 minor doc fixes 2008-08-29 17:45:11 +00:00
Gael Guennebaud
582c1b6c3a in doc for kde: fix project name and number, add the amssymb latex package 2008-08-29 16:32:54 +00:00
Gael Guennebaud
063d1bb811 tweak root/Mainpage.dox to make it compatible with kde's doxygen.sh script
plus some hacks to compile the examples from doxygen...
Hopefully, api.kde.org/eigen2 will be beautiful by tomorrow....
2008-08-29 16:17:06 +00:00
Gael Guennebaud
68fbd6f531 typos in bench/ 2008-08-29 16:10:08 +00:00
Gael Guennebaud
6d841512c7 some hyperplane changes:
- the coefficients are stored in a single vector
- added transformation methods
- removed Line* typedef since in 2D this is really an hyperplane
  and not really a line...
- HyperPlane => Hyperplane
2008-08-29 13:30:37 +00:00
Gael Guennebaud
409e82be06 doc and use sed to clean the class hierarchy instead of
preprocessor directives.
2008-08-28 23:25:27 +00:00
Gael Guennebaud
7ea821d18e spelling + some krazy directives 2008-08-28 21:44:56 +00:00
Gael Guennebaud
80be1ea515 remove CoreDeclaration from the documentation 2008-08-28 19:11:03 +00:00
Gael Guennebaud
9b4d46c82e * Add an HyperPlane class in the Geometry module
with its respective unit-test.
  Feel free to discuss the API on the ML.
* Some bugfix in unitOrthogonal found by the hyperplane unit test.
2008-08-28 17:44:27 +00:00
Jure Repinc
ee2df6026a CoreDeclarations was removed 2008-08-28 17:33:27 +00:00
Gael Guennebaud
3ced3f91c2 * temporarily remove doxygen customization, we'll see if that fix api.kde.org
but I no hope, that would be too simple !
* added Rotation2D typedefs
* remove CoreDeclarations header file
2008-08-28 15:28:23 +00:00
Gael Guennebaud
70266b4d05 doc + quick bug fix in Matrix ctor 2008-08-28 00:33:58 +00:00
Benoit Jacob
f7de12de69 Missing inline keywords in AltiVec/PacketMath were making Avogadro fail
to compile (duplicate symbols).
2008-08-27 20:06:15 +00:00
Benoit Jacob
252e0c45b2 * missing cmake make_directory command
* show svn revision number if available
* fix warnings about unused argc/argv

Gael: I just saw your latest docs, it's completely awesome.
2008-08-27 06:43:42 +00:00
Benoit Jacob
a0cfe6ebdc remove double ; 2008-08-27 02:58:04 +00:00
Gael Guennebaud
8e8019d289 improvements in geometry tutorial 2008-08-27 00:46:24 +00:00
Gael Guennebaud
083ffa8c41 #undef vector after including altivec.h 2008-08-27 00:09:58 +00:00
Benoit Jacob
12c6b45ae5 replace vector by __vector to prevent conflict with std::vector 2008-08-26 23:25:10 +00:00
Gael Guennebaud
63d3ef8204 * remove debug code commited by mistake in Assign
* keep going on the doc: added a short geometry tutorial
2008-08-26 23:07:33 +00:00
Gael Guennebaud
00a8d314c5 * move memory related stuff to util/Memory.h
* clean ugly doxygen inheritence of expressions
* keep improving the documentation... slowly !
2008-08-26 19:12:23 +00:00
Gael Guennebaud
3e526dcdbd BTL:added trisolve action file 2008-08-26 10:46:58 +00:00
Gael Guennebaud
8f9d30cb20 * patch from Konstantinos Margaritis: bugfix in Altivec version of ei_pdiv
and various cleaning in Altivec code. Altivec vectorization have been re-enabled
  in CoreDeclaration
* added copy constructors in non empty functors because I observed weird behavior with
  std::complex<>
2008-08-25 16:22:56 +00:00
Gael Guennebaud
7ce70e1437 various updates in BTL 2008-08-25 14:23:08 +00:00
Gael Guennebaud
d2b345e6a9 bugfix in test/packetmath.h 2008-08-25 14:19:57 +00:00
Gael Guennebaud
9e25dfcb2c Various doc improvements... including a owl in the API doc header. 2008-08-25 10:49:53 +00:00
Benoit Jacob
da674fa032 Shut up two bogus gcc 4.3 warnings 2008-08-25 03:13:14 +00:00
Benoit Jacob
5ac883b10a Fix a bug discovered in Avogadro: the AngleAxis*Matrix and the newer
AngleAxis*Vector products were wrong because they returned the product
_expression_
   toRotationMatrix()*other;
and toRotationMatrix() died before that expression would be later
evaluated. Here it would not have been practical to NestByValue as this
is a whole matrix. So, let them simply evaluate and return the result by
value.

The geometry.cpp unit-test only checked for compatibility between
various rotations, it didn't check the correctness of the rotations
themselves. That's why this bug escaped us. So, this commit checks that
the rotations produced by AngleAxis have all the expected properties.
Since the compatibility with the other rotations is already checked,
this should validate them as well.
2008-08-24 23:16:51 +00:00
Benoit Jacob
aa54d6bef0 arf, of course a meta-selector was required here 2008-08-24 21:36:14 +00:00
Benoit Jacob
124ec71c50 allow constructing Transform from small-matrix (like fromPosOrientScale
but with trivial Pos and Scale)
2008-08-24 21:25:04 +00:00
Benoit Jacob
bf31d81aac argh, gael you're more clever than i remembered. diagonal product is
optimized. so, i almost revert, just reordering to reduce # of
load/store.
2008-08-24 20:53:04 +00:00
Benoit Jacob
d3529e9c40 optimization: spare the 3x3 matrix product in
fromPositionOrientationScale
2008-08-24 20:50:18 +00:00
Benoit Jacob
6a36b5a6e0 add AngleAxis::operator*(const Vector3&) 2008-08-24 20:13:32 +00:00
Benoit Jacob
6b591d06c5 add data() methods to Transform 2008-08-24 20:02:20 +00:00
Benoit Jacob
b815b23e09 forgot to install Regression public header 2008-08-24 19:39:07 +00:00
Gael Guennebaud
854d6e8458 Documentation: fill the placeholders, add a custom CSS file,
add a reference to the tutorial in the main page.
2008-08-24 19:14:20 +00:00
Benoit Jacob
251ecc0ab9 Rename someOrthogonal to unitOrthogonal. Fix a bug in it, with dyn-size vectors of size <=3.
Update doc and test to reflect that it always returns a unit vector.
2008-08-24 17:31:03 +00:00
Gael Guennebaud
aeca7a63f4 nothing to see here 2008-08-24 16:00:53 +00:00
Gael Guennebaud
bf17467ce0 bugfix in Product and ei_L2_block_traits 2008-08-24 16:00:17 +00:00
Gael Guennebaud
440664cd5d temporary fix of the pèrevious commit 2008-08-24 15:27:05 +00:00
Gael Guennebaud
ba100998bf * split Meta.h to Meta.h (generic meta programming) and XprHelper.h (relates to eigen mechanism)
* added a meta.cpp unit test
* EIGEN_TUNE_FOR_L2_CACHE_SIZE now represents L2 block size in Bytes (whence the ei_meta_sqrt...)
* added a CustomizeEigen.dox page
* added a TOC to QuickStartGuide.dox
2008-08-24 15:15:32 +00:00
Gael Guennebaud
bfe86b8fc0 * add documentation of the cool (?) "print with format" feature
* move the ioformat.cpp test to a documentation example
* rename IoFormat => IOFormat
2008-08-23 19:41:00 +00:00
Gael Guennebaud
c3f46cf55b need to commit this file before changing its name 2008-08-23 19:32:13 +00:00
Gael Guennebaud
2f6815df8e cmake fix 2008-08-23 17:40:52 +00:00
Gael Guennebaud
da5e644567 forgot to commit a file 2008-08-23 17:25:54 +00:00
Gael Guennebaud
f2f48b6560 * remove LargeBit and related stuff
* replaced the Flags template parameter of Matrix by StorageOrder
  and move it back to the 4th position such that we don't have to
  worry about the two Max* template parameters
* extended EIGEN_USING_MATRIX_TYPEDEFS with the ei_* math functions
2008-08-23 17:11:44 +00:00
Gael Guennebaud
2120fed849 * bug fixes in: Dot, generalized eigen problem, singular matrix detetection in Cholesky
* fix all numerical instabilies in the unit tests, now all tests can be run 2000 times
  with almost zero failures.
2008-08-23 15:14:20 +00:00
Benoit Jacob
312013a089 compile fix for code like Vector3d::Random().x() 2008-08-23 02:19:03 +00:00
Gael Guennebaud
0e60e22151 extended cwise unit tests to cover all Cwise API 2008-08-22 22:49:09 +00:00
Gael Guennebaud
8509668466 bugfix from Timothy Hunter s/ei_div/ei_pdiv 2008-08-22 22:01:02 +00:00
Gael Guennebaud
e0f627a7db s/Affine/Linear, thanks to Thomas Vaughan 2008-08-22 17:54:37 +00:00
Gael Guennebaud
f0394edfa7 * bugfix in SolveTriangular found by Timothy Hunter (did not compiled for very small fixed size matrices)
* bugfix in Dot unroller
* added special random generator for the unit tests and reduced the tolerance threshold by an order of magnitude
  this fixes issues with sum.cpp but other tests still failed sometimes, this have to be carefully checked...
2008-08-22 17:48:36 +00:00
Gael Guennebaud
a95c1e190b patch from Konstantinos Margaritis: Altivec vectorization is resurrected ! 2008-08-22 13:19:35 +00:00
Gael Guennebaud
95db4e9841 added SparseSetter doc 2008-08-22 11:19:12 +00:00
Benoit Jacob
a814ebe180 fix a number of compiler errors and warnings with gcc 4.3. There was a missing
#include<algorithm> so I'm not sure how it compiled at all for you :)
2008-08-22 01:19:53 +00:00
Gael Guennebaud
db628c6ad7 Reimplement fitHyperplane such that the fit is done in a total LS sense
(use eigen decomposition).
Added optional feedback on the stability of the actual fit (think about fitting a 3D plane
on data lying on a line...)
2008-08-22 00:09:46 +00:00
Benoit Jacob
0998c51d1f - remove the ASM macro as in fact Gael had been removing all the remaining
asm("...") from the code while fixing MSVC compat (so your changes crossed
  one another).
- move the pragma warning to CoreDeclarations, it's the right place to do early
  platform checks.

CCMAIL:ps_ml@gmx.de
2008-08-21 21:07:24 +00:00
Gael Guennebaud
58061f5ffc extend sparse unit test and more bugfix, major todo: finilize the SparseSetter 2008-08-21 18:40:56 +00:00
Gael Guennebaud
60804c306d *patch by Daniel Gomez:
- bugfix in SparseMatrix
 - add a sparse unit test
* renamed Transform::affine => linear
2008-08-21 17:02:47 +00:00
Benoit Jacob
082e309d2a patch by Patrick Spendrin: fix MSVC compatibility 2008-08-21 16:17:51 +00:00
Gael Guennebaud
67813e01bf disable the vectorization of div for AltiVec 2008-08-21 14:03:17 +00:00
Gael Guennebaud
f729fc1d70 * Add the possibility to customize the output of matrices, e.g.:
IoFormat OctaveFmt(4, AlignCols, ", ", ";\n", "", "", "[", "]");
   cout << mat.format(OctaveFmt);
  The first "4" is the precision.
  Documentation missing.
* Some compilation fixes
2008-08-21 13:17:21 +00:00
Benoit Jacob
591d497b84 add resize() methods to Map, doing nothing but assertions.
This is useful in Krita where I call lu().solve() with a Map object
as result. As solve() resizes the result, this was needed.
2008-08-21 04:36:48 +00:00
Gael Guennebaud
84a39e04bf added Sub matrices section and a couple of cross ref to the API doc 2008-08-20 23:04:58 +00:00
Gael Guennebaud
fd681507dc Add a packetmath unit test, re-enable the comma-initializer unit test,
and bug fix in PacketMath/SSE
2008-08-20 20:08:38 +00:00
Benoit Jacob
ff8e98c974 Fix bugs in Sum.h, add unit-test 2008-08-20 16:43:28 +00:00
Gael Guennebaud
c501c7a4ef * Fix CMakeLists.txt issue with SVD
* Fix on stack memory allocation issues
2008-08-20 15:58:01 +00:00
Gael Guennebaud
752ec27293 minor bugfix found using gcc-4.0 2008-08-20 14:05:57 +00:00
Gael Guennebaud
8afaeb4ad5 doc fixes, and extended Basic Linear Algebra and Reductions sections 2008-08-20 13:07:46 +00:00
Gael Guennebaud
db8fbf2b39 some updated of the quick start guide 2008-08-20 11:31:50 +00:00
Benoit Jacob
c705c38a23 * it's \returns not \Returns
* add some explanations in the typedefs page
* expand a bit the new QuickStartGuide. Some placeholders (not a pb since
it's not even yet linked to from other pages). The point I want to make is
that it's super important to have fully compilable short programs (even
with compile instructions for the first one) not just small snippets, at
least at the beginning. Let's start with examples of compilable programs.
2008-08-20 04:34:04 +00:00
Gael Guennebaud
8551fe28ce fix a few typos 2008-08-20 01:12:56 +00:00
Gael Guennebaud
7aba51ce53 * Added .all() and .any() members to PartialRedux
* Bug fixes in euler angle snippet, Assign and MapBase
* Started a "quick start guide" (draft state)
2008-08-20 00:58:25 +00:00
Gael Guennebaud
c6674ab076 missing SVD header file 2008-08-19 20:18:46 +00:00
Gael Guennebaud
104f8fd36e Added a SVD module:
- the decompostion code has been adfapted from JAMA
 - handles non square matrices of size MxN with M>=N
 - does not work for complex matrices
 - includes a solver where the parts corresponding to zero singular values are set to zero
2008-08-19 17:52:04 +00:00
Benoit Jacob
54137f1ca7 * fix bug found by Boudewijn Rempt: no CMakeLists in arch/ subdir
* fix warning in SolveTriangular
2008-08-19 13:15:13 +00:00
Gael Guennebaud
a6d387a359 Various compilation fixes for MSVC 9. All tests compile but some
still fail at runtime in ei_aligned_free() (even without vectorization).
2008-08-19 11:06:40 +00:00
Benoit Jacob
9466e5f94e * doc improvements in Cwise and PartialRedux:
- 33 new snippets
  - unfuck doxygen output in Cwise (issues with function macros)
  - more see-also links from outside, making Cwise more discoverable
* rename matrixNorm() to operatorNorm(). There are many matrix norms
  (the L2 is another one) but only one is called the operator norm.
  Risk of confusion with keyword operator is not too scary after all.
2008-08-19 04:30:28 +00:00
Gael Guennebaud
95dd09bea6 * revert the previous interface change in solveTriangular (pointer vs reference)
* remove the cast operators in the Geometry module: they are replaced by constructors
  and new operator= in Matrix
* extended the operations supported by Rotation2D
* rewrite in solveTriangular:
  - merge the Upper and Lower specializations
  - big optimization of the path for row-major triangular matrices
2008-08-18 22:17:42 +00:00
Benoit Jacob
e778ae2559 only use alloca on linux. Use malloc on other platforms. Needed for mingw
compatibility.
2008-08-18 16:36:47 +00:00
Benoit Jacob
baf0cffedd *add operator()(int) for vectors, synonymous to operator[](int).
I don't see any reason not to allow it, it doesn't add much code, and
 it makes porting from eigen1 easier.
*expand tests/basicstuff to first test coefficient access methods
2008-08-18 12:33:14 +00:00
Benoit Jacob
95a1283bf6 fix compilation of unit-tests when cmake is run on kdesupport/ parent
directory
2008-08-17 15:25:53 +00:00
Benoit Jacob
239b47e033 *make Eigen2 install to prefix/include/eigen2/Eigen
*Add FindEigen2.cmake module in kdelibs
2008-08-16 12:56:38 +00:00
Gael Guennebaud
5546e963c9 bugfix in CholeskyWithoutSquareRoot::solve found by Timothy Hunter 2008-08-16 07:09:39 +00:00
Benoit Jacob
d9d69de382 updated tutorial 2008-08-15 14:28:06 +00:00
Benoit Jacob
3bc2746928 Copy eigen2 into kdesupport, alongside eigen1 for now, co-installable,
will remove eigen1 once no code uses it anymore (soon).
2008-08-14 13:21:11 +00:00
Gael Guennebaud
8a3e6b1ee2 change solveTriangularInPlace() to take a pointer as input (as discussed on IRC).
extended the documentation of the triangular solver.
2008-08-12 07:49:59 +00:00
Benoit Jacob
13ad88736e last small fixes, this is alpha6, eigen2 is now ready for eigen1 apps to
port to.
2008-08-12 02:14:02 +00:00
Benoit Jacob
f04c1cb774 Complete LU documentation 2008-08-11 21:26:37 +00:00
Benoit Jacob
17ec407ccd * add Regression module, from eigen1, improved, with doc and unit-test.
* fix .normalized() so that Random().normalized() works; since the return
type became complicated to write down i just let it return an actual
vector, perhaps not optimal.
* add Sparse/CMakeLists.txt. I suppose that it was intentional that it
didn't have CMakeLists, but in <=2.0 releases I'll just manually remove
Sparse.
2008-08-11 02:25:40 +00:00
Gael Guennebaud
55e8d670ce Renamed allowAligned() => forceAligned() and added the constants ForceAligned
and AsRequested for the PacketAccess parameter of MapBase. Updated respective
documentation.
2008-08-09 21:57:50 +00:00
Gael Guennebaud
b13148c358 renamed inverseProduct => solveTriangular 2008-08-09 20:06:25 +00:00
Benoit Jacob
d6e88f8155 * add LU unit-test. Seems like we have very good numerical stability!
* some cleanup, and grant me a copyright line on the determinant test.
2008-08-09 19:26:14 +00:00
Gael Guennebaud
4fa40367e9 * Big change in Block and Map:
- added a MapBase base xpr on top of which Map and the specialization
    of Block are implemented
  - MapBase forces both aligned loads (and aligned stores, see below) in expressions
    such as "x.block(...) += other_expr"
* Significant vectorization improvement:
 - added a AlignedBit flag meaning the first coeff/packet is aligned,
   this allows to not generate extra code to deal with the first unaligned part
 - removed all unaligned stores when no unrolling
 - removed unaligned loads in Sum when the input as the DirectAccessBit flag
* Some code simplification in CacheFriendly product
* Some minor documentation improvements
2008-08-09 18:41:24 +00:00
Benoit Jacob
becbeda50a * reimplement the general case of inverse() on top of LU. Advantages:
- removes much code
  - 2.5x faster (even though LU uses complete pivoting contrary to what
inverse used to do!)
  - there _were_ numeric stability problems with the partial pivoting
approach of inverse(), with 200x200 matrices inversion failed almost
half of the times (overflow). Now these problems are solved thanks to
complete pivoting.

* remove some useless stuff in LU
2008-08-09 15:50:07 +00:00
Benoit Jacob
681e944670 *implement LU solver (solves any rectangular system)
*in test/CMakeLists : modify EI_ADD_TEST so that 2nd argument is
additional compiler flags. used to add -O2 to test_product_large so it
doesn't take forever.
2008-08-09 15:23:54 +00:00
Benoit Jacob
a41f2b4216 * fix bug in SwapWrapper : store the wrapped expression by reference
* optimize setIdentity: when the matrix is large enough it is better to
  setZero() and overwrite the diagonal
* start of LU solver, disabled for now
2008-08-09 04:37:09 +00:00
Benoit Jacob
9bbe396939 forgot to remove that old code 2008-08-07 21:50:29 +00:00
Benoit Jacob
5f350448e1 - add kernel computation using the triangular solver
- take advantage of the fact that our LU dec sorts the eigenvalues of U
in decreasing order
- add meta selector in determinant
2008-08-07 21:48:21 +00:00
Benoit Jacob
58ba9ca72f LU: remove partial-pivoting path (moderately useful since it's does
not allow to easily get the rank), fix a bug (which could have been
triggered by matrices having coefficients of very different
magnitudes).
Part: add an assert to prevent hard to find bugs
Swap: update comments
2008-08-07 04:31:05 +00:00
Benoit Jacob
88bb2087c1 New implementation of Swap as discussed, reusing Assign. Makes LU run
10% faster overall.
2008-08-05 21:55:57 +00:00
Benoit Jacob
c94be35bc8 introduce copyCoeff and copyPacket methods in MatrixBase, used by
Assign, in preparation for new Swap impl reusing Assign code.
remove last remnant of old Inverse class in Transform.
2008-08-05 18:00:23 +00:00
Benoit Jacob
09ef7db9d9 Add partial pivoting runtime option to LU.
Note: in fact, inverse() always uses partial pivoting because the algo
currently used doesn't make sense with complete pivoting. No num
stability issue so far even with size 200x200. If there is any problem
we can of course reimplement inverse on top of LU.
2008-08-05 15:43:11 +00:00
Benoit Jacob
e741b7beca further big perf improvement in Inverse 2008-08-04 23:47:09 +00:00
Benoit Jacob
79a0feee68 big performance improvement in inverse and LU 2008-08-04 23:34:21 +00:00
Gael Guennebaud
a7a05382d1 Add a LU decomposition action in BTL and various cleaning in BTL. For instance
all per plot settings have been moved to a single file, go_mean now takes an
optional second argument "tiny" to generate plots for tiny matrices, and
output of comparison information wrt to previous benchs (if any).
2008-08-04 23:12:48 +00:00
Benoit Jacob
c2f8ecf466 * LU decomposition, supporting all rectangular matrices, with full
pivoting for better numerical stability. For now the only application is
determinant.
* New determinant unit-test.
* Disable most of Swap.h for now as it makes LU fail (mysterious).
Anyway Swap needs a big overhaul as proposed on IRC.
* Remnants of old class Inverse removed.
* Some warnings fixed.
2008-08-04 04:45:59 +00:00
Gael Guennebaud
f81dfcf00b fix two perf issues in product.
fix positive definite test in Cholesky.
remove #include <cstring> in CoreDeclaration.
2008-08-03 20:23:06 +00:00
Benoit Jacob
49ae3fca89 fix compile errors with gcc 4.3: unresolved func call to
ei_cache_friendly_product, and undeclared memcpy
2008-08-03 15:44:06 +00:00
Gael Guennebaud
6d11a07e5e Added a ei_palign function align a packet from two others.
This allows much faster code dealing with unligned as
in the updated matrix-vector product functions.
2008-08-03 15:15:46 +00:00
Gael Guennebaud
55aeb1f83a Optimizations:
* faster matrix-matrix and matrix-vector products (especially for not aligned cases)
 * faster tridiagonalization (make it using our matrix-vector impl.)
Others:
 * fix Flags of Map
 * split the test_product to two smaller ones
2008-08-01 23:44:59 +00:00
Gael Guennebaud
b32b186c14 removed the packet specializations of some functors
(GCC generates better code without those "optimizations")
2008-07-31 21:03:11 +00:00
Gael Guennebaud
842c4f8bfa Several compilation fixes for MSVC and NVCC, basically:
- added explicit enum to int conversion where needed
- if a function is not defined as declared and the return type is "tricky"
  then the type must be typedefined somewhere. A "tricky return type" can be:
  * a template class with a default parameter which depends on another template parameter
  * a nested template class, or type of a nested template class
2008-07-29 16:33:07 +00:00
Gael Guennebaud
e0215ee510 BTL: - added tridiagonalization and hessenberg decomposition bench
- added GOTO library
2008-07-28 20:48:21 +00:00
Gael Guennebaud
44d95e0540 fix some internal asserts in CacheFrinedlyProduct 2008-07-27 22:14:08 +00:00
Gael Guennebaud
02a7efa910 forgot to include this file in previous commit 2008-07-27 14:24:32 +00:00
Gael Guennebaud
93115619c2 * updated benchmark files according to recent renamings
* various improvements in BTL including trisolver and cholesky bench
2008-07-27 11:39:47 +00:00
Gael Guennebaud
e9e5261664 Fix a couple issues introduced in the previous commit:
* removed DirectAccessBit from Part
* use a template specialization in inverseProduct() to transform a Part xpr to a Flagged xpr
2008-07-26 23:05:44 +00:00
Gael Guennebaud
e77ccf2928 * Rewrite the triangular solver so that we can take advantage of our efficient matrix-vector products:
=> up to 6 times faster !
* Added DirectAccessBit to Part
* Added an exemple of a cwise operator
* Renamed perpendicular() => someOrthogonal() (geometry module)
* Fix a weired bug in ei_constant_functor: the default copy constructor did not copy
  the imaginary part when the single member of the class is a complex...
2008-07-26 20:40:29 +00:00
Gael Guennebaud
2940617e6f bugfix in some internal asserts of CacheFriendlyProduct 2008-07-26 12:26:27 +00:00
Benoit Jacob
f997a3e902 update the inverse test a little
make use of static asserts in Map
fix 2 warnings in CacheFriendlyProduct: unused var 'Vectorized'
2008-07-26 12:08:28 +00:00
Gael Guennebaud
b466c266a0 * Fix some complex alignment issues in the cache friendly matrix-vector products.
* Minor update of the cores of the Cholesky algorithms to make them more friendly
  wrt to matrix-vector products => speedup x5 !
2008-07-23 17:30:00 +00:00
Gael Guennebaud
172000aaeb Add .perpendicular() function in Geometry module (adapted from Eigen1)
Documentation:
 * add an overview for each module.
 * add an example for .all() and Cwise::operator<
2008-07-22 10:54:42 +00:00
Gael Guennebaud
516db2c3b9 Fix compilation issues with icc and g++ < 4.1. Those include:
- conflicts with operator * overloads
 - discard the use of ei_pdiv for interger
   (g++ handles operators on __m128* types, this is why it worked)
 - weird behavior of icc in fixed size Block() constructor complaining
   the initializer of m_blockRows and m_blockCols were missing while
   we are in fixed size (maybe this hide deeper problem since this is a
   recent one, but icc gives only little feedback)
2008-07-21 12:40:56 +00:00
Gael Guennebaud
c10f069b6b * Merge Extract and Part to the Part expression.
Renamed "MatrixBase::extract() const" to "MatrixBase::part() const"
* Renamed static functions identity, zero, ones, random with an upper case
  first letter: Identity, Zero, Ones and Random.
2008-07-21 00:34:46 +00:00
Gael Guennebaud
ce425d92f1 Various documentation improvements, in particualr in Cholesky and Geometry module.
Added doxygen groups for Matrix typedefs and the Geometry module
2008-07-20 15:18:54 +00:00
Gael Guennebaud
269f683902 Add cholesky's members to MatrixBase
Various documentation improvements including new snippets (AngleAxis and Cholesky)
2008-07-19 22:59:05 +00:00
Gael Guennebaud
6e2c53e056 Added an automatically generated list of selected examples in the documentation.
Added the custom gemetry_module tag, and use it.
2008-07-19 20:36:41 +00:00
Gael Guennebaud
05ad083467 Added MatrixBase::Unit*() static function to easily create unit/basis vectors.
Removed EulerAngles, addes typdefs for Quaternion and AngleAxis,
and added automatic conversions from Quaternion/AngleAxis to Matrix3 such that:
 Matrix3f m = AngleAxisf(0.2,Vector3f::UnitX) * AngleAxisf(0.2,Vector3f::UnitY);
just works.
2008-07-19 13:03:23 +00:00
Gael Guennebaud
7245c63067 Complete rewrite of partial reduction according to mailing list discussions. 2008-07-19 11:36:32 +00:00
Benoit Jacob
8b4945a5a2 add some static asserts, use them, fix gcc 4.3 warning in Product.h. 2008-07-19 00:25:41 +00:00
Gael Guennebaud
22a816ade8 * Fix a couple of issues related to the recent cache friendly products
* Improve the efficiency of matrix*vector in unaligned cases
* Trivial fixes in the destructors of MatrixStorage
* Removed the matrixNorm in test/product.cpp (twice faster and
  that assumed the matrix product was ok while checking that !!)
2008-07-19 00:09:01 +00:00
Benoit Jacob
62ec1dd616 * big rework of Inverse.h:
- remove all invertibility checking, will be redundant with LU
  - general case: adapt to matrix storage order for better perf
  - size 4 case: handle corner cases without falling back to gen case.
  - rationalize with selectors instead of compile time if
  - add C-style computeInverse()
* update inverse test.
* in snippets, default cout precision to 3 decimal places
* add some cmake module from kdelibs to support btl with cmake 2.4
2008-07-15 23:56:17 +00:00
Gael Guennebaud
b970a9c8aa trivial fix in EulerAngles constructor 2008-07-15 22:42:55 +00:00
Gael Guennebaud
c8cbc1665e enhancements of the plot generator:
- removed the ugly X11 and PNG gnuplots terminals
- use enhanced postscript terminal
- use imagemagick to generate the png files (with compression)
- disable the fortran impl by default since it is as meaningless as a "C impl"
- update line settings
2008-07-13 11:46:36 +00:00
Gael Guennebaud
99a625243f Optimization: added super efficient rowmajor * vector product (and vector * colmajor).
It basically performs 4 dot products at once reducing loads of the vector and improving
instructions scheduling. With 3 cache friendly algorithms, we now handle all product
configurations with outstanding perf for large matrices.
2008-07-13 01:22:54 +00:00
Benoit Jacob
51e6ee39f0 SVN_SILENT trivial fix 2008-07-12 23:42:19 +00:00
Gael Guennebaud
bd0183f850 fix a cmake issue in FindTvmet and FindMKL 2008-07-12 23:34:42 +00:00
Benoit Jacob
e979e6485f another occurence of that little cmake fix 2008-07-12 23:27:41 +00:00
Gael Guennebaud
861d18d553 * Optimization: added a specialization of Block for xpr with DirectAccessBit
* some simplifications and fixes in cache friendly products
2008-07-12 22:59:34 +00:00
Benoit Jacob
1bbaea9885 little cmake fix 2008-07-12 22:13:03 +00:00
Gael Guennebaud
10c4e36b39 disable MKL check and fortran for cmake <2.6 2008-07-12 21:54:02 +00:00
Gael Guennebaud
ed6e07b2f6 various improvements of the plot generator in BTL 2008-07-12 21:41:32 +00:00
Gael Guennebaud
8233de8b69 various minor updates in the benchmark suite like non inlining
of some functions as well as the experimental C code used to design
efficient eigen's matrix vector products.
2008-07-12 12:14:08 +00:00
Gael Guennebaud
b7bd1b3446 Add a *very efficient* evaluation path for both col-major matrix * vector
and vector * row-major products. Currently, it is enabled only is the matrix
has DirectAccessBit flag and the product is "large enough".
Added the respective unit tests in test/product/cpp.
2008-07-12 12:12:02 +00:00
Gael Guennebaud
6f71ef8277 resurrected tvmet, added mt4, intel's MKL and handcoded vectorized backends
in the benchmark suite
2008-07-10 18:28:50 +00:00
Benoit Jacob
2b53fd4d53 some performance fixes in Assign.h reported by Gael. Some doc update in
Cwise.
2008-07-10 16:15:55 +00:00
Gael Guennebaud
7b4c6b8862 in BTL: a specific bench/action can be selected at runtime, e.g.:
BTL_CONFIG="-a ata" ctest -V -R eigen
  run the all benchmarks having "ata" in their name for all
  libraries matching the regexp "eigen"
2008-07-09 22:35:11 +00:00
Gael Guennebaud
c9b046d5d5 * added optimized paths for matrix-vector and vector-matrix products
(using either a cache friendly strategy or re-using dot-product
  vectorized implementation)
* add LinearAccessBit to Transpose
2008-07-09 22:30:18 +00:00
Benoit Jacob
25904802bc raah, results were corrupted by overflow. Now slice vectorization is
about a +25% speedup which is still nice as i expected zero or even
negative benefit.
2008-07-09 16:46:26 +00:00
Benoit Jacob
8f21a5e862 add benchmark for slice vectorization... expected it to be little or
zero benefit... turns out to be 20x speedup. Something is wrong.
2008-07-09 16:43:11 +00:00
Gael Guennebaud
28539e7597 imported a reworked version of BTL (Benchmark for Templated Libraries).
the modifications to initial code follow:
* changed build system from plain makefiles to cmake
* added eigen2 (4 versions: vec/novec and fixed/dynamic), GMM++, MTL4 interfaces
* added "transposed matrix * vector" product action
* updated blitz interface to use condensed products instead of hand coded loops
* removed some deprecated interfaces
* changed default storage order to column major for all libraries
* new generic bench timer strategy which is supposed to be more accurate
* various code clean-up
2008-07-09 14:04:48 +00:00
Gael Guennebaud
5f55ab524c * added a lazyAssign overload skipping .lazy() such that c = (<xpr>).lazy() such that
lazyAssign overloads of <xpr> are automatically called (this also reduces assign instansiations)
2008-07-09 13:54:21 +00:00
Gael Guennebaud
783eb6da9b I forgot that the previous commit needed minor changes outside the bench folder 2008-07-08 17:25:58 +00:00
Gael Guennebaud
77a622f2bb add Cholesky and eigensolver benchmark 2008-07-08 17:20:17 +00:00
Benoit Jacob
6f09d3a67d - many updates after Cwise change
- fix compilation in product.cpp with std::complex
- fix bug in MatrixBase::operator!=
2008-07-08 07:56:01 +00:00
Benoit Jacob
f5791eeb70 the big Array/Cwise rework as discussed on the mailing list. The new API
can be seen in Eigen/src/Core/Cwise.h.
2008-07-08 00:49:10 +00:00
Gael Guennebaud
c910c517b3 fix issues in previously added additionnal product tests 2008-07-06 19:02:03 +00:00
Benoit Jacob
a9d319d44f * do the ActualPacketAccesBit change as discussed on list
* add comment in Product.h about CanVectorizeInner
* fix typo in test/product.cpp
2008-07-04 12:43:55 +00:00
Gael Guennebaud
8463b7d3f4 * fix compilation issue in Product
* added some tests for product and swap
* overload .swap() for dynamic-sized matrix of same size
2008-07-02 16:05:33 +00:00
Gael Guennebaud
9433df83a7 * resurected Flagged::_expression used to optimize m+=(a*b).lazy()
(equivalent to the GEMM blas routine)
* added a GEMM benchmark
2008-07-01 16:20:06 +00:00
Benoit Jacob
95549007b3 * fix error in divergence test, now it is even faster
* add comments in render() in case anyone ever reads that :P
2008-07-01 14:23:01 +00:00
Benoit Jacob
a356ebd47d interleaved rendering balances the load better 2008-07-01 14:12:32 +00:00
Benoit Jacob
56d03f181e * multi-threaded rendering
* increased number of iterations, with more iterations done before
testing divergence. results in x2 speedup from vectorization.
2008-07-01 12:01:58 +00:00
Benoit Jacob
cacf986a7f - use double precision to store the position / zoom / other stuff
- some temporary fix to get a +50% improvement from vectorization until
  we have vectorisation for comparisons and redux
2008-06-30 07:33:08 +00:00
Gael Guennebaud
37a50fa526 * added an in-place version of inverseProduct which
might be twice faster fot small fixed size matrix
* added a sparse triangular solver (sparse version
  of inverseProduct)
* various other improvements in the Sparse module
2008-06-29 21:29:12 +00:00
Benoit Jacob
fbdecf09e1 fix little bug in computation of max_iter 2008-06-29 12:20:07 +00:00
Benoit Jacob
97a1038653 improve greatly mandelbrot demo:
- much better coloring
- determine max number of iterations and choice between float and double
  at runtime based on zoom level
- do draft renderings with increasing resolution before final rendering
2008-06-29 12:04:00 +00:00
Gael Guennebaud
027818d739 * added innerSize / outerSize functions to MatrixBase
* added complete implementation of sparse matrix product
  (with a little glue in Eigen/Core)
* added an exhaustive bench of sparse products including GMM++ and MTL4
  => Eigen outperforms in all transposed/density configurations !
2008-06-28 23:07:14 +00:00
Benoit Jacob
6917be9113 add mandelbrot demo 2008-06-28 20:33:47 +00:00
Benoit Jacob
55e08f7102 fix breakage from my last commit 2008-06-28 17:15:16 +00:00
Benoit Jacob
844f69e4a9 * update CMakeLists, only build instantiations if TEST_LIB is defined
* allow default Matrix constructor in dynamic size, defaulting to (1,
1), this is convenient in mandelbrot example.
2008-06-27 10:53:30 +00:00
Benoit Jacob
6de4871c8c fix a couple of issues in the new Map.h 2008-06-27 01:42:44 +00:00
Benoit Jacob
e27b2b95cf * rework Map, allow vectorization
* rework PacketMath and DummyPacketMath, make these actual template
specializations instead of just overriding by non-template inline
functions
* introduce ei_ploadt and ei_pstoret, make use of them in Map and Matrix
* remove Matrix::map() methods, use Map constructors instead.
2008-06-27 01:22:35 +00:00
Gael Guennebaud
e5d301dc96 various work on the Sparse module:
* added some glue to Eigen/Core (SparseBit, ei_eval, Matrix)
* add two new sparse matrix types:
   HashMatrix: based on std::map (for random writes)
   LinkedVectorMatrix: array of linked vectors
   (for outer coherent writes, e.g. to transpose a matrix)
* add a SparseSetter class to easily set/update any kind of matrices, e.g.:
   { SparseSetter<MatrixType,RandomAccessPattern> wrapper(mymatrix);
     for (...) wrapper->coeffRef(rand(),rand()) = rand(); }
* automatic shallow copy for RValue
* and a lot of mess !
plus:
* remove the remaining ArrayBit related stuff
* don't use alloca in product for very large memory allocation
2008-06-26 23:22:26 +00:00
Benoit Jacob
c5bd1703cb change derived classes methods from "private:_method()"
to "public:method()" i.e. reimplementing the generic method()
from MatrixBase.
improves compilation speed by 7%, reduces almost by half the call depth
of trivial functions, making gcc errors and application backtraces
nicer...
2008-06-26 20:08:16 +00:00
Benoit Jacob
25ba9f377c * add bench/benchVecAdd.cpp by Gael, fix crash (ei_pload on non-aligned)
* introduce packet(int), make use of it in linear vectorized paths
  --> completely fixes the slowdown noticed in benchVecAdd.
* generalize coeff(int) to linear-access xprs
* clarify the access flag bits
* rework api dox in Coeffs.h and util/Constants.h
* improve certain expressions's flags, allowing more vectorization
* fix bug in Block: start(int) and end(int) returned dyn*dyn size
* fix bug in Block: just because the Eval type has packet access
  doesn't imply the block xpr should have it too.
2008-06-26 16:06:41 +00:00
Benoit Jacob
5b0da4b778 make use of ei_pmadd in dot-product: will further improve performance
on architectures having a packed-mul-add assembly instruction.
2008-06-24 18:08:35 +00:00
Benoit Jacob
3b94436d2f * vectorize dot product, copying code from sum.
* make the conj functor vectorizable: it is just identity in real case,
  and complex doesn't use the vectorized path anyway.
* fix bug in Block: a 3x1 block in a 4x4 matrix (all fixed-size)
  should not be vectorizable, since in fixed-size we are assuming
  the size to be a multiple of packet size. (Or would you prefer
  Vector3d to be flagged "packetaccess" even though no packet access
  is possible on vectors of that type?)
* rename:
  isOrtho for vectors ---> isOrthogonal
  isOrtho for matrices ---> isUnitary
* add normalize()
* reimplement normalized with quotient1 functor
2008-06-24 15:13:00 +00:00
Benoit Jacob
c9560df4a0 * add ei_pdiv intrinsic, make quotient functor vectorizable
* add vdw benchmark from Tim's real-world use case
2008-06-23 22:00:18 +00:00
Gael Guennebaud
ac9aa47bbc optimize linear vectorization both in Assign and Sum (optimal amortized perf) 2008-06-23 15:50:28 +00:00
Gael Guennebaud
ea1990ef3d add experimental code for sparse matrix:
- uses the common "Compressed Column Storage" scheme
 - supports every unary and binary operators with xpr template
   assuming binaryOp(0,0) == 0 and unaryOp(0) = 0 (otherwise a sparse
   matrix doesnot make sense)
 - this is the first commit, so of course, there are still several shorcommings !
2008-06-23 13:25:22 +00:00
Benoit Jacob
03d19f3bae quick temporary fix for a perf issue we just identified with
vectorization....
now the sum benchmark runs 3x faster with vectorization than without.
2008-06-23 11:23:05 +00:00
Benoit Jacob
32596c5e9e add benchmark for sum 2008-06-23 11:03:27 +00:00
Benoit Jacob
dc9206cec5 split sum away from redux and vectorize it.
(could come back to redux after it has been vectorized,
and could serve as a starting point for that)
also make the abs2 functor vectorizable (for real types).
2008-06-23 10:32:48 +00:00
Benoit Jacob
8a967fb17c * implement slice vectorization. Because it uses unaligned
packet access, it is not certain that it will bring a performance
  improvement: benchmarking needed.
* improve logic choosing slice vectorization.
* fix typo in SSE packet math, causing crash in unaligned case.
* fix bug in Product, causing crash in unaligned case.
* add TEST_SSE3 CMake option.
2008-06-22 15:02:05 +00:00
Gael Guennebaud
8cef541b5a forgot to add the unit test array.cpp 2008-06-21 17:28:07 +00:00
Gael Guennebaud
32c5ea388e work on rotations in the Geometry module:
- convertions are done trough constructors and operator=
 - added a EulerAngles class
2008-06-21 15:01:49 +00:00
Benoit Jacob
574416b842 Override MatrixBase::eval() since matrices don't need
to be evaluated, it is enough to just read them.
2008-06-20 15:26:39 +00:00
Gael Guennebaud
54238961d6 * added a pseudo expression Array giving access to:
- matrix-scalar addition/subtraction operators, e.g.:
       m.array() += 0.5;
   - matrix/matrix comparison operators, e.g.:
      if (m1.array() < m2.array()) {}
* fix compilation issues with Transform and gcc < 4.1
2008-06-20 12:38:03 +00:00
Gael Guennebaud
e735692e37 move "enum" back to "const int" int ei_assign_impl: in fact, casting
enums to int is enough to get compile time constants with ICC.
2008-06-20 07:10:50 +00:00
Gael Guennebaud
fb4a151982 * more cleaning in Product
* make Matrix2f (and similar) vectorized using linear path
* fix a couple of warnings and compilation issues with ICC and gcc 3.3/3.4
  (cannot get Transform compiles with gcc 3.3/3.4, see the FIXME)
2008-06-19 23:00:51 +00:00
Gael Guennebaud
82c3cea1d5 * refactoring of Product:
* use ProductReturnType<>::Type to get the correct Product xpr type
  * Product is no longer instanciated for xpr types which are evaluated
  * vectorization of "a.transpose() * b" for the normal product (small and fixed-size matrix)
  * some cleanning
* removed ArrayBase
2008-06-19 17:33:57 +00:00
Gael Guennebaud
5dbfed1902 fix two bugs dicovered by the previous commit. 2008-06-16 16:39:58 +00:00
Benoit Jacob
bb1f4e44f1 * Block: row and column expressions in the inner direction
now have the Like1D flag.

* Big renaming:
  packetCoeff ---> packet
  VectorizableBit ---> PacketAccessBit
  Like1DArrayBit ---> LinearAccessBit
2008-06-16 14:54:31 +00:00
Benoit Jacob
9857764ae7 aaargh. 2008-06-16 11:20:29 +00:00
Benoit Jacob
478bfaf228 fix bug in computation of unrolling limit: div instead of mul 2008-06-16 11:18:59 +00:00
Benoit Jacob
c905b31b42 * Big rework of Assign.h:
** Much better organization
** Fix a few bugs
** Add the ability to unroll only the inner loop
** Add an unrolled path to the Like1D vectorization. Not well tested.
** Add placeholder for sliced vectorization. Unimplemented.

* Rework of corrected_flags:
** improve rules determining vectorizability
** for vectors, the storage-order is indifferent, so we tweak it
   to allow vectorization of row-vectors.

* fix compilation in benchmark, and a warning in Transpose.
2008-06-16 10:49:44 +00:00
Gael Guennebaud
bc0c7c57ed Added an extensible mechanism to support any kind of rotation
representation in Transform via the template static class
ToRotationMatrix.
Added a lightweight AngleAxis class (similar to Rotation2D).
2008-06-15 17:22:41 +00:00
Gael Guennebaud
0ee6b08128 * split Product to a DiagonalProduct template specialization
to optimize matrix-diag and diag-matrix products without
  making Product over complicated.
* compilation fixes in Tridiagonalization and HessenbergDecomposition
  in the case of 2x2 matrices.
* added an Orientation2D small class with similar interface than Quaternion
  (used by Transform to handle 2D and 3D orientations seamlessly)
* added a couple of features in Transform.
2008-06-15 11:54:18 +00:00
Gael Guennebaud
fbbd8afe30 Started a Transform class in the Geometry module to represent
homography.
Fix indentation in Quaternion.h
2008-06-15 08:33:44 +00:00
Gael Guennebaud
4af7089ab8 * Added a generalized eigen solver for the selfadjoint case.
(as new members to SelfAdjointEigenSolver)
  The QR module now depends on Cholesky.
* Fix Transpose to correctly preserve the *TriangularBit.
2008-06-14 19:42:12 +00:00
Gael Guennebaud
f07f907810 Add QR and Cholesky module instantiations in the lib.
To try it with the unit tests set the cmake variable TEST_LIB to ON.
2008-06-14 13:02:41 +00:00
Benoit Jacob
53289a8b64 * even though the _Flags default to the corrected value, still correct
them in the ei_traits, so that they're guaranteed even if the user
  specified his own non-default flags (like before).

  Measured to not make compilation any slower.
2008-06-13 08:09:48 +00:00
Benoit Jacob
c90c77051f * make the _Flags template parameter of Matrix default to the corrected
flags. This ensures that unless explicitly messed up otherwise,
  a Matrix type is equal to its own Eval type. This seriously reduces
  the number of types instantiated. Measured +13% compile speed, -7%
  binary size.

* Improve doc of Matrix template parameters.
2008-06-13 07:53:45 +00:00
Gael Guennebaud
e3fac69f19 Added a Hessenberg decomposition class for both real and complex matrices.
This is the first step towards a non-selfadjoint eigen solver.
Notes:
 - We might consider merging Tridiagonalization and Hessenberg toghether ?
 - Or we could factorize some code into a Householder class (could also be shared with QR)
2008-06-08 15:03:23 +00:00
Gael Guennebaud
4dd57b585d * rewrite of the QR decomposition:
- works for complex
  - allows direct access to the matrix R
* removed the scale by the matrix dimensions in MatrixBase::isMuchSmallerThan(scalar)
2008-06-07 22:47:11 +00:00
Gael Guennebaud
eb7b7b2cfc * remove Cross product expression: MatrixBase::cross() now returns a temporary
which is even better optimized by the compiler.
* Quaternion no longer inherits MatrixBase. Instead it stores the coefficients
  using a Matrix<> and provides only relevant methods.
2008-06-07 13:18:29 +00:00
Gael Guennebaud
6998037930 * move some compile time "if" to their respective unroller (assign and dot)
* fix a couple of compilation issues when unrolling is disabled
* reduce default unrolling limit to a more reasonable value
2008-06-07 01:07:48 +00:00
Gael Guennebaud
a172385720 Updated fuzzy comparisons to use L2 norm as all my experiments
tends to show L2 norm works very well here.
(the legacy implementation is still available via a preprocessor token
 to allow further experiments if needed...)
2008-06-06 18:37:53 +00:00
Gael Guennebaud
8769bfd9aa fix a compilation issue in non debug mode 2008-06-06 14:11:26 +00:00
Benoit Jacob
869394ee8b fix some compile errors with gcc 4.3, some warnings, some documentation 2008-06-06 13:10:00 +00:00
Gael Guennebaud
2126baf9dc add an optimized path for the tridiagonalization of a 3x3 matrix.
(useful for plane fitting, and covariance analysis of 3D data)
2008-06-04 13:41:32 +00:00
Gael Guennebaud
48262b9734 added a static assertion mechanism
(see notes in Core/util/StaticAssert.h for details)
2008-06-04 11:16:11 +00:00
Gael Guennebaud
60726f91a9 hack to to make the nomalloc unit test compiles with -pedantic 2008-06-04 10:15:48 +00:00
Gael Guennebaud
42ad9c4352 update of the eigeinsolver unit test to check complex 2008-06-03 18:04:36 +00:00
Gael Guennebaud
a0cff1a295 fix eigenvectors computations :) 2008-06-03 18:03:55 +00:00
Gael Guennebaud
915587d03d * add CommaInitializer::finished to allow the use of (Matrix3() << v0, v1, v2).finished()
as an argument of a function. Other possibilities for the name could be "end" or "matrix" ??
* various update in Quaternion, in particular I added a lot of FIXME about the API options,
  these have to be discussed and fixed.
2008-06-03 15:50:09 +00:00
Gael Guennebaud
196f38f5db improved Quaternion class:
- Euler angles and angle axis conversions,
 - stable spherical interpolation
 - documentation
 - update the respective unit test
2008-06-03 13:43:29 +00:00
Gael Guennebaud
bcb32839c2 fix building of examples 2008-06-03 09:43:59 +00:00
Gael Guennebaud
a9cf229e15 add a geometry unit test and fix a couple of typo in Quaternion.h 2008-06-03 07:32:12 +00:00
Benoit Jacob
8de4d92b70 - get the doc of the enums in MatrixBase right
- get the doc of the flags in Constants right
- finally give up with SEPARATE_MEMBER_PAGES: it triggers too big
  Doxygen bugs, and produces too many small pages. So we have one
  huge page for MatrixBase at currently 300kb and going up, so the
  solution especially for users with low bandwidth will be to provide
  an archive of the html documentation.
2008-06-03 02:06:18 +00:00
Gael Guennebaud
366971bea4 * start of the Geometry module with a cross product and quaternion expressions
(haven't tried them yet)
* applied the meta selector rule to MatrixBase::swap()
2008-06-02 22:58:36 +00:00
Benoit Jacob
75de41a00b big changes in Doxygen configuration; work around bug with doxygen parsing of
initialized enum values showing the last word the initializer instead of the actual
enum value's name; add some more docs.
2008-06-02 20:08:37 +00:00
Benoit Jacob
ac88feebb7 work around Doxygen bug triggered by r814874, which caused many classes to disappear
from the docs.
2008-06-02 19:29:23 +00:00
Benoit Jacob
6209bbe286 doc improvements: fix linking in Mainpage.dox, improved Doxyfile.in 2008-06-02 18:27:37 +00:00
Gael Guennebaud
f2ebbee274 added unit tests for sizeof and dynamic memory allocation 2008-06-02 14:54:52 +00:00
Gael Guennebaud
54ae2ac7e8 Added the computation of eigen vectors in the symmetric eigen solver.
However the eigen vectors are not correct yet, but I really cannot find the
problem.
2008-06-02 12:52:08 +00:00
Benoit Jacob
3b0523041a since m*m.adjoint() is positive, so are its eigenvalues, so no need for
cwiseAbs()
2008-06-02 04:45:02 +00:00
Benoit Jacob
0444e3601a - add MatrixBase::eigenvalues() convenience method
- add MatrixBase::matrixNorm(); in the non-selfadjoint case, we reduce to the
  selfadjoint case by using the "C*-identity" a.k.a.
	norm of x = sqrt(norm of x * x.adjoint())
2008-06-02 04:42:45 +00:00
Benoit Jacob
92b7e2d6a1 fix a couple of issues making the eigensolver test compile and run without aborting
on an assert. Had to fix a stupid bug in Block -- very strange we hadn't hit it
before.

However the test still fails.
2008-06-02 02:06:33 +00:00
Gael Guennebaud
001b01a290 Rewrite from scratch of the eigen solver for symmetric matrices
which now supports selfadjoint matrix. The implementation follows
Golub's famous book.
2008-06-02 00:30:26 +00:00
Gael Guennebaud
06752b2b77 * added a Tridiagonalization class for selfadjoint matrices
* added MatrixBase::real()
* added the ability to extract a selfadjoint matrix from the
  lower or upper part of a matrix, e.g.:
    m.extract<Upper|SelfAdjoint>()
  will ignore the strict lower part and return a selfadjoint.
  This is compatible with ZeroDiag and UnitDiag.
2008-06-01 17:20:18 +00:00
Benoit Jacob
dc5fd8dfff meagre outcome for so much time spent!
* fix inverse() bug discovered by Gael's test
* fix warnings introduced by the new Diagonal stuff
* update Doxyfile to v1.5.6
2008-06-01 03:36:49 +00:00
Gael Guennebaud
d5cbb1d002 added a unit test for Inverse
discovered that m1 == m1.inverse().inverse() fails though
m1.inverse()*m1 == I
2008-05-31 23:44:11 +00:00
Gael Guennebaud
64169389ed added an *optional* Eigen2 dynamic library.
it allows the possiblity to save some compilation time by linking to it
*and* defining the token EIGEN_EXTERN_INSTANCIATIONS
2008-05-31 23:21:49 +00:00
Gael Guennebaud
fcf4457b78 added optimized matrix times diagonal matrix product via Diagonal flag shortcut. 2008-05-31 21:35:11 +00:00
Gael Guennebaud
310f7aa096 moved purely "array" related stuff to a new module Array.
This include:
 - cwise Pow,Sin,Cos,Exp...
 - cwise Greater and other comparison operators
 - .any(), .all() and partial reduction
 - random
2008-05-31 18:11:48 +00:00
Gael Guennebaud
a2f71f9d7e updated EigenSolver to use .coeff / .coeffRef 2008-05-31 16:31:10 +00:00
Gael Guennebaud
c9fb248c36 simply a bit the basic product moving dynamic loops
to the corresponding special case of the unrollers.
the latter ones are therefore re-named *product_impl.
2008-05-31 15:06:26 +00:00
Gael Guennebaud
f5e599e489 * replace compile-time-if by meta-selector in Assign.h
as it speed up compilation.
* fix minor typo introduced in the previous commit
2008-05-31 14:42:07 +00:00
Gael Guennebaud
e2ac5d244e Added ArrayBit to get the ability to manipulate a Matrix like a simple scalar.
In particular this flag changes the behavior of operator* to a coeff wise product.
2008-05-29 22:33:07 +00:00
Benoit Jacob
b501e08d81 now the unit-tests (hence all of Eigen) don't depend on Qt at all
anymore.
2008-05-29 03:37:16 +00:00
Benoit Jacob
486fdb26a1 many small fixes and documentation improvements,
this should be alpha5.
2008-05-29 03:12:30 +00:00
Gael Guennebaud
c1559d3079 * updated the assignement operator macro so that overloads
in MatrixBase work
* removed product_selector and cleaned Product.h a bit
* cleaned Assign.h a bit
2008-05-28 22:56:19 +00:00
Gael Guennebaud
8711e26c8a * change Flagged to take into account NestByValue only
* bugfix in Assign and cache friendly product (weird that worked before)
* improved argument evaluation in Product
2008-05-28 22:11:47 +00:00
Gael Guennebaud
73084dc754 * added _*coeffRef members in NestedByValue
* added ConjugateReturnType and AdjointReturnType that are type-defined to Derived&
  and Transpose<Derived> if the scalar type is not complex: this avoids abusive copies in
  the cache friendly Product
2008-05-28 09:09:18 +00:00
Benoit Jacob
f54760c889 hehe, the complicated nesting scheme in Flagged in the previous commit
was a sign that we were doing something wrong. In fact, having
NestByValue as a special case of Flagged was wrong, and the previous
commit, while not buggy, was inefficient because then when the resulting
NestByValue xpr was nested -- hence copied -- the original xpr which was
already nested by value was copied again; hence instead of 1 copy we got
3 copies.
The solution was to ressuscitate the old Temporary.h (renamed
NestByValue.h) as it was the right approach.
2008-05-28 05:14:16 +00:00
Benoit Jacob
aebecae510 * find the proper way of nesting the expression in Flagged:
finally that's more subtle than just using ei_nested, because when
  flagging with NestByValueBit we want to store the expression by value
  already, regardless of whether it already had the NestByValueBit set.
* rename temporary() ----> nestByValue()
* move the old Product.h to disabled/, replace by what was ProductWIP.h
* tweak -O and -g flags for tests and examples
* reorder the tests -- basic things go first
* simplifications, e.g. in many methoeds return derived() and count on
  implicit casting to the actual return type.
* strip some not-really-useful stuff from the heaviest tests
2008-05-28 04:38:16 +00:00
Gael Guennebaud
559233c73e * fix the QR module to use extract/part instead of the previous triangular stuff
* added qr and eigensolver tests
* fix a compilation warning in Matrix copy constructor
2008-05-27 09:16:27 +00:00
Benoit Jacob
5aa00f6870 part 2 of big change: rename Triangular.h -> Extract.h
(svn required to commit that separately)
2008-05-27 05:50:36 +00:00
Benoit Jacob
953efdbfe7 - introduce Part and Extract classes, splitting and extending the former
Triangular class
- full meta-unrolling in Part
- move inverseProduct() to MatrixBase
- compilation fix in ProductWIP: introduce a meta-selector to only do
  direct access on types that support it.
- phase out the old Product, remove the WIP_DIRTY stuff.
- misc renaming and fixes
2008-05-27 05:47:30 +00:00
Gael Guennebaud
8f1fc80a77 some documentation fixes (Cwise* and Cholesky) 2008-05-22 16:31:00 +00:00
Gael Guennebaud
94e1629a1b * improved product performance:
- fallback to normal product for small dynamic matrices
 - overloaded "c += (a * b).lazy()" to avoid the expensive and useless temporary and setZero()
   in such very common cases.
* fix a couple of issues with the flags
2008-05-22 14:51:25 +00:00
Gael Guennebaud
106a0c1bef restored the product test 2008-05-22 12:35:09 +00:00
Gael Guennebaud
9ab6e186eb remove Like1DArrayBit in Transpose 2008-05-22 12:25:11 +00:00
Gael Guennebaud
522e24f2d7 update of the testing framework:
replaced the QTestLib framework my custom macros
and a (optional) custom script to run the tests from ctest.
2008-05-22 12:18:55 +00:00
Gael Guennebaud
c6789a279c Fix compilation issues with MSVC and NVCC.
Added a few typedef of complex return types in MatrixBase (Needed by MSVC)
2008-05-15 09:40:11 +00:00
Benoit Jacob
5da60897ab Introduce generic Flagged xpr, remove already Lazy.h and Temporary.h
Rename DefaultLostFlagMask --> HerediraryBits
2008-05-14 08:20:15 +00:00
Gael Guennebaud
fd2e9e5c3c * Clean a bit the eigenvalue solver: if the matrix is known to be
selfadjoint at compile time, then it returns real eigenvalues.
* Fix a couple of bugs with the new product.
2008-05-13 07:40:25 +00:00
Benoit Jacob
3eccfd1a78 -fix certain #includes
-fix CMakeLists, public headers weren't getting installed
2008-05-12 21:15:17 +00:00
Gael Guennebaud
4317fad869 * Added several cast to int of the enums (needed for some compilers)
* Fix a mistake in CwiseNullary.
* Added a CoreDeclarions header that declares only the forward declarations
  and related basic stuffs.
2008-05-12 18:09:30 +00:00
Benoit Jacob
678f18fce4 put inline keywords everywhere appropriate. So we don't need anymore to pass
-finline-limit=1000 to gcc to get good performance. By the way some cleanup.
2008-05-12 17:34:46 +00:00
Gael Guennebaud
f0eb3d2d3b updated product test to carefully test all scalar types
and fix an issue in the triangular test
2008-05-12 10:26:10 +00:00
Gael Guennebaud
45cda6704a * Draft of a eigenvalues solver
(does not support complex and does not re-use the QR decomposition)

* Rewrite the cache friendly product to have only one instance per scalar type !
  This significantly speeds up compilation time and reduces executable size.
  The current drawback is that some trivial expressions might be
  evaluated like conjugate or negate.

* Renamed "cache optimal" to "cache friendly"

* Added the ability to directly access matrix data of some expressions via:
  - the stride()/_stride() methods
  - DirectAccessBit flag (replace ReferencableBit)
2008-05-12 10:23:09 +00:00
Benoit Jacob
dca416cace move arch-specific code to arch/SSE and arch/AltiVec subdirs.
rename the noarch PacketMath.h to DummyPacketMath.h
2008-05-12 08:30:42 +00:00
Benoit Jacob
3562b01105 * Give Konstantinos a copyright line
* Fix compilation of Inverse.h with vectorisation
* Introduce EIGEN_GNUC_AT_LEAST(x,y) macro doing future-proof (e.g. gcc v5.0) check
* Only use ProductWIP if vectorisation is enabled
* rename EIGEN_ALWAYS_INLINE -> EIGEN_INLINE with fall-back to inline keyword
* some cleanup/indentation
2008-05-12 08:12:40 +00:00
Benoit Jacob
4f6d7abc87 only include SSE3 headers if compiling with SSE3 support 2008-05-08 09:15:16 +00:00
Gael Guennebaud
4754fa4868 removed "sort brief" in doxygen documentation 2008-05-08 08:13:38 +00:00
Gael Guennebaud
bf5326c3ca * Added ReferencableBit flag to known if coeffRef is available.
(needed by the new product implementation)
* Make the packet* members template to support aligned and unaligned
  access. This makes Block vectorizable. Combined with ReferencableBit,
  we should be able to determine at runtime (in some specific cases) if
  an aligned vectorization is possible or not.
* Improved the new product implementation to robustly handle all cases,
  it now passes all the tests.
* Renamed the packet version ei_predux to ei_preduxp to avoid name collision.
2008-05-08 08:12:52 +00:00
Gael Guennebaud
64c49de7ba * split PacketMath.h to SSE and Altivec specific files
* improved the flexibility of the new product implementation,
  now all sizes seems to be properly handled.
2008-05-05 17:19:47 +00:00
Gael Guennebaud
46fa4c713f * Started support for unaligned vectorization.
* Introduce a new highly optimized matrix-matrix product for large
  matrices. The code is still highly experimental and it is activated
  only if you define EIGEN_WIP_PRODUCT at compile time.
  Currently the third dimension of the product must be a factor of
  the packet size (x4 for floats) and the right handed side matrix
  must be column major.
  Moreover, currently c = a*b; actually computes c += a*b !!
  Therefore, the code is provided for experimentation purpose only !
  These limitations will be fixed soon or later to become the default
  product implementation.
2008-05-05 10:23:29 +00:00
Benoit Jacob
8c6007f80e * Patch by Konstantinos Margaritis: AltiVec vectorization.
* Fix several warnings, temporarily disable determinant test.
2008-05-03 12:21:23 +00:00
Gael Guennebaud
0545df2149 slighly improved the cache friendly product to use mul-add only 2008-05-03 10:01:30 +00:00
Gael Guennebaud
a6655dd91a added packet mul-add function (ei_pmad) and updated Product to use it.
this change nothing for current SSE architecture but might be helpful
for altivec/cell and up comming AMD processors.
2008-05-03 00:45:08 +00:00
Gael Guennebaud
102e029dad Removed ei_pload1, use posix_memalign to allocate aligned memory,
and make Product ok when only one side is vectorizable (and the product
is still vectorized)
2008-05-02 13:30:12 +00:00
Gael Guennebaud
e19f9bc523 added a test for triangular matrices 2008-05-02 11:35:59 +00:00
Benoit Jacob
890a8de962 Make products always eval into expressions. Improves performance
in benchmark. Still not as fasts as explicit eval(), strangely.
2008-05-02 08:53:23 +00:00
Gael Guennebaud
ef5b20bc50 fix flag and cost computations for nested expressions 2008-05-01 18:58:30 +00:00
Gael Guennebaud
5588def0cf nullary xpr are now vectorized 2008-05-01 14:28:53 +00:00
Gael Guennebaud
02f1615d2a Enable vectorization of product with dynamic matrices,
extended cache optimal product to work in any row/column
major situations, and a few bugfixes (forgot to add the
Cholesky header, vectorization of CwiseBinary)
2008-05-01 13:53:05 +00:00
Gael Guennebaud
6486991ac3 some cleaning in Cholesky and removed evil ei_sqrt of complex 2008-04-27 18:57:28 +00:00
Gael Guennebaud
64bacf1c3f * added ei_sqrt for complex
* updated Cholesky to support complex
* correct result_type for abs and abs2 functors
2008-04-27 14:05:40 +00:00
Gael Guennebaud
4ffffa670e added Cholesky module 2008-04-27 10:57:32 +00:00
Gael Guennebaud
1ec2d21ca5 Fixed a couple of issues introduced in previous commits.
Added a test for Triangular.
2008-04-26 20:28:27 +00:00
Gael Guennebaud
b4c974d059 Added triangular assignement, e.g.:
m.upper() = a+b;
only updates the upper triangular part of m.
Note that:
 m = (a+b).upper();
updates all coefficients of m (but half of the additions
will be skiped)

Updated back/forward substitution to better use Eigen's capability.
2008-04-26 19:20:26 +00:00
Gael Guennebaud
4c92150676 Added Triangular expression to extract upper or lower (strictly or not)
part of a matrix. Triangular also provide an optimised method for forward
and backward substitution. Further optimizations regarding assignments and
products might come later.

Updated determinant() to take into account triangular matrices.

Started the QR module with a QR decompostion algorithm.
Help needed to build a QR algorithm (eigen solver) based on it.
2008-04-26 18:26:05 +00:00
Gael Guennebaud
62bf0bbd59 fix a bug in determinant of 4x4 matrices and a small type issue in Inverse 2008-04-26 08:56:52 +00:00
Gael Guennebaud
173e582e3c added a tough test to check the determinant that currently fails 2008-04-25 23:13:20 +00:00
Gael Guennebaud
6f2c72fb53 Various fixes in:
- vector to vector assign
 - PartialRedux
 - Vectorization criteria of Product
 - returned type of normalized
 - SSE integer mul
2008-04-25 23:10:37 +00:00
Gael Guennebaud
a451835bce Make the explicit vectorization much more flexible:
- support dynamic sizes
 - support arbitrary matrix size when the matrix can be seen as a 1D array
   (except for fixed size matrices where the size in Bytes must be a factor of 16,
    this is to allow compact storage of a vector of matrices)
Note that the explict vectorization is still experimental and far to be completely tested.
2008-04-25 15:46:18 +00:00
Gael Guennebaud
30d47b5250 forgot to add a file in the previous commit 2008-04-24 20:25:55 +00:00
Gael Guennebaud
9385793f71 Fix a couple of issue with the vectorization. In particular, default ei_p* functions
are provided to handle not suported types seemlessly.

Added a generic null-ary expression with null-ary functors. They replace
Zero, Ones, Identity and Random.
2008-04-24 18:35:39 +00:00
Benoit Jacob
6ae037dfb5 give up on OpenMP... for now 2008-04-18 07:57:46 +00:00
Benoit Jacob
acfd6f3bda - add _packetCoeff() to Inverse, allowing vectorization.
- let Inverse take template parameter MatrixType instead
  of ExpressionType, in order to reduce executable code size
  when taking inverses of xpr's.
- introduce ei_corrected_matrix_flags : the flags template
  parameter to the Matrix class is only a suggestion. This
  is also useful in ei_eval.
2008-04-16 07:18:27 +00:00
Benoit Jacob
43e2bc14fe +5% optimization in 4x4 inverse:
-only evaluate block expressions for which that is beneficial
-don't check for invertibility unless requested
2008-04-15 20:39:27 +00:00
Benoit Jacob
6747b45ae7 for 4x4 matrices implement the special algorithm that Markos proposed,
falling back to the general algorithm in the bad case.
2008-04-15 20:15:36 +00:00
Benoit Jacob
2a86f052a5 - optimized determinant calculations for small matrices (size <= 4)
(only 30 muls for size 4)
- rework the matrix inversion: now using cofactor technique for size<=3,
  so the ugly unrolling is only used for size 4 anymore, and even there
  I'm looking to get rid of it.
2008-04-14 17:07:12 +00:00
Benoit Jacob
9789c04467 when evaluating an xpr, the result can now be vectorizable
even if the xpr itself wasn't vectorizable.
2008-04-14 08:55:12 +00:00
Benoit Jacob
ea3ccb1e8c * Start of the LU module, with matrix inversion already there and
fully optimized.
* Even if LargeBit is set, only parallelize for large enough objects
  (controlled by EIGEN_PARALLELIZATION_TRESHOLD).
2008-04-14 08:20:24 +00:00
Benoit Jacob
ab4046970b * Add fixed-size template versions of corner(), start(), end().
* Use them to write an unrolled path in echelon.cpp, as an
  experiment before I do this LU module.
* For floating-point types, make ei_random() use an amplitude
  of 1.
2008-04-12 17:37:27 +00:00
Benoit Jacob
dcebc46cdc - cleaner use of OpenMP (no code duplication anymore)
using a macro and _Pragma.
- use OpenMP also in cacheOptimalProduct and in the
  vectorized paths as well
- kill the vector assignment unroller. implement in
  operator= the logic for assigning a row-vector in
  a col-vector.
- CMakeLists support for building tests/examples
  with -fopenmp and/or -msse2
- updates in bench/, especially replace identity()
  by ones() which prevents underflows from perturbing
  bench results.
2008-04-11 14:28:42 +00:00
Benoit Jacob
7bee90a62a Merge Gael's experimental OpenMP parallelization support into Assign.h. 2008-04-11 08:18:47 +00:00
Gael Guennebaud
187b1543ce added a vectorized version of Product::_cacheOptimalProduct,
added the possibility to disable the vectorization using EIGEN_DONT_VECTORIZE
(some architectures has SSE support by default)
2008-04-10 12:34:22 +00:00
Benoit Jacob
613c49b475 * add typedefs for matrices/vectors with LargeBit
* add -pedantic to CXXFLAGS
* cleanup intricated expressions with && and ||
  which gave warnings because of "missing" parentheses
* fix compile error in NumTraits, apparently discovered
  by -pedantic
2008-04-10 10:33:50 +00:00
Benoit Jacob
ca448d2537 split those files in util/
some more renaming
2008-04-10 09:41:13 +00:00
Benoit Jacob
9d8876ce82 * rename XprCopy -> Nested
* rename OperatorEquals -> Assign
* move Util.h and FwDecl.h to a util/ subdir
2008-04-10 09:01:28 +00:00
Gael Guennebaud
212da8ffe0 fix priority operator bugs in the computation
of the VectorizableBit flag, now benchmark.cpp is properly vectorized
2008-04-09 18:24:13 +00:00
Gael Guennebaud
8f957564ec a better bugfix in ei_matrix_operator_equals_packet_unroller 2008-04-09 18:04:26 +00:00
Gael Guennebaud
d95d952e92 bugfix in ei_matrix_operator_equals_packet_unroller 2008-04-09 17:44:59 +00:00
Gael Guennebaud
1985fb0551 Added initial experimental support for explicit vectorization.
Currently only the following platform/operations are supported:
 - SSE2 compatible architecture
 - compiler compatible with intel's SSE2 intrinsics
 - float, double and int data types
 - fixed size matrices with a storage major dimension multiple of 4 (or 2 for double)
 - scalar-matrix product, component wise: +,-,*,min,max
 - matrix-matrix product only if the left matrix is vectorizable and column major
   or the right matrix is vectorizable and row major, e.g.:
   a.transpose() * b is not vectorized with the default column major storage.
To use it you must define EIGEN_VECTORIZE and EIGEN_INTEL_PLATFORM.
2008-04-09 12:31:55 +00:00
Benoit Jacob
4920f2011e finish making use of CoeffReadCost and the new XprCopy everywhere
seems appropriate to me.
2008-04-08 14:15:01 +00:00
Benoit Jacob
371d302efb - merge ei_xpr_copy and ei_eval_if_needed_before_nesting
- make use of CoeffReadCost to determine when to unroll the loops,
  for now only in Product.h and in OperatorEquals.h
performance remains the same: generally still not as good as before the
big changes.
2008-04-06 18:01:03 +00:00
Benoit Jacob
30ec34de36 fix compilation (finish removal of EIGEN_UNROLLED_LOOPS) 2008-04-05 14:20:30 +00:00
Benoit Jacob
61e58cf602 fixes as discussed with Gael on IRC. Mainly, in Fuzzy.h, and Dot.h, use
ei_xpr_copy to evaluate args when needed. Had to introduce an ugly
trick with ei_unref as when the XprCopy type is a reference one can't
directly access member typedefs such as Scalar.
2008-04-05 14:15:02 +00:00
Gael Guennebaud
b4a156671f * make use of the EvalBeforeNestingBit and EvalBeforeAssigningBit
in ei_xpr_copy and operator=, respectively.
 * added Matrix::lazyAssign() when EvalBeforeAssigningBit must be skipped
   (mainly internal use only)
 * all expressions are now stored by const reference
 * added Temporary xpr: .temporary() must be called on any temporary expression
   not directly returned by a function (mainly internal use only)
 * moved all functors in the Functors.h header
 * added some preliminaries stuff for the explicit vectorization
2008-04-05 11:10:54 +00:00
Gael Guennebaud
048910caae * added cwise comparisons
* added "all" and "any" special redux operators
 * added support bool matrices
 * added support for cost model of STL functors via ei_functor_traits
  (By default ei_functor_traits query the functor member Cost)
2008-04-03 18:13:27 +00:00
Benoit Jacob
249dc4f482 current state of the mess. One line fails in the tests, and
useless copies are made when evaluating nested expressions.
Changes:
- kill LazyBit, introduce EvalBeforeNestingBit and EvalBeforeAssigningBit
- product and random don't evaluate immediately anymore
- eval() always evaluates
- change the value of Dynamic to some large positive value,
  in preparation of future simplifications
2008-04-03 16:54:19 +00:00
Benoit Jacob
b8900d0b80 More clever evaluation of arguments: now it occurs in earlier, in operator*,
before the Product<> type is constructed. This resets template depth on each
intermediate evaluation, and gives simpler code. Introducing
ei_eval_if_expensive<Derived, n> which evaluates Derived if it's worth it
given that each of its coeffs will be accessed n times. Operator*
uses this with adequate values of n to evaluate args exactly when needed.
2008-04-03 14:17:56 +00:00
Gael Guennebaud
4448f2620d fix a compilation issue with gcc-3.3 and ei_result_of 2008-04-03 12:39:39 +00:00
Benoit Jacob
d1a29d6319 -new: recursive costs system, useful to determine automatically
when to evaluate arguments and when to meta-unroll.
-use it in Product to determine when to eval args. not yet used
 to determine when to unroll. for now, not used anywhere else but
 that'll follow.
-fix badness of my last commit
2008-04-03 11:10:17 +00:00
Benoit Jacob
e74fbfb2bc - remove Eval/EvalOMP (moving them to a disabled/ subdir in order
to preserve SVN history). They are made useless by the new
  ei_eval_unless_lazy.
- introduce a generic Eval member typedef so one can do e.g.
  T t; U u; Product<T, U>::Eval m; m = t*u;
2008-03-31 17:24:09 +00:00
Benoit Jacob
cff5e3ce9c Make use of the LazyBit, introduce .lazy(), remove lazyProduct. 2008-03-31 16:20:06 +00:00
Benoit Jacob
f279162ec4 * introducte recursive Flags system for the expressions
-- currently 3 flags: RowMajor, Lazy and Large
 -- only RowMajor actually used for now
* many minor improvements
2008-03-30 18:43:22 +00:00
Benoit Jacob
758b26551a * fix compilation with gcc-4.0 which doesn't like "using" too much
* add Eigen:: in some macros to allow using them from outside
  of namespace Eigen
Problems and solutions communicated by Gael.
2008-03-29 16:48:04 +00:00
Benoit Jacob
c9b0dcd733 look at that subtle difference in Product.h...
the cacheOptimal is only good for large enough matrices.
When taking a block in a fixed-size (hence small) matrix,
the SizeAtCompileTime is Dynamic hence that's not a good
indicator. This example shows that the good indicator is
MaxSizeAtCompileTime.
Result: +10% speed in echelon.cpp
2008-03-26 09:29:29 +00:00
Benoit Jacob
a994e51c96 * add Gael copyright lines on 2 more files
* macro renaming: EIGEN_NDEBUG becomes EIGEN_NO_DEBUG
  as this is much better (and similar to Qt) and
  EIGEN_CUSTOM_ASSERT becomes EIGEN_USE_CUSTOM_ASSERT
* protect Core header by a EIGEN_CORE_H
2008-03-26 09:13:11 +00:00
Benoit Jacob
729618c945 * #define EIGEN_NDEBUG now also disables asserts. Useful
to disable eigen's asserts without disabling one's own program's
  asserts. Notice that Eigen code should now use ei_assert()
  instead of assert().
* Remove findBiggestCoeff() as it's now almost redundant.
* Improve echelon.cpp: inner for loop replaced by xprs.
* remove useless "(*this)." here and there. I think they were
  first introduced by automatic search&replace.
* fix compilation in Visitor.h (issue triggered by echelon.cpp)
* improve comment on swap().
2008-03-26 08:48:04 +00:00
Gael Guennebaud
4342f024d9 * support for matrix-scalar quotient with integer scalar types.
* added cache efficient matrix-matrix product.
   - provides a huge speed-up for large matrices.
   - currently it is enabled when an explicit unrolling is not possible.
2008-03-21 20:26:14 +00:00
Benoit Jacob
0ef1efdbdb * cleanup: in public api docs, don't put \sa links to \internal things.
(the global funcs in MathFunctions.h and Fuzzy.h don't count as internal).
* Mainpage.dox. Add a few prospective Eigen users; change the recommended
  -finline-limit from 10000 to 1000. The reason is: it could be harmful to have
  a too big value here, couldn't it? (e.g. exceedingly large executables, cache
  misses). Looking at gcc, a value of 900 would exactly mean "determine the inlining
  of all functions as if they were marked with 'inline' keyword". So a value of
  1000 seems a reasonable round number. In the benchmark that motivated this
  (TestEigenSolvers) a value of 400 is enough on my system.
2008-03-17 07:35:22 +00:00
Benoit Jacob
af131fe770 update to fix compilation 2008-03-16 21:04:33 +00:00
Gael Guennebaud
612350e3f8 * Added a generic *redux* mini framework allowing custom redux operations
as well as partial redux (vertical or horizontal redux).
   Includes shortcuts for: sum, minCoeff and maxCoeff.
   There is no shortcut for the partial redux.

 * Added a generic *visitor* mini framework. A visitor is a custom object
   sequentially applied on each coefficient with knowledge of its value and
   coordinates.
   It is currentlly used to implement minCoeff(int*,int*) and maxCoeff(int*,int*).
   findBiggestCoeff is now a shortcut for "this->cwiseAbs().maxCoeff(i,j)"

 * Added coeff-wise min and max.
 * fixed an issue with ei_pow(int,int) and gcc < 4.3 or ICC
2008-03-16 14:36:25 +00:00
Benoit Jacob
29184ad27d - introduce sum() returning the sum of the coeffs of a vector
- reimplement trace() as just diagonal().sum()
- apidoc fixes
2008-03-15 11:05:38 +00:00
Benoit Jacob
fb3438e609 - expand MathFunctions.h to provide more functions, like exp, log...
- add cwiseExp(), cwiseLog()...
   --> for example, doing a gamma-correction on a bitmap image stored as
       an array of floats is a simple matter of:
         Eigen::Map<VectorXf> m = VectorXf::map(bitmap,size);
         m = m.cwisePow(gamma);
- apidoc improvements, reorganization of the \name's
- remove obsolete examples
- remove EIGEN_ALWAYS_INLINE on lazyProduct(), it seems useless.
2008-03-14 10:38:37 +00:00
Benoit Jacob
fe569b060c get rid of MatrixRef, simplifications. 2008-03-13 20:36:01 +00:00
Gael Guennebaud
908a0fbab5 small fix of VERIFY_ASSERT in debug mode 2008-03-13 09:51:18 +00:00
Benoit Jacob
afc64f3332 a lot of renaming
internal classes: AaBb -> ei_aa_bb
IntAtRunTimeIfDynamic -> ei_int_if_dynamic
unify UNROLLING_LIMIT (there was no reason to have operator= use
a higher limit)
etc...
2008-03-13 09:33:26 +00:00
Gael Guennebaud
16257d44dd fixed an issue with VERIFY_ASSERT 2008-03-12 18:44:42 +00:00
Gael Guennebaud
35bce20954 Removed Column and Row in favor of Block 2008-03-12 18:10:52 +00:00
Benoit Jacob
6da4d9d256 fix compilation (forgot to update that file after last big change) 2008-03-12 17:25:14 +00:00
Benoit Jacob
2ee68a074e generalized ei_traits<>.
Finally the importing macro is named EIGEN_BASIC_PUBLIC_INTERFACE
because it does not only import the ei_traits, it also makes the base class
a friend, etc.
2008-03-12 17:17:36 +00:00
Benoit Jacob
01572b9f54 big change: MatrixBase only takes one template parameter "Derived", the
template parameter "Scalar" is removed. This is achieved by introducting a
template <typename Derived> struct Scalar to achieve a forward-declaration of
the Scalar typedefs.
2008-03-10 17:23:11 +00:00
Gael Guennebaud
9d9d81ad71 * basic support for multicore CPU via a .evalOMP() which
internaly uses OpenMP if enabled at compile time.
 * added a bench/ folder with a couple benchmarks and benchmark tools.
2008-03-09 16:13:47 +00:00
Gael Guennebaud
f64311e07d Extended the comma initializer to support xpr on the right side:
Matrix3i mat; Vector2i vec(33,66);
  mat << vec.transpose(), 99,
         vec, Matrix2i::random();
2008-03-08 19:46:06 +00:00
Gael Guennebaud
721626dfc5 * Added support for a comma initializer: mat.block(i,j,2,2) << 1, 2, 3, 4;
If the number of coefficients does not match the matrix size, then an assertion is raised.
  No support for xpr on the right side for the moment.

* Added support for assertion checking. This allows to test that an assertion is indeed raised
  when it should be.

* Fixed a mistake in the CwiseUnary example.
2008-03-08 19:02:24 +00:00
Gael Guennebaud
138aad0ed0 * coefficient wise operators are more generic, with controllable result type.
- compatible with current STL's functors as well as with the extention proposal (TR1)
 * thanks to the above, Cast and ScalarMultiple have been removed
 * benchmark_suite is more flexible (compiler and matrix size)
2008-03-06 11:36:27 +00:00
Gael Guennebaud
8e0d548039 * Fix a compilation issue with large fixed-size matrices: the unrollers were always instanciated.
* the unrolling limits are configurable at compile time.
2008-03-05 13:18:19 +00:00
Benoit Jacob
861c6f4c9b renaming: ref() --> asArg() 2008-03-04 17:08:23 +00:00
Gael Guennebaud
f65cca5d1d * Eigen compiles with any GCC versions from, at least, 3.3 without the previous ugly hack :)
* Renamed the scalar functors with the "Scalar" prefix (instead of "Cwise")
2008-03-04 12:34:58 +00:00
Gael Guennebaud
46885d33bf Removed trailling spaces. 2008-03-03 11:02:52 +00:00
Gael Guennebaud
255689231d * Added generic unary operators (replace Opposite and Conjugate)
* functor templates are not template template parameter anymore
   (this allows to make templated functors !)
 * Main page: extented compiler discussion
 * A small hack to support gcc 3.4 and 4.0 (see the main page)
 * Fix a cast type issue in Cast
 * Various doxygen updates (mainly Cwise stuff and added doxygen groups
   in MatrixBase to split the huge memeber list, still not perfect though)
 * Updated Gael's email address
2008-03-03 10:52:44 +00:00
Benoit Jacob
ed20f64d68 release alpha4, Gael edition 2008-02-29 14:50:11 +00:00
Benoit Jacob
a2f8d4be6a Patch by Gael Guennebaud: coeff-wise binary operators.
This unifies + and - and moreover this patch introduces
coeff-wise * and / based on this. Also, corresponding test.
2008-02-29 14:35:14 +00:00
Benoit Jacob
f12e9c53ac Patch by Gael Guennebaud: unify fixed-size and dynamic-size Block
expressions, update documentation.
2008-02-29 13:56:40 +00:00
Benoit Jacob
b3268a6e2f -merge patch from Gael Guennebaud adding NumTraits for long long
and long double.
-define scalar-multiple operators only for the current Scalar type;
 thanks to Gael for expaining how to make the compiler understand
 when automatic casting is needed.
-take ScalarMultiple take only 1 template param, again.
 We lose some flexibility especially when dealing with complex numbers,
 but we gain a lot of extensibility to new scalar types.
2008-02-29 13:20:44 +00:00
Benoit Jacob
aa8e2bcbde Patch by Gael Guennebaud:
Rework the matrix storage to ensure optimal sizeof in all cases, while
keeping the decoupling of matrix sizes versus storage sizes.
Also fixing (recently introduced) bugs caused by unwanted
reallocations of the buffers.
2008-02-29 10:55:53 +00:00
Benoit Jacob
3698d8cf33 Relicense --> dual-license LGPL3+/GPL2+ 2008-02-28 15:44:45 +00:00
Benoit Jacob
6907886a15 prefix global functions with ei_ as previous solution was rather
fragile. also fix compilation with g++ 4.3.
2008-02-28 12:38:12 +00:00
Benoit Jacob
c67e717404 alpha 3.1. in this commit:
- finally get the Eval stuff right. get back to having Eval as
  a subclass of Matrix with limited functionality, and then,
  add a typedef MatrixType to get the actual matrix type.
- add swap(), findBiggestCoeff()
- bugfix by Ramon in Transpose
- new demo: doc/echelon.cpp
2008-01-15 13:55:47 +00:00
Benoit Jacob
9c9a42cc49 Eval is now implemented like the other expression types, it no longer
inherits Matrix. Remove the typedefs I added in Matrix.
2008-01-14 22:36:37 +00:00
Benoit Jacob
2ee7969f0a re-optimize Matrix::resize(), add some comments 2008-01-14 13:14:49 +00:00
Benoit Jacob
e20aceb6eb cleanup in Eval; instead introduce convenient typedefs in Matrix
for naming special related matrix types: RowType, ColumnType,
BlockType
2008-01-14 11:25:09 +00:00
Benoit Jacob
183bf54d27 final fixes and updates for alpha3 2008-01-13 23:38:48 +00:00
Benoit Jacob
57d7b7d97b documentation update for alpha 3 2008-01-13 23:17:51 +00:00
Benoit Jacob
6ce996f219 big improvement of the block-manipulation API
- reduction of sizeof(Block) for vector types
- variants of block() and fixedBlock() for vector blocks
- convenience methods start() and end() for vectors
- convenience method corner() for matrices
2008-01-13 22:48:57 +00:00
Benoit Jacob
95dc68dc86 renaming:
Block -> FixedBlock
DynBlock -> Block
indeed, previous commit solves the main issue with DynBlock so
is should now be the more commonly used one.
2008-01-13 20:19:14 +00:00
Benoit Jacob
89a134ba0b big architecture change dissociating "actual" dimensions from "maximum possible"
dimension. The advantage is that evaluating a dynamic-sized block in a fixed-size
matrix no longer causes a dynamic memory allocation. Other new thing:
IntAtRunTimeIfDynamic allows storing an integer at zero cost if it is known at
compile time.
2008-01-13 19:55:23 +00:00
Benoit Jacob
e05a1aba1d one bugfix and one optimization 2008-01-11 16:06:31 +00:00
Benoit Jacob
bcf7b29185 rework Identity API: no longer restricted to square matrices 2008-01-11 15:56:21 +00:00
Benoit Jacob
e092cbc75c -add set...() methods and their documentation; remove Generic
-use row-major traversal when the number of columns is fixed
 and the number of rows is dynamic
-other minor changes
2008-01-11 15:08:04 +00:00
Benoit Jacob
aae0667e1e reorganization/cleanup 2008-01-11 07:16:18 +00:00
Benoit Jacob
45a4b61b5f switch to enums everywhere 2008-01-10 20:45:35 +00:00
Benoit Jacob
209cf7c91f TODO is now on techbase 2008-01-09 13:04:04 +00:00
Benoit Jacob
47d354924b revert most of previous commit. It really is better to forbid default
constructor for dynamic-size matrices. Now why do I feel like a beheaded
chicken running around?
2008-01-08 10:39:36 +00:00
Benoit Jacob
b036eca902 Revert to allowing default Matrix constructor even for dynamic size (which is
then set to 1). Discussion with jonasp made me remember why we did so in Eigen1.
Also add default constructor to Eval
2008-01-07 21:19:36 +00:00
Benoit Jacob
8ba3055447 Ready for alpha2 release.
- complete documentation
- add TODO
- update copyright years
2008-01-07 09:34:21 +00:00
Benoit Jacob
5111ace0d6 move default parameter values from function definition to function declaration.
doxygen likes it and this fixes compilation on ICC.
2008-01-06 19:34:28 +00:00
Benoit Jacob
84934ea217 - move: DerivedTraits becomes MatrixBase::Traits
- the static constants are private again in the Derived classes
- more documentation and code snippets
- new isDiagonal() method
2008-01-06 16:35:21 +00:00
Benoit Jacob
aaf889e72b remove all the _Order mechanics, now we are always traversing matrices in
column-major order, even if storage is row-major. Benchmark showed that adapting
the traversal order to the storage order brought no benefit.

Also do some cleanup after Gael's big patch.
2008-01-06 13:57:29 +00:00
Benoit Jacob
495eb7053a Patch by Gael Guennebaud, making Eigen compatible with the Intel compiler (icc).
CCMAIL:eigen@lists.tuxfamily.org
2008-01-06 13:17:07 +00:00
Benoit Jacob
d1d55e67e9 - make MatrixBase and all expressions aware of their preferred traversal order.
Honor this preference in operator=.
- add several methods to the API
- rework API for diagonal matrices
- add benchmarking code
2008-01-05 10:57:14 +00:00
Benoit Jacob
23ffede3d0 more documentation, 12 more code snippets 2008-01-03 19:36:32 +00:00
Benoit Jacob
42f6590bb2 cleanup: remove copy contructors when the compiler is able to generate a satisfactory
default copy constructor; remove useless static_cast's; some misc cleanup.
2007-12-31 13:29:51 +00:00
Benoit Jacob
86220784b6 part 2 of the reorganization. Benefits/changes:
1) Eigen2 co-installable with Eigen1 without conflict, without affecting programs including either.
2) #include<Eigen/Core> without the .h without conflict with the Core/ directory
3) Uniformize coding style of the CMakeLists.
2007-12-28 16:20:00 +00:00
Benoit Jacob
dfdad129a3 move Core/ to a src/ subdir, in preparation for following changes 2007-12-28 16:00:55 +00:00
Benoit Jacob
e7bdbe2e6a matrix storage order can now also be row-dominant (choosable for each matrix separately)
map() moves from MatrixBase to Matrix
much more documentation/examples/snippets
2007-12-27 21:43:10 +00:00
Benoit Jacob
6b9370e0f0 more changes in ScalarMultiple, reintroduce FloatingPoint in NumTraits, improve
examples
2007-12-26 09:25:00 +00:00
Benoit Jacob
05a49547e1 in ScalarMultiple, make the factor type independent from the matrix scalar type.
This is an optimization for complex matrices, allowing to do only a real multiplication
when a complex multiplication is not needed, e.g. in normalized().
2007-12-26 08:30:21 +00:00
Benoit Jacob
dad245af56 - eigen2 now fully enforces constness! found a way to achieve that
with minimal code duplication. There now are only two (2)
  const_cast remaining in the whole source code.
- eigen2 now fully allows copying a row-vector into a column-vector.
  added a unit-test for that.
- split unit tests, improve docs, various improvements.
2007-12-25 17:20:58 +00:00
Benoit Jacob
3cd2a125b2 - rework the coefficients API
- make vectors use a separate loop unroller, so that copying a
row-vector into a col-vector is now possible
- add much more documentation
- misc improvements
2007-12-24 11:14:25 +00:00
Benoit Jacob
e937583655 everything works, make now runs doxygen once and only once, after all
the required files have been generated.
2007-12-21 11:29:04 +00:00
Benoit Jacob
c38156a217 now we also have a examples/ directory for self-contained examples,
and this is already used to document DynBlock
2007-12-21 10:35:00 +00:00
Benoit Jacob
eb6ee51fdf will svn finally let me remove this dir? 2007-12-21 09:31:17 +00:00
Benoit Jacob
a316cd8a76 now cmake takes snippets of code, completes them into compilable sources, builds them,
executes them and stores their output in files.
2007-12-21 09:30:32 +00:00
Benoit Jacob
ee3410f79a renaming (commit in order to avoid svn breakage) 2007-12-21 09:05:41 +00:00
Benoit Jacob
04e3512eb6 first version of CMakeLists auto-generating examples outputs 2007-12-21 09:02:24 +00:00
Benoit Jacob
64f5d5d318 move the documentation to doc/, add dummy documentation to srcdir/ compiling to
an explanation of how to generate the docs
2007-12-21 07:30:15 +00:00
Benoit Jacob
a52c74095f rename src/ to Eigen/ so that we're able to #include<Eigen/Core.h>
in the examples instead of ugly things like #include"../../src/Core.h"
2007-12-20 21:25:13 +00:00
Benoit Jacob
647a817b2e more documentation and examples, add Doxyfile and Mainpage.dox and also
the benchmark program
2007-12-20 21:11:05 +00:00
Benoit Jacob
cddeeee17d - make RowsAtCompileTime and ColsAtCompileTime public in
MatrixBase and private in derived types
- initial documentation in MatrixBase
2007-12-19 09:30:53 +00:00
Benoit Jacob
59be5c3124 enforce constness in map(), do only one const_cast, and improve API 2007-12-19 08:14:00 +00:00
Benoit Jacob
8bb98a80b4 split the coeffs accessors/mutators into a separate Coeffs.h file 2007-12-18 16:02:14 +00:00
Benoit Jacob
3380429e3a Improve the "map" API and corresponding Matrix constructors 2007-12-18 15:29:28 +00:00
Benoit Jacob
a32690a222 Eval is read-only, don't generate any assignment operator 2007-12-18 12:12:37 +00:00
Benoit Jacob
2c656c51e6 add matrix constructor taking an array. update unit-tests. 2007-12-18 08:56:18 +00:00
Benoit Jacob
53040f53d9 add constructors and accessors/mutators specific to small vectors.
Add corresponding unit-test.
2007-12-17 20:51:40 +00:00
Benoit Jacob
f75a0c5179 some more cleanup and reorganisation 2007-12-17 07:25:11 +00:00
Benoit Jacob
9314b8e024 Some cleanup and renaming. 2007-12-16 12:41:37 +00:00
Benoit Jacob
7c38475291 -add Ones, DiagonalMatrix, DiagonalCoeffs
-expand and improve unit-tests
-various renaming and improvements
2007-12-15 18:16:30 +00:00
Benoit Jacob
fc7b2b5c20 expand unit-tests and fix const-qualifaction bugs thus discovered 2007-12-12 17:48:20 +00:00
Benoit Jacob
e9a458a7a5 Split the global math functions out of NumTraits.h 2007-12-12 16:57:12 +00:00
Benoit Jacob
7ddc13b9fa use a more c++-ish way of preventing the compiler from generating default operator=
when it's not wanted. Thanks to Christian Mayer for the tip.
2007-12-12 16:52:17 +00:00
Benoit Jacob
fa8009c6b7 1) remove EIGEN_UNUSED, instead use non-named arguments.
2) use T instead of const T& when that makes more sense
Thanks to Christian Mayer a.k.a Mekhzolan for the tips.
2007-12-11 15:25:43 +00:00
Benoit Jacob
0cbdaf6bb8 revert most of my previous commit. forcing the compiler to inline only increased
its memory usage.
2007-12-11 14:57:42 +00:00
Benoit Jacob
936b0de9cc play with inlining to get better performance when the compiler is not asked to optimize 2007-12-11 13:14:14 +00:00
Benoit Jacob
8117c9aa83 oops, forgot to commit that change 2007-12-11 10:48:35 +00:00
Benoit Jacob
0a7086f1ec rename CopyHelper into OperatorEquals, get rid of the auxiliary _copy_helper() method,
and make sure copies are always done in column-dominant order
2007-12-11 10:19:49 +00:00
Benoit Jacob
2b20814ced Expand and improve unit-tests 2007-12-11 10:07:18 +00:00
Benoit Jacob
d50ce24dd9 rework asserts system so as to minimize the impact of debugging code on performance 2007-12-11 10:06:43 +00:00
Benoit Jacob
effaee9bc7 fix bugs in Block/DynBlock 2007-12-11 10:05:50 +00:00
Benoit Jacob
fc924bc7d4 specialize for Size==0 in order to catch user bugs and not clutter
the compiler output with an infinite recursion. Also add a #define switch
for loop unrolling.
2007-12-11 10:04:39 +00:00
Benoit Jacob
9d51572cbe rework the random numbers API 2007-12-11 10:02:48 +00:00
Benoit Jacob
c58c892e25 had forgotten to 'svn add' that file... 2007-12-05 08:57:23 +00:00
Benoit Jacob
68eba600b1 big reorganisation of asserts, so that:
0) asserts are only done in the public API, except for a few ones explicitly
   named eigen_internal_assert.
1) internal asserts are disabled unless EIGEN_INTERNAL_DEBUGGING is defined.
   This limits the impact of debugging on performance.
2) no 'unused argument' warnings anymore when compiling with -DNDEBUG
2007-12-05 08:56:42 +00:00
Benoit Jacob
b569216dc3 remove useless default argument values 2007-12-05 07:44:57 +00:00
Benoit Jacob
1a94c28bfe and here is the fixed-size Block class 2007-12-05 07:39:26 +00:00
Benoit Jacob
04502cccd9 rename Block to DynBlock and rework API to make place for
upcoming fixed-size Block matrix. Also some cleanup.
2007-12-05 07:22:22 +00:00
Benoit Jacob
346c00f4c8 Rework the unit-tests to use lower precision, so as to eliminate
false positives. Also some cleanup in the fuzzy compares.
2007-12-03 10:23:08 +00:00
Benoit Jacob
5abaaf9688 Test application now takes 'seed' and 'repeat' command-line args 2007-12-03 08:35:23 +00:00
Benoit Jacob
e05f29191e Much more convenient, less over-engineered NumTraits. Done during this KDE-Edu weekend. 2007-12-02 18:32:59 +00:00
Benoit Jacob
2fdd067d9e add more unit-tests (covering transpose, conjugate, adjoint, dot product...) 2007-11-28 15:34:40 +00:00
Benoit Jacob
39f1776bde rename Object -> MatrixBase 2007-11-27 13:57:51 +00:00
Benoit Jacob
344623e872 Matrix(int) constructor is only for vectors. 2007-11-26 09:21:11 +00:00
Benoit Jacob
a587346b47 Matrix(int,int) constructor no longer takes default arguments.
Instead, introduce Matrix() and Matrix(int); however, dynamic dimensions
are required to be specified in the constructor (we no longer default to 1)
2007-11-26 09:11:12 +00:00
Benoit Jacob
5309ef5b5e - improve and comment the "BasicStuff" test.
- adjust behavior of Matrix(int,int) constructor
- s/EI_/EIGEN_/
2007-11-26 08:47:07 +00:00
Benoit Jacob
f14712a1a3 Fix damage done by automatic search-and-replace 2007-11-25 22:05:49 +00:00
Benoit Jacob
49c78643da add cast<newtype>() function to casts the scalars to another type. 2007-10-19 14:46:08 +00:00
Benoit Jacob
d6f26dc8eb clarify the situation with EI_INHERIT_ASSIGNMENT_OPERATORS 2007-10-15 06:11:59 +00:00
Benoit Jacob
884a718b0a make shameless use of const_cast to reduce code redundancy. This means Eigen2
gives up enforcing constness. I really tried to enforce it, but it really was
much hassle because our expression templates can be lvalues (not only rvalues)
and so much code had to be written twice.
2007-10-15 05:56:21 +00:00
Benoit Jacob
f355ef2df0 Merge WrapArray into FromArray. Less code. The downside is that we're using one more
const_cast. But I think that anyway trying to maintain const strictness in Eigen2 is not
worth the hassle.

Konstantin: so the code snippet I sent you won't work anymore, replace wrapArray with fromArray.

CCMAIL:konst.heil@stud.uni-heidelberg.de
2007-10-14 18:02:16 +00:00
Benoit Jacob
a94a8c68e8 add fromArray() and wrapArray().
For example, the following now works:

  double a1[3] = {1.0, 3.0, 2.0}, a2[3];
  Vector3d::wrapArray(a2) = 2 * Vector3d::fromArray(a1);
  cout << Vector3d::fromArray(a2) << endl; // output: 2,6,4
2007-10-14 14:45:31 +00:00
Benoit Jacob
3f97918760 restrict identity() to square matrices; small change helping g++ optimize. 2007-10-14 10:01:25 +00:00
Benoit Jacob
6c8f159635 add zero() and identity() static methods, update unit-tests 2007-10-14 09:18:18 +00:00
Benoit Jacob
0f2df4b202 remove support for type std::complex<int>. Simplify NumTraits accordingly. 2007-10-14 08:16:50 +00:00
Benoit Jacob
5f0af72abc mark more methods as const. also rename, Numeric.h->NumTraits.h 2007-10-13 20:53:30 +00:00
Benoit Jacob
e445f5085a implement the first _real_ unit-tests, testing the results for correctness instead
of just checking compilation.

Fix the many issues discovered by these unit-tests, by the way fixing a performance bug.
2007-10-13 16:56:24 +00:00
Benoit Jacob
31061557a5 add unary operator-(), computing the opposite. 2007-10-13 14:38:51 +00:00
Benoit Jacob
55e80e1599 split MatrixOps.h into 3 files; rename ScalarOps.h; remove useless #includes. 2007-10-13 14:31:27 +00:00
Benoit Jacob
12bcafdc75 some renaming in the fuzzy compares, and in the multiplications 2007-10-13 14:19:23 +00:00
Benoit Jacob
a4626cc808 rework the numeric traits now that we're using a namespace and no prefix 2007-10-12 05:56:36 +00:00
Benoit Jacob
3654ee8b07 SVN_SILENT:
repair some damage made by the automatic search and replace used in the
prefix->namespace move
2007-10-12 05:15:25 +00:00
Benoit Jacob
0d44c0906b simplify the new USING_EIGEN_DATA_TYPES macro 2007-10-11 20:32:12 +00:00
Benoit Jacob
61de15f361 Democracy 1 - 0 Dictatorship
After huge thread on eigen mailing list, it appears that i'm the
only one in favor of prefix Ei. Everybody else prefers namespace
Eigen like we did in Eigen 1. So, revert.

Also add a macro USING_EIGEN_DATA_TYPES that application programmers
can use to automatically do "using"on the Matrix class and its
matrix/vector typedefs:
using Eigen::Matrix;
using Eigen::Matrix2d;
using Eigen::Vector2d;
... (the list of typedefs is really long).

thanks to the suffixes, the Vector typedefs aren't really polluting.

CCMAIL:eigen@lists.tuxfamily.org

P.S. Danny, please skip this one :) I know you already reported the
namespace->prefix move, now that one would be too much noise :)
2007-10-11 20:14:01 +00:00
Benoit Jacob
3c98677376 fix big bug in loop unrolling 2007-10-10 06:33:09 +00:00
Benoit Jacob
06e1e0d83b fix dot product, add norm/norm2/normalized
add fuzzy compares for matrices/vectors
add random matrix/vector generation
2007-10-10 06:09:56 +00:00
Benoit Jacob
7f0a546a81 add norm() and norm2(); some polishing 2007-10-08 10:19:49 +00:00
Benoit Jacob
ac6ff5efd6 reverse certain inner loops. Now the benchmark runs in 3.5s instead of 5.5s before! 2007-10-08 07:24:00 +00:00
Benoit Jacob
f0be175bdc add dot product, extend meta unrolling everywhere 2007-10-08 07:17:54 +00:00
Benoit Jacob
95b3316701 reorganize meta loop unrolling, add Trace (meta-unrolled), fix compilation issues in
the conjugation/adjunction stuff
2007-10-07 16:40:49 +00:00
Benoit Jacob
4fe78b8e10 reorganization of headers, part 2/2... 2007-10-07 15:59:09 +00:00
Benoit Jacob
be429ebf9c reorganisation of headers, commit47b935fc42cbf2ca992d8a270bc1b0fc97d1f6bc
/2....
2007-10-07 15:58:30 +00:00
Benoit Jacob
f939abd5f3 aargh, had forgotten to 'svn add' a file. Yeah, 'svn st' is my friend, i know... 2007-10-07 15:14:05 +00:00
Benoit Jacob
9eff685428 add matrix conjugation and adjunction.
compilation fixes in the numeric traits.
2007-10-07 15:12:41 +00:00
Benoit Jacob
ae2072406c Introduce Numeric Traits, with fuzzy compares, random numbers, etc. 2007-10-07 12:44:42 +00:00
Benoit Jacob
c768a44909 Add matrix transposition 2007-10-01 18:20:35 +00:00
Benoit Jacob
f5f45d751c Move the meta loop unrolling to a separate file, Loop.h 2007-10-01 17:07:38 +00:00
Benoit Jacob
96524fc573 Split Row and Column into separate files.
Introduce a notion of RowVector (typedef for Matriw with 1 row)
Make row() return a row vector instead of a "column vector"
Introduce operator[] to access elements of row/column vectors uniformly
Remove default arguments in operator(), these were for vectors, now use operator[] instead
2007-10-01 07:45:30 +00:00
Benoit Jacob
3cf6caba1a remove useless typedefs 2007-10-01 06:51:25 +00:00
Benoit Jacob
6015698047 Michael was right, it's best to base the unrolling limit on the product Rows*Cols. 2007-10-01 06:30:20 +00:00
Benoit Jacob
656919619f - add copyright line for Michael Olbrich
- some meta unrolling improvements
2007-10-01 06:23:05 +00:00
Benoit Jacob
e116aba444 adapt to coding style used elsewhere in eigen2 2007-10-01 04:57:51 +00:00
Michael Olbrich
2d823d8ef6 Generic loop unrolling with template metaprograms. It seems to be as fast as
manually unrolling.
TODO: decide when to stop unrolling (speed vs. code size).
      maybe only unroll one loop for larger matixes.
2007-09-30 20:38:09 +00:00
Michael Olbrich
1d3743d2c5 for dynamic size matrix (Rows|Cols)AtCompileTime is always EiDynamic and not
"(Rows|Cols)AtCompileTime - 1" which would be EiDynamic - 1 == -2
2007-09-30 20:23:24 +00:00
Benoit Jacob
4241dddee9 temporarily remove division unit-tests. they caused div-by-zero's , reported by Michael Olbrich.
The solution will consist in adding a real Traits system.
2007-09-30 16:45:40 +00:00
Benoit Jacob
023773beaa Fix super-nasty bug in the declaration of the storage array of fixed-size matrices.
Also some simplifications.
2007-09-30 14:56:11 +00:00
Benoit Jacob
7d41ad9d90 Get rid of a nasty const_cast by introducing a MatrixConstRef class.
Remove the __restrict__'s for now.
2007-09-29 17:27:20 +00:00
Benoit Jacob
ee63e15e2c make matrix multiplication do immediate evaluation; add lazyMul() for the old behaviour
some reorganization, especially in MatrixStorage
start playing with loop unrolling, always_inline, and __restrict__
2007-09-29 08:28:36 +00:00
Benoit Jacob
51e29ae4bd some reorganization leading to simpler expression trees 2007-09-28 11:20:29 +00:00
Benoit Jacob
aa3294f14e add example to the documentation 2007-09-28 06:17:36 +00:00
Benoit Jacob
835e0c9f67 Found a way to have eval() be a member function of class EiObject, instead of a global function.
CCMAIL:bensch128@yahoo.com
2007-09-28 06:10:34 +00:00
Benoit Jacob
28c44a95c2 Finish prefixing everything with "Ei" 2007-09-27 19:54:04 +00:00
Benoit Jacob
5160e9d029 Half-way commit prefixing object names. I am forced to commit now
because I renamed a file once with a wrong filename and svn refuses to
let me rename it again, tells me i should propagate first.
2007-09-27 19:38:40 +00:00
Benoit Jacob
4e299afb1f don't enclose eigen in a namespace. prefixing is the way to go.
For example Qt uses a prefix and no namespace (except for a few things)
2007-09-27 19:24:57 +00:00
Benoit Jacob
d99d9407df add operators *= and /= 2007-09-27 19:20:06 +00:00
Benoit Jacob
628b1a8f6d implement scalar operators separately for each type using a macro.
This is required e.g. to allow "2 * m" with m a matrix of doubles.
2007-09-27 07:42:12 +00:00
Benoit Jacob
8a024825d2 fix bugs caused by default copy constructors being called. valgrind,
you saved my life.
2007-09-26 14:06:32 +00:00
Benoit Jacob
a2dd9dd6f9 Give the axe to the aliasing system.
Improve the evaluation system instead.
2007-09-26 14:06:26 +00:00
Benoit Jacob
55227b1f63 Deep refactoring.
1) Kill MatrixXpr class, instead let all class inherit a common EigenBase class
2) Kill MatrixBase/Matrix/Vector classes, instead introduce a single Matrix class,
a MatrixStorage class, and typedefs to emulate vectors
3) Huge code cleanup, remove large preprocessor macros, sloccount drop to ~750
down from 1100.
4) Introduce compile-time-known sizes
2007-09-26 14:06:14 +00:00
Benoit Jacob
1af61c6ff0 reorganize header files, split MatrixBase into smaller files.
expose only a few meta-headers to the user, the rest moves to a internal/ subdirectory
2007-09-09 09:41:15 +00:00
Benoit Jacob
3b727ef939 some cleanup 2007-09-09 09:03:42 +00:00
Benoit Jacob
1dab53d300 update tutorial 2007-09-09 08:17:08 +00:00
Benoit Jacob
fe9b6b8f17 remove the MatrixConstXpr and MatrixConstRef classes.
Now the user doesn't need anymore to call .xpr() and can simply do:
matrix.row(i) += matrix.row(j)

Also remove the obsolete MatrixXpr::hasDynamicSize() method (thanks to
Michael Olbrich for reporting this).

CCMAIL:<michael.olbrich@gmx.net>
2007-09-09 08:15:48 +00:00
Benoit Jacob
506cc5db12 remove operator *= between matrices: too much hassle. 2007-09-07 09:47:13 +00:00
Benoit Jacob
61158b1922 add operator *= between matrices, with automatic aliasing.
add tutorial in doc/ subdirectory.
2007-09-07 08:18:21 +00:00
Benoit Jacob
c030e570fd extend operators += and -= to aliases 2007-09-07 07:56:22 +00:00
Benoit Jacob
c3731b36d1 Add operator += and operator -= between matrices/vectors/expressions 2007-09-07 07:41:10 +00:00
Benoit Jacob
e7ef6dba9d - Introduce aliasing system
- Remove operator<<, use .alias() instead
- Introduce operator/ (scalar)
- Cleanup, unit-tests update.
2007-09-06 10:16:51 +00:00
Benoit Jacob
9477e62b68 add a missing operator= for copying a matrix into an expression. 2007-09-05 11:39:42 +00:00
Benoit Jacob
13a82795f7 forgot to svn add some CMakeLists 2007-09-05 10:42:54 +00:00
548 changed files with 63483 additions and 1802 deletions

25
.hgignore Normal file
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syntax: glob
qrc_*cxx
*.orig
*.pyc
*.diff
diff
*.save
save
*.old
*.gmo
*.qm
core
core.*
*.bak
*~
build*
*.moc.*
*.moc
ui_*
CMakeCache.txt
tags
.*.swp
activity.png
*.out
*.php*

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.krazy Normal file
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SKIP /disabled/
SKIP /bench/
SKIP /build/

View File

@@ -1,18 +1,143 @@
project(Eigen)
cmake_minimum_required(VERSION 2.6.2)
set(INCLUDE_INSTALL_DIR
"${CMAKE_INSTALL_PREFIX}/include/eigen2"
CACHE PATH
"The directory where we install the header files"
FORCE)
set(EIGEN_VERSION_NUMBER "2.0.14")
set(EIGEN_VERSION "${EIGEN_VERSION_NUMBER}")
set(CMAKE_MODULE_PATH ${PROJECT_SOURCE_DIR}/cmake)
option(EIGEN_BUILD_TESTS "Build tests" OFF)
option(EIGEN_BUILD_DEMOS "Build demos" OFF)
if(NOT WIN32)
option(EIGEN_BUILD_LIB "Build the binary shared library" OFF)
endif(NOT WIN32)
option(EIGEN_BUILD_BTL "Build benchmark suite" OFF)
if(NOT WIN32)
option(EIGEN_BUILD_PKGCONFIG "Build pkg-config .pc file for Eigen" ON)
endif(NOT WIN32)
if(EIGEN_BUILD_LIB)
option(EIGEN_TEST_LIB "Build the unit tests using the library (disable -pedantic)" OFF)
endif(EIGEN_BUILD_LIB)
#############################################################################
# find how to link to the standard libraries #
#############################################################################
find_package(StandardMathLibrary)
set(EIGEN_STANDARD_LIBRARIES_TO_LINK_TO "")
if(NOT STANDARD_MATH_LIBRARY_FOUND)
message(FATAL_ERROR
"Can't link to the standard math library. Please report to the Eigen developers, telling them about your platform.")
else()
if(EIGEN_STANDARD_LIBRARIES_TO_LINK_TO)
set(EIGEN_STANDARD_LIBRARIES_TO_LINK_TO "${EIGEN_STANDARD_LIBRARIES_TO_LINK_TO} ${STANDARD_MATH_LIBRARY}")
else()
set(EIGEN_STANDARD_LIBRARIES_TO_LINK_TO "${STANDARD_MATH_LIBRARY}")
endif()
endif()
if(EIGEN_STANDARD_LIBRARIES_TO_LINK_TO)
message(STATUS "Standard libraries to link to explicitly: ${EIGEN_STANDARD_LIBRARIES_TO_LINK_TO}")
else()
message(STATUS "Standard libraries to link to explicitly: none")
endif()
OPTION(BUILD_TESTS "Build tests" OFF)
OPTION(BUILD_EXAMPLES "Build examples" OFF)
set(CMAKE_INCLUDE_CURRENT_DIR ON)
if(CMAKE_COMPILER_IS_GNUCXX)
if (CMAKE_SYSTEM_NAME MATCHES Linux)
set ( CMAKE_C_FLAGS "${CMAKE_C_FLAGS} -Wno-long-long -ansi -Wundef -Wcast-align -Werror-implicit-function-declaration -Wchar-subscripts -Wall -W -Wpointer-arith -Wwrite-strings -Wformat-security -Wmissing-format-attribute -fno-common")
set ( CMAKE_CXX_FLAGS "${CMAKE_CXX_FLAGS} -Wnon-virtual-dtor -Wno-long-long -ansi -Wundef -Wcast-align -Wchar-subscripts -Wall -W -Wpointer-arith -Wwrite-strings -Wformat-security -fno-exceptions -fno-check-new -fno-common")
endif (CMAKE_SYSTEM_NAME MATCHES Linux)
endif (CMAKE_COMPILER_IS_GNUCXX)
if(CMAKE_SYSTEM_NAME MATCHES Linux)
include(CheckCXXCompilerFlag)
set(CMAKE_CXX_FLAGS "${CMAKE_CXX_FLAGS} -Wnon-virtual-dtor -Wno-long-long -ansi -Wundef -Wcast-align -Wchar-subscripts -Wall -W -Wpointer-arith -Wwrite-strings -Wformat-security -fno-exceptions -fno-check-new -fno-common -fstrict-aliasing")
check_cxx_compiler_flag("-Wextra" has_wextra)
if(has_wextra)
set(CMAKE_CXX_FLAGS "${CMAKE_CXX_FLAGS} -Wextra")
endif()
if(NOT EIGEN_TEST_LIB)
set(CMAKE_CXX_FLAGS "${CMAKE_CXX_FLAGS} -pedantic")
endif(NOT EIGEN_TEST_LIB)
include_directories( ${CMAKE_SOURCE_DIR} ${CMAKE_BINARY_DIR} )
option(EIGEN_TEST_SSE2 "Enable/Disable SSE2 in tests/examples" OFF)
if(EIGEN_TEST_SSE2)
set(CMAKE_CXX_FLAGS "${CMAKE_CXX_FLAGS} -msse2")
message("Enabling SSE2 in tests/examples")
endif(EIGEN_TEST_SSE2)
add_subdirectory(src)
add_subdirectory(test)
option(EIGEN_TEST_SSE3 "Enable/Disable SSE3 in tests/examples" OFF)
if(EIGEN_TEST_SSE3)
set(CMAKE_CXX_FLAGS "${CMAKE_CXX_FLAGS} -msse3")
message("Enabling SSE3 in tests/examples")
endif(EIGEN_TEST_SSE3)
option(EIGEN_TEST_SSSE3 "Enable/Disable SSSE3 in tests/examples" OFF)
if(EIGEN_TEST_SSSE3)
set(CMAKE_CXX_FLAGS "${CMAKE_CXX_FLAGS} -mssse3")
message("Enabling SSSE3 in tests/examples")
endif(EIGEN_TEST_SSSE3)
option(EIGEN_TEST_ALTIVEC "Enable/Disable altivec in tests/examples" OFF)
if(EIGEN_TEST_ALTIVEC)
set(CMAKE_CXX_FLAGS "${CMAKE_CXX_FLAGS} -maltivec -mabi=altivec")
message("Enabling AltiVec in tests/examples")
endif(EIGEN_TEST_ALTIVEC)
endif(CMAKE_SYSTEM_NAME MATCHES Linux)
endif(CMAKE_COMPILER_IS_GNUCXX)
if(MSVC)
set(CMAKE_CXX_FLAGS "${CMAKE_CXX_FLAGS} ")
option(EIGEN_TEST_SSE2 "Enable/Disable SSE2 in tests/examples" OFF)
if(EIGEN_TEST_SSE2)
set(CMAKE_CXX_FLAGS "${CMAKE_CXX_FLAGS} /arch:SSE2")
message("Enabling SSE2 in tests/examples")
endif(EIGEN_TEST_SSE2)
endif(MSVC)
option(EIGEN_TEST_NO_EXPLICIT_VECTORIZATION "Disable explicit vectorization in tests/examples" OFF)
if(EIGEN_TEST_NO_EXPLICIT_VECTORIZATION)
add_definitions(-DEIGEN_DONT_VECTORIZE=1)
message("Disabling vectorization in tests/examples")
endif(EIGEN_TEST_NO_EXPLICIT_VECTORIZATION)
include_directories(${CMAKE_CURRENT_SOURCE_DIR} ${CMAKE_CURRENT_BINARY_DIR})
if(EIGEN_BUILD_PKGCONFIG)
configure_file(eigen2.pc.in eigen2.pc) # uses INCLUDE_INSTALL_DIR
install(FILES ${CMAKE_CURRENT_BINARY_DIR}/eigen2.pc
DESTINATION share/pkgconfig
)
endif(EIGEN_BUILD_PKGCONFIG)
add_subdirectory(Eigen)
add_subdirectory(unsupported)
if(EIGEN_BUILD_TESTS)
include(CTest)
add_subdirectory(test)
endif(EIGEN_BUILD_TESTS)
add_subdirectory(doc)
if(EIGEN_BUILD_DEMOS)
add_subdirectory(demos)
endif(EIGEN_BUILD_DEMOS)
if(EIGEN_BUILD_BTL)
add_subdirectory(bench/btl)
endif(EIGEN_BUILD_BTL)

674
COPYING Normal file
View File

@@ -0,0 +1,674 @@
GNU GENERAL PUBLIC LICENSE
Version 3, 29 June 2007
Copyright (C) 2007 Free Software Foundation, Inc. <http://fsf.org/>
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Also add information on how to contact you by electronic and paper mail.
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The hypothetical commands `show w' and `show c' should show the appropriate
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You should also get your employer (if you work as a programmer) or school,
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For more information on this, and how to apply and follow the GNU GPL, see
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The GNU General Public License does not permit incorporating your program
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may consider it more useful to permit linking proprietary applications with
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Public License instead of this License. But first, please read
<http://www.gnu.org/philosophy/why-not-lgpl.html>.

165
COPYING.LESSER Normal file
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@@ -0,0 +1,165 @@
GNU LESSER GENERAL PUBLIC LICENSE
Version 3, 29 June 2007
Copyright (C) 2007 Free Software Foundation, Inc. <http://fsf.org/>
Everyone is permitted to copy and distribute verbatim copies
of this license document, but changing it is not allowed.
This version of the GNU Lesser General Public License incorporates
the terms and conditions of version 3 of the GNU General Public
License, supplemented by the additional permissions listed below.
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As used herein, "this License" refers to version 3 of the GNU Lesser
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13
CTestConfig.cmake Normal file
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## This file should be placed in the root directory of your project.
## Then modify the CMakeLists.txt file in the root directory of your
## project to incorporate the testing dashboard.
## # The following are required to uses Dart and the Cdash dashboard
## ENABLE_TESTING()
## INCLUDE(CTest)
set(CTEST_PROJECT_NAME "Eigen 2.0")
set(CTEST_NIGHTLY_START_TIME "06:00:00 UTC")
set(CTEST_DROP_METHOD "http")
set(CTEST_DROP_SITE "eigen.tuxfamily.org")
set(CTEST_DROP_LOCATION "/CDash/submit.php?project=Eigen+2.0")
set(CTEST_DROP_SITE_CDASH TRUE)

281
Doxyfile Normal file
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# Doxyfile 1.5.3
#---------------------------------------------------------------------------
# Project related configuration options
#---------------------------------------------------------------------------
DOXYFILE_ENCODING = UTF-8
PROJECT_NAME = Eigen
PROJECT_NUMBER = 2.0
OUTPUT_DIRECTORY = ./
CREATE_SUBDIRS = NO
OUTPUT_LANGUAGE = English
BRIEF_MEMBER_DESC = YES
REPEAT_BRIEF = YES
ABBREVIATE_BRIEF = "The $name class" \
"The $name widget" \
"The $name file" \
is \
provides \
specifies \
contains \
represents \
a \
an \
the
ALWAYS_DETAILED_SEC = NO
INLINE_INHERITED_MEMB = NO
FULL_PATH_NAMES = NO
STRIP_FROM_PATH =
STRIP_FROM_INC_PATH =
SHORT_NAMES = NO
JAVADOC_AUTOBRIEF = NO
QT_AUTOBRIEF = NO
MULTILINE_CPP_IS_BRIEF = NO
DETAILS_AT_TOP = NO
INHERIT_DOCS = YES
SEPARATE_MEMBER_PAGES = NO
TAB_SIZE = 8
ALIASES =
OPTIMIZE_OUTPUT_FOR_C = NO
OPTIMIZE_OUTPUT_JAVA = NO
BUILTIN_STL_SUPPORT = NO
CPP_CLI_SUPPORT = NO
DISTRIBUTE_GROUP_DOC = NO
SUBGROUPING = YES
#---------------------------------------------------------------------------
# Build related configuration options
#---------------------------------------------------------------------------
EXTRACT_ALL = NO
EXTRACT_PRIVATE = NO
EXTRACT_STATIC = NO
EXTRACT_LOCAL_CLASSES = NO
EXTRACT_LOCAL_METHODS = NO
EXTRACT_ANON_NSPACES = NO
HIDE_UNDOC_MEMBERS = YES
HIDE_UNDOC_CLASSES = YES
HIDE_FRIEND_COMPOUNDS = YES
HIDE_IN_BODY_DOCS = NO
INTERNAL_DOCS = NO
CASE_SENSE_NAMES = YES
HIDE_SCOPE_NAMES = YES
SHOW_INCLUDE_FILES = YES
INLINE_INFO = YES
SORT_MEMBER_DOCS = YES
SORT_BRIEF_DOCS = NO
SORT_BY_SCOPE_NAME = NO
GENERATE_TODOLIST = YES
GENERATE_TESTLIST = YES
GENERATE_BUGLIST = YES
GENERATE_DEPRECATEDLIST= YES
ENABLED_SECTIONS =
MAX_INITIALIZER_LINES = 30
SHOW_USED_FILES = YES
SHOW_DIRECTORIES = NO
FILE_VERSION_FILTER =
#---------------------------------------------------------------------------
# configuration options related to warning and progress messages
#---------------------------------------------------------------------------
QUIET = NO
WARNINGS = YES
WARN_IF_UNDOCUMENTED = YES
WARN_IF_DOC_ERROR = YES
WARN_NO_PARAMDOC = NO
WARN_FORMAT = "$file:$line: $text"
WARN_LOGFILE =
#---------------------------------------------------------------------------
# configuration options related to the input files
#---------------------------------------------------------------------------
INPUT = ./
INPUT_ENCODING = UTF-8
FILE_PATTERNS = *.c \
*.cc \
*.cxx \
*.cpp \
*.c++ \
*.d \
*.java \
*.ii \
*.ixx \
*.ipp \
*.i++ \
*.inl \
*.h \
*.hh \
*.hxx \
*.hpp \
*.h++ \
*.idl \
*.odl \
*.cs \
*.php \
*.php3 \
*.inc \
*.m \
*.mm \
*.dox \
*.py \
*.C \
*.CC \
*.C++ \
*.II \
*.I++ \
*.H \
*.HH \
*.H++ \
*.CS \
*.PHP \
*.PHP3 \
*.M \
*.MM \
*.PY
RECURSIVE = NO
EXCLUDE =
EXCLUDE_SYMLINKS = NO
EXCLUDE_PATTERNS =
EXCLUDE_SYMBOLS =
EXAMPLE_PATH = doc/examples/
EXAMPLE_PATTERNS = *
EXAMPLE_RECURSIVE = NO
IMAGE_PATH =
INPUT_FILTER =
FILTER_PATTERNS =
FILTER_SOURCE_FILES = NO
#---------------------------------------------------------------------------
# configuration options related to source browsing
#---------------------------------------------------------------------------
SOURCE_BROWSER = NO
INLINE_SOURCES = NO
STRIP_CODE_COMMENTS = YES
REFERENCED_BY_RELATION = YES
REFERENCES_RELATION = YES
REFERENCES_LINK_SOURCE = YES
USE_HTAGS = NO
VERBATIM_HEADERS = YES
#---------------------------------------------------------------------------
# configuration options related to the alphabetical class index
#---------------------------------------------------------------------------
ALPHABETICAL_INDEX = NO
COLS_IN_ALPHA_INDEX = 5
IGNORE_PREFIX =
#---------------------------------------------------------------------------
# configuration options related to the HTML output
#---------------------------------------------------------------------------
GENERATE_HTML = YES
HTML_OUTPUT = html
HTML_FILE_EXTENSION = .html
HTML_HEADER =
HTML_FOOTER =
HTML_STYLESHEET =
HTML_ALIGN_MEMBERS = YES
GENERATE_HTMLHELP = NO
HTML_DYNAMIC_SECTIONS = NO
CHM_FILE =
HHC_LOCATION =
GENERATE_CHI = NO
BINARY_TOC = NO
TOC_EXPAND = NO
DISABLE_INDEX = NO
ENUM_VALUES_PER_LINE = 4
GENERATE_TREEVIEW = NO
TREEVIEW_WIDTH = 250
#---------------------------------------------------------------------------
# configuration options related to the LaTeX output
#---------------------------------------------------------------------------
GENERATE_LATEX = YES
LATEX_OUTPUT = latex
LATEX_CMD_NAME = latex
MAKEINDEX_CMD_NAME = makeindex
COMPACT_LATEX = NO
PAPER_TYPE = a4wide
EXTRA_PACKAGES =
LATEX_HEADER =
PDF_HYPERLINKS = NO
USE_PDFLATEX = NO
LATEX_BATCHMODE = NO
LATEX_HIDE_INDICES = NO
#---------------------------------------------------------------------------
# configuration options related to the RTF output
#---------------------------------------------------------------------------
GENERATE_RTF = NO
RTF_OUTPUT = rtf
COMPACT_RTF = NO
RTF_HYPERLINKS = NO
RTF_STYLESHEET_FILE =
RTF_EXTENSIONS_FILE =
#---------------------------------------------------------------------------
# configuration options related to the man page output
#---------------------------------------------------------------------------
GENERATE_MAN = NO
MAN_OUTPUT = man
MAN_EXTENSION = .3
MAN_LINKS = NO
#---------------------------------------------------------------------------
# configuration options related to the XML output
#---------------------------------------------------------------------------
GENERATE_XML = NO
XML_OUTPUT = xml
XML_SCHEMA =
XML_DTD =
XML_PROGRAMLISTING = YES
#---------------------------------------------------------------------------
# configuration options for the AutoGen Definitions output
#---------------------------------------------------------------------------
GENERATE_AUTOGEN_DEF = NO
#---------------------------------------------------------------------------
# configuration options related to the Perl module output
#---------------------------------------------------------------------------
GENERATE_PERLMOD = NO
PERLMOD_LATEX = NO
PERLMOD_PRETTY = YES
PERLMOD_MAKEVAR_PREFIX =
#---------------------------------------------------------------------------
# Configuration options related to the preprocessor
#---------------------------------------------------------------------------
ENABLE_PREPROCESSING = YES
MACRO_EXPANSION = NO
EXPAND_ONLY_PREDEF = NO
SEARCH_INCLUDES = YES
INCLUDE_PATH =
INCLUDE_FILE_PATTERNS =
PREDEFINED =
EXPAND_AS_DEFINED =
SKIP_FUNCTION_MACROS = YES
#---------------------------------------------------------------------------
# Configuration::additions related to external references
#---------------------------------------------------------------------------
TAGFILES =
GENERATE_TAGFILE =
ALLEXTERNALS = NO
EXTERNAL_GROUPS = YES
PERL_PATH = /usr/bin/perl
#---------------------------------------------------------------------------
# Configuration options related to the dot tool
#---------------------------------------------------------------------------
CLASS_DIAGRAMS = YES
MSCGEN_PATH =
HIDE_UNDOC_RELATIONS = YES
HAVE_DOT = YES
CLASS_GRAPH = YES
COLLABORATION_GRAPH = YES
GROUP_GRAPHS = YES
UML_LOOK = NO
TEMPLATE_RELATIONS = NO
INCLUDE_GRAPH = YES
INCLUDED_BY_GRAPH = YES
CALL_GRAPH = NO
CALLER_GRAPH = NO
GRAPHICAL_HIERARCHY = YES
DIRECTORY_GRAPH = YES
DOT_IMAGE_FORMAT = png
DOT_PATH =
DOTFILE_DIRS =
DOT_GRAPH_MAX_NODES = 50
MAX_DOT_GRAPH_DEPTH = 1000
DOT_TRANSPARENT = NO
DOT_MULTI_TARGETS = NO
GENERATE_LEGEND = YES
DOT_CLEANUP = YES
#---------------------------------------------------------------------------
# Configuration::additions related to the search engine
#---------------------------------------------------------------------------
SEARCHENGINE = NO

39
Eigen/Array Normal file
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@@ -0,0 +1,39 @@
#ifndef EIGEN_ARRAY_MODULE_H
#define EIGEN_ARRAY_MODULE_H
#include "Core"
#include "src/Core/util/DisableMSVCWarnings.h"
namespace Eigen {
/** \defgroup Array_Module Array module
* This module provides several handy features to manipulate matrices as simple array of values.
* In addition to listed classes, it defines various methods of the Cwise interface
* (accessible from MatrixBase::cwise()), including:
* - matrix-scalar sum,
* - coeff-wise comparison operators,
* - sin, cos, sqrt, pow, exp, log, square, cube, inverse (reciprocal).
*
* This module also provides various MatrixBase methods, including:
* - \ref MatrixBase::all() "all", \ref MatrixBase::any() "any",
* - \ref MatrixBase::Random() "random matrix initialization"
*
* \code
* #include <Eigen/Array>
* \endcode
*/
#include "src/Array/CwiseOperators.h"
#include "src/Array/Functors.h"
#include "src/Array/BooleanRedux.h"
#include "src/Array/Select.h"
#include "src/Array/PartialRedux.h"
#include "src/Array/Random.h"
#include "src/Array/Norms.h"
} // namespace Eigen
#include "src/Core/util/EnableMSVCWarnings.h"
#endif // EIGEN_ARRAY_MODULE_H

31
Eigen/CMakeLists.txt Normal file
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@@ -0,0 +1,31 @@
set(Eigen_HEADERS Core LU Cholesky QR Geometry
Sparse Array SVD LeastSquares
QtAlignedMalloc StdVector NewStdVector
Eigen Dense)
if(EIGEN_BUILD_LIB)
set(Eigen_SRCS
src/Core/CoreInstantiations.cpp
src/Cholesky/CholeskyInstantiations.cpp
src/QR/QrInstantiations.cpp
)
add_library(Eigen2 SHARED ${Eigen_SRCS})
install(TARGETS Eigen2
RUNTIME DESTINATION bin
LIBRARY DESTINATION lib
ARCHIVE DESTINATION lib)
endif(EIGEN_BUILD_LIB)
if(CMAKE_COMPILER_IS_GNUCXX)
set(CMAKE_CXX_FLAGS "${CMAKE_CXX_FLAGS} -g1 -O2")
set(CMAKE_CXX_FLAGS_RELWITHDEBINFO "${CMAKE_CXX_FLAGS_RELWITHDEBINFO} -g1 -O2")
endif(CMAKE_COMPILER_IS_GNUCXX)
install(FILES
${Eigen_HEADERS}
DESTINATION ${INCLUDE_INSTALL_DIR}/Eigen
)
add_subdirectory(src)

65
Eigen/Cholesky Normal file
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#ifndef EIGEN_CHOLESKY_MODULE_H
#define EIGEN_CHOLESKY_MODULE_H
#include "Core"
#include "src/Core/util/DisableMSVCWarnings.h"
// Note that EIGEN_HIDE_HEAVY_CODE has to be defined per module
#if (defined EIGEN_EXTERN_INSTANTIATIONS) && (EIGEN_EXTERN_INSTANTIATIONS>=2)
#ifndef EIGEN_HIDE_HEAVY_CODE
#define EIGEN_HIDE_HEAVY_CODE
#endif
#elif defined EIGEN_HIDE_HEAVY_CODE
#undef EIGEN_HIDE_HEAVY_CODE
#endif
namespace Eigen {
/** \defgroup Cholesky_Module Cholesky module
*
* \nonstableyet
*
* This module provides two variants of the Cholesky decomposition for selfadjoint (hermitian) matrices.
* Those decompositions are accessible via the following MatrixBase methods:
* - MatrixBase::llt(),
* - MatrixBase::ldlt()
*
* \code
* #include <Eigen/Cholesky>
* \endcode
*/
#include "src/Array/CwiseOperators.h"
#include "src/Array/Functors.h"
#include "src/Cholesky/LLT.h"
#include "src/Cholesky/LDLT.h"
} // namespace Eigen
#define EIGEN_CHOLESKY_MODULE_INSTANTIATE_TYPE(MATRIXTYPE,PREFIX) \
PREFIX template class LLT<MATRIXTYPE>; \
PREFIX template class LDLT<MATRIXTYPE>
#define EIGEN_CHOLESKY_MODULE_INSTANTIATE(PREFIX) \
EIGEN_CHOLESKY_MODULE_INSTANTIATE_TYPE(Matrix2f,PREFIX); \
EIGEN_CHOLESKY_MODULE_INSTANTIATE_TYPE(Matrix2d,PREFIX); \
EIGEN_CHOLESKY_MODULE_INSTANTIATE_TYPE(Matrix3f,PREFIX); \
EIGEN_CHOLESKY_MODULE_INSTANTIATE_TYPE(Matrix3d,PREFIX); \
EIGEN_CHOLESKY_MODULE_INSTANTIATE_TYPE(Matrix4f,PREFIX); \
EIGEN_CHOLESKY_MODULE_INSTANTIATE_TYPE(Matrix4d,PREFIX); \
EIGEN_CHOLESKY_MODULE_INSTANTIATE_TYPE(MatrixXf,PREFIX); \
EIGEN_CHOLESKY_MODULE_INSTANTIATE_TYPE(MatrixXd,PREFIX); \
EIGEN_CHOLESKY_MODULE_INSTANTIATE_TYPE(MatrixXcf,PREFIX); \
EIGEN_CHOLESKY_MODULE_INSTANTIATE_TYPE(MatrixXcd,PREFIX)
#ifdef EIGEN_EXTERN_INSTANTIATIONS
namespace Eigen {
EIGEN_CHOLESKY_MODULE_INSTANTIATE(extern);
} // namespace Eigen
#endif
#include "src/Core/util/EnableMSVCWarnings.h"
#endif // EIGEN_CHOLESKY_MODULE_H

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#ifndef EIGEN_CORE_H
#define EIGEN_CORE_H
// first thing Eigen does: prevent MSVC from committing suicide
#include "src/Core/util/DisableMSVCWarnings.h"
#ifdef _MSC_VER
#include <malloc.h> // for _aligned_malloc -- need it regardless of whether vectorization is enabled
#if (_MSC_VER >= 1500) // 2008 or later
// Remember that usage of defined() in a #define is undefined by the standard.
// a user reported that in 64-bit mode, MSVC doesn't care to define _M_IX86_FP.
#if (defined(_M_IX86_FP) && (_M_IX86_FP >= 2)) || defined(_M_X64)
#define EIGEN_SSE2_ON_MSVC_2008_OR_LATER
#endif
#endif
#endif
// FIXME: this check should not be against __QNXNTO__, which is also defined
// while compiling with GCC for QNX target. Better solution is welcome!
#if defined(__GNUC__) && !defined(__QNXNTO__)
#define EIGEN_GNUC_AT_LEAST(x,y) ((__GNUC__>=x && __GNUC_MINOR__>=y) || __GNUC__>x)
#else
#define EIGEN_GNUC_AT_LEAST(x,y) 0
#endif
// Remember that usage of defined() in a #define is undefined by the standard
#if (defined __SSE2__) && ( (!defined __GNUC__) || EIGEN_GNUC_AT_LEAST(4,2) )
#define EIGEN_SSE2_BUT_NOT_OLD_GCC
#endif
#if !defined(EIGEN_DONT_VECTORIZE) && !defined(EIGEN_DONT_ALIGN)
#if defined (EIGEN_SSE2_BUT_NOT_OLD_GCC) || defined(EIGEN_SSE2_ON_MSVC_2008_OR_LATER)
#define EIGEN_VECTORIZE
#define EIGEN_VECTORIZE_SSE
#include <emmintrin.h>
#include <xmmintrin.h>
#ifdef __SSE3__
#include <pmmintrin.h>
#endif
#ifdef __SSSE3__
#include <tmmintrin.h>
#endif
#elif defined __ALTIVEC__
#define EIGEN_VECTORIZE
#define EIGEN_VECTORIZE_ALTIVEC
#include <altivec.h>
// We need to #undef all these ugly tokens defined in <altivec.h>
// => use __vector instead of vector
#undef bool
#undef vector
#undef pixel
#endif
#endif
#include <cstdlib>
#include <cmath>
#include <complex>
#include <cassert>
#include <functional>
#include <iostream>
#include <cstring>
#include <string>
#include <limits>
#if (defined(_CPPUNWIND) || defined(__EXCEPTIONS)) && !defined(EIGEN_NO_EXCEPTIONS)
#define EIGEN_EXCEPTIONS
#endif
#ifdef EIGEN_EXCEPTIONS
#include <new>
#endif
// this needs to be done after all possible windows C header includes and before any Eigen source includes
// (system C++ includes are supposed to be able to deal with this already):
// windows.h defines min and max macros which would make Eigen fail to compile.
#if defined(min) || defined(max)
#error The preprocessor symbols 'min' or 'max' are defined. If you are compiling on Windows, do #define NOMINMAX to prevent windows.h from defining these symbols.
#endif
namespace Eigen {
// we use size_t frequently and we'll never remember to prepend it with std:: everytime just to
// ensure QNX/QCC support
using std::size_t;
/** \defgroup Core_Module Core module
* This is the main module of Eigen providing dense matrix and vector support
* (both fixed and dynamic size) with all the features corresponding to a BLAS library
* and much more...
*
* \code
* #include <Eigen/Core>
* \endcode
*/
#include "src/Core/util/Macros.h"
#include "src/Core/util/Constants.h"
#include "src/Core/util/ForwardDeclarations.h"
#include "src/Core/util/Meta.h"
#include "src/Core/util/XprHelper.h"
#include "src/Core/util/StaticAssert.h"
#include "src/Core/util/Memory.h"
#include "src/Core/NumTraits.h"
#include "src/Core/MathFunctions.h"
#include "src/Core/GenericPacketMath.h"
#if defined EIGEN_VECTORIZE_SSE
#include "src/Core/arch/SSE/PacketMath.h"
#elif defined EIGEN_VECTORIZE_ALTIVEC
#include "src/Core/arch/AltiVec/PacketMath.h"
#endif
#ifndef EIGEN_CACHEFRIENDLY_PRODUCT_THRESHOLD
#define EIGEN_CACHEFRIENDLY_PRODUCT_THRESHOLD 16
#endif
#include "src/Core/Functors.h"
#include "src/Core/MatrixBase.h"
#include "src/Core/Coeffs.h"
#ifndef EIGEN_PARSED_BY_DOXYGEN // work around Doxygen bug triggered by Assign.h r814874
// at least confirmed with Doxygen 1.5.5 and 1.5.6
#include "src/Core/Assign.h"
#endif
#include "src/Core/MatrixStorage.h"
#include "src/Core/NestByValue.h"
#include "src/Core/Flagged.h"
#include "src/Core/Matrix.h"
#include "src/Core/Cwise.h"
#include "src/Core/CwiseBinaryOp.h"
#include "src/Core/CwiseUnaryOp.h"
#include "src/Core/CwiseNullaryOp.h"
#include "src/Core/Dot.h"
#include "src/Core/Product.h"
#include "src/Core/DiagonalProduct.h"
#include "src/Core/SolveTriangular.h"
#include "src/Core/MapBase.h"
#include "src/Core/Map.h"
#include "src/Core/Block.h"
#include "src/Core/Minor.h"
#include "src/Core/Transpose.h"
#include "src/Core/DiagonalMatrix.h"
#include "src/Core/DiagonalCoeffs.h"
#include "src/Core/Sum.h"
#include "src/Core/Redux.h"
#include "src/Core/Visitor.h"
#include "src/Core/Fuzzy.h"
#include "src/Core/IO.h"
#include "src/Core/Swap.h"
#include "src/Core/CommaInitializer.h"
#include "src/Core/Part.h"
#include "src/Core/CacheFriendlyProduct.h"
} // namespace Eigen
#include "src/Core/util/EnableMSVCWarnings.h"
#endif // EIGEN_CORE_H

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#include "Core"
#include "Array"
#include "LU"
#include "Cholesky"
#include "QR"
#include "SVD"
#include "Geometry"
#include "LeastSquares"

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#include "Dense"
#include "Sparse"

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#ifndef EIGEN_GEOMETRY_MODULE_H
#define EIGEN_GEOMETRY_MODULE_H
#include "Core"
#include "src/Core/util/DisableMSVCWarnings.h"
#include "Array"
#include <limits>
#ifndef M_PI
#define M_PI 3.14159265358979323846
#endif
namespace Eigen {
/** \defgroup Geometry_Module Geometry module
*
* \nonstableyet
*
* This module provides support for:
* - fixed-size homogeneous transformations
* - translation, scaling, 2D and 3D rotations
* - quaternions
* - \ref MatrixBase::cross() "cross product"
* - \ref MatrixBase::unitOrthogonal() "orthognal vector generation"
* - some linear components: parametrized-lines and hyperplanes
*
* \code
* #include <Eigen/Geometry>
* \endcode
*/
#include "src/Geometry/OrthoMethods.h"
#include "src/Geometry/RotationBase.h"
#include "src/Geometry/Rotation2D.h"
#include "src/Geometry/Quaternion.h"
#include "src/Geometry/AngleAxis.h"
#include "src/Geometry/EulerAngles.h"
#include "src/Geometry/Transform.h"
#include "src/Geometry/Translation.h"
#include "src/Geometry/Scaling.h"
#include "src/Geometry/Hyperplane.h"
#include "src/Geometry/ParametrizedLine.h"
#include "src/Geometry/AlignedBox.h"
} // namespace Eigen
#include "src/Core/util/EnableMSVCWarnings.h"
#endif // EIGEN_GEOMETRY_MODULE_H

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#ifndef EIGEN_LU_MODULE_H
#define EIGEN_LU_MODULE_H
#include "Core"
#include "src/Core/util/DisableMSVCWarnings.h"
namespace Eigen {
/** \defgroup LU_Module LU module
* This module includes %LU decomposition and related notions such as matrix inversion and determinant.
* This module defines the following MatrixBase methods:
* - MatrixBase::inverse()
* - MatrixBase::determinant()
*
* \code
* #include <Eigen/LU>
* \endcode
*/
#include "src/LU/LU.h"
#include "src/LU/Determinant.h"
#include "src/LU/Inverse.h"
} // namespace Eigen
#include "src/Core/util/EnableMSVCWarnings.h"
#endif // EIGEN_LU_MODULE_H

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#ifndef EIGEN_REGRESSION_MODULE_H
#define EIGEN_REGRESSION_MODULE_H
#include "Core"
#include "src/Core/util/DisableMSVCWarnings.h"
#include "QR"
#include "Geometry"
namespace Eigen {
/** \defgroup LeastSquares_Module LeastSquares module
* This module provides linear regression and related features.
*
* \code
* #include <Eigen/LeastSquares>
* \endcode
*/
#include "src/LeastSquares/LeastSquares.h"
} // namespace Eigen
#include "src/Core/util/EnableMSVCWarnings.h"
#endif // EIGEN_REGRESSION_MODULE_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra.
//
// Copyright (C) 2009 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2009 Hauke Heibel <hauke.heibel@googlemail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_STDVECTOR_MODULE_H
#define EIGEN_STDVECTOR_MODULE_H
#include "Core"
#include <vector>
namespace Eigen {
// This one is needed to prevent reimplementing the whole std::vector.
template <class T>
class aligned_allocator_indirection : public aligned_allocator<T>
{
public:
typedef std::size_t size_type;
typedef std::ptrdiff_t difference_type;
typedef T* pointer;
typedef const T* const_pointer;
typedef T& reference;
typedef const T& const_reference;
typedef T value_type;
template<class U>
struct rebind
{
typedef aligned_allocator_indirection<U> other;
};
aligned_allocator_indirection() throw() {}
aligned_allocator_indirection(const aligned_allocator_indirection& ) throw() : aligned_allocator<T>() {}
aligned_allocator_indirection(const aligned_allocator<T>& ) throw() {}
template<class U>
aligned_allocator_indirection(const aligned_allocator_indirection<U>& ) throw() {}
template<class U>
aligned_allocator_indirection(const aligned_allocator<U>& ) throw() {}
~aligned_allocator_indirection() throw() {}
};
#ifdef _MSC_VER
// sometimes, MSVC detects, at compile time, that the argument x
// in std::vector::resize(size_t s,T x) won't be aligned and generate an error
// even if this function is never called. Whence this little wrapper.
#define EIGEN_WORKAROUND_MSVC_STD_VECTOR(T) Eigen::ei_workaround_msvc_std_vector<T>
template<typename T> struct ei_workaround_msvc_std_vector : public T
{
inline ei_workaround_msvc_std_vector() : T() {}
inline ei_workaround_msvc_std_vector(const T& other) : T(other) {}
inline operator T& () { return *static_cast<T*>(this); }
inline operator const T& () const { return *static_cast<const T*>(this); }
template<typename OtherT>
inline T& operator=(const OtherT& other)
{ T::operator=(other); return *this; }
inline ei_workaround_msvc_std_vector& operator=(const ei_workaround_msvc_std_vector& other)
{ T::operator=(other); return *this; }
};
#else
#define EIGEN_WORKAROUND_MSVC_STD_VECTOR(T) T
#endif
}
namespace std {
#define EIGEN_STD_VECTOR_SPECIALIZATION_BODY \
public: \
typedef T value_type; \
typedef typename vector_base::allocator_type allocator_type; \
typedef typename vector_base::size_type size_type; \
typedef typename vector_base::iterator iterator; \
typedef typename vector_base::const_iterator const_iterator; \
explicit vector(const allocator_type& a = allocator_type()) : vector_base(a) {} \
template<typename InputIterator> \
vector(InputIterator first, InputIterator last, const allocator_type& a = allocator_type()) \
: vector_base(first, last, a) {} \
vector(const vector& c) : vector_base(c) {} \
explicit vector(size_type num, const value_type& val = value_type()) : vector_base(num, val) {} \
vector(iterator start, iterator end) : vector_base(start, end) {} \
vector& operator=(const vector& x) { \
vector_base::operator=(x); \
return *this; \
}
template<typename T>
class vector<T,Eigen::aligned_allocator<T> >
: public vector<EIGEN_WORKAROUND_MSVC_STD_VECTOR(T),
Eigen::aligned_allocator_indirection<EIGEN_WORKAROUND_MSVC_STD_VECTOR(T)> >
{
typedef vector<EIGEN_WORKAROUND_MSVC_STD_VECTOR(T),
Eigen::aligned_allocator_indirection<EIGEN_WORKAROUND_MSVC_STD_VECTOR(T)> > vector_base;
EIGEN_STD_VECTOR_SPECIALIZATION_BODY
void resize(size_type new_size)
{ resize(new_size, T()); }
#if defined(_VECTOR_)
// workaround MSVC std::vector implementation
void resize(size_type new_size, const value_type& x)
{
if (vector_base::size() < new_size)
vector_base::_Insert_n(vector_base::end(), new_size - vector_base::size(), x);
else if (new_size < vector_base::size())
vector_base::erase(vector_base::begin() + new_size, vector_base::end());
}
void push_back(const value_type& x)
{ vector_base::push_back(x); }
using vector_base::insert;
iterator insert(const_iterator position, const value_type& x)
{ return vector_base::insert(position,x); }
void insert(const_iterator position, size_type new_size, const value_type& x)
{ vector_base::insert(position, new_size, x); }
#elif defined(_GLIBCXX_VECTOR) && EIGEN_GNUC_AT_LEAST(4,2)
// workaround GCC std::vector implementation
void resize(size_type new_size, const value_type& x)
{
if (new_size < vector_base::size())
vector_base::_M_erase_at_end(this->_M_impl._M_start + new_size);
else
vector_base::insert(vector_base::end(), new_size - vector_base::size(), x);
}
#elif defined(_GLIBCXX_VECTOR) && (!EIGEN_GNUC_AT_LEAST(4,1))
// Note that before gcc-4.1 we already have: std::vector::resize(size_type,const T&),
// no no need to workaround !
using vector_base::resize;
#else
// either GCC 4.1 or non-GCC
// default implementation which should always work.
void resize(size_type new_size, const value_type& x)
{
if (new_size < vector_base::size())
vector_base::erase(vector_base::begin() + new_size, vector_base::end());
else if (new_size > vector_base::size())
vector_base::insert(vector_base::end(), new_size - vector_base::size(), x);
}
#endif
};
}
#endif // EIGEN_STDVECTOR_MODULE_H

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#ifndef EIGEN_QR_MODULE_H
#define EIGEN_QR_MODULE_H
#include "Core"
#include "src/Core/util/DisableMSVCWarnings.h"
#include "Cholesky"
// Note that EIGEN_HIDE_HEAVY_CODE has to be defined per module
#if (defined EIGEN_EXTERN_INSTANTIATIONS) && (EIGEN_EXTERN_INSTANTIATIONS>=2)
#ifndef EIGEN_HIDE_HEAVY_CODE
#define EIGEN_HIDE_HEAVY_CODE
#endif
#elif defined EIGEN_HIDE_HEAVY_CODE
#undef EIGEN_HIDE_HEAVY_CODE
#endif
namespace Eigen {
/** \defgroup QR_Module QR module
*
* \nonstableyet
*
* This module mainly provides QR decomposition and an eigen value solver.
* This module also provides some MatrixBase methods, including:
* - MatrixBase::qr(),
* - MatrixBase::eigenvalues(),
* - MatrixBase::operatorNorm()
*
* \code
* #include <Eigen/QR>
* \endcode
*/
#include "src/QR/QR.h"
#include "src/QR/Tridiagonalization.h"
#include "src/QR/EigenSolver.h"
#include "src/QR/SelfAdjointEigenSolver.h"
#include "src/QR/HessenbergDecomposition.h"
// declare all classes for a given matrix type
#define EIGEN_QR_MODULE_INSTANTIATE_TYPE(MATRIXTYPE,PREFIX) \
PREFIX template class QR<MATRIXTYPE>; \
PREFIX template class Tridiagonalization<MATRIXTYPE>; \
PREFIX template class HessenbergDecomposition<MATRIXTYPE>; \
PREFIX template class SelfAdjointEigenSolver<MATRIXTYPE>
// removed because it does not support complex yet
// PREFIX template class EigenSolver<MATRIXTYPE>
// declare all class for all types
#define EIGEN_QR_MODULE_INSTANTIATE(PREFIX) \
EIGEN_QR_MODULE_INSTANTIATE_TYPE(Matrix2f,PREFIX); \
EIGEN_QR_MODULE_INSTANTIATE_TYPE(Matrix2d,PREFIX); \
EIGEN_QR_MODULE_INSTANTIATE_TYPE(Matrix3f,PREFIX); \
EIGEN_QR_MODULE_INSTANTIATE_TYPE(Matrix3d,PREFIX); \
EIGEN_QR_MODULE_INSTANTIATE_TYPE(Matrix4f,PREFIX); \
EIGEN_QR_MODULE_INSTANTIATE_TYPE(Matrix4d,PREFIX); \
EIGEN_QR_MODULE_INSTANTIATE_TYPE(MatrixXf,PREFIX); \
EIGEN_QR_MODULE_INSTANTIATE_TYPE(MatrixXd,PREFIX); \
EIGEN_QR_MODULE_INSTANTIATE_TYPE(MatrixXcf,PREFIX); \
EIGEN_QR_MODULE_INSTANTIATE_TYPE(MatrixXcd,PREFIX)
#ifdef EIGEN_EXTERN_INSTANTIATIONS
EIGEN_QR_MODULE_INSTANTIATE(extern);
#endif // EIGEN_EXTERN_INSTANTIATIONS
} // namespace Eigen
#include "src/Core/util/EnableMSVCWarnings.h"
#endif // EIGEN_QR_MODULE_H

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#ifndef EIGEN_QTMALLOC_MODULE_H
#define EIGEN_QTMALLOC_MODULE_H
#if (!EIGEN_MALLOC_ALREADY_ALIGNED)
#ifdef QVECTOR_H
#error You must include <Eigen/QtAlignedMalloc> before <QtCore/QVector>.
#endif
#ifdef Q_DECL_IMPORT
#define Q_DECL_IMPORT_ORIG Q_DECL_IMPORT
#undef Q_DECL_IMPORT
#define Q_DECL_IMPORT
#else
#define Q_DECL_IMPORT
#endif
#include "Core"
#include <QtCore/QVector>
inline void *qMalloc(size_t size)
{
return Eigen::ei_aligned_malloc(size);
}
inline void qFree(void *ptr)
{
Eigen::ei_aligned_free(ptr);
}
inline void *qRealloc(void *ptr, size_t size)
{
void* newPtr = Eigen::ei_aligned_malloc(size);
memcpy(newPtr, ptr, size);
Eigen::ei_aligned_free(ptr);
return newPtr;
}
#endif
#ifdef Q_DECL_IMPORT_ORIG
#define Q_DECL_IMPORT Q_DECL_IMPORT_ORIG
#undef Q_DECL_IMPORT_ORIG
#else
#undef Q_DECL_IMPORT
#endif
#endif // EIGEN_QTMALLOC_MODULE_H

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#ifndef EIGEN_SVD_MODULE_H
#define EIGEN_SVD_MODULE_H
#include "Core"
#include "src/Core/util/DisableMSVCWarnings.h"
namespace Eigen {
/** \defgroup SVD_Module SVD module
*
* \nonstableyet
*
* This module provides SVD decomposition for (currently) real matrices.
* This decomposition is accessible via the following MatrixBase method:
* - MatrixBase::svd()
*
* \code
* #include <Eigen/SVD>
* \endcode
*/
#include "src/SVD/SVD.h"
} // namespace Eigen
#include "src/Core/util/EnableMSVCWarnings.h"
#endif // EIGEN_SVD_MODULE_H

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#ifndef EIGEN_SPARSE_MODULE_H
#define EIGEN_SPARSE_MODULE_H
#include "Core"
#include "src/Core/util/DisableMSVCWarnings.h"
#include <vector>
#include <map>
#include <cstdlib>
#include <cstring>
#include <algorithm>
#ifdef EIGEN_GOOGLEHASH_SUPPORT
#include <google/dense_hash_map>
#endif
#ifdef EIGEN_CHOLMOD_SUPPORT
extern "C" {
#include "cholmod.h"
}
#endif
#ifdef EIGEN_TAUCS_SUPPORT
// taucs.h declares a lot of mess
#define isnan
#define finite
#define isinf
extern "C" {
#include "taucs.h"
}
#undef isnan
#undef finite
#undef isinf
#ifdef min
#undef min
#endif
#ifdef max
#undef max
#endif
#ifdef complex
#undef complex
#endif
#endif
#ifdef EIGEN_SUPERLU_SUPPORT
typedef int int_t;
#include "superlu/slu_Cnames.h"
#include "superlu/supermatrix.h"
#include "superlu/slu_util.h"
namespace SuperLU_S {
#include "superlu/slu_sdefs.h"
}
namespace SuperLU_D {
#include "superlu/slu_ddefs.h"
}
namespace SuperLU_C {
#include "superlu/slu_cdefs.h"
}
namespace SuperLU_Z {
#include "superlu/slu_zdefs.h"
}
namespace Eigen { struct SluMatrix; }
#endif
#ifdef EIGEN_UMFPACK_SUPPORT
#include "umfpack.h"
#endif
namespace Eigen {
/** \defgroup Sparse_Module Sparse module
*
* \nonstableyet
*
* See the \ref TutorialSparse "Sparse tutorial"
*
* \code
* #include <Eigen/QR>
* \endcode
*/
#include "src/Sparse/SparseUtil.h"
#include "src/Sparse/SparseMatrixBase.h"
#include "src/Sparse/CompressedStorage.h"
#include "src/Sparse/AmbiVector.h"
#include "src/Sparse/RandomSetter.h"
#include "src/Sparse/SparseBlock.h"
#include "src/Sparse/SparseMatrix.h"
#include "src/Sparse/DynamicSparseMatrix.h"
#include "src/Sparse/MappedSparseMatrix.h"
#include "src/Sparse/SparseVector.h"
#include "src/Sparse/CoreIterators.h"
#include "src/Sparse/SparseTranspose.h"
#include "src/Sparse/SparseCwise.h"
#include "src/Sparse/SparseCwiseUnaryOp.h"
#include "src/Sparse/SparseCwiseBinaryOp.h"
#include "src/Sparse/SparseDot.h"
#include "src/Sparse/SparseAssign.h"
#include "src/Sparse/SparseRedux.h"
#include "src/Sparse/SparseFuzzy.h"
#include "src/Sparse/SparseFlagged.h"
#include "src/Sparse/SparseProduct.h"
#include "src/Sparse/SparseDiagonalProduct.h"
#include "src/Sparse/TriangularSolver.h"
#include "src/Sparse/SparseLLT.h"
#include "src/Sparse/SparseLDLT.h"
#include "src/Sparse/SparseLU.h"
#ifdef EIGEN_CHOLMOD_SUPPORT
# include "src/Sparse/CholmodSupport.h"
#endif
#ifdef EIGEN_TAUCS_SUPPORT
# include "src/Sparse/TaucsSupport.h"
#endif
#ifdef EIGEN_SUPERLU_SUPPORT
# include "src/Sparse/SuperLUSupport.h"
#endif
#ifdef EIGEN_UMFPACK_SUPPORT
# include "src/Sparse/UmfPackSupport.h"
#endif
} // namespace Eigen
#include "src/Core/util/EnableMSVCWarnings.h"
#endif // EIGEN_SPARSE_MODULE_H

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#ifdef EIGEN_USE_NEW_STDVECTOR
#include "NewStdVector"
#else
#ifndef EIGEN_STDVECTOR_MODULE_H
#define EIGEN_STDVECTOR_MODULE_H
#if defined(_GLIBCXX_VECTOR) || defined(_VECTOR_)
#error you must include <Eigen/StdVector> before <vector>. Also note that <Eigen/Sparse> includes <vector>, so it must be included after <Eigen/StdVector> too.
#endif
#ifndef EIGEN_GNUC_AT_LEAST
#ifdef __GNUC__
#define EIGEN_GNUC_AT_LEAST(x,y) ((__GNUC__>=x && __GNUC_MINOR__>=y) || __GNUC__>x)
#else
#define EIGEN_GNUC_AT_LEAST(x,y) 0
#endif
#endif
#define vector std_vector
#include <vector>
#undef vector
namespace Eigen {
template<typename T> class aligned_allocator;
// meta programming to determine if a class has a given member
struct ei_does_not_have_aligned_operator_new_marker_sizeof {int a[1];};
struct ei_has_aligned_operator_new_marker_sizeof {int a[2];};
template<typename ClassType>
struct ei_has_aligned_operator_new {
template<typename T>
static ei_has_aligned_operator_new_marker_sizeof
test(T const *, typename T::ei_operator_new_marker_type const * = 0);
static ei_does_not_have_aligned_operator_new_marker_sizeof
test(...);
// note that the following indirection is needed for gcc-3.3
enum {ret = sizeof(test(static_cast<ClassType*>(0)))
== sizeof(ei_has_aligned_operator_new_marker_sizeof) };
};
#ifdef _MSC_VER
// sometimes, MSVC detects, at compile time, that the argument x
// in std::vector::resize(size_t s,T x) won't be aligned and generate an error
// even if this function is never called. Whence this little wrapper.
#define _EIGEN_WORKAROUND_MSVC_STD_VECTOR(T) Eigen::ei_workaround_msvc_std_vector<T>
template<typename T> struct ei_workaround_msvc_std_vector : public T
{
inline ei_workaround_msvc_std_vector() : T() {}
inline ei_workaround_msvc_std_vector(const T& other) : T(other) {}
inline operator T& () { return *static_cast<T*>(this); }
inline operator const T& () const { return *static_cast<const T*>(this); }
template<typename OtherT>
inline T& operator=(const OtherT& other)
{ T::operator=(other); return *this; }
inline ei_workaround_msvc_std_vector& operator=(const ei_workaround_msvc_std_vector& other)
{ T::operator=(other); return *this; }
};
#else
#define _EIGEN_WORKAROUND_MSVC_STD_VECTOR(T) T
#endif
}
namespace std {
#define EIGEN_STD_VECTOR_SPECIALIZATION_BODY \
public: \
typedef T value_type; \
typedef typename vector_base::allocator_type allocator_type; \
typedef typename vector_base::size_type size_type; \
typedef typename vector_base::iterator iterator; \
explicit vector(const allocator_type& __a = allocator_type()) : vector_base(__a) {} \
vector(const vector& c) : vector_base(c) {} \
vector(size_type num, const value_type& val = value_type()) : vector_base(num, val) {} \
vector(iterator start, iterator end) : vector_base(start, end) {} \
vector& operator=(const vector& __x) { \
vector_base::operator=(__x); \
return *this; \
}
template<typename T,
typename AllocT = std::allocator<T>,
bool HasAlignedNew = Eigen::ei_has_aligned_operator_new<T>::ret>
class vector : public std::std_vector<T,AllocT>
{
typedef std_vector<T, AllocT> vector_base;
EIGEN_STD_VECTOR_SPECIALIZATION_BODY
};
template<typename T,typename DummyAlloc>
class vector<T,DummyAlloc,true>
: public std::std_vector<_EIGEN_WORKAROUND_MSVC_STD_VECTOR(T),
Eigen::aligned_allocator<_EIGEN_WORKAROUND_MSVC_STD_VECTOR(T)> >
{
typedef std_vector<_EIGEN_WORKAROUND_MSVC_STD_VECTOR(T),
Eigen::aligned_allocator<_EIGEN_WORKAROUND_MSVC_STD_VECTOR(T)> > vector_base;
EIGEN_STD_VECTOR_SPECIALIZATION_BODY
void resize(size_type __new_size)
{ resize(__new_size, T()); }
#if defined(_VECTOR_)
// workaround MSVC std::vector implementation
void resize(size_type __new_size, const value_type& __x)
{
if (vector_base::size() < __new_size)
vector_base::_Insert_n(vector_base::end(), __new_size - vector_base::size(), __x);
else if (__new_size < vector_base::size())
vector_base::erase(vector_base::begin() + __new_size, vector_base::end());
}
#elif defined(_GLIBCXX_VECTOR) && EIGEN_GNUC_AT_LEAST(4,2)
// workaround GCC std::vector implementation
void resize(size_type __new_size, const value_type& __x)
{
if (__new_size < vector_base::size())
vector_base::_M_erase_at_end(this->_M_impl._M_start + __new_size);
else
vector_base::insert(vector_base::end(), __new_size - vector_base::size(), __x);
}
#elif defined(_GLIBCXX_VECTOR) && EIGEN_GNUC_AT_LEAST(4,1)
void resize(size_type __new_size, const value_type& __x)
{
if (__new_size < vector_base::size())
vector_base::erase(vector_base::begin() + __new_size, vector_base::end());
else
vector_base::insert(vector_base::end(), __new_size - vector_base::size(), __x);
}
#else
// Before gcc-4.1 we already have: std::vector::resize(size_type,const T&),
// so no need for a workaround !
using vector_base::resize;
#endif
};
}
#endif // EIGEN_STDVECTOR_MODULE_H
#endif // EIGEN_USE_NEW_STDVECTOR

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_ALLANDANY_H
#define EIGEN_ALLANDANY_H
template<typename Derived, int UnrollCount>
struct ei_all_unroller
{
enum {
col = (UnrollCount-1) / Derived::RowsAtCompileTime,
row = (UnrollCount-1) % Derived::RowsAtCompileTime
};
inline static bool run(const Derived &mat)
{
return ei_all_unroller<Derived, UnrollCount-1>::run(mat) && mat.coeff(row, col);
}
};
template<typename Derived>
struct ei_all_unroller<Derived, 1>
{
inline static bool run(const Derived &mat) { return mat.coeff(0, 0); }
};
template<typename Derived>
struct ei_all_unroller<Derived, Dynamic>
{
inline static bool run(const Derived &) { return false; }
};
template<typename Derived, int UnrollCount>
struct ei_any_unroller
{
enum {
col = (UnrollCount-1) / Derived::RowsAtCompileTime,
row = (UnrollCount-1) % Derived::RowsAtCompileTime
};
inline static bool run(const Derived &mat)
{
return ei_any_unroller<Derived, UnrollCount-1>::run(mat) || mat.coeff(row, col);
}
};
template<typename Derived>
struct ei_any_unroller<Derived, 1>
{
inline static bool run(const Derived &mat) { return mat.coeff(0, 0); }
};
template<typename Derived>
struct ei_any_unroller<Derived, Dynamic>
{
inline static bool run(const Derived &) { return false; }
};
/** \array_module
*
* \returns true if all coefficients are true
*
* \addexample CwiseAll \label How to check whether a point is inside a box (using operator< and all())
*
* Example: \include MatrixBase_all.cpp
* Output: \verbinclude MatrixBase_all.out
*
* \sa MatrixBase::any(), Cwise::operator<()
*/
template<typename Derived>
inline bool MatrixBase<Derived>::all() const
{
const bool unroll = SizeAtCompileTime * (CoeffReadCost + NumTraits<Scalar>::AddCost)
<= EIGEN_UNROLLING_LIMIT;
if(unroll)
return ei_all_unroller<Derived,
unroll ? int(SizeAtCompileTime) : Dynamic
>::run(derived());
else
{
for(int j = 0; j < cols(); ++j)
for(int i = 0; i < rows(); ++i)
if (!coeff(i, j)) return false;
return true;
}
}
/** \array_module
*
* \returns true if at least one coefficient is true
*
* \sa MatrixBase::all()
*/
template<typename Derived>
inline bool MatrixBase<Derived>::any() const
{
const bool unroll = SizeAtCompileTime * (CoeffReadCost + NumTraits<Scalar>::AddCost)
<= EIGEN_UNROLLING_LIMIT;
if(unroll)
return ei_any_unroller<Derived,
unroll ? int(SizeAtCompileTime) : Dynamic
>::run(derived());
else
{
for(int j = 0; j < cols(); ++j)
for(int i = 0; i < rows(); ++i)
if (coeff(i, j)) return true;
return false;
}
}
/** \array_module
*
* \returns the number of coefficients which evaluate to true
*
* \sa MatrixBase::all(), MatrixBase::any()
*/
template<typename Derived>
inline int MatrixBase<Derived>::count() const
{
return this->cast<bool>().cast<int>().sum();
}
#endif // EIGEN_ALLANDANY_H

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FILE(GLOB Eigen_Array_SRCS "*.h")
INSTALL(FILES
${Eigen_Array_SRCS}
DESTINATION ${INCLUDE_INSTALL_DIR}/Eigen/src/Array
)

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_ARRAY_CWISE_OPERATORS_H
#define EIGEN_ARRAY_CWISE_OPERATORS_H
// -- unary operators --
/** \array_module
*
* \returns an expression of the coefficient-wise square root of *this.
*
* Example: \include Cwise_sqrt.cpp
* Output: \verbinclude Cwise_sqrt.out
*
* \sa pow(), square()
*/
template<typename ExpressionType>
inline const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_sqrt_op)
Cwise<ExpressionType>::sqrt() const
{
return _expression();
}
/** \array_module
*
* \returns an expression of the coefficient-wise exponential of *this.
*
* Example: \include Cwise_exp.cpp
* Output: \verbinclude Cwise_exp.out
*
* \sa pow(), log(), sin(), cos()
*/
template<typename ExpressionType>
inline const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_exp_op)
Cwise<ExpressionType>::exp() const
{
return _expression();
}
/** \array_module
*
* \returns an expression of the coefficient-wise logarithm of *this.
*
* Example: \include Cwise_log.cpp
* Output: \verbinclude Cwise_log.out
*
* \sa exp()
*/
template<typename ExpressionType>
inline const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_log_op)
Cwise<ExpressionType>::log() const
{
return _expression();
}
/** \array_module
*
* \returns an expression of the coefficient-wise cosine of *this.
*
* Example: \include Cwise_cos.cpp
* Output: \verbinclude Cwise_cos.out
*
* \sa sin(), exp()
*/
template<typename ExpressionType>
inline const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_cos_op)
Cwise<ExpressionType>::cos() const
{
return _expression();
}
/** \array_module
*
* \returns an expression of the coefficient-wise sine of *this.
*
* Example: \include Cwise_sin.cpp
* Output: \verbinclude Cwise_sin.out
*
* \sa cos(), exp()
*/
template<typename ExpressionType>
inline const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_sin_op)
Cwise<ExpressionType>::sin() const
{
return _expression();
}
/** \array_module
*
* \returns an expression of the coefficient-wise power of *this to the given exponent.
*
* Example: \include Cwise_pow.cpp
* Output: \verbinclude Cwise_pow.out
*
* \sa exp(), log()
*/
template<typename ExpressionType>
inline const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_pow_op)
Cwise<ExpressionType>::pow(const Scalar& exponent) const
{
return EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_pow_op)(_expression(), ei_scalar_pow_op<Scalar>(exponent));
}
/** \array_module
*
* \returns an expression of the coefficient-wise inverse of *this.
*
* Example: \include Cwise_inverse.cpp
* Output: \verbinclude Cwise_inverse.out
*
* \sa operator/(), operator*()
*/
template<typename ExpressionType>
inline const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_inverse_op)
Cwise<ExpressionType>::inverse() const
{
return _expression();
}
/** \array_module
*
* \returns an expression of the coefficient-wise square of *this.
*
* Example: \include Cwise_square.cpp
* Output: \verbinclude Cwise_square.out
*
* \sa operator/(), operator*(), abs2()
*/
template<typename ExpressionType>
inline const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_square_op)
Cwise<ExpressionType>::square() const
{
return _expression();
}
/** \array_module
*
* \returns an expression of the coefficient-wise cube of *this.
*
* Example: \include Cwise_cube.cpp
* Output: \verbinclude Cwise_cube.out
*
* \sa square(), pow()
*/
template<typename ExpressionType>
inline const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_cube_op)
Cwise<ExpressionType>::cube() const
{
return _expression();
}
// -- binary operators --
/** \array_module
*
* \returns an expression of the coefficient-wise \< operator of *this and \a other
*
* Example: \include Cwise_less.cpp
* Output: \verbinclude Cwise_less.out
*
* \sa MatrixBase::all(), MatrixBase::any(), operator>(), operator<=()
*/
template<typename ExpressionType>
template<typename OtherDerived>
inline const EIGEN_CWISE_BINOP_RETURN_TYPE(std::less)
Cwise<ExpressionType>::operator<(const MatrixBase<OtherDerived> &other) const
{
return EIGEN_CWISE_BINOP_RETURN_TYPE(std::less)(_expression(), other.derived());
}
/** \array_module
*
* \returns an expression of the coefficient-wise \<= operator of *this and \a other
*
* Example: \include Cwise_less_equal.cpp
* Output: \verbinclude Cwise_less_equal.out
*
* \sa MatrixBase::all(), MatrixBase::any(), operator>=(), operator<()
*/
template<typename ExpressionType>
template<typename OtherDerived>
inline const EIGEN_CWISE_BINOP_RETURN_TYPE(std::less_equal)
Cwise<ExpressionType>::operator<=(const MatrixBase<OtherDerived> &other) const
{
return EIGEN_CWISE_BINOP_RETURN_TYPE(std::less_equal)(_expression(), other.derived());
}
/** \array_module
*
* \returns an expression of the coefficient-wise \> operator of *this and \a other
*
* Example: \include Cwise_greater.cpp
* Output: \verbinclude Cwise_greater.out
*
* \sa MatrixBase::all(), MatrixBase::any(), operator>=(), operator<()
*/
template<typename ExpressionType>
template<typename OtherDerived>
inline const EIGEN_CWISE_BINOP_RETURN_TYPE(std::greater)
Cwise<ExpressionType>::operator>(const MatrixBase<OtherDerived> &other) const
{
return EIGEN_CWISE_BINOP_RETURN_TYPE(std::greater)(_expression(), other.derived());
}
/** \array_module
*
* \returns an expression of the coefficient-wise \>= operator of *this and \a other
*
* Example: \include Cwise_greater_equal.cpp
* Output: \verbinclude Cwise_greater_equal.out
*
* \sa MatrixBase::all(), MatrixBase::any(), operator>(), operator<=()
*/
template<typename ExpressionType>
template<typename OtherDerived>
inline const EIGEN_CWISE_BINOP_RETURN_TYPE(std::greater_equal)
Cwise<ExpressionType>::operator>=(const MatrixBase<OtherDerived> &other) const
{
return EIGEN_CWISE_BINOP_RETURN_TYPE(std::greater_equal)(_expression(), other.derived());
}
/** \array_module
*
* \returns an expression of the coefficient-wise == operator of *this and \a other
*
* \warning this performs an exact comparison, which is generally a bad idea with floating-point types.
* In order to check for equality between two vectors or matrices with floating-point coefficients, it is
* generally a far better idea to use a fuzzy comparison as provided by MatrixBase::isApprox() and
* MatrixBase::isMuchSmallerThan().
*
* Example: \include Cwise_equal_equal.cpp
* Output: \verbinclude Cwise_equal_equal.out
*
* \sa MatrixBase::all(), MatrixBase::any(), MatrixBase::isApprox(), MatrixBase::isMuchSmallerThan()
*/
template<typename ExpressionType>
template<typename OtherDerived>
inline const EIGEN_CWISE_BINOP_RETURN_TYPE(std::equal_to)
Cwise<ExpressionType>::operator==(const MatrixBase<OtherDerived> &other) const
{
return EIGEN_CWISE_BINOP_RETURN_TYPE(std::equal_to)(_expression(), other.derived());
}
/** \array_module
*
* \returns an expression of the coefficient-wise != operator of *this and \a other
*
* \warning this performs an exact comparison, which is generally a bad idea with floating-point types.
* In order to check for equality between two vectors or matrices with floating-point coefficients, it is
* generally a far better idea to use a fuzzy comparison as provided by MatrixBase::isApprox() and
* MatrixBase::isMuchSmallerThan().
*
* Example: \include Cwise_not_equal.cpp
* Output: \verbinclude Cwise_not_equal.out
*
* \sa MatrixBase::all(), MatrixBase::any(), MatrixBase::isApprox(), MatrixBase::isMuchSmallerThan()
*/
template<typename ExpressionType>
template<typename OtherDerived>
inline const EIGEN_CWISE_BINOP_RETURN_TYPE(std::not_equal_to)
Cwise<ExpressionType>::operator!=(const MatrixBase<OtherDerived> &other) const
{
return EIGEN_CWISE_BINOP_RETURN_TYPE(std::not_equal_to)(_expression(), other.derived());
}
// comparisons to scalar value
/** \array_module
*
* \returns an expression of the coefficient-wise \< operator of *this and a scalar \a s
*
* \sa operator<(const MatrixBase<OtherDerived> &) const
*/
template<typename ExpressionType>
inline const EIGEN_CWISE_COMP_TO_SCALAR_RETURN_TYPE(std::less)
Cwise<ExpressionType>::operator<(Scalar s) const
{
return EIGEN_CWISE_COMP_TO_SCALAR_RETURN_TYPE(std::less)(_expression(),
typename ExpressionType::ConstantReturnType(_expression().rows(), _expression().cols(), s));
}
/** \array_module
*
* \returns an expression of the coefficient-wise \<= operator of *this and a scalar \a s
*
* \sa operator<=(const MatrixBase<OtherDerived> &) const
*/
template<typename ExpressionType>
inline const EIGEN_CWISE_COMP_TO_SCALAR_RETURN_TYPE(std::less_equal)
Cwise<ExpressionType>::operator<=(Scalar s) const
{
return EIGEN_CWISE_COMP_TO_SCALAR_RETURN_TYPE(std::less_equal)(_expression(),
typename ExpressionType::ConstantReturnType(_expression().rows(), _expression().cols(), s));
}
/** \array_module
*
* \returns an expression of the coefficient-wise \> operator of *this and a scalar \a s
*
* \sa operator>(const MatrixBase<OtherDerived> &) const
*/
template<typename ExpressionType>
inline const EIGEN_CWISE_COMP_TO_SCALAR_RETURN_TYPE(std::greater)
Cwise<ExpressionType>::operator>(Scalar s) const
{
return EIGEN_CWISE_COMP_TO_SCALAR_RETURN_TYPE(std::greater)(_expression(),
typename ExpressionType::ConstantReturnType(_expression().rows(), _expression().cols(), s));
}
/** \array_module
*
* \returns an expression of the coefficient-wise \>= operator of *this and a scalar \a s
*
* \sa operator>=(const MatrixBase<OtherDerived> &) const
*/
template<typename ExpressionType>
inline const EIGEN_CWISE_COMP_TO_SCALAR_RETURN_TYPE(std::greater_equal)
Cwise<ExpressionType>::operator>=(Scalar s) const
{
return EIGEN_CWISE_COMP_TO_SCALAR_RETURN_TYPE(std::greater_equal)(_expression(),
typename ExpressionType::ConstantReturnType(_expression().rows(), _expression().cols(), s));
}
/** \array_module
*
* \returns an expression of the coefficient-wise == operator of *this and a scalar \a s
*
* \warning this performs an exact comparison, which is generally a bad idea with floating-point types.
* In order to check for equality between two vectors or matrices with floating-point coefficients, it is
* generally a far better idea to use a fuzzy comparison as provided by MatrixBase::isApprox() and
* MatrixBase::isMuchSmallerThan().
*
* \sa operator==(const MatrixBase<OtherDerived> &) const
*/
template<typename ExpressionType>
inline const EIGEN_CWISE_COMP_TO_SCALAR_RETURN_TYPE(std::equal_to)
Cwise<ExpressionType>::operator==(Scalar s) const
{
return EIGEN_CWISE_COMP_TO_SCALAR_RETURN_TYPE(std::equal_to)(_expression(),
typename ExpressionType::ConstantReturnType(_expression().rows(), _expression().cols(), s));
}
/** \array_module
*
* \returns an expression of the coefficient-wise != operator of *this and a scalar \a s
*
* \warning this performs an exact comparison, which is generally a bad idea with floating-point types.
* In order to check for equality between two vectors or matrices with floating-point coefficients, it is
* generally a far better idea to use a fuzzy comparison as provided by MatrixBase::isApprox() and
* MatrixBase::isMuchSmallerThan().
*
* \sa operator!=(const MatrixBase<OtherDerived> &) const
*/
template<typename ExpressionType>
inline const EIGEN_CWISE_COMP_TO_SCALAR_RETURN_TYPE(std::not_equal_to)
Cwise<ExpressionType>::operator!=(Scalar s) const
{
return EIGEN_CWISE_COMP_TO_SCALAR_RETURN_TYPE(std::not_equal_to)(_expression(),
typename ExpressionType::ConstantReturnType(_expression().rows(), _expression().cols(), s));
}
// scalar addition
/** \array_module
*
* \returns an expression of \c *this with each coeff incremented by the constant \a scalar
*
* Example: \include Cwise_plus.cpp
* Output: \verbinclude Cwise_plus.out
*
* \sa operator+=(), operator-()
*/
template<typename ExpressionType>
inline const typename Cwise<ExpressionType>::ScalarAddReturnType
Cwise<ExpressionType>::operator+(const Scalar& scalar) const
{
return typename Cwise<ExpressionType>::ScalarAddReturnType(m_matrix, ei_scalar_add_op<Scalar>(scalar));
}
/** \array_module
*
* Adds the given \a scalar to each coeff of this expression.
*
* Example: \include Cwise_plus_equal.cpp
* Output: \verbinclude Cwise_plus_equal.out
*
* \sa operator+(), operator-=()
*/
template<typename ExpressionType>
inline ExpressionType& Cwise<ExpressionType>::operator+=(const Scalar& scalar)
{
return m_matrix.const_cast_derived() = *this + scalar;
}
/** \array_module
*
* \returns an expression of \c *this with each coeff decremented by the constant \a scalar
*
* Example: \include Cwise_minus.cpp
* Output: \verbinclude Cwise_minus.out
*
* \sa operator+(), operator-=()
*/
template<typename ExpressionType>
inline const typename Cwise<ExpressionType>::ScalarAddReturnType
Cwise<ExpressionType>::operator-(const Scalar& scalar) const
{
return *this + (-scalar);
}
/** \array_module
*
* Substracts the given \a scalar from each coeff of this expression.
*
* Example: \include Cwise_minus_equal.cpp
* Output: \verbinclude Cwise_minus_equal.out
*
* \sa operator+=(), operator-()
*/
template<typename ExpressionType>
inline ExpressionType& Cwise<ExpressionType>::operator-=(const Scalar& scalar)
{
return m_matrix.const_cast_derived() = *this - scalar;
}
#endif // EIGEN_ARRAY_CWISE_OPERATORS_H

309
Eigen/src/Array/Functors.h Normal file
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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_ARRAY_FUNCTORS_H
#define EIGEN_ARRAY_FUNCTORS_H
/** \internal
* \array_module
*
* \brief Template functor to add a scalar to a fixed other one
*
* \sa class CwiseUnaryOp, Array::operator+
*/
/* If you wonder why doing the ei_pset1() in packetOp() is an optimization check ei_scalar_multiple_op */
template<typename Scalar>
struct ei_scalar_add_op {
typedef typename ei_packet_traits<Scalar>::type PacketScalar;
// FIXME default copy constructors seems bugged with std::complex<>
inline ei_scalar_add_op(const ei_scalar_add_op& other) : m_other(other.m_other) { }
inline ei_scalar_add_op(const Scalar& other) : m_other(other) { }
inline Scalar operator() (const Scalar& a) const { return a + m_other; }
inline const PacketScalar packetOp(const PacketScalar& a) const
{ return ei_padd(a, ei_pset1(m_other)); }
const Scalar m_other;
private:
ei_scalar_add_op& operator=(const ei_scalar_add_op&);
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_add_op<Scalar> >
{ enum { Cost = NumTraits<Scalar>::AddCost, PacketAccess = ei_packet_traits<Scalar>::size>1 }; };
/** \internal
*
* \array_module
*
* \brief Template functor to compute the square root of a scalar
*
* \sa class CwiseUnaryOp, Cwise::sqrt()
*/
template<typename Scalar> struct ei_scalar_sqrt_op EIGEN_EMPTY_STRUCT {
inline const Scalar operator() (const Scalar& a) const { return ei_sqrt(a); }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_sqrt_op<Scalar> >
{ enum { Cost = 5 * NumTraits<Scalar>::MulCost, PacketAccess = false }; };
/** \internal
*
* \array_module
*
* \brief Template functor to compute the exponential of a scalar
*
* \sa class CwiseUnaryOp, Cwise::exp()
*/
template<typename Scalar> struct ei_scalar_exp_op EIGEN_EMPTY_STRUCT {
inline const Scalar operator() (const Scalar& a) const { return ei_exp(a); }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_exp_op<Scalar> >
{ enum { Cost = 5 * NumTraits<Scalar>::MulCost, PacketAccess = false }; };
/** \internal
*
* \array_module
*
* \brief Template functor to compute the logarithm of a scalar
*
* \sa class CwiseUnaryOp, Cwise::log()
*/
template<typename Scalar> struct ei_scalar_log_op EIGEN_EMPTY_STRUCT {
inline const Scalar operator() (const Scalar& a) const { return ei_log(a); }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_log_op<Scalar> >
{ enum { Cost = 5 * NumTraits<Scalar>::MulCost, PacketAccess = false }; };
/** \internal
*
* \array_module
*
* \brief Template functor to compute the cosine of a scalar
*
* \sa class CwiseUnaryOp, Cwise::cos()
*/
template<typename Scalar> struct ei_scalar_cos_op EIGEN_EMPTY_STRUCT {
inline const Scalar operator() (const Scalar& a) const { return ei_cos(a); }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_cos_op<Scalar> >
{ enum { Cost = 5 * NumTraits<Scalar>::MulCost, PacketAccess = false }; };
/** \internal
*
* \array_module
*
* \brief Template functor to compute the sine of a scalar
*
* \sa class CwiseUnaryOp, Cwise::sin()
*/
template<typename Scalar> struct ei_scalar_sin_op EIGEN_EMPTY_STRUCT {
inline const Scalar operator() (const Scalar& a) const { return ei_sin(a); }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_sin_op<Scalar> >
{ enum { Cost = 5 * NumTraits<Scalar>::MulCost, PacketAccess = false }; };
/** \internal
*
* \array_module
*
* \brief Template functor to raise a scalar to a power
*
* \sa class CwiseUnaryOp, Cwise::pow
*/
template<typename Scalar>
struct ei_scalar_pow_op {
// FIXME default copy constructors seems bugged with std::complex<>
inline ei_scalar_pow_op(const ei_scalar_pow_op& other) : m_exponent(other.m_exponent) { }
inline ei_scalar_pow_op(const Scalar& exponent) : m_exponent(exponent) {}
inline Scalar operator() (const Scalar& a) const { return ei_pow(a, m_exponent); }
const Scalar m_exponent;
private:
ei_scalar_pow_op& operator=(const ei_scalar_pow_op&);
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_pow_op<Scalar> >
{ enum { Cost = 5 * NumTraits<Scalar>::MulCost, PacketAccess = false }; };
/** \internal
*
* \array_module
*
* \brief Template functor to compute the inverse of a scalar
*
* \sa class CwiseUnaryOp, Cwise::inverse()
*/
template<typename Scalar>
struct ei_scalar_inverse_op {
inline Scalar operator() (const Scalar& a) const { return Scalar(1)/a; }
template<typename PacketScalar>
inline const PacketScalar packetOp(const PacketScalar& a) const
{ return ei_pdiv(ei_pset1(Scalar(1)),a); }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_inverse_op<Scalar> >
{ enum { Cost = NumTraits<Scalar>::MulCost, PacketAccess = int(ei_packet_traits<Scalar>::size)>1 }; };
/** \internal
*
* \array_module
*
* \brief Template functor to compute the square of a scalar
*
* \sa class CwiseUnaryOp, Cwise::square()
*/
template<typename Scalar>
struct ei_scalar_square_op {
inline Scalar operator() (const Scalar& a) const { return a*a; }
template<typename PacketScalar>
inline const PacketScalar packetOp(const PacketScalar& a) const
{ return ei_pmul(a,a); }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_square_op<Scalar> >
{ enum { Cost = NumTraits<Scalar>::MulCost, PacketAccess = int(ei_packet_traits<Scalar>::size)>1 }; };
/** \internal
*
* \array_module
*
* \brief Template functor to compute the cube of a scalar
*
* \sa class CwiseUnaryOp, Cwise::cube()
*/
template<typename Scalar>
struct ei_scalar_cube_op {
inline Scalar operator() (const Scalar& a) const { return a*a*a; }
template<typename PacketScalar>
inline const PacketScalar packetOp(const PacketScalar& a) const
{ return ei_pmul(a,ei_pmul(a,a)); }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_cube_op<Scalar> >
{ enum { Cost = 2*NumTraits<Scalar>::MulCost, PacketAccess = int(ei_packet_traits<Scalar>::size)>1 }; };
// default ei_functor_traits for STL functors:
template<typename T>
struct ei_functor_traits<std::multiplies<T> >
{ enum { Cost = NumTraits<T>::MulCost, PacketAccess = false }; };
template<typename T>
struct ei_functor_traits<std::divides<T> >
{ enum { Cost = NumTraits<T>::MulCost, PacketAccess = false }; };
template<typename T>
struct ei_functor_traits<std::plus<T> >
{ enum { Cost = NumTraits<T>::AddCost, PacketAccess = false }; };
template<typename T>
struct ei_functor_traits<std::minus<T> >
{ enum { Cost = NumTraits<T>::AddCost, PacketAccess = false }; };
template<typename T>
struct ei_functor_traits<std::negate<T> >
{ enum { Cost = NumTraits<T>::AddCost, PacketAccess = false }; };
template<typename T>
struct ei_functor_traits<std::logical_or<T> >
{ enum { Cost = 1, PacketAccess = false }; };
template<typename T>
struct ei_functor_traits<std::logical_and<T> >
{ enum { Cost = 1, PacketAccess = false }; };
template<typename T>
struct ei_functor_traits<std::logical_not<T> >
{ enum { Cost = 1, PacketAccess = false }; };
template<typename T>
struct ei_functor_traits<std::greater<T> >
{ enum { Cost = 1, PacketAccess = false }; };
template<typename T>
struct ei_functor_traits<std::less<T> >
{ enum { Cost = 1, PacketAccess = false }; };
template<typename T>
struct ei_functor_traits<std::greater_equal<T> >
{ enum { Cost = 1, PacketAccess = false }; };
template<typename T>
struct ei_functor_traits<std::less_equal<T> >
{ enum { Cost = 1, PacketAccess = false }; };
template<typename T>
struct ei_functor_traits<std::equal_to<T> >
{ enum { Cost = 1, PacketAccess = false }; };
template<typename T>
struct ei_functor_traits<std::not_equal_to<T> >
{ enum { Cost = 1, PacketAccess = false }; };
template<typename T>
struct ei_functor_traits<std::binder2nd<T> >
{ enum { Cost = ei_functor_traits<T>::Cost, PacketAccess = false }; };
template<typename T>
struct ei_functor_traits<std::binder1st<T> >
{ enum { Cost = ei_functor_traits<T>::Cost, PacketAccess = false }; };
template<typename T>
struct ei_functor_traits<std::unary_negate<T> >
{ enum { Cost = 1 + ei_functor_traits<T>::Cost, PacketAccess = false }; };
template<typename T>
struct ei_functor_traits<std::binary_negate<T> >
{ enum { Cost = 1 + ei_functor_traits<T>::Cost, PacketAccess = false }; };
#ifdef EIGEN_STDEXT_SUPPORT
template<typename T0,typename T1>
struct ei_functor_traits<std::project1st<T0,T1> >
{ enum { Cost = 0, PacketAccess = false }; };
template<typename T0,typename T1>
struct ei_functor_traits<std::project2nd<T0,T1> >
{ enum { Cost = 0, PacketAccess = false }; };
template<typename T0,typename T1>
struct ei_functor_traits<std::select2nd<std::pair<T0,T1> > >
{ enum { Cost = 0, PacketAccess = false }; };
template<typename T0,typename T1>
struct ei_functor_traits<std::select1st<std::pair<T0,T1> > >
{ enum { Cost = 0, PacketAccess = false }; };
template<typename T0,typename T1>
struct ei_functor_traits<std::unary_compose<T0,T1> >
{ enum { Cost = ei_functor_traits<T0>::Cost + ei_functor_traits<T1>::Cost, PacketAccess = false }; };
template<typename T0,typename T1,typename T2>
struct ei_functor_traits<std::binary_compose<T0,T1,T2> >
{ enum { Cost = ei_functor_traits<T0>::Cost + ei_functor_traits<T1>::Cost + ei_functor_traits<T2>::Cost, PacketAccess = false }; };
#endif // EIGEN_STDEXT_SUPPORT
#endif // EIGEN_ARRAY_FUNCTORS_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_ARRAY_NORMS_H
#define EIGEN_ARRAY_NORMS_H
template<typename Derived, int p>
struct ei_lpNorm_selector
{
typedef typename NumTraits<typename ei_traits<Derived>::Scalar>::Real RealScalar;
inline static RealScalar run(const MatrixBase<Derived>& m)
{
return ei_pow(m.cwise().abs().cwise().pow(p).sum(), RealScalar(1)/p);
}
};
template<typename Derived>
struct ei_lpNorm_selector<Derived, 1>
{
inline static typename NumTraits<typename ei_traits<Derived>::Scalar>::Real run(const MatrixBase<Derived>& m)
{
return m.cwise().abs().sum();
}
};
template<typename Derived>
struct ei_lpNorm_selector<Derived, 2>
{
inline static typename NumTraits<typename ei_traits<Derived>::Scalar>::Real run(const MatrixBase<Derived>& m)
{
return m.norm();
}
};
template<typename Derived>
struct ei_lpNorm_selector<Derived, Infinity>
{
inline static typename NumTraits<typename ei_traits<Derived>::Scalar>::Real run(const MatrixBase<Derived>& m)
{
return m.cwise().abs().maxCoeff();
}
};
/** \array_module
*
* \returns the \f$ \ell^p \f$ norm of *this, that is, returns the p-th root of the sum of the p-th powers of the absolute values
* of the coefficients of *this. If \a p is the special value \a Eigen::Infinity, this function returns the \f$ \ell^p\infty \f$
* norm, that is the maximum of the absolute values of the coefficients of *this.
*
* \sa norm()
*/
template<typename Derived>
template<int p>
inline typename NumTraits<typename ei_traits<Derived>::Scalar>::Real MatrixBase<Derived>::lpNorm() const
{
return ei_lpNorm_selector<Derived, p>::run(*this);
}
#endif // EIGEN_ARRAY_NORMS_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_PARTIAL_REDUX_H
#define EIGEN_PARTIAL_REDUX_H
/** \array_module \ingroup Array
*
* \class PartialReduxExpr
*
* \brief Generic expression of a partially reduxed matrix
*
* \param MatrixType the type of the matrix we are applying the redux operation
* \param MemberOp type of the member functor
* \param Direction indicates the direction of the redux (Vertical or Horizontal)
*
* This class represents an expression of a partial redux operator of a matrix.
* It is the return type of PartialRedux functions,
* and most of the time this is the only way it is used.
*
* \sa class PartialRedux
*/
template< typename MatrixType, typename MemberOp, int Direction>
class PartialReduxExpr;
template<typename MatrixType, typename MemberOp, int Direction>
struct ei_traits<PartialReduxExpr<MatrixType, MemberOp, Direction> >
{
typedef typename MemberOp::result_type Scalar;
typedef typename MatrixType::Scalar InputScalar;
typedef typename ei_nested<MatrixType>::type MatrixTypeNested;
typedef typename ei_cleantype<MatrixTypeNested>::type _MatrixTypeNested;
enum {
RowsAtCompileTime = Direction==Vertical ? 1 : MatrixType::RowsAtCompileTime,
ColsAtCompileTime = Direction==Horizontal ? 1 : MatrixType::ColsAtCompileTime,
MaxRowsAtCompileTime = Direction==Vertical ? 1 : MatrixType::MaxRowsAtCompileTime,
MaxColsAtCompileTime = Direction==Horizontal ? 1 : MatrixType::MaxColsAtCompileTime,
Flags = (unsigned int)_MatrixTypeNested::Flags & HereditaryBits,
TraversalSize = Direction==Vertical ? RowsAtCompileTime : ColsAtCompileTime
};
#if EIGEN_GNUC_AT_LEAST(3,4)
typedef typename MemberOp::template Cost<InputScalar,int(TraversalSize)> CostOpType;
#else
typedef typename MemberOp::template Cost<InputScalar,TraversalSize> CostOpType;
#endif
enum {
CoeffReadCost = TraversalSize * ei_traits<_MatrixTypeNested>::CoeffReadCost + int(CostOpType::value)
};
};
template< typename MatrixType, typename MemberOp, int Direction>
class PartialReduxExpr : ei_no_assignment_operator,
public MatrixBase<PartialReduxExpr<MatrixType, MemberOp, Direction> >
{
public:
EIGEN_GENERIC_PUBLIC_INTERFACE(PartialReduxExpr)
typedef typename ei_traits<PartialReduxExpr>::MatrixTypeNested MatrixTypeNested;
typedef typename ei_traits<PartialReduxExpr>::_MatrixTypeNested _MatrixTypeNested;
PartialReduxExpr(const MatrixType& mat, const MemberOp& func = MemberOp())
: m_matrix(mat), m_functor(func) {}
int rows() const { return (Direction==Vertical ? 1 : m_matrix.rows()); }
int cols() const { return (Direction==Horizontal ? 1 : m_matrix.cols()); }
const Scalar coeff(int i, int j) const
{
if (Direction==Vertical)
return m_functor(m_matrix.col(j));
else
return m_functor(m_matrix.row(i));
}
protected:
const MatrixTypeNested m_matrix;
const MemberOp m_functor;
};
#define EIGEN_MEMBER_FUNCTOR(MEMBER,COST) \
template <typename ResultType> \
struct ei_member_##MEMBER EIGEN_EMPTY_STRUCT { \
typedef ResultType result_type; \
template<typename Scalar, int Size> struct Cost \
{ enum { value = COST }; }; \
template<typename Derived> \
inline ResultType operator()(const MatrixBase<Derived>& mat) const \
{ return mat.MEMBER(); } \
}
EIGEN_MEMBER_FUNCTOR(squaredNorm, Size * NumTraits<Scalar>::MulCost + (Size-1)*NumTraits<Scalar>::AddCost);
EIGEN_MEMBER_FUNCTOR(norm, (Size+5) * NumTraits<Scalar>::MulCost + (Size-1)*NumTraits<Scalar>::AddCost);
EIGEN_MEMBER_FUNCTOR(sum, (Size-1)*NumTraits<Scalar>::AddCost);
EIGEN_MEMBER_FUNCTOR(minCoeff, (Size-1)*NumTraits<Scalar>::AddCost);
EIGEN_MEMBER_FUNCTOR(maxCoeff, (Size-1)*NumTraits<Scalar>::AddCost);
EIGEN_MEMBER_FUNCTOR(all, (Size-1)*NumTraits<Scalar>::AddCost);
EIGEN_MEMBER_FUNCTOR(any, (Size-1)*NumTraits<Scalar>::AddCost);
EIGEN_MEMBER_FUNCTOR(count, (Size-1)*NumTraits<Scalar>::AddCost);
/** \internal */
template <typename BinaryOp, typename Scalar>
struct ei_member_redux {
typedef typename ei_result_of<
BinaryOp(Scalar)
>::type result_type;
template<typename _Scalar, int Size> struct Cost
{ enum { value = (Size-1) * ei_functor_traits<BinaryOp>::Cost }; };
ei_member_redux(const BinaryOp func) : m_functor(func) {}
template<typename Derived>
inline result_type operator()(const MatrixBase<Derived>& mat) const
{ return mat.redux(m_functor); }
const BinaryOp m_functor;
private:
ei_member_redux& operator=(const ei_member_redux&);
};
/** \array_module \ingroup Array
*
* \class PartialRedux
*
* \brief Pseudo expression providing partial reduction operations
*
* \param ExpressionType the type of the object on which to do partial reductions
* \param Direction indicates the direction of the redux (Vertical or Horizontal)
*
* This class represents a pseudo expression with partial reduction features.
* It is the return type of MatrixBase::colwise() and MatrixBase::rowwise()
* and most of the time this is the only way it is used.
*
* Example: \include MatrixBase_colwise.cpp
* Output: \verbinclude MatrixBase_colwise.out
*
* \sa MatrixBase::colwise(), MatrixBase::rowwise(), class PartialReduxExpr
*/
template<typename ExpressionType, int Direction> class PartialRedux
{
public:
typedef typename ei_traits<ExpressionType>::Scalar Scalar;
typedef typename NumTraits<Scalar>::Real RealScalar;
typedef typename ei_meta_if<ei_must_nest_by_value<ExpressionType>::ret,
ExpressionType, const ExpressionType&>::ret ExpressionTypeNested;
template<template<typename _Scalar> class Functor,
typename Scalar = typename ei_traits<ExpressionType>::Scalar> struct ReturnType
{
typedef PartialReduxExpr<ExpressionType,
Functor<Scalar>,
Direction
> Type;
};
template<typename BinaryOp> struct ReduxReturnType
{
typedef PartialReduxExpr<ExpressionType,
ei_member_redux<BinaryOp,typename ei_traits<ExpressionType>::Scalar>,
Direction
> Type;
};
typedef typename ExpressionType::PlainMatrixType CrossReturnType;
inline PartialRedux(const ExpressionType& matrix) : m_matrix(matrix) {}
/** \internal */
inline const ExpressionType& _expression() const { return m_matrix; }
template<typename BinaryOp>
const typename ReduxReturnType<BinaryOp>::Type
redux(const BinaryOp& func = BinaryOp()) const;
/** \returns a row (or column) vector expression of the smallest coefficient
* of each column (or row) of the referenced expression.
*
* Example: \include PartialRedux_minCoeff.cpp
* Output: \verbinclude PartialRedux_minCoeff.out
*
* \sa MatrixBase::minCoeff() */
const typename ReturnType<ei_member_minCoeff>::Type minCoeff() const
{ return _expression(); }
/** \returns a row (or column) vector expression of the largest coefficient
* of each column (or row) of the referenced expression.
*
* Example: \include PartialRedux_maxCoeff.cpp
* Output: \verbinclude PartialRedux_maxCoeff.out
*
* \sa MatrixBase::maxCoeff() */
const typename ReturnType<ei_member_maxCoeff>::Type maxCoeff() const
{ return _expression(); }
/** \returns a row (or column) vector expression of the squared norm
* of each column (or row) of the referenced expression.
*
* Example: \include PartialRedux_squaredNorm.cpp
* Output: \verbinclude PartialRedux_squaredNorm.out
*
* \sa MatrixBase::squaredNorm() */
const typename ReturnType<ei_member_squaredNorm,RealScalar>::Type squaredNorm() const
{ return _expression(); }
/** \returns a row (or column) vector expression of the norm
* of each column (or row) of the referenced expression.
*
* Example: \include PartialRedux_norm.cpp
* Output: \verbinclude PartialRedux_norm.out
*
* \sa MatrixBase::norm() */
const typename ReturnType<ei_member_norm,RealScalar>::Type norm() const
{ return _expression(); }
/** \returns a row (or column) vector expression of the sum
* of each column (or row) of the referenced expression.
*
* Example: \include PartialRedux_sum.cpp
* Output: \verbinclude PartialRedux_sum.out
*
* \sa MatrixBase::sum() */
const typename ReturnType<ei_member_sum>::Type sum() const
{ return _expression(); }
/** \returns a row (or column) vector expression representing
* whether \b all coefficients of each respective column (or row) are \c true.
*
* \sa MatrixBase::all() */
const typename ReturnType<ei_member_all>::Type all() const
{ return _expression(); }
/** \returns a row (or column) vector expression representing
* whether \b at \b least one coefficient of each respective column (or row) is \c true.
*
* \sa MatrixBase::any() */
const typename ReturnType<ei_member_any>::Type any() const
{ return _expression(); }
/** \returns a row (or column) vector expression representing
* the number of \c true coefficients of each respective column (or row).
*
* Example: \include PartialRedux_count.cpp
* Output: \verbinclude PartialRedux_count.out
*
* \sa MatrixBase::count() */
const PartialReduxExpr<ExpressionType, ei_member_count<int>, Direction> count() const
{ return _expression(); }
/** \returns a 3x3 matrix expression of the cross product
* of each column or row of the referenced expression with the \a other vector.
*
* \geometry_module
*
* \sa MatrixBase::cross() */
template<typename OtherDerived>
const CrossReturnType cross(const MatrixBase<OtherDerived>& other) const
{
EIGEN_STATIC_ASSERT_MATRIX_SPECIFIC_SIZE(CrossReturnType,3,3)
EIGEN_STATIC_ASSERT_VECTOR_SPECIFIC_SIZE(OtherDerived,3)
EIGEN_STATIC_ASSERT((ei_is_same_type<Scalar, typename OtherDerived::Scalar>::ret),
YOU_MIXED_DIFFERENT_NUMERIC_TYPES__YOU_NEED_TO_USE_THE_CAST_METHOD_OF_MATRIXBASE_TO_CAST_NUMERIC_TYPES_EXPLICITLY)
if(Direction==Vertical)
return (CrossReturnType()
<< _expression().col(0).cross(other),
_expression().col(1).cross(other),
_expression().col(2).cross(other)).finished();
else
return (CrossReturnType()
<< _expression().row(0).cross(other),
_expression().row(1).cross(other),
_expression().row(2).cross(other)).finished();
}
protected:
ExpressionTypeNested m_matrix;
private:
PartialRedux& operator=(const PartialRedux&);
};
/** \array_module
*
* \returns a PartialRedux wrapper of *this providing additional partial reduction operations
*
* Example: \include MatrixBase_colwise.cpp
* Output: \verbinclude MatrixBase_colwise.out
*
* \sa rowwise(), class PartialRedux
*/
template<typename Derived>
inline const PartialRedux<Derived,Vertical>
MatrixBase<Derived>::colwise() const
{
return derived();
}
/** \array_module
*
* \returns a PartialRedux wrapper of *this providing additional partial reduction operations
*
* Example: \include MatrixBase_rowwise.cpp
* Output: \verbinclude MatrixBase_rowwise.out
*
* \sa colwise(), class PartialRedux
*/
template<typename Derived>
inline const PartialRedux<Derived,Horizontal>
MatrixBase<Derived>::rowwise() const
{
return derived();
}
/** \returns a row or column vector expression of \c *this reduxed by \a func
*
* The template parameter \a BinaryOp is the type of the functor
* of the custom redux operator. Note that func must be an associative operator.
*
* \sa class PartialRedux, MatrixBase::colwise(), MatrixBase::rowwise()
*/
template<typename ExpressionType, int Direction>
template<typename BinaryOp>
const typename PartialRedux<ExpressionType,Direction>::template ReduxReturnType<BinaryOp>::Type
PartialRedux<ExpressionType,Direction>::redux(const BinaryOp& func) const
{
return typename ReduxReturnType<BinaryOp>::Type(_expression(), func);
}
#endif // EIGEN_PARTIAL_REDUX_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_RANDOM_H
#define EIGEN_RANDOM_H
template<typename Scalar> struct ei_scalar_random_op EIGEN_EMPTY_STRUCT {
inline ei_scalar_random_op(void) {}
inline const Scalar operator() (int, int) const { return ei_random<Scalar>(); }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_random_op<Scalar> >
{ enum { Cost = 5 * NumTraits<Scalar>::MulCost, PacketAccess = false, IsRepeatable = false }; };
/** \array_module
*
* \returns a random matrix (not an expression, the matrix is immediately evaluated).
*
* The parameters \a rows and \a cols are the number of rows and of columns of
* the returned matrix. Must be compatible with this MatrixBase type.
*
* This variant is meant to be used for dynamic-size matrix types. For fixed-size types,
* it is redundant to pass \a rows and \a cols as arguments, so ei_random() should be used
* instead.
*
* \addexample RandomExample \label How to create a matrix with random coefficients
*
* Example: \include MatrixBase_random_int_int.cpp
* Output: \verbinclude MatrixBase_random_int_int.out
*
* \sa MatrixBase::setRandom(), MatrixBase::Random(int), MatrixBase::Random()
*/
template<typename Derived>
inline const CwiseNullaryOp<ei_scalar_random_op<typename ei_traits<Derived>::Scalar>, Derived>
MatrixBase<Derived>::Random(int rows, int cols)
{
return NullaryExpr(rows, cols, ei_scalar_random_op<Scalar>());
}
/** \array_module
*
* \returns a random vector (not an expression, the vector is immediately evaluated).
*
* The parameter \a size is the size of the returned vector.
* Must be compatible with this MatrixBase type.
*
* \only_for_vectors
*
* This variant is meant to be used for dynamic-size vector types. For fixed-size types,
* it is redundant to pass \a size as argument, so ei_random() should be used
* instead.
*
* Example: \include MatrixBase_random_int.cpp
* Output: \verbinclude MatrixBase_random_int.out
*
* \sa MatrixBase::setRandom(), MatrixBase::Random(int,int), MatrixBase::Random()
*/
template<typename Derived>
inline const CwiseNullaryOp<ei_scalar_random_op<typename ei_traits<Derived>::Scalar>, Derived>
MatrixBase<Derived>::Random(int size)
{
return NullaryExpr(size, ei_scalar_random_op<Scalar>());
}
/** \array_module
*
* \returns a fixed-size random matrix or vector
* (not an expression, the matrix is immediately evaluated).
*
* This variant is only for fixed-size MatrixBase types. For dynamic-size types, you
* need to use the variants taking size arguments.
*
* Example: \include MatrixBase_random.cpp
* Output: \verbinclude MatrixBase_random.out
*
* \sa MatrixBase::setRandom(), MatrixBase::Random(int,int), MatrixBase::Random(int)
*/
template<typename Derived>
inline const CwiseNullaryOp<ei_scalar_random_op<typename ei_traits<Derived>::Scalar>, Derived>
MatrixBase<Derived>::Random()
{
return NullaryExpr(RowsAtCompileTime, ColsAtCompileTime, ei_scalar_random_op<Scalar>());
}
/** \array_module
*
* Sets all coefficients in this expression to random values.
*
* Example: \include MatrixBase_setRandom.cpp
* Output: \verbinclude MatrixBase_setRandom.out
*
* \sa class CwiseNullaryOp, setRandom(int), setRandom(int,int)
*/
template<typename Derived>
inline Derived& MatrixBase<Derived>::setRandom()
{
return *this = Random(rows(), cols());
}
/** Resizes to the given \a size, and sets all coefficients in this expression to random values.
*
* \only_for_vectors
*
* Example: \include Matrix_setRandom_int.cpp
* Output: \verbinclude Matrix_setRandom_int.out
*
* \sa MatrixBase::setRandom(), setRandom(int,int), class CwiseNullaryOp, MatrixBase::Random()
*/
template<typename _Scalar, int _Rows, int _Cols, int _Options, int _MaxRows, int _MaxCols>
EIGEN_STRONG_INLINE Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols>&
Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols>::setRandom(int size)
{
resize(size);
return setRandom();
}
/** Resizes to the given size, and sets all coefficients in this expression to random values.
*
* \param rows the new number of rows
* \param cols the new number of columns
*
* Example: \include Matrix_setRandom_int_int.cpp
* Output: \verbinclude Matrix_setRandom_int_int.out
*
* \sa MatrixBase::setRandom(), setRandom(int), class CwiseNullaryOp, MatrixBase::Random()
*/
template<typename _Scalar, int _Rows, int _Cols, int _Options, int _MaxRows, int _MaxCols>
EIGEN_STRONG_INLINE Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols>&
Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols>::setRandom(int rows, int cols)
{
resize(rows, cols);
return setRandom();
}
#endif // EIGEN_RANDOM_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_SELECT_H
#define EIGEN_SELECT_H
/** \array_module \ingroup Array
*
* \class Select
*
* \brief Expression of a coefficient wise version of the C++ ternary operator ?:
*
* \param ConditionMatrixType the type of the \em condition expression which must be a boolean matrix
* \param ThenMatrixType the type of the \em then expression
* \param ElseMatrixType the type of the \em else expression
*
* This class represents an expression of a coefficient wise version of the C++ ternary operator ?:.
* It is the return type of MatrixBase::select() and most of the time this is the only way it is used.
*
* \sa MatrixBase::select(const MatrixBase<ThenDerived>&, const MatrixBase<ElseDerived>&) const
*/
template<typename ConditionMatrixType, typename ThenMatrixType, typename ElseMatrixType>
struct ei_traits<Select<ConditionMatrixType, ThenMatrixType, ElseMatrixType> >
{
typedef typename ei_traits<ThenMatrixType>::Scalar Scalar;
typedef typename ConditionMatrixType::Nested ConditionMatrixNested;
typedef typename ThenMatrixType::Nested ThenMatrixNested;
typedef typename ElseMatrixType::Nested ElseMatrixNested;
enum {
RowsAtCompileTime = ConditionMatrixType::RowsAtCompileTime,
ColsAtCompileTime = ConditionMatrixType::ColsAtCompileTime,
MaxRowsAtCompileTime = ConditionMatrixType::MaxRowsAtCompileTime,
MaxColsAtCompileTime = ConditionMatrixType::MaxColsAtCompileTime,
Flags = (unsigned int)ThenMatrixType::Flags & ElseMatrixType::Flags & HereditaryBits,
CoeffReadCost = ei_traits<typename ei_cleantype<ConditionMatrixNested>::type>::CoeffReadCost
+ EIGEN_ENUM_MAX(ei_traits<typename ei_cleantype<ThenMatrixNested>::type>::CoeffReadCost,
ei_traits<typename ei_cleantype<ElseMatrixNested>::type>::CoeffReadCost)
};
};
template<typename ConditionMatrixType, typename ThenMatrixType, typename ElseMatrixType>
class Select : ei_no_assignment_operator,
public MatrixBase<Select<ConditionMatrixType, ThenMatrixType, ElseMatrixType> >
{
public:
EIGEN_GENERIC_PUBLIC_INTERFACE(Select)
Select(const ConditionMatrixType& conditionMatrix,
const ThenMatrixType& thenMatrix,
const ElseMatrixType& elseMatrix)
: m_condition(conditionMatrix), m_then(thenMatrix), m_else(elseMatrix)
{
ei_assert(m_condition.rows() == m_then.rows() && m_condition.rows() == m_else.rows());
ei_assert(m_condition.cols() == m_then.cols() && m_condition.cols() == m_else.cols());
}
int rows() const { return m_condition.rows(); }
int cols() const { return m_condition.cols(); }
const Scalar coeff(int i, int j) const
{
if (m_condition.coeff(i,j))
return m_then.coeff(i,j);
else
return m_else.coeff(i,j);
}
const Scalar coeff(int i) const
{
if (m_condition.coeff(i))
return m_then.coeff(i);
else
return m_else.coeff(i);
}
protected:
const typename ConditionMatrixType::Nested m_condition;
const typename ThenMatrixType::Nested m_then;
const typename ElseMatrixType::Nested m_else;
};
/** \array_module
*
* \returns a matrix where each coefficient (i,j) is equal to \a thenMatrix(i,j)
* if \c *this(i,j), and \a elseMatrix(i,j) otherwise.
*
* Example: \include MatrixBase_select.cpp
* Output: \verbinclude MatrixBase_select.out
*
* \sa class Select
*/
template<typename Derived>
template<typename ThenDerived,typename ElseDerived>
inline const Select<Derived,ThenDerived,ElseDerived>
MatrixBase<Derived>::select(const MatrixBase<ThenDerived>& thenMatrix,
const MatrixBase<ElseDerived>& elseMatrix) const
{
return Select<Derived,ThenDerived,ElseDerived>(derived(), thenMatrix.derived(), elseMatrix.derived());
}
/** \array_module
*
* Version of MatrixBase::select(const MatrixBase&, const MatrixBase&) with
* the \em else expression being a scalar value.
*
* \sa MatrixBase::select(const MatrixBase<ThenDerived>&, const MatrixBase<ElseDerived>&) const, class Select
*/
template<typename Derived>
template<typename ThenDerived>
inline const Select<Derived,ThenDerived, NestByValue<typename ThenDerived::ConstantReturnType> >
MatrixBase<Derived>::select(const MatrixBase<ThenDerived>& thenMatrix,
typename ThenDerived::Scalar elseScalar) const
{
return Select<Derived,ThenDerived,NestByValue<typename ThenDerived::ConstantReturnType> >(
derived(), thenMatrix.derived(), ThenDerived::Constant(rows(),cols(),elseScalar));
}
/** \array_module
*
* Version of MatrixBase::select(const MatrixBase&, const MatrixBase&) with
* the \em then expression being a scalar value.
*
* \sa MatrixBase::select(const MatrixBase<ThenDerived>&, const MatrixBase<ElseDerived>&) const, class Select
*/
template<typename Derived>
template<typename ElseDerived>
inline const Select<Derived, NestByValue<typename ElseDerived::ConstantReturnType>, ElseDerived >
MatrixBase<Derived>::select(typename ElseDerived::Scalar thenScalar,
const MatrixBase<ElseDerived>& elseMatrix) const
{
return Select<Derived,NestByValue<typename ElseDerived::ConstantReturnType>,ElseDerived>(
derived(), ElseDerived::Constant(rows(),cols(),thenScalar), elseMatrix.derived());
}
#endif // EIGEN_SELECT_H

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ADD_SUBDIRECTORY(Core)
ADD_SUBDIRECTORY(LU)
ADD_SUBDIRECTORY(QR)
ADD_SUBDIRECTORY(SVD)
ADD_SUBDIRECTORY(Cholesky)
ADD_SUBDIRECTORY(Array)
ADD_SUBDIRECTORY(Geometry)
ADD_SUBDIRECTORY(LeastSquares)
ADD_SUBDIRECTORY(Sparse)

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FILE(GLOB Eigen_Cholesky_SRCS "*.h")
INSTALL(FILES
${Eigen_Cholesky_SRCS}
DESTINATION ${INCLUDE_INSTALL_DIR}/Eigen/src/Cholesky
)

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_EXTERN_INSTANTIATIONS
#define EIGEN_EXTERN_INSTANTIATIONS
#endif
#include "../../Core"
#undef EIGEN_EXTERN_INSTANTIATIONS
#include "../../Cholesky"
namespace Eigen {
EIGEN_CHOLESKY_MODULE_INSTANTIATE();
}

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_LDLT_H
#define EIGEN_LDLT_H
/** \ingroup cholesky_Module
*
* \class LDLT
*
* \brief Robust Cholesky decomposition of a matrix and associated features
*
* \param MatrixType the type of the matrix of which we are computing the LDL^T Cholesky decomposition
*
* This class performs a Cholesky decomposition without square root of a symmetric, positive definite
* matrix A such that A = L D L^* = U^* D U, where L is lower triangular with a unit diagonal
* and D is a diagonal matrix.
*
* Compared to a standard Cholesky decomposition, avoiding the square roots allows for faster and more
* stable computation.
*
* Note that during the decomposition, only the upper triangular part of A is considered. Therefore,
* the strict lower part does not have to store correct values.
*
* \sa MatrixBase::ldlt(), class LLT
*/
template<typename MatrixType> class LDLT
{
public:
typedef typename MatrixType::Scalar Scalar;
typedef typename NumTraits<typename MatrixType::Scalar>::Real RealScalar;
typedef Matrix<Scalar, MatrixType::ColsAtCompileTime, 1> VectorType;
LDLT(const MatrixType& matrix)
: m_matrix(matrix.rows(), matrix.cols())
{
compute(matrix);
}
/** \returns the lower triangular matrix L */
inline Part<MatrixType, UnitLowerTriangular> matrixL(void) const { return m_matrix; }
/** \returns the coefficients of the diagonal matrix D */
inline DiagonalCoeffs<MatrixType> vectorD(void) const { return m_matrix.diagonal(); }
/** \returns true if the matrix is positive definite */
inline bool isPositiveDefinite(void) const { return m_isPositiveDefinite; }
template<typename RhsDerived, typename ResultType>
bool solve(const MatrixBase<RhsDerived> &b, ResultType *result) const;
template<typename Derived>
bool solveInPlace(MatrixBase<Derived> &bAndX) const;
void compute(const MatrixType& matrix);
protected:
/** \internal
* Used to compute and store the cholesky decomposition A = L D L^* = U^* D U.
* The strict upper part is used during the decomposition, the strict lower
* part correspond to the coefficients of L (its diagonal is equal to 1 and
* is not stored), and the diagonal entries correspond to D.
*/
MatrixType m_matrix;
bool m_isPositiveDefinite;
};
/** Compute / recompute the LLT decomposition A = L D L^* = U^* D U of \a matrix
*/
template<typename MatrixType>
void LDLT<MatrixType>::compute(const MatrixType& a)
{
assert(a.rows()==a.cols());
const int size = a.rows();
m_matrix.resize(size, size);
m_isPositiveDefinite = true; // always true. This decomposition is not rank-revealing anyway.
if (size<=1)
{
m_matrix = a;
return;
}
// Let's preallocate a temporay vector to evaluate the matrix-vector product into it.
// Unlike the standard LLT decomposition, here we cannot evaluate it to the destination
// matrix because it a sub-row which is not compatible suitable for efficient packet evaluation.
// (at least if we assume the matrix is col-major)
Matrix<Scalar,MatrixType::RowsAtCompileTime,1> _temporary(size);
// Note that, in this algorithm the rows of the strict upper part of m_matrix is used to store
// column vector, thus the strange .conjugate() and .transpose()...
m_matrix.row(0) = a.row(0).conjugate();
m_matrix.col(0).end(size-1) = m_matrix.row(0).end(size-1) / m_matrix.coeff(0,0);
for (int j = 1; j < size; ++j)
{
RealScalar tmp = ei_real(a.coeff(j,j) - (m_matrix.row(j).start(j) * m_matrix.col(j).start(j).conjugate()).coeff(0,0));
m_matrix.coeffRef(j,j) = tmp;
int endSize = size-j-1;
if (endSize>0)
{
_temporary.end(endSize) = ( m_matrix.block(j+1,0, endSize, j)
* m_matrix.col(j).start(j).conjugate() ).lazy();
m_matrix.row(j).end(endSize) = a.row(j).end(endSize).conjugate()
- _temporary.end(endSize).transpose();
if(tmp != RealScalar(0))
m_matrix.col(j).end(endSize) = m_matrix.row(j).end(endSize) / tmp;
}
}
}
/** Computes the solution x of \f$ A x = b \f$ using the current decomposition of A.
* The result is stored in \a result
*
* \returns true in case of success, false otherwise.
*
* In other words, it computes \f$ b = A^{-1} b \f$ with
* \f$ {L^{*}}^{-1} D^{-1} L^{-1} b \f$ from right to left.
*
* \sa LDLT::solveInPlace(), MatrixBase::ldlt()
*/
template<typename MatrixType>
template<typename RhsDerived, typename ResultType>
bool LDLT<MatrixType>
::solve(const MatrixBase<RhsDerived> &b, ResultType *result) const
{
const int size = m_matrix.rows();
ei_assert(size==b.rows() && "LLT::solve(): invalid number of rows of the right hand side matrix b");
*result = b;
return solveInPlace(*result);
}
/** This is the \em in-place version of solve().
*
* \param bAndX represents both the right-hand side matrix b and result x.
*
* This version avoids a copy when the right hand side matrix b is not
* needed anymore.
*
* \sa LDLT::solve(), MatrixBase::ldlt()
*/
template<typename MatrixType>
template<typename Derived>
bool LDLT<MatrixType>::solveInPlace(MatrixBase<Derived> &bAndX) const
{
const int size = m_matrix.rows();
ei_assert(size==bAndX.rows());
if (!m_isPositiveDefinite)
return false;
matrixL().solveTriangularInPlace(bAndX);
bAndX = (m_matrix.cwise().inverse().template part<Diagonal>() * bAndX).lazy();
m_matrix.adjoint().template part<UnitUpperTriangular>().solveTriangularInPlace(bAndX);
return true;
}
/** \cholesky_module
* \returns the Cholesky decomposition without square root of \c *this
*/
template<typename Derived>
inline const LDLT<typename MatrixBase<Derived>::PlainMatrixType>
MatrixBase<Derived>::ldlt() const
{
return LDLT<PlainMatrixType>(derived());
}
#endif // EIGEN_LDLT_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_LLT_H
#define EIGEN_LLT_H
/** \ingroup cholesky_Module
*
* \class LLT
*
* \brief Standard Cholesky decomposition (LL^T) of a matrix and associated features
*
* \param MatrixType the type of the matrix of which we are computing the LL^T Cholesky decomposition
*
* This class performs a LL^T Cholesky decomposition of a symmetric, positive definite
* matrix A such that A = LL^* = U^*U, where L is lower triangular.
*
* While the Cholesky decomposition is particularly useful to solve selfadjoint problems like D^*D x = b,
* for that purpose, we recommend the Cholesky decomposition without square root which is more stable
* and even faster. Nevertheless, this standard Cholesky decomposition remains useful in many other
* situations like generalised eigen problems with hermitian matrices.
*
* Remember that Cholesky decompositions are not rank-revealing. This LLT decomposition is only stable on positive definite matrices,
* use LDLT instead for the semidefinite case. Also, do not use a Cholesky decomposition to determine whether a system of equations
* has a solution.
*
* \sa MatrixBase::llt(), class LDLT
*/
/* HEY THIS DOX IS DISABLED BECAUSE THERE's A BUG EITHER HERE OR IN LDLT ABOUT THAT (OR BOTH)
* Note that during the decomposition, only the upper triangular part of A is considered. Therefore,
* the strict lower part does not have to store correct values.
*/
template<typename MatrixType> class LLT
{
private:
typedef typename MatrixType::Scalar Scalar;
typedef typename NumTraits<typename MatrixType::Scalar>::Real RealScalar;
typedef Matrix<Scalar, MatrixType::ColsAtCompileTime, 1> VectorType;
enum {
PacketSize = ei_packet_traits<Scalar>::size,
AlignmentMask = int(PacketSize)-1
};
public:
/**
* \brief Default Constructor.
*
* The default constructor is useful in cases in which the user intends to
* perform decompositions via LLT::compute(const MatrixType&).
*/
LLT() : m_matrix(), m_isInitialized(false) {}
LLT(const MatrixType& matrix)
: m_matrix(matrix.rows(), matrix.cols()),
m_isInitialized(false)
{
compute(matrix);
}
/** \returns the lower triangular matrix L */
inline Part<MatrixType, LowerTriangular> matrixL(void) const
{
ei_assert(m_isInitialized && "LLT is not initialized.");
return m_matrix;
}
/** \deprecated */
inline bool isPositiveDefinite(void) const { return m_isInitialized && m_isPositiveDefinite; }
template<typename RhsDerived, typename ResultType>
bool solve(const MatrixBase<RhsDerived> &b, ResultType *result) const;
template<typename Derived>
bool solveInPlace(MatrixBase<Derived> &bAndX) const;
void compute(const MatrixType& matrix);
protected:
/** \internal
* Used to compute and store L
* The strict upper part is not used and even not initialized.
*/
MatrixType m_matrix;
bool m_isInitialized;
bool m_isPositiveDefinite;
};
/** Computes / recomputes the Cholesky decomposition A = LL^* = U^*U of \a matrix
*/
template<typename MatrixType>
void LLT<MatrixType>::compute(const MatrixType& a)
{
assert(a.rows()==a.cols());
m_isPositiveDefinite = true;
const int size = a.rows();
m_matrix.resize(size, size);
// The biggest overall is the point of reference to which further diagonals
// are compared; if any diagonal is negligible compared
// to the largest overall, the algorithm bails. This cutoff is suggested
// in "Analysis of the Cholesky Decomposition of a Semi-definite Matrix" by
// Nicholas J. Higham. Also see "Accuracy and Stability of Numerical
// Algorithms" page 217, also by Higham.
const RealScalar cutoff = machine_epsilon<Scalar>() * size * a.diagonal().cwise().abs().maxCoeff();
RealScalar x;
x = ei_real(a.coeff(0,0));
m_matrix.coeffRef(0,0) = ei_sqrt(x);
if(size==1)
{
m_isInitialized = true;
return;
}
m_matrix.col(0).end(size-1) = a.row(0).end(size-1).adjoint() / ei_real(m_matrix.coeff(0,0));
for (int j = 1; j < size; ++j)
{
x = ei_real(a.coeff(j,j)) - m_matrix.row(j).start(j).squaredNorm();
if (x < cutoff)
{
m_isPositiveDefinite = false;
continue;
}
m_matrix.coeffRef(j,j) = x = ei_sqrt(x);
int endSize = size-j-1;
if (endSize>0) {
// Note that when all matrix columns have good alignment, then the following
// product is guaranteed to be optimal with respect to alignment.
m_matrix.col(j).end(endSize) =
(m_matrix.block(j+1, 0, endSize, j) * m_matrix.row(j).start(j).adjoint()).lazy();
// FIXME could use a.col instead of a.row
m_matrix.col(j).end(endSize) = (a.row(j).end(endSize).adjoint()
- m_matrix.col(j).end(endSize) ) / x;
}
}
m_isInitialized = true;
}
/** Computes the solution x of \f$ A x = b \f$ using the current decomposition of A.
* The result is stored in \a result
*
* \returns true always! If you need to check for existence of solutions, use another decomposition like LU, QR, or SVD.
*
* In other words, it computes \f$ b = A^{-1} b \f$ with
* \f$ {L^{*}}^{-1} L^{-1} b \f$ from right to left.
*
* Example: \include LLT_solve.cpp
* Output: \verbinclude LLT_solve.out
*
* \sa LLT::solveInPlace(), MatrixBase::llt()
*/
template<typename MatrixType>
template<typename RhsDerived, typename ResultType>
bool LLT<MatrixType>::solve(const MatrixBase<RhsDerived> &b, ResultType *result) const
{
ei_assert(m_isInitialized && "LLT is not initialized.");
const int size = m_matrix.rows();
ei_assert(size==b.rows() && "LLT::solve(): invalid number of rows of the right hand side matrix b");
return solveInPlace((*result) = b);
}
/** This is the \em in-place version of solve().
*
* \param bAndX represents both the right-hand side matrix b and result x.
*
* \returns true always! If you need to check for existence of solutions, use another decomposition like LU, QR, or SVD.
*
* This version avoids a copy when the right hand side matrix b is not
* needed anymore.
*
* \sa LLT::solve(), MatrixBase::llt()
*/
template<typename MatrixType>
template<typename Derived>
bool LLT<MatrixType>::solveInPlace(MatrixBase<Derived> &bAndX) const
{
ei_assert(m_isInitialized && "LLT is not initialized.");
const int size = m_matrix.rows();
ei_assert(size==bAndX.rows());
matrixL().solveTriangularInPlace(bAndX);
m_matrix.adjoint().template part<UpperTriangular>().solveTriangularInPlace(bAndX);
return true;
}
/** \cholesky_module
* \returns the LLT decomposition of \c *this
*/
template<typename Derived>
inline const LLT<typename MatrixBase<Derived>::PlainMatrixType>
MatrixBase<Derived>::llt() const
{
return LLT<PlainMatrixType>(derived());
}
#endif // EIGEN_LLT_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2007 Michael Olbrich <michael.olbrich@gmx.net>
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_ASSIGN_H
#define EIGEN_ASSIGN_H
/***************************************************************************
* Part 1 : the logic deciding a strategy for vectorization and unrolling
***************************************************************************/
template <typename Derived, typename OtherDerived>
struct ei_assign_traits
{
public:
enum {
DstIsAligned = Derived::Flags & AlignedBit,
SrcIsAligned = OtherDerived::Flags & AlignedBit,
SrcAlignment = DstIsAligned && SrcIsAligned ? Aligned : Unaligned
};
private:
enum {
InnerSize = int(Derived::Flags)&RowMajorBit
? Derived::ColsAtCompileTime
: Derived::RowsAtCompileTime,
InnerMaxSize = int(Derived::Flags)&RowMajorBit
? Derived::MaxColsAtCompileTime
: Derived::MaxRowsAtCompileTime,
PacketSize = ei_packet_traits<typename Derived::Scalar>::size
};
enum {
MightVectorize = (int(Derived::Flags) & int(OtherDerived::Flags) & ActualPacketAccessBit)
&& ((int(Derived::Flags)&RowMajorBit)==(int(OtherDerived::Flags)&RowMajorBit)),
MayInnerVectorize = MightVectorize && int(InnerSize)!=Dynamic && int(InnerSize)%int(PacketSize)==0
&& int(DstIsAligned) && int(SrcIsAligned),
MayLinearVectorize = MightVectorize && (int(Derived::Flags) & int(OtherDerived::Flags) & LinearAccessBit),
MaySliceVectorize = MightVectorize && int(InnerMaxSize)>=3*PacketSize /* slice vectorization can be slow, so we only
want it if the slices are big, which is indicated by InnerMaxSize rather than InnerSize, think of the case
of a dynamic block in a fixed-size matrix */
};
public:
enum {
Vectorization = int(MayInnerVectorize) ? int(InnerVectorization)
: int(MayLinearVectorize) ? int(LinearVectorization)
: int(MaySliceVectorize) ? int(SliceVectorization)
: int(NoVectorization)
};
private:
enum {
UnrollingLimit = EIGEN_UNROLLING_LIMIT * (int(Vectorization) == int(NoVectorization) ? 1 : int(PacketSize)),
MayUnrollCompletely = int(Derived::SizeAtCompileTime) * int(OtherDerived::CoeffReadCost) <= int(UnrollingLimit),
MayUnrollInner = int(InnerSize * OtherDerived::CoeffReadCost) <= int(UnrollingLimit)
};
public:
enum {
Unrolling = (int(Vectorization) == int(InnerVectorization) || int(Vectorization) == int(NoVectorization))
? (
int(MayUnrollCompletely) ? int(CompleteUnrolling)
: int(MayUnrollInner) ? int(InnerUnrolling)
: int(NoUnrolling)
)
: int(Vectorization) == int(LinearVectorization)
? ( int(MayUnrollCompletely) && int(DstIsAligned) ? int(CompleteUnrolling) : int(NoUnrolling) )
: int(NoUnrolling)
};
#ifdef EIGEN_DEBUG_ASSIGN
#define EIGEN_DEBUG_VAR(x) std::cerr << #x << " = " << x << std::endl;
static void debug()
{
EIGEN_DEBUG_VAR(DstIsAligned)
EIGEN_DEBUG_VAR(SrcIsAligned)
EIGEN_DEBUG_VAR(SrcAlignment)
EIGEN_DEBUG_VAR(InnerSize)
EIGEN_DEBUG_VAR(InnerMaxSize)
EIGEN_DEBUG_VAR(PacketSize)
EIGEN_DEBUG_VAR(MightVectorize)
EIGEN_DEBUG_VAR(MayInnerVectorize)
EIGEN_DEBUG_VAR(MayLinearVectorize)
EIGEN_DEBUG_VAR(MaySliceVectorize)
EIGEN_DEBUG_VAR(Vectorization)
EIGEN_DEBUG_VAR(UnrollingLimit)
EIGEN_DEBUG_VAR(MayUnrollCompletely)
EIGEN_DEBUG_VAR(MayUnrollInner)
EIGEN_DEBUG_VAR(Unrolling)
}
#endif
};
/***************************************************************************
* Part 2 : meta-unrollers
***************************************************************************/
/***********************
*** No vectorization ***
***********************/
template<typename Derived1, typename Derived2, int Index, int Stop>
struct ei_assign_novec_CompleteUnrolling
{
enum {
row = int(Derived1::Flags)&RowMajorBit
? Index / int(Derived1::ColsAtCompileTime)
: Index % Derived1::RowsAtCompileTime,
col = int(Derived1::Flags)&RowMajorBit
? Index % int(Derived1::ColsAtCompileTime)
: Index / Derived1::RowsAtCompileTime
};
EIGEN_STRONG_INLINE static void run(Derived1 &dst, const Derived2 &src)
{
dst.copyCoeff(row, col, src);
ei_assign_novec_CompleteUnrolling<Derived1, Derived2, Index+1, Stop>::run(dst, src);
}
};
template<typename Derived1, typename Derived2, int Stop>
struct ei_assign_novec_CompleteUnrolling<Derived1, Derived2, Stop, Stop>
{
EIGEN_STRONG_INLINE static void run(Derived1 &, const Derived2 &) {}
};
template<typename Derived1, typename Derived2, int Index, int Stop>
struct ei_assign_novec_InnerUnrolling
{
EIGEN_STRONG_INLINE static void run(Derived1 &dst, const Derived2 &src, int row_or_col)
{
const bool rowMajor = int(Derived1::Flags)&RowMajorBit;
const int row = rowMajor ? row_or_col : Index;
const int col = rowMajor ? Index : row_or_col;
dst.copyCoeff(row, col, src);
ei_assign_novec_InnerUnrolling<Derived1, Derived2, Index+1, Stop>::run(dst, src, row_or_col);
}
};
template<typename Derived1, typename Derived2, int Stop>
struct ei_assign_novec_InnerUnrolling<Derived1, Derived2, Stop, Stop>
{
EIGEN_STRONG_INLINE static void run(Derived1 &, const Derived2 &, int) {}
};
/**************************
*** Inner vectorization ***
**************************/
template<typename Derived1, typename Derived2, int Index, int Stop>
struct ei_assign_innervec_CompleteUnrolling
{
enum {
row = int(Derived1::Flags)&RowMajorBit
? Index / int(Derived1::ColsAtCompileTime)
: Index % Derived1::RowsAtCompileTime,
col = int(Derived1::Flags)&RowMajorBit
? Index % int(Derived1::ColsAtCompileTime)
: Index / Derived1::RowsAtCompileTime,
SrcAlignment = ei_assign_traits<Derived1,Derived2>::SrcAlignment
};
EIGEN_STRONG_INLINE static void run(Derived1 &dst, const Derived2 &src)
{
dst.template copyPacket<Derived2, Aligned, SrcAlignment>(row, col, src);
ei_assign_innervec_CompleteUnrolling<Derived1, Derived2,
Index+ei_packet_traits<typename Derived1::Scalar>::size, Stop>::run(dst, src);
}
};
template<typename Derived1, typename Derived2, int Stop>
struct ei_assign_innervec_CompleteUnrolling<Derived1, Derived2, Stop, Stop>
{
EIGEN_STRONG_INLINE static void run(Derived1 &, const Derived2 &) {}
};
template<typename Derived1, typename Derived2, int Index, int Stop>
struct ei_assign_innervec_InnerUnrolling
{
EIGEN_STRONG_INLINE static void run(Derived1 &dst, const Derived2 &src, int row_or_col)
{
const int row = int(Derived1::Flags)&RowMajorBit ? row_or_col : Index;
const int col = int(Derived1::Flags)&RowMajorBit ? Index : row_or_col;
dst.template copyPacket<Derived2, Aligned, Aligned>(row, col, src);
ei_assign_innervec_InnerUnrolling<Derived1, Derived2,
Index+ei_packet_traits<typename Derived1::Scalar>::size, Stop>::run(dst, src, row_or_col);
}
};
template<typename Derived1, typename Derived2, int Stop>
struct ei_assign_innervec_InnerUnrolling<Derived1, Derived2, Stop, Stop>
{
EIGEN_STRONG_INLINE static void run(Derived1 &, const Derived2 &, int) {}
};
/***************************************************************************
* Part 3 : implementation of all cases
***************************************************************************/
template<typename Derived1, typename Derived2,
int Vectorization = ei_assign_traits<Derived1, Derived2>::Vectorization,
int Unrolling = ei_assign_traits<Derived1, Derived2>::Unrolling>
struct ei_assign_impl;
/***********************
*** No vectorization ***
***********************/
template<typename Derived1, typename Derived2>
struct ei_assign_impl<Derived1, Derived2, NoVectorization, NoUnrolling>
{
inline static void run(Derived1 &dst, const Derived2 &src)
{
const int innerSize = dst.innerSize();
const int outerSize = dst.outerSize();
for(int j = 0; j < outerSize; ++j)
for(int i = 0; i < innerSize; ++i)
{
if(int(Derived1::Flags)&RowMajorBit)
dst.copyCoeff(j, i, src);
else
dst.copyCoeff(i, j, src);
}
}
};
template<typename Derived1, typename Derived2>
struct ei_assign_impl<Derived1, Derived2, NoVectorization, CompleteUnrolling>
{
EIGEN_STRONG_INLINE static void run(Derived1 &dst, const Derived2 &src)
{
ei_assign_novec_CompleteUnrolling<Derived1, Derived2, 0, Derived1::SizeAtCompileTime>
::run(dst, src);
}
};
template<typename Derived1, typename Derived2>
struct ei_assign_impl<Derived1, Derived2, NoVectorization, InnerUnrolling>
{
EIGEN_STRONG_INLINE static void run(Derived1 &dst, const Derived2 &src)
{
const bool rowMajor = int(Derived1::Flags)&RowMajorBit;
const int innerSize = rowMajor ? Derived1::ColsAtCompileTime : Derived1::RowsAtCompileTime;
const int outerSize = dst.outerSize();
for(int j = 0; j < outerSize; ++j)
ei_assign_novec_InnerUnrolling<Derived1, Derived2, 0, innerSize>
::run(dst, src, j);
}
};
/**************************
*** Inner vectorization ***
**************************/
template<typename Derived1, typename Derived2>
struct ei_assign_impl<Derived1, Derived2, InnerVectorization, NoUnrolling>
{
inline static void run(Derived1 &dst, const Derived2 &src)
{
const int innerSize = dst.innerSize();
const int outerSize = dst.outerSize();
const int packetSize = ei_packet_traits<typename Derived1::Scalar>::size;
for(int j = 0; j < outerSize; ++j)
for(int i = 0; i < innerSize; i+=packetSize)
{
if(int(Derived1::Flags)&RowMajorBit)
dst.template copyPacket<Derived2, Aligned, Aligned>(j, i, src);
else
dst.template copyPacket<Derived2, Aligned, Aligned>(i, j, src);
}
}
};
template<typename Derived1, typename Derived2>
struct ei_assign_impl<Derived1, Derived2, InnerVectorization, CompleteUnrolling>
{
EIGEN_STRONG_INLINE static void run(Derived1 &dst, const Derived2 &src)
{
ei_assign_innervec_CompleteUnrolling<Derived1, Derived2, 0, Derived1::SizeAtCompileTime>
::run(dst, src);
}
};
template<typename Derived1, typename Derived2>
struct ei_assign_impl<Derived1, Derived2, InnerVectorization, InnerUnrolling>
{
EIGEN_STRONG_INLINE static void run(Derived1 &dst, const Derived2 &src)
{
const bool rowMajor = int(Derived1::Flags)&RowMajorBit;
const int innerSize = rowMajor ? Derived1::ColsAtCompileTime : Derived1::RowsAtCompileTime;
const int outerSize = dst.outerSize();
for(int j = 0; j < outerSize; ++j)
ei_assign_innervec_InnerUnrolling<Derived1, Derived2, 0, innerSize>
::run(dst, src, j);
}
};
/***************************
*** Linear vectorization ***
***************************/
template<typename Derived1, typename Derived2>
struct ei_assign_impl<Derived1, Derived2, LinearVectorization, NoUnrolling>
{
inline static void run(Derived1 &dst, const Derived2 &src)
{
const int size = dst.size();
const int packetSize = ei_packet_traits<typename Derived1::Scalar>::size;
const int alignedStart = ei_assign_traits<Derived1,Derived2>::DstIsAligned ? 0
: ei_alignmentOffset(&dst.coeffRef(0), size);
const int alignedEnd = alignedStart + ((size-alignedStart)/packetSize)*packetSize;
for(int index = 0; index < alignedStart; ++index)
dst.copyCoeff(index, src);
for(int index = alignedStart; index < alignedEnd; index += packetSize)
{
dst.template copyPacket<Derived2, Aligned, ei_assign_traits<Derived1,Derived2>::SrcAlignment>(index, src);
}
for(int index = alignedEnd; index < size; ++index)
dst.copyCoeff(index, src);
}
};
template<typename Derived1, typename Derived2>
struct ei_assign_impl<Derived1, Derived2, LinearVectorization, CompleteUnrolling>
{
EIGEN_STRONG_INLINE static void run(Derived1 &dst, const Derived2 &src)
{
const int size = Derived1::SizeAtCompileTime;
const int packetSize = ei_packet_traits<typename Derived1::Scalar>::size;
const int alignedSize = (size/packetSize)*packetSize;
ei_assign_innervec_CompleteUnrolling<Derived1, Derived2, 0, alignedSize>::run(dst, src);
ei_assign_novec_CompleteUnrolling<Derived1, Derived2, alignedSize, size>::run(dst, src);
}
};
/**************************
*** Slice vectorization ***
***************************/
template<typename Derived1, typename Derived2>
struct ei_assign_impl<Derived1, Derived2, SliceVectorization, NoUnrolling>
{
inline static void run(Derived1 &dst, const Derived2 &src)
{
const int packetSize = ei_packet_traits<typename Derived1::Scalar>::size;
const int packetAlignedMask = packetSize - 1;
const int innerSize = dst.innerSize();
const int outerSize = dst.outerSize();
const int alignedStep = (packetSize - dst.stride() % packetSize) & packetAlignedMask;
int alignedStart = ei_assign_traits<Derived1,Derived2>::DstIsAligned ? 0
: ei_alignmentOffset(&dst.coeffRef(0,0), innerSize);
for(int i = 0; i < outerSize; ++i)
{
const int alignedEnd = alignedStart + ((innerSize-alignedStart) & ~packetAlignedMask);
// do the non-vectorizable part of the assignment
for (int index = 0; index<alignedStart ; ++index)
{
if(Derived1::Flags&RowMajorBit)
dst.copyCoeff(i, index, src);
else
dst.copyCoeff(index, i, src);
}
// do the vectorizable part of the assignment
for (int index = alignedStart; index<alignedEnd; index+=packetSize)
{
if(Derived1::Flags&RowMajorBit)
dst.template copyPacket<Derived2, Aligned, Unaligned>(i, index, src);
else
dst.template copyPacket<Derived2, Aligned, Unaligned>(index, i, src);
}
// do the non-vectorizable part of the assignment
for (int index = alignedEnd; index<innerSize ; ++index)
{
if(Derived1::Flags&RowMajorBit)
dst.copyCoeff(i, index, src);
else
dst.copyCoeff(index, i, src);
}
alignedStart = std::min<int>((alignedStart+alignedStep)%packetSize, innerSize);
}
}
};
/***************************************************************************
* Part 4 : implementation of MatrixBase methods
***************************************************************************/
template<typename Derived>
template<typename OtherDerived>
EIGEN_STRONG_INLINE Derived& MatrixBase<Derived>
::lazyAssign(const MatrixBase<OtherDerived>& other)
{
#ifdef EIGEN_DEBUG_ASSIGN
ei_assign_traits<Derived, OtherDerived>::debug();
#endif
EIGEN_STATIC_ASSERT_SAME_MATRIX_SIZE(Derived,OtherDerived)
EIGEN_STATIC_ASSERT((ei_is_same_type<typename Derived::Scalar, typename OtherDerived::Scalar>::ret),
YOU_MIXED_DIFFERENT_NUMERIC_TYPES__YOU_NEED_TO_USE_THE_CAST_METHOD_OF_MATRIXBASE_TO_CAST_NUMERIC_TYPES_EXPLICITLY)
ei_assert(rows() == other.rows() && cols() == other.cols());
ei_assign_impl<Derived, OtherDerived>::run(derived(),other.derived());
return derived();
}
template<typename Derived, typename OtherDerived,
bool EvalBeforeAssigning = (int(OtherDerived::Flags) & EvalBeforeAssigningBit) != 0,
bool NeedToTranspose = Derived::IsVectorAtCompileTime
&& OtherDerived::IsVectorAtCompileTime
&& int(Derived::RowsAtCompileTime) == int(OtherDerived::ColsAtCompileTime)
&& int(Derived::ColsAtCompileTime) == int(OtherDerived::RowsAtCompileTime)
&& int(Derived::SizeAtCompileTime) != 1>
struct ei_assign_selector;
template<typename Derived, typename OtherDerived>
struct ei_assign_selector<Derived,OtherDerived,false,false> {
EIGEN_STRONG_INLINE static Derived& run(Derived& dst, const OtherDerived& other) { return dst.lazyAssign(other.derived()); }
};
template<typename Derived, typename OtherDerived>
struct ei_assign_selector<Derived,OtherDerived,true,false> {
EIGEN_STRONG_INLINE static Derived& run(Derived& dst, const OtherDerived& other) { return dst.lazyAssign(other.eval()); }
};
template<typename Derived, typename OtherDerived>
struct ei_assign_selector<Derived,OtherDerived,false,true> {
EIGEN_STRONG_INLINE static Derived& run(Derived& dst, const OtherDerived& other) { return dst.lazyAssign(other.transpose()); }
};
template<typename Derived, typename OtherDerived>
struct ei_assign_selector<Derived,OtherDerived,true,true> {
EIGEN_STRONG_INLINE static Derived& run(Derived& dst, const OtherDerived& other) { return dst.lazyAssign(other.transpose().eval()); }
};
template<typename Derived>
template<typename OtherDerived>
EIGEN_STRONG_INLINE Derived& MatrixBase<Derived>
::operator=(const MatrixBase<OtherDerived>& other)
{
return ei_assign_selector<Derived,OtherDerived>::run(derived(), other.derived());
}
#endif // EIGEN_ASSIGN_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_BLOCK_H
#define EIGEN_BLOCK_H
/** \class Block
*
* \brief Expression of a fixed-size or dynamic-size block
*
* \param MatrixType the type of the object in which we are taking a block
* \param BlockRows the number of rows of the block we are taking at compile time (optional)
* \param BlockCols the number of columns of the block we are taking at compile time (optional)
* \param _PacketAccess allows to enforce aligned loads and stores if set to ForceAligned.
* The default is AsRequested. This parameter is internaly used by Eigen
* in expressions such as \code mat.block() += other; \endcode and most of
* the time this is the only way it is used.
* \param _DirectAccessStatus \internal used for partial specialization
*
* This class represents an expression of either a fixed-size or dynamic-size block. It is the return
* type of MatrixBase::block(int,int,int,int) and MatrixBase::block<int,int>(int,int) and
* most of the time this is the only way it is used.
*
* However, if you want to directly maniputate block expressions,
* for instance if you want to write a function returning such an expression, you
* will need to use this class.
*
* Here is an example illustrating the dynamic case:
* \include class_Block.cpp
* Output: \verbinclude class_Block.out
*
* \note Even though this expression has dynamic size, in the case where \a MatrixType
* has fixed size, this expression inherits a fixed maximal size which means that evaluating
* it does not cause a dynamic memory allocation.
*
* Here is an example illustrating the fixed-size case:
* \include class_FixedBlock.cpp
* Output: \verbinclude class_FixedBlock.out
*
* \sa MatrixBase::block(int,int,int,int), MatrixBase::block(int,int), class VectorBlock
*/
template<typename MatrixType, int BlockRows, int BlockCols, int _PacketAccess, int _DirectAccessStatus>
struct ei_traits<Block<MatrixType, BlockRows, BlockCols, _PacketAccess, _DirectAccessStatus> >
{
typedef typename ei_traits<MatrixType>::Scalar Scalar;
typedef typename ei_nested<MatrixType>::type MatrixTypeNested;
typedef typename ei_unref<MatrixTypeNested>::type _MatrixTypeNested;
enum{
RowsAtCompileTime = ei_traits<MatrixType>::RowsAtCompileTime == 1 ? 1 : BlockRows,
ColsAtCompileTime = ei_traits<MatrixType>::ColsAtCompileTime == 1 ? 1 : BlockCols,
MaxRowsAtCompileTime = RowsAtCompileTime == 1 ? 1
: (BlockRows==Dynamic ? int(ei_traits<MatrixType>::MaxRowsAtCompileTime) : BlockRows),
MaxColsAtCompileTime = ColsAtCompileTime == 1 ? 1
: (BlockCols==Dynamic ? int(ei_traits<MatrixType>::MaxColsAtCompileTime) : BlockCols),
RowMajor = int(ei_traits<MatrixType>::Flags)&RowMajorBit,
InnerSize = RowMajor ? int(ColsAtCompileTime) : int(RowsAtCompileTime),
InnerMaxSize = RowMajor ? int(MaxColsAtCompileTime) : int(MaxRowsAtCompileTime),
MaskPacketAccessBit = (InnerMaxSize == Dynamic || (InnerSize >= ei_packet_traits<Scalar>::size))
? PacketAccessBit : 0,
FlagsLinearAccessBit = (RowsAtCompileTime == 1 || ColsAtCompileTime == 1) ? LinearAccessBit : 0,
Flags = (ei_traits<MatrixType>::Flags & (HereditaryBits | MaskPacketAccessBit | DirectAccessBit)) | FlagsLinearAccessBit,
CoeffReadCost = ei_traits<MatrixType>::CoeffReadCost,
PacketAccess = _PacketAccess
};
typedef typename ei_meta_if<int(PacketAccess)==ForceAligned,
Block<MatrixType, BlockRows, BlockCols, _PacketAccess, _DirectAccessStatus>&,
Block<MatrixType, BlockRows, BlockCols, ForceAligned, _DirectAccessStatus> >::ret AlignedDerivedType;
};
template<typename MatrixType, int BlockRows, int BlockCols, int PacketAccess, int _DirectAccessStatus> class Block
: public MatrixBase<Block<MatrixType, BlockRows, BlockCols, PacketAccess, _DirectAccessStatus> >
{
public:
EIGEN_GENERIC_PUBLIC_INTERFACE(Block)
class InnerIterator;
/** Column or Row constructor
*/
inline Block(const MatrixType& matrix, int i)
: m_matrix(matrix),
// It is a row if and only if BlockRows==1 and BlockCols==MatrixType::ColsAtCompileTime,
// and it is a column if and only if BlockRows==MatrixType::RowsAtCompileTime and BlockCols==1,
// all other cases are invalid.
// The case a 1x1 matrix seems ambiguous, but the result is the same anyway.
m_startRow( (BlockRows==1) && (BlockCols==MatrixType::ColsAtCompileTime) ? i : 0),
m_startCol( (BlockRows==MatrixType::RowsAtCompileTime) && (BlockCols==1) ? i : 0),
m_blockRows(matrix.rows()), // if it is a row, then m_blockRows has a fixed-size of 1, so no pb to try to overwrite it
m_blockCols(matrix.cols()) // same for m_blockCols
{
ei_assert( (i>=0) && (
((BlockRows==1) && (BlockCols==MatrixType::ColsAtCompileTime) && i<matrix.rows())
||((BlockRows==MatrixType::RowsAtCompileTime) && (BlockCols==1) && i<matrix.cols())));
}
/** Fixed-size constructor
*/
inline Block(const MatrixType& matrix, int startRow, int startCol)
: m_matrix(matrix), m_startRow(startRow), m_startCol(startCol),
m_blockRows(matrix.rows()), m_blockCols(matrix.cols())
{
EIGEN_STATIC_ASSERT(RowsAtCompileTime!=Dynamic && ColsAtCompileTime!=Dynamic,THIS_METHOD_IS_ONLY_FOR_FIXED_SIZE)
ei_assert(startRow >= 0 && BlockRows >= 1 && startRow + BlockRows <= matrix.rows()
&& startCol >= 0 && BlockCols >= 1 && startCol + BlockCols <= matrix.cols());
}
/** Dynamic-size constructor
*/
inline Block(const MatrixType& matrix,
int startRow, int startCol,
int blockRows, int blockCols)
: m_matrix(matrix), m_startRow(startRow), m_startCol(startCol),
m_blockRows(blockRows), m_blockCols(blockCols)
{
ei_assert((RowsAtCompileTime==Dynamic || RowsAtCompileTime==blockRows)
&& (ColsAtCompileTime==Dynamic || ColsAtCompileTime==blockCols));
ei_assert(startRow >= 0 && blockRows >= 1 && startRow + blockRows <= matrix.rows()
&& startCol >= 0 && blockCols >= 1 && startCol + blockCols <= matrix.cols());
}
EIGEN_INHERIT_ASSIGNMENT_OPERATORS(Block)
inline int rows() const { return m_blockRows.value(); }
inline int cols() const { return m_blockCols.value(); }
inline Scalar& coeffRef(int row, int col)
{
return m_matrix.const_cast_derived()
.coeffRef(row + m_startRow.value(), col + m_startCol.value());
}
inline const Scalar coeff(int row, int col) const
{
return m_matrix.coeff(row + m_startRow.value(), col + m_startCol.value());
}
inline Scalar& coeffRef(int index)
{
return m_matrix.const_cast_derived()
.coeffRef(m_startRow.value() + (RowsAtCompileTime == 1 ? 0 : index),
m_startCol.value() + (RowsAtCompileTime == 1 ? index : 0));
}
inline const Scalar coeff(int index) const
{
return m_matrix
.coeff(m_startRow.value() + (RowsAtCompileTime == 1 ? 0 : index),
m_startCol.value() + (RowsAtCompileTime == 1 ? index : 0));
}
template<int LoadMode>
inline PacketScalar packet(int row, int col) const
{
return m_matrix.template packet<Unaligned>
(row + m_startRow.value(), col + m_startCol.value());
}
template<int LoadMode>
inline void writePacket(int row, int col, const PacketScalar& x)
{
m_matrix.const_cast_derived().template writePacket<Unaligned>
(row + m_startRow.value(), col + m_startCol.value(), x);
}
template<int LoadMode>
inline PacketScalar packet(int index) const
{
return m_matrix.template packet<Unaligned>
(m_startRow.value() + (RowsAtCompileTime == 1 ? 0 : index),
m_startCol.value() + (RowsAtCompileTime == 1 ? index : 0));
}
template<int LoadMode>
inline void writePacket(int index, const PacketScalar& x)
{
m_matrix.const_cast_derived().template writePacket<Unaligned>
(m_startRow.value() + (RowsAtCompileTime == 1 ? 0 : index),
m_startCol.value() + (RowsAtCompileTime == 1 ? index : 0), x);
}
protected:
const typename MatrixType::Nested m_matrix;
const ei_int_if_dynamic<MatrixType::RowsAtCompileTime == 1 ? 0 : Dynamic> m_startRow;
const ei_int_if_dynamic<MatrixType::ColsAtCompileTime == 1 ? 0 : Dynamic> m_startCol;
const ei_int_if_dynamic<RowsAtCompileTime> m_blockRows;
const ei_int_if_dynamic<ColsAtCompileTime> m_blockCols;
};
/** \internal */
template<typename MatrixType, int BlockRows, int BlockCols, int PacketAccess>
class Block<MatrixType,BlockRows,BlockCols,PacketAccess,HasDirectAccess>
: public MapBase<Block<MatrixType, BlockRows, BlockCols,PacketAccess,HasDirectAccess> >
{
public:
_EIGEN_GENERIC_PUBLIC_INTERFACE(Block, MapBase<Block>)
class InnerIterator;
typedef typename ei_traits<Block>::AlignedDerivedType AlignedDerivedType;
friend class Block<MatrixType,BlockRows,BlockCols,PacketAccess==int(AsRequested)?ForceAligned:AsRequested,HasDirectAccess>;
EIGEN_INHERIT_ASSIGNMENT_OPERATORS(Block)
AlignedDerivedType _convertToForceAligned()
{
return Block<MatrixType,BlockRows,BlockCols,ForceAligned,HasDirectAccess>
(m_matrix, Base::m_data, Base::m_rows.value(), Base::m_cols.value());
}
/** Column or Row constructor
*/
inline Block(const MatrixType& matrix, int i)
: Base(&matrix.const_cast_derived().coeffRef(
(BlockRows==1) && (BlockCols==MatrixType::ColsAtCompileTime) ? i : 0,
(BlockRows==MatrixType::RowsAtCompileTime) && (BlockCols==1) ? i : 0),
BlockRows==1 ? 1 : matrix.rows(),
BlockCols==1 ? 1 : matrix.cols()),
m_matrix(matrix)
{
ei_assert( (i>=0) && (
((BlockRows==1) && (BlockCols==MatrixType::ColsAtCompileTime) && i<matrix.rows())
||((BlockRows==MatrixType::RowsAtCompileTime) && (BlockCols==1) && i<matrix.cols())));
}
/** Fixed-size constructor
*/
inline Block(const MatrixType& matrix, int startRow, int startCol)
: Base(&matrix.const_cast_derived().coeffRef(startRow,startCol)), m_matrix(matrix)
{
ei_assert(startRow >= 0 && BlockRows >= 1 && startRow + BlockRows <= matrix.rows()
&& startCol >= 0 && BlockCols >= 1 && startCol + BlockCols <= matrix.cols());
}
/** Dynamic-size constructor
*/
inline Block(const MatrixType& matrix,
int startRow, int startCol,
int blockRows, int blockCols)
: Base(&matrix.const_cast_derived().coeffRef(startRow,startCol), blockRows, blockCols),
m_matrix(matrix)
{
ei_assert((RowsAtCompileTime==Dynamic || RowsAtCompileTime==blockRows)
&& (ColsAtCompileTime==Dynamic || ColsAtCompileTime==blockCols));
ei_assert(startRow >= 0 && blockRows >= 1 && startRow + blockRows <= matrix.rows()
&& startCol >= 0 && blockCols >= 1 && startCol + blockCols <= matrix.cols());
}
inline int stride(void) const { return m_matrix.stride(); }
protected:
/** \internal used by allowAligned() */
inline Block(const MatrixType& matrix, const Scalar* data, int blockRows, int blockCols)
: Base(data, blockRows, blockCols), m_matrix(matrix)
{}
const typename MatrixType::Nested m_matrix;
};
/** \returns a dynamic-size expression of a block in *this.
*
* \param startRow the first row in the block
* \param startCol the first column in the block
* \param blockRows the number of rows in the block
* \param blockCols the number of columns in the block
*
* \addexample BlockIntIntIntInt \label How to reference a sub-matrix (dynamic-size)
*
* Example: \include MatrixBase_block_int_int_int_int.cpp
* Output: \verbinclude MatrixBase_block_int_int_int_int.out
*
* \note Even though the returned expression has dynamic size, in the case
* when it is applied to a fixed-size matrix, it inherits a fixed maximal size,
* which means that evaluating it does not cause a dynamic memory allocation.
*
* \sa class Block, block(int,int)
*/
template<typename Derived>
inline typename BlockReturnType<Derived>::Type MatrixBase<Derived>
::block(int startRow, int startCol, int blockRows, int blockCols)
{
return typename BlockReturnType<Derived>::Type(derived(), startRow, startCol, blockRows, blockCols);
}
/** This is the const version of block(int,int,int,int). */
template<typename Derived>
inline const typename BlockReturnType<Derived>::Type MatrixBase<Derived>
::block(int startRow, int startCol, int blockRows, int blockCols) const
{
return typename BlockReturnType<Derived>::Type(derived(), startRow, startCol, blockRows, blockCols);
}
/** \returns a dynamic-size expression of a segment (i.e. a vector block) in *this.
*
* \only_for_vectors
*
* \addexample SegmentIntInt \label How to reference a sub-vector (dynamic size)
*
* \param start the first coefficient in the segment
* \param size the number of coefficients in the segment
*
* Example: \include MatrixBase_segment_int_int.cpp
* Output: \verbinclude MatrixBase_segment_int_int.out
*
* \note Even though the returned expression has dynamic size, in the case
* when it is applied to a fixed-size vector, it inherits a fixed maximal size,
* which means that evaluating it does not cause a dynamic memory allocation.
*
* \sa class Block, segment(int)
*/
template<typename Derived>
inline typename BlockReturnType<Derived>::SubVectorType MatrixBase<Derived>
::segment(int start, int size)
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Derived)
return typename BlockReturnType<Derived>::SubVectorType(derived(), RowsAtCompileTime == 1 ? 0 : start,
ColsAtCompileTime == 1 ? 0 : start,
RowsAtCompileTime == 1 ? 1 : size,
ColsAtCompileTime == 1 ? 1 : size);
}
/** This is the const version of segment(int,int).*/
template<typename Derived>
inline const typename BlockReturnType<Derived>::SubVectorType
MatrixBase<Derived>::segment(int start, int size) const
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Derived)
return typename BlockReturnType<Derived>::SubVectorType(derived(), RowsAtCompileTime == 1 ? 0 : start,
ColsAtCompileTime == 1 ? 0 : start,
RowsAtCompileTime == 1 ? 1 : size,
ColsAtCompileTime == 1 ? 1 : size);
}
/** \returns a dynamic-size expression of the first coefficients of *this.
*
* \only_for_vectors
*
* \param size the number of coefficients in the block
*
* \addexample BlockInt \label How to reference a sub-vector (fixed-size)
*
* Example: \include MatrixBase_start_int.cpp
* Output: \verbinclude MatrixBase_start_int.out
*
* \note Even though the returned expression has dynamic size, in the case
* when it is applied to a fixed-size vector, it inherits a fixed maximal size,
* which means that evaluating it does not cause a dynamic memory allocation.
*
* \sa class Block, block(int,int)
*/
template<typename Derived>
inline typename BlockReturnType<Derived,Dynamic>::SubVectorType
MatrixBase<Derived>::start(int size)
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Derived)
return Block<Derived,
RowsAtCompileTime == 1 ? 1 : Dynamic,
ColsAtCompileTime == 1 ? 1 : Dynamic>
(derived(), 0, 0,
RowsAtCompileTime == 1 ? 1 : size,
ColsAtCompileTime == 1 ? 1 : size);
}
/** This is the const version of start(int).*/
template<typename Derived>
inline const typename BlockReturnType<Derived,Dynamic>::SubVectorType
MatrixBase<Derived>::start(int size) const
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Derived)
return Block<Derived,
RowsAtCompileTime == 1 ? 1 : Dynamic,
ColsAtCompileTime == 1 ? 1 : Dynamic>
(derived(), 0, 0,
RowsAtCompileTime == 1 ? 1 : size,
ColsAtCompileTime == 1 ? 1 : size);
}
/** \returns a dynamic-size expression of the last coefficients of *this.
*
* \only_for_vectors
*
* \param size the number of coefficients in the block
*
* \addexample BlockEnd \label How to reference the end of a vector (fixed-size)
*
* Example: \include MatrixBase_end_int.cpp
* Output: \verbinclude MatrixBase_end_int.out
*
* \note Even though the returned expression has dynamic size, in the case
* when it is applied to a fixed-size vector, it inherits a fixed maximal size,
* which means that evaluating it does not cause a dynamic memory allocation.
*
* \sa class Block, block(int,int)
*/
template<typename Derived>
inline typename BlockReturnType<Derived,Dynamic>::SubVectorType
MatrixBase<Derived>::end(int size)
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Derived)
return Block<Derived,
RowsAtCompileTime == 1 ? 1 : Dynamic,
ColsAtCompileTime == 1 ? 1 : Dynamic>
(derived(),
RowsAtCompileTime == 1 ? 0 : rows() - size,
ColsAtCompileTime == 1 ? 0 : cols() - size,
RowsAtCompileTime == 1 ? 1 : size,
ColsAtCompileTime == 1 ? 1 : size);
}
/** This is the const version of end(int).*/
template<typename Derived>
inline const typename BlockReturnType<Derived,Dynamic>::SubVectorType
MatrixBase<Derived>::end(int size) const
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Derived)
return Block<Derived,
RowsAtCompileTime == 1 ? 1 : Dynamic,
ColsAtCompileTime == 1 ? 1 : Dynamic>
(derived(),
RowsAtCompileTime == 1 ? 0 : rows() - size,
ColsAtCompileTime == 1 ? 0 : cols() - size,
RowsAtCompileTime == 1 ? 1 : size,
ColsAtCompileTime == 1 ? 1 : size);
}
/** \returns a fixed-size expression of a segment (i.e. a vector block) in \c *this
*
* \only_for_vectors
*
* The template parameter \a Size is the number of coefficients in the block
*
* \param start the index of the first element of the sub-vector
*
* Example: \include MatrixBase_template_int_segment.cpp
* Output: \verbinclude MatrixBase_template_int_segment.out
*
* \sa class Block
*/
template<typename Derived>
template<int Size>
inline typename BlockReturnType<Derived,Size>::SubVectorType
MatrixBase<Derived>::segment(int start)
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Derived)
return Block<Derived, (RowsAtCompileTime == 1 ? 1 : Size),
(ColsAtCompileTime == 1 ? 1 : Size)>
(derived(), RowsAtCompileTime == 1 ? 0 : start,
ColsAtCompileTime == 1 ? 0 : start);
}
/** This is the const version of segment<int>(int).*/
template<typename Derived>
template<int Size>
inline const typename BlockReturnType<Derived,Size>::SubVectorType
MatrixBase<Derived>::segment(int start) const
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Derived)
return Block<Derived, (RowsAtCompileTime == 1 ? 1 : Size),
(ColsAtCompileTime == 1 ? 1 : Size)>
(derived(), RowsAtCompileTime == 1 ? 0 : start,
ColsAtCompileTime == 1 ? 0 : start);
}
/** \returns a fixed-size expression of the first coefficients of *this.
*
* \only_for_vectors
*
* The template parameter \a Size is the number of coefficients in the block
*
* \addexample BlockStart \label How to reference the start of a vector (fixed-size)
*
* Example: \include MatrixBase_template_int_start.cpp
* Output: \verbinclude MatrixBase_template_int_start.out
*
* \sa class Block
*/
template<typename Derived>
template<int Size>
inline typename BlockReturnType<Derived,Size>::SubVectorType
MatrixBase<Derived>::start()
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Derived)
return Block<Derived, (RowsAtCompileTime == 1 ? 1 : Size),
(ColsAtCompileTime == 1 ? 1 : Size)>(derived(), 0, 0);
}
/** This is the const version of start<int>().*/
template<typename Derived>
template<int Size>
inline const typename BlockReturnType<Derived,Size>::SubVectorType
MatrixBase<Derived>::start() const
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Derived)
return Block<Derived, (RowsAtCompileTime == 1 ? 1 : Size),
(ColsAtCompileTime == 1 ? 1 : Size)>(derived(), 0, 0);
}
/** \returns a fixed-size expression of the last coefficients of *this.
*
* \only_for_vectors
*
* The template parameter \a Size is the number of coefficients in the block
*
* Example: \include MatrixBase_template_int_end.cpp
* Output: \verbinclude MatrixBase_template_int_end.out
*
* \sa class Block
*/
template<typename Derived>
template<int Size>
inline typename BlockReturnType<Derived,Size>::SubVectorType
MatrixBase<Derived>::end()
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Derived)
return Block<Derived, RowsAtCompileTime == 1 ? 1 : Size,
ColsAtCompileTime == 1 ? 1 : Size>
(derived(),
RowsAtCompileTime == 1 ? 0 : rows() - Size,
ColsAtCompileTime == 1 ? 0 : cols() - Size);
}
/** This is the const version of end<int>.*/
template<typename Derived>
template<int Size>
inline const typename BlockReturnType<Derived,Size>::SubVectorType
MatrixBase<Derived>::end() const
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Derived)
return Block<Derived, RowsAtCompileTime == 1 ? 1 : Size,
ColsAtCompileTime == 1 ? 1 : Size>
(derived(),
RowsAtCompileTime == 1 ? 0 : rows() - Size,
ColsAtCompileTime == 1 ? 0 : cols() - Size);
}
/** \returns a dynamic-size expression of a corner of *this.
*
* \param type the type of corner. Can be \a Eigen::TopLeft, \a Eigen::TopRight,
* \a Eigen::BottomLeft, \a Eigen::BottomRight.
* \param cRows the number of rows in the corner
* \param cCols the number of columns in the corner
*
* \addexample BlockCornerDynamicSize \label How to reference a sub-corner of a matrix
*
* Example: \include MatrixBase_corner_enum_int_int.cpp
* Output: \verbinclude MatrixBase_corner_enum_int_int.out
*
* \note Even though the returned expression has dynamic size, in the case
* when it is applied to a fixed-size matrix, it inherits a fixed maximal size,
* which means that evaluating it does not cause a dynamic memory allocation.
*
* \sa class Block, block(int,int,int,int)
*/
template<typename Derived>
inline typename BlockReturnType<Derived>::Type MatrixBase<Derived>
::corner(CornerType type, int cRows, int cCols)
{
switch(type)
{
default:
ei_assert(false && "Bad corner type.");
case TopLeft:
return typename BlockReturnType<Derived>::Type(derived(), 0, 0, cRows, cCols);
case TopRight:
return typename BlockReturnType<Derived>::Type(derived(), 0, cols() - cCols, cRows, cCols);
case BottomLeft:
return typename BlockReturnType<Derived>::Type(derived(), rows() - cRows, 0, cRows, cCols);
case BottomRight:
return typename BlockReturnType<Derived>::Type(derived(), rows() - cRows, cols() - cCols, cRows, cCols);
}
}
/** This is the const version of corner(CornerType, int, int).*/
template<typename Derived>
inline const typename BlockReturnType<Derived>::Type
MatrixBase<Derived>::corner(CornerType type, int cRows, int cCols) const
{
switch(type)
{
default:
ei_assert(false && "Bad corner type.");
case TopLeft:
return typename BlockReturnType<Derived>::Type(derived(), 0, 0, cRows, cCols);
case TopRight:
return typename BlockReturnType<Derived>::Type(derived(), 0, cols() - cCols, cRows, cCols);
case BottomLeft:
return typename BlockReturnType<Derived>::Type(derived(), rows() - cRows, 0, cRows, cCols);
case BottomRight:
return typename BlockReturnType<Derived>::Type(derived(), rows() - cRows, cols() - cCols, cRows, cCols);
}
}
/** \returns a fixed-size expression of a corner of *this.
*
* \param type the type of corner. Can be \a Eigen::TopLeft, \a Eigen::TopRight,
* \a Eigen::BottomLeft, \a Eigen::BottomRight.
*
* The template parameters CRows and CCols arethe number of rows and columns in the corner.
*
* Example: \include MatrixBase_template_int_int_corner_enum.cpp
* Output: \verbinclude MatrixBase_template_int_int_corner_enum.out
*
* \sa class Block, block(int,int,int,int)
*/
template<typename Derived>
template<int CRows, int CCols>
inline typename BlockReturnType<Derived, CRows, CCols>::Type
MatrixBase<Derived>::corner(CornerType type)
{
switch(type)
{
default:
ei_assert(false && "Bad corner type.");
case TopLeft:
return Block<Derived, CRows, CCols>(derived(), 0, 0);
case TopRight:
return Block<Derived, CRows, CCols>(derived(), 0, cols() - CCols);
case BottomLeft:
return Block<Derived, CRows, CCols>(derived(), rows() - CRows, 0);
case BottomRight:
return Block<Derived, CRows, CCols>(derived(), rows() - CRows, cols() - CCols);
}
}
/** This is the const version of corner<int, int>(CornerType).*/
template<typename Derived>
template<int CRows, int CCols>
inline const typename BlockReturnType<Derived, CRows, CCols>::Type
MatrixBase<Derived>::corner(CornerType type) const
{
switch(type)
{
default:
ei_assert(false && "Bad corner type.");
case TopLeft:
return Block<Derived, CRows, CCols>(derived(), 0, 0);
case TopRight:
return Block<Derived, CRows, CCols>(derived(), 0, cols() - CCols);
case BottomLeft:
return Block<Derived, CRows, CCols>(derived(), rows() - CRows, 0);
case BottomRight:
return Block<Derived, CRows, CCols>(derived(), rows() - CRows, cols() - CCols);
}
}
/** \returns a fixed-size expression of a block in *this.
*
* The template parameters \a BlockRows and \a BlockCols are the number of
* rows and columns in the block.
*
* \param startRow the first row in the block
* \param startCol the first column in the block
*
* \addexample BlockSubMatrixFixedSize \label How to reference a sub-matrix (fixed-size)
*
* Example: \include MatrixBase_block_int_int.cpp
* Output: \verbinclude MatrixBase_block_int_int.out
*
* \note since block is a templated member, the keyword template has to be used
* if the matrix type is also a template parameter: \code m.template block<3,3>(1,1); \endcode
*
* \sa class Block, block(int,int,int,int)
*/
template<typename Derived>
template<int BlockRows, int BlockCols>
inline typename BlockReturnType<Derived, BlockRows, BlockCols>::Type
MatrixBase<Derived>::block(int startRow, int startCol)
{
return Block<Derived, BlockRows, BlockCols>(derived(), startRow, startCol);
}
/** This is the const version of block<>(int, int). */
template<typename Derived>
template<int BlockRows, int BlockCols>
inline const typename BlockReturnType<Derived, BlockRows, BlockCols>::Type
MatrixBase<Derived>::block(int startRow, int startCol) const
{
return Block<Derived, BlockRows, BlockCols>(derived(), startRow, startCol);
}
/** \returns an expression of the \a i-th column of *this. Note that the numbering starts at 0.
*
* \addexample BlockColumn \label How to reference a single column of a matrix
*
* Example: \include MatrixBase_col.cpp
* Output: \verbinclude MatrixBase_col.out
*
* \sa row(), class Block */
template<typename Derived>
inline typename MatrixBase<Derived>::ColXpr
MatrixBase<Derived>::col(int i)
{
return ColXpr(derived(), i);
}
/** This is the const version of col(). */
template<typename Derived>
inline const typename MatrixBase<Derived>::ColXpr
MatrixBase<Derived>::col(int i) const
{
return ColXpr(derived(), i);
}
/** \returns an expression of the \a i-th row of *this. Note that the numbering starts at 0.
*
* \addexample BlockRow \label How to reference a single row of a matrix
*
* Example: \include MatrixBase_row.cpp
* Output: \verbinclude MatrixBase_row.out
*
* \sa col(), class Block */
template<typename Derived>
inline typename MatrixBase<Derived>::RowXpr
MatrixBase<Derived>::row(int i)
{
return RowXpr(derived(), i);
}
/** This is the const version of row(). */
template<typename Derived>
inline const typename MatrixBase<Derived>::RowXpr
MatrixBase<Derived>::row(int i) const
{
return RowXpr(derived(), i);
}
#endif // EIGEN_BLOCK_H

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@@ -0,0 +1,9 @@
FILE(GLOB Eigen_Core_SRCS "*.h")
INSTALL(FILES
${Eigen_Core_SRCS}
DESTINATION ${INCLUDE_INSTALL_DIR}/Eigen/src/Core
)
ADD_SUBDIRECTORY(util)
ADD_SUBDIRECTORY(arch)

View File

@@ -0,0 +1,753 @@
// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_CACHE_FRIENDLY_PRODUCT_H
#define EIGEN_CACHE_FRIENDLY_PRODUCT_H
template <int L2MemorySize,typename Scalar>
struct ei_L2_block_traits {
enum {width = 8 * ei_meta_sqrt<L2MemorySize/(64*sizeof(Scalar))>::ret };
};
#ifndef EIGEN_EXTERN_INSTANTIATIONS
template<typename Scalar>
void ei_cache_friendly_product(
int _rows, int _cols, int depth,
bool _lhsRowMajor, const Scalar* _lhs, int _lhsStride,
bool _rhsRowMajor, const Scalar* _rhs, int _rhsStride,
bool resRowMajor, Scalar* res, int resStride)
{
const Scalar* EIGEN_RESTRICT lhs;
const Scalar* EIGEN_RESTRICT rhs;
int lhsStride, rhsStride, rows, cols;
bool lhsRowMajor;
if (resRowMajor)
{
lhs = _rhs;
rhs = _lhs;
lhsStride = _rhsStride;
rhsStride = _lhsStride;
cols = _rows;
rows = _cols;
lhsRowMajor = !_rhsRowMajor;
ei_assert(_lhsRowMajor);
}
else
{
lhs = _lhs;
rhs = _rhs;
lhsStride = _lhsStride;
rhsStride = _rhsStride;
rows = _rows;
cols = _cols;
lhsRowMajor = _lhsRowMajor;
ei_assert(!_rhsRowMajor);
}
typedef typename ei_packet_traits<Scalar>::type PacketType;
enum {
PacketSize = sizeof(PacketType)/sizeof(Scalar),
#if (defined __i386__)
// i386 architecture provides only 8 xmm registers,
// so let's reduce the max number of rows processed at once.
MaxBlockRows = 4,
MaxBlockRows_ClampingMask = 0xFFFFFC,
#else
MaxBlockRows = 8,
MaxBlockRows_ClampingMask = 0xFFFFF8,
#endif
// maximal size of the blocks fitted in L2 cache
MaxL2BlockSize = ei_L2_block_traits<EIGEN_TUNE_FOR_CPU_CACHE_SIZE,Scalar>::width
};
const bool resIsAligned = (PacketSize==1) || (((resStride%PacketSize) == 0) && (std::size_t(res)%16==0));
const int remainingSize = depth % PacketSize;
const int size = depth - remainingSize; // third dimension of the product clamped to packet boundaries
const int l2BlockRows = MaxL2BlockSize > rows ? rows : MaxL2BlockSize;
const int l2BlockCols = MaxL2BlockSize > cols ? cols : MaxL2BlockSize;
const int l2BlockSize = MaxL2BlockSize > size ? size : MaxL2BlockSize;
const int l2BlockSizeAligned = (1 + std::max(l2BlockSize,l2BlockCols)/PacketSize)*PacketSize;
const bool needRhsCopy = (PacketSize>1) && ((rhsStride%PacketSize!=0) || (std::size_t(rhs)%16!=0));
Scalar* EIGEN_RESTRICT block = 0;
const int allocBlockSize = l2BlockRows*size;
block = ei_aligned_stack_new(Scalar, allocBlockSize);
Scalar* EIGEN_RESTRICT rhsCopy
= ei_aligned_stack_new(Scalar, l2BlockSizeAligned*l2BlockSizeAligned);
// loops on each L2 cache friendly blocks of the result
for(int l2i=0; l2i<rows; l2i+=l2BlockRows)
{
const int l2blockRowEnd = std::min(l2i+l2BlockRows, rows);
const int l2blockRowEndBW = l2blockRowEnd & MaxBlockRows_ClampingMask; // end of the rows aligned to bw
const int l2blockRemainingRows = l2blockRowEnd - l2blockRowEndBW; // number of remaining rows
//const int l2blockRowEndBWPlusOne = l2blockRowEndBW + (l2blockRemainingRows?0:MaxBlockRows);
// build a cache friendly blocky matrix
int count = 0;
// copy l2blocksize rows of m_lhs to blocks of ps x bw
for(int l2k=0; l2k<size; l2k+=l2BlockSize)
{
const int l2blockSizeEnd = std::min(l2k+l2BlockSize, size);
for (int i = l2i; i<l2blockRowEndBW/*PlusOne*/; i+=MaxBlockRows)
{
// TODO merge the "if l2blockRemainingRows" using something like:
// const int blockRows = std::min(i+MaxBlockRows, rows) - i;
for (int k=l2k; k<l2blockSizeEnd; k+=PacketSize)
{
// TODO write these loops using meta unrolling
// negligible for large matrices but useful for small ones
if (lhsRowMajor)
{
for (int w=0; w<MaxBlockRows; ++w)
for (int s=0; s<PacketSize; ++s)
block[count++] = lhs[(i+w)*lhsStride + (k+s)];
}
else
{
for (int w=0; w<MaxBlockRows; ++w)
for (int s=0; s<PacketSize; ++s)
block[count++] = lhs[(i+w) + (k+s)*lhsStride];
}
}
}
if (l2blockRemainingRows>0)
{
for (int k=l2k; k<l2blockSizeEnd; k+=PacketSize)
{
if (lhsRowMajor)
{
for (int w=0; w<l2blockRemainingRows; ++w)
for (int s=0; s<PacketSize; ++s)
block[count++] = lhs[(l2blockRowEndBW+w)*lhsStride + (k+s)];
}
else
{
for (int w=0; w<l2blockRemainingRows; ++w)
for (int s=0; s<PacketSize; ++s)
block[count++] = lhs[(l2blockRowEndBW+w) + (k+s)*lhsStride];
}
}
}
}
for(int l2j=0; l2j<cols; l2j+=l2BlockCols)
{
int l2blockColEnd = std::min(l2j+l2BlockCols, cols);
for(int l2k=0; l2k<size; l2k+=l2BlockSize)
{
// acumulate bw rows of lhs time a single column of rhs to a bw x 1 block of res
int l2blockSizeEnd = std::min(l2k+l2BlockSize, size);
// if not aligned, copy the rhs block
if (needRhsCopy)
for(int l1j=l2j; l1j<l2blockColEnd; l1j+=1)
{
ei_internal_assert(l2BlockSizeAligned*(l1j-l2j)+(l2blockSizeEnd-l2k) < l2BlockSizeAligned*l2BlockSizeAligned);
std::memcpy(rhsCopy+l2BlockSizeAligned*(l1j-l2j),&(rhs[l1j*rhsStride+l2k]),(l2blockSizeEnd-l2k)*sizeof(Scalar));
}
// for each bw x 1 result's block
for(int l1i=l2i; l1i<l2blockRowEndBW; l1i+=MaxBlockRows)
{
int offsetblock = l2k * (l2blockRowEnd-l2i) + (l1i-l2i)*(l2blockSizeEnd-l2k) - l2k*MaxBlockRows;
const Scalar* EIGEN_RESTRICT localB = &block[offsetblock];
for(int l1j=l2j; l1j<l2blockColEnd; l1j+=1)
{
const Scalar* EIGEN_RESTRICT rhsColumn;
if (needRhsCopy)
rhsColumn = &(rhsCopy[l2BlockSizeAligned*(l1j-l2j)-l2k]);
else
rhsColumn = &(rhs[l1j*rhsStride]);
PacketType dst[MaxBlockRows];
dst[3] = dst[2] = dst[1] = dst[0] = ei_pset1(Scalar(0.));
if (MaxBlockRows==8)
dst[7] = dst[6] = dst[5] = dst[4] = dst[0];
PacketType tmp;
for(int k=l2k; k<l2blockSizeEnd; k+=PacketSize)
{
tmp = ei_ploadu(&rhsColumn[k]);
PacketType A0, A1, A2, A3, A4, A5;
A0 = ei_pload(localB + k*MaxBlockRows);
A1 = ei_pload(localB + k*MaxBlockRows+1*PacketSize);
A2 = ei_pload(localB + k*MaxBlockRows+2*PacketSize);
A3 = ei_pload(localB + k*MaxBlockRows+3*PacketSize);
if (MaxBlockRows==8) A4 = ei_pload(localB + k*MaxBlockRows+4*PacketSize);
if (MaxBlockRows==8) A5 = ei_pload(localB + k*MaxBlockRows+5*PacketSize);
dst[0] = ei_pmadd(tmp, A0, dst[0]);
if (MaxBlockRows==8) A0 = ei_pload(localB + k*MaxBlockRows+6*PacketSize);
dst[1] = ei_pmadd(tmp, A1, dst[1]);
if (MaxBlockRows==8) A1 = ei_pload(localB + k*MaxBlockRows+7*PacketSize);
dst[2] = ei_pmadd(tmp, A2, dst[2]);
dst[3] = ei_pmadd(tmp, A3, dst[3]);
if (MaxBlockRows==8)
{
dst[4] = ei_pmadd(tmp, A4, dst[4]);
dst[5] = ei_pmadd(tmp, A5, dst[5]);
dst[6] = ei_pmadd(tmp, A0, dst[6]);
dst[7] = ei_pmadd(tmp, A1, dst[7]);
}
}
Scalar* EIGEN_RESTRICT localRes = &(res[l1i + l1j*resStride]);
if (PacketSize>1 && resIsAligned)
{
// the result is aligned: let's do packet reduction
ei_pstore(&(localRes[0]), ei_padd(ei_pload(&(localRes[0])), ei_preduxp(&dst[0])));
if (PacketSize==2)
ei_pstore(&(localRes[2]), ei_padd(ei_pload(&(localRes[2])), ei_preduxp(&(dst[2]))));
if (MaxBlockRows==8)
{
ei_pstore(&(localRes[4]), ei_padd(ei_pload(&(localRes[4])), ei_preduxp(&(dst[4]))));
if (PacketSize==2)
ei_pstore(&(localRes[6]), ei_padd(ei_pload(&(localRes[6])), ei_preduxp(&(dst[6]))));
}
}
else
{
// not aligned => per coeff packet reduction
localRes[0] += ei_predux(dst[0]);
localRes[1] += ei_predux(dst[1]);
localRes[2] += ei_predux(dst[2]);
localRes[3] += ei_predux(dst[3]);
if (MaxBlockRows==8)
{
localRes[4] += ei_predux(dst[4]);
localRes[5] += ei_predux(dst[5]);
localRes[6] += ei_predux(dst[6]);
localRes[7] += ei_predux(dst[7]);
}
}
}
}
if (l2blockRemainingRows>0)
{
int offsetblock = l2k * (l2blockRowEnd-l2i) + (l2blockRowEndBW-l2i)*(l2blockSizeEnd-l2k) - l2k*l2blockRemainingRows;
const Scalar* localB = &block[offsetblock];
for(int l1j=l2j; l1j<l2blockColEnd; l1j+=1)
{
const Scalar* EIGEN_RESTRICT rhsColumn;
if (needRhsCopy)
rhsColumn = &(rhsCopy[l2BlockSizeAligned*(l1j-l2j)-l2k]);
else
rhsColumn = &(rhs[l1j*rhsStride]);
PacketType dst[MaxBlockRows];
dst[3] = dst[2] = dst[1] = dst[0] = ei_pset1(Scalar(0.));
if (MaxBlockRows==8)
dst[7] = dst[6] = dst[5] = dst[4] = dst[0];
// let's declare a few other temporary registers
PacketType tmp;
for(int k=l2k; k<l2blockSizeEnd; k+=PacketSize)
{
tmp = ei_pload(&rhsColumn[k]);
dst[0] = ei_pmadd(tmp, ei_pload(&(localB[k*l2blockRemainingRows ])), dst[0]);
if (l2blockRemainingRows>=2) dst[1] = ei_pmadd(tmp, ei_pload(&(localB[k*l2blockRemainingRows+ PacketSize])), dst[1]);
if (l2blockRemainingRows>=3) dst[2] = ei_pmadd(tmp, ei_pload(&(localB[k*l2blockRemainingRows+2*PacketSize])), dst[2]);
if (l2blockRemainingRows>=4) dst[3] = ei_pmadd(tmp, ei_pload(&(localB[k*l2blockRemainingRows+3*PacketSize])), dst[3]);
if (MaxBlockRows==8)
{
if (l2blockRemainingRows>=5) dst[4] = ei_pmadd(tmp, ei_pload(&(localB[k*l2blockRemainingRows+4*PacketSize])), dst[4]);
if (l2blockRemainingRows>=6) dst[5] = ei_pmadd(tmp, ei_pload(&(localB[k*l2blockRemainingRows+5*PacketSize])), dst[5]);
if (l2blockRemainingRows>=7) dst[6] = ei_pmadd(tmp, ei_pload(&(localB[k*l2blockRemainingRows+6*PacketSize])), dst[6]);
if (l2blockRemainingRows>=8) dst[7] = ei_pmadd(tmp, ei_pload(&(localB[k*l2blockRemainingRows+7*PacketSize])), dst[7]);
}
}
Scalar* EIGEN_RESTRICT localRes = &(res[l2blockRowEndBW + l1j*resStride]);
// process the remaining rows once at a time
localRes[0] += ei_predux(dst[0]);
if (l2blockRemainingRows>=2) localRes[1] += ei_predux(dst[1]);
if (l2blockRemainingRows>=3) localRes[2] += ei_predux(dst[2]);
if (l2blockRemainingRows>=4) localRes[3] += ei_predux(dst[3]);
if (MaxBlockRows==8)
{
if (l2blockRemainingRows>=5) localRes[4] += ei_predux(dst[4]);
if (l2blockRemainingRows>=6) localRes[5] += ei_predux(dst[5]);
if (l2blockRemainingRows>=7) localRes[6] += ei_predux(dst[6]);
if (l2blockRemainingRows>=8) localRes[7] += ei_predux(dst[7]);
}
}
}
}
}
}
if (PacketSize>1 && remainingSize)
{
if (lhsRowMajor)
{
for (int j=0; j<cols; ++j)
for (int i=0; i<rows; ++i)
{
Scalar tmp = lhs[i*lhsStride+size] * rhs[j*rhsStride+size];
// FIXME this loop get vectorized by the compiler !
for (int k=1; k<remainingSize; ++k)
tmp += lhs[i*lhsStride+size+k] * rhs[j*rhsStride+size+k];
res[i+j*resStride] += tmp;
}
}
else
{
for (int j=0; j<cols; ++j)
for (int i=0; i<rows; ++i)
{
Scalar tmp = lhs[i+size*lhsStride] * rhs[j*rhsStride+size];
for (int k=1; k<remainingSize; ++k)
tmp += lhs[i+(size+k)*lhsStride] * rhs[j*rhsStride+size+k];
res[i+j*resStride] += tmp;
}
}
}
ei_aligned_stack_delete(Scalar, block, allocBlockSize);
ei_aligned_stack_delete(Scalar, rhsCopy, l2BlockSizeAligned*l2BlockSizeAligned);
}
#endif // EIGEN_EXTERN_INSTANTIATIONS
/* Optimized col-major matrix * vector product:
* This algorithm processes 4 columns at onces that allows to both reduce
* the number of load/stores of the result by a factor 4 and to reduce
* the instruction dependency. Moreover, we know that all bands have the
* same alignment pattern.
* TODO: since rhs gets evaluated only once, no need to evaluate it
*/
template<typename Scalar, typename RhsType>
EIGEN_DONT_INLINE void ei_cache_friendly_product_colmajor_times_vector(
int size,
const Scalar* lhs, int lhsStride,
const RhsType& rhs,
Scalar* res)
{
#ifdef _EIGEN_ACCUMULATE_PACKETS
#error _EIGEN_ACCUMULATE_PACKETS has already been defined
#endif
#define _EIGEN_ACCUMULATE_PACKETS(A0,A13,A2) \
ei_pstore(&res[j], \
ei_padd(ei_pload(&res[j]), \
ei_padd( \
ei_padd(ei_pmul(ptmp0,EIGEN_CAT(ei_ploa , A0)(&lhs0[j])), \
ei_pmul(ptmp1,EIGEN_CAT(ei_ploa , A13)(&lhs1[j]))), \
ei_padd(ei_pmul(ptmp2,EIGEN_CAT(ei_ploa , A2)(&lhs2[j])), \
ei_pmul(ptmp3,EIGEN_CAT(ei_ploa , A13)(&lhs3[j]))) )))
typedef typename ei_packet_traits<Scalar>::type Packet;
const int PacketSize = sizeof(Packet)/sizeof(Scalar);
enum { AllAligned = 0, EvenAligned, FirstAligned, NoneAligned };
const int columnsAtOnce = 4;
const int peels = 2;
const int PacketAlignedMask = PacketSize-1;
const int PeelAlignedMask = PacketSize*peels-1;
// How many coeffs of the result do we have to skip to be aligned.
// Here we assume data are at least aligned on the base scalar type that is mandatory anyway.
const int alignedStart = ei_alignmentOffset(res,size);
const int alignedSize = PacketSize>1 ? alignedStart + ((size-alignedStart) & ~PacketAlignedMask) : 0;
const int peeledSize = peels>1 ? alignedStart + ((alignedSize-alignedStart) & ~PeelAlignedMask) : alignedStart;
const int alignmentStep = PacketSize>1 ? (PacketSize - lhsStride % PacketSize) & PacketAlignedMask : 0;
int alignmentPattern = alignmentStep==0 ? AllAligned
: alignmentStep==(PacketSize/2) ? EvenAligned
: FirstAligned;
// we cannot assume the first element is aligned because of sub-matrices
const int lhsAlignmentOffset = ei_alignmentOffset(lhs,size);
// find how many columns do we have to skip to be aligned with the result (if possible)
int skipColumns = 0;
if (PacketSize>1)
{
ei_internal_assert(std::size_t(lhs+lhsAlignmentOffset)%sizeof(Packet)==0 || size<PacketSize);
while (skipColumns<PacketSize &&
alignedStart != ((lhsAlignmentOffset + alignmentStep*skipColumns)%PacketSize))
++skipColumns;
if (skipColumns==PacketSize)
{
// nothing can be aligned, no need to skip any column
alignmentPattern = NoneAligned;
skipColumns = 0;
}
else
{
skipColumns = std::min(skipColumns,rhs.size());
// note that the skiped columns are processed later.
}
ei_internal_assert((alignmentPattern==NoneAligned) || (std::size_t(lhs+alignedStart+lhsStride*skipColumns)%sizeof(Packet))==0);
}
int offset1 = (FirstAligned && alignmentStep==1?3:1);
int offset3 = (FirstAligned && alignmentStep==1?1:3);
int columnBound = ((rhs.size()-skipColumns)/columnsAtOnce)*columnsAtOnce + skipColumns;
for (int i=skipColumns; i<columnBound; i+=columnsAtOnce)
{
Packet ptmp0 = ei_pset1(rhs[i]), ptmp1 = ei_pset1(rhs[i+offset1]),
ptmp2 = ei_pset1(rhs[i+2]), ptmp3 = ei_pset1(rhs[i+offset3]);
// this helps a lot generating better binary code
const Scalar *lhs0 = lhs + i*lhsStride, *lhs1 = lhs + (i+offset1)*lhsStride,
*lhs2 = lhs + (i+2)*lhsStride, *lhs3 = lhs + (i+offset3)*lhsStride;
if (PacketSize>1)
{
/* explicit vectorization */
// process initial unaligned coeffs
for (int j=0; j<alignedStart; ++j)
res[j] += ei_pfirst(ptmp0)*lhs0[j] + ei_pfirst(ptmp1)*lhs1[j] + ei_pfirst(ptmp2)*lhs2[j] + ei_pfirst(ptmp3)*lhs3[j];
if (alignedSize>alignedStart)
{
switch(alignmentPattern)
{
case AllAligned:
for (int j = alignedStart; j<alignedSize; j+=PacketSize)
_EIGEN_ACCUMULATE_PACKETS(d,d,d);
break;
case EvenAligned:
for (int j = alignedStart; j<alignedSize; j+=PacketSize)
_EIGEN_ACCUMULATE_PACKETS(d,du,d);
break;
case FirstAligned:
if(peels>1)
{
Packet A00, A01, A02, A03, A10, A11, A12, A13;
A01 = ei_pload(&lhs1[alignedStart-1]);
A02 = ei_pload(&lhs2[alignedStart-2]);
A03 = ei_pload(&lhs3[alignedStart-3]);
for (int j = alignedStart; j<peeledSize; j+=peels*PacketSize)
{
A11 = ei_pload(&lhs1[j-1+PacketSize]); ei_palign<1>(A01,A11);
A12 = ei_pload(&lhs2[j-2+PacketSize]); ei_palign<2>(A02,A12);
A13 = ei_pload(&lhs3[j-3+PacketSize]); ei_palign<3>(A03,A13);
A00 = ei_pload (&lhs0[j]);
A10 = ei_pload (&lhs0[j+PacketSize]);
A00 = ei_pmadd(ptmp0, A00, ei_pload(&res[j]));
A10 = ei_pmadd(ptmp0, A10, ei_pload(&res[j+PacketSize]));
A00 = ei_pmadd(ptmp1, A01, A00);
A01 = ei_pload(&lhs1[j-1+2*PacketSize]); ei_palign<1>(A11,A01);
A00 = ei_pmadd(ptmp2, A02, A00);
A02 = ei_pload(&lhs2[j-2+2*PacketSize]); ei_palign<2>(A12,A02);
A00 = ei_pmadd(ptmp3, A03, A00);
ei_pstore(&res[j],A00);
A03 = ei_pload(&lhs3[j-3+2*PacketSize]); ei_palign<3>(A13,A03);
A10 = ei_pmadd(ptmp1, A11, A10);
A10 = ei_pmadd(ptmp2, A12, A10);
A10 = ei_pmadd(ptmp3, A13, A10);
ei_pstore(&res[j+PacketSize],A10);
}
}
for (int j = peeledSize; j<alignedSize; j+=PacketSize)
_EIGEN_ACCUMULATE_PACKETS(d,du,du);
break;
default:
for (int j = alignedStart; j<alignedSize; j+=PacketSize)
_EIGEN_ACCUMULATE_PACKETS(du,du,du);
break;
}
}
} // end explicit vectorization
/* process remaining coeffs (or all if there is no explicit vectorization) */
for (int j=alignedSize; j<size; ++j)
res[j] += ei_pfirst(ptmp0)*lhs0[j] + ei_pfirst(ptmp1)*lhs1[j] + ei_pfirst(ptmp2)*lhs2[j] + ei_pfirst(ptmp3)*lhs3[j];
}
// process remaining first and last columns (at most columnsAtOnce-1)
int end = rhs.size();
int start = columnBound;
do
{
for (int i=start; i<end; ++i)
{
Packet ptmp0 = ei_pset1(rhs[i]);
const Scalar* lhs0 = lhs + i*lhsStride;
if (PacketSize>1)
{
/* explicit vectorization */
// process first unaligned result's coeffs
for (int j=0; j<alignedStart; ++j)
res[j] += ei_pfirst(ptmp0) * lhs0[j];
// process aligned result's coeffs
if ((std::size_t(lhs0+alignedStart)%sizeof(Packet))==0)
for (int j = alignedStart;j<alignedSize;j+=PacketSize)
ei_pstore(&res[j], ei_pmadd(ptmp0,ei_pload(&lhs0[j]),ei_pload(&res[j])));
else
for (int j = alignedStart;j<alignedSize;j+=PacketSize)
ei_pstore(&res[j], ei_pmadd(ptmp0,ei_ploadu(&lhs0[j]),ei_pload(&res[j])));
}
// process remaining scalars (or all if no explicit vectorization)
for (int j=alignedSize; j<size; ++j)
res[j] += ei_pfirst(ptmp0) * lhs0[j];
}
if (skipColumns)
{
start = 0;
end = skipColumns;
skipColumns = 0;
}
else
break;
} while(PacketSize>1);
#undef _EIGEN_ACCUMULATE_PACKETS
}
// TODO add peeling to mask unaligned load/stores
template<typename Scalar, typename ResType>
EIGEN_DONT_INLINE void ei_cache_friendly_product_rowmajor_times_vector(
const Scalar* lhs, int lhsStride,
const Scalar* rhs, int rhsSize,
ResType& res)
{
#ifdef _EIGEN_ACCUMULATE_PACKETS
#error _EIGEN_ACCUMULATE_PACKETS has already been defined
#endif
#define _EIGEN_ACCUMULATE_PACKETS(A0,A13,A2) {\
Packet b = ei_pload(&rhs[j]); \
ptmp0 = ei_pmadd(b, EIGEN_CAT(ei_ploa,A0) (&lhs0[j]), ptmp0); \
ptmp1 = ei_pmadd(b, EIGEN_CAT(ei_ploa,A13)(&lhs1[j]), ptmp1); \
ptmp2 = ei_pmadd(b, EIGEN_CAT(ei_ploa,A2) (&lhs2[j]), ptmp2); \
ptmp3 = ei_pmadd(b, EIGEN_CAT(ei_ploa,A13)(&lhs3[j]), ptmp3); }
typedef typename ei_packet_traits<Scalar>::type Packet;
const int PacketSize = sizeof(Packet)/sizeof(Scalar);
enum { AllAligned=0, EvenAligned=1, FirstAligned=2, NoneAligned=3 };
const int rowsAtOnce = 4;
const int peels = 2;
const int PacketAlignedMask = PacketSize-1;
const int PeelAlignedMask = PacketSize*peels-1;
const int size = rhsSize;
// How many coeffs of the result do we have to skip to be aligned.
// Here we assume data are at least aligned on the base scalar type that is mandatory anyway.
const int alignedStart = ei_alignmentOffset(rhs, size);
const int alignedSize = PacketSize>1 ? alignedStart + ((size-alignedStart) & ~PacketAlignedMask) : 0;
const int peeledSize = peels>1 ? alignedStart + ((alignedSize-alignedStart) & ~PeelAlignedMask) : alignedStart;
const int alignmentStep = PacketSize>1 ? (PacketSize - lhsStride % PacketSize) & PacketAlignedMask : 0;
int alignmentPattern = alignmentStep==0 ? AllAligned
: alignmentStep==(PacketSize/2) ? EvenAligned
: FirstAligned;
// we cannot assume the first element is aligned because of sub-matrices
const int lhsAlignmentOffset = ei_alignmentOffset(lhs,size);
// find how many rows do we have to skip to be aligned with rhs (if possible)
int skipRows = 0;
if (PacketSize>1)
{
ei_internal_assert(std::size_t(lhs+lhsAlignmentOffset)%sizeof(Packet)==0 || size<PacketSize);
while (skipRows<PacketSize &&
alignedStart != ((lhsAlignmentOffset + alignmentStep*skipRows)%PacketSize))
++skipRows;
if (skipRows==PacketSize)
{
// nothing can be aligned, no need to skip any column
alignmentPattern = NoneAligned;
skipRows = 0;
}
else
{
skipRows = std::min(skipRows,res.size());
// note that the skiped columns are processed later.
}
ei_internal_assert((alignmentPattern==NoneAligned) || PacketSize==1
|| (std::size_t(lhs+alignedStart+lhsStride*skipRows)%sizeof(Packet))==0);
}
int offset1 = (FirstAligned && alignmentStep==1?3:1);
int offset3 = (FirstAligned && alignmentStep==1?1:3);
int rowBound = ((res.size()-skipRows)/rowsAtOnce)*rowsAtOnce + skipRows;
for (int i=skipRows; i<rowBound; i+=rowsAtOnce)
{
Scalar tmp0 = Scalar(0), tmp1 = Scalar(0), tmp2 = Scalar(0), tmp3 = Scalar(0);
// this helps the compiler generating good binary code
const Scalar *lhs0 = lhs + i*lhsStride, *lhs1 = lhs + (i+offset1)*lhsStride,
*lhs2 = lhs + (i+2)*lhsStride, *lhs3 = lhs + (i+offset3)*lhsStride;
if (PacketSize>1)
{
/* explicit vectorization */
Packet ptmp0 = ei_pset1(Scalar(0)), ptmp1 = ei_pset1(Scalar(0)), ptmp2 = ei_pset1(Scalar(0)), ptmp3 = ei_pset1(Scalar(0));
// process initial unaligned coeffs
// FIXME this loop get vectorized by the compiler !
for (int j=0; j<alignedStart; ++j)
{
Scalar b = rhs[j];
tmp0 += b*lhs0[j]; tmp1 += b*lhs1[j]; tmp2 += b*lhs2[j]; tmp3 += b*lhs3[j];
}
if (alignedSize>alignedStart)
{
switch(alignmentPattern)
{
case AllAligned:
for (int j = alignedStart; j<alignedSize; j+=PacketSize)
_EIGEN_ACCUMULATE_PACKETS(d,d,d);
break;
case EvenAligned:
for (int j = alignedStart; j<alignedSize; j+=PacketSize)
_EIGEN_ACCUMULATE_PACKETS(d,du,d);
break;
case FirstAligned:
if (peels>1)
{
/* Here we proccess 4 rows with with two peeled iterations to hide
* tghe overhead of unaligned loads. Moreover unaligned loads are handled
* using special shift/move operations between the two aligned packets
* overlaping the desired unaligned packet. This is *much* more efficient
* than basic unaligned loads.
*/
Packet A01, A02, A03, b, A11, A12, A13;
A01 = ei_pload(&lhs1[alignedStart-1]);
A02 = ei_pload(&lhs2[alignedStart-2]);
A03 = ei_pload(&lhs3[alignedStart-3]);
for (int j = alignedStart; j<peeledSize; j+=peels*PacketSize)
{
b = ei_pload(&rhs[j]);
A11 = ei_pload(&lhs1[j-1+PacketSize]); ei_palign<1>(A01,A11);
A12 = ei_pload(&lhs2[j-2+PacketSize]); ei_palign<2>(A02,A12);
A13 = ei_pload(&lhs3[j-3+PacketSize]); ei_palign<3>(A03,A13);
ptmp0 = ei_pmadd(b, ei_pload (&lhs0[j]), ptmp0);
ptmp1 = ei_pmadd(b, A01, ptmp1);
A01 = ei_pload(&lhs1[j-1+2*PacketSize]); ei_palign<1>(A11,A01);
ptmp2 = ei_pmadd(b, A02, ptmp2);
A02 = ei_pload(&lhs2[j-2+2*PacketSize]); ei_palign<2>(A12,A02);
ptmp3 = ei_pmadd(b, A03, ptmp3);
A03 = ei_pload(&lhs3[j-3+2*PacketSize]); ei_palign<3>(A13,A03);
b = ei_pload(&rhs[j+PacketSize]);
ptmp0 = ei_pmadd(b, ei_pload (&lhs0[j+PacketSize]), ptmp0);
ptmp1 = ei_pmadd(b, A11, ptmp1);
ptmp2 = ei_pmadd(b, A12, ptmp2);
ptmp3 = ei_pmadd(b, A13, ptmp3);
}
}
for (int j = peeledSize; j<alignedSize; j+=PacketSize)
_EIGEN_ACCUMULATE_PACKETS(d,du,du);
break;
default:
for (int j = alignedStart; j<alignedSize; j+=PacketSize)
_EIGEN_ACCUMULATE_PACKETS(du,du,du);
break;
}
tmp0 += ei_predux(ptmp0);
tmp1 += ei_predux(ptmp1);
tmp2 += ei_predux(ptmp2);
tmp3 += ei_predux(ptmp3);
}
} // end explicit vectorization
// process remaining coeffs (or all if no explicit vectorization)
// FIXME this loop get vectorized by the compiler !
for (int j=alignedSize; j<size; ++j)
{
Scalar b = rhs[j];
tmp0 += b*lhs0[j]; tmp1 += b*lhs1[j]; tmp2 += b*lhs2[j]; tmp3 += b*lhs3[j];
}
res[i] += tmp0; res[i+offset1] += tmp1; res[i+2] += tmp2; res[i+offset3] += tmp3;
}
// process remaining first and last rows (at most columnsAtOnce-1)
int end = res.size();
int start = rowBound;
do
{
for (int i=start; i<end; ++i)
{
Scalar tmp0 = Scalar(0);
Packet ptmp0 = ei_pset1(tmp0);
const Scalar* lhs0 = lhs + i*lhsStride;
// process first unaligned result's coeffs
// FIXME this loop get vectorized by the compiler !
for (int j=0; j<alignedStart; ++j)
tmp0 += rhs[j] * lhs0[j];
if (alignedSize>alignedStart)
{
// process aligned rhs coeffs
if ((std::size_t(lhs0+alignedStart)%sizeof(Packet))==0)
for (int j = alignedStart;j<alignedSize;j+=PacketSize)
ptmp0 = ei_pmadd(ei_pload(&rhs[j]), ei_pload(&lhs0[j]), ptmp0);
else
for (int j = alignedStart;j<alignedSize;j+=PacketSize)
ptmp0 = ei_pmadd(ei_pload(&rhs[j]), ei_ploadu(&lhs0[j]), ptmp0);
tmp0 += ei_predux(ptmp0);
}
// process remaining scalars
// FIXME this loop get vectorized by the compiler !
for (int j=alignedSize; j<size; ++j)
tmp0 += rhs[j] * lhs0[j];
res[i] += tmp0;
}
if (skipRows)
{
start = 0;
end = skipRows;
skipRows = 0;
}
else
break;
} while(PacketSize>1);
#undef _EIGEN_ACCUMULATE_PACKETS
}
#endif // EIGEN_CACHE_FRIENDLY_PRODUCT_H

384
Eigen/src/Core/Coeffs.h Normal file
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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_COEFFS_H
#define EIGEN_COEFFS_H
/** Short version: don't use this function, use
* \link operator()(int,int) const \endlink instead.
*
* Long version: this function is similar to
* \link operator()(int,int) const \endlink, but without the assertion.
* Use this for limiting the performance cost of debugging code when doing
* repeated coefficient access. Only use this when it is guaranteed that the
* parameters \a row and \a col are in range.
*
* If EIGEN_INTERNAL_DEBUGGING is defined, an assertion will be made, making this
* function equivalent to \link operator()(int,int) const \endlink.
*
* \sa operator()(int,int) const, coeffRef(int,int), coeff(int) const
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename ei_traits<Derived>::Scalar MatrixBase<Derived>
::coeff(int row, int col) const
{
ei_internal_assert(row >= 0 && row < rows()
&& col >= 0 && col < cols());
return derived().coeff(row, col);
}
/** \returns the coefficient at given the given row and column.
*
* \sa operator()(int,int), operator[](int) const
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename ei_traits<Derived>::Scalar MatrixBase<Derived>
::operator()(int row, int col) const
{
ei_assert(row >= 0 && row < rows()
&& col >= 0 && col < cols());
return derived().coeff(row, col);
}
/** Short version: don't use this function, use
* \link operator()(int,int) \endlink instead.
*
* Long version: this function is similar to
* \link operator()(int,int) \endlink, but without the assertion.
* Use this for limiting the performance cost of debugging code when doing
* repeated coefficient access. Only use this when it is guaranteed that the
* parameters \a row and \a col are in range.
*
* If EIGEN_INTERNAL_DEBUGGING is defined, an assertion will be made, making this
* function equivalent to \link operator()(int,int) \endlink.
*
* \sa operator()(int,int), coeff(int, int) const, coeffRef(int)
*/
template<typename Derived>
EIGEN_STRONG_INLINE typename ei_traits<Derived>::Scalar& MatrixBase<Derived>
::coeffRef(int row, int col)
{
ei_internal_assert(row >= 0 && row < rows()
&& col >= 0 && col < cols());
return derived().coeffRef(row, col);
}
/** \returns a reference to the coefficient at given the given row and column.
*
* \sa operator()(int,int) const, operator[](int)
*/
template<typename Derived>
EIGEN_STRONG_INLINE typename ei_traits<Derived>::Scalar& MatrixBase<Derived>
::operator()(int row, int col)
{
ei_assert(row >= 0 && row < rows()
&& col >= 0 && col < cols());
return derived().coeffRef(row, col);
}
/** Short version: don't use this function, use
* \link operator[](int) const \endlink instead.
*
* Long version: this function is similar to
* \link operator[](int) const \endlink, but without the assertion.
* Use this for limiting the performance cost of debugging code when doing
* repeated coefficient access. Only use this when it is guaranteed that the
* parameter \a index is in range.
*
* If EIGEN_INTERNAL_DEBUGGING is defined, an assertion will be made, making this
* function equivalent to \link operator[](int) const \endlink.
*
* \sa operator[](int) const, coeffRef(int), coeff(int,int) const
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename ei_traits<Derived>::Scalar MatrixBase<Derived>
::coeff(int index) const
{
ei_internal_assert(index >= 0 && index < size());
return derived().coeff(index);
}
/** \returns the coefficient at given index.
*
* This method is allowed only for vector expressions, and for matrix expressions having the LinearAccessBit.
*
* \sa operator[](int), operator()(int,int) const, x() const, y() const,
* z() const, w() const
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename ei_traits<Derived>::Scalar MatrixBase<Derived>
::operator[](int index) const
{
ei_assert(index >= 0 && index < size());
return derived().coeff(index);
}
/** \returns the coefficient at given index.
*
* This is synonymous to operator[](int) const.
*
* This method is allowed only for vector expressions, and for matrix expressions having the LinearAccessBit.
*
* \sa operator[](int), operator()(int,int) const, x() const, y() const,
* z() const, w() const
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename ei_traits<Derived>::Scalar MatrixBase<Derived>
::operator()(int index) const
{
ei_assert(index >= 0 && index < size());
return derived().coeff(index);
}
/** Short version: don't use this function, use
* \link operator[](int) \endlink instead.
*
* Long version: this function is similar to
* \link operator[](int) \endlink, but without the assertion.
* Use this for limiting the performance cost of debugging code when doing
* repeated coefficient access. Only use this when it is guaranteed that the
* parameters \a row and \a col are in range.
*
* If EIGEN_INTERNAL_DEBUGGING is defined, an assertion will be made, making this
* function equivalent to \link operator[](int) \endlink.
*
* \sa operator[](int), coeff(int) const, coeffRef(int,int)
*/
template<typename Derived>
EIGEN_STRONG_INLINE typename ei_traits<Derived>::Scalar& MatrixBase<Derived>
::coeffRef(int index)
{
ei_internal_assert(index >= 0 && index < size());
return derived().coeffRef(index);
}
/** \returns a reference to the coefficient at given index.
*
* This method is allowed only for vector expressions, and for matrix expressions having the LinearAccessBit.
*
* \sa operator[](int) const, operator()(int,int), x(), y(), z(), w()
*/
template<typename Derived>
EIGEN_STRONG_INLINE typename ei_traits<Derived>::Scalar& MatrixBase<Derived>
::operator[](int index)
{
ei_assert(index >= 0 && index < size());
return derived().coeffRef(index);
}
/** \returns a reference to the coefficient at given index.
*
* This is synonymous to operator[](int).
*
* This method is allowed only for vector expressions, and for matrix expressions having the LinearAccessBit.
*
* \sa operator[](int) const, operator()(int,int), x(), y(), z(), w()
*/
template<typename Derived>
EIGEN_STRONG_INLINE typename ei_traits<Derived>::Scalar& MatrixBase<Derived>
::operator()(int index)
{
ei_assert(index >= 0 && index < size());
return derived().coeffRef(index);
}
/** equivalent to operator[](0). */
template<typename Derived>
EIGEN_STRONG_INLINE const typename ei_traits<Derived>::Scalar MatrixBase<Derived>
::x() const { return (*this)[0]; }
/** equivalent to operator[](1). */
template<typename Derived>
EIGEN_STRONG_INLINE const typename ei_traits<Derived>::Scalar MatrixBase<Derived>
::y() const { return (*this)[1]; }
/** equivalent to operator[](2). */
template<typename Derived>
EIGEN_STRONG_INLINE const typename ei_traits<Derived>::Scalar MatrixBase<Derived>
::z() const { return (*this)[2]; }
/** equivalent to operator[](3). */
template<typename Derived>
EIGEN_STRONG_INLINE const typename ei_traits<Derived>::Scalar MatrixBase<Derived>
::w() const { return (*this)[3]; }
/** equivalent to operator[](0). */
template<typename Derived>
EIGEN_STRONG_INLINE typename ei_traits<Derived>::Scalar& MatrixBase<Derived>
::x() { return (*this)[0]; }
/** equivalent to operator[](1). */
template<typename Derived>
EIGEN_STRONG_INLINE typename ei_traits<Derived>::Scalar& MatrixBase<Derived>
::y() { return (*this)[1]; }
/** equivalent to operator[](2). */
template<typename Derived>
EIGEN_STRONG_INLINE typename ei_traits<Derived>::Scalar& MatrixBase<Derived>
::z() { return (*this)[2]; }
/** equivalent to operator[](3). */
template<typename Derived>
EIGEN_STRONG_INLINE typename ei_traits<Derived>::Scalar& MatrixBase<Derived>
::w() { return (*this)[3]; }
/** \returns the packet of coefficients starting at the given row and column. It is your responsibility
* to ensure that a packet really starts there. This method is only available on expressions having the
* PacketAccessBit.
*
* The \a LoadMode parameter may have the value \a Aligned or \a Unaligned. Its effect is to select
* the appropriate vectorization instruction. Aligned access is faster, but is only possible for packets
* starting at an address which is a multiple of the packet size.
*/
template<typename Derived>
template<int LoadMode>
EIGEN_STRONG_INLINE typename ei_packet_traits<typename ei_traits<Derived>::Scalar>::type
MatrixBase<Derived>::packet(int row, int col) const
{
ei_internal_assert(row >= 0 && row < rows()
&& col >= 0 && col < cols());
return derived().template packet<LoadMode>(row,col);
}
/** Stores the given packet of coefficients, at the given row and column of this expression. It is your responsibility
* to ensure that a packet really starts there. This method is only available on expressions having the
* PacketAccessBit.
*
* The \a LoadMode parameter may have the value \a Aligned or \a Unaligned. Its effect is to select
* the appropriate vectorization instruction. Aligned access is faster, but is only possible for packets
* starting at an address which is a multiple of the packet size.
*/
template<typename Derived>
template<int StoreMode>
EIGEN_STRONG_INLINE void MatrixBase<Derived>::writePacket
(int row, int col, const typename ei_packet_traits<typename ei_traits<Derived>::Scalar>::type& x)
{
ei_internal_assert(row >= 0 && row < rows()
&& col >= 0 && col < cols());
derived().template writePacket<StoreMode>(row,col,x);
}
/** \returns the packet of coefficients starting at the given index. It is your responsibility
* to ensure that a packet really starts there. This method is only available on expressions having the
* PacketAccessBit and the LinearAccessBit.
*
* The \a LoadMode parameter may have the value \a Aligned or \a Unaligned. Its effect is to select
* the appropriate vectorization instruction. Aligned access is faster, but is only possible for packets
* starting at an address which is a multiple of the packet size.
*/
template<typename Derived>
template<int LoadMode>
EIGEN_STRONG_INLINE typename ei_packet_traits<typename ei_traits<Derived>::Scalar>::type
MatrixBase<Derived>::packet(int index) const
{
ei_internal_assert(index >= 0 && index < size());
return derived().template packet<LoadMode>(index);
}
/** Stores the given packet of coefficients, at the given index in this expression. It is your responsibility
* to ensure that a packet really starts there. This method is only available on expressions having the
* PacketAccessBit and the LinearAccessBit.
*
* The \a LoadMode parameter may have the value \a Aligned or \a Unaligned. Its effect is to select
* the appropriate vectorization instruction. Aligned access is faster, but is only possible for packets
* starting at an address which is a multiple of the packet size.
*/
template<typename Derived>
template<int StoreMode>
EIGEN_STRONG_INLINE void MatrixBase<Derived>::writePacket
(int index, const typename ei_packet_traits<typename ei_traits<Derived>::Scalar>::type& x)
{
ei_internal_assert(index >= 0 && index < size());
derived().template writePacket<StoreMode>(index,x);
}
#ifndef EIGEN_PARSED_BY_DOXYGEN
/** \internal Copies the coefficient at position (row,col) of other into *this.
*
* This method is overridden in SwapWrapper, allowing swap() assignments to share 99% of their code
* with usual assignments.
*
* Outside of this internal usage, this method has probably no usefulness. It is hidden in the public API dox.
*/
template<typename Derived>
template<typename OtherDerived>
EIGEN_STRONG_INLINE void MatrixBase<Derived>::copyCoeff(int row, int col, const MatrixBase<OtherDerived>& other)
{
ei_internal_assert(row >= 0 && row < rows()
&& col >= 0 && col < cols());
derived().coeffRef(row, col) = other.derived().coeff(row, col);
}
/** \internal Copies the coefficient at the given index of other into *this.
*
* This method is overridden in SwapWrapper, allowing swap() assignments to share 99% of their code
* with usual assignments.
*
* Outside of this internal usage, this method has probably no usefulness. It is hidden in the public API dox.
*/
template<typename Derived>
template<typename OtherDerived>
EIGEN_STRONG_INLINE void MatrixBase<Derived>::copyCoeff(int index, const MatrixBase<OtherDerived>& other)
{
ei_internal_assert(index >= 0 && index < size());
derived().coeffRef(index) = other.derived().coeff(index);
}
/** \internal Copies the packet at position (row,col) of other into *this.
*
* This method is overridden in SwapWrapper, allowing swap() assignments to share 99% of their code
* with usual assignments.
*
* Outside of this internal usage, this method has probably no usefulness. It is hidden in the public API dox.
*/
template<typename Derived>
template<typename OtherDerived, int StoreMode, int LoadMode>
EIGEN_STRONG_INLINE void MatrixBase<Derived>::copyPacket(int row, int col, const MatrixBase<OtherDerived>& other)
{
ei_internal_assert(row >= 0 && row < rows()
&& col >= 0 && col < cols());
derived().template writePacket<StoreMode>(row, col,
other.derived().template packet<LoadMode>(row, col));
}
/** \internal Copies the packet at the given index of other into *this.
*
* This method is overridden in SwapWrapper, allowing swap() assignments to share 99% of their code
* with usual assignments.
*
* Outside of this internal usage, this method has probably no usefulness. It is hidden in the public API dox.
*/
template<typename Derived>
template<typename OtherDerived, int StoreMode, int LoadMode>
EIGEN_STRONG_INLINE void MatrixBase<Derived>::copyPacket(int index, const MatrixBase<OtherDerived>& other)
{
ei_internal_assert(index >= 0 && index < size());
derived().template writePacket<StoreMode>(index,
other.derived().template packet<LoadMode>(index));
}
#endif
#endif // EIGEN_COEFFS_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_COMMAINITIALIZER_H
#define EIGEN_COMMAINITIALIZER_H
/** \class CommaInitializer
*
* \brief Helper class used by the comma initializer operator
*
* This class is internally used to implement the comma initializer feature. It is
* the return type of MatrixBase::operator<<, and most of the time this is the only
* way it is used.
*
* \sa \ref MatrixBaseCommaInitRef "MatrixBase::operator<<", CommaInitializer::finished()
*/
template<typename MatrixType>
struct CommaInitializer
{
typedef typename ei_traits<MatrixType>::Scalar Scalar;
inline CommaInitializer(MatrixType& mat, const Scalar& s)
: m_matrix(mat), m_row(0), m_col(1), m_currentBlockRows(1)
{
m_matrix.coeffRef(0,0) = s;
}
template<typename OtherDerived>
inline CommaInitializer(MatrixType& mat, const MatrixBase<OtherDerived>& other)
: m_matrix(mat), m_row(0), m_col(other.cols()), m_currentBlockRows(other.rows())
{
m_matrix.block(0, 0, other.rows(), other.cols()) = other;
}
/* inserts a scalar value in the target matrix */
CommaInitializer& operator,(const Scalar& s)
{
if (m_col==m_matrix.cols())
{
m_row+=m_currentBlockRows;
m_col = 0;
m_currentBlockRows = 1;
ei_assert(m_row<m_matrix.rows()
&& "Too many rows passed to comma initializer (operator<<)");
}
ei_assert(m_col<m_matrix.cols()
&& "Too many coefficients passed to comma initializer (operator<<)");
ei_assert(m_currentBlockRows==1);
m_matrix.coeffRef(m_row, m_col++) = s;
return *this;
}
/* inserts a matrix expression in the target matrix */
template<typename OtherDerived>
CommaInitializer& operator,(const MatrixBase<OtherDerived>& other)
{
if (m_col==m_matrix.cols())
{
m_row+=m_currentBlockRows;
m_col = 0;
m_currentBlockRows = other.rows();
ei_assert(m_row+m_currentBlockRows<=m_matrix.rows()
&& "Too many rows passed to comma initializer (operator<<)");
}
ei_assert(m_col<m_matrix.cols()
&& "Too many coefficients passed to comma initializer (operator<<)");
ei_assert(m_currentBlockRows==other.rows());
if (OtherDerived::SizeAtCompileTime != Dynamic)
m_matrix.template block<OtherDerived::RowsAtCompileTime != Dynamic ? OtherDerived::RowsAtCompileTime : 1,
OtherDerived::ColsAtCompileTime != Dynamic ? OtherDerived::ColsAtCompileTime : 1>
(m_row, m_col) = other;
else
m_matrix.block(m_row, m_col, other.rows(), other.cols()) = other;
m_col += other.cols();
return *this;
}
inline ~CommaInitializer()
{
ei_assert((m_row+m_currentBlockRows) == m_matrix.rows()
&& m_col == m_matrix.cols()
&& "Too few coefficients passed to comma initializer (operator<<)");
}
/** \returns the built matrix once all its coefficients have been set.
* Calling finished is 100% optional. Its purpose is to write expressions
* like this:
* \code
* quaternion.fromRotationMatrix((Matrix3f() << axis0, axis1, axis2).finished());
* \endcode
*/
inline MatrixType& finished() { return m_matrix; }
MatrixType& m_matrix; // target matrix
int m_row; // current row id
int m_col; // current col id
int m_currentBlockRows; // current block height
private:
CommaInitializer& operator=(const CommaInitializer&);
};
/** \anchor MatrixBaseCommaInitRef
* Convenient operator to set the coefficients of a matrix.
*
* The coefficients must be provided in a row major order and exactly match
* the size of the matrix. Otherwise an assertion is raised.
*
* \addexample CommaInit \label How to easily set all the coefficients of a matrix
*
* Example: \include MatrixBase_set.cpp
* Output: \verbinclude MatrixBase_set.out
*
* \sa CommaInitializer::finished(), class CommaInitializer
*/
template<typename Derived>
inline CommaInitializer<Derived> MatrixBase<Derived>::operator<< (const Scalar& s)
{
return CommaInitializer<Derived>(*static_cast<Derived*>(this), s);
}
/** \sa operator<<(const Scalar&) */
template<typename Derived>
template<typename OtherDerived>
inline CommaInitializer<Derived>
MatrixBase<Derived>::operator<<(const MatrixBase<OtherDerived>& other)
{
return CommaInitializer<Derived>(*static_cast<Derived *>(this), other);
}
#endif // EIGEN_COMMAINITIALIZER_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifdef EIGEN_EXTERN_INSTANTIATIONS
#undef EIGEN_EXTERN_INSTANTIATIONS
#endif
#include "../../Core"
namespace Eigen
{
#define EIGEN_INSTANTIATE_PRODUCT(TYPE) \
template static void ei_cache_friendly_product<TYPE>( \
int _rows, int _cols, int depth, \
bool _lhsRowMajor, const TYPE* _lhs, int _lhsStride, \
bool _rhsRowMajor, const TYPE* _rhs, int _rhsStride, \
bool resRowMajor, TYPE* res, int resStride)
EIGEN_INSTANTIATE_PRODUCT(float);
EIGEN_INSTANTIATE_PRODUCT(double);
EIGEN_INSTANTIATE_PRODUCT(int);
EIGEN_INSTANTIATE_PRODUCT(std::complex<float>);
EIGEN_INSTANTIATE_PRODUCT(std::complex<double>);
}

214
Eigen/src/Core/Cwise.h Normal file
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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_CWISE_H
#define EIGEN_CWISE_H
/** \internal
* convenient macro to defined the return type of a cwise binary operation */
#define EIGEN_CWISE_BINOP_RETURN_TYPE(OP) \
CwiseBinaryOp<OP<typename ei_traits<ExpressionType>::Scalar>, ExpressionType, OtherDerived>
#define EIGEN_CWISE_PRODUCT_RETURN_TYPE \
CwiseBinaryOp< \
ei_scalar_product_op< \
typename ei_scalar_product_traits< \
typename ei_traits<ExpressionType>::Scalar, \
typename ei_traits<OtherDerived>::Scalar \
>::ReturnType \
>, \
ExpressionType, \
OtherDerived \
>
/** \internal
* convenient macro to defined the return type of a cwise unary operation */
#define EIGEN_CWISE_UNOP_RETURN_TYPE(OP) \
CwiseUnaryOp<OP<typename ei_traits<ExpressionType>::Scalar>, ExpressionType>
/** \internal
* convenient macro to defined the return type of a cwise comparison to a scalar */
#define EIGEN_CWISE_COMP_TO_SCALAR_RETURN_TYPE(OP) \
CwiseBinaryOp<OP<typename ei_traits<ExpressionType>::Scalar>, ExpressionType, \
NestByValue<typename ExpressionType::ConstantReturnType> >
/** \class Cwise
*
* \brief Pseudo expression providing additional coefficient-wise operations
*
* \param ExpressionType the type of the object on which to do coefficient-wise operations
*
* This class represents an expression with additional coefficient-wise features.
* It is the return type of MatrixBase::cwise()
* and most of the time this is the only way it is used.
*
* Note that some methods are defined in the \ref Array module.
*
* Example: \include MatrixBase_cwise_const.cpp
* Output: \verbinclude MatrixBase_cwise_const.out
*
* \sa MatrixBase::cwise() const, MatrixBase::cwise()
*/
template<typename ExpressionType> class Cwise
{
public:
typedef typename ei_traits<ExpressionType>::Scalar Scalar;
typedef typename ei_meta_if<ei_must_nest_by_value<ExpressionType>::ret,
ExpressionType, const ExpressionType&>::ret ExpressionTypeNested;
typedef CwiseUnaryOp<ei_scalar_add_op<Scalar>, ExpressionType> ScalarAddReturnType;
inline Cwise(const ExpressionType& matrix) : m_matrix(matrix) {}
/** \internal */
inline const ExpressionType& _expression() const { return m_matrix; }
template<typename OtherDerived>
const EIGEN_CWISE_PRODUCT_RETURN_TYPE
operator*(const MatrixBase<OtherDerived> &other) const;
template<typename OtherDerived>
const EIGEN_CWISE_BINOP_RETURN_TYPE(ei_scalar_quotient_op)
operator/(const MatrixBase<OtherDerived> &other) const;
template<typename OtherDerived>
const EIGEN_CWISE_BINOP_RETURN_TYPE(ei_scalar_min_op)
min(const MatrixBase<OtherDerived> &other) const;
template<typename OtherDerived>
const EIGEN_CWISE_BINOP_RETURN_TYPE(ei_scalar_max_op)
max(const MatrixBase<OtherDerived> &other) const;
const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_abs_op) abs() const;
const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_abs2_op) abs2() const;
const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_square_op) square() const;
const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_cube_op) cube() const;
const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_inverse_op) inverse() const;
const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_sqrt_op) sqrt() const;
const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_exp_op) exp() const;
const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_log_op) log() const;
const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_cos_op) cos() const;
const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_sin_op) sin() const;
const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_pow_op) pow(const Scalar& exponent) const;
const ScalarAddReturnType
operator+(const Scalar& scalar) const;
/** \relates Cwise */
friend const ScalarAddReturnType
operator+(const Scalar& scalar, const Cwise& mat)
{ return mat + scalar; }
ExpressionType& operator+=(const Scalar& scalar);
const ScalarAddReturnType
operator-(const Scalar& scalar) const;
ExpressionType& operator-=(const Scalar& scalar);
template<typename OtherDerived>
inline ExpressionType& operator*=(const MatrixBase<OtherDerived> &other);
template<typename OtherDerived>
inline ExpressionType& operator/=(const MatrixBase<OtherDerived> &other);
template<typename OtherDerived> const EIGEN_CWISE_BINOP_RETURN_TYPE(std::less)
operator<(const MatrixBase<OtherDerived>& other) const;
template<typename OtherDerived> const EIGEN_CWISE_BINOP_RETURN_TYPE(std::less_equal)
operator<=(const MatrixBase<OtherDerived>& other) const;
template<typename OtherDerived> const EIGEN_CWISE_BINOP_RETURN_TYPE(std::greater)
operator>(const MatrixBase<OtherDerived>& other) const;
template<typename OtherDerived> const EIGEN_CWISE_BINOP_RETURN_TYPE(std::greater_equal)
operator>=(const MatrixBase<OtherDerived>& other) const;
template<typename OtherDerived> const EIGEN_CWISE_BINOP_RETURN_TYPE(std::equal_to)
operator==(const MatrixBase<OtherDerived>& other) const;
template<typename OtherDerived> const EIGEN_CWISE_BINOP_RETURN_TYPE(std::not_equal_to)
operator!=(const MatrixBase<OtherDerived>& other) const;
// comparisons to a scalar value
const EIGEN_CWISE_COMP_TO_SCALAR_RETURN_TYPE(std::less)
operator<(Scalar s) const;
const EIGEN_CWISE_COMP_TO_SCALAR_RETURN_TYPE(std::less_equal)
operator<=(Scalar s) const;
const EIGEN_CWISE_COMP_TO_SCALAR_RETURN_TYPE(std::greater)
operator>(Scalar s) const;
const EIGEN_CWISE_COMP_TO_SCALAR_RETURN_TYPE(std::greater_equal)
operator>=(Scalar s) const;
const EIGEN_CWISE_COMP_TO_SCALAR_RETURN_TYPE(std::equal_to)
operator==(Scalar s) const;
const EIGEN_CWISE_COMP_TO_SCALAR_RETURN_TYPE(std::not_equal_to)
operator!=(Scalar s) const;
// allow to extend Cwise outside Eigen
#ifdef EIGEN_CWISE_PLUGIN
#include EIGEN_CWISE_PLUGIN
#endif
protected:
ExpressionTypeNested m_matrix;
private:
Cwise& operator=(const Cwise&);
};
/** \returns a Cwise wrapper of *this providing additional coefficient-wise operations
*
* Example: \include MatrixBase_cwise_const.cpp
* Output: \verbinclude MatrixBase_cwise_const.out
*
* \sa class Cwise, cwise()
*/
template<typename Derived>
inline const Cwise<Derived>
MatrixBase<Derived>::cwise() const
{
return derived();
}
/** \returns a Cwise wrapper of *this providing additional coefficient-wise operations
*
* Example: \include MatrixBase_cwise.cpp
* Output: \verbinclude MatrixBase_cwise.out
*
* \sa class Cwise, cwise() const
*/
template<typename Derived>
inline Cwise<Derived>
MatrixBase<Derived>::cwise()
{
return derived();
}
#endif // EIGEN_CWISE_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_CWISE_BINARY_OP_H
#define EIGEN_CWISE_BINARY_OP_H
/** \class CwiseBinaryOp
*
* \brief Generic expression of a coefficient-wise operator between two matrices or vectors
*
* \param BinaryOp template functor implementing the operator
* \param Lhs the type of the left-hand side
* \param Rhs the type of the right-hand side
*
* This class represents an expression of a generic binary operator of two matrices or vectors.
* It is the return type of the operator+, operator-, and the Cwise methods, and most
* of the time this is the only way it is used.
*
* However, if you want to write a function returning such an expression, you
* will need to use this class.
*
* \sa MatrixBase::binaryExpr(const MatrixBase<OtherDerived> &,const CustomBinaryOp &) const, class CwiseUnaryOp, class CwiseNullaryOp
*/
template<typename BinaryOp, typename Lhs, typename Rhs>
struct ei_traits<CwiseBinaryOp<BinaryOp, Lhs, Rhs> >
{
// even though we require Lhs and Rhs to have the same scalar type (see CwiseBinaryOp constructor),
// we still want to handle the case when the result type is different.
typedef typename ei_result_of<
BinaryOp(
typename Lhs::Scalar,
typename Rhs::Scalar
)
>::type Scalar;
typedef typename Lhs::Nested LhsNested;
typedef typename Rhs::Nested RhsNested;
typedef typename ei_unref<LhsNested>::type _LhsNested;
typedef typename ei_unref<RhsNested>::type _RhsNested;
enum {
LhsCoeffReadCost = _LhsNested::CoeffReadCost,
RhsCoeffReadCost = _RhsNested::CoeffReadCost,
LhsFlags = _LhsNested::Flags,
RhsFlags = _RhsNested::Flags,
RowsAtCompileTime = Lhs::RowsAtCompileTime,
ColsAtCompileTime = Lhs::ColsAtCompileTime,
MaxRowsAtCompileTime = Lhs::MaxRowsAtCompileTime,
MaxColsAtCompileTime = Lhs::MaxColsAtCompileTime,
Flags = (int(LhsFlags) | int(RhsFlags)) & (
HereditaryBits
| (int(LhsFlags) & int(RhsFlags) & (LinearAccessBit | AlignedBit))
| (ei_functor_traits<BinaryOp>::PacketAccess && ((int(LhsFlags) & RowMajorBit)==(int(RhsFlags) & RowMajorBit))
? (int(LhsFlags) & int(RhsFlags) & PacketAccessBit) : 0)),
CoeffReadCost = LhsCoeffReadCost + RhsCoeffReadCost + ei_functor_traits<BinaryOp>::Cost
};
};
template<typename BinaryOp, typename Lhs, typename Rhs>
class CwiseBinaryOp : ei_no_assignment_operator,
public MatrixBase<CwiseBinaryOp<BinaryOp, Lhs, Rhs> >
{
public:
EIGEN_GENERIC_PUBLIC_INTERFACE(CwiseBinaryOp)
typedef typename ei_traits<CwiseBinaryOp>::LhsNested LhsNested;
typedef typename ei_traits<CwiseBinaryOp>::RhsNested RhsNested;
EIGEN_STRONG_INLINE CwiseBinaryOp(const Lhs& lhs, const Rhs& rhs, const BinaryOp& func = BinaryOp())
: m_lhs(lhs), m_rhs(rhs), m_functor(func)
{
// we require Lhs and Rhs to have the same scalar type. Currently there is no example of a binary functor
// that would take two operands of different types. If there were such an example, then this check should be
// moved to the BinaryOp functors, on a per-case basis. This would however require a change in the BinaryOp functors, as
// currently they take only one typename Scalar template parameter.
// It is tempting to always allow mixing different types but remember that this is often impossible in the vectorized paths.
// So allowing mixing different types gives very unexpected errors when enabling vectorization, when the user tries to
// add together a float matrix and a double matrix.
EIGEN_STATIC_ASSERT((ei_functor_allows_mixing_real_and_complex<BinaryOp>::ret
? int(ei_is_same_type<typename Lhs::RealScalar, typename Rhs::RealScalar>::ret)
: int(ei_is_same_type<typename Lhs::Scalar, typename Rhs::Scalar>::ret)),
YOU_MIXED_DIFFERENT_NUMERIC_TYPES__YOU_NEED_TO_USE_THE_CAST_METHOD_OF_MATRIXBASE_TO_CAST_NUMERIC_TYPES_EXPLICITLY)
// require the sizes to match
EIGEN_STATIC_ASSERT_SAME_MATRIX_SIZE(Lhs, Rhs)
ei_assert(lhs.rows() == rhs.rows() && lhs.cols() == rhs.cols());
}
EIGEN_STRONG_INLINE int rows() const { return m_lhs.rows(); }
EIGEN_STRONG_INLINE int cols() const { return m_lhs.cols(); }
EIGEN_STRONG_INLINE const Scalar coeff(int row, int col) const
{
return m_functor(m_lhs.coeff(row, col), m_rhs.coeff(row, col));
}
template<int LoadMode>
EIGEN_STRONG_INLINE PacketScalar packet(int row, int col) const
{
return m_functor.packetOp(m_lhs.template packet<LoadMode>(row, col), m_rhs.template packet<LoadMode>(row, col));
}
EIGEN_STRONG_INLINE const Scalar coeff(int index) const
{
return m_functor(m_lhs.coeff(index), m_rhs.coeff(index));
}
template<int LoadMode>
EIGEN_STRONG_INLINE PacketScalar packet(int index) const
{
return m_functor.packetOp(m_lhs.template packet<LoadMode>(index), m_rhs.template packet<LoadMode>(index));
}
protected:
const LhsNested m_lhs;
const RhsNested m_rhs;
const BinaryOp m_functor;
};
/**\returns an expression of the difference of \c *this and \a other
*
* \note If you want to substract a given scalar from all coefficients, see Cwise::operator-().
*
* \sa class CwiseBinaryOp, MatrixBase::operator-=(), Cwise::operator-()
*/
template<typename Derived>
template<typename OtherDerived>
EIGEN_STRONG_INLINE const CwiseBinaryOp<ei_scalar_difference_op<typename ei_traits<Derived>::Scalar>,
Derived, OtherDerived>
MatrixBase<Derived>::operator-(const MatrixBase<OtherDerived> &other) const
{
return CwiseBinaryOp<ei_scalar_difference_op<Scalar>,
Derived, OtherDerived>(derived(), other.derived());
}
/** replaces \c *this by \c *this - \a other.
*
* \returns a reference to \c *this
*/
template<typename Derived>
template<typename OtherDerived>
EIGEN_STRONG_INLINE Derived &
MatrixBase<Derived>::operator-=(const MatrixBase<OtherDerived> &other)
{
return *this = *this - other;
}
/** \relates MatrixBase
*
* \returns an expression of the sum of \c *this and \a other
*
* \note If you want to add a given scalar to all coefficients, see Cwise::operator+().
*
* \sa class CwiseBinaryOp, MatrixBase::operator+=(), Cwise::operator+()
*/
template<typename Derived>
template<typename OtherDerived>
EIGEN_STRONG_INLINE const CwiseBinaryOp<ei_scalar_sum_op<typename ei_traits<Derived>::Scalar>, Derived, OtherDerived>
MatrixBase<Derived>::operator+(const MatrixBase<OtherDerived> &other) const
{
return CwiseBinaryOp<ei_scalar_sum_op<Scalar>, Derived, OtherDerived>(derived(), other.derived());
}
/** replaces \c *this by \c *this + \a other.
*
* \returns a reference to \c *this
*/
template<typename Derived>
template<typename OtherDerived>
EIGEN_STRONG_INLINE Derived &
MatrixBase<Derived>::operator+=(const MatrixBase<OtherDerived>& other)
{
return *this = *this + other;
}
/** \returns an expression of the Schur product (coefficient wise product) of *this and \a other
*
* Example: \include Cwise_product.cpp
* Output: \verbinclude Cwise_product.out
*
* \sa class CwiseBinaryOp, operator/(), square()
*/
template<typename ExpressionType>
template<typename OtherDerived>
EIGEN_STRONG_INLINE const EIGEN_CWISE_PRODUCT_RETURN_TYPE
Cwise<ExpressionType>::operator*(const MatrixBase<OtherDerived> &other) const
{
return EIGEN_CWISE_PRODUCT_RETURN_TYPE(_expression(), other.derived());
}
/** \returns an expression of the coefficient-wise quotient of *this and \a other
*
* Example: \include Cwise_quotient.cpp
* Output: \verbinclude Cwise_quotient.out
*
* \sa class CwiseBinaryOp, operator*(), inverse()
*/
template<typename ExpressionType>
template<typename OtherDerived>
EIGEN_STRONG_INLINE const EIGEN_CWISE_BINOP_RETURN_TYPE(ei_scalar_quotient_op)
Cwise<ExpressionType>::operator/(const MatrixBase<OtherDerived> &other) const
{
return EIGEN_CWISE_BINOP_RETURN_TYPE(ei_scalar_quotient_op)(_expression(), other.derived());
}
/** Replaces this expression by its coefficient-wise product with \a other.
*
* Example: \include Cwise_times_equal.cpp
* Output: \verbinclude Cwise_times_equal.out
*
* \sa operator*(), operator/=()
*/
template<typename ExpressionType>
template<typename OtherDerived>
inline ExpressionType& Cwise<ExpressionType>::operator*=(const MatrixBase<OtherDerived> &other)
{
return m_matrix.const_cast_derived() = *this * other;
}
/** Replaces this expression by its coefficient-wise quotient by \a other.
*
* Example: \include Cwise_slash_equal.cpp
* Output: \verbinclude Cwise_slash_equal.out
*
* \sa operator/(), operator*=()
*/
template<typename ExpressionType>
template<typename OtherDerived>
inline ExpressionType& Cwise<ExpressionType>::operator/=(const MatrixBase<OtherDerived> &other)
{
return m_matrix.const_cast_derived() = *this / other;
}
/** \returns an expression of the coefficient-wise min of *this and \a other
*
* Example: \include Cwise_min.cpp
* Output: \verbinclude Cwise_min.out
*
* \sa class CwiseBinaryOp
*/
template<typename ExpressionType>
template<typename OtherDerived>
EIGEN_STRONG_INLINE const EIGEN_CWISE_BINOP_RETURN_TYPE(ei_scalar_min_op)
Cwise<ExpressionType>::min(const MatrixBase<OtherDerived> &other) const
{
return EIGEN_CWISE_BINOP_RETURN_TYPE(ei_scalar_min_op)(_expression(), other.derived());
}
/** \returns an expression of the coefficient-wise max of *this and \a other
*
* Example: \include Cwise_max.cpp
* Output: \verbinclude Cwise_max.out
*
* \sa class CwiseBinaryOp
*/
template<typename ExpressionType>
template<typename OtherDerived>
EIGEN_STRONG_INLINE const EIGEN_CWISE_BINOP_RETURN_TYPE(ei_scalar_max_op)
Cwise<ExpressionType>::max(const MatrixBase<OtherDerived> &other) const
{
return EIGEN_CWISE_BINOP_RETURN_TYPE(ei_scalar_max_op)(_expression(), other.derived());
}
/** \returns an expression of a custom coefficient-wise operator \a func of *this and \a other
*
* The template parameter \a CustomBinaryOp is the type of the functor
* of the custom operator (see class CwiseBinaryOp for an example)
*
* \addexample CustomCwiseBinaryFunctors \label How to use custom coeff wise binary functors
*
* Here is an example illustrating the use of custom functors:
* \include class_CwiseBinaryOp.cpp
* Output: \verbinclude class_CwiseBinaryOp.out
*
* \sa class CwiseBinaryOp, MatrixBase::operator+, MatrixBase::operator-, Cwise::operator*, Cwise::operator/
*/
template<typename Derived>
template<typename CustomBinaryOp, typename OtherDerived>
EIGEN_STRONG_INLINE const CwiseBinaryOp<CustomBinaryOp, Derived, OtherDerived>
MatrixBase<Derived>::binaryExpr(const MatrixBase<OtherDerived> &other, const CustomBinaryOp& func) const
{
return CwiseBinaryOp<CustomBinaryOp, Derived, OtherDerived>(derived(), other.derived(), func);
}
#endif // EIGEN_CWISE_BINARY_OP_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_CWISE_NULLARY_OP_H
#define EIGEN_CWISE_NULLARY_OP_H
/** \class CwiseNullaryOp
*
* \brief Generic expression of a matrix where all coefficients are defined by a functor
*
* \param NullaryOp template functor implementing the operator
*
* This class represents an expression of a generic nullary operator.
* It is the return type of the Ones(), Zero(), Constant(), Identity() and Random() functions,
* and most of the time this is the only way it is used.
*
* However, if you want to write a function returning such an expression, you
* will need to use this class.
*
* \sa class CwiseUnaryOp, class CwiseBinaryOp, MatrixBase::NullaryExpr()
*/
template<typename NullaryOp, typename MatrixType>
struct ei_traits<CwiseNullaryOp<NullaryOp, MatrixType> > : ei_traits<MatrixType>
{
enum {
Flags = (ei_traits<MatrixType>::Flags
& ( HereditaryBits
| (ei_functor_has_linear_access<NullaryOp>::ret ? LinearAccessBit : 0)
| (ei_functor_traits<NullaryOp>::PacketAccess ? PacketAccessBit : 0)))
| (ei_functor_traits<NullaryOp>::IsRepeatable ? 0 : EvalBeforeNestingBit),
CoeffReadCost = ei_functor_traits<NullaryOp>::Cost
};
};
template<typename NullaryOp, typename MatrixType>
class CwiseNullaryOp : ei_no_assignment_operator,
public MatrixBase<CwiseNullaryOp<NullaryOp, MatrixType> >
{
public:
EIGEN_GENERIC_PUBLIC_INTERFACE(CwiseNullaryOp)
CwiseNullaryOp(int rows, int cols, const NullaryOp& func = NullaryOp())
: m_rows(rows), m_cols(cols), m_functor(func)
{
ei_assert(rows > 0
&& (RowsAtCompileTime == Dynamic || RowsAtCompileTime == rows)
&& cols > 0
&& (ColsAtCompileTime == Dynamic || ColsAtCompileTime == cols));
}
EIGEN_STRONG_INLINE int rows() const { return m_rows.value(); }
EIGEN_STRONG_INLINE int cols() const { return m_cols.value(); }
EIGEN_STRONG_INLINE const Scalar coeff(int rows, int cols) const
{
return m_functor(rows, cols);
}
template<int LoadMode>
EIGEN_STRONG_INLINE PacketScalar packet(int, int) const
{
return m_functor.packetOp();
}
EIGEN_STRONG_INLINE const Scalar coeff(int index) const
{
if(RowsAtCompileTime == 1)
return m_functor(0, index);
else
return m_functor(index, 0);
}
template<int LoadMode>
EIGEN_STRONG_INLINE PacketScalar packet(int) const
{
return m_functor.packetOp();
}
protected:
const ei_int_if_dynamic<RowsAtCompileTime> m_rows;
const ei_int_if_dynamic<ColsAtCompileTime> m_cols;
const NullaryOp m_functor;
};
/** \returns an expression of a matrix defined by a custom functor \a func
*
* The parameters \a rows and \a cols are the number of rows and of columns of
* the returned matrix. Must be compatible with this MatrixBase type.
*
* This variant is meant to be used for dynamic-size matrix types. For fixed-size types,
* it is redundant to pass \a rows and \a cols as arguments, so Zero() should be used
* instead.
*
* The template parameter \a CustomNullaryOp is the type of the functor.
*
* \sa class CwiseNullaryOp
*/
template<typename Derived>
template<typename CustomNullaryOp>
EIGEN_STRONG_INLINE const CwiseNullaryOp<CustomNullaryOp, Derived>
MatrixBase<Derived>::NullaryExpr(int rows, int cols, const CustomNullaryOp& func)
{
return CwiseNullaryOp<CustomNullaryOp, Derived>(rows, cols, func);
}
/** \returns an expression of a matrix defined by a custom functor \a func
*
* The parameter \a size is the size of the returned vector.
* Must be compatible with this MatrixBase type.
*
* \only_for_vectors
*
* This variant is meant to be used for dynamic-size vector types. For fixed-size types,
* it is redundant to pass \a size as argument, so Zero() should be used
* instead.
*
* The template parameter \a CustomNullaryOp is the type of the functor.
*
* \sa class CwiseNullaryOp
*/
template<typename Derived>
template<typename CustomNullaryOp>
EIGEN_STRONG_INLINE const CwiseNullaryOp<CustomNullaryOp, Derived>
MatrixBase<Derived>::NullaryExpr(int size, const CustomNullaryOp& func)
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Derived)
ei_assert(IsVectorAtCompileTime);
if(RowsAtCompileTime == 1) return CwiseNullaryOp<CustomNullaryOp, Derived>(1, size, func);
else return CwiseNullaryOp<CustomNullaryOp, Derived>(size, 1, func);
}
/** \returns an expression of a matrix defined by a custom functor \a func
*
* This variant is only for fixed-size MatrixBase types. For dynamic-size types, you
* need to use the variants taking size arguments.
*
* The template parameter \a CustomNullaryOp is the type of the functor.
*
* \sa class CwiseNullaryOp
*/
template<typename Derived>
template<typename CustomNullaryOp>
EIGEN_STRONG_INLINE const CwiseNullaryOp<CustomNullaryOp, Derived>
MatrixBase<Derived>::NullaryExpr(const CustomNullaryOp& func)
{
return CwiseNullaryOp<CustomNullaryOp, Derived>(RowsAtCompileTime, ColsAtCompileTime, func);
}
/** \returns an expression of a constant matrix of value \a value
*
* The parameters \a rows and \a cols are the number of rows and of columns of
* the returned matrix. Must be compatible with this MatrixBase type.
*
* This variant is meant to be used for dynamic-size matrix types. For fixed-size types,
* it is redundant to pass \a rows and \a cols as arguments, so Zero() should be used
* instead.
*
* The template parameter \a CustomNullaryOp is the type of the functor.
*
* \sa class CwiseNullaryOp
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename MatrixBase<Derived>::ConstantReturnType
MatrixBase<Derived>::Constant(int rows, int cols, const Scalar& value)
{
return NullaryExpr(rows, cols, ei_scalar_constant_op<Scalar>(value));
}
/** \returns an expression of a constant matrix of value \a value
*
* The parameter \a size is the size of the returned vector.
* Must be compatible with this MatrixBase type.
*
* \only_for_vectors
*
* This variant is meant to be used for dynamic-size vector types. For fixed-size types,
* it is redundant to pass \a size as argument, so Zero() should be used
* instead.
*
* The template parameter \a CustomNullaryOp is the type of the functor.
*
* \sa class CwiseNullaryOp
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename MatrixBase<Derived>::ConstantReturnType
MatrixBase<Derived>::Constant(int size, const Scalar& value)
{
return NullaryExpr(size, ei_scalar_constant_op<Scalar>(value));
}
/** \returns an expression of a constant matrix of value \a value
*
* This variant is only for fixed-size MatrixBase types. For dynamic-size types, you
* need to use the variants taking size arguments.
*
* The template parameter \a CustomNullaryOp is the type of the functor.
*
* \sa class CwiseNullaryOp
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename MatrixBase<Derived>::ConstantReturnType
MatrixBase<Derived>::Constant(const Scalar& value)
{
EIGEN_STATIC_ASSERT_FIXED_SIZE(Derived)
return NullaryExpr(RowsAtCompileTime, ColsAtCompileTime, ei_scalar_constant_op<Scalar>(value));
}
/** \returns true if all coefficients in this matrix are approximately equal to \a value, to within precision \a prec */
template<typename Derived>
bool MatrixBase<Derived>::isApproxToConstant
(const Scalar& value, RealScalar prec) const
{
for(int j = 0; j < cols(); ++j)
for(int i = 0; i < rows(); ++i)
if(!ei_isApprox(coeff(i, j), value, prec))
return false;
return true;
}
/** This is just an alias for isApproxToConstant().
*
* \returns true if all coefficients in this matrix are approximately equal to \a value, to within precision \a prec */
template<typename Derived>
bool MatrixBase<Derived>::isConstant
(const Scalar& value, RealScalar prec) const
{
return isApproxToConstant(value, prec);
}
/** Alias for setConstant(): sets all coefficients in this expression to \a value.
*
* \sa setConstant(), Constant(), class CwiseNullaryOp
*/
template<typename Derived>
EIGEN_STRONG_INLINE void MatrixBase<Derived>::fill(const Scalar& value)
{
setConstant(value);
}
/** Sets all coefficients in this expression to \a value.
*
* \sa fill(), setConstant(int,const Scalar&), setConstant(int,int,const Scalar&), setZero(), setOnes(), Constant(), class CwiseNullaryOp, setZero(), setOnes()
*/
template<typename Derived>
EIGEN_STRONG_INLINE Derived& MatrixBase<Derived>::setConstant(const Scalar& value)
{
return derived() = Constant(rows(), cols(), value);
}
/** Resizes to the given \a size, and sets all coefficients in this expression to the given \a value.
*
* \only_for_vectors
*
* Example: \include Matrix_set_int.cpp
* Output: \verbinclude Matrix_setConstant_int.out
*
* \sa MatrixBase::setConstant(const Scalar&), setConstant(int,int,const Scalar&), class CwiseNullaryOp, MatrixBase::Constant(const Scalar&)
*/
template<typename _Scalar, int _Rows, int _Cols, int _Options, int _MaxRows, int _MaxCols>
EIGEN_STRONG_INLINE Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols>&
Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols>::setConstant(int size, const Scalar& value)
{
resize(size);
return setConstant(value);
}
/** Resizes to the given size, and sets all coefficients in this expression to the given \a value.
*
* \param rows the new number of rows
* \param cols the new number of columns
*
* Example: \include Matrix_setConstant_int_int.cpp
* Output: \verbinclude Matrix_setConstant_int_int.out
*
* \sa MatrixBase::setConstant(const Scalar&), setConstant(int,const Scalar&), class CwiseNullaryOp, MatrixBase::Constant(const Scalar&)
*/
template<typename _Scalar, int _Rows, int _Cols, int _Options, int _MaxRows, int _MaxCols>
EIGEN_STRONG_INLINE Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols>&
Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols>::setConstant(int rows, int cols, const Scalar& value)
{
resize(rows, cols);
return setConstant(value);
}
// zero:
/** \returns an expression of a zero matrix.
*
* The parameters \a rows and \a cols are the number of rows and of columns of
* the returned matrix. Must be compatible with this MatrixBase type.
*
* This variant is meant to be used for dynamic-size matrix types. For fixed-size types,
* it is redundant to pass \a rows and \a cols as arguments, so Zero() should be used
* instead.
*
* \addexample Zero \label How to take get a zero matrix
*
* Example: \include MatrixBase_zero_int_int.cpp
* Output: \verbinclude MatrixBase_zero_int_int.out
*
* \sa Zero(), Zero(int)
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename MatrixBase<Derived>::ConstantReturnType
MatrixBase<Derived>::Zero(int rows, int cols)
{
return Constant(rows, cols, Scalar(0));
}
/** \returns an expression of a zero vector.
*
* The parameter \a size is the size of the returned vector.
* Must be compatible with this MatrixBase type.
*
* \only_for_vectors
*
* This variant is meant to be used for dynamic-size vector types. For fixed-size types,
* it is redundant to pass \a size as argument, so Zero() should be used
* instead.
*
* Example: \include MatrixBase_zero_int.cpp
* Output: \verbinclude MatrixBase_zero_int.out
*
* \sa Zero(), Zero(int,int)
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename MatrixBase<Derived>::ConstantReturnType
MatrixBase<Derived>::Zero(int size)
{
return Constant(size, Scalar(0));
}
/** \returns an expression of a fixed-size zero matrix or vector.
*
* This variant is only for fixed-size MatrixBase types. For dynamic-size types, you
* need to use the variants taking size arguments.
*
* Example: \include MatrixBase_zero.cpp
* Output: \verbinclude MatrixBase_zero.out
*
* \sa Zero(int), Zero(int,int)
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename MatrixBase<Derived>::ConstantReturnType
MatrixBase<Derived>::Zero()
{
return Constant(Scalar(0));
}
/** \returns true if *this is approximately equal to the zero matrix,
* within the precision given by \a prec.
*
* Example: \include MatrixBase_isZero.cpp
* Output: \verbinclude MatrixBase_isZero.out
*
* \sa class CwiseNullaryOp, Zero()
*/
template<typename Derived>
bool MatrixBase<Derived>::isZero(RealScalar prec) const
{
for(int j = 0; j < cols(); ++j)
for(int i = 0; i < rows(); ++i)
if(!ei_isMuchSmallerThan(coeff(i, j), static_cast<Scalar>(1), prec))
return false;
return true;
}
/** Sets all coefficients in this expression to zero.
*
* Example: \include MatrixBase_setZero.cpp
* Output: \verbinclude MatrixBase_setZero.out
*
* \sa class CwiseNullaryOp, Zero()
*/
template<typename Derived>
EIGEN_STRONG_INLINE Derived& MatrixBase<Derived>::setZero()
{
return setConstant(Scalar(0));
}
/** Resizes to the given \a size, and sets all coefficients in this expression to zero.
*
* \only_for_vectors
*
* Example: \include Matrix_setZero_int.cpp
* Output: \verbinclude Matrix_setZero_int.out
*
* \sa MatrixBase::setZero(), setZero(int,int), class CwiseNullaryOp, MatrixBase::Zero()
*/
template<typename _Scalar, int _Rows, int _Cols, int _Options, int _MaxRows, int _MaxCols>
EIGEN_STRONG_INLINE Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols>&
Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols>::setZero(int size)
{
resize(size);
return setConstant(Scalar(0));
}
/** Resizes to the given size, and sets all coefficients in this expression to zero.
*
* \param rows the new number of rows
* \param cols the new number of columns
*
* Example: \include Matrix_setZero_int_int.cpp
* Output: \verbinclude Matrix_setZero_int_int.out
*
* \sa MatrixBase::setZero(), setZero(int), class CwiseNullaryOp, MatrixBase::Zero()
*/
template<typename _Scalar, int _Rows, int _Cols, int _Options, int _MaxRows, int _MaxCols>
EIGEN_STRONG_INLINE Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols>&
Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols>::setZero(int rows, int cols)
{
resize(rows, cols);
return setConstant(Scalar(0));
}
// ones:
/** \returns an expression of a matrix where all coefficients equal one.
*
* The parameters \a rows and \a cols are the number of rows and of columns of
* the returned matrix. Must be compatible with this MatrixBase type.
*
* This variant is meant to be used for dynamic-size matrix types. For fixed-size types,
* it is redundant to pass \a rows and \a cols as arguments, so Ones() should be used
* instead.
*
* \addexample One \label How to get a matrix with all coefficients equal one
*
* Example: \include MatrixBase_ones_int_int.cpp
* Output: \verbinclude MatrixBase_ones_int_int.out
*
* \sa Ones(), Ones(int), isOnes(), class Ones
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename MatrixBase<Derived>::ConstantReturnType
MatrixBase<Derived>::Ones(int rows, int cols)
{
return Constant(rows, cols, Scalar(1));
}
/** \returns an expression of a vector where all coefficients equal one.
*
* The parameter \a size is the size of the returned vector.
* Must be compatible with this MatrixBase type.
*
* \only_for_vectors
*
* This variant is meant to be used for dynamic-size vector types. For fixed-size types,
* it is redundant to pass \a size as argument, so Ones() should be used
* instead.
*
* Example: \include MatrixBase_ones_int.cpp
* Output: \verbinclude MatrixBase_ones_int.out
*
* \sa Ones(), Ones(int,int), isOnes(), class Ones
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename MatrixBase<Derived>::ConstantReturnType
MatrixBase<Derived>::Ones(int size)
{
return Constant(size, Scalar(1));
}
/** \returns an expression of a fixed-size matrix or vector where all coefficients equal one.
*
* This variant is only for fixed-size MatrixBase types. For dynamic-size types, you
* need to use the variants taking size arguments.
*
* Example: \include MatrixBase_ones.cpp
* Output: \verbinclude MatrixBase_ones.out
*
* \sa Ones(int), Ones(int,int), isOnes(), class Ones
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename MatrixBase<Derived>::ConstantReturnType
MatrixBase<Derived>::Ones()
{
return Constant(Scalar(1));
}
/** \returns true if *this is approximately equal to the matrix where all coefficients
* are equal to 1, within the precision given by \a prec.
*
* Example: \include MatrixBase_isOnes.cpp
* Output: \verbinclude MatrixBase_isOnes.out
*
* \sa class CwiseNullaryOp, Ones()
*/
template<typename Derived>
bool MatrixBase<Derived>::isOnes
(RealScalar prec) const
{
return isApproxToConstant(Scalar(1), prec);
}
/** Sets all coefficients in this expression to one.
*
* Example: \include MatrixBase_setOnes.cpp
* Output: \verbinclude MatrixBase_setOnes.out
*
* \sa class CwiseNullaryOp, Ones()
*/
template<typename Derived>
EIGEN_STRONG_INLINE Derived& MatrixBase<Derived>::setOnes()
{
return setConstant(Scalar(1));
}
/** Resizes to the given \a size, and sets all coefficients in this expression to one.
*
* \only_for_vectors
*
* Example: \include Matrix_setOnes_int.cpp
* Output: \verbinclude Matrix_setOnes_int.out
*
* \sa MatrixBase::setOnes(), setOnes(int,int), class CwiseNullaryOp, MatrixBase::Ones()
*/
template<typename _Scalar, int _Rows, int _Cols, int _Options, int _MaxRows, int _MaxCols>
EIGEN_STRONG_INLINE Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols>&
Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols>::setOnes(int size)
{
resize(size);
return setConstant(Scalar(1));
}
/** Resizes to the given size, and sets all coefficients in this expression to one.
*
* \param rows the new number of rows
* \param cols the new number of columns
*
* Example: \include Matrix_setOnes_int_int.cpp
* Output: \verbinclude Matrix_setOnes_int_int.out
*
* \sa MatrixBase::setOnes(), setOnes(int), class CwiseNullaryOp, MatrixBase::Ones()
*/
template<typename _Scalar, int _Rows, int _Cols, int _Options, int _MaxRows, int _MaxCols>
EIGEN_STRONG_INLINE Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols>&
Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols>::setOnes(int rows, int cols)
{
resize(rows, cols);
return setConstant(Scalar(1));
}
// Identity:
/** \returns an expression of the identity matrix (not necessarily square).
*
* The parameters \a rows and \a cols are the number of rows and of columns of
* the returned matrix. Must be compatible with this MatrixBase type.
*
* This variant is meant to be used for dynamic-size matrix types. For fixed-size types,
* it is redundant to pass \a rows and \a cols as arguments, so Identity() should be used
* instead.
*
* \addexample Identity \label How to get an identity matrix
*
* Example: \include MatrixBase_identity_int_int.cpp
* Output: \verbinclude MatrixBase_identity_int_int.out
*
* \sa Identity(), setIdentity(), isIdentity()
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename MatrixBase<Derived>::IdentityReturnType
MatrixBase<Derived>::Identity(int rows, int cols)
{
return NullaryExpr(rows, cols, ei_scalar_identity_op<Scalar>());
}
/** \returns an expression of the identity matrix (not necessarily square).
*
* This variant is only for fixed-size MatrixBase types. For dynamic-size types, you
* need to use the variant taking size arguments.
*
* Example: \include MatrixBase_identity.cpp
* Output: \verbinclude MatrixBase_identity.out
*
* \sa Identity(int,int), setIdentity(), isIdentity()
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename MatrixBase<Derived>::IdentityReturnType
MatrixBase<Derived>::Identity()
{
EIGEN_STATIC_ASSERT_FIXED_SIZE(Derived)
return NullaryExpr(RowsAtCompileTime, ColsAtCompileTime, ei_scalar_identity_op<Scalar>());
}
/** \returns true if *this is approximately equal to the identity matrix
* (not necessarily square),
* within the precision given by \a prec.
*
* Example: \include MatrixBase_isIdentity.cpp
* Output: \verbinclude MatrixBase_isIdentity.out
*
* \sa class CwiseNullaryOp, Identity(), Identity(int,int), setIdentity()
*/
template<typename Derived>
bool MatrixBase<Derived>::isIdentity
(RealScalar prec) const
{
for(int j = 0; j < cols(); ++j)
{
for(int i = 0; i < rows(); ++i)
{
if(i == j)
{
if(!ei_isApprox(coeff(i, j), static_cast<Scalar>(1), prec))
return false;
}
else
{
if(!ei_isMuchSmallerThan(coeff(i, j), static_cast<RealScalar>(1), prec))
return false;
}
}
}
return true;
}
template<typename Derived, bool Big = (Derived::SizeAtCompileTime>=16)>
struct ei_setIdentity_impl
{
static EIGEN_STRONG_INLINE Derived& run(Derived& m)
{
return m = Derived::Identity(m.rows(), m.cols());
}
};
template<typename Derived>
struct ei_setIdentity_impl<Derived, true>
{
static EIGEN_STRONG_INLINE Derived& run(Derived& m)
{
m.setZero();
const int size = std::min(m.rows(), m.cols());
for(int i = 0; i < size; ++i) m.coeffRef(i,i) = typename Derived::Scalar(1);
return m;
}
};
/** Writes the identity expression (not necessarily square) into *this.
*
* Example: \include MatrixBase_setIdentity.cpp
* Output: \verbinclude MatrixBase_setIdentity.out
*
* \sa class CwiseNullaryOp, Identity(), Identity(int,int), isIdentity()
*/
template<typename Derived>
EIGEN_STRONG_INLINE Derived& MatrixBase<Derived>::setIdentity()
{
return ei_setIdentity_impl<Derived>::run(derived());
}
/** Resizes to the given size, and writes the identity expression (not necessarily square) into *this.
*
* \param rows the new number of rows
* \param cols the new number of columns
*
* Example: \include Matrix_setIdentity_int_int.cpp
* Output: \verbinclude Matrix_setIdentity_int_int.out
*
* \sa MatrixBase::setIdentity(), class CwiseNullaryOp, MatrixBase::Identity()
*/
template<typename _Scalar, int _Rows, int _Cols, int _Options, int _MaxRows, int _MaxCols>
EIGEN_STRONG_INLINE Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols>&
Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols>::setIdentity(int rows, int cols)
{
resize(rows, cols);
return setIdentity();
}
/** \returns an expression of the i-th unit (basis) vector.
*
* \only_for_vectors
*
* \sa MatrixBase::Unit(int), MatrixBase::UnitX(), MatrixBase::UnitY(), MatrixBase::UnitZ(), MatrixBase::UnitW()
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename MatrixBase<Derived>::BasisReturnType MatrixBase<Derived>::Unit(int size, int i)
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Derived)
return BasisReturnType(SquareMatrixType::Identity(size,size), i);
}
/** \returns an expression of the i-th unit (basis) vector.
*
* \only_for_vectors
*
* This variant is for fixed-size vector only.
*
* \sa MatrixBase::Unit(int,int), MatrixBase::UnitX(), MatrixBase::UnitY(), MatrixBase::UnitZ(), MatrixBase::UnitW()
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename MatrixBase<Derived>::BasisReturnType MatrixBase<Derived>::Unit(int i)
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Derived)
return BasisReturnType(SquareMatrixType::Identity(),i);
}
/** \returns an expression of the X axis unit vector (1{,0}^*)
*
* \only_for_vectors
*
* \sa MatrixBase::Unit(int,int), MatrixBase::Unit(int), MatrixBase::UnitY(), MatrixBase::UnitZ(), MatrixBase::UnitW()
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename MatrixBase<Derived>::BasisReturnType MatrixBase<Derived>::UnitX()
{ return Derived::Unit(0); }
/** \returns an expression of the Y axis unit vector (0,1{,0}^*)
*
* \only_for_vectors
*
* \sa MatrixBase::Unit(int,int), MatrixBase::Unit(int), MatrixBase::UnitY(), MatrixBase::UnitZ(), MatrixBase::UnitW()
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename MatrixBase<Derived>::BasisReturnType MatrixBase<Derived>::UnitY()
{ return Derived::Unit(1); }
/** \returns an expression of the Z axis unit vector (0,0,1{,0}^*)
*
* \only_for_vectors
*
* \sa MatrixBase::Unit(int,int), MatrixBase::Unit(int), MatrixBase::UnitY(), MatrixBase::UnitZ(), MatrixBase::UnitW()
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename MatrixBase<Derived>::BasisReturnType MatrixBase<Derived>::UnitZ()
{ return Derived::Unit(2); }
/** \returns an expression of the W axis unit vector (0,0,0,1)
*
* \only_for_vectors
*
* \sa MatrixBase::Unit(int,int), MatrixBase::Unit(int), MatrixBase::UnitY(), MatrixBase::UnitZ(), MatrixBase::UnitW()
*/
template<typename Derived>
EIGEN_STRONG_INLINE const typename MatrixBase<Derived>::BasisReturnType MatrixBase<Derived>::UnitW()
{ return Derived::Unit(3); }
#endif // EIGEN_CWISE_NULLARY_OP_H

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@@ -0,0 +1,229 @@
// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_CWISE_UNARY_OP_H
#define EIGEN_CWISE_UNARY_OP_H
/** \class CwiseUnaryOp
*
* \brief Generic expression of a coefficient-wise unary operator of a matrix or a vector
*
* \param UnaryOp template functor implementing the operator
* \param MatrixType the type of the matrix we are applying the unary operator
*
* This class represents an expression of a generic unary operator of a matrix or a vector.
* It is the return type of the unary operator-, of a matrix or a vector, and most
* of the time this is the only way it is used.
*
* \sa MatrixBase::unaryExpr(const CustomUnaryOp &) const, class CwiseBinaryOp, class CwiseNullaryOp
*/
template<typename UnaryOp, typename MatrixType>
struct ei_traits<CwiseUnaryOp<UnaryOp, MatrixType> >
: ei_traits<MatrixType>
{
typedef typename ei_result_of<
UnaryOp(typename MatrixType::Scalar)
>::type Scalar;
typedef typename MatrixType::Nested MatrixTypeNested;
typedef typename ei_unref<MatrixTypeNested>::type _MatrixTypeNested;
enum {
Flags = (_MatrixTypeNested::Flags & (
HereditaryBits | LinearAccessBit | AlignedBit
| (ei_functor_traits<UnaryOp>::PacketAccess ? PacketAccessBit : 0))),
CoeffReadCost = _MatrixTypeNested::CoeffReadCost + ei_functor_traits<UnaryOp>::Cost
};
};
template<typename UnaryOp, typename MatrixType>
class CwiseUnaryOp : ei_no_assignment_operator,
public MatrixBase<CwiseUnaryOp<UnaryOp, MatrixType> >
{
public:
EIGEN_GENERIC_PUBLIC_INTERFACE(CwiseUnaryOp)
inline CwiseUnaryOp(const MatrixType& mat, const UnaryOp& func = UnaryOp())
: m_matrix(mat), m_functor(func) {}
EIGEN_STRONG_INLINE int rows() const { return m_matrix.rows(); }
EIGEN_STRONG_INLINE int cols() const { return m_matrix.cols(); }
EIGEN_STRONG_INLINE const Scalar coeff(int row, int col) const
{
return m_functor(m_matrix.coeff(row, col));
}
template<int LoadMode>
EIGEN_STRONG_INLINE PacketScalar packet(int row, int col) const
{
return m_functor.packetOp(m_matrix.template packet<LoadMode>(row, col));
}
EIGEN_STRONG_INLINE const Scalar coeff(int index) const
{
return m_functor(m_matrix.coeff(index));
}
template<int LoadMode>
EIGEN_STRONG_INLINE PacketScalar packet(int index) const
{
return m_functor.packetOp(m_matrix.template packet<LoadMode>(index));
}
protected:
const typename MatrixType::Nested m_matrix;
const UnaryOp m_functor;
};
/** \returns an expression of a custom coefficient-wise unary operator \a func of *this
*
* The template parameter \a CustomUnaryOp is the type of the functor
* of the custom unary operator.
*
* \addexample CustomCwiseUnaryFunctors \label How to use custom coeff wise unary functors
*
* Example:
* \include class_CwiseUnaryOp.cpp
* Output: \verbinclude class_CwiseUnaryOp.out
*
* \sa class CwiseUnaryOp, class CwiseBinarOp, MatrixBase::operator-, Cwise::abs
*/
template<typename Derived>
template<typename CustomUnaryOp>
EIGEN_STRONG_INLINE const CwiseUnaryOp<CustomUnaryOp, Derived>
MatrixBase<Derived>::unaryExpr(const CustomUnaryOp& func) const
{
return CwiseUnaryOp<CustomUnaryOp, Derived>(derived(), func);
}
/** \returns an expression of the opposite of \c *this
*/
template<typename Derived>
EIGEN_STRONG_INLINE const CwiseUnaryOp<ei_scalar_opposite_op<typename ei_traits<Derived>::Scalar>,Derived>
MatrixBase<Derived>::operator-() const
{
return derived();
}
/** \returns an expression of the coefficient-wise absolute value of \c *this
*
* Example: \include Cwise_abs.cpp
* Output: \verbinclude Cwise_abs.out
*
* \sa abs2()
*/
template<typename ExpressionType>
EIGEN_STRONG_INLINE const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_abs_op)
Cwise<ExpressionType>::abs() const
{
return _expression();
}
/** \returns an expression of the coefficient-wise squared absolute value of \c *this
*
* Example: \include Cwise_abs2.cpp
* Output: \verbinclude Cwise_abs2.out
*
* \sa abs(), square()
*/
template<typename ExpressionType>
EIGEN_STRONG_INLINE const EIGEN_CWISE_UNOP_RETURN_TYPE(ei_scalar_abs2_op)
Cwise<ExpressionType>::abs2() const
{
return _expression();
}
/** \returns an expression of the complex conjugate of \c *this.
*
* \sa adjoint() */
template<typename Derived>
EIGEN_STRONG_INLINE typename MatrixBase<Derived>::ConjugateReturnType
MatrixBase<Derived>::conjugate() const
{
return ConjugateReturnType(derived());
}
/** \returns an expression of the real part of \c *this.
*
* \sa imag() */
template<typename Derived>
EIGEN_STRONG_INLINE const typename MatrixBase<Derived>::RealReturnType
MatrixBase<Derived>::real() const { return derived(); }
/** \returns an expression of the imaginary part of \c *this.
*
* \sa real() */
template<typename Derived>
EIGEN_STRONG_INLINE const typename MatrixBase<Derived>::ImagReturnType
MatrixBase<Derived>::imag() const { return derived(); }
/** \returns an expression of *this with the \a Scalar type casted to
* \a NewScalar.
*
* The template parameter \a NewScalar is the type we are casting the scalars to.
*
* \sa class CwiseUnaryOp
*/
template<typename Derived>
template<typename NewType>
EIGEN_STRONG_INLINE const CwiseUnaryOp<ei_scalar_cast_op<typename ei_traits<Derived>::Scalar, NewType>, Derived>
MatrixBase<Derived>::cast() const
{
return derived();
}
/** \relates MatrixBase */
template<typename Derived>
EIGEN_STRONG_INLINE const typename MatrixBase<Derived>::ScalarMultipleReturnType
MatrixBase<Derived>::operator*(const Scalar& scalar) const
{
return CwiseUnaryOp<ei_scalar_multiple_op<Scalar>, Derived>
(derived(), ei_scalar_multiple_op<Scalar>(scalar));
}
/** \relates MatrixBase */
template<typename Derived>
EIGEN_STRONG_INLINE const CwiseUnaryOp<ei_scalar_quotient1_op<typename ei_traits<Derived>::Scalar>, Derived>
MatrixBase<Derived>::operator/(const Scalar& scalar) const
{
return CwiseUnaryOp<ei_scalar_quotient1_op<Scalar>, Derived>
(derived(), ei_scalar_quotient1_op<Scalar>(scalar));
}
template<typename Derived>
EIGEN_STRONG_INLINE Derived&
MatrixBase<Derived>::operator*=(const Scalar& other)
{
return *this = *this * other;
}
template<typename Derived>
EIGEN_STRONG_INLINE Derived&
MatrixBase<Derived>::operator/=(const Scalar& other)
{
return *this = *this / other;
}
#endif // EIGEN_CWISE_UNARY_OP_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_DIAGONALCOEFFS_H
#define EIGEN_DIAGONALCOEFFS_H
/** \class DiagonalCoeffs
*
* \brief Expression of the main diagonal of a matrix
*
* \param MatrixType the type of the object in which we are taking the main diagonal
*
* The matrix is not required to be square.
*
* This class represents an expression of the main diagonal of a square matrix.
* It is the return type of MatrixBase::diagonal() and most of the time this is
* the only way it is used.
*
* \sa MatrixBase::diagonal()
*/
template<typename MatrixType>
struct ei_traits<DiagonalCoeffs<MatrixType> >
{
typedef typename MatrixType::Scalar Scalar;
typedef typename ei_nested<MatrixType>::type MatrixTypeNested;
typedef typename ei_unref<MatrixTypeNested>::type _MatrixTypeNested;
enum {
RowsAtCompileTime = int(MatrixType::SizeAtCompileTime) == Dynamic ? Dynamic
: EIGEN_SIZE_MIN(MatrixType::RowsAtCompileTime,
MatrixType::ColsAtCompileTime),
ColsAtCompileTime = 1,
MaxRowsAtCompileTime = int(MatrixType::MaxSizeAtCompileTime) == Dynamic ? Dynamic
: EIGEN_SIZE_MIN(MatrixType::MaxRowsAtCompileTime,
MatrixType::MaxColsAtCompileTime),
MaxColsAtCompileTime = 1,
Flags = (unsigned int)_MatrixTypeNested::Flags & (HereditaryBits | LinearAccessBit),
CoeffReadCost = _MatrixTypeNested::CoeffReadCost
};
};
template<typename MatrixType> class DiagonalCoeffs
: public MatrixBase<DiagonalCoeffs<MatrixType> >
{
public:
EIGEN_GENERIC_PUBLIC_INTERFACE(DiagonalCoeffs)
inline DiagonalCoeffs(const MatrixType& matrix) : m_matrix(matrix) {}
EIGEN_INHERIT_ASSIGNMENT_OPERATORS(DiagonalCoeffs)
inline int rows() const { return std::min(m_matrix.rows(), m_matrix.cols()); }
inline int cols() const { return 1; }
inline Scalar& coeffRef(int row, int)
{
return m_matrix.const_cast_derived().coeffRef(row, row);
}
inline const Scalar coeff(int row, int) const
{
return m_matrix.coeff(row, row);
}
inline Scalar& coeffRef(int index)
{
return m_matrix.const_cast_derived().coeffRef(index, index);
}
inline const Scalar coeff(int index) const
{
return m_matrix.coeff(index, index);
}
protected:
const typename MatrixType::Nested m_matrix;
};
/** \returns an expression of the main diagonal of the matrix \c *this
*
* \c *this is not required to be square.
*
* Example: \include MatrixBase_diagonal.cpp
* Output: \verbinclude MatrixBase_diagonal.out
*
* \sa class DiagonalCoeffs */
template<typename Derived>
inline DiagonalCoeffs<Derived>
MatrixBase<Derived>::diagonal()
{
return DiagonalCoeffs<Derived>(derived());
}
/** This is the const version of diagonal(). */
template<typename Derived>
inline const DiagonalCoeffs<Derived>
MatrixBase<Derived>::diagonal() const
{
return DiagonalCoeffs<Derived>(derived());
}
#endif // EIGEN_DIAGONALCOEFFS_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_DIAGONALMATRIX_H
#define EIGEN_DIAGONALMATRIX_H
/** \class DiagonalMatrix
* \nonstableyet
*
* \brief Expression of a diagonal matrix
*
* \param CoeffsVectorType the type of the vector of diagonal coefficients
*
* This class is an expression of a diagonal matrix with given vector of diagonal
* coefficients. It is the return
* type of MatrixBase::diagonal(const OtherDerived&) and most of the time this is
* the only way it is used.
*
* \sa MatrixBase::diagonal(const OtherDerived&)
*/
template<typename CoeffsVectorType>
struct ei_traits<DiagonalMatrix<CoeffsVectorType> >
{
typedef typename CoeffsVectorType::Scalar Scalar;
typedef typename ei_nested<CoeffsVectorType>::type CoeffsVectorTypeNested;
typedef typename ei_unref<CoeffsVectorTypeNested>::type _CoeffsVectorTypeNested;
enum {
RowsAtCompileTime = CoeffsVectorType::SizeAtCompileTime,
ColsAtCompileTime = CoeffsVectorType::SizeAtCompileTime,
MaxRowsAtCompileTime = CoeffsVectorType::MaxSizeAtCompileTime,
MaxColsAtCompileTime = CoeffsVectorType::MaxSizeAtCompileTime,
Flags = (_CoeffsVectorTypeNested::Flags & HereditaryBits) | Diagonal,
CoeffReadCost = _CoeffsVectorTypeNested::CoeffReadCost
};
};
template<typename CoeffsVectorType>
class DiagonalMatrix : ei_no_assignment_operator,
public MatrixBase<DiagonalMatrix<CoeffsVectorType> >
{
public:
EIGEN_GENERIC_PUBLIC_INTERFACE(DiagonalMatrix)
typedef CoeffsVectorType _CoeffsVectorType;
// needed to evaluate a DiagonalMatrix<Xpr> to a DiagonalMatrix<NestByValue<Vector> >
template<typename OtherCoeffsVectorType>
inline DiagonalMatrix(const DiagonalMatrix<OtherCoeffsVectorType>& other) : m_coeffs(other.diagonal())
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(CoeffsVectorType);
EIGEN_STATIC_ASSERT_VECTOR_ONLY(OtherCoeffsVectorType);
ei_assert(m_coeffs.size() > 0);
}
inline DiagonalMatrix(const CoeffsVectorType& coeffs) : m_coeffs(coeffs)
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(CoeffsVectorType);
ei_assert(coeffs.size() > 0);
}
inline int rows() const { return m_coeffs.size(); }
inline int cols() const { return m_coeffs.size(); }
inline const Scalar coeff(int row, int col) const
{
return row == col ? m_coeffs.coeff(row) : static_cast<Scalar>(0);
}
inline const CoeffsVectorType& diagonal() const { return m_coeffs; }
protected:
const typename CoeffsVectorType::Nested m_coeffs;
};
/** \nonstableyet
* \returns an expression of a diagonal matrix with *this as vector of diagonal coefficients
*
* \only_for_vectors
*
* \addexample AsDiagonalExample \label How to build a diagonal matrix from a vector
*
* Example: \include MatrixBase_asDiagonal.cpp
* Output: \verbinclude MatrixBase_asDiagonal.out
*
* \sa class DiagonalMatrix, isDiagonal()
**/
template<typename Derived>
inline const DiagonalMatrix<Derived>
MatrixBase<Derived>::asDiagonal() const
{
return derived();
}
/** \nonstableyet
* \returns true if *this is approximately equal to a diagonal matrix,
* within the precision given by \a prec.
*
* Example: \include MatrixBase_isDiagonal.cpp
* Output: \verbinclude MatrixBase_isDiagonal.out
*
* \sa asDiagonal()
*/
template<typename Derived>
bool MatrixBase<Derived>::isDiagonal
(RealScalar prec) const
{
if(cols() != rows()) return false;
RealScalar maxAbsOnDiagonal = static_cast<RealScalar>(-1);
for(int j = 0; j < cols(); ++j)
{
RealScalar absOnDiagonal = ei_abs(coeff(j,j));
if(absOnDiagonal > maxAbsOnDiagonal) maxAbsOnDiagonal = absOnDiagonal;
}
for(int j = 0; j < cols(); ++j)
for(int i = 0; i < j; ++i)
{
if(!ei_isMuchSmallerThan(coeff(i, j), maxAbsOnDiagonal, prec)) return false;
if(!ei_isMuchSmallerThan(coeff(j, i), maxAbsOnDiagonal, prec)) return false;
}
return true;
}
#endif // EIGEN_DIAGONALMATRIX_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_DIAGONALPRODUCT_H
#define EIGEN_DIAGONALPRODUCT_H
/** \internal Specialization of ei_nested for DiagonalMatrix.
* Unlike ei_nested, if the argument is a DiagonalMatrix and if it must be evaluated,
* then it evaluated to a DiagonalMatrix having its own argument evaluated.
*/
template<typename T, int N> struct ei_nested_diagonal : ei_nested<T,N> {};
template<typename T, int N> struct ei_nested_diagonal<DiagonalMatrix<T>,N >
: ei_nested<DiagonalMatrix<T>, N, DiagonalMatrix<NestByValue<typename ei_plain_matrix_type<T>::type> > >
{};
// specialization of ProductReturnType
template<typename Lhs, typename Rhs>
struct ProductReturnType<Lhs,Rhs,DiagonalProduct>
{
typedef typename ei_nested_diagonal<Lhs,Rhs::ColsAtCompileTime>::type LhsNested;
typedef typename ei_nested_diagonal<Rhs,Lhs::RowsAtCompileTime>::type RhsNested;
typedef Product<LhsNested, RhsNested, DiagonalProduct> Type;
};
template<typename LhsNested, typename RhsNested>
struct ei_traits<Product<LhsNested, RhsNested, DiagonalProduct> >
{
// clean the nested types:
typedef typename ei_cleantype<LhsNested>::type _LhsNested;
typedef typename ei_cleantype<RhsNested>::type _RhsNested;
typedef typename _LhsNested::Scalar Scalar;
enum {
LhsFlags = _LhsNested::Flags,
RhsFlags = _RhsNested::Flags,
RowsAtCompileTime = _LhsNested::RowsAtCompileTime,
ColsAtCompileTime = _RhsNested::ColsAtCompileTime,
MaxRowsAtCompileTime = _LhsNested::MaxRowsAtCompileTime,
MaxColsAtCompileTime = _RhsNested::MaxColsAtCompileTime,
LhsIsDiagonal = (_LhsNested::Flags&Diagonal)==Diagonal,
RhsIsDiagonal = (_RhsNested::Flags&Diagonal)==Diagonal,
CanVectorizeRhs = (!RhsIsDiagonal) && (RhsFlags & RowMajorBit) && (RhsFlags & PacketAccessBit)
&& (ColsAtCompileTime % ei_packet_traits<Scalar>::size == 0),
CanVectorizeLhs = (!LhsIsDiagonal) && (!(LhsFlags & RowMajorBit)) && (LhsFlags & PacketAccessBit)
&& (RowsAtCompileTime % ei_packet_traits<Scalar>::size == 0),
RemovedBits = ~((RhsFlags & RowMajorBit) && (!CanVectorizeLhs) ? 0 : RowMajorBit),
Flags = ((unsigned int)(LhsFlags | RhsFlags) & HereditaryBits & RemovedBits)
| (((CanVectorizeLhs&&RhsIsDiagonal) || (CanVectorizeRhs&&LhsIsDiagonal)) ? PacketAccessBit : 0),
CoeffReadCost = NumTraits<Scalar>::MulCost + _LhsNested::CoeffReadCost + _RhsNested::CoeffReadCost
};
};
template<typename LhsNested, typename RhsNested> class Product<LhsNested, RhsNested, DiagonalProduct> : ei_no_assignment_operator,
public MatrixBase<Product<LhsNested, RhsNested, DiagonalProduct> >
{
typedef typename ei_traits<Product>::_LhsNested _LhsNested;
typedef typename ei_traits<Product>::_RhsNested _RhsNested;
enum {
RhsIsDiagonal = (_RhsNested::Flags&Diagonal)==Diagonal
};
public:
EIGEN_GENERIC_PUBLIC_INTERFACE(Product)
template<typename Lhs, typename Rhs>
inline Product(const Lhs& lhs, const Rhs& rhs)
: m_lhs(lhs), m_rhs(rhs)
{
ei_assert(lhs.cols() == rhs.rows());
}
inline int rows() const { return m_lhs.rows(); }
inline int cols() const { return m_rhs.cols(); }
const Scalar coeff(int row, int col) const
{
const int unique = RhsIsDiagonal ? col : row;
return m_lhs.coeff(row, unique) * m_rhs.coeff(unique, col);
}
template<int LoadMode>
const PacketScalar packet(int row, int col) const
{
if (RhsIsDiagonal)
{
return ei_pmul(m_lhs.template packet<LoadMode>(row, col), ei_pset1(m_rhs.coeff(col, col)));
}
else
{
return ei_pmul(ei_pset1(m_lhs.coeff(row, row)), m_rhs.template packet<LoadMode>(row, col));
}
}
protected:
const LhsNested m_lhs;
const RhsNested m_rhs;
};
#endif // EIGEN_DIAGONALPRODUCT_H

361
Eigen/src/Core/Dot.h Normal file
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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_DOT_H
#define EIGEN_DOT_H
/***************************************************************************
* Part 1 : the logic deciding a strategy for vectorization and unrolling
***************************************************************************/
template<typename Derived1, typename Derived2>
struct ei_dot_traits
{
public:
enum {
Vectorization = (int(Derived1::Flags)&int(Derived2::Flags)&ActualPacketAccessBit)
&& (int(Derived1::Flags)&int(Derived2::Flags)&LinearAccessBit)
? LinearVectorization
: NoVectorization
};
private:
typedef typename Derived1::Scalar Scalar;
enum {
PacketSize = ei_packet_traits<Scalar>::size,
Cost = Derived1::SizeAtCompileTime * (Derived1::CoeffReadCost + Derived2::CoeffReadCost + NumTraits<Scalar>::MulCost)
+ (Derived1::SizeAtCompileTime-1) * NumTraits<Scalar>::AddCost,
UnrollingLimit = EIGEN_UNROLLING_LIMIT * (int(Vectorization) == int(NoVectorization) ? 1 : int(PacketSize))
};
public:
enum {
Unrolling = Cost <= UnrollingLimit
? CompleteUnrolling
: NoUnrolling
};
};
/***************************************************************************
* Part 2 : unrollers
***************************************************************************/
/*** no vectorization ***/
template<typename Derived1, typename Derived2, int Start, int Length>
struct ei_dot_novec_unroller
{
enum {
HalfLength = Length/2
};
typedef typename Derived1::Scalar Scalar;
inline static Scalar run(const Derived1& v1, const Derived2& v2)
{
return ei_dot_novec_unroller<Derived1, Derived2, Start, HalfLength>::run(v1, v2)
+ ei_dot_novec_unroller<Derived1, Derived2, Start+HalfLength, Length-HalfLength>::run(v1, v2);
}
};
template<typename Derived1, typename Derived2, int Start>
struct ei_dot_novec_unroller<Derived1, Derived2, Start, 1>
{
typedef typename Derived1::Scalar Scalar;
inline static Scalar run(const Derived1& v1, const Derived2& v2)
{
return v1.coeff(Start) * ei_conj(v2.coeff(Start));
}
};
/*** vectorization ***/
template<typename Derived1, typename Derived2, int Index, int Stop,
bool LastPacket = (Stop-Index == ei_packet_traits<typename Derived1::Scalar>::size)>
struct ei_dot_vec_unroller
{
typedef typename Derived1::Scalar Scalar;
typedef typename ei_packet_traits<Scalar>::type PacketScalar;
enum {
row1 = Derived1::RowsAtCompileTime == 1 ? 0 : Index,
col1 = Derived1::RowsAtCompileTime == 1 ? Index : 0,
row2 = Derived2::RowsAtCompileTime == 1 ? 0 : Index,
col2 = Derived2::RowsAtCompileTime == 1 ? Index : 0
};
inline static PacketScalar run(const Derived1& v1, const Derived2& v2)
{
return ei_pmadd(
v1.template packet<Aligned>(row1, col1),
v2.template packet<Aligned>(row2, col2),
ei_dot_vec_unroller<Derived1, Derived2, Index+ei_packet_traits<Scalar>::size, Stop>::run(v1, v2)
);
}
};
template<typename Derived1, typename Derived2, int Index, int Stop>
struct ei_dot_vec_unroller<Derived1, Derived2, Index, Stop, true>
{
enum {
row1 = Derived1::RowsAtCompileTime == 1 ? 0 : Index,
col1 = Derived1::RowsAtCompileTime == 1 ? Index : 0,
row2 = Derived2::RowsAtCompileTime == 1 ? 0 : Index,
col2 = Derived2::RowsAtCompileTime == 1 ? Index : 0,
alignment1 = (Derived1::Flags & AlignedBit) ? Aligned : Unaligned,
alignment2 = (Derived2::Flags & AlignedBit) ? Aligned : Unaligned
};
typedef typename Derived1::Scalar Scalar;
typedef typename ei_packet_traits<Scalar>::type PacketScalar;
inline static PacketScalar run(const Derived1& v1, const Derived2& v2)
{
return ei_pmul(v1.template packet<alignment1>(row1, col1), v2.template packet<alignment2>(row2, col2));
}
};
/***************************************************************************
* Part 3 : implementation of all cases
***************************************************************************/
template<typename Derived1, typename Derived2,
int Vectorization = ei_dot_traits<Derived1, Derived2>::Vectorization,
int Unrolling = ei_dot_traits<Derived1, Derived2>::Unrolling
>
struct ei_dot_impl;
template<typename Derived1, typename Derived2>
struct ei_dot_impl<Derived1, Derived2, NoVectorization, NoUnrolling>
{
typedef typename Derived1::Scalar Scalar;
static Scalar run(const Derived1& v1, const Derived2& v2)
{
ei_assert(v1.size()>0 && "you are using a non initialized vector");
Scalar res;
res = v1.coeff(0) * ei_conj(v2.coeff(0));
for(int i = 1; i < v1.size(); ++i)
res += v1.coeff(i) * ei_conj(v2.coeff(i));
return res;
}
};
template<typename Derived1, typename Derived2>
struct ei_dot_impl<Derived1, Derived2, NoVectorization, CompleteUnrolling>
: public ei_dot_novec_unroller<Derived1, Derived2, 0, Derived1::SizeAtCompileTime>
{};
template<typename Derived1, typename Derived2>
struct ei_dot_impl<Derived1, Derived2, LinearVectorization, NoUnrolling>
{
typedef typename Derived1::Scalar Scalar;
typedef typename ei_packet_traits<Scalar>::type PacketScalar;
static Scalar run(const Derived1& v1, const Derived2& v2)
{
const int size = v1.size();
const int packetSize = ei_packet_traits<Scalar>::size;
const int alignedSize = (size/packetSize)*packetSize;
enum {
alignment1 = (Derived1::Flags & AlignedBit) ? Aligned : Unaligned,
alignment2 = (Derived2::Flags & AlignedBit) ? Aligned : Unaligned
};
Scalar res;
// do the vectorizable part of the sum
if(size >= packetSize)
{
PacketScalar packet_res = ei_pmul(
v1.template packet<alignment1>(0),
v2.template packet<alignment2>(0)
);
for(int index = packetSize; index<alignedSize; index += packetSize)
{
packet_res = ei_pmadd(
v1.template packet<alignment1>(index),
v2.template packet<alignment2>(index),
packet_res
);
}
res = ei_predux(packet_res);
// now we must do the rest without vectorization.
if(alignedSize == size) return res;
}
else // too small to vectorize anything.
// since this is dynamic-size hence inefficient anyway for such small sizes, don't try to optimize.
{
res = Scalar(0);
}
// do the remainder of the vector
for(int index = alignedSize; index < size; ++index)
{
res += v1.coeff(index) * v2.coeff(index);
}
return res;
}
};
template<typename Derived1, typename Derived2>
struct ei_dot_impl<Derived1, Derived2, LinearVectorization, CompleteUnrolling>
{
typedef typename Derived1::Scalar Scalar;
typedef typename ei_packet_traits<Scalar>::type PacketScalar;
enum {
PacketSize = ei_packet_traits<Scalar>::size,
Size = Derived1::SizeAtCompileTime,
VectorizationSize = (Size / PacketSize) * PacketSize
};
static Scalar run(const Derived1& v1, const Derived2& v2)
{
Scalar res = ei_predux(ei_dot_vec_unroller<Derived1, Derived2, 0, VectorizationSize>::run(v1, v2));
if (VectorizationSize != Size)
res += ei_dot_novec_unroller<Derived1, Derived2, VectorizationSize, Size-VectorizationSize>::run(v1, v2);
return res;
}
};
/***************************************************************************
* Part 4 : implementation of MatrixBase methods
***************************************************************************/
/** \returns the dot product of *this with other.
*
* \only_for_vectors
*
* \note If the scalar type is complex numbers, then this function returns the hermitian
* (sesquilinear) dot product, linear in the first variable and conjugate-linear in the
* second variable.
*
* \sa squaredNorm(), norm()
*/
template<typename Derived>
template<typename OtherDerived>
typename ei_traits<Derived>::Scalar
MatrixBase<Derived>::dot(const MatrixBase<OtherDerived>& other) const
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Derived)
EIGEN_STATIC_ASSERT_VECTOR_ONLY(OtherDerived)
EIGEN_STATIC_ASSERT_SAME_VECTOR_SIZE(Derived,OtherDerived)
EIGEN_STATIC_ASSERT((ei_is_same_type<Scalar, typename OtherDerived::Scalar>::ret),
YOU_MIXED_DIFFERENT_NUMERIC_TYPES__YOU_NEED_TO_USE_THE_CAST_METHOD_OF_MATRIXBASE_TO_CAST_NUMERIC_TYPES_EXPLICITLY)
ei_assert(size() == other.size());
return ei_dot_impl<Derived, OtherDerived>::run(derived(), other.derived());
}
/** \returns the squared \em l2 norm of *this, i.e., for vectors, the dot product of *this with itself.
*
* \sa dot(), norm()
*/
template<typename Derived>
inline typename NumTraits<typename ei_traits<Derived>::Scalar>::Real MatrixBase<Derived>::squaredNorm() const
{
return ei_real((*this).cwise().abs2().sum());
}
/** \returns the \em l2 norm of *this, i.e., for vectors, the square root of the dot product of *this with itself.
*
* \sa dot(), squaredNorm()
*/
template<typename Derived>
inline typename NumTraits<typename ei_traits<Derived>::Scalar>::Real MatrixBase<Derived>::norm() const
{
return ei_sqrt(squaredNorm());
}
/** \returns an expression of the quotient of *this by its own norm.
*
* \only_for_vectors
*
* \sa norm(), normalize()
*/
template<typename Derived>
inline const typename MatrixBase<Derived>::PlainMatrixType
MatrixBase<Derived>::normalized() const
{
typedef typename ei_nested<Derived>::type Nested;
typedef typename ei_unref<Nested>::type _Nested;
_Nested n(derived());
return n / n.norm();
}
/** Normalizes the vector, i.e. divides it by its own norm.
*
* \only_for_vectors
*
* \sa norm(), normalized()
*/
template<typename Derived>
inline void MatrixBase<Derived>::normalize()
{
*this /= norm();
}
/** \returns true if *this is approximately orthogonal to \a other,
* within the precision given by \a prec.
*
* Example: \include MatrixBase_isOrthogonal.cpp
* Output: \verbinclude MatrixBase_isOrthogonal.out
*/
template<typename Derived>
template<typename OtherDerived>
bool MatrixBase<Derived>::isOrthogonal
(const MatrixBase<OtherDerived>& other, RealScalar prec) const
{
typename ei_nested<Derived,2>::type nested(derived());
typename ei_nested<OtherDerived,2>::type otherNested(other.derived());
return ei_abs2(nested.dot(otherNested)) <= prec * prec * nested.squaredNorm() * otherNested.squaredNorm();
}
/** \returns true if *this is approximately an unitary matrix,
* within the precision given by \a prec. In the case where the \a Scalar
* type is real numbers, a unitary matrix is an orthogonal matrix, whence the name.
*
* \note This can be used to check whether a family of vectors forms an orthonormal basis.
* Indeed, \c m.isUnitary() returns true if and only if the columns (equivalently, the rows) of m form an
* orthonormal basis.
*
* Example: \include MatrixBase_isUnitary.cpp
* Output: \verbinclude MatrixBase_isUnitary.out
*/
template<typename Derived>
bool MatrixBase<Derived>::isUnitary(RealScalar prec) const
{
typename Derived::Nested nested(derived());
for(int i = 0; i < cols(); ++i)
{
if(!ei_isApprox(nested.col(i).squaredNorm(), static_cast<Scalar>(1), prec))
return false;
for(int j = 0; j < i; ++j)
if(!ei_isMuchSmallerThan(nested.col(i).dot(nested.col(j)), static_cast<Scalar>(1), prec))
return false;
}
return true;
}
#endif // EIGEN_DOT_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_FLAGGED_H
#define EIGEN_FLAGGED_H
/** \class Flagged
*
* \brief Expression with modified flags
*
* \param ExpressionType the type of the object of which we are modifying the flags
* \param Added the flags added to the expression
* \param Removed the flags removed from the expression (has priority over Added).
*
* This class represents an expression whose flags have been modified.
* It is the return type of MatrixBase::flagged()
* and most of the time this is the only way it is used.
*
* \sa MatrixBase::flagged()
*/
template<typename ExpressionType, unsigned int Added, unsigned int Removed>
struct ei_traits<Flagged<ExpressionType, Added, Removed> > : ei_traits<ExpressionType>
{
enum { Flags = (ExpressionType::Flags | Added) & ~Removed };
};
template<typename ExpressionType, unsigned int Added, unsigned int Removed> class Flagged
: public MatrixBase<Flagged<ExpressionType, Added, Removed> >
{
public:
EIGEN_GENERIC_PUBLIC_INTERFACE(Flagged)
typedef typename ei_meta_if<ei_must_nest_by_value<ExpressionType>::ret,
ExpressionType, const ExpressionType&>::ret ExpressionTypeNested;
typedef typename ExpressionType::InnerIterator InnerIterator;
inline Flagged(const ExpressionType& matrix) : m_matrix(matrix) {}
inline int rows() const { return m_matrix.rows(); }
inline int cols() const { return m_matrix.cols(); }
inline int stride() const { return m_matrix.stride(); }
inline const Scalar coeff(int row, int col) const
{
return m_matrix.coeff(row, col);
}
inline Scalar& coeffRef(int row, int col)
{
return m_matrix.const_cast_derived().coeffRef(row, col);
}
inline const Scalar coeff(int index) const
{
return m_matrix.coeff(index);
}
inline Scalar& coeffRef(int index)
{
return m_matrix.const_cast_derived().coeffRef(index);
}
template<int LoadMode>
inline const PacketScalar packet(int row, int col) const
{
return m_matrix.template packet<LoadMode>(row, col);
}
template<int LoadMode>
inline void writePacket(int row, int col, const PacketScalar& x)
{
m_matrix.const_cast_derived().template writePacket<LoadMode>(row, col, x);
}
template<int LoadMode>
inline const PacketScalar packet(int index) const
{
return m_matrix.template packet<LoadMode>(index);
}
template<int LoadMode>
inline void writePacket(int index, const PacketScalar& x)
{
m_matrix.const_cast_derived().template writePacket<LoadMode>(index, x);
}
const ExpressionType& _expression() const { return m_matrix; }
protected:
ExpressionTypeNested m_matrix;
private:
Flagged& operator=(const Flagged&);
};
/** \returns an expression of *this with added flags
*
* \addexample MarkExample \label How to mark a triangular matrix as triangular
*
* Example: \include MatrixBase_marked.cpp
* Output: \verbinclude MatrixBase_marked.out
*
* \sa class Flagged, extract(), part()
*/
template<typename Derived>
template<unsigned int Added>
inline const Flagged<Derived, Added, 0>
MatrixBase<Derived>::marked() const
{
return derived();
}
/** \returns an expression of *this with the following flags removed:
* EvalBeforeNestingBit and EvalBeforeAssigningBit.
*
* Example: \include MatrixBase_lazy.cpp
* Output: \verbinclude MatrixBase_lazy.out
*
* \sa class Flagged, marked()
*/
template<typename Derived>
inline const Flagged<Derived, 0, EvalBeforeNestingBit | EvalBeforeAssigningBit>
MatrixBase<Derived>::lazy() const
{
return derived();
}
#endif // EIGEN_FLAGGED_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_FUNCTORS_H
#define EIGEN_FUNCTORS_H
// associative functors:
/** \internal
* \brief Template functor to compute the sum of two scalars
*
* \sa class CwiseBinaryOp, MatrixBase::operator+, class PartialRedux, MatrixBase::sum()
*/
template<typename Scalar> struct ei_scalar_sum_op EIGEN_EMPTY_STRUCT {
EIGEN_STRONG_INLINE const Scalar operator() (const Scalar& a, const Scalar& b) const { return a + b; }
template<typename PacketScalar>
EIGEN_STRONG_INLINE const PacketScalar packetOp(const PacketScalar& a, const PacketScalar& b) const
{ return ei_padd(a,b); }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_sum_op<Scalar> > {
enum {
Cost = NumTraits<Scalar>::AddCost,
PacketAccess = ei_packet_traits<Scalar>::size>1
};
};
/** \internal
* \brief Template functor to compute the product of two scalars
*
* \sa class CwiseBinaryOp, Cwise::operator*(), class PartialRedux, MatrixBase::redux()
*/
template<typename Scalar> struct ei_scalar_product_op EIGEN_EMPTY_STRUCT {
EIGEN_STRONG_INLINE const Scalar operator() (const Scalar& a, const Scalar& b) const { return a * b; }
template<typename PacketScalar>
EIGEN_STRONG_INLINE const PacketScalar packetOp(const PacketScalar& a, const PacketScalar& b) const
{ return ei_pmul(a,b); }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_product_op<Scalar> > {
enum {
Cost = NumTraits<Scalar>::MulCost,
PacketAccess = ei_packet_traits<Scalar>::size>1
};
};
/** \internal
* \brief Template functor to compute the min of two scalars
*
* \sa class CwiseBinaryOp, MatrixBase::cwiseMin, class PartialRedux, MatrixBase::minCoeff()
*/
template<typename Scalar> struct ei_scalar_min_op EIGEN_EMPTY_STRUCT {
EIGEN_STRONG_INLINE const Scalar operator() (const Scalar& a, const Scalar& b) const { return std::min(a, b); }
template<typename PacketScalar>
EIGEN_STRONG_INLINE const PacketScalar packetOp(const PacketScalar& a, const PacketScalar& b) const
{ return ei_pmin(a,b); }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_min_op<Scalar> > {
enum {
Cost = NumTraits<Scalar>::AddCost,
PacketAccess = ei_packet_traits<Scalar>::size>1
};
};
/** \internal
* \brief Template functor to compute the max of two scalars
*
* \sa class CwiseBinaryOp, MatrixBase::cwiseMax, class PartialRedux, MatrixBase::maxCoeff()
*/
template<typename Scalar> struct ei_scalar_max_op EIGEN_EMPTY_STRUCT {
EIGEN_STRONG_INLINE const Scalar operator() (const Scalar& a, const Scalar& b) const { return std::max(a, b); }
template<typename PacketScalar>
EIGEN_STRONG_INLINE const PacketScalar packetOp(const PacketScalar& a, const PacketScalar& b) const
{ return ei_pmax(a,b); }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_max_op<Scalar> > {
enum {
Cost = NumTraits<Scalar>::AddCost,
PacketAccess = ei_packet_traits<Scalar>::size>1
};
};
// other binary functors:
/** \internal
* \brief Template functor to compute the difference of two scalars
*
* \sa class CwiseBinaryOp, MatrixBase::operator-
*/
template<typename Scalar> struct ei_scalar_difference_op EIGEN_EMPTY_STRUCT {
EIGEN_STRONG_INLINE const Scalar operator() (const Scalar& a, const Scalar& b) const { return a - b; }
template<typename PacketScalar>
EIGEN_STRONG_INLINE const PacketScalar packetOp(const PacketScalar& a, const PacketScalar& b) const
{ return ei_psub(a,b); }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_difference_op<Scalar> > {
enum {
Cost = NumTraits<Scalar>::AddCost,
PacketAccess = ei_packet_traits<Scalar>::size>1
};
};
/** \internal
* \brief Template functor to compute the quotient of two scalars
*
* \sa class CwiseBinaryOp, Cwise::operator/()
*/
template<typename Scalar> struct ei_scalar_quotient_op EIGEN_EMPTY_STRUCT {
EIGEN_STRONG_INLINE const Scalar operator() (const Scalar& a, const Scalar& b) const { return a / b; }
template<typename PacketScalar>
EIGEN_STRONG_INLINE const PacketScalar packetOp(const PacketScalar& a, const PacketScalar& b) const
{ return ei_pdiv(a,b); }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_quotient_op<Scalar> > {
enum {
Cost = 2 * NumTraits<Scalar>::MulCost,
PacketAccess = ei_packet_traits<Scalar>::size>1
#if (defined EIGEN_VECTORIZE_SSE)
&& NumTraits<Scalar>::HasFloatingPoint
#endif
};
};
// unary functors:
/** \internal
* \brief Template functor to compute the opposite of a scalar
*
* \sa class CwiseUnaryOp, MatrixBase::operator-
*/
template<typename Scalar> struct ei_scalar_opposite_op EIGEN_EMPTY_STRUCT {
EIGEN_STRONG_INLINE const Scalar operator() (const Scalar& a) const { return -a; }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_opposite_op<Scalar> >
{ enum { Cost = NumTraits<Scalar>::AddCost, PacketAccess = false }; };
/** \internal
* \brief Template functor to compute the absolute value of a scalar
*
* \sa class CwiseUnaryOp, Cwise::abs
*/
template<typename Scalar> struct ei_scalar_abs_op EIGEN_EMPTY_STRUCT {
typedef typename NumTraits<Scalar>::Real result_type;
EIGEN_STRONG_INLINE const result_type operator() (const Scalar& a) const { return ei_abs(a); }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_abs_op<Scalar> >
{
enum {
Cost = NumTraits<Scalar>::AddCost,
PacketAccess = false // this could actually be vectorized with SSSE3.
};
};
/** \internal
* \brief Template functor to compute the squared absolute value of a scalar
*
* \sa class CwiseUnaryOp, Cwise::abs2
*/
template<typename Scalar> struct ei_scalar_abs2_op EIGEN_EMPTY_STRUCT {
typedef typename NumTraits<Scalar>::Real result_type;
EIGEN_STRONG_INLINE const result_type operator() (const Scalar& a) const { return ei_abs2(a); }
template<typename PacketScalar>
EIGEN_STRONG_INLINE const PacketScalar packetOp(const PacketScalar& a) const
{ return ei_pmul(a,a); }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_abs2_op<Scalar> >
{ enum { Cost = NumTraits<Scalar>::MulCost, PacketAccess = int(ei_packet_traits<Scalar>::size)>1 }; };
/** \internal
* \brief Template functor to compute the conjugate of a complex value
*
* \sa class CwiseUnaryOp, MatrixBase::conjugate()
*/
template<typename Scalar> struct ei_scalar_conjugate_op EIGEN_EMPTY_STRUCT {
EIGEN_STRONG_INLINE const Scalar operator() (const Scalar& a) const { return ei_conj(a); }
template<typename PacketScalar>
EIGEN_STRONG_INLINE const PacketScalar packetOp(const PacketScalar& a) const { return a; }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_conjugate_op<Scalar> >
{
enum {
Cost = NumTraits<Scalar>::IsComplex ? NumTraits<Scalar>::AddCost : 0,
PacketAccess = int(ei_packet_traits<Scalar>::size)>1
};
};
/** \internal
* \brief Template functor to cast a scalar to another type
*
* \sa class CwiseUnaryOp, MatrixBase::cast()
*/
template<typename Scalar, typename NewType>
struct ei_scalar_cast_op EIGEN_EMPTY_STRUCT {
typedef NewType result_type;
EIGEN_STRONG_INLINE const NewType operator() (const Scalar& a) const { return static_cast<NewType>(a); }
};
template<typename Scalar, typename NewType>
struct ei_functor_traits<ei_scalar_cast_op<Scalar,NewType> >
{ enum { Cost = ei_is_same_type<Scalar, NewType>::ret ? 0 : NumTraits<NewType>::AddCost, PacketAccess = false }; };
/** \internal
* \brief Template functor to extract the real part of a complex
*
* \sa class CwiseUnaryOp, MatrixBase::real()
*/
template<typename Scalar>
struct ei_scalar_real_op EIGEN_EMPTY_STRUCT {
typedef typename NumTraits<Scalar>::Real result_type;
EIGEN_STRONG_INLINE result_type operator() (const Scalar& a) const { return ei_real(a); }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_real_op<Scalar> >
{ enum { Cost = 0, PacketAccess = false }; };
/** \internal
* \brief Template functor to extract the imaginary part of a complex
*
* \sa class CwiseUnaryOp, MatrixBase::imag()
*/
template<typename Scalar>
struct ei_scalar_imag_op EIGEN_EMPTY_STRUCT {
typedef typename NumTraits<Scalar>::Real result_type;
EIGEN_STRONG_INLINE result_type operator() (const Scalar& a) const { return ei_imag(a); }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_imag_op<Scalar> >
{ enum { Cost = 0, PacketAccess = false }; };
/** \internal
* \brief Template functor to multiply a scalar by a fixed other one
*
* \sa class CwiseUnaryOp, MatrixBase::operator*, MatrixBase::operator/
*/
/* NOTE why doing the ei_pset1() in packetOp *is* an optimization ?
* indeed it seems better to declare m_other as a PacketScalar and do the ei_pset1() once
* in the constructor. However, in practice:
* - GCC does not like m_other as a PacketScalar and generate a load every time it needs it
* - one the other hand GCC is able to moves the ei_pset1() away the loop :)
* - simpler code ;)
* (ICC and gcc 4.4 seems to perform well in both cases, the issue is visible with y = a*x + b*y)
*/
template<typename Scalar>
struct ei_scalar_multiple_op {
typedef typename ei_packet_traits<Scalar>::type PacketScalar;
// FIXME default copy constructors seems bugged with std::complex<>
EIGEN_STRONG_INLINE ei_scalar_multiple_op(const ei_scalar_multiple_op& other) : m_other(other.m_other) { }
EIGEN_STRONG_INLINE ei_scalar_multiple_op(const Scalar& other) : m_other(other) { }
EIGEN_STRONG_INLINE Scalar operator() (const Scalar& a) const { return a * m_other; }
EIGEN_STRONG_INLINE const PacketScalar packetOp(const PacketScalar& a) const
{ return ei_pmul(a, ei_pset1(m_other)); }
const Scalar m_other;
private:
ei_scalar_multiple_op& operator=(const ei_scalar_multiple_op&);
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_multiple_op<Scalar> >
{ enum { Cost = NumTraits<Scalar>::MulCost, PacketAccess = ei_packet_traits<Scalar>::size>1 }; };
template<typename Scalar, bool HasFloatingPoint>
struct ei_scalar_quotient1_impl {
typedef typename ei_packet_traits<Scalar>::type PacketScalar;
// FIXME default copy constructors seems bugged with std::complex<>
EIGEN_STRONG_INLINE ei_scalar_quotient1_impl(const ei_scalar_quotient1_impl& other) : m_other(other.m_other) { }
EIGEN_STRONG_INLINE ei_scalar_quotient1_impl(const Scalar& other) : m_other(static_cast<Scalar>(1) / other) {}
EIGEN_STRONG_INLINE Scalar operator() (const Scalar& a) const { return a * m_other; }
EIGEN_STRONG_INLINE const PacketScalar packetOp(const PacketScalar& a) const
{ return ei_pmul(a, ei_pset1(m_other)); }
const Scalar m_other;
private:
ei_scalar_quotient1_impl& operator=(const ei_scalar_quotient1_impl&);
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_quotient1_impl<Scalar,true> >
{ enum { Cost = NumTraits<Scalar>::MulCost, PacketAccess = ei_packet_traits<Scalar>::size>1 }; };
template<typename Scalar>
struct ei_scalar_quotient1_impl<Scalar,false> {
// FIXME default copy constructors seems bugged with std::complex<>
EIGEN_STRONG_INLINE ei_scalar_quotient1_impl(const ei_scalar_quotient1_impl& other) : m_other(other.m_other) { }
EIGEN_STRONG_INLINE ei_scalar_quotient1_impl(const Scalar& other) : m_other(other) {}
EIGEN_STRONG_INLINE Scalar operator() (const Scalar& a) const { return a / m_other; }
const Scalar m_other;
private:
ei_scalar_quotient1_impl& operator=(const ei_scalar_quotient1_impl&);
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_quotient1_impl<Scalar,false> >
{ enum { Cost = 2 * NumTraits<Scalar>::MulCost, PacketAccess = false }; };
/** \internal
* \brief Template functor to divide a scalar by a fixed other one
*
* This functor is used to implement the quotient of a matrix by
* a scalar where the scalar type is not necessarily a floating point type.
*
* \sa class CwiseUnaryOp, MatrixBase::operator/
*/
template<typename Scalar>
struct ei_scalar_quotient1_op : ei_scalar_quotient1_impl<Scalar, NumTraits<Scalar>::HasFloatingPoint > {
EIGEN_STRONG_INLINE ei_scalar_quotient1_op(const Scalar& other)
: ei_scalar_quotient1_impl<Scalar, NumTraits<Scalar>::HasFloatingPoint >(other) {}
private:
ei_scalar_quotient1_op& operator=(const ei_scalar_quotient1_op&);
};
// nullary functors
template<typename Scalar>
struct ei_scalar_constant_op {
typedef typename ei_packet_traits<Scalar>::type PacketScalar;
EIGEN_STRONG_INLINE ei_scalar_constant_op(const ei_scalar_constant_op& other) : m_other(other.m_other) { }
EIGEN_STRONG_INLINE ei_scalar_constant_op(const Scalar& other) : m_other(other) { }
EIGEN_STRONG_INLINE const Scalar operator() (int, int = 0) const { return m_other; }
EIGEN_STRONG_INLINE const PacketScalar packetOp() const { return ei_pset1(m_other); }
const Scalar m_other;
private:
ei_scalar_constant_op& operator=(const ei_scalar_constant_op&);
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_constant_op<Scalar> >
{ enum { Cost = 1, PacketAccess = ei_packet_traits<Scalar>::size>1, IsRepeatable = true }; };
template<typename Scalar> struct ei_scalar_identity_op EIGEN_EMPTY_STRUCT {
EIGEN_STRONG_INLINE ei_scalar_identity_op(void) {}
EIGEN_STRONG_INLINE const Scalar operator() (int row, int col) const { return row==col ? Scalar(1) : Scalar(0); }
};
template<typename Scalar>
struct ei_functor_traits<ei_scalar_identity_op<Scalar> >
{ enum { Cost = NumTraits<Scalar>::AddCost, PacketAccess = false, IsRepeatable = true }; };
// allow to add new functors and specializations of ei_functor_traits from outside Eigen.
// this macro is really needed because ei_functor_traits must be specialized after it is declared but before it is used...
#ifdef EIGEN_FUNCTORS_PLUGIN
#include EIGEN_FUNCTORS_PLUGIN
#endif
// all functors allow linear access, except ei_scalar_identity_op. So we fix here a quick meta
// to indicate whether a functor allows linear access, just always answering 'yes' except for
// ei_scalar_identity_op.
template<typename Functor> struct ei_functor_has_linear_access { enum { ret = 1 }; };
template<typename Scalar> struct ei_functor_has_linear_access<ei_scalar_identity_op<Scalar> > { enum { ret = 0 }; };
// in CwiseBinaryOp, we require the Lhs and Rhs to have the same scalar type, except for multiplication
// where we only require them to have the same _real_ scalar type so one may multiply, say, float by complex<float>.
template<typename Functor> struct ei_functor_allows_mixing_real_and_complex { enum { ret = 0 }; };
template<typename Scalar> struct ei_functor_allows_mixing_real_and_complex<ei_scalar_product_op<Scalar> > { enum { ret = 1 }; };
#endif // EIGEN_FUNCTORS_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_FUZZY_H
#define EIGEN_FUZZY_H
#ifndef EIGEN_LEGACY_COMPARES
/** \returns \c true if \c *this is approximately equal to \a other, within the precision
* determined by \a prec.
*
* \note The fuzzy compares are done multiplicatively. Two vectors \f$ v \f$ and \f$ w \f$
* are considered to be approximately equal within precision \f$ p \f$ if
* \f[ \Vert v - w \Vert \leqslant p\,\min(\Vert v\Vert, \Vert w\Vert). \f]
* For matrices, the comparison is done using the Hilbert-Schmidt norm (aka Frobenius norm
* L2 norm).
*
* \note Because of the multiplicativeness of this comparison, one can't use this function
* to check whether \c *this is approximately equal to the zero matrix or vector.
* Indeed, \c isApprox(zero) returns false unless \c *this itself is exactly the zero matrix
* or vector. If you want to test whether \c *this is zero, use ei_isMuchSmallerThan(const
* RealScalar&, RealScalar) instead.
*
* \sa ei_isMuchSmallerThan(const RealScalar&, RealScalar) const
*/
template<typename Derived>
template<typename OtherDerived>
bool MatrixBase<Derived>::isApprox(
const MatrixBase<OtherDerived>& other,
typename NumTraits<Scalar>::Real prec
) const
{
const typename ei_nested<Derived,2>::type nested(derived());
const typename ei_nested<OtherDerived,2>::type otherNested(other.derived());
return (nested - otherNested).cwise().abs2().sum() <= prec * prec * std::min(nested.cwise().abs2().sum(), otherNested.cwise().abs2().sum());
}
/** \returns \c true if the norm of \c *this is much smaller than \a other,
* within the precision determined by \a prec.
*
* \note The fuzzy compares are done multiplicatively. A vector \f$ v \f$ is
* considered to be much smaller than \f$ x \f$ within precision \f$ p \f$ if
* \f[ \Vert v \Vert \leqslant p\,\vert x\vert. \f]
*
* For matrices, the comparison is done using the Hilbert-Schmidt norm. For this reason,
* the value of the reference scalar \a other should come from the Hilbert-Schmidt norm
* of a reference matrix of same dimensions.
*
* \sa isApprox(), isMuchSmallerThan(const MatrixBase<OtherDerived>&, RealScalar) const
*/
template<typename Derived>
bool MatrixBase<Derived>::isMuchSmallerThan(
const typename NumTraits<Scalar>::Real& other,
typename NumTraits<Scalar>::Real prec
) const
{
return cwise().abs2().sum() <= prec * prec * other * other;
}
/** \returns \c true if the norm of \c *this is much smaller than the norm of \a other,
* within the precision determined by \a prec.
*
* \note The fuzzy compares are done multiplicatively. A vector \f$ v \f$ is
* considered to be much smaller than a vector \f$ w \f$ within precision \f$ p \f$ if
* \f[ \Vert v \Vert \leqslant p\,\Vert w\Vert. \f]
* For matrices, the comparison is done using the Hilbert-Schmidt norm.
*
* \sa isApprox(), isMuchSmallerThan(const RealScalar&, RealScalar) const
*/
template<typename Derived>
template<typename OtherDerived>
bool MatrixBase<Derived>::isMuchSmallerThan(
const MatrixBase<OtherDerived>& other,
typename NumTraits<Scalar>::Real prec
) const
{
return this->cwise().abs2().sum() <= prec * prec * other.cwise().abs2().sum();
}
#else
template<typename Derived, typename OtherDerived=Derived, bool IsVector=Derived::IsVectorAtCompileTime>
struct ei_fuzzy_selector;
/** \returns \c true if \c *this is approximately equal to \a other, within the precision
* determined by \a prec.
*
* \note The fuzzy compares are done multiplicatively. Two vectors \f$ v \f$ and \f$ w \f$
* are considered to be approximately equal within precision \f$ p \f$ if
* \f[ \Vert v - w \Vert \leqslant p\,\min(\Vert v\Vert, \Vert w\Vert). \f]
* For matrices, the comparison is done on all columns.
*
* \note Because of the multiplicativeness of this comparison, one can't use this function
* to check whether \c *this is approximately equal to the zero matrix or vector.
* Indeed, \c isApprox(zero) returns false unless \c *this itself is exactly the zero matrix
* or vector. If you want to test whether \c *this is zero, use ei_isMuchSmallerThan(const
* RealScalar&, RealScalar) instead.
*
* \sa ei_isMuchSmallerThan(const RealScalar&, RealScalar) const
*/
template<typename Derived>
template<typename OtherDerived>
bool MatrixBase<Derived>::isApprox(
const MatrixBase<OtherDerived>& other,
typename NumTraits<Scalar>::Real prec
) const
{
return ei_fuzzy_selector<Derived,OtherDerived>::isApprox(derived(), other.derived(), prec);
}
/** \returns \c true if the norm of \c *this is much smaller than \a other,
* within the precision determined by \a prec.
*
* \note The fuzzy compares are done multiplicatively. A vector \f$ v \f$ is
* considered to be much smaller than \f$ x \f$ within precision \f$ p \f$ if
* \f[ \Vert v \Vert \leqslant p\,\vert x\vert. \f]
* For matrices, the comparison is done on all columns.
*
* \sa isApprox(), isMuchSmallerThan(const MatrixBase<OtherDerived>&, RealScalar) const
*/
template<typename Derived>
bool MatrixBase<Derived>::isMuchSmallerThan(
const typename NumTraits<Scalar>::Real& other,
typename NumTraits<Scalar>::Real prec
) const
{
return ei_fuzzy_selector<Derived>::isMuchSmallerThan(derived(), other, prec);
}
/** \returns \c true if the norm of \c *this is much smaller than the norm of \a other,
* within the precision determined by \a prec.
*
* \note The fuzzy compares are done multiplicatively. A vector \f$ v \f$ is
* considered to be much smaller than a vector \f$ w \f$ within precision \f$ p \f$ if
* \f[ \Vert v \Vert \leqslant p\,\Vert w\Vert. \f]
* For matrices, the comparison is done on all columns.
*
* \sa isApprox(), isMuchSmallerThan(const RealScalar&, RealScalar) const
*/
template<typename Derived>
template<typename OtherDerived>
bool MatrixBase<Derived>::isMuchSmallerThan(
const MatrixBase<OtherDerived>& other,
typename NumTraits<Scalar>::Real prec
) const
{
return ei_fuzzy_selector<Derived,OtherDerived>::isMuchSmallerThan(derived(), other.derived(), prec);
}
template<typename Derived, typename OtherDerived>
struct ei_fuzzy_selector<Derived,OtherDerived,true>
{
typedef typename Derived::RealScalar RealScalar;
static bool isApprox(const Derived& self, const OtherDerived& other, RealScalar prec)
{
EIGEN_STATIC_ASSERT_SAME_VECTOR_SIZE(Derived,OtherDerived)
ei_assert(self.size() == other.size());
return((self - other).squaredNorm() <= std::min(self.squaredNorm(), other.squaredNorm()) * prec * prec);
}
static bool isMuchSmallerThan(const Derived& self, const RealScalar& other, RealScalar prec)
{
return(self.squaredNorm() <= ei_abs2(other * prec));
}
static bool isMuchSmallerThan(const Derived& self, const OtherDerived& other, RealScalar prec)
{
EIGEN_STATIC_ASSERT_SAME_VECTOR_SIZE(Derived,OtherDerived)
ei_assert(self.size() == other.size());
return(self.squaredNorm() <= other.squaredNorm() * prec * prec);
}
};
template<typename Derived, typename OtherDerived>
struct ei_fuzzy_selector<Derived,OtherDerived,false>
{
typedef typename Derived::RealScalar RealScalar;
static bool isApprox(const Derived& self, const OtherDerived& other, RealScalar prec)
{
EIGEN_STATIC_ASSERT_SAME_MATRIX_SIZE(Derived,OtherDerived)
ei_assert(self.rows() == other.rows() && self.cols() == other.cols());
typename Derived::Nested nested(self);
typename OtherDerived::Nested otherNested(other);
for(int i = 0; i < self.cols(); ++i)
if((nested.col(i) - otherNested.col(i)).squaredNorm()
> std::min(nested.col(i).squaredNorm(), otherNested.col(i).squaredNorm()) * prec * prec)
return false;
return true;
}
static bool isMuchSmallerThan(const Derived& self, const RealScalar& other, RealScalar prec)
{
typename Derived::Nested nested(self);
for(int i = 0; i < self.cols(); ++i)
if(nested.col(i).squaredNorm() > ei_abs2(other * prec))
return false;
return true;
}
static bool isMuchSmallerThan(const Derived& self, const OtherDerived& other, RealScalar prec)
{
EIGEN_STATIC_ASSERT_SAME_MATRIX_SIZE(Derived,OtherDerived)
ei_assert(self.rows() == other.rows() && self.cols() == other.cols());
typename Derived::Nested nested(self);
typename OtherDerived::Nested otherNested(other);
for(int i = 0; i < self.cols(); ++i)
if(nested.col(i).squaredNorm() > otherNested.col(i).squaredNorm() * prec * prec)
return false;
return true;
}
};
#endif
#endif // EIGEN_FUZZY_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_GENERIC_PACKET_MATH_H
#define EIGEN_GENERIC_PACKET_MATH_H
/** \internal
* \file GenericPacketMath.h
*
* Default implementation for types not supported by the vectorization.
* In practice these functions are provided to make easier the writing
* of generic vectorized code.
*/
/** \internal \returns a + b (coeff-wise) */
template<typename Packet> inline Packet
ei_padd(const Packet& a,
const Packet& b) { return a+b; }
/** \internal \returns a - b (coeff-wise) */
template<typename Packet> inline Packet
ei_psub(const Packet& a,
const Packet& b) { return a-b; }
/** \internal \returns a * b (coeff-wise) */
template<typename Packet> inline Packet
ei_pmul(const Packet& a,
const Packet& b) { return a*b; }
/** \internal \returns a / b (coeff-wise) */
template<typename Packet> inline Packet
ei_pdiv(const Packet& a,
const Packet& b) { return a/b; }
/** \internal \returns the min of \a a and \a b (coeff-wise) */
template<typename Packet> inline Packet
ei_pmin(const Packet& a,
const Packet& b) { return std::min(a, b); }
/** \internal \returns the max of \a a and \a b (coeff-wise) */
template<typename Packet> inline Packet
ei_pmax(const Packet& a,
const Packet& b) { return std::max(a, b); }
/** \internal \returns a packet version of \a *from, from must be 16 bytes aligned */
template<typename Scalar> inline typename ei_packet_traits<Scalar>::type
ei_pload(const Scalar* from) { return *from; }
/** \internal \returns a packet version of \a *from, (un-aligned load) */
template<typename Scalar> inline typename ei_packet_traits<Scalar>::type
ei_ploadu(const Scalar* from) { return *from; }
/** \internal \returns a packet with constant coefficients \a a, e.g.: (a,a,a,a) */
template<typename Scalar> inline typename ei_packet_traits<Scalar>::type
ei_pset1(const Scalar& a) { return a; }
/** \internal copy the packet \a from to \a *to, \a to must be 16 bytes aligned */
template<typename Scalar, typename Packet> inline void ei_pstore(Scalar* to, const Packet& from)
{ (*to) = from; }
/** \internal copy the packet \a from to \a *to, (un-aligned store) */
template<typename Scalar, typename Packet> inline void ei_pstoreu(Scalar* to, const Packet& from)
{ (*to) = from; }
/** \internal \returns the first element of a packet */
template<typename Packet> inline typename ei_unpacket_traits<Packet>::type ei_pfirst(const Packet& a)
{ return a; }
/** \internal \returns a packet where the element i contains the sum of the packet of \a vec[i] */
template<typename Packet> inline Packet
ei_preduxp(const Packet* vecs) { return vecs[0]; }
/** \internal \returns the sum of the elements of \a a*/
template<typename Packet> inline typename ei_unpacket_traits<Packet>::type ei_predux(const Packet& a)
{ return a; }
/***************************************************************************
* The following functions might not have to be overwritten for vectorized types
***************************************************************************/
/** \internal \returns a * b + c (coeff-wise) */
template<typename Packet> inline Packet
ei_pmadd(const Packet& a,
const Packet& b,
const Packet& c)
{ return ei_padd(ei_pmul(a, b),c); }
/** \internal \returns a packet version of \a *from.
* \If LoadMode equals Aligned, \a from must be 16 bytes aligned */
template<typename Scalar, int LoadMode>
inline typename ei_packet_traits<Scalar>::type ei_ploadt(const Scalar* from)
{
if(LoadMode == Aligned)
return ei_pload(from);
else
return ei_ploadu(from);
}
/** \internal copy the packet \a from to \a *to.
* If StoreMode equals Aligned, \a to must be 16 bytes aligned */
template<typename Scalar, typename Packet, int LoadMode>
inline void ei_pstoret(Scalar* to, const Packet& from)
{
if(LoadMode == Aligned)
ei_pstore(to, from);
else
ei_pstoreu(to, from);
}
/** \internal default implementation of ei_palign() allowing partial specialization */
template<int Offset,typename PacketType>
struct ei_palign_impl
{
// by default data are aligned, so there is nothing to be done :)
inline static void run(PacketType&, const PacketType&) {}
};
/** \internal update \a first using the concatenation of the \a Offset last elements
* of \a first and packet_size minus \a Offset first elements of \a second */
template<int Offset,typename PacketType>
inline void ei_palign(PacketType& first, const PacketType& second)
{
ei_palign_impl<Offset,PacketType>::run(first,second);
}
#endif // EIGEN_GENERIC_PACKET_MATH_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_IO_H
#define EIGEN_IO_H
enum { Raw, AlignCols };
/** \class IOFormat
*
* \brief Stores a set of parameters controlling the way matrices are printed
*
* List of available parameters:
* - \b precision number of digits for floating point values
* - \b flags can be either Raw (default) or AlignCols which aligns all the columns
* - \b coeffSeparator string printed between two coefficients of the same row
* - \b rowSeparator string printed between two rows
* - \b rowPrefix string printed at the beginning of each row
* - \b rowSuffix string printed at the end of each row
* - \b matPrefix string printed at the beginning of the matrix
* - \b matSuffix string printed at the end of the matrix
*
* Example: \include IOFormat.cpp
* Output: \verbinclude IOFormat.out
*
* \sa MatrixBase::format(), class WithFormat
*/
struct IOFormat
{
/** Default contructor, see class IOFormat for the meaning of the parameters */
IOFormat(int _precision=4, int _flags=Raw,
const std::string& _coeffSeparator = " ",
const std::string& _rowSeparator = "\n", const std::string& _rowPrefix="", const std::string& _rowSuffix="",
const std::string& _matPrefix="", const std::string& _matSuffix="")
: matPrefix(_matPrefix), matSuffix(_matSuffix), rowPrefix(_rowPrefix), rowSuffix(_rowSuffix), rowSeparator(_rowSeparator),
coeffSeparator(_coeffSeparator), precision(_precision), flags(_flags)
{
rowSpacer = "";
int i = int(matSuffix.length())-1;
while (i>=0 && matSuffix[i]!='\n')
{
rowSpacer += ' ';
i--;
}
}
std::string matPrefix, matSuffix;
std::string rowPrefix, rowSuffix, rowSeparator, rowSpacer;
std::string coeffSeparator;
int precision;
int flags;
};
/** \class WithFormat
*
* \brief Pseudo expression providing matrix output with given format
*
* \param ExpressionType the type of the object on which IO stream operations are performed
*
* This class represents an expression with stream operators controlled by a given IOFormat.
* It is the return type of MatrixBase::format()
* and most of the time this is the only way it is used.
*
* See class IOFormat for some examples.
*
* \sa MatrixBase::format(), class IOFormat
*/
template<typename ExpressionType>
class WithFormat
{
public:
WithFormat(const ExpressionType& matrix, const IOFormat& format)
: m_matrix(matrix), m_format(format)
{}
friend std::ostream & operator << (std::ostream & s, const WithFormat& wf)
{
return ei_print_matrix(s, wf.m_matrix.eval(), wf.m_format);
}
protected:
const typename ExpressionType::Nested m_matrix;
IOFormat m_format;
};
/** \returns a WithFormat proxy object allowing to print a matrix the with given
* format \a fmt.
*
* See class IOFormat for some examples.
*
* \sa class IOFormat, class WithFormat
*/
template<typename Derived>
inline const WithFormat<Derived>
MatrixBase<Derived>::format(const IOFormat& fmt) const
{
return WithFormat<Derived>(derived(), fmt);
}
/** \internal
* print the matrix \a _m to the output stream \a s using the output format \a fmt */
template<typename Derived>
std::ostream & ei_print_matrix(std::ostream & s, const Derived& _m, const IOFormat& fmt)
{
const typename Derived::Nested m = _m;
int width = 0;
if (fmt.flags & AlignCols)
{
// compute the largest width
for(int j = 1; j < m.cols(); ++j)
for(int i = 0; i < m.rows(); ++i)
{
std::stringstream sstr;
sstr.precision(fmt.precision);
sstr << m.coeff(i,j);
width = std::max<int>(width, int(sstr.str().length()));
}
}
s.precision(fmt.precision);
s << fmt.matPrefix;
for(int i = 0; i < m.rows(); ++i)
{
if (i)
s << fmt.rowSpacer;
s << fmt.rowPrefix;
if(width) s.width(width);
s << m.coeff(i, 0);
for(int j = 1; j < m.cols(); ++j)
{
s << fmt.coeffSeparator;
if (width) s.width(width);
s << m.coeff(i, j);
}
s << fmt.rowSuffix;
if( i < m.rows() - 1)
s << fmt.rowSeparator;
}
s << fmt.matSuffix;
return s;
}
/** \relates MatrixBase
*
* Outputs the matrix, to the given stream.
*
* If you wish to print the matrix with a format different than the default, use MatrixBase::format().
*
* It is also possible to change the default format by defining EIGEN_DEFAULT_IO_FORMAT before including Eigen headers.
* If not defined, this will automatically be defined to Eigen::IOFormat(), that is the Eigen::IOFormat with default parameters.
*
* \sa MatrixBase::format()
*/
template<typename Derived>
std::ostream & operator <<
(std::ostream & s,
const MatrixBase<Derived> & m)
{
return ei_print_matrix(s, m.eval(), EIGEN_DEFAULT_IO_FORMAT);
}
#endif // EIGEN_IO_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_MAP_H
#define EIGEN_MAP_H
/** \class Map
*
* \brief A matrix or vector expression mapping an existing array of data.
*
* \param MatrixType the equivalent matrix type of the mapped data
* \param _PacketAccess allows to enforce aligned loads and stores if set to ForceAligned.
* The default is AsRequested. This parameter is internaly used by Eigen
* in expressions such as \code Map<...>(...) += other; \endcode and most
* of the time this is the only way it is used.
*
* This class represents a matrix or vector expression mapping an existing array of data.
* It can be used to let Eigen interface without any overhead with non-Eigen data structures,
* such as plain C arrays or structures from other libraries.
*
* This class is the return type of Matrix::Map() but can also be used directly.
*
* \sa Matrix::Map()
*/
template<typename MatrixType, int _PacketAccess>
struct ei_traits<Map<MatrixType, _PacketAccess> > : public ei_traits<MatrixType>
{
enum {
PacketAccess = _PacketAccess,
Flags = ei_traits<MatrixType>::Flags & ~AlignedBit
};
typedef typename ei_meta_if<int(PacketAccess)==ForceAligned,
Map<MatrixType, _PacketAccess>&,
Map<MatrixType, ForceAligned> >::ret AlignedDerivedType;
};
template<typename MatrixType, int PacketAccess> class Map
: public MapBase<Map<MatrixType, PacketAccess> >
{
public:
_EIGEN_GENERIC_PUBLIC_INTERFACE(Map, MapBase<Map>)
typedef typename ei_traits<Map>::AlignedDerivedType AlignedDerivedType;
inline int stride() const { return this->innerSize(); }
AlignedDerivedType _convertToForceAligned()
{
return Map<MatrixType,ForceAligned>(Base::m_data, Base::m_rows.value(), Base::m_cols.value());
}
inline Map(const Scalar* data) : Base(data) {}
inline Map(const Scalar* data, int size) : Base(data, size) {}
inline Map(const Scalar* data, int rows, int cols) : Base(data, rows, cols) {}
inline void resize(int rows, int cols)
{
EIGEN_ONLY_USED_FOR_DEBUG(rows);
EIGEN_ONLY_USED_FOR_DEBUG(cols);
ei_assert(rows == this->rows());
ei_assert(cols == this->cols());
}
inline void resize(int size)
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(MatrixType)
EIGEN_ONLY_USED_FOR_DEBUG(size);
ei_assert(size == this->size());
}
EIGEN_INHERIT_ASSIGNMENT_OPERATORS(Map)
};
/** Constructor copying an existing array of data.
* Only for fixed-size matrices and vectors.
* \param data The array of data to copy
*
* \sa Matrix::Map(const Scalar *)
*/
template<typename _Scalar, int _Rows, int _Cols, int _StorageOrder, int _MaxRows, int _MaxCols>
inline Matrix<_Scalar, _Rows, _Cols, _StorageOrder, _MaxRows, _MaxCols>
::Matrix(const Scalar *data)
{
_set_noalias(Eigen::Map<Matrix>(data));
}
#endif // EIGEN_MAP_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_MAPBASE_H
#define EIGEN_MAPBASE_H
/** \class MapBase
*
* \brief Base class for Map and Block expression with direct access
*
* Expression classes inheriting MapBase must define the constant \c PacketAccess,
* and type \c AlignedDerivedType in their respective ei_traits<> specialization structure.
* The value of \c PacketAccess can be either:
* - \b ForceAligned which enforces both aligned loads and stores
* - \b AsRequested which is the default behavior
* The type \c AlignedDerivedType should correspond to the equivalent expression type
* with \c PacketAccess being \c ForceAligned.
*
* \sa class Map, class Block
*/
template<typename Derived> class MapBase
: public MatrixBase<Derived>
{
public:
typedef MatrixBase<Derived> Base;
enum {
IsRowMajor = (int(ei_traits<Derived>::Flags) & RowMajorBit) ? 1 : 0,
PacketAccess = ei_traits<Derived>::PacketAccess,
RowsAtCompileTime = ei_traits<Derived>::RowsAtCompileTime,
ColsAtCompileTime = ei_traits<Derived>::ColsAtCompileTime,
SizeAtCompileTime = Base::SizeAtCompileTime
};
typedef typename ei_traits<Derived>::AlignedDerivedType AlignedDerivedType;
typedef typename ei_traits<Derived>::Scalar Scalar;
typedef typename Base::PacketScalar PacketScalar;
using Base::derived;
inline int rows() const { return m_rows.value(); }
inline int cols() const { return m_cols.value(); }
inline int stride() const { return derived().stride(); }
inline const Scalar* data() const { return m_data; }
template<bool IsForceAligned,typename Dummy> struct force_aligned_impl {
static AlignedDerivedType run(MapBase& a) { return a.derived(); }
};
template<typename Dummy> struct force_aligned_impl<false,Dummy> {
static AlignedDerivedType run(MapBase& a) { return a.derived()._convertToForceAligned(); }
};
/** \returns an expression equivalent to \c *this but having the \c PacketAccess constant
* set to \c ForceAligned. Must be reimplemented by the derived class. */
AlignedDerivedType forceAligned()
{
return force_aligned_impl<int(PacketAccess)==int(ForceAligned),Derived>::run(*this);
}
inline const Scalar& coeff(int row, int col) const
{
if(IsRowMajor)
return m_data[col + row * stride()];
else // column-major
return m_data[row + col * stride()];
}
inline Scalar& coeffRef(int row, int col)
{
if(IsRowMajor)
return const_cast<Scalar*>(m_data)[col + row * stride()];
else // column-major
return const_cast<Scalar*>(m_data)[row + col * stride()];
}
inline const Scalar coeff(int index) const
{
ei_assert(Derived::IsVectorAtCompileTime || (ei_traits<Derived>::Flags & LinearAccessBit));
if ( ((RowsAtCompileTime == 1) == IsRowMajor) || !int(Derived::IsVectorAtCompileTime) )
return m_data[index];
else
return m_data[index*stride()];
}
inline Scalar& coeffRef(int index)
{
ei_assert(Derived::IsVectorAtCompileTime || (ei_traits<Derived>::Flags & LinearAccessBit));
if ( ((RowsAtCompileTime == 1) == IsRowMajor) || !int(Derived::IsVectorAtCompileTime) )
return const_cast<Scalar*>(m_data)[index];
else
return const_cast<Scalar*>(m_data)[index*stride()];
}
template<int LoadMode>
inline PacketScalar packet(int row, int col) const
{
return ei_ploadt<Scalar, int(PacketAccess) == ForceAligned ? Aligned : LoadMode>
(m_data + (IsRowMajor ? col + row * stride()
: row + col * stride()));
}
template<int LoadMode>
inline PacketScalar packet(int index) const
{
return ei_ploadt<Scalar, int(PacketAccess) == ForceAligned ? Aligned : LoadMode>(m_data + index);
}
template<int StoreMode>
inline void writePacket(int row, int col, const PacketScalar& x)
{
ei_pstoret<Scalar, PacketScalar, int(PacketAccess) == ForceAligned ? Aligned : StoreMode>
(const_cast<Scalar*>(m_data) + (IsRowMajor ? col + row * stride()
: row + col * stride()), x);
}
template<int StoreMode>
inline void writePacket(int index, const PacketScalar& x)
{
ei_pstoret<Scalar, PacketScalar, int(PacketAccess) == ForceAligned ? Aligned : StoreMode>
(const_cast<Scalar*>(m_data) + index, x);
}
inline MapBase(const Scalar* data) : m_data(data), m_rows(RowsAtCompileTime), m_cols(ColsAtCompileTime)
{
EIGEN_STATIC_ASSERT_FIXED_SIZE(Derived)
}
inline MapBase(const Scalar* data, int size)
: m_data(data),
m_rows(RowsAtCompileTime == Dynamic ? size : RowsAtCompileTime),
m_cols(ColsAtCompileTime == Dynamic ? size : ColsAtCompileTime)
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Derived)
ei_assert(size > 0 || data == 0);
ei_assert(SizeAtCompileTime == Dynamic || SizeAtCompileTime == size);
}
inline MapBase(const Scalar* data, int rows, int cols)
: m_data(data), m_rows(rows), m_cols(cols)
{
ei_assert( (data == 0)
|| ( rows > 0 && (RowsAtCompileTime == Dynamic || RowsAtCompileTime == rows)
&& cols > 0 && (ColsAtCompileTime == Dynamic || ColsAtCompileTime == cols)));
}
Derived& operator=(const MapBase& other)
{
return Base::operator=(other);
}
template<typename OtherDerived>
Derived& operator=(const MatrixBase<OtherDerived>& other)
{
return Base::operator=(other);
}
using Base::operator*=;
template<typename OtherDerived>
Derived& operator+=(const MatrixBase<OtherDerived>& other)
{ return derived() = forceAligned() + other; }
template<typename OtherDerived>
Derived& operator-=(const MatrixBase<OtherDerived>& other)
{ return derived() = forceAligned() - other; }
Derived& operator*=(const Scalar& other)
{ return derived() = forceAligned() * other; }
Derived& operator/=(const Scalar& other)
{ return derived() = forceAligned() / other; }
protected:
const Scalar* EIGEN_RESTRICT m_data;
const ei_int_if_dynamic<RowsAtCompileTime> m_rows;
const ei_int_if_dynamic<ColsAtCompileTime> m_cols;
};
#endif // EIGEN_MAPBASE_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_MATHFUNCTIONS_H
#define EIGEN_MATHFUNCTIONS_H
template<typename T> inline typename NumTraits<T>::Real precision();
template<typename T> inline typename NumTraits<T>::Real machine_epsilon();
template<typename T> inline T ei_random(T a, T b);
template<typename T> inline T ei_random();
template<typename T> inline T ei_random_amplitude()
{
if(NumTraits<T>::HasFloatingPoint) return static_cast<T>(1);
else return static_cast<T>(10);
}
template<typename T> inline T ei_hypot(T x, T y)
{
T _x = ei_abs(x);
T _y = ei_abs(y);
T p = std::max(_x, _y);
T q = std::min(_x, _y);
T qp = q/p;
return p * ei_sqrt(T(1) + qp*qp);
}
/**************
*** int ***
**************/
template<> inline int precision<int>() { return 0; }
template<> inline int machine_epsilon<int>() { return 0; }
inline int ei_real(int x) { return x; }
inline int ei_imag(int) { return 0; }
inline int ei_conj(int x) { return x; }
inline int ei_abs(int x) { return std::abs(x); }
inline int ei_abs2(int x) { return x*x; }
inline int ei_sqrt(int) { ei_assert(false); return 0; }
inline int ei_exp(int) { ei_assert(false); return 0; }
inline int ei_log(int) { ei_assert(false); return 0; }
inline int ei_sin(int) { ei_assert(false); return 0; }
inline int ei_cos(int) { ei_assert(false); return 0; }
inline int ei_atan2(int, int) { ei_assert(false); return 0; }
inline int ei_pow(int x, int y) { return int(std::pow(double(x), y)); }
template<> inline int ei_random(int a, int b)
{
// We can't just do rand()%n as only the high-order bits are really random
return a + static_cast<int>((b-a+1) * (std::rand() / (RAND_MAX + 1.0)));
}
template<> inline int ei_random()
{
return ei_random<int>(-ei_random_amplitude<int>(), ei_random_amplitude<int>());
}
inline bool ei_isMuchSmallerThan(int a, int, int = precision<int>())
{
return a == 0;
}
inline bool ei_isApprox(int a, int b, int = precision<int>())
{
return a == b;
}
inline bool ei_isApproxOrLessThan(int a, int b, int = precision<int>())
{
return a <= b;
}
/**************
*** float ***
**************/
template<> inline float precision<float>() { return 1e-5f; }
template<> inline float machine_epsilon<float>() { return 1.192e-07f; }
inline float ei_real(float x) { return x; }
inline float ei_imag(float) { return 0.f; }
inline float ei_conj(float x) { return x; }
inline float ei_abs(float x) { return std::abs(x); }
inline float ei_abs2(float x) { return x*x; }
inline float ei_sqrt(float x) { return std::sqrt(x); }
inline float ei_exp(float x) { return std::exp(x); }
inline float ei_log(float x) { return std::log(x); }
inline float ei_sin(float x) { return std::sin(x); }
inline float ei_cos(float x) { return std::cos(x); }
inline float ei_atan2(float y, float x) { return std::atan2(y,x); }
inline float ei_pow(float x, float y) { return std::pow(x, y); }
template<> inline float ei_random(float a, float b)
{
#ifdef EIGEN_NICE_RANDOM
int i;
do { i = ei_random<int>(256*int(a),256*int(b));
} while(i==0);
return float(i)/256.f;
#else
return a + (b-a) * float(std::rand()) / float(RAND_MAX);
#endif
}
template<> inline float ei_random()
{
return ei_random<float>(-ei_random_amplitude<float>(), ei_random_amplitude<float>());
}
inline bool ei_isMuchSmallerThan(float a, float b, float prec = precision<float>())
{
return ei_abs(a) <= ei_abs(b) * prec;
}
inline bool ei_isApprox(float a, float b, float prec = precision<float>())
{
return ei_abs(a - b) <= std::min(ei_abs(a), ei_abs(b)) * prec;
}
inline bool ei_isApproxOrLessThan(float a, float b, float prec = precision<float>())
{
return a <= b || ei_isApprox(a, b, prec);
}
/**************
*** double ***
**************/
template<> inline double precision<double>() { return 1e-11; }
template<> inline double machine_epsilon<double>() { return 2.220e-16; }
inline double ei_real(double x) { return x; }
inline double ei_imag(double) { return 0.; }
inline double ei_conj(double x) { return x; }
inline double ei_abs(double x) { return std::abs(x); }
inline double ei_abs2(double x) { return x*x; }
inline double ei_sqrt(double x) { return std::sqrt(x); }
inline double ei_exp(double x) { return std::exp(x); }
inline double ei_log(double x) { return std::log(x); }
inline double ei_sin(double x) { return std::sin(x); }
inline double ei_cos(double x) { return std::cos(x); }
inline double ei_atan2(double y, double x) { return std::atan2(y,x); }
inline double ei_pow(double x, double y) { return std::pow(x, y); }
template<> inline double ei_random(double a, double b)
{
#ifdef EIGEN_NICE_RANDOM
int i;
do { i= ei_random<int>(256*int(a),256*int(b));
} while(i==0);
return i/256.;
#else
return a + (b-a) * std::rand() / RAND_MAX;
#endif
}
template<> inline double ei_random()
{
return ei_random<double>(-ei_random_amplitude<double>(), ei_random_amplitude<double>());
}
inline bool ei_isMuchSmallerThan(double a, double b, double prec = precision<double>())
{
return ei_abs(a) <= ei_abs(b) * prec;
}
inline bool ei_isApprox(double a, double b, double prec = precision<double>())
{
return ei_abs(a - b) <= std::min(ei_abs(a), ei_abs(b)) * prec;
}
inline bool ei_isApproxOrLessThan(double a, double b, double prec = precision<double>())
{
return a <= b || ei_isApprox(a, b, prec);
}
/*********************
*** complex<float> ***
*********************/
template<> inline float precision<std::complex<float> >() { return precision<float>(); }
template<> inline float machine_epsilon<std::complex<float> >() { return machine_epsilon<float>(); }
inline float ei_real(const std::complex<float>& x) { return std::real(x); }
inline float ei_imag(const std::complex<float>& x) { return std::imag(x); }
inline std::complex<float> ei_conj(const std::complex<float>& x) { return std::conj(x); }
inline float ei_abs(const std::complex<float>& x) { return std::abs(x); }
inline float ei_abs2(const std::complex<float>& x) { return std::norm(x); }
inline std::complex<float> ei_exp(std::complex<float> x) { return std::exp(x); }
inline std::complex<float> ei_sin(std::complex<float> x) { return std::sin(x); }
inline std::complex<float> ei_cos(std::complex<float> x) { return std::cos(x); }
inline std::complex<float> ei_atan2(std::complex<float>, std::complex<float> ) { ei_assert(false); return 0; }
template<> inline std::complex<float> ei_random()
{
return std::complex<float>(ei_random<float>(), ei_random<float>());
}
inline bool ei_isMuchSmallerThan(const std::complex<float>& a, const std::complex<float>& b, float prec = precision<float>())
{
return ei_abs2(a) <= ei_abs2(b) * prec * prec;
}
inline bool ei_isMuchSmallerThan(const std::complex<float>& a, float b, float prec = precision<float>())
{
return ei_abs2(a) <= ei_abs2(b) * prec * prec;
}
inline bool ei_isApprox(const std::complex<float>& a, const std::complex<float>& b, float prec = precision<float>())
{
return ei_isApprox(ei_real(a), ei_real(b), prec)
&& ei_isApprox(ei_imag(a), ei_imag(b), prec);
}
// ei_isApproxOrLessThan wouldn't make sense for complex numbers
/**********************
*** complex<double> ***
**********************/
template<> inline double precision<std::complex<double> >() { return precision<double>(); }
template<> inline double machine_epsilon<std::complex<double> >() { return machine_epsilon<double>(); }
inline double ei_real(const std::complex<double>& x) { return std::real(x); }
inline double ei_imag(const std::complex<double>& x) { return std::imag(x); }
inline std::complex<double> ei_conj(const std::complex<double>& x) { return std::conj(x); }
inline double ei_abs(const std::complex<double>& x) { return std::abs(x); }
inline double ei_abs2(const std::complex<double>& x) { return std::norm(x); }
inline std::complex<double> ei_exp(std::complex<double> x) { return std::exp(x); }
inline std::complex<double> ei_sin(std::complex<double> x) { return std::sin(x); }
inline std::complex<double> ei_cos(std::complex<double> x) { return std::cos(x); }
inline std::complex<double> ei_atan2(std::complex<double>, std::complex<double>) { ei_assert(false); return 0; }
template<> inline std::complex<double> ei_random()
{
return std::complex<double>(ei_random<double>(), ei_random<double>());
}
inline bool ei_isMuchSmallerThan(const std::complex<double>& a, const std::complex<double>& b, double prec = precision<double>())
{
return ei_abs2(a) <= ei_abs2(b) * prec * prec;
}
inline bool ei_isMuchSmallerThan(const std::complex<double>& a, double b, double prec = precision<double>())
{
return ei_abs2(a) <= ei_abs2(b) * prec * prec;
}
inline bool ei_isApprox(const std::complex<double>& a, const std::complex<double>& b, double prec = precision<double>())
{
return ei_isApprox(ei_real(a), ei_real(b), prec)
&& ei_isApprox(ei_imag(a), ei_imag(b), prec);
}
// ei_isApproxOrLessThan wouldn't make sense for complex numbers
/******************
*** long double ***
******************/
template<> inline long double precision<long double>() { return precision<double>(); }
template<> inline long double machine_epsilon<long double>() { return 1.084e-19l; }
inline long double ei_real(long double x) { return x; }
inline long double ei_imag(long double) { return 0.; }
inline long double ei_conj(long double x) { return x; }
inline long double ei_abs(long double x) { return std::abs(x); }
inline long double ei_abs2(long double x) { return x*x; }
inline long double ei_sqrt(long double x) { return std::sqrt(x); }
inline long double ei_exp(long double x) { return std::exp(x); }
inline long double ei_log(long double x) { return std::log(x); }
inline long double ei_sin(long double x) { return std::sin(x); }
inline long double ei_cos(long double x) { return std::cos(x); }
inline long double ei_atan2(long double y, long double x) { return std::atan2(y,x); }
inline long double ei_pow(long double x, long double y) { return std::pow(x, y); }
template<> inline long double ei_random(long double a, long double b)
{
return ei_random<double>(static_cast<double>(a),static_cast<double>(b));
}
template<> inline long double ei_random()
{
return ei_random<double>(-ei_random_amplitude<double>(), ei_random_amplitude<double>());
}
inline bool ei_isMuchSmallerThan(long double a, long double b, long double prec = precision<long double>())
{
return ei_abs(a) <= ei_abs(b) * prec;
}
inline bool ei_isApprox(long double a, long double b, long double prec = precision<long double>())
{
return ei_abs(a - b) <= std::min(ei_abs(a), ei_abs(b)) * prec;
}
inline bool ei_isApproxOrLessThan(long double a, long double b, long double prec = precision<long double>())
{
return a <= b || ei_isApprox(a, b, prec);
}
#endif // EIGEN_MATHFUNCTIONS_H

663
Eigen/src/Core/Matrix.h Normal file
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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_MATRIX_H
#define EIGEN_MATRIX_H
#ifdef EIGEN_INITIALIZE_MATRICES_BY_ZERO
# define EIGEN_INITIALIZE_BY_ZERO_IF_THAT_OPTION_IS_ENABLED for(int i=0;i<base().size();++i) coeffRef(i)=Scalar(0);
#else
# define EIGEN_INITIALIZE_BY_ZERO_IF_THAT_OPTION_IS_ENABLED
#endif
/** \class Matrix
*
* \brief The matrix class, also used for vectors and row-vectors
*
* The %Matrix class is the work-horse for all \em dense (\ref dense "note") matrices and vectors within Eigen.
* Vectors are matrices with one column, and row-vectors are matrices with one row.
*
* The %Matrix class encompasses \em both fixed-size and dynamic-size objects (\ref fixedsize "note").
*
* The first three template parameters are required:
* \param _Scalar Numeric type, i.e. float, double, int
* \param _Rows Number of rows, or \b Dynamic
* \param _Cols Number of columns, or \b Dynamic
*
* The remaining template parameters are optional -- in most cases you don't have to worry about them.
* \param _Options A combination of either \b RowMajor or \b ColMajor, and of either
* \b AutoAlign or \b DontAlign.
* The former controls storage order, and defaults to column-major. The latter controls alignment, which is required
* for vectorization. It defaults to aligning matrices except for fixed sizes that aren't a multiple of the packet size.
* \param _MaxRows Maximum number of rows. Defaults to \a _Rows (\ref maxrows "note").
* \param _MaxCols Maximum number of columns. Defaults to \a _Cols (\ref maxrows "note").
*
* Eigen provides a number of typedefs covering the usual cases. Here are some examples:
*
* \li \c Matrix2d is a 2x2 square matrix of doubles (\c Matrix<double, 2, 2>)
* \li \c Vector4f is a vector of 4 floats (\c Matrix<float, 4, 1>)
* \li \c RowVector3i is a row-vector of 3 ints (\c Matrix<int, 1, 3>)
*
* \li \c MatrixXf is a dynamic-size matrix of floats (\c Matrix<float, Dynamic, Dynamic>)
* \li \c VectorXf is a dynamic-size vector of floats (\c Matrix<float, Dynamic, 1>)
*
* See \link matrixtypedefs this page \endlink for a complete list of predefined \em %Matrix and \em Vector typedefs.
*
* You can access elements of vectors and matrices using normal subscripting:
*
* \code
* Eigen::VectorXd v(10);
* v[0] = 0.1;
* v[1] = 0.2;
* v(0) = 0.3;
* v(1) = 0.4;
*
* Eigen::MatrixXi m(10, 10);
* m(0, 1) = 1;
* m(0, 2) = 2;
* m(0, 3) = 3;
* \endcode
*
* <i><b>Some notes:</b></i>
*
* <dl>
* <dt><b>\anchor dense Dense versus sparse:</b></dt>
* <dd>This %Matrix class handles dense, not sparse matrices and vectors. For sparse matrices and vectors, see the Sparse module.
*
* Dense matrices and vectors are plain usual arrays of coefficients. All the coefficients are stored, in an ordinary contiguous array.
* This is unlike Sparse matrices and vectors where the coefficients are stored as a list of nonzero coefficients.</dd>
*
* <dt><b>\anchor fixedsize Fixed-size versus dynamic-size:</b></dt>
* <dd>Fixed-size means that the numbers of rows and columns are known are compile-time. In this case, Eigen allocates the array
* of coefficients as a fixed-size array, as a class member. This makes sense for very small matrices, typically up to 4x4, sometimes up
* to 16x16. Larger matrices should be declared as dynamic-size even if one happens to know their size at compile-time.
*
* Dynamic-size means that the numbers of rows or columns are not necessarily known at compile-time. In this case they are runtime
* variables, and the array of coefficients is allocated dynamically on the heap.
*
* Note that \em dense matrices, be they Fixed-size or Dynamic-size, <em>do not</em> expand dynamically in the sense of a std::map.
* If you want this behavior, see the Sparse module.</dd>
*
* <dt><b>\anchor maxrows _MaxRows and _MaxCols:</b></dt>
* <dd>In most cases, one just leaves these parameters to the default values.
* These parameters mean the maximum size of rows and columns that the matrix may have. They are useful in cases
* when the exact numbers of rows and columns are not known are compile-time, but it is known at compile-time that they cannot
* exceed a certain value. This happens when taking dynamic-size blocks inside fixed-size matrices: in this case _MaxRows and _MaxCols
* are the dimensions of the original matrix, while _Rows and _Cols are Dynamic.</dd>
* </dl>
*
* \see MatrixBase for the majority of the API methods for matrices
*/
template<typename _Scalar, int _Rows, int _Cols, int _Options, int _MaxRows, int _MaxCols>
struct ei_traits<Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols> >
{
typedef _Scalar Scalar;
enum {
RowsAtCompileTime = _Rows,
ColsAtCompileTime = _Cols,
MaxRowsAtCompileTime = _MaxRows,
MaxColsAtCompileTime = _MaxCols,
Flags = ei_compute_matrix_flags<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols>::ret,
CoeffReadCost = NumTraits<Scalar>::ReadCost
};
};
template<typename _Scalar, int _Rows, int _Cols, int _Options, int _MaxRows, int _MaxCols>
class Matrix
: public MatrixBase<Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols> >
{
public:
EIGEN_GENERIC_PUBLIC_INTERFACE(Matrix)
enum { Options = _Options };
friend class Eigen::Map<Matrix, Unaligned>;
typedef class Eigen::Map<Matrix, Unaligned> UnalignedMapType;
friend class Eigen::Map<Matrix, Aligned>;
typedef class Eigen::Map<Matrix, Aligned> AlignedMapType;
protected:
ei_matrix_storage<Scalar, MaxSizeAtCompileTime, RowsAtCompileTime, ColsAtCompileTime, Options> m_storage;
public:
enum { NeedsToAlign = (Options&AutoAlign) == AutoAlign
&& SizeAtCompileTime!=Dynamic && ((sizeof(Scalar)*SizeAtCompileTime)%16)==0 };
EIGEN_MAKE_ALIGNED_OPERATOR_NEW_IF(NeedsToAlign)
Base& base() { return *static_cast<Base*>(this); }
const Base& base() const { return *static_cast<const Base*>(this); }
EIGEN_STRONG_INLINE int rows() const { return m_storage.rows(); }
EIGEN_STRONG_INLINE int cols() const { return m_storage.cols(); }
EIGEN_STRONG_INLINE int stride(void) const
{
if(Flags & RowMajorBit)
return m_storage.cols();
else
return m_storage.rows();
}
EIGEN_STRONG_INLINE const Scalar& coeff(int row, int col) const
{
if(Flags & RowMajorBit)
return m_storage.data()[col + row * m_storage.cols()];
else // column-major
return m_storage.data()[row + col * m_storage.rows()];
}
EIGEN_STRONG_INLINE const Scalar& coeff(int index) const
{
return m_storage.data()[index];
}
EIGEN_STRONG_INLINE Scalar& coeffRef(int row, int col)
{
if(Flags & RowMajorBit)
return m_storage.data()[col + row * m_storage.cols()];
else // column-major
return m_storage.data()[row + col * m_storage.rows()];
}
EIGEN_STRONG_INLINE Scalar& coeffRef(int index)
{
return m_storage.data()[index];
}
template<int LoadMode>
EIGEN_STRONG_INLINE PacketScalar packet(int row, int col) const
{
return ei_ploadt<Scalar, LoadMode>
(m_storage.data() + (Flags & RowMajorBit
? col + row * m_storage.cols()
: row + col * m_storage.rows()));
}
template<int LoadMode>
EIGEN_STRONG_INLINE PacketScalar packet(int index) const
{
return ei_ploadt<Scalar, LoadMode>(m_storage.data() + index);
}
template<int StoreMode>
EIGEN_STRONG_INLINE void writePacket(int row, int col, const PacketScalar& x)
{
ei_pstoret<Scalar, PacketScalar, StoreMode>
(m_storage.data() + (Flags & RowMajorBit
? col + row * m_storage.cols()
: row + col * m_storage.rows()), x);
}
template<int StoreMode>
EIGEN_STRONG_INLINE void writePacket(int index, const PacketScalar& x)
{
ei_pstoret<Scalar, PacketScalar, StoreMode>(m_storage.data() + index, x);
}
/** \returns a const pointer to the data array of this matrix */
EIGEN_STRONG_INLINE const Scalar *data() const
{ return m_storage.data(); }
/** \returns a pointer to the data array of this matrix */
EIGEN_STRONG_INLINE Scalar *data()
{ return m_storage.data(); }
/** Resizes \c *this to a \a rows x \a cols matrix.
*
* Makes sense for dynamic-size matrices only.
*
* If the current number of coefficients of \c *this exactly matches the
* product \a rows * \a cols, then no memory allocation is performed and
* the current values are left unchanged. In all other cases, including
* shrinking, the data is reallocated and all previous values are lost.
*
* \sa resize(int) for vectors.
*/
inline void resize(int rows, int cols)
{
ei_assert((MaxRowsAtCompileTime == Dynamic || MaxRowsAtCompileTime >= rows)
&& (RowsAtCompileTime == Dynamic || RowsAtCompileTime == rows)
&& (MaxColsAtCompileTime == Dynamic || MaxColsAtCompileTime >= cols)
&& (ColsAtCompileTime == Dynamic || ColsAtCompileTime == cols));
#ifdef EIGEN_INITIALIZE_MATRICES_BY_ZERO
int size = rows*cols;
bool size_changed = size != this->size();
m_storage.resize(size, rows, cols);
if(size_changed) EIGEN_INITIALIZE_BY_ZERO_IF_THAT_OPTION_IS_ENABLED
#else
m_storage.resize(rows*cols, rows, cols);
#endif
}
/** Resizes \c *this to a vector of length \a size
*
* \sa resize(int,int) for the details.
*/
inline void resize(int size)
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Matrix)
ei_assert(SizeAtCompileTime == Dynamic || SizeAtCompileTime == size);
#ifdef EIGEN_INITIALIZE_MATRICES_BY_ZERO
bool size_changed = size != this->size();
#endif
if(RowsAtCompileTime == 1)
m_storage.resize(size, 1, size);
else
m_storage.resize(size, size, 1);
#ifdef EIGEN_INITIALIZE_MATRICES_BY_ZERO
if(size_changed) EIGEN_INITIALIZE_BY_ZERO_IF_THAT_OPTION_IS_ENABLED
#endif
}
/** Copies the value of the expression \a other into \c *this with automatic resizing.
*
* *this might be resized to match the dimensions of \a other. If *this was a null matrix (not already initialized),
* it will be initialized.
*
* Note that copying a row-vector into a vector (and conversely) is allowed.
* The resizing, if any, is then done in the appropriate way so that row-vectors
* remain row-vectors and vectors remain vectors.
*/
template<typename OtherDerived>
EIGEN_STRONG_INLINE Matrix& operator=(const MatrixBase<OtherDerived>& other)
{
return _set(other);
}
/** This is a special case of the templated operator=. Its purpose is to
* prevent a default operator= from hiding the templated operator=.
*/
EIGEN_STRONG_INLINE Matrix& operator=(const Matrix& other)
{
return _set(other);
}
EIGEN_INHERIT_ASSIGNMENT_OPERATOR(Matrix, +=)
EIGEN_INHERIT_ASSIGNMENT_OPERATOR(Matrix, -=)
EIGEN_INHERIT_SCALAR_ASSIGNMENT_OPERATOR(Matrix, *=)
EIGEN_INHERIT_SCALAR_ASSIGNMENT_OPERATOR(Matrix, /=)
/** Default constructor.
*
* For fixed-size matrices, does nothing.
*
* For dynamic-size matrices, creates an empty matrix of size 0. Does not allocate any array. Such a matrix
* is called a null matrix. This constructor is the unique way to create null matrices: resizing
* a matrix to 0 is not supported.
*
* \sa resize(int,int)
*/
EIGEN_STRONG_INLINE explicit Matrix() : m_storage()
{
_check_template_params();
EIGEN_INITIALIZE_BY_ZERO_IF_THAT_OPTION_IS_ENABLED
}
#ifndef EIGEN_PARSED_BY_DOXYGEN
/** \internal */
Matrix(ei_constructor_without_unaligned_array_assert)
: m_storage(ei_constructor_without_unaligned_array_assert())
{EIGEN_INITIALIZE_BY_ZERO_IF_THAT_OPTION_IS_ENABLED}
#endif
/** Constructs a vector or row-vector with given dimension. \only_for_vectors
*
* Note that this is only useful for dynamic-size vectors. For fixed-size vectors,
* it is redundant to pass the dimension here, so it makes more sense to use the default
* constructor Matrix() instead.
*/
EIGEN_STRONG_INLINE explicit Matrix(int dim)
: m_storage(dim, RowsAtCompileTime == 1 ? 1 : dim, ColsAtCompileTime == 1 ? 1 : dim)
{
_check_template_params();
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Matrix)
ei_assert(dim > 0);
ei_assert(SizeAtCompileTime == Dynamic || SizeAtCompileTime == dim);
EIGEN_INITIALIZE_BY_ZERO_IF_THAT_OPTION_IS_ENABLED
}
/** This constructor has two very different behaviors, depending on the type of *this.
*
* \li When Matrix is a fixed-size vector type of size 2, this constructor constructs
* an initialized vector. The parameters \a x, \a y are copied into the first and second
* coords of the vector respectively.
* \li Otherwise, this constructor constructs an uninitialized matrix with \a x rows and
* \a y columns. This is useful for dynamic-size matrices. For fixed-size matrices,
* it is redundant to pass these parameters, so one should use the default constructor
* Matrix() instead.
*/
EIGEN_STRONG_INLINE Matrix(int x, int y) : m_storage(x*y, x, y)
{
_check_template_params();
if((RowsAtCompileTime == 1 && ColsAtCompileTime == 2)
|| (RowsAtCompileTime == 2 && ColsAtCompileTime == 1))
{
m_storage.data()[0] = Scalar(x);
m_storage.data()[1] = Scalar(y);
}
else
{
ei_assert(x > 0 && (RowsAtCompileTime == Dynamic || RowsAtCompileTime == x)
&& y > 0 && (ColsAtCompileTime == Dynamic || ColsAtCompileTime == y));
EIGEN_INITIALIZE_BY_ZERO_IF_THAT_OPTION_IS_ENABLED
}
}
/** constructs an initialized 2D vector with given coefficients */
EIGEN_STRONG_INLINE Matrix(const float& x, const float& y)
{
_check_template_params();
EIGEN_STATIC_ASSERT_VECTOR_SPECIFIC_SIZE(Matrix, 2)
m_storage.data()[0] = x;
m_storage.data()[1] = y;
}
/** constructs an initialized 2D vector with given coefficients */
EIGEN_STRONG_INLINE Matrix(const double& x, const double& y)
{
_check_template_params();
EIGEN_STATIC_ASSERT_VECTOR_SPECIFIC_SIZE(Matrix, 2)
m_storage.data()[0] = x;
m_storage.data()[1] = y;
}
/** constructs an initialized 3D vector with given coefficients */
EIGEN_STRONG_INLINE Matrix(const Scalar& x, const Scalar& y, const Scalar& z)
{
_check_template_params();
EIGEN_STATIC_ASSERT_VECTOR_SPECIFIC_SIZE(Matrix, 3)
m_storage.data()[0] = x;
m_storage.data()[1] = y;
m_storage.data()[2] = z;
}
/** constructs an initialized 4D vector with given coefficients */
EIGEN_STRONG_INLINE Matrix(const Scalar& x, const Scalar& y, const Scalar& z, const Scalar& w)
{
_check_template_params();
EIGEN_STATIC_ASSERT_VECTOR_SPECIFIC_SIZE(Matrix, 4)
m_storage.data()[0] = x;
m_storage.data()[1] = y;
m_storage.data()[2] = z;
m_storage.data()[3] = w;
}
explicit Matrix(const Scalar *data);
/** Constructor copying the value of the expression \a other */
template<typename OtherDerived>
EIGEN_STRONG_INLINE Matrix(const MatrixBase<OtherDerived>& other)
: m_storage(other.rows() * other.cols(), other.rows(), other.cols())
{
_check_template_params();
_set_noalias(other);
}
/** Copy constructor */
EIGEN_STRONG_INLINE Matrix(const Matrix& other)
: Base(), m_storage(other.rows() * other.cols(), other.rows(), other.cols())
{
_check_template_params();
_set_noalias(other);
}
/** Destructor */
inline ~Matrix() {}
/** Override MatrixBase::swap() since for dynamic-sized matrices of same type it is enough to swap the
* data pointers.
*/
template<typename OtherDerived>
void swap(const MatrixBase<OtherDerived>& other);
/** \name Map
* These are convenience functions returning Map objects.
*
* \warning Do not use MapAligned in the Eigen 2.0. Mapping aligned arrays will be fully
* supported in Eigen 3.0 (already implemented in the development branch)
*
* \see class Map
*/
//@{
inline static const UnalignedMapType Map(const Scalar* data)
{ return UnalignedMapType(data); }
inline static UnalignedMapType Map(Scalar* data)
{ return UnalignedMapType(data); }
inline static const UnalignedMapType Map(const Scalar* data, int size)
{ return UnalignedMapType(data, size); }
inline static UnalignedMapType Map(Scalar* data, int size)
{ return UnalignedMapType(data, size); }
inline static const UnalignedMapType Map(const Scalar* data, int rows, int cols)
{ return UnalignedMapType(data, rows, cols); }
inline static UnalignedMapType Map(Scalar* data, int rows, int cols)
{ return UnalignedMapType(data, rows, cols); }
inline static const AlignedMapType MapAligned(const Scalar* data)
{ return AlignedMapType(data); }
inline static AlignedMapType MapAligned(Scalar* data)
{ return AlignedMapType(data); }
inline static const AlignedMapType MapAligned(const Scalar* data, int size)
{ return AlignedMapType(data, size); }
inline static AlignedMapType MapAligned(Scalar* data, int size)
{ return AlignedMapType(data, size); }
inline static const AlignedMapType MapAligned(const Scalar* data, int rows, int cols)
{ return AlignedMapType(data, rows, cols); }
inline static AlignedMapType MapAligned(Scalar* data, int rows, int cols)
{ return AlignedMapType(data, rows, cols); }
//@}
using Base::setConstant;
Matrix& setConstant(int size, const Scalar& value);
Matrix& setConstant(int rows, int cols, const Scalar& value);
using Base::setZero;
Matrix& setZero(int size);
Matrix& setZero(int rows, int cols);
using Base::setOnes;
Matrix& setOnes(int size);
Matrix& setOnes(int rows, int cols);
using Base::setRandom;
Matrix& setRandom(int size);
Matrix& setRandom(int rows, int cols);
using Base::setIdentity;
Matrix& setIdentity(int rows, int cols);
/////////// Geometry module ///////////
template<typename OtherDerived>
explicit Matrix(const RotationBase<OtherDerived,ColsAtCompileTime>& r);
template<typename OtherDerived>
Matrix& operator=(const RotationBase<OtherDerived,ColsAtCompileTime>& r);
// allow to extend Matrix outside Eigen
#ifdef EIGEN_MATRIX_PLUGIN
#include EIGEN_MATRIX_PLUGIN
#endif
private:
/** \internal Resizes *this in preparation for assigning \a other to it.
* Takes care of doing all the checking that's needed.
*
* Note that copying a row-vector into a vector (and conversely) is allowed.
* The resizing, if any, is then done in the appropriate way so that row-vectors
* remain row-vectors and vectors remain vectors.
*/
template<typename OtherDerived>
EIGEN_STRONG_INLINE void _resize_to_match(const MatrixBase<OtherDerived>& other)
{
if(RowsAtCompileTime == 1)
{
ei_assert(other.isVector());
resize(1, other.size());
}
else if(ColsAtCompileTime == 1)
{
ei_assert(other.isVector());
resize(other.size(), 1);
}
else resize(other.rows(), other.cols());
}
/** \internal Copies the value of the expression \a other into \c *this with automatic resizing.
*
* *this might be resized to match the dimensions of \a other. If *this was a null matrix (not already initialized),
* it will be initialized.
*
* Note that copying a row-vector into a vector (and conversely) is allowed.
* The resizing, if any, is then done in the appropriate way so that row-vectors
* remain row-vectors and vectors remain vectors.
*
* \sa operator=(const MatrixBase<OtherDerived>&), _set_noalias()
*/
template<typename OtherDerived>
EIGEN_STRONG_INLINE Matrix& _set(const MatrixBase<OtherDerived>& other)
{
// this enum introduced to fix compilation with gcc 3.3
enum { cond = int(OtherDerived::Flags) & EvalBeforeAssigningBit };
_set_selector(other.derived(), typename ei_meta_if<bool(cond), ei_meta_true, ei_meta_false>::ret());
return *this;
}
template<typename OtherDerived>
EIGEN_STRONG_INLINE void _set_selector(const OtherDerived& other, const ei_meta_true&) { _set_noalias(other.eval()); }
template<typename OtherDerived>
EIGEN_STRONG_INLINE void _set_selector(const OtherDerived& other, const ei_meta_false&) { _set_noalias(other); }
/** \internal Like _set() but additionally makes the assumption that no aliasing effect can happen (which
* is the case when creating a new matrix) so one can enforce lazy evaluation.
*
* \sa operator=(const MatrixBase<OtherDerived>&), _set()
*/
template<typename OtherDerived>
EIGEN_STRONG_INLINE Matrix& _set_noalias(const MatrixBase<OtherDerived>& other)
{
_resize_to_match(other);
// the 'false' below means to enforce lazy evaluation. We don't use lazyAssign() because
// it wouldn't allow to copy a row-vector into a column-vector.
return ei_assign_selector<Matrix,OtherDerived,false>::run(*this, other.derived());
}
static EIGEN_STRONG_INLINE void _check_template_params()
{
EIGEN_STATIC_ASSERT((_Rows > 0
&& _Cols > 0
&& _MaxRows <= _Rows
&& _MaxCols <= _Cols
&& (_Options & (AutoAlign|RowMajor)) == _Options),
INVALID_MATRIX_TEMPLATE_PARAMETERS)
}
template<typename MatrixType, typename OtherDerived, bool IsSameType, bool IsDynamicSize>
friend struct ei_matrix_swap_impl;
};
template<typename MatrixType, typename OtherDerived,
bool IsSameType = ei_is_same_type<MatrixType, OtherDerived>::ret,
bool IsDynamicSize = MatrixType::SizeAtCompileTime==Dynamic>
struct ei_matrix_swap_impl
{
static inline void run(MatrixType& matrix, MatrixBase<OtherDerived>& other)
{
matrix.base().swap(other);
}
};
template<typename MatrixType, typename OtherDerived>
struct ei_matrix_swap_impl<MatrixType, OtherDerived, true, true>
{
static inline void run(MatrixType& matrix, MatrixBase<OtherDerived>& other)
{
matrix.m_storage.swap(other.derived().m_storage);
}
};
template<typename _Scalar, int _Rows, int _Cols, int _Options, int _MaxRows, int _MaxCols>
template<typename OtherDerived>
inline void Matrix<_Scalar, _Rows, _Cols, _Options, _MaxRows, _MaxCols>::swap(const MatrixBase<OtherDerived>& other)
{
// the Eigen:: here is to work around a stupid ICC 11.1 bug.
Eigen::ei_matrix_swap_impl<Matrix, OtherDerived>::run(*this, *const_cast<MatrixBase<OtherDerived>*>(&other));
}
/** \defgroup matrixtypedefs Global matrix typedefs
*
* \ingroup Core_Module
*
* Eigen defines several typedef shortcuts for most common matrix and vector types.
*
* The general patterns are the following:
*
* \c MatrixSizeType where \c Size can be \c 2,\c 3,\c 4 for fixed size square matrices or \c X for dynamic size,
* and where \c Type can be \c i for integer, \c f for float, \c d for double, \c cf for complex float, \c cd
* for complex double.
*
* For example, \c Matrix3d is a fixed-size 3x3 matrix type of doubles, and \c MatrixXf is a dynamic-size matrix of floats.
*
* There are also \c VectorSizeType and \c RowVectorSizeType which are self-explanatory. For example, \c Vector4cf is
* a fixed-size vector of 4 complex floats.
*
* \sa class Matrix
*/
#define EIGEN_MAKE_TYPEDEFS(Type, TypeSuffix, Size, SizeSuffix) \
/** \ingroup matrixtypedefs */ \
typedef Matrix<Type, Size, Size> Matrix##SizeSuffix##TypeSuffix; \
/** \ingroup matrixtypedefs */ \
typedef Matrix<Type, Size, 1> Vector##SizeSuffix##TypeSuffix; \
/** \ingroup matrixtypedefs */ \
typedef Matrix<Type, 1, Size> RowVector##SizeSuffix##TypeSuffix;
#define EIGEN_MAKE_TYPEDEFS_ALL_SIZES(Type, TypeSuffix) \
EIGEN_MAKE_TYPEDEFS(Type, TypeSuffix, 2, 2) \
EIGEN_MAKE_TYPEDEFS(Type, TypeSuffix, 3, 3) \
EIGEN_MAKE_TYPEDEFS(Type, TypeSuffix, 4, 4) \
EIGEN_MAKE_TYPEDEFS(Type, TypeSuffix, Dynamic, X)
EIGEN_MAKE_TYPEDEFS_ALL_SIZES(int, i)
EIGEN_MAKE_TYPEDEFS_ALL_SIZES(float, f)
EIGEN_MAKE_TYPEDEFS_ALL_SIZES(double, d)
EIGEN_MAKE_TYPEDEFS_ALL_SIZES(std::complex<float>, cf)
EIGEN_MAKE_TYPEDEFS_ALL_SIZES(std::complex<double>, cd)
#undef EIGEN_MAKE_TYPEDEFS_ALL_SIZES
#undef EIGEN_MAKE_TYPEDEFS
#undef EIGEN_MAKE_TYPEDEFS_LARGE
#define EIGEN_USING_MATRIX_TYPEDEFS_FOR_TYPE_AND_SIZE(TypeSuffix, SizeSuffix) \
using Eigen::Matrix##SizeSuffix##TypeSuffix; \
using Eigen::Vector##SizeSuffix##TypeSuffix; \
using Eigen::RowVector##SizeSuffix##TypeSuffix;
#define EIGEN_USING_MATRIX_TYPEDEFS_FOR_TYPE(TypeSuffix) \
EIGEN_USING_MATRIX_TYPEDEFS_FOR_TYPE_AND_SIZE(TypeSuffix, 2) \
EIGEN_USING_MATRIX_TYPEDEFS_FOR_TYPE_AND_SIZE(TypeSuffix, 3) \
EIGEN_USING_MATRIX_TYPEDEFS_FOR_TYPE_AND_SIZE(TypeSuffix, 4) \
EIGEN_USING_MATRIX_TYPEDEFS_FOR_TYPE_AND_SIZE(TypeSuffix, X) \
#define EIGEN_USING_MATRIX_TYPEDEFS \
EIGEN_USING_MATRIX_TYPEDEFS_FOR_TYPE(i) \
EIGEN_USING_MATRIX_TYPEDEFS_FOR_TYPE(f) \
EIGEN_USING_MATRIX_TYPEDEFS_FOR_TYPE(d) \
EIGEN_USING_MATRIX_TYPEDEFS_FOR_TYPE(cf) \
EIGEN_USING_MATRIX_TYPEDEFS_FOR_TYPE(cd)
#endif // EIGEN_MATRIX_H

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Eigen/src/Core/MatrixBase.h Normal file
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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_MATRIXBASE_H
#define EIGEN_MATRIXBASE_H
/** \class MatrixBase
*
* \brief Base class for all matrices, vectors, and expressions
*
* This class is the base that is inherited by all matrix, vector, and expression
* types. Most of the Eigen API is contained in this class. Other important classes for
* the Eigen API are Matrix, Cwise, and PartialRedux.
*
* Note that some methods are defined in the \ref Array module.
*
* \param Derived is the derived type, e.g. a matrix type, or an expression, etc.
*
* When writing a function taking Eigen objects as argument, if you want your function
* to take as argument any matrix, vector, or expression, just let it take a
* MatrixBase argument. As an example, here is a function printFirstRow which, given
* a matrix, vector, or expression \a x, prints the first row of \a x.
*
* \code
template<typename Derived>
void printFirstRow(const Eigen::MatrixBase<Derived>& x)
{
cout << x.row(0) << endl;
}
* \endcode
*
*/
template<typename Derived> class MatrixBase
{
public:
#ifndef EIGEN_PARSED_BY_DOXYGEN
class InnerIterator;
typedef typename ei_traits<Derived>::Scalar Scalar;
typedef typename ei_packet_traits<Scalar>::type PacketScalar;
#endif // not EIGEN_PARSED_BY_DOXYGEN
enum {
RowsAtCompileTime = ei_traits<Derived>::RowsAtCompileTime,
/**< The number of rows at compile-time. This is just a copy of the value provided
* by the \a Derived type. If a value is not known at compile-time,
* it is set to the \a Dynamic constant.
* \sa MatrixBase::rows(), MatrixBase::cols(), ColsAtCompileTime, SizeAtCompileTime */
ColsAtCompileTime = ei_traits<Derived>::ColsAtCompileTime,
/**< The number of columns at compile-time. This is just a copy of the value provided
* by the \a Derived type. If a value is not known at compile-time,
* it is set to the \a Dynamic constant.
* \sa MatrixBase::rows(), MatrixBase::cols(), RowsAtCompileTime, SizeAtCompileTime */
SizeAtCompileTime = (ei_size_at_compile_time<ei_traits<Derived>::RowsAtCompileTime,
ei_traits<Derived>::ColsAtCompileTime>::ret),
/**< This is equal to the number of coefficients, i.e. the number of
* rows times the number of columns, or to \a Dynamic if this is not
* known at compile-time. \sa RowsAtCompileTime, ColsAtCompileTime */
MaxRowsAtCompileTime = ei_traits<Derived>::MaxRowsAtCompileTime,
/**< This value is equal to the maximum possible number of rows that this expression
* might have. If this expression might have an arbitrarily high number of rows,
* this value is set to \a Dynamic.
*
* This value is useful to know when evaluating an expression, in order to determine
* whether it is possible to avoid doing a dynamic memory allocation.
*
* \sa RowsAtCompileTime, MaxColsAtCompileTime, MaxSizeAtCompileTime
*/
MaxColsAtCompileTime = ei_traits<Derived>::MaxColsAtCompileTime,
/**< This value is equal to the maximum possible number of columns that this expression
* might have. If this expression might have an arbitrarily high number of columns,
* this value is set to \a Dynamic.
*
* This value is useful to know when evaluating an expression, in order to determine
* whether it is possible to avoid doing a dynamic memory allocation.
*
* \sa ColsAtCompileTime, MaxRowsAtCompileTime, MaxSizeAtCompileTime
*/
MaxSizeAtCompileTime = (ei_size_at_compile_time<ei_traits<Derived>::MaxRowsAtCompileTime,
ei_traits<Derived>::MaxColsAtCompileTime>::ret),
/**< This value is equal to the maximum possible number of coefficients that this expression
* might have. If this expression might have an arbitrarily high number of coefficients,
* this value is set to \a Dynamic.
*
* This value is useful to know when evaluating an expression, in order to determine
* whether it is possible to avoid doing a dynamic memory allocation.
*
* \sa SizeAtCompileTime, MaxRowsAtCompileTime, MaxColsAtCompileTime
*/
IsVectorAtCompileTime = ei_traits<Derived>::RowsAtCompileTime == 1
|| ei_traits<Derived>::ColsAtCompileTime == 1,
/**< This is set to true if either the number of rows or the number of
* columns is known at compile-time to be equal to 1. Indeed, in that case,
* we are dealing with a column-vector (if there is only one column) or with
* a row-vector (if there is only one row). */
Flags = ei_traits<Derived>::Flags,
/**< This stores expression \ref flags flags which may or may not be inherited by new expressions
* constructed from this one. See the \ref flags "list of flags".
*/
CoeffReadCost = ei_traits<Derived>::CoeffReadCost
/**< This is a rough measure of how expensive it is to read one coefficient from
* this expression.
*/
};
#ifndef EIGEN_PARSED_BY_DOXYGEN
/** This is the "real scalar" type; if the \a Scalar type is already real numbers
* (e.g. int, float or double) then \a RealScalar is just the same as \a Scalar. If
* \a Scalar is \a std::complex<T> then RealScalar is \a T.
*
* \sa class NumTraits
*/
typedef typename NumTraits<Scalar>::Real RealScalar;
/** type of the equivalent square matrix */
typedef Matrix<Scalar,EIGEN_ENUM_MAX(RowsAtCompileTime,ColsAtCompileTime),
EIGEN_ENUM_MAX(RowsAtCompileTime,ColsAtCompileTime)> SquareMatrixType;
#endif // not EIGEN_PARSED_BY_DOXYGEN
/** \returns the number of rows. \sa cols(), RowsAtCompileTime */
inline int rows() const { return derived().rows(); }
/** \returns the number of columns. \sa rows(), ColsAtCompileTime*/
inline int cols() const { return derived().cols(); }
/** \returns the number of coefficients, which is \a rows()*cols().
* \sa rows(), cols(), SizeAtCompileTime. */
inline int size() const { return rows() * cols(); }
/** \returns the number of nonzero coefficients which is in practice the number
* of stored coefficients. */
inline int nonZeros() const { return size(); }
/** \returns true if either the number of rows or the number of columns is equal to 1.
* In other words, this function returns
* \code rows()==1 || cols()==1 \endcode
* \sa rows(), cols(), IsVectorAtCompileTime. */
inline bool isVector() const { return rows()==1 || cols()==1; }
/** \returns the size of the storage major dimension,
* i.e., the number of columns for a columns major matrix, and the number of rows otherwise */
int outerSize() const { return (int(Flags)&RowMajorBit) ? this->rows() : this->cols(); }
/** \returns the size of the inner dimension according to the storage order,
* i.e., the number of rows for a columns major matrix, and the number of cols otherwise */
int innerSize() const { return (int(Flags)&RowMajorBit) ? this->cols() : this->rows(); }
#ifndef EIGEN_PARSED_BY_DOXYGEN
/** \internal the plain matrix type corresponding to this expression. Note that is not necessarily
* exactly the return type of eval(): in the case of plain matrices, the return type of eval() is a const
* reference to a matrix, not a matrix! It guaranteed however, that the return type of eval() is either
* PlainMatrixType or const PlainMatrixType&.
*/
typedef typename ei_plain_matrix_type<Derived>::type PlainMatrixType;
/** \internal the column-major plain matrix type corresponding to this expression. Note that is not necessarily
* exactly the return type of eval(): in the case of plain matrices, the return type of eval() is a const
* reference to a matrix, not a matrix!
* The only difference from PlainMatrixType is that PlainMatrixType_ColMajor is guaranteed to be column-major.
*/
typedef typename ei_plain_matrix_type<Derived>::type PlainMatrixType_ColMajor;
/** \internal Represents a matrix with all coefficients equal to one another*/
typedef CwiseNullaryOp<ei_scalar_constant_op<Scalar>,Derived> ConstantReturnType;
/** \internal Represents a scalar multiple of a matrix */
typedef CwiseUnaryOp<ei_scalar_multiple_op<Scalar>, Derived> ScalarMultipleReturnType;
/** \internal Represents a quotient of a matrix by a scalar*/
typedef CwiseUnaryOp<ei_scalar_quotient1_op<Scalar>, Derived> ScalarQuotient1ReturnType;
/** \internal the return type of MatrixBase::conjugate() */
typedef typename ei_meta_if<NumTraits<Scalar>::IsComplex,
const CwiseUnaryOp<ei_scalar_conjugate_op<Scalar>, Derived>,
const Derived&
>::ret ConjugateReturnType;
/** \internal the return type of MatrixBase::real() */
typedef CwiseUnaryOp<ei_scalar_real_op<Scalar>, Derived> RealReturnType;
/** \internal the return type of MatrixBase::imag() */
typedef CwiseUnaryOp<ei_scalar_imag_op<Scalar>, Derived> ImagReturnType;
/** \internal the return type of MatrixBase::adjoint() */
typedef Eigen::Transpose<NestByValue<typename ei_cleantype<ConjugateReturnType>::type> >
AdjointReturnType;
/** \internal the return type of MatrixBase::eigenvalues() */
typedef Matrix<typename NumTraits<typename ei_traits<Derived>::Scalar>::Real, ei_traits<Derived>::ColsAtCompileTime, 1> EigenvaluesReturnType;
/** \internal expression tyepe of a column */
typedef Block<Derived, ei_traits<Derived>::RowsAtCompileTime, 1> ColXpr;
/** \internal expression tyepe of a column */
typedef Block<Derived, 1, ei_traits<Derived>::ColsAtCompileTime> RowXpr;
/** \internal the return type of identity */
typedef CwiseNullaryOp<ei_scalar_identity_op<Scalar>,Derived> IdentityReturnType;
/** \internal the return type of unit vectors */
typedef Block<CwiseNullaryOp<ei_scalar_identity_op<Scalar>, SquareMatrixType>,
ei_traits<Derived>::RowsAtCompileTime,
ei_traits<Derived>::ColsAtCompileTime> BasisReturnType;
#endif // not EIGEN_PARSED_BY_DOXYGEN
/** Copies \a other into *this. \returns a reference to *this. */
template<typename OtherDerived>
Derived& operator=(const MatrixBase<OtherDerived>& other);
/** Special case of the template operator=, in order to prevent the compiler
* from generating a default operator= (issue hit with g++ 4.1)
*/
inline Derived& operator=(const MatrixBase& other)
{
return this->operator=<Derived>(other);
}
#ifndef EIGEN_PARSED_BY_DOXYGEN
/** Copies \a other into *this without evaluating other. \returns a reference to *this. */
template<typename OtherDerived>
Derived& lazyAssign(const MatrixBase<OtherDerived>& other);
/** Overloaded for cache friendly product evaluation */
template<typename Lhs, typename Rhs>
Derived& lazyAssign(const Product<Lhs,Rhs,CacheFriendlyProduct>& product);
/** Overloaded for cache friendly product evaluation */
template<typename OtherDerived>
Derived& lazyAssign(const Flagged<OtherDerived, 0, EvalBeforeNestingBit | EvalBeforeAssigningBit>& other)
{ return lazyAssign(other._expression()); }
#endif // not EIGEN_PARSED_BY_DOXYGEN
CommaInitializer<Derived> operator<< (const Scalar& s);
template<typename OtherDerived>
CommaInitializer<Derived> operator<< (const MatrixBase<OtherDerived>& other);
const Scalar coeff(int row, int col) const;
const Scalar operator()(int row, int col) const;
Scalar& coeffRef(int row, int col);
Scalar& operator()(int row, int col);
const Scalar coeff(int index) const;
const Scalar operator[](int index) const;
const Scalar operator()(int index) const;
Scalar& coeffRef(int index);
Scalar& operator[](int index);
Scalar& operator()(int index);
#ifndef EIGEN_PARSED_BY_DOXYGEN
template<typename OtherDerived>
void copyCoeff(int row, int col, const MatrixBase<OtherDerived>& other);
template<typename OtherDerived>
void copyCoeff(int index, const MatrixBase<OtherDerived>& other);
template<typename OtherDerived, int StoreMode, int LoadMode>
void copyPacket(int row, int col, const MatrixBase<OtherDerived>& other);
template<typename OtherDerived, int StoreMode, int LoadMode>
void copyPacket(int index, const MatrixBase<OtherDerived>& other);
#endif // not EIGEN_PARSED_BY_DOXYGEN
template<int LoadMode>
PacketScalar packet(int row, int col) const;
template<int StoreMode>
void writePacket(int row, int col, const PacketScalar& x);
template<int LoadMode>
PacketScalar packet(int index) const;
template<int StoreMode>
void writePacket(int index, const PacketScalar& x);
const Scalar x() const;
const Scalar y() const;
const Scalar z() const;
const Scalar w() const;
Scalar& x();
Scalar& y();
Scalar& z();
Scalar& w();
const CwiseUnaryOp<ei_scalar_opposite_op<typename ei_traits<Derived>::Scalar>,Derived> operator-() const;
template<typename OtherDerived>
const CwiseBinaryOp<ei_scalar_sum_op<typename ei_traits<Derived>::Scalar>, Derived, OtherDerived>
operator+(const MatrixBase<OtherDerived> &other) const;
template<typename OtherDerived>
const CwiseBinaryOp<ei_scalar_difference_op<typename ei_traits<Derived>::Scalar>, Derived, OtherDerived>
operator-(const MatrixBase<OtherDerived> &other) const;
template<typename OtherDerived>
Derived& operator+=(const MatrixBase<OtherDerived>& other);
template<typename OtherDerived>
Derived& operator-=(const MatrixBase<OtherDerived>& other);
template<typename Lhs,typename Rhs>
Derived& operator+=(const Flagged<Product<Lhs,Rhs,CacheFriendlyProduct>, 0, EvalBeforeNestingBit | EvalBeforeAssigningBit>& other);
Derived& operator*=(const Scalar& other);
Derived& operator/=(const Scalar& other);
const ScalarMultipleReturnType operator*(const Scalar& scalar) const;
const CwiseUnaryOp<ei_scalar_quotient1_op<typename ei_traits<Derived>::Scalar>, Derived>
operator/(const Scalar& scalar) const;
inline friend const CwiseUnaryOp<ei_scalar_multiple_op<typename ei_traits<Derived>::Scalar>, Derived>
operator*(const Scalar& scalar, const MatrixBase& matrix)
{ return matrix*scalar; }
template<typename OtherDerived>
const typename ProductReturnType<Derived,OtherDerived>::Type
operator*(const MatrixBase<OtherDerived> &other) const;
template<typename OtherDerived>
Derived& operator*=(const MatrixBase<OtherDerived>& other);
template<typename OtherDerived>
typename ei_plain_matrix_type_column_major<OtherDerived>::type
solveTriangular(const MatrixBase<OtherDerived>& other) const;
template<typename OtherDerived>
void solveTriangularInPlace(const MatrixBase<OtherDerived>& other) const;
template<typename OtherDerived>
Scalar dot(const MatrixBase<OtherDerived>& other) const;
RealScalar squaredNorm() const;
RealScalar norm() const;
const PlainMatrixType normalized() const;
void normalize();
Eigen::Transpose<Derived> transpose();
const Eigen::Transpose<Derived> transpose() const;
void transposeInPlace();
const AdjointReturnType adjoint() const;
RowXpr row(int i);
const RowXpr row(int i) const;
ColXpr col(int i);
const ColXpr col(int i) const;
Minor<Derived> minor(int row, int col);
const Minor<Derived> minor(int row, int col) const;
typename BlockReturnType<Derived>::Type block(int startRow, int startCol, int blockRows, int blockCols);
const typename BlockReturnType<Derived>::Type
block(int startRow, int startCol, int blockRows, int blockCols) const;
typename BlockReturnType<Derived>::SubVectorType segment(int start, int size);
const typename BlockReturnType<Derived>::SubVectorType segment(int start, int size) const;
typename BlockReturnType<Derived,Dynamic>::SubVectorType start(int size);
const typename BlockReturnType<Derived,Dynamic>::SubVectorType start(int size) const;
typename BlockReturnType<Derived,Dynamic>::SubVectorType end(int size);
const typename BlockReturnType<Derived,Dynamic>::SubVectorType end(int size) const;
typename BlockReturnType<Derived>::Type corner(CornerType type, int cRows, int cCols);
const typename BlockReturnType<Derived>::Type corner(CornerType type, int cRows, int cCols) const;
template<int BlockRows, int BlockCols>
typename BlockReturnType<Derived, BlockRows, BlockCols>::Type block(int startRow, int startCol);
template<int BlockRows, int BlockCols>
const typename BlockReturnType<Derived, BlockRows, BlockCols>::Type block(int startRow, int startCol) const;
template<int CRows, int CCols>
typename BlockReturnType<Derived, CRows, CCols>::Type corner(CornerType type);
template<int CRows, int CCols>
const typename BlockReturnType<Derived, CRows, CCols>::Type corner(CornerType type) const;
template<int Size> typename BlockReturnType<Derived,Size>::SubVectorType start(void);
template<int Size> const typename BlockReturnType<Derived,Size>::SubVectorType start() const;
template<int Size> typename BlockReturnType<Derived,Size>::SubVectorType end();
template<int Size> const typename BlockReturnType<Derived,Size>::SubVectorType end() const;
template<int Size> typename BlockReturnType<Derived,Size>::SubVectorType segment(int start);
template<int Size> const typename BlockReturnType<Derived,Size>::SubVectorType segment(int start) const;
DiagonalCoeffs<Derived> diagonal();
const DiagonalCoeffs<Derived> diagonal() const;
template<unsigned int Mode> Part<Derived, Mode> part();
template<unsigned int Mode> const Part<Derived, Mode> part() const;
static const ConstantReturnType
Constant(int rows, int cols, const Scalar& value);
static const ConstantReturnType
Constant(int size, const Scalar& value);
static const ConstantReturnType
Constant(const Scalar& value);
template<typename CustomNullaryOp>
static const CwiseNullaryOp<CustomNullaryOp, Derived>
NullaryExpr(int rows, int cols, const CustomNullaryOp& func);
template<typename CustomNullaryOp>
static const CwiseNullaryOp<CustomNullaryOp, Derived>
NullaryExpr(int size, const CustomNullaryOp& func);
template<typename CustomNullaryOp>
static const CwiseNullaryOp<CustomNullaryOp, Derived>
NullaryExpr(const CustomNullaryOp& func);
static const ConstantReturnType Zero(int rows, int cols);
static const ConstantReturnType Zero(int size);
static const ConstantReturnType Zero();
static const ConstantReturnType Ones(int rows, int cols);
static const ConstantReturnType Ones(int size);
static const ConstantReturnType Ones();
static const IdentityReturnType Identity();
static const IdentityReturnType Identity(int rows, int cols);
static const BasisReturnType Unit(int size, int i);
static const BasisReturnType Unit(int i);
static const BasisReturnType UnitX();
static const BasisReturnType UnitY();
static const BasisReturnType UnitZ();
static const BasisReturnType UnitW();
const DiagonalMatrix<Derived> asDiagonal() const;
void fill(const Scalar& value);
Derived& setConstant(const Scalar& value);
Derived& setZero();
Derived& setOnes();
Derived& setRandom();
Derived& setIdentity();
template<typename OtherDerived>
bool isApprox(const MatrixBase<OtherDerived>& other,
RealScalar prec = precision<Scalar>()) const;
bool isMuchSmallerThan(const RealScalar& other,
RealScalar prec = precision<Scalar>()) const;
template<typename OtherDerived>
bool isMuchSmallerThan(const MatrixBase<OtherDerived>& other,
RealScalar prec = precision<Scalar>()) const;
bool isApproxToConstant(const Scalar& value, RealScalar prec = precision<Scalar>()) const;
bool isConstant(const Scalar& value, RealScalar prec = precision<Scalar>()) const;
bool isZero(RealScalar prec = precision<Scalar>()) const;
bool isOnes(RealScalar prec = precision<Scalar>()) const;
bool isIdentity(RealScalar prec = precision<Scalar>()) const;
bool isDiagonal(RealScalar prec = precision<Scalar>()) const;
bool isUpperTriangular(RealScalar prec = precision<Scalar>()) const;
bool isLowerTriangular(RealScalar prec = precision<Scalar>()) const;
template<typename OtherDerived>
bool isOrthogonal(const MatrixBase<OtherDerived>& other,
RealScalar prec = precision<Scalar>()) const;
bool isUnitary(RealScalar prec = precision<Scalar>()) const;
template<typename OtherDerived>
inline bool operator==(const MatrixBase<OtherDerived>& other) const
{ return (cwise() == other).all(); }
template<typename OtherDerived>
inline bool operator!=(const MatrixBase<OtherDerived>& other) const
{ return (cwise() != other).any(); }
template<typename NewType>
const CwiseUnaryOp<ei_scalar_cast_op<typename ei_traits<Derived>::Scalar, NewType>, Derived> cast() const;
/** \returns the matrix or vector obtained by evaluating this expression.
*
* Notice that in the case of a plain matrix or vector (not an expression) this function just returns
* a const reference, in order to avoid a useless copy.
*/
EIGEN_STRONG_INLINE const typename ei_eval<Derived>::type eval() const
{ return typename ei_eval<Derived>::type(derived()); }
template<typename OtherDerived>
void swap(const MatrixBase<OtherDerived>& other);
template<unsigned int Added>
const Flagged<Derived, Added, 0> marked() const;
const Flagged<Derived, 0, EvalBeforeNestingBit | EvalBeforeAssigningBit> lazy() const;
/** \returns number of elements to skip to pass from one row (resp. column) to another
* for a row-major (resp. column-major) matrix.
* Combined with coeffRef() and the \ref flags flags, it allows a direct access to the data
* of the underlying matrix.
*/
inline int stride(void) const { return derived().stride(); }
inline const NestByValue<Derived> nestByValue() const;
ConjugateReturnType conjugate() const;
const RealReturnType real() const;
const ImagReturnType imag() const;
template<typename CustomUnaryOp>
const CwiseUnaryOp<CustomUnaryOp, Derived> unaryExpr(const CustomUnaryOp& func = CustomUnaryOp()) const;
template<typename CustomBinaryOp, typename OtherDerived>
const CwiseBinaryOp<CustomBinaryOp, Derived, OtherDerived>
binaryExpr(const MatrixBase<OtherDerived> &other, const CustomBinaryOp& func = CustomBinaryOp()) const;
Scalar sum() const;
Scalar trace() const;
typename ei_traits<Derived>::Scalar minCoeff() const;
typename ei_traits<Derived>::Scalar maxCoeff() const;
typename ei_traits<Derived>::Scalar minCoeff(int* row, int* col) const;
typename ei_traits<Derived>::Scalar maxCoeff(int* row, int* col) const;
typename ei_traits<Derived>::Scalar minCoeff(int* index) const;
typename ei_traits<Derived>::Scalar maxCoeff(int* index) const;
template<typename BinaryOp>
typename ei_result_of<BinaryOp(typename ei_traits<Derived>::Scalar)>::type
redux(const BinaryOp& func) const;
template<typename Visitor>
void visit(Visitor& func) const;
#ifndef EIGEN_PARSED_BY_DOXYGEN
inline const Derived& derived() const { return *static_cast<const Derived*>(this); }
inline Derived& derived() { return *static_cast<Derived*>(this); }
inline Derived& const_cast_derived() const
{ return *static_cast<Derived*>(const_cast<MatrixBase*>(this)); }
#endif // not EIGEN_PARSED_BY_DOXYGEN
const Cwise<Derived> cwise() const;
Cwise<Derived> cwise();
inline const WithFormat<Derived> format(const IOFormat& fmt) const;
/////////// Array module ///////////
bool all(void) const;
bool any(void) const;
int count() const;
const PartialRedux<Derived,Horizontal> rowwise() const;
const PartialRedux<Derived,Vertical> colwise() const;
static const CwiseNullaryOp<ei_scalar_random_op<Scalar>,Derived> Random(int rows, int cols);
static const CwiseNullaryOp<ei_scalar_random_op<Scalar>,Derived> Random(int size);
static const CwiseNullaryOp<ei_scalar_random_op<Scalar>,Derived> Random();
template<typename ThenDerived,typename ElseDerived>
const Select<Derived,ThenDerived,ElseDerived>
select(const MatrixBase<ThenDerived>& thenMatrix,
const MatrixBase<ElseDerived>& elseMatrix) const;
template<typename ThenDerived>
inline const Select<Derived,ThenDerived, NestByValue<typename ThenDerived::ConstantReturnType> >
select(const MatrixBase<ThenDerived>& thenMatrix, typename ThenDerived::Scalar elseScalar) const;
template<typename ElseDerived>
inline const Select<Derived, NestByValue<typename ElseDerived::ConstantReturnType>, ElseDerived >
select(typename ElseDerived::Scalar thenScalar, const MatrixBase<ElseDerived>& elseMatrix) const;
template<int p> RealScalar lpNorm() const;
/////////// LU module ///////////
const LU<PlainMatrixType> lu() const;
const PlainMatrixType inverse() const;
template<typename ResultType>
void computeInverse(MatrixBase<ResultType> *result) const;
Scalar determinant() const;
/////////// Cholesky module ///////////
const LLT<PlainMatrixType> llt() const;
const LDLT<PlainMatrixType> ldlt() const;
/////////// QR module ///////////
const QR<PlainMatrixType> qr() const;
EigenvaluesReturnType eigenvalues() const;
RealScalar operatorNorm() const;
/////////// SVD module ///////////
SVD<PlainMatrixType> svd() const;
/////////// Geometry module ///////////
template<typename OtherDerived>
PlainMatrixType cross(const MatrixBase<OtherDerived>& other) const;
PlainMatrixType unitOrthogonal(void) const;
Matrix<Scalar,3,1> eulerAngles(int a0, int a1, int a2) const;
/////////// Sparse module ///////////
// dense = spasre * dense
template<typename Derived1, typename Derived2>
Derived& lazyAssign(const SparseProduct<Derived1,Derived2,SparseTimeDenseProduct>& product);
// dense = dense * spasre
template<typename Derived1, typename Derived2>
Derived& lazyAssign(const SparseProduct<Derived1,Derived2,DenseTimeSparseProduct>& product);
#ifdef EIGEN_MATRIXBASE_PLUGIN
#include EIGEN_MATRIXBASE_PLUGIN
#endif
protected:
/** Default constructor. Do nothing. */
MatrixBase()
{
/* Just checks for self-consistency of the flags.
* Only do it when debugging Eigen, as this borders on paranoiac and could slow compilation down
*/
#ifdef EIGEN_INTERNAL_DEBUGGING
EIGEN_STATIC_ASSERT(ei_are_flags_consistent<Flags>::ret,
INVALID_MATRIXBASE_TEMPLATE_PARAMETERS)
#endif
}
private:
explicit MatrixBase(int);
MatrixBase(int,int);
template<typename OtherDerived> explicit MatrixBase(const MatrixBase<OtherDerived>&);
};
#endif // EIGEN_MATRIXBASE_H

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@@ -0,0 +1,249 @@
// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2006-2009 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_MATRIXSTORAGE_H
#define EIGEN_MATRIXSTORAGE_H
struct ei_constructor_without_unaligned_array_assert {};
/** \internal
* Static array automatically aligned if the total byte size is a multiple of 16 and the matrix options require auto alignment
*/
template <typename T, int Size, int MatrixOptions,
bool Align = (MatrixOptions&AutoAlign) && (((Size*sizeof(T))&0xf)==0)
> struct ei_matrix_array
{
EIGEN_ALIGN_128 T array[Size];
ei_matrix_array()
{
#ifndef EIGEN_DISABLE_UNALIGNED_ARRAY_ASSERT
ei_assert((reinterpret_cast<size_t>(array) & 0xf) == 0
&& "this assertion is explained here: http://eigen.tuxfamily.org/dox/UnalignedArrayAssert.html **** READ THIS WEB PAGE !!! ****");
#endif
}
ei_matrix_array(ei_constructor_without_unaligned_array_assert) {}
};
template <typename T, int Size, int MatrixOptions> struct ei_matrix_array<T,Size,MatrixOptions,false>
{
T array[Size];
ei_matrix_array() {}
ei_matrix_array(ei_constructor_without_unaligned_array_assert) {}
};
/** \internal
*
* \class ei_matrix_storage
*
* \brief Stores the data of a matrix
*
* This class stores the data of fixed-size, dynamic-size or mixed matrices
* in a way as compact as possible.
*
* \sa Matrix
*/
template<typename T, int Size, int _Rows, int _Cols, int _Options> class ei_matrix_storage;
// purely fixed-size matrix
template<typename T, int Size, int _Rows, int _Cols, int _Options> class ei_matrix_storage
{
ei_matrix_array<T,Size,_Options> m_data;
public:
inline explicit ei_matrix_storage() {}
inline ei_matrix_storage(ei_constructor_without_unaligned_array_assert)
: m_data(ei_constructor_without_unaligned_array_assert()) {}
inline ei_matrix_storage(int,int,int) {}
inline void swap(ei_matrix_storage& other) { std::swap(m_data,other.m_data); }
inline static int rows(void) {return _Rows;}
inline static int cols(void) {return _Cols;}
inline void resize(int,int,int) {}
inline const T *data() const { return m_data.array; }
inline T *data() { return m_data.array; }
};
// dynamic-size matrix with fixed-size storage
template<typename T, int Size, int _Options> class ei_matrix_storage<T, Size, Dynamic, Dynamic, _Options>
{
ei_matrix_array<T,Size,_Options> m_data;
int m_rows;
int m_cols;
public:
inline explicit ei_matrix_storage() : m_rows(0), m_cols(0) {}
inline ei_matrix_storage(ei_constructor_without_unaligned_array_assert)
: m_data(ei_constructor_without_unaligned_array_assert()), m_rows(0), m_cols(0) {}
inline ei_matrix_storage(int, int rows, int cols) : m_rows(rows), m_cols(cols) {}
inline ~ei_matrix_storage() {}
inline void swap(ei_matrix_storage& other)
{ std::swap(m_data,other.m_data); std::swap(m_rows,other.m_rows); std::swap(m_cols,other.m_cols); }
inline int rows(void) const {return m_rows;}
inline int cols(void) const {return m_cols;}
inline void resize(int, int rows, int cols)
{
m_rows = rows;
m_cols = cols;
}
inline const T *data() const { return m_data.array; }
inline T *data() { return m_data.array; }
};
// dynamic-size matrix with fixed-size storage and fixed width
template<typename T, int Size, int _Cols, int _Options> class ei_matrix_storage<T, Size, Dynamic, _Cols, _Options>
{
ei_matrix_array<T,Size,_Options> m_data;
int m_rows;
public:
inline explicit ei_matrix_storage() : m_rows(0) {}
inline ei_matrix_storage(ei_constructor_without_unaligned_array_assert)
: m_data(ei_constructor_without_unaligned_array_assert()), m_rows(0) {}
inline ei_matrix_storage(int, int rows, int) : m_rows(rows) {}
inline ~ei_matrix_storage() {}
inline void swap(ei_matrix_storage& other) { std::swap(m_data,other.m_data); std::swap(m_rows,other.m_rows); }
inline int rows(void) const {return m_rows;}
inline int cols(void) const {return _Cols;}
inline void resize(int /*size*/, int rows, int)
{
m_rows = rows;
}
inline const T *data() const { return m_data.array; }
inline T *data() { return m_data.array; }
};
// dynamic-size matrix with fixed-size storage and fixed height
template<typename T, int Size, int _Rows, int _Options> class ei_matrix_storage<T, Size, _Rows, Dynamic, _Options>
{
ei_matrix_array<T,Size,_Options> m_data;
int m_cols;
public:
inline explicit ei_matrix_storage() : m_cols(0) {}
inline ei_matrix_storage(ei_constructor_without_unaligned_array_assert)
: m_data(ei_constructor_without_unaligned_array_assert()), m_cols(0) {}
inline ei_matrix_storage(int, int, int cols) : m_cols(cols) {}
inline ~ei_matrix_storage() {}
inline void swap(ei_matrix_storage& other) { std::swap(m_data,other.m_data); std::swap(m_cols,other.m_cols); }
inline int rows(void) const {return _Rows;}
inline int cols(void) const {return m_cols;}
inline void resize(int, int, int cols)
{
m_cols = cols;
}
inline const T *data() const { return m_data.array; }
inline T *data() { return m_data.array; }
};
// purely dynamic matrix.
template<typename T, int _Options> class ei_matrix_storage<T, Dynamic, Dynamic, Dynamic, _Options>
{
T *m_data;
int m_rows;
int m_cols;
public:
inline explicit ei_matrix_storage() : m_data(0), m_rows(0), m_cols(0) {}
inline ei_matrix_storage(ei_constructor_without_unaligned_array_assert)
: m_data(0), m_rows(0), m_cols(0) {}
inline ei_matrix_storage(int size, int rows, int cols)
: m_data(ei_aligned_new<T>(size)), m_rows(rows), m_cols(cols) {}
inline ~ei_matrix_storage() { ei_aligned_delete(m_data, m_rows*m_cols); }
inline void swap(ei_matrix_storage& other)
{ std::swap(m_data,other.m_data); std::swap(m_rows,other.m_rows); std::swap(m_cols,other.m_cols); }
inline int rows(void) const {return m_rows;}
inline int cols(void) const {return m_cols;}
void resize(int size, int rows, int cols)
{
if(size != m_rows*m_cols)
{
ei_aligned_delete(m_data, m_rows*m_cols);
if (size)
m_data = ei_aligned_new<T>(size);
else
m_data = 0;
}
m_rows = rows;
m_cols = cols;
}
inline const T *data() const { return m_data; }
inline T *data() { return m_data; }
};
// matrix with dynamic width and fixed height (so that matrix has dynamic size).
template<typename T, int _Rows, int _Options> class ei_matrix_storage<T, Dynamic, _Rows, Dynamic, _Options>
{
T *m_data;
int m_cols;
public:
inline explicit ei_matrix_storage() : m_data(0), m_cols(0) {}
inline ei_matrix_storage(ei_constructor_without_unaligned_array_assert) : m_data(0), m_cols(0) {}
inline ei_matrix_storage(int size, int, int cols) : m_data(ei_aligned_new<T>(size)), m_cols(cols) {}
inline ~ei_matrix_storage() { ei_aligned_delete(m_data, _Rows*m_cols); }
inline void swap(ei_matrix_storage& other) { std::swap(m_data,other.m_data); std::swap(m_cols,other.m_cols); }
inline static int rows(void) {return _Rows;}
inline int cols(void) const {return m_cols;}
void resize(int size, int, int cols)
{
if(size != _Rows*m_cols)
{
ei_aligned_delete(m_data, _Rows*m_cols);
if (size)
m_data = ei_aligned_new<T>(size);
else
m_data = 0;
}
m_cols = cols;
}
inline const T *data() const { return m_data; }
inline T *data() { return m_data; }
};
// matrix with dynamic height and fixed width (so that matrix has dynamic size).
template<typename T, int _Cols, int _Options> class ei_matrix_storage<T, Dynamic, Dynamic, _Cols, _Options>
{
T *m_data;
int m_rows;
public:
inline explicit ei_matrix_storage() : m_data(0), m_rows(0) {}
inline ei_matrix_storage(ei_constructor_without_unaligned_array_assert) : m_data(0), m_rows(0) {}
inline ei_matrix_storage(int size, int rows, int) : m_data(ei_aligned_new<T>(size)), m_rows(rows) {}
inline ~ei_matrix_storage() { ei_aligned_delete(m_data, _Cols*m_rows); }
inline void swap(ei_matrix_storage& other) { std::swap(m_data,other.m_data); std::swap(m_rows,other.m_rows); }
inline int rows(void) const {return m_rows;}
inline static int cols(void) {return _Cols;}
void resize(int size, int rows, int)
{
if(size != m_rows*_Cols)
{
ei_aligned_delete(m_data, _Cols*m_rows);
if (size)
m_data = ei_aligned_new<T>(size);
else
m_data = 0;
}
m_rows = rows;
}
inline const T *data() const { return m_data; }
inline T *data() { return m_data; }
};
#endif // EIGEN_MATRIX_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_MINOR_H
#define EIGEN_MINOR_H
/** \nonstableyet
* \class Minor
*
* \brief Expression of a minor
*
* \param MatrixType the type of the object in which we are taking a minor
*
* This class represents an expression of a minor. It is the return
* type of MatrixBase::minor() and most of the time this is the only way it
* is used.
*
* \sa MatrixBase::minor()
*/
template<typename MatrixType>
struct ei_traits<Minor<MatrixType> >
{
typedef typename MatrixType::Scalar Scalar;
typedef typename ei_nested<MatrixType>::type MatrixTypeNested;
typedef typename ei_unref<MatrixTypeNested>::type _MatrixTypeNested;
enum {
RowsAtCompileTime = (MatrixType::RowsAtCompileTime != Dynamic) ?
int(MatrixType::RowsAtCompileTime) - 1 : Dynamic,
ColsAtCompileTime = (MatrixType::ColsAtCompileTime != Dynamic) ?
int(MatrixType::ColsAtCompileTime) - 1 : Dynamic,
MaxRowsAtCompileTime = (MatrixType::MaxRowsAtCompileTime != Dynamic) ?
int(MatrixType::MaxRowsAtCompileTime) - 1 : Dynamic,
MaxColsAtCompileTime = (MatrixType::MaxColsAtCompileTime != Dynamic) ?
int(MatrixType::MaxColsAtCompileTime) - 1 : Dynamic,
Flags = _MatrixTypeNested::Flags & HereditaryBits,
CoeffReadCost = _MatrixTypeNested::CoeffReadCost
};
};
template<typename MatrixType> class Minor
: public MatrixBase<Minor<MatrixType> >
{
public:
EIGEN_GENERIC_PUBLIC_INTERFACE(Minor)
inline Minor(const MatrixType& matrix,
int row, int col)
: m_matrix(matrix), m_row(row), m_col(col)
{
ei_assert(row >= 0 && row < matrix.rows()
&& col >= 0 && col < matrix.cols());
}
EIGEN_INHERIT_ASSIGNMENT_OPERATORS(Minor)
inline int rows() const { return m_matrix.rows() - 1; }
inline int cols() const { return m_matrix.cols() - 1; }
inline Scalar& coeffRef(int row, int col)
{
return m_matrix.const_cast_derived().coeffRef(row + (row >= m_row), col + (col >= m_col));
}
inline const Scalar coeff(int row, int col) const
{
return m_matrix.coeff(row + (row >= m_row), col + (col >= m_col));
}
protected:
const typename MatrixType::Nested m_matrix;
const int m_row, m_col;
};
/** \nonstableyet
* \return an expression of the (\a row, \a col)-minor of *this,
* i.e. an expression constructed from *this by removing the specified
* row and column.
*
* Example: \include MatrixBase_minor.cpp
* Output: \verbinclude MatrixBase_minor.out
*
* \sa class Minor
*/
template<typename Derived>
inline Minor<Derived>
MatrixBase<Derived>::minor(int row, int col)
{
return Minor<Derived>(derived(), row, col);
}
/** \nonstableyet
* This is the const version of minor(). */
template<typename Derived>
inline const Minor<Derived>
MatrixBase<Derived>::minor(int row, int col) const
{
return Minor<Derived>(derived(), row, col);
}
#endif // EIGEN_MINOR_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_NESTBYVALUE_H
#define EIGEN_NESTBYVALUE_H
/** \class NestByValue
*
* \brief Expression which must be nested by value
*
* \param ExpressionType the type of the object of which we are requiring nesting-by-value
*
* This class is the return type of MatrixBase::nestByValue()
* and most of the time this is the only way it is used.
*
* \sa MatrixBase::nestByValue()
*/
template<typename ExpressionType>
struct ei_traits<NestByValue<ExpressionType> > : public ei_traits<ExpressionType>
{};
template<typename ExpressionType> class NestByValue
: public MatrixBase<NestByValue<ExpressionType> >
{
public:
EIGEN_GENERIC_PUBLIC_INTERFACE(NestByValue)
inline NestByValue(const ExpressionType& matrix) : m_expression(matrix) {}
inline int rows() const { return m_expression.rows(); }
inline int cols() const { return m_expression.cols(); }
inline int stride() const { return m_expression.stride(); }
inline const Scalar coeff(int row, int col) const
{
return m_expression.coeff(row, col);
}
inline Scalar& coeffRef(int row, int col)
{
return m_expression.const_cast_derived().coeffRef(row, col);
}
inline const Scalar coeff(int index) const
{
return m_expression.coeff(index);
}
inline Scalar& coeffRef(int index)
{
return m_expression.const_cast_derived().coeffRef(index);
}
template<int LoadMode>
inline const PacketScalar packet(int row, int col) const
{
return m_expression.template packet<LoadMode>(row, col);
}
template<int LoadMode>
inline void writePacket(int row, int col, const PacketScalar& x)
{
m_expression.const_cast_derived().template writePacket<LoadMode>(row, col, x);
}
template<int LoadMode>
inline const PacketScalar packet(int index) const
{
return m_expression.template packet<LoadMode>(index);
}
template<int LoadMode>
inline void writePacket(int index, const PacketScalar& x)
{
m_expression.const_cast_derived().template writePacket<LoadMode>(index, x);
}
protected:
const ExpressionType m_expression;
private:
NestByValue& operator=(const NestByValue&);
};
/** \returns an expression of the temporary version of *this.
*/
template<typename Derived>
inline const NestByValue<Derived>
MatrixBase<Derived>::nestByValue() const
{
return NestByValue<Derived>(derived());
}
#endif // EIGEN_NESTBYVALUE_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_NUMTRAITS_H
#define EIGEN_NUMTRAITS_H
/** \class NumTraits
*
* \brief Holds some data about the various numeric (i.e. scalar) types allowed by Eigen.
*
* \param T the numeric type about which this class provides data. Recall that Eigen allows
* only the following types for \a T: \c int, \c float, \c double,
* \c std::complex<float>, \c std::complex<double>, and \c long \c double (especially
* useful to enforce x87 arithmetics when SSE is the default).
*
* The provided data consists of:
* \li A typedef \a Real, giving the "real part" type of \a T. If \a T is already real,
* then \a Real is just a typedef to \a T. If \a T is \c std::complex<U> then \a Real
* is a typedef to \a U.
* \li A typedef \a FloatingPoint, giving the "floating-point type" of \a T. If \a T is
* \c int, then \a FloatingPoint is a typedef to \c double. Otherwise, \a FloatingPoint
* is a typedef to \a T.
* \li An enum value \a IsComplex. It is equal to 1 if \a T is a \c std::complex
* type, and to 0 otherwise.
* \li An enum \a HasFloatingPoint. It is equal to \c 0 if \a T is \c int,
* and to \c 1 otherwise.
*/
template<typename T> struct NumTraits;
template<> struct NumTraits<int>
{
typedef int Real;
typedef double FloatingPoint;
enum {
IsComplex = 0,
HasFloatingPoint = 0,
ReadCost = 1,
AddCost = 1,
MulCost = 1
};
};
template<> struct NumTraits<float>
{
typedef float Real;
typedef float FloatingPoint;
enum {
IsComplex = 0,
HasFloatingPoint = 1,
ReadCost = 1,
AddCost = 1,
MulCost = 1
};
};
template<> struct NumTraits<double>
{
typedef double Real;
typedef double FloatingPoint;
enum {
IsComplex = 0,
HasFloatingPoint = 1,
ReadCost = 1,
AddCost = 1,
MulCost = 1
};
};
template<typename _Real> struct NumTraits<std::complex<_Real> >
{
typedef _Real Real;
typedef std::complex<_Real> FloatingPoint;
enum {
IsComplex = 1,
HasFloatingPoint = NumTraits<Real>::HasFloatingPoint,
ReadCost = 2 * NumTraits<_Real>::ReadCost,
AddCost = 2 * NumTraits<Real>::AddCost,
MulCost = 4 * NumTraits<Real>::MulCost + 2 * NumTraits<Real>::AddCost
};
};
template<> struct NumTraits<long long int>
{
typedef long long int Real;
typedef long double FloatingPoint;
enum {
IsComplex = 0,
HasFloatingPoint = 0,
ReadCost = 1,
AddCost = 1,
MulCost = 1
};
};
template<> struct NumTraits<long double>
{
typedef long double Real;
typedef long double FloatingPoint;
enum {
IsComplex = 0,
HasFloatingPoint = 1,
ReadCost = 1,
AddCost = 1,
MulCost = 1
};
};
template<> struct NumTraits<bool>
{
typedef bool Real;
typedef float FloatingPoint;
enum {
IsComplex = 0,
HasFloatingPoint = 0,
ReadCost = 1,
AddCost = 1,
MulCost = 1
};
};
#endif // EIGEN_NUMTRAITS_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Benoit Jacob <jacob.benoit.1@gmail.com>
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_PART_H
#define EIGEN_PART_H
/** \nonstableyet
* \class Part
*
* \brief Expression of a triangular matrix extracted from a given matrix
*
* \param MatrixType the type of the object in which we are taking the triangular part
* \param Mode the kind of triangular matrix expression to construct. Can be UpperTriangular, StrictlyUpperTriangular,
* UnitUpperTriangular, LowerTriangular, StrictlyLowerTriangular, UnitLowerTriangular. This is in fact a bit field; it must have either
* UpperTriangularBit or LowerTriangularBit, and additionnaly it may have either ZeroDiagBit or
* UnitDiagBit.
*
* This class represents an expression of the upper or lower triangular part of
* a square matrix, possibly with a further assumption on the diagonal. It is the return type
* of MatrixBase::part() and most of the time this is the only way it is used.
*
* \sa MatrixBase::part()
*/
template<typename MatrixType, unsigned int Mode>
struct ei_traits<Part<MatrixType, Mode> > : ei_traits<MatrixType>
{
typedef typename ei_nested<MatrixType>::type MatrixTypeNested;
typedef typename ei_unref<MatrixTypeNested>::type _MatrixTypeNested;
enum {
Flags = (_MatrixTypeNested::Flags & (HereditaryBits) & (~(PacketAccessBit | DirectAccessBit | LinearAccessBit))) | Mode,
CoeffReadCost = _MatrixTypeNested::CoeffReadCost + ConditionalJumpCost
};
};
template<typename MatrixType, unsigned int Mode> class Part
: public MatrixBase<Part<MatrixType, Mode> >
{
public:
EIGEN_GENERIC_PUBLIC_INTERFACE(Part)
inline Part(const MatrixType& matrix) : m_matrix(matrix)
{ ei_assert(ei_are_flags_consistent<Mode>::ret); }
/** \sa MatrixBase::operator+=() */
template<typename Other> Part& operator+=(const Other& other);
/** \sa MatrixBase::operator-=() */
template<typename Other> Part& operator-=(const Other& other);
/** \sa MatrixBase::operator*=() */
Part& operator*=(const typename ei_traits<MatrixType>::Scalar& other);
/** \sa MatrixBase::operator/=() */
Part& operator/=(const typename ei_traits<MatrixType>::Scalar& other);
/** \sa operator=(), MatrixBase::lazyAssign() */
template<typename Other> void lazyAssign(const Other& other);
/** \sa MatrixBase::operator=() */
template<typename Other> Part& operator=(const Other& other);
inline int rows() const { return m_matrix.rows(); }
inline int cols() const { return m_matrix.cols(); }
inline int stride() const { return m_matrix.stride(); }
inline Scalar coeff(int row, int col) const
{
// SelfAdjointBit doesn't play any role here: just because a matrix is selfadjoint doesn't say anything about
// each individual coefficient, except for the not-very-useful-here fact that diagonal coefficients are real.
if( ((Flags & LowerTriangularBit) && (col>row)) || ((Flags & UpperTriangularBit) && (row>col)) )
return (Scalar)0;
if(Flags & UnitDiagBit)
return col==row ? (Scalar)1 : m_matrix.coeff(row, col);
else if(Flags & ZeroDiagBit)
return col==row ? (Scalar)0 : m_matrix.coeff(row, col);
else
return m_matrix.coeff(row, col);
}
inline Scalar& coeffRef(int row, int col)
{
EIGEN_STATIC_ASSERT(!(Flags & UnitDiagBit), WRITING_TO_TRIANGULAR_PART_WITH_UNIT_DIAGONAL_IS_NOT_SUPPORTED)
EIGEN_STATIC_ASSERT(!(Flags & SelfAdjointBit), COEFFICIENT_WRITE_ACCESS_TO_SELFADJOINT_NOT_SUPPORTED)
ei_assert( (Mode==UpperTriangular && col>=row)
|| (Mode==LowerTriangular && col<=row)
|| (Mode==StrictlyUpperTriangular && col>row)
|| (Mode==StrictlyLowerTriangular && col<row));
return m_matrix.const_cast_derived().coeffRef(row, col);
}
/** \internal */
const MatrixType& _expression() const { return m_matrix; }
/** discard any writes to a row */
const Block<Part, 1, ColsAtCompileTime> row(int i) { return Base::row(i); }
const Block<Part, 1, ColsAtCompileTime> row(int i) const { return Base::row(i); }
/** discard any writes to a column */
const Block<Part, RowsAtCompileTime, 1> col(int i) { return Base::col(i); }
const Block<Part, RowsAtCompileTime, 1> col(int i) const { return Base::col(i); }
template<typename OtherDerived>
void swap(const MatrixBase<OtherDerived>& other)
{
Part<SwapWrapper<MatrixType>,Mode>(const_cast<MatrixType&>(m_matrix)).lazyAssign(other.derived());
}
protected:
const typename MatrixType::Nested m_matrix;
private:
Part& operator=(const Part&);
};
/** \nonstableyet
* \returns an expression of a triangular matrix extracted from the current matrix
*
* The parameter \a Mode can have the following values: \c UpperTriangular, \c StrictlyUpperTriangular, \c UnitUpperTriangular,
* \c LowerTriangular, \c StrictlyLowerTriangular, \c UnitLowerTriangular.
*
* \addexample PartExample \label How to extract a triangular part of an arbitrary matrix
*
* Example: \include MatrixBase_extract.cpp
* Output: \verbinclude MatrixBase_extract.out
*
* \sa class Part, part(), marked()
*/
template<typename Derived>
template<unsigned int Mode>
const Part<Derived, Mode> MatrixBase<Derived>::part() const
{
return derived();
}
template<typename MatrixType, unsigned int Mode>
template<typename Other>
inline Part<MatrixType, Mode>& Part<MatrixType, Mode>::operator=(const Other& other)
{
if(Other::Flags & EvalBeforeAssigningBit)
{
typename MatrixBase<Other>::PlainMatrixType other_evaluated(other.rows(), other.cols());
other_evaluated.template part<Mode>().lazyAssign(other);
lazyAssign(other_evaluated);
}
else
lazyAssign(other.derived());
return *this;
}
template<typename Derived1, typename Derived2, unsigned int Mode, int UnrollCount>
struct ei_part_assignment_impl
{
enum {
col = (UnrollCount-1) / Derived1::RowsAtCompileTime,
row = (UnrollCount-1) % Derived1::RowsAtCompileTime
};
inline static void run(Derived1 &dst, const Derived2 &src)
{
ei_part_assignment_impl<Derived1, Derived2, Mode, UnrollCount-1>::run(dst, src);
if(Mode == SelfAdjoint)
{
if(row == col)
dst.coeffRef(row, col) = ei_real(src.coeff(row, col));
else if(row < col)
dst.coeffRef(col, row) = ei_conj(dst.coeffRef(row, col) = src.coeff(row, col));
}
else
{
ei_assert(Mode == UpperTriangular || Mode == LowerTriangular || Mode == StrictlyUpperTriangular || Mode == StrictlyLowerTriangular);
if((Mode == UpperTriangular && row <= col)
|| (Mode == LowerTriangular && row >= col)
|| (Mode == StrictlyUpperTriangular && row < col)
|| (Mode == StrictlyLowerTriangular && row > col))
dst.copyCoeff(row, col, src);
}
}
};
template<typename Derived1, typename Derived2, unsigned int Mode>
struct ei_part_assignment_impl<Derived1, Derived2, Mode, 1>
{
inline static void run(Derived1 &dst, const Derived2 &src)
{
if(!(Mode & ZeroDiagBit))
dst.copyCoeff(0, 0, src);
}
};
// prevent buggy user code from causing an infinite recursion
template<typename Derived1, typename Derived2, unsigned int Mode>
struct ei_part_assignment_impl<Derived1, Derived2, Mode, 0>
{
inline static void run(Derived1 &, const Derived2 &) {}
};
template<typename Derived1, typename Derived2>
struct ei_part_assignment_impl<Derived1, Derived2, UpperTriangular, Dynamic>
{
inline static void run(Derived1 &dst, const Derived2 &src)
{
for(int j = 0; j < dst.cols(); ++j)
for(int i = 0; i <= j; ++i)
dst.copyCoeff(i, j, src);
}
};
template<typename Derived1, typename Derived2>
struct ei_part_assignment_impl<Derived1, Derived2, LowerTriangular, Dynamic>
{
inline static void run(Derived1 &dst, const Derived2 &src)
{
for(int j = 0; j < dst.cols(); ++j)
for(int i = j; i < dst.rows(); ++i)
dst.copyCoeff(i, j, src);
}
};
template<typename Derived1, typename Derived2>
struct ei_part_assignment_impl<Derived1, Derived2, StrictlyUpperTriangular, Dynamic>
{
inline static void run(Derived1 &dst, const Derived2 &src)
{
for(int j = 0; j < dst.cols(); ++j)
for(int i = 0; i < j; ++i)
dst.copyCoeff(i, j, src);
}
};
template<typename Derived1, typename Derived2>
struct ei_part_assignment_impl<Derived1, Derived2, StrictlyLowerTriangular, Dynamic>
{
inline static void run(Derived1 &dst, const Derived2 &src)
{
for(int j = 0; j < dst.cols(); ++j)
for(int i = j+1; i < dst.rows(); ++i)
dst.copyCoeff(i, j, src);
}
};
template<typename Derived1, typename Derived2>
struct ei_part_assignment_impl<Derived1, Derived2, SelfAdjoint, Dynamic>
{
inline static void run(Derived1 &dst, const Derived2 &src)
{
for(int j = 0; j < dst.cols(); ++j)
{
for(int i = 0; i < j; ++i)
dst.coeffRef(j, i) = ei_conj(dst.coeffRef(i, j) = src.coeff(i, j));
dst.coeffRef(j, j) = ei_real(src.coeff(j, j));
}
}
};
template<typename MatrixType, unsigned int Mode>
template<typename Other>
void Part<MatrixType, Mode>::lazyAssign(const Other& other)
{
const bool unroll = MatrixType::SizeAtCompileTime * Other::CoeffReadCost / 2 <= EIGEN_UNROLLING_LIMIT;
ei_assert(m_matrix.rows() == other.rows() && m_matrix.cols() == other.cols());
ei_part_assignment_impl
<MatrixType, Other, Mode,
unroll ? int(MatrixType::SizeAtCompileTime) : Dynamic
>::run(m_matrix.const_cast_derived(), other.derived());
}
/** \nonstableyet
* \returns a lvalue pseudo-expression allowing to perform special operations on \c *this.
*
* The \a Mode parameter can have the following values: \c UpperTriangular, \c StrictlyUpperTriangular, \c LowerTriangular,
* \c StrictlyLowerTriangular, \c SelfAdjoint.
*
* \addexample PartExample \label How to write to a triangular part of a matrix
*
* Example: \include MatrixBase_part.cpp
* Output: \verbinclude MatrixBase_part.out
*
* \sa class Part, MatrixBase::extract(), MatrixBase::marked()
*/
template<typename Derived>
template<unsigned int Mode>
inline Part<Derived, Mode> MatrixBase<Derived>::part()
{
return Part<Derived, Mode>(derived());
}
/** \returns true if *this is approximately equal to an upper triangular matrix,
* within the precision given by \a prec.
*
* \sa isLowerTriangular(), extract(), part(), marked()
*/
template<typename Derived>
bool MatrixBase<Derived>::isUpperTriangular(RealScalar prec) const
{
if(cols() != rows()) return false;
RealScalar maxAbsOnUpperTriangularPart = static_cast<RealScalar>(-1);
for(int j = 0; j < cols(); ++j)
for(int i = 0; i <= j; ++i)
{
RealScalar absValue = ei_abs(coeff(i,j));
if(absValue > maxAbsOnUpperTriangularPart) maxAbsOnUpperTriangularPart = absValue;
}
for(int j = 0; j < cols()-1; ++j)
for(int i = j+1; i < rows(); ++i)
if(!ei_isMuchSmallerThan(coeff(i, j), maxAbsOnUpperTriangularPart, prec)) return false;
return true;
}
/** \returns true if *this is approximately equal to a lower triangular matrix,
* within the precision given by \a prec.
*
* \sa isUpperTriangular(), extract(), part(), marked()
*/
template<typename Derived>
bool MatrixBase<Derived>::isLowerTriangular(RealScalar prec) const
{
if(cols() != rows()) return false;
RealScalar maxAbsOnLowerTriangularPart = static_cast<RealScalar>(-1);
for(int j = 0; j < cols(); ++j)
for(int i = j; i < rows(); ++i)
{
RealScalar absValue = ei_abs(coeff(i,j));
if(absValue > maxAbsOnLowerTriangularPart) maxAbsOnLowerTriangularPart = absValue;
}
for(int j = 1; j < cols(); ++j)
for(int i = 0; i < j; ++i)
if(!ei_isMuchSmallerThan(coeff(i, j), maxAbsOnLowerTriangularPart, prec)) return false;
return true;
}
template<typename MatrixType, unsigned int Mode>
template<typename Other>
inline Part<MatrixType, Mode>& Part<MatrixType, Mode>::operator+=(const Other& other)
{
return *this = m_matrix + other;
}
template<typename MatrixType, unsigned int Mode>
template<typename Other>
inline Part<MatrixType, Mode>& Part<MatrixType, Mode>::operator-=(const Other& other)
{
return *this = m_matrix - other;
}
template<typename MatrixType, unsigned int Mode>
inline Part<MatrixType, Mode>& Part<MatrixType, Mode>::operator*=
(const typename ei_traits<MatrixType>::Scalar& other)
{
return *this = m_matrix * other;
}
template<typename MatrixType, unsigned int Mode>
inline Part<MatrixType, Mode>& Part<MatrixType, Mode>::operator/=
(const typename ei_traits<MatrixType>::Scalar& other)
{
return *this = m_matrix / other;
}
#endif // EIGEN_PART_H

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Eigen/src/Core/Product.h Normal file
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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_PRODUCT_H
#define EIGEN_PRODUCT_H
/***************************
*** Forward declarations ***
***************************/
template<int VectorizationMode, int Index, typename Lhs, typename Rhs, typename RetScalar>
struct ei_product_coeff_impl;
template<int StorageOrder, int Index, typename Lhs, typename Rhs, typename PacketScalar, int LoadMode>
struct ei_product_packet_impl;
/** \class ProductReturnType
*
* \brief Helper class to get the correct and optimized returned type of operator*
*
* \param Lhs the type of the left-hand side
* \param Rhs the type of the right-hand side
* \param ProductMode the type of the product (determined automatically by ei_product_mode)
*
* This class defines the typename Type representing the optimized product expression
* between two matrix expressions. In practice, using ProductReturnType<Lhs,Rhs>::Type
* is the recommended way to define the result type of a function returning an expression
* which involve a matrix product. The class Product or DiagonalProduct should never be
* used directly.
*
* \sa class Product, class DiagonalProduct, MatrixBase::operator*(const MatrixBase<OtherDerived>&)
*/
template<typename Lhs, typename Rhs, int ProductMode>
struct ProductReturnType
{
typedef typename ei_nested<Lhs,Rhs::ColsAtCompileTime>::type LhsNested;
typedef typename ei_nested<Rhs,Lhs::RowsAtCompileTime>::type RhsNested;
typedef Product<LhsNested, RhsNested, ProductMode> Type;
};
// cache friendly specialization
// note that there is a DiagonalProduct specialization in DiagonalProduct.h
template<typename Lhs, typename Rhs>
struct ProductReturnType<Lhs,Rhs,CacheFriendlyProduct>
{
typedef const Lhs& LhsNested;
typedef const Rhs& RhsNested;
typedef Product<LhsNested, RhsNested, CacheFriendlyProduct> Type;
};
/* Helper class to determine the type of the product, can be either:
* - NormalProduct
* - CacheFriendlyProduct
* - DiagonalProduct
*/
template<typename Lhs, typename Rhs> struct ei_product_mode
{
enum{
value = ((Rhs::Flags&Diagonal)==Diagonal) || ((Lhs::Flags&Diagonal)==Diagonal)
? DiagonalProduct
: Lhs::MaxColsAtCompileTime == Dynamic
&& ( Lhs::MaxRowsAtCompileTime == Dynamic
|| Rhs::MaxColsAtCompileTime == Dynamic )
&& (!(Rhs::IsVectorAtCompileTime && (Lhs::Flags&RowMajorBit) && (!(Lhs::Flags&DirectAccessBit))))
&& (!(Lhs::IsVectorAtCompileTime && (!(Rhs::Flags&RowMajorBit)) && (!(Rhs::Flags&DirectAccessBit))))
&& (ei_is_same_type<typename Lhs::Scalar, typename Rhs::Scalar>::ret)
? CacheFriendlyProduct
: NormalProduct };
};
/** \class Product
*
* \brief Expression of the product of two matrices
*
* \param LhsNested the type used to store the left-hand side
* \param RhsNested the type used to store the right-hand side
* \param ProductMode the type of the product
*
* This class represents an expression of the product of two matrices.
* It is the return type of the operator* between matrices. Its template
* arguments are determined automatically by ProductReturnType. Therefore,
* Product should never be used direclty. To determine the result type of a
* function which involves a matrix product, use ProductReturnType::Type.
*
* \sa ProductReturnType, MatrixBase::operator*(const MatrixBase<OtherDerived>&)
*/
template<typename LhsNested, typename RhsNested, int ProductMode>
struct ei_traits<Product<LhsNested, RhsNested, ProductMode> >
{
// clean the nested types:
typedef typename ei_cleantype<LhsNested>::type _LhsNested;
typedef typename ei_cleantype<RhsNested>::type _RhsNested;
typedef typename ei_scalar_product_traits<typename _LhsNested::Scalar, typename _RhsNested::Scalar>::ReturnType Scalar;
enum {
LhsCoeffReadCost = _LhsNested::CoeffReadCost,
RhsCoeffReadCost = _RhsNested::CoeffReadCost,
LhsFlags = _LhsNested::Flags,
RhsFlags = _RhsNested::Flags,
RowsAtCompileTime = _LhsNested::RowsAtCompileTime,
ColsAtCompileTime = _RhsNested::ColsAtCompileTime,
InnerSize = EIGEN_SIZE_MIN(_LhsNested::ColsAtCompileTime, _RhsNested::RowsAtCompileTime),
MaxRowsAtCompileTime = _LhsNested::MaxRowsAtCompileTime,
MaxColsAtCompileTime = _RhsNested::MaxColsAtCompileTime,
LhsRowMajor = LhsFlags & RowMajorBit,
RhsRowMajor = RhsFlags & RowMajorBit,
CanVectorizeRhs = RhsRowMajor && (RhsFlags & PacketAccessBit)
&& (ColsAtCompileTime % ei_packet_traits<Scalar>::size == 0),
CanVectorizeLhs = (!LhsRowMajor) && (LhsFlags & PacketAccessBit)
&& (RowsAtCompileTime % ei_packet_traits<Scalar>::size == 0),
EvalToRowMajor = RhsRowMajor && (ProductMode==(int)CacheFriendlyProduct ? LhsRowMajor : (!CanVectorizeLhs)),
RemovedBits = ~((EvalToRowMajor ? 0 : RowMajorBit)|DirectAccessBit),
Flags = ((unsigned int)(LhsFlags | RhsFlags) & HereditaryBits & RemovedBits)
| EvalBeforeAssigningBit
| EvalBeforeNestingBit
| (CanVectorizeLhs || CanVectorizeRhs ? PacketAccessBit : 0)
| (LhsFlags & RhsFlags & AlignedBit),
CoeffReadCost = InnerSize == Dynamic ? Dynamic
: InnerSize * (NumTraits<Scalar>::MulCost + LhsCoeffReadCost + RhsCoeffReadCost)
+ (InnerSize - 1) * NumTraits<Scalar>::AddCost,
/* CanVectorizeInner deserves special explanation. It does not affect the product flags. It is not used outside
* of Product. If the Product itself is not a packet-access expression, there is still a chance that the inner
* loop of the product might be vectorized. This is the meaning of CanVectorizeInner. Since it doesn't affect
* the Flags, it is safe to make this value depend on ActualPacketAccessBit, that doesn't affect the ABI.
*/
CanVectorizeInner = LhsRowMajor && (!RhsRowMajor) && (LhsFlags & RhsFlags & ActualPacketAccessBit)
&& (InnerSize % ei_packet_traits<Scalar>::size == 0)
};
};
template<typename LhsNested, typename RhsNested, int ProductMode> class Product : ei_no_assignment_operator,
public MatrixBase<Product<LhsNested, RhsNested, ProductMode> >
{
public:
EIGEN_GENERIC_PUBLIC_INTERFACE(Product)
private:
typedef typename ei_traits<Product>::_LhsNested _LhsNested;
typedef typename ei_traits<Product>::_RhsNested _RhsNested;
enum {
PacketSize = ei_packet_traits<Scalar>::size,
InnerSize = ei_traits<Product>::InnerSize,
Unroll = CoeffReadCost <= EIGEN_UNROLLING_LIMIT,
CanVectorizeInner = ei_traits<Product>::CanVectorizeInner
};
typedef ei_product_coeff_impl<CanVectorizeInner ? InnerVectorization : NoVectorization,
Unroll ? InnerSize-1 : Dynamic,
_LhsNested, _RhsNested, Scalar> ScalarCoeffImpl;
public:
template<typename Lhs, typename Rhs>
inline Product(const Lhs& lhs, const Rhs& rhs)
: m_lhs(lhs), m_rhs(rhs)
{
// we don't allow taking products of matrices of different real types, as that wouldn't be vectorizable.
// We still allow to mix T and complex<T>.
EIGEN_STATIC_ASSERT((ei_is_same_type<typename Lhs::RealScalar, typename Rhs::RealScalar>::ret),
YOU_MIXED_DIFFERENT_NUMERIC_TYPES__YOU_NEED_TO_USE_THE_CAST_METHOD_OF_MATRIXBASE_TO_CAST_NUMERIC_TYPES_EXPLICITLY)
ei_assert(lhs.cols() == rhs.rows()
&& "invalid matrix product"
&& "if you wanted a coeff-wise or a dot product use the respective explicit functions");
}
/** \internal
* compute \a res += \c *this using the cache friendly product.
*/
template<typename DestDerived>
void _cacheFriendlyEvalAndAdd(DestDerived& res) const;
/** \internal
* \returns whether it is worth it to use the cache friendly product.
*/
EIGEN_STRONG_INLINE bool _useCacheFriendlyProduct() const
{
return m_lhs.cols()>=EIGEN_CACHEFRIENDLY_PRODUCT_THRESHOLD
&& ( rows()>=EIGEN_CACHEFRIENDLY_PRODUCT_THRESHOLD
|| cols()>=EIGEN_CACHEFRIENDLY_PRODUCT_THRESHOLD);
}
EIGEN_STRONG_INLINE int rows() const { return m_lhs.rows(); }
EIGEN_STRONG_INLINE int cols() const { return m_rhs.cols(); }
EIGEN_STRONG_INLINE const Scalar coeff(int row, int col) const
{
Scalar res;
ScalarCoeffImpl::run(row, col, m_lhs, m_rhs, res);
return res;
}
/* Allow index-based non-packet access. It is impossible though to allow index-based packed access,
* which is why we don't set the LinearAccessBit.
*/
EIGEN_STRONG_INLINE const Scalar coeff(int index) const
{
Scalar res;
const int row = RowsAtCompileTime == 1 ? 0 : index;
const int col = RowsAtCompileTime == 1 ? index : 0;
ScalarCoeffImpl::run(row, col, m_lhs, m_rhs, res);
return res;
}
template<int LoadMode>
EIGEN_STRONG_INLINE const PacketScalar packet(int row, int col) const
{
PacketScalar res;
ei_product_packet_impl<Flags&RowMajorBit ? RowMajor : ColMajor,
Unroll ? InnerSize-1 : Dynamic,
_LhsNested, _RhsNested, PacketScalar, LoadMode>
::run(row, col, m_lhs, m_rhs, res);
return res;
}
EIGEN_STRONG_INLINE const _LhsNested& lhs() const { return m_lhs; }
EIGEN_STRONG_INLINE const _RhsNested& rhs() const { return m_rhs; }
protected:
const LhsNested m_lhs;
const RhsNested m_rhs;
};
/** \returns the matrix product of \c *this and \a other.
*
* \note If instead of the matrix product you want the coefficient-wise product, see Cwise::operator*().
*
* \sa lazy(), operator*=(const MatrixBase&), Cwise::operator*()
*/
template<typename Derived>
template<typename OtherDerived>
inline const typename ProductReturnType<Derived,OtherDerived>::Type
MatrixBase<Derived>::operator*(const MatrixBase<OtherDerived> &other) const
{
enum {
ProductIsValid = Derived::ColsAtCompileTime==Dynamic
|| OtherDerived::RowsAtCompileTime==Dynamic
|| int(Derived::ColsAtCompileTime)==int(OtherDerived::RowsAtCompileTime),
AreVectors = Derived::IsVectorAtCompileTime && OtherDerived::IsVectorAtCompileTime,
SameSizes = EIGEN_PREDICATE_SAME_MATRIX_SIZE(Derived,OtherDerived)
};
// note to the lost user:
// * for a dot product use: v1.dot(v2)
// * for a coeff-wise product use: v1.cwise()*v2
EIGEN_STATIC_ASSERT(ProductIsValid || !(AreVectors && SameSizes),
INVALID_VECTOR_VECTOR_PRODUCT__IF_YOU_WANTED_A_DOT_OR_COEFF_WISE_PRODUCT_YOU_MUST_USE_THE_EXPLICIT_FUNCTIONS)
EIGEN_STATIC_ASSERT(ProductIsValid || !(SameSizes && !AreVectors),
INVALID_MATRIX_PRODUCT__IF_YOU_WANTED_A_COEFF_WISE_PRODUCT_YOU_MUST_USE_THE_EXPLICIT_FUNCTION)
EIGEN_STATIC_ASSERT(ProductIsValid || SameSizes, INVALID_MATRIX_PRODUCT)
return typename ProductReturnType<Derived,OtherDerived>::Type(derived(), other.derived());
}
/** replaces \c *this by \c *this * \a other.
*
* \returns a reference to \c *this
*/
template<typename Derived>
template<typename OtherDerived>
inline Derived &
MatrixBase<Derived>::operator*=(const MatrixBase<OtherDerived> &other)
{
return derived() = derived() * other.derived();
}
/***************************************************************************
* Normal product .coeff() implementation (with meta-unrolling)
***************************************************************************/
/**************************************
*** Scalar path - no vectorization ***
**************************************/
template<int Index, typename Lhs, typename Rhs, typename RetScalar>
struct ei_product_coeff_impl<NoVectorization, Index, Lhs, Rhs, RetScalar>
{
EIGEN_STRONG_INLINE static void run(int row, int col, const Lhs& lhs, const Rhs& rhs, RetScalar &res)
{
ei_product_coeff_impl<NoVectorization, Index-1, Lhs, Rhs, RetScalar>::run(row, col, lhs, rhs, res);
res += lhs.coeff(row, Index) * rhs.coeff(Index, col);
}
};
template<typename Lhs, typename Rhs, typename RetScalar>
struct ei_product_coeff_impl<NoVectorization, 0, Lhs, Rhs, RetScalar>
{
EIGEN_STRONG_INLINE static void run(int row, int col, const Lhs& lhs, const Rhs& rhs, RetScalar &res)
{
res = lhs.coeff(row, 0) * rhs.coeff(0, col);
}
};
template<typename Lhs, typename Rhs, typename RetScalar>
struct ei_product_coeff_impl<NoVectorization, Dynamic, Lhs, Rhs, RetScalar>
{
EIGEN_STRONG_INLINE static void run(int row, int col, const Lhs& lhs, const Rhs& rhs, RetScalar& res)
{
ei_assert(lhs.cols()>0 && "you are using a non initialized matrix");
res = lhs.coeff(row, 0) * rhs.coeff(0, col);
for(int i = 1; i < lhs.cols(); ++i)
res += lhs.coeff(row, i) * rhs.coeff(i, col);
}
};
// prevent buggy user code from causing an infinite recursion
template<typename Lhs, typename Rhs, typename RetScalar>
struct ei_product_coeff_impl<NoVectorization, -1, Lhs, Rhs, RetScalar>
{
EIGEN_STRONG_INLINE static void run(int, int, const Lhs&, const Rhs&, RetScalar&) {}
};
/*******************************************
*** Scalar path with inner vectorization ***
*******************************************/
template<int Index, typename Lhs, typename Rhs, typename PacketScalar>
struct ei_product_coeff_vectorized_unroller
{
enum { PacketSize = ei_packet_traits<typename Lhs::Scalar>::size };
EIGEN_STRONG_INLINE static void run(int row, int col, const Lhs& lhs, const Rhs& rhs, typename Lhs::PacketScalar &pres)
{
ei_product_coeff_vectorized_unroller<Index-PacketSize, Lhs, Rhs, PacketScalar>::run(row, col, lhs, rhs, pres);
pres = ei_padd(pres, ei_pmul( lhs.template packet<Aligned>(row, Index) , rhs.template packet<Aligned>(Index, col) ));
}
};
template<typename Lhs, typename Rhs, typename PacketScalar>
struct ei_product_coeff_vectorized_unroller<0, Lhs, Rhs, PacketScalar>
{
EIGEN_STRONG_INLINE static void run(int row, int col, const Lhs& lhs, const Rhs& rhs, typename Lhs::PacketScalar &pres)
{
pres = ei_pmul(lhs.template packet<Aligned>(row, 0) , rhs.template packet<Aligned>(0, col));
}
};
template<int Index, typename Lhs, typename Rhs, typename RetScalar>
struct ei_product_coeff_impl<InnerVectorization, Index, Lhs, Rhs, RetScalar>
{
typedef typename Lhs::PacketScalar PacketScalar;
enum { PacketSize = ei_packet_traits<typename Lhs::Scalar>::size };
EIGEN_STRONG_INLINE static void run(int row, int col, const Lhs& lhs, const Rhs& rhs, RetScalar &res)
{
PacketScalar pres;
ei_product_coeff_vectorized_unroller<Index+1-PacketSize, Lhs, Rhs, PacketScalar>::run(row, col, lhs, rhs, pres);
ei_product_coeff_impl<NoVectorization,Index,Lhs,Rhs,RetScalar>::run(row, col, lhs, rhs, res);
res = ei_predux(pres);
}
};
template<typename Lhs, typename Rhs, int LhsRows = Lhs::RowsAtCompileTime, int RhsCols = Rhs::ColsAtCompileTime>
struct ei_product_coeff_vectorized_dyn_selector
{
EIGEN_STRONG_INLINE static void run(int row, int col, const Lhs& lhs, const Rhs& rhs, typename Lhs::Scalar &res)
{
res = ei_dot_impl<
Block<Lhs, 1, ei_traits<Lhs>::ColsAtCompileTime>,
Block<Rhs, ei_traits<Rhs>::RowsAtCompileTime, 1>,
LinearVectorization, NoUnrolling>::run(lhs.row(row), rhs.col(col));
}
};
// NOTE the 3 following specializations are because taking .col(0) on a vector is a bit slower
// NOTE maybe they are now useless since we have a specialization for Block<Matrix>
template<typename Lhs, typename Rhs, int RhsCols>
struct ei_product_coeff_vectorized_dyn_selector<Lhs,Rhs,1,RhsCols>
{
EIGEN_STRONG_INLINE static void run(int /*row*/, int col, const Lhs& lhs, const Rhs& rhs, typename Lhs::Scalar &res)
{
res = ei_dot_impl<
Lhs,
Block<Rhs, ei_traits<Rhs>::RowsAtCompileTime, 1>,
LinearVectorization, NoUnrolling>::run(lhs, rhs.col(col));
}
};
template<typename Lhs, typename Rhs, int LhsRows>
struct ei_product_coeff_vectorized_dyn_selector<Lhs,Rhs,LhsRows,1>
{
EIGEN_STRONG_INLINE static void run(int row, int /*col*/, const Lhs& lhs, const Rhs& rhs, typename Lhs::Scalar &res)
{
res = ei_dot_impl<
Block<Lhs, 1, ei_traits<Lhs>::ColsAtCompileTime>,
Rhs,
LinearVectorization, NoUnrolling>::run(lhs.row(row), rhs);
}
};
template<typename Lhs, typename Rhs>
struct ei_product_coeff_vectorized_dyn_selector<Lhs,Rhs,1,1>
{
EIGEN_STRONG_INLINE static void run(int /*row*/, int /*col*/, const Lhs& lhs, const Rhs& rhs, typename Lhs::Scalar &res)
{
res = ei_dot_impl<
Lhs,
Rhs,
LinearVectorization, NoUnrolling>::run(lhs, rhs);
}
};
template<typename Lhs, typename Rhs, typename RetScalar>
struct ei_product_coeff_impl<InnerVectorization, Dynamic, Lhs, Rhs, RetScalar>
{
EIGEN_STRONG_INLINE static void run(int row, int col, const Lhs& lhs, const Rhs& rhs, typename Lhs::Scalar &res)
{
ei_product_coeff_vectorized_dyn_selector<Lhs,Rhs>::run(row, col, lhs, rhs, res);
}
};
/*******************
*** Packet path ***
*******************/
template<int Index, typename Lhs, typename Rhs, typename PacketScalar, int LoadMode>
struct ei_product_packet_impl<RowMajor, Index, Lhs, Rhs, PacketScalar, LoadMode>
{
EIGEN_STRONG_INLINE static void run(int row, int col, const Lhs& lhs, const Rhs& rhs, PacketScalar &res)
{
ei_product_packet_impl<RowMajor, Index-1, Lhs, Rhs, PacketScalar, LoadMode>::run(row, col, lhs, rhs, res);
res = ei_pmadd(ei_pset1(lhs.coeff(row, Index)), rhs.template packet<LoadMode>(Index, col), res);
}
};
template<int Index, typename Lhs, typename Rhs, typename PacketScalar, int LoadMode>
struct ei_product_packet_impl<ColMajor, Index, Lhs, Rhs, PacketScalar, LoadMode>
{
EIGEN_STRONG_INLINE static void run(int row, int col, const Lhs& lhs, const Rhs& rhs, PacketScalar &res)
{
ei_product_packet_impl<ColMajor, Index-1, Lhs, Rhs, PacketScalar, LoadMode>::run(row, col, lhs, rhs, res);
res = ei_pmadd(lhs.template packet<LoadMode>(row, Index), ei_pset1(rhs.coeff(Index, col)), res);
}
};
template<typename Lhs, typename Rhs, typename PacketScalar, int LoadMode>
struct ei_product_packet_impl<RowMajor, 0, Lhs, Rhs, PacketScalar, LoadMode>
{
EIGEN_STRONG_INLINE static void run(int row, int col, const Lhs& lhs, const Rhs& rhs, PacketScalar &res)
{
res = ei_pmul(ei_pset1(lhs.coeff(row, 0)),rhs.template packet<LoadMode>(0, col));
}
};
template<typename Lhs, typename Rhs, typename PacketScalar, int LoadMode>
struct ei_product_packet_impl<ColMajor, 0, Lhs, Rhs, PacketScalar, LoadMode>
{
EIGEN_STRONG_INLINE static void run(int row, int col, const Lhs& lhs, const Rhs& rhs, PacketScalar &res)
{
res = ei_pmul(lhs.template packet<LoadMode>(row, 0), ei_pset1(rhs.coeff(0, col)));
}
};
template<typename Lhs, typename Rhs, typename PacketScalar, int LoadMode>
struct ei_product_packet_impl<RowMajor, Dynamic, Lhs, Rhs, PacketScalar, LoadMode>
{
EIGEN_STRONG_INLINE static void run(int row, int col, const Lhs& lhs, const Rhs& rhs, PacketScalar& res)
{
ei_assert(lhs.cols()>0 && "you are using a non initialized matrix");
res = ei_pmul(ei_pset1(lhs.coeff(row, 0)),rhs.template packet<LoadMode>(0, col));
for(int i = 1; i < lhs.cols(); ++i)
res = ei_pmadd(ei_pset1(lhs.coeff(row, i)), rhs.template packet<LoadMode>(i, col), res);
}
};
template<typename Lhs, typename Rhs, typename PacketScalar, int LoadMode>
struct ei_product_packet_impl<ColMajor, Dynamic, Lhs, Rhs, PacketScalar, LoadMode>
{
EIGEN_STRONG_INLINE static void run(int row, int col, const Lhs& lhs, const Rhs& rhs, PacketScalar& res)
{
ei_assert(lhs.cols()>0 && "you are using a non initialized matrix");
res = ei_pmul(lhs.template packet<LoadMode>(row, 0), ei_pset1(rhs.coeff(0, col)));
for(int i = 1; i < lhs.cols(); ++i)
res = ei_pmadd(lhs.template packet<LoadMode>(row, i), ei_pset1(rhs.coeff(i, col)), res);
}
};
/***************************************************************************
* Cache friendly product callers and specific nested evaluation strategies
***************************************************************************/
template<typename Scalar, typename RhsType>
static void ei_cache_friendly_product_colmajor_times_vector(
int size, const Scalar* lhs, int lhsStride, const RhsType& rhs, Scalar* res);
template<typename Scalar, typename ResType>
static void ei_cache_friendly_product_rowmajor_times_vector(
const Scalar* lhs, int lhsStride, const Scalar* rhs, int rhsSize, ResType& res);
template<typename ProductType,
int LhsRows = ei_traits<ProductType>::RowsAtCompileTime,
int LhsOrder = int(ei_traits<ProductType>::LhsFlags)&RowMajorBit ? RowMajor : ColMajor,
int LhsHasDirectAccess = int(ei_traits<ProductType>::LhsFlags)&DirectAccessBit? HasDirectAccess : NoDirectAccess,
int RhsCols = ei_traits<ProductType>::ColsAtCompileTime,
int RhsOrder = int(ei_traits<ProductType>::RhsFlags)&RowMajorBit ? RowMajor : ColMajor,
int RhsHasDirectAccess = int(ei_traits<ProductType>::RhsFlags)&DirectAccessBit? HasDirectAccess : NoDirectAccess>
struct ei_cache_friendly_product_selector
{
template<typename DestDerived>
inline static void run(DestDerived& res, const ProductType& product)
{
product._cacheFriendlyEvalAndAdd(res);
}
};
// optimized colmajor * vector path
template<typename ProductType, int LhsRows, int RhsOrder, int RhsAccess>
struct ei_cache_friendly_product_selector<ProductType,LhsRows,ColMajor,NoDirectAccess,1,RhsOrder,RhsAccess>
{
template<typename DestDerived>
inline static void run(DestDerived& res, const ProductType& product)
{
const int size = product.rhs().rows();
for (int k=0; k<size; ++k)
res += product.rhs().coeff(k) * product.lhs().col(k);
}
};
// optimized cache friendly colmajor * vector path for matrix with direct access flag
// NOTE this path could also be enabled for expressions if we add runtime align queries
template<typename ProductType, int LhsRows, int RhsOrder, int RhsAccess>
struct ei_cache_friendly_product_selector<ProductType,LhsRows,ColMajor,HasDirectAccess,1,RhsOrder,RhsAccess>
{
typedef typename ProductType::Scalar Scalar;
template<typename DestDerived>
inline static void run(DestDerived& res, const ProductType& product)
{
enum {
EvalToRes = (ei_packet_traits<Scalar>::size==1)
||((DestDerived::Flags&ActualPacketAccessBit) && (!(DestDerived::Flags & RowMajorBit))) };
Scalar* EIGEN_RESTRICT _res;
if (EvalToRes)
_res = &res.coeffRef(0);
else
{
_res = ei_aligned_stack_new(Scalar,res.size());
Map<Matrix<Scalar,DestDerived::RowsAtCompileTime,1,ColMajor> >(_res, res.size()) = res;
}
ei_cache_friendly_product_colmajor_times_vector(res.size(),
&product.lhs().const_cast_derived().coeffRef(0,0), product.lhs().stride(),
product.rhs(), _res);
if (!EvalToRes)
{
res = Map<Matrix<Scalar,DestDerived::SizeAtCompileTime,1,ColMajor> >(_res, res.size());
ei_aligned_stack_delete(Scalar, _res, res.size());
}
}
};
// optimized vector * rowmajor path
template<typename ProductType, int LhsOrder, int LhsAccess, int RhsCols>
struct ei_cache_friendly_product_selector<ProductType,1,LhsOrder,LhsAccess,RhsCols,RowMajor,NoDirectAccess>
{
template<typename DestDerived>
inline static void run(DestDerived& res, const ProductType& product)
{
const int cols = product.lhs().cols();
for (int j=0; j<cols; ++j)
res += product.lhs().coeff(j) * product.rhs().row(j);
}
};
// optimized cache friendly vector * rowmajor path for matrix with direct access flag
// NOTE this path coul also be enabled for expressions if we add runtime align queries
template<typename ProductType, int LhsOrder, int LhsAccess, int RhsCols>
struct ei_cache_friendly_product_selector<ProductType,1,LhsOrder,LhsAccess,RhsCols,RowMajor,HasDirectAccess>
{
typedef typename ProductType::Scalar Scalar;
template<typename DestDerived>
inline static void run(DestDerived& res, const ProductType& product)
{
enum {
EvalToRes = (ei_packet_traits<Scalar>::size==1)
||((DestDerived::Flags & ActualPacketAccessBit) && (DestDerived::Flags & RowMajorBit)) };
Scalar* EIGEN_RESTRICT _res;
if (EvalToRes)
_res = &res.coeffRef(0);
else
{
_res = ei_aligned_stack_new(Scalar, res.size());
Map<Matrix<Scalar,DestDerived::SizeAtCompileTime,1,ColMajor> >(_res, res.size()) = res;
}
ei_cache_friendly_product_colmajor_times_vector(res.size(),
&product.rhs().const_cast_derived().coeffRef(0,0), product.rhs().stride(),
product.lhs().transpose(), _res);
if (!EvalToRes)
{
res = Map<Matrix<Scalar,DestDerived::SizeAtCompileTime,1,ColMajor> >(_res, res.size());
ei_aligned_stack_delete(Scalar, _res, res.size());
}
}
};
// optimized rowmajor - vector product
template<typename ProductType, int LhsRows, int RhsOrder, int RhsAccess>
struct ei_cache_friendly_product_selector<ProductType,LhsRows,RowMajor,HasDirectAccess,1,RhsOrder,RhsAccess>
{
typedef typename ProductType::Scalar Scalar;
typedef typename ei_traits<ProductType>::_RhsNested Rhs;
enum {
UseRhsDirectly = ((ei_packet_traits<Scalar>::size==1) || (Rhs::Flags&ActualPacketAccessBit))
&& (Rhs::Flags&DirectAccessBit)
&& (!(Rhs::Flags & RowMajorBit)) };
template<typename DestDerived>
inline static void run(DestDerived& res, const ProductType& product)
{
Scalar* EIGEN_RESTRICT _rhs;
if (UseRhsDirectly)
_rhs = &product.rhs().const_cast_derived().coeffRef(0);
else
{
_rhs = ei_aligned_stack_new(Scalar, product.rhs().size());
Map<Matrix<Scalar,Rhs::SizeAtCompileTime,1,ColMajor> >(_rhs, product.rhs().size()) = product.rhs();
}
ei_cache_friendly_product_rowmajor_times_vector(&product.lhs().const_cast_derived().coeffRef(0,0), product.lhs().stride(),
_rhs, product.rhs().size(), res);
if (!UseRhsDirectly) ei_aligned_stack_delete(Scalar, _rhs, product.rhs().size());
}
};
// optimized vector - colmajor product
template<typename ProductType, int LhsOrder, int LhsAccess, int RhsCols>
struct ei_cache_friendly_product_selector<ProductType,1,LhsOrder,LhsAccess,RhsCols,ColMajor,HasDirectAccess>
{
typedef typename ProductType::Scalar Scalar;
typedef typename ei_traits<ProductType>::_LhsNested Lhs;
enum {
UseLhsDirectly = ((ei_packet_traits<Scalar>::size==1) || (Lhs::Flags&ActualPacketAccessBit))
&& (Lhs::Flags&DirectAccessBit)
&& (Lhs::Flags & RowMajorBit) };
template<typename DestDerived>
inline static void run(DestDerived& res, const ProductType& product)
{
Scalar* EIGEN_RESTRICT _lhs;
if (UseLhsDirectly)
_lhs = &product.lhs().const_cast_derived().coeffRef(0);
else
{
_lhs = ei_aligned_stack_new(Scalar, product.lhs().size());
Map<Matrix<Scalar,Lhs::SizeAtCompileTime,1,ColMajor> >(_lhs, product.lhs().size()) = product.lhs();
}
ei_cache_friendly_product_rowmajor_times_vector(&product.rhs().const_cast_derived().coeffRef(0,0), product.rhs().stride(),
_lhs, product.lhs().size(), res);
if(!UseLhsDirectly) ei_aligned_stack_delete(Scalar, _lhs, product.lhs().size());
}
};
// discard this case which has to be handled by the default path
// (we keep it to be sure to hit a compilation error if this is not the case)
template<typename ProductType, int LhsRows, int RhsOrder, int RhsAccess>
struct ei_cache_friendly_product_selector<ProductType,LhsRows,RowMajor,NoDirectAccess,1,RhsOrder,RhsAccess>
{};
// discard this case which has to be handled by the default path
// (we keep it to be sure to hit a compilation error if this is not the case)
template<typename ProductType, int LhsOrder, int LhsAccess, int RhsCols>
struct ei_cache_friendly_product_selector<ProductType,1,LhsOrder,LhsAccess,RhsCols,ColMajor,NoDirectAccess>
{};
/** \internal */
template<typename Derived>
template<typename Lhs,typename Rhs>
inline Derived&
MatrixBase<Derived>::operator+=(const Flagged<Product<Lhs,Rhs,CacheFriendlyProduct>, 0, EvalBeforeNestingBit | EvalBeforeAssigningBit>& other)
{
if (other._expression()._useCacheFriendlyProduct())
ei_cache_friendly_product_selector<Product<Lhs,Rhs,CacheFriendlyProduct> >::run(const_cast_derived(), other._expression());
else
{
typedef typename ei_cleantype<Lhs>::type _Lhs;
typedef typename ei_cleantype<Rhs>::type _Rhs;
typedef typename ei_nested<_Lhs,_Rhs::ColsAtCompileTime>::type LhsNested;
typedef typename ei_nested<_Rhs,_Lhs::RowsAtCompileTime>::type RhsNested;
Product<LhsNested,RhsNested,NormalProduct> prod(other._expression().lhs(),other._expression().rhs());
lazyAssign(derived() + prod);
}
return derived();
}
template<typename Derived>
template<typename Lhs, typename Rhs>
inline Derived& MatrixBase<Derived>::lazyAssign(const Product<Lhs,Rhs,CacheFriendlyProduct>& product)
{
if (product._useCacheFriendlyProduct())
{
setZero();
ei_cache_friendly_product_selector<Product<Lhs,Rhs,CacheFriendlyProduct> >::run(const_cast_derived(), product);
}
else
{
typedef typename ei_cleantype<Lhs>::type _Lhs;
typedef typename ei_cleantype<Rhs>::type _Rhs;
typedef typename ei_nested<_Lhs,_Rhs::ColsAtCompileTime>::type LhsNested;
typedef typename ei_nested<_Rhs,_Lhs::RowsAtCompileTime>::type RhsNested;
typedef Product<LhsNested,RhsNested,NormalProduct> NormalProduct;
NormalProduct normal_prod(product.lhs(),product.rhs());
lazyAssign<NormalProduct>(normal_prod);
}
return derived();
}
template<typename T,int StorageOrder> struct ei_product_copy_rhs
{
typedef typename ei_meta_if<
(ei_traits<T>::Flags & RowMajorBit)
|| (!(ei_traits<T>::Flags & DirectAccessBit)),
typename ei_plain_matrix_type_column_major<T>::type,
const T&
>::ret type;
};
template<typename T> struct ei_product_copy_rhs<T,RowMajorBit>
{
typedef typename ei_meta_if<
(!(ei_traits<T>::Flags & DirectAccessBit)),
typename ei_plain_matrix_type<T>::type,
const T&
>::ret type;
};
template<typename T,int StorageOrder> struct ei_product_copy_lhs
{
typedef typename ei_meta_if<
(!(int(ei_traits<T>::Flags) & DirectAccessBit)),
typename ei_plain_matrix_type_row_major<T>::type,
const T&
>::ret type;
};
template<typename T> struct ei_product_copy_lhs<T,RowMajorBit>
{
typedef typename ei_meta_if<
((ei_traits<T>::Flags & RowMajorBit)==0)
|| (!(int(ei_traits<T>::Flags) & DirectAccessBit)),
typename ei_plain_matrix_type_row_major<T>::type,
const T&
>::ret type;
};
template<typename Lhs, typename Rhs, int ProductMode>
template<typename DestDerived>
inline void Product<Lhs,Rhs,ProductMode>::_cacheFriendlyEvalAndAdd(DestDerived& res) const
{
typedef typename ei_product_copy_lhs<_LhsNested,DestDerived::Flags&RowMajorBit>::type LhsCopy;
typedef typename ei_unref<LhsCopy>::type _LhsCopy;
typedef typename ei_product_copy_rhs<_RhsNested,DestDerived::Flags&RowMajorBit>::type RhsCopy;
typedef typename ei_unref<RhsCopy>::type _RhsCopy;
LhsCopy lhs(m_lhs);
RhsCopy rhs(m_rhs);
ei_cache_friendly_product<Scalar>(
rows(), cols(), lhs.cols(),
_LhsCopy::Flags&RowMajorBit, (const Scalar*)&(lhs.const_cast_derived().coeffRef(0,0)), lhs.stride(),
_RhsCopy::Flags&RowMajorBit, (const Scalar*)&(rhs.const_cast_derived().coeffRef(0,0)), rhs.stride(),
DestDerived::Flags&RowMajorBit, (Scalar*)&(res.coeffRef(0,0)), res.stride()
);
}
#endif // EIGEN_PRODUCT_H

117
Eigen/src/Core/Redux.h Normal file
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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_REDUX_H
#define EIGEN_REDUX_H
template<typename BinaryOp, typename Derived, int Start, int Length>
struct ei_redux_impl
{
enum {
HalfLength = Length/2
};
typedef typename ei_result_of<BinaryOp(typename Derived::Scalar)>::type Scalar;
static Scalar run(const Derived &mat, const BinaryOp& func)
{
return func(
ei_redux_impl<BinaryOp, Derived, Start, HalfLength>::run(mat, func),
ei_redux_impl<BinaryOp, Derived, Start+HalfLength, Length - HalfLength>::run(mat, func));
}
};
template<typename BinaryOp, typename Derived, int Start>
struct ei_redux_impl<BinaryOp, Derived, Start, 1>
{
enum {
col = Start / Derived::RowsAtCompileTime,
row = Start % Derived::RowsAtCompileTime
};
typedef typename ei_result_of<BinaryOp(typename Derived::Scalar)>::type Scalar;
static Scalar run(const Derived &mat, const BinaryOp &)
{
return mat.coeff(row, col);
}
};
template<typename BinaryOp, typename Derived, int Start>
struct ei_redux_impl<BinaryOp, Derived, Start, Dynamic>
{
typedef typename ei_result_of<BinaryOp(typename Derived::Scalar)>::type Scalar;
static Scalar run(const Derived& mat, const BinaryOp& func)
{
ei_assert(mat.rows()>0 && mat.cols()>0 && "you are using a non initialized matrix");
Scalar res;
res = mat.coeff(0,0);
for(int i = 1; i < mat.rows(); ++i)
res = func(res, mat.coeff(i, 0));
for(int j = 1; j < mat.cols(); ++j)
for(int i = 0; i < mat.rows(); ++i)
res = func(res, mat.coeff(i, j));
return res;
}
};
/** \returns the result of a full redux operation on the whole matrix or vector using \a func
*
* The template parameter \a BinaryOp is the type of the functor \a func which must be
* an assiociative operator. Both current STL and TR1 functor styles are handled.
*
* \sa MatrixBase::sum(), MatrixBase::minCoeff(), MatrixBase::maxCoeff(), MatrixBase::colwise(), MatrixBase::rowwise()
*/
template<typename Derived>
template<typename BinaryOp>
typename ei_result_of<BinaryOp(typename ei_traits<Derived>::Scalar)>::type
MatrixBase<Derived>::redux(const BinaryOp& func) const
{
const bool unroll = SizeAtCompileTime * CoeffReadCost
+ (SizeAtCompileTime-1) * ei_functor_traits<BinaryOp>::Cost
<= EIGEN_UNROLLING_LIMIT;
return ei_redux_impl<BinaryOp, Derived, 0, unroll ? int(SizeAtCompileTime) : Dynamic>
::run(derived(), func);
}
/** \returns the minimum of all coefficients of *this
*/
template<typename Derived>
inline typename ei_traits<Derived>::Scalar
MatrixBase<Derived>::minCoeff() const
{
return this->redux(Eigen::ei_scalar_min_op<Scalar>());
}
/** \returns the maximum of all coefficients of *this
*/
template<typename Derived>
inline typename ei_traits<Derived>::Scalar
MatrixBase<Derived>::maxCoeff() const
{
return this->redux(Eigen::ei_scalar_max_op<Scalar>());
}
#endif // EIGEN_REDUX_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_SOLVETRIANGULAR_H
#define EIGEN_SOLVETRIANGULAR_H
template<typename XprType> struct ei_is_part { enum {value=false}; };
template<typename XprType, unsigned int Mode> struct ei_is_part<Part<XprType,Mode> > { enum {value=true}; };
template<typename Lhs, typename Rhs,
int TriangularPart = (int(Lhs::Flags) & LowerTriangularBit)
? LowerTriangular
: (int(Lhs::Flags) & UpperTriangularBit)
? UpperTriangular
: -1,
int StorageOrder = ei_is_part<Lhs>::value ? -1 // this is to solve ambiguous specializations
: int(Lhs::Flags) & (RowMajorBit|SparseBit)
>
struct ei_solve_triangular_selector;
// transform a Part xpr to a Flagged xpr
template<typename Lhs, unsigned int LhsMode, typename Rhs, int UpLo, int StorageOrder>
struct ei_solve_triangular_selector<Part<Lhs,LhsMode>,Rhs,UpLo,StorageOrder>
{
static void run(const Part<Lhs,LhsMode>& lhs, Rhs& other)
{
ei_solve_triangular_selector<Flagged<Lhs,LhsMode,0>,Rhs>::run(lhs._expression(), other);
}
};
// forward substitution, row-major
template<typename Lhs, typename Rhs, int UpLo>
struct ei_solve_triangular_selector<Lhs,Rhs,UpLo,RowMajor|IsDense>
{
typedef typename Rhs::Scalar Scalar;
static void run(const Lhs& lhs, Rhs& other)
{
const bool IsLowerTriangular = (UpLo==LowerTriangular);
const int size = lhs.cols();
/* We perform the inverse product per block of 4 rows such that we perfectly match
* our optimized matrix * vector product. blockyStart represents the number of rows
* we have process first using the non-block version.
*/
int blockyStart = (std::max(size-5,0)/4)*4;
if (IsLowerTriangular)
blockyStart = size - blockyStart;
else
blockyStart -= 1;
for(int c=0 ; c<other.cols() ; ++c)
{
// process first rows using the non block version
if(!(Lhs::Flags & UnitDiagBit))
{
if (IsLowerTriangular)
other.coeffRef(0,c) = other.coeff(0,c)/lhs.coeff(0, 0);
else
other.coeffRef(size-1,c) = other.coeff(size-1, c)/lhs.coeff(size-1, size-1);
}
for(int i=(IsLowerTriangular ? 1 : size-2); IsLowerTriangular ? i<blockyStart : i>blockyStart; i += (IsLowerTriangular ? 1 : -1) )
{
Scalar tmp = other.coeff(i,c)
- (IsLowerTriangular ? ((lhs.row(i).start(i)) * other.col(c).start(i)).coeff(0,0)
: ((lhs.row(i).end(size-i-1)) * other.col(c).end(size-i-1)).coeff(0,0));
if (Lhs::Flags & UnitDiagBit)
other.coeffRef(i,c) = tmp;
else
other.coeffRef(i,c) = tmp/lhs.coeff(i,i);
}
// now let's process the remaining rows 4 at once
for(int i=blockyStart; IsLowerTriangular ? i<size : i>0; )
{
int startBlock = i;
int endBlock = startBlock + (IsLowerTriangular ? 4 : -4);
/* Process the i cols times 4 rows block, and keep the result in a temporary vector */
// FIXME use fixed size block but take care to small fixed size matrices...
Matrix<Scalar,Dynamic,1> btmp(4);
if (IsLowerTriangular)
btmp = lhs.block(startBlock,0,4,i) * other.col(c).start(i);
else
btmp = lhs.block(i-3,i+1,4,size-1-i) * other.col(c).end(size-1-i);
/* Let's process the 4x4 sub-matrix as usual.
* btmp stores the diagonal coefficients used to update the remaining part of the result.
*/
{
Scalar tmp = other.coeff(startBlock,c)-btmp.coeff(IsLowerTriangular?0:3);
if (Lhs::Flags & UnitDiagBit)
other.coeffRef(i,c) = tmp;
else
other.coeffRef(i,c) = tmp/lhs.coeff(i,i);
}
i += IsLowerTriangular ? 1 : -1;
for (;IsLowerTriangular ? i<endBlock : i>endBlock; i += IsLowerTriangular ? 1 : -1)
{
int remainingSize = IsLowerTriangular ? i-startBlock : startBlock-i;
Scalar tmp = other.coeff(i,c)
- btmp.coeff(IsLowerTriangular ? remainingSize : 3-remainingSize)
- ( lhs.row(i).segment(IsLowerTriangular ? startBlock : i+1, remainingSize)
* other.col(c).segment(IsLowerTriangular ? startBlock : i+1, remainingSize)).coeff(0,0);
if (Lhs::Flags & UnitDiagBit)
other.coeffRef(i,c) = tmp;
else
other.coeffRef(i,c) = tmp/lhs.coeff(i,i);
}
}
}
}
};
// Implements the following configurations:
// - inv(LowerTriangular, ColMajor) * Column vector
// - inv(LowerTriangular,UnitDiag,ColMajor) * Column vector
// - inv(UpperTriangular, ColMajor) * Column vector
// - inv(UpperTriangular,UnitDiag,ColMajor) * Column vector
template<typename Lhs, typename Rhs, int UpLo>
struct ei_solve_triangular_selector<Lhs,Rhs,UpLo,ColMajor|IsDense>
{
typedef typename Rhs::Scalar Scalar;
typedef typename ei_packet_traits<Scalar>::type Packet;
enum { PacketSize = ei_packet_traits<Scalar>::size };
static void run(const Lhs& lhs, Rhs& other)
{
static const bool IsLowerTriangular = (UpLo==LowerTriangular);
const int size = lhs.cols();
for(int c=0 ; c<other.cols() ; ++c)
{
/* let's perform the inverse product per block of 4 columns such that we perfectly match
* our optimized matrix * vector product. blockyEnd represents the number of rows
* we can process using the block version.
*/
int blockyEnd = (std::max(size-5,0)/4)*4;
if (!IsLowerTriangular)
blockyEnd = size-1 - blockyEnd;
for(int i=IsLowerTriangular ? 0 : size-1; IsLowerTriangular ? i<blockyEnd : i>blockyEnd;)
{
/* Let's process the 4x4 sub-matrix as usual.
* btmp stores the diagonal coefficients used to update the remaining part of the result.
*/
int startBlock = i;
int endBlock = startBlock + (IsLowerTriangular ? 4 : -4);
Matrix<Scalar,4,1> btmp;
for (;IsLowerTriangular ? i<endBlock : i>endBlock;
i += IsLowerTriangular ? 1 : -1)
{
if(!(Lhs::Flags & UnitDiagBit))
other.coeffRef(i,c) /= lhs.coeff(i,i);
int remainingSize = IsLowerTriangular ? endBlock-i-1 : i-endBlock-1;
if (remainingSize>0)
other.col(c).segment((IsLowerTriangular ? i : endBlock) + 1, remainingSize) -=
other.coeffRef(i,c)
* Block<Lhs,Dynamic,1>(lhs, (IsLowerTriangular ? i : endBlock) + 1, i, remainingSize, 1);
btmp.coeffRef(IsLowerTriangular ? i-startBlock : remainingSize) = -other.coeffRef(i,c);
}
/* Now we can efficiently update the remaining part of the result as a matrix * vector product.
* NOTE in order to reduce both compilation time and binary size, let's directly call
* the fast product implementation. It is equivalent to the following code:
* other.col(c).end(size-endBlock) += (lhs.block(endBlock, startBlock, size-endBlock, endBlock-startBlock)
* * other.col(c).block(startBlock,endBlock-startBlock)).lazy();
*/
// FIXME this is cool but what about conjugate/adjoint expressions ? do we want to evaluate them ?
// this is a more general problem though.
ei_cache_friendly_product_colmajor_times_vector(
IsLowerTriangular ? size-endBlock : endBlock+1,
&(lhs.const_cast_derived().coeffRef(IsLowerTriangular ? endBlock : 0, IsLowerTriangular ? startBlock : endBlock+1)),
lhs.stride(),
btmp, &(other.coeffRef(IsLowerTriangular ? endBlock : 0, c)));
// if (IsLowerTriangular)
// other.col(c).end(size-endBlock) += (lhs.block(endBlock, startBlock, size-endBlock, endBlock-startBlock)
// * other.col(c).block(startBlock,endBlock-startBlock)).lazy();
// else
// other.col(c).end(size-endBlock) += (lhs.block(endBlock, startBlock, size-endBlock, endBlock-startBlock)
// * other.col(c).block(startBlock,endBlock-startBlock)).lazy();
}
/* Now we have to process the remaining part as usual */
int i;
for(i=blockyEnd; IsLowerTriangular ? i<size-1 : i>0; i += (IsLowerTriangular ? 1 : -1) )
{
if(!(Lhs::Flags & UnitDiagBit))
other.coeffRef(i,c) /= lhs.coeff(i,i);
/* NOTE we cannot use lhs.col(i).end(size-i-1) because Part::coeffRef gets called by .col() to
* get the address of the start of the row
*/
if(IsLowerTriangular)
other.col(c).end(size-i-1) -= other.coeffRef(i,c) * Block<Lhs,Dynamic,1>(lhs, i+1,i, size-i-1,1);
else
other.col(c).start(i) -= other.coeffRef(i,c) * Block<Lhs,Dynamic,1>(lhs, 0,i, i, 1);
}
if(!(Lhs::Flags & UnitDiagBit))
other.coeffRef(i,c) /= lhs.coeff(i,i);
}
}
};
/** "in-place" version of MatrixBase::solveTriangular() where the result is written in \a other
*
* \nonstableyet
*
* The parameter is only marked 'const' to make the C++ compiler accept a temporary expression here.
* This function will const_cast it, so constness isn't honored here.
*
* See MatrixBase:solveTriangular() for the details.
*/
template<typename Derived>
template<typename OtherDerived>
void MatrixBase<Derived>::solveTriangularInPlace(const MatrixBase<OtherDerived>& _other) const
{
MatrixBase<OtherDerived>& other = _other.const_cast_derived();
ei_assert(derived().cols() == derived().rows());
ei_assert(derived().cols() == other.rows());
ei_assert(!(Flags & ZeroDiagBit));
ei_assert(Flags & (UpperTriangularBit|LowerTriangularBit));
enum { copy = ei_traits<OtherDerived>::Flags & RowMajorBit };
typedef typename ei_meta_if<copy,
typename ei_plain_matrix_type_column_major<OtherDerived>::type, OtherDerived&>::ret OtherCopy;
OtherCopy otherCopy(other.derived());
ei_solve_triangular_selector<Derived, typename ei_unref<OtherCopy>::type>::run(derived(), otherCopy);
if (copy)
other = otherCopy;
}
/** \returns the product of the inverse of \c *this with \a other, \a *this being triangular.
*
* \nonstableyet
*
* This function computes the inverse-matrix matrix product inverse(\c *this) * \a other.
* The matrix \c *this must be triangular and invertible (i.e., all the coefficients of the
* diagonal must be non zero). It works as a forward (resp. backward) substitution if \c *this
* is an upper (resp. lower) triangular matrix.
*
* It is required that \c *this be marked as either an upper or a lower triangular matrix, which
* can be done by marked(), and that is automatically the case with expressions such as those returned
* by extract().
*
* \addexample SolveTriangular \label How to solve a triangular system (aka. how to multiply the inverse of a triangular matrix by another one)
*
* Example: \include MatrixBase_marked.cpp
* Output: \verbinclude MatrixBase_marked.out
*
* This function is essentially a wrapper to the faster solveTriangularInPlace() function creating
* a temporary copy of \a other, calling solveTriangularInPlace() on the copy and returning it.
* Therefore, if \a other is not needed anymore, it is quite faster to call solveTriangularInPlace()
* instead of solveTriangular().
*
* For users coming from BLAS, this function (and more specifically solveTriangularInPlace()) offer
* all the operations supported by the \c *TRSV and \c *TRSM BLAS routines.
*
* \b Tips: to perform a \em "right-inverse-multiply" you can simply transpose the operation, e.g.:
* \code
* M * T^1 <=> T.transpose().solveTriangularInPlace(M.transpose());
* \endcode
*
* \sa solveTriangularInPlace(), marked(), extract()
*/
template<typename Derived>
template<typename OtherDerived>
typename ei_plain_matrix_type_column_major<OtherDerived>::type
MatrixBase<Derived>::solveTriangular(const MatrixBase<OtherDerived>& other) const
{
typename ei_plain_matrix_type_column_major<OtherDerived>::type res(other);
solveTriangularInPlace(res);
return res;
}
#endif // EIGEN_SOLVETRIANGULAR_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_SUM_H
#define EIGEN_SUM_H
/***************************************************************************
* Part 1 : the logic deciding a strategy for vectorization and unrolling
***************************************************************************/
template<typename Derived>
struct ei_sum_traits
{
private:
enum {
PacketSize = ei_packet_traits<typename Derived::Scalar>::size
};
public:
enum {
Vectorization = (int(Derived::Flags)&ActualPacketAccessBit)
&& (int(Derived::Flags)&LinearAccessBit)
? LinearVectorization
: NoVectorization
};
private:
enum {
Cost = Derived::SizeAtCompileTime * Derived::CoeffReadCost
+ (Derived::SizeAtCompileTime-1) * NumTraits<typename Derived::Scalar>::AddCost,
UnrollingLimit = EIGEN_UNROLLING_LIMIT * (int(Vectorization) == int(NoVectorization) ? 1 : int(PacketSize))
};
public:
enum {
Unrolling = Cost <= UnrollingLimit
? CompleteUnrolling
: NoUnrolling
};
};
/***************************************************************************
* Part 2 : unrollers
***************************************************************************/
/*** no vectorization ***/
template<typename Derived, int Start, int Length>
struct ei_sum_novec_unroller
{
enum {
HalfLength = Length/2
};
typedef typename Derived::Scalar Scalar;
inline static Scalar run(const Derived &mat)
{
return ei_sum_novec_unroller<Derived, Start, HalfLength>::run(mat)
+ ei_sum_novec_unroller<Derived, Start+HalfLength, Length-HalfLength>::run(mat);
}
};
template<typename Derived, int Start>
struct ei_sum_novec_unroller<Derived, Start, 1>
{
enum {
col = Start / Derived::RowsAtCompileTime,
row = Start % Derived::RowsAtCompileTime
};
typedef typename Derived::Scalar Scalar;
inline static Scalar run(const Derived &mat)
{
return mat.coeff(row, col);
}
};
/*** vectorization ***/
template<typename Derived, int Start, int Length>
struct ei_sum_vec_unroller
{
enum {
PacketSize = ei_packet_traits<typename Derived::Scalar>::size,
HalfLength = Length/2
};
typedef typename Derived::Scalar Scalar;
typedef typename ei_packet_traits<Scalar>::type PacketScalar;
inline static PacketScalar run(const Derived &mat)
{
return ei_padd(
ei_sum_vec_unroller<Derived, Start, HalfLength>::run(mat),
ei_sum_vec_unroller<Derived, Start+HalfLength, Length-HalfLength>::run(mat) );
}
};
template<typename Derived, int Start>
struct ei_sum_vec_unroller<Derived, Start, 1>
{
enum {
index = Start * ei_packet_traits<typename Derived::Scalar>::size,
row = int(Derived::Flags)&RowMajorBit
? index / int(Derived::ColsAtCompileTime)
: index % Derived::RowsAtCompileTime,
col = int(Derived::Flags)&RowMajorBit
? index % int(Derived::ColsAtCompileTime)
: index / Derived::RowsAtCompileTime,
alignment = (Derived::Flags & AlignedBit) ? Aligned : Unaligned
};
typedef typename Derived::Scalar Scalar;
typedef typename ei_packet_traits<Scalar>::type PacketScalar;
inline static PacketScalar run(const Derived &mat)
{
return mat.template packet<alignment>(row, col);
}
};
/***************************************************************************
* Part 3 : implementation of all cases
***************************************************************************/
template<typename Derived,
int Vectorization = ei_sum_traits<Derived>::Vectorization,
int Unrolling = ei_sum_traits<Derived>::Unrolling
>
struct ei_sum_impl;
template<typename Derived>
struct ei_sum_impl<Derived, NoVectorization, NoUnrolling>
{
typedef typename Derived::Scalar Scalar;
static Scalar run(const Derived& mat)
{
ei_assert(mat.rows()>0 && mat.cols()>0 && "you are using a non initialized matrix");
Scalar res;
res = mat.coeff(0, 0);
for(int i = 1; i < mat.rows(); ++i)
res += mat.coeff(i, 0);
for(int j = 1; j < mat.cols(); ++j)
for(int i = 0; i < mat.rows(); ++i)
res += mat.coeff(i, j);
return res;
}
};
template<typename Derived>
struct ei_sum_impl<Derived, NoVectorization, CompleteUnrolling>
: public ei_sum_novec_unroller<Derived, 0, Derived::SizeAtCompileTime>
{};
template<typename Derived>
struct ei_sum_impl<Derived, LinearVectorization, NoUnrolling>
{
typedef typename Derived::Scalar Scalar;
typedef typename ei_packet_traits<Scalar>::type PacketScalar;
static Scalar run(const Derived& mat)
{
const int size = mat.size();
const int packetSize = ei_packet_traits<Scalar>::size;
const int alignedStart = (Derived::Flags & AlignedBit)
|| !(Derived::Flags & DirectAccessBit)
? 0
: ei_alignmentOffset(&mat.const_cast_derived().coeffRef(0), size);
enum {
alignment = (Derived::Flags & DirectAccessBit) || (Derived::Flags & AlignedBit)
? Aligned : Unaligned
};
const int alignedSize = ((size-alignedStart)/packetSize)*packetSize;
const int alignedEnd = alignedStart + alignedSize;
Scalar res;
if(alignedSize)
{
PacketScalar packet_res = mat.template packet<alignment>(alignedStart);
for(int index = alignedStart + packetSize; index < alignedEnd; index += packetSize)
packet_res = ei_padd(packet_res, mat.template packet<alignment>(index));
res = ei_predux(packet_res);
}
else // too small to vectorize anything.
// since this is dynamic-size hence inefficient anyway for such small sizes, don't try to optimize.
{
res = Scalar(0);
}
for(int index = 0; index < alignedStart; ++index)
res += mat.coeff(index);
for(int index = alignedEnd; index < size; ++index)
res += mat.coeff(index);
return res;
}
};
template<typename Derived>
struct ei_sum_impl<Derived, LinearVectorization, CompleteUnrolling>
{
typedef typename Derived::Scalar Scalar;
typedef typename ei_packet_traits<Scalar>::type PacketScalar;
enum {
PacketSize = ei_packet_traits<Scalar>::size,
Size = Derived::SizeAtCompileTime,
VectorizationSize = (Size / PacketSize) * PacketSize
};
static Scalar run(const Derived& mat)
{
Scalar res = ei_predux(ei_sum_vec_unroller<Derived, 0, Size / PacketSize>::run(mat));
if (VectorizationSize != Size)
res += ei_sum_novec_unroller<Derived, VectorizationSize, Size-VectorizationSize>::run(mat);
return res;
}
};
/***************************************************************************
* Part 4 : implementation of MatrixBase methods
***************************************************************************/
/** \returns the sum of all coefficients of *this
*
* \sa trace()
*/
template<typename Derived>
inline typename ei_traits<Derived>::Scalar
MatrixBase<Derived>::sum() const
{
return ei_sum_impl<Derived>::run(derived());
}
/** \returns the trace of \c *this, i.e. the sum of the coefficients on the main diagonal.
*
* \c *this can be any matrix, not necessarily square.
*
* \sa diagonal(), sum()
*/
template<typename Derived>
inline typename ei_traits<Derived>::Scalar
MatrixBase<Derived>::trace() const
{
return diagonal().sum();
}
#endif // EIGEN_SUM_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_SWAP_H
#define EIGEN_SWAP_H
/** \class SwapWrapper
*
* \internal
*
* \brief Internal helper class for swapping two expressions
*/
template<typename ExpressionType>
struct ei_traits<SwapWrapper<ExpressionType> >
{
typedef typename ExpressionType::Scalar Scalar;
enum {
RowsAtCompileTime = ExpressionType::RowsAtCompileTime,
ColsAtCompileTime = ExpressionType::ColsAtCompileTime,
MaxRowsAtCompileTime = ExpressionType::MaxRowsAtCompileTime,
MaxColsAtCompileTime = ExpressionType::MaxColsAtCompileTime,
Flags = ExpressionType::Flags,
CoeffReadCost = ExpressionType::CoeffReadCost
};
};
template<typename ExpressionType> class SwapWrapper
: public MatrixBase<SwapWrapper<ExpressionType> >
{
public:
EIGEN_GENERIC_PUBLIC_INTERFACE(SwapWrapper)
typedef typename ei_packet_traits<Scalar>::type Packet;
inline SwapWrapper(ExpressionType& xpr) : m_expression(xpr) {}
inline int rows() const { return m_expression.rows(); }
inline int cols() const { return m_expression.cols(); }
inline int stride() const { return m_expression.stride(); }
inline Scalar& coeffRef(int row, int col)
{
return m_expression.const_cast_derived().coeffRef(row, col);
}
inline Scalar& coeffRef(int index)
{
return m_expression.const_cast_derived().coeffRef(index);
}
template<typename OtherDerived>
void copyCoeff(int row, int col, const MatrixBase<OtherDerived>& other)
{
OtherDerived& _other = other.const_cast_derived();
ei_internal_assert(row >= 0 && row < rows()
&& col >= 0 && col < cols());
Scalar tmp = m_expression.coeff(row, col);
m_expression.coeffRef(row, col) = _other.coeff(row, col);
_other.coeffRef(row, col) = tmp;
}
template<typename OtherDerived>
void copyCoeff(int index, const MatrixBase<OtherDerived>& other)
{
OtherDerived& _other = other.const_cast_derived();
ei_internal_assert(index >= 0 && index < m_expression.size());
Scalar tmp = m_expression.coeff(index);
m_expression.coeffRef(index) = _other.coeff(index);
_other.coeffRef(index) = tmp;
}
template<typename OtherDerived, int StoreMode, int LoadMode>
void copyPacket(int row, int col, const MatrixBase<OtherDerived>& other)
{
OtherDerived& _other = other.const_cast_derived();
ei_internal_assert(row >= 0 && row < rows()
&& col >= 0 && col < cols());
Packet tmp = m_expression.template packet<StoreMode>(row, col);
m_expression.template writePacket<StoreMode>(row, col,
_other.template packet<LoadMode>(row, col)
);
_other.template writePacket<LoadMode>(row, col, tmp);
}
template<typename OtherDerived, int StoreMode, int LoadMode>
void copyPacket(int index, const MatrixBase<OtherDerived>& other)
{
OtherDerived& _other = other.const_cast_derived();
ei_internal_assert(index >= 0 && index < m_expression.size());
Packet tmp = m_expression.template packet<StoreMode>(index);
m_expression.template writePacket<StoreMode>(index,
_other.template packet<LoadMode>(index)
);
_other.template writePacket<LoadMode>(index, tmp);
}
protected:
ExpressionType& m_expression;
private:
SwapWrapper& operator=(const SwapWrapper&);
};
/** swaps *this with the expression \a other.
*
* \note \a other is only marked for internal reasons, but of course
* it gets const-casted. One reason is that one will often call swap
* on temporary objects (hence non-const references are forbidden).
* Another reason is that lazyAssign takes a const argument anyway.
*/
template<typename Derived>
template<typename OtherDerived>
void MatrixBase<Derived>::swap(const MatrixBase<OtherDerived>& other)
{
(SwapWrapper<Derived>(derived())).lazyAssign(other);
}
#endif // EIGEN_SWAP_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_TRANSPOSE_H
#define EIGEN_TRANSPOSE_H
/** \class Transpose
*
* \brief Expression of the transpose of a matrix
*
* \param MatrixType the type of the object of which we are taking the transpose
*
* This class represents an expression of the transpose of a matrix.
* It is the return type of MatrixBase::transpose() and MatrixBase::adjoint()
* and most of the time this is the only way it is used.
*
* \sa MatrixBase::transpose(), MatrixBase::adjoint()
*/
template<typename MatrixType>
struct ei_traits<Transpose<MatrixType> >
{
typedef typename MatrixType::Scalar Scalar;
typedef typename ei_nested<MatrixType>::type MatrixTypeNested;
typedef typename ei_unref<MatrixTypeNested>::type _MatrixTypeNested;
enum {
RowsAtCompileTime = MatrixType::ColsAtCompileTime,
ColsAtCompileTime = MatrixType::RowsAtCompileTime,
MaxRowsAtCompileTime = MatrixType::MaxColsAtCompileTime,
MaxColsAtCompileTime = MatrixType::MaxRowsAtCompileTime,
Flags = ((int(_MatrixTypeNested::Flags) ^ RowMajorBit)
& ~(LowerTriangularBit | UpperTriangularBit))
| (int(_MatrixTypeNested::Flags)&UpperTriangularBit ? LowerTriangularBit : 0)
| (int(_MatrixTypeNested::Flags)&LowerTriangularBit ? UpperTriangularBit : 0),
CoeffReadCost = _MatrixTypeNested::CoeffReadCost
};
};
template<typename MatrixType> class Transpose
: public MatrixBase<Transpose<MatrixType> >
{
public:
EIGEN_GENERIC_PUBLIC_INTERFACE(Transpose)
inline Transpose(const MatrixType& matrix) : m_matrix(matrix) {}
EIGEN_INHERIT_ASSIGNMENT_OPERATORS(Transpose)
inline int rows() const { return m_matrix.cols(); }
inline int cols() const { return m_matrix.rows(); }
inline int stride(void) const { return m_matrix.stride(); }
inline Scalar& coeffRef(int row, int col)
{
return m_matrix.const_cast_derived().coeffRef(col, row);
}
inline const Scalar coeff(int row, int col) const
{
return m_matrix.coeff(col, row);
}
inline const Scalar coeff(int index) const
{
return m_matrix.coeff(index);
}
inline Scalar& coeffRef(int index)
{
return m_matrix.const_cast_derived().coeffRef(index);
}
template<int LoadMode>
inline const PacketScalar packet(int row, int col) const
{
return m_matrix.template packet<LoadMode>(col, row);
}
template<int LoadMode>
inline void writePacket(int row, int col, const PacketScalar& x)
{
m_matrix.const_cast_derived().template writePacket<LoadMode>(col, row, x);
}
template<int LoadMode>
inline const PacketScalar packet(int index) const
{
return m_matrix.template packet<LoadMode>(index);
}
template<int LoadMode>
inline void writePacket(int index, const PacketScalar& x)
{
m_matrix.const_cast_derived().template writePacket<LoadMode>(index, x);
}
protected:
const typename MatrixType::Nested m_matrix;
};
/** \returns an expression of the transpose of *this.
*
* Example: \include MatrixBase_transpose.cpp
* Output: \verbinclude MatrixBase_transpose.out
*
* \warning If you want to replace a matrix by its own transpose, do \b NOT do this:
* \code
* m = m.transpose(); // bug!!! caused by aliasing effect
* \endcode
* Instead, use the transposeInPlace() method:
* \code
* m.transposeInPlace();
* \endcode
* which gives Eigen good opportunities for optimization, or alternatively you can also do:
* \code
* m = m.transpose().eval();
* \endcode
*
* \sa transposeInPlace(), adjoint() */
template<typename Derived>
inline Transpose<Derived>
MatrixBase<Derived>::transpose()
{
return derived();
}
/** This is the const version of transpose().
*
* Make sure you read the warning for transpose() !
*
* \sa transposeInPlace(), adjoint() */
template<typename Derived>
inline const Transpose<Derived>
MatrixBase<Derived>::transpose() const
{
return derived();
}
/** \returns an expression of the adjoint (i.e. conjugate transpose) of *this.
*
* Example: \include MatrixBase_adjoint.cpp
* Output: \verbinclude MatrixBase_adjoint.out
*
* \warning If you want to replace a matrix by its own adjoint, do \b NOT do this:
* \code
* m = m.adjoint(); // bug!!! caused by aliasing effect
* \endcode
* Instead, do:
* \code
* m = m.adjoint().eval();
* \endcode
*
* \sa transpose(), conjugate(), class Transpose, class ei_scalar_conjugate_op */
template<typename Derived>
inline const typename MatrixBase<Derived>::AdjointReturnType
MatrixBase<Derived>::adjoint() const
{
return conjugate().nestByValue();
}
/***************************************************************************
* "in place" transpose implementation
***************************************************************************/
template<typename MatrixType,
bool IsSquare = (MatrixType::RowsAtCompileTime == MatrixType::ColsAtCompileTime) && MatrixType::RowsAtCompileTime!=Dynamic>
struct ei_inplace_transpose_selector;
template<typename MatrixType>
struct ei_inplace_transpose_selector<MatrixType,true> { // square matrix
static void run(MatrixType& m) {
m.template part<StrictlyUpperTriangular>().swap(m.transpose());
}
};
template<typename MatrixType>
struct ei_inplace_transpose_selector<MatrixType,false> { // non square matrix
static void run(MatrixType& m) {
if (m.rows()==m.cols())
m.template part<StrictlyUpperTriangular>().swap(m.transpose());
else
m = m.transpose().eval();
}
};
/** This is the "in place" version of transpose: it transposes \c *this.
*
* In most cases it is probably better to simply use the transposed expression
* of a matrix. However, when transposing the matrix data itself is really needed,
* then this "in-place" version is probably the right choice because it provides
* the following additional features:
* - less error prone: doing the same operation with .transpose() requires special care:
* \code m = m.transpose().eval(); \endcode
* - no temporary object is created (currently only for squared matrices)
* - it allows future optimizations (cache friendliness, etc.)
*
* \note if the matrix is not square, then \c *this must be a resizable matrix.
*
* \sa transpose(), adjoint() */
template<typename Derived>
inline void MatrixBase<Derived>::transposeInPlace()
{
ei_inplace_transpose_selector<Derived>::run(derived());
}
#endif // EIGEN_TRANSPOSE_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_VISITOR_H
#define EIGEN_VISITOR_H
template<typename Visitor, typename Derived, int UnrollCount>
struct ei_visitor_impl
{
enum {
col = (UnrollCount-1) / Derived::RowsAtCompileTime,
row = (UnrollCount-1) % Derived::RowsAtCompileTime
};
inline static void run(const Derived &mat, Visitor& visitor)
{
ei_visitor_impl<Visitor, Derived, UnrollCount-1>::run(mat, visitor);
visitor(mat.coeff(row, col), row, col);
}
};
template<typename Visitor, typename Derived>
struct ei_visitor_impl<Visitor, Derived, 1>
{
inline static void run(const Derived &mat, Visitor& visitor)
{
return visitor.init(mat.coeff(0, 0), 0, 0);
}
};
template<typename Visitor, typename Derived>
struct ei_visitor_impl<Visitor, Derived, Dynamic>
{
inline static void run(const Derived& mat, Visitor& visitor)
{
visitor.init(mat.coeff(0,0), 0, 0);
for(int i = 1; i < mat.rows(); ++i)
visitor(mat.coeff(i, 0), i, 0);
for(int j = 1; j < mat.cols(); ++j)
for(int i = 0; i < mat.rows(); ++i)
visitor(mat.coeff(i, j), i, j);
}
};
/** Applies the visitor \a visitor to the whole coefficients of the matrix or vector.
*
* The template parameter \a Visitor is the type of the visitor and provides the following interface:
* \code
* struct MyVisitor {
* // called for the first coefficient
* void init(const Scalar& value, int i, int j);
* // called for all other coefficients
* void operator() (const Scalar& value, int i, int j);
* };
* \endcode
*
* \note compared to one or two \em for \em loops, visitors offer automatic
* unrolling for small fixed size matrix.
*
* \sa minCoeff(int*,int*), maxCoeff(int*,int*), MatrixBase::redux()
*/
template<typename Derived>
template<typename Visitor>
void MatrixBase<Derived>::visit(Visitor& visitor) const
{
const bool unroll = SizeAtCompileTime * CoeffReadCost
+ (SizeAtCompileTime-1) * ei_functor_traits<Visitor>::Cost
<= EIGEN_UNROLLING_LIMIT;
return ei_visitor_impl<Visitor, Derived,
unroll ? int(SizeAtCompileTime) : Dynamic
>::run(derived(), visitor);
}
/** \internal
* \brief Base class to implement min and max visitors
*/
template <typename Scalar>
struct ei_coeff_visitor
{
int row, col;
Scalar res;
inline void init(const Scalar& value, int i, int j)
{
res = value;
row = i;
col = j;
}
};
/** \internal
* \brief Visitor computing the min coefficient with its value and coordinates
*
* \sa MatrixBase::minCoeff(int*, int*)
*/
template <typename Scalar>
struct ei_min_coeff_visitor : ei_coeff_visitor<Scalar>
{
void operator() (const Scalar& value, int i, int j)
{
if(value < this->res)
{
this->res = value;
this->row = i;
this->col = j;
}
}
};
template<typename Scalar>
struct ei_functor_traits<ei_min_coeff_visitor<Scalar> > {
enum {
Cost = NumTraits<Scalar>::AddCost
};
};
/** \internal
* \brief Visitor computing the max coefficient with its value and coordinates
*
* \sa MatrixBase::maxCoeff(int*, int*)
*/
template <typename Scalar>
struct ei_max_coeff_visitor : ei_coeff_visitor<Scalar>
{
void operator() (const Scalar& value, int i, int j)
{
if(value > this->res)
{
this->res = value;
this->row = i;
this->col = j;
}
}
};
template<typename Scalar>
struct ei_functor_traits<ei_max_coeff_visitor<Scalar> > {
enum {
Cost = NumTraits<Scalar>::AddCost
};
};
/** \returns the minimum of all coefficients of *this
* and puts in *row and *col its location.
*
* \sa MatrixBase::minCoeff(int*), MatrixBase::maxCoeff(int*,int*), MatrixBase::visitor(), MatrixBase::minCoeff()
*/
template<typename Derived>
typename ei_traits<Derived>::Scalar
MatrixBase<Derived>::minCoeff(int* row, int* col) const
{
ei_min_coeff_visitor<Scalar> minVisitor;
this->visit(minVisitor);
*row = minVisitor.row;
if (col) *col = minVisitor.col;
return minVisitor.res;
}
/** \returns the minimum of all coefficients of *this
* and puts in *index its location.
*
* \sa MatrixBase::minCoeff(int*,int*), MatrixBase::maxCoeff(int*,int*), MatrixBase::visitor(), MatrixBase::minCoeff()
*/
template<typename Derived>
typename ei_traits<Derived>::Scalar
MatrixBase<Derived>::minCoeff(int* index) const
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Derived)
ei_min_coeff_visitor<Scalar> minVisitor;
this->visit(minVisitor);
*index = (RowsAtCompileTime==1) ? minVisitor.col : minVisitor.row;
return minVisitor.res;
}
/** \returns the maximum of all coefficients of *this
* and puts in *row and *col its location.
*
* \sa MatrixBase::minCoeff(int*,int*), MatrixBase::visitor(), MatrixBase::maxCoeff()
*/
template<typename Derived>
typename ei_traits<Derived>::Scalar
MatrixBase<Derived>::maxCoeff(int* row, int* col) const
{
ei_max_coeff_visitor<Scalar> maxVisitor;
this->visit(maxVisitor);
*row = maxVisitor.row;
if (col) *col = maxVisitor.col;
return maxVisitor.res;
}
/** \returns the maximum of all coefficients of *this
* and puts in *index its location.
*
* \sa MatrixBase::maxCoeff(int*,int*), MatrixBase::minCoeff(int*,int*), MatrixBase::visitor(), MatrixBase::maxCoeff()
*/
template<typename Derived>
typename ei_traits<Derived>::Scalar
MatrixBase<Derived>::maxCoeff(int* index) const
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Derived)
ei_max_coeff_visitor<Scalar> maxVisitor;
this->visit(maxVisitor);
*index = (RowsAtCompileTime==1) ? maxVisitor.col : maxVisitor.row;
return maxVisitor.res;
}
#endif // EIGEN_VISITOR_H

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@@ -0,0 +1,6 @@
FILE(GLOB Eigen_Core_arch_AltiVec_SRCS "*.h")
INSTALL(FILES
${Eigen_Core_arch_AltiVec_SRCS}
DESTINATION ${INCLUDE_INSTALL_DIR}/Eigen/src/Core/arch/AltiVec
)

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@@ -0,0 +1,354 @@
// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Konstantinos Margaritis <markos@codex.gr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_PACKET_MATH_ALTIVEC_H
#define EIGEN_PACKET_MATH_ALTIVEC_H
#ifndef EIGEN_CACHEFRIENDLY_PRODUCT_THRESHOLD
#define EIGEN_CACHEFRIENDLY_PRODUCT_THRESHOLD 4
#endif
typedef __vector float v4f;
typedef __vector int v4i;
typedef __vector unsigned int v4ui;
typedef __vector __bool int v4bi;
// We don't want to write the same code all the time, but we need to reuse the constants
// and it doesn't really work to declare them global, so we define macros instead
#define USE_CONST_v0i const v4i v0i = vec_splat_s32(0)
#define USE_CONST_v1i const v4i v1i = vec_splat_s32(1)
#define USE_CONST_v16i_ const v4i v16i_ = vec_splat_s32(-16)
#define USE_CONST_v0f USE_CONST_v0i; const v4f v0f = (v4f) v0i
#define USE_CONST_v1f USE_CONST_v1i; const v4f v1f = vec_ctf(v1i, 0)
#define USE_CONST_v1i_ const v4ui v1i_ = vec_splat_u32(-1)
#define USE_CONST_v0f_ USE_CONST_v1i_; const v4f v0f_ = (v4f) vec_sl(v1i_, v1i_)
template<> struct ei_packet_traits<float> { typedef v4f type; enum {size=4}; };
template<> struct ei_packet_traits<int> { typedef v4i type; enum {size=4}; };
template<> struct ei_unpacket_traits<v4f> { typedef float type; enum {size=4}; };
template<> struct ei_unpacket_traits<v4i> { typedef int type; enum {size=4}; };
inline std::ostream & operator <<(std::ostream & s, const v4f & v)
{
union {
v4f v;
float n[4];
} vt;
vt.v = v;
s << vt.n[0] << ", " << vt.n[1] << ", " << vt.n[2] << ", " << vt.n[3];
return s;
}
inline std::ostream & operator <<(std::ostream & s, const v4i & v)
{
union {
v4i v;
int n[4];
} vt;
vt.v = v;
s << vt.n[0] << ", " << vt.n[1] << ", " << vt.n[2] << ", " << vt.n[3];
return s;
}
inline std::ostream & operator <<(std::ostream & s, const v4ui & v)
{
union {
v4ui v;
unsigned int n[4];
} vt;
vt.v = v;
s << vt.n[0] << ", " << vt.n[1] << ", " << vt.n[2] << ", " << vt.n[3];
return s;
}
inline std::ostream & operator <<(std::ostream & s, const v4bi & v)
{
union {
__vector __bool int v;
unsigned int n[4];
} vt;
vt.v = v;
s << vt.n[0] << ", " << vt.n[1] << ", " << vt.n[2] << ", " << vt.n[3];
return s;
}
template<> inline v4f ei_padd(const v4f& a, const v4f& b) { return vec_add(a,b); }
template<> inline v4i ei_padd(const v4i& a, const v4i& b) { return vec_add(a,b); }
template<> inline v4f ei_psub(const v4f& a, const v4f& b) { return vec_sub(a,b); }
template<> inline v4i ei_psub(const v4i& a, const v4i& b) { return vec_sub(a,b); }
template<> inline v4f ei_pmul(const v4f& a, const v4f& b) { USE_CONST_v0f; return vec_madd(a,b, v0f); }
template<> inline v4i ei_pmul(const v4i& a, const v4i& b)
{
// Detailed in: http://freevec.org/content/32bit_signed_integer_multiplication_altivec
//Set up constants, variables
v4i a1, b1, bswap, low_prod, high_prod, prod, prod_, v1sel;
USE_CONST_v0i;
USE_CONST_v1i;
USE_CONST_v16i_;
// Get the absolute values
a1 = vec_abs(a);
b1 = vec_abs(b);
// Get the signs using xor
v4bi sgn = (v4bi) vec_cmplt(vec_xor(a, b), v0i);
// Do the multiplication for the asbolute values.
bswap = (v4i) vec_rl((v4ui) b1, (v4ui) v16i_ );
low_prod = vec_mulo((__vector short)a1, (__vector short)b1);
high_prod = vec_msum((__vector short)a1, (__vector short)bswap, v0i);
high_prod = (v4i) vec_sl((v4ui) high_prod, (v4ui) v16i_);
prod = vec_add( low_prod, high_prod );
// NOR the product and select only the negative elements according to the sign mask
prod_ = vec_nor(prod, prod);
prod_ = vec_sel(v0i, prod_, sgn);
// Add 1 to the result to get the negative numbers
v1sel = vec_sel(v0i, v1i, sgn);
prod_ = vec_add(prod_, v1sel);
// Merge the results back to the final vector.
prod = vec_sel(prod, prod_, sgn);
return prod;
}
template<> inline v4f ei_pdiv(const v4f& a, const v4f& b) {
v4f t, y_0, y_1, res;
USE_CONST_v0f;
USE_CONST_v1f;
// Altivec does not offer a divide instruction, we have to do a reciprocal approximation
y_0 = vec_re(b);
// Do one Newton-Raphson iteration to get the needed accuracy
t = vec_nmsub(y_0, b, v1f);
y_1 = vec_madd(y_0, t, y_0);
res = vec_madd(a, y_1, v0f);
return res;
}
template<> inline v4f ei_pmadd(const v4f& a, const v4f& b, const v4f& c) { return vec_madd(a, b, c); }
template<> inline v4f ei_pmin(const v4f& a, const v4f& b) { return vec_min(a,b); }
template<> inline v4i ei_pmin(const v4i& a, const v4i& b) { return vec_min(a,b); }
template<> inline v4f ei_pmax(const v4f& a, const v4f& b) { return vec_max(a,b); }
template<> inline v4i ei_pmax(const v4i& a, const v4i& b) { return vec_max(a,b); }
template<> inline v4f ei_pload(const float* from) { return vec_ld(0, from); }
template<> inline v4i ei_pload(const int* from) { return vec_ld(0, from); }
template<> inline v4f ei_ploadu(const float* from)
{
// Taken from http://developer.apple.com/hardwaredrivers/ve/alignment.html
__vector unsigned char MSQ, LSQ;
__vector unsigned char mask;
MSQ = vec_ld(0, (unsigned char *)from); // most significant quadword
LSQ = vec_ld(15, (unsigned char *)from); // least significant quadword
mask = vec_lvsl(0, from); // create the permute mask
return (v4f) vec_perm(MSQ, LSQ, mask); // align the data
}
template<> inline v4i ei_ploadu(const int* from)
{
// Taken from http://developer.apple.com/hardwaredrivers/ve/alignment.html
__vector unsigned char MSQ, LSQ;
__vector unsigned char mask;
MSQ = vec_ld(0, (unsigned char *)from); // most significant quadword
LSQ = vec_ld(15, (unsigned char *)from); // least significant quadword
mask = vec_lvsl(0, from); // create the permute mask
return (v4i) vec_perm(MSQ, LSQ, mask); // align the data
}
template<> inline v4f ei_pset1(const float& from)
{
// Taken from http://developer.apple.com/hardwaredrivers/ve/alignment.html
float __attribute__(aligned(16)) af[4];
af[0] = from;
v4f vc = vec_ld(0, af);
vc = vec_splat(vc, 0);
return vc;
}
template<> inline v4i ei_pset1(const int& from)
{
int __attribute__(aligned(16)) ai[4];
ai[0] = from;
v4i vc = vec_ld(0, ai);
vc = vec_splat(vc, 0);
return vc;
}
template<> inline void ei_pstore(float* to, const v4f& from) { vec_st(from, 0, to); }
template<> inline void ei_pstore(int* to, const v4i& from) { vec_st(from, 0, to); }
template<> inline void ei_pstoreu(float* to, const v4f& from)
{
// Taken from http://developer.apple.com/hardwaredrivers/ve/alignment.html
// Warning: not thread safe!
__vector unsigned char MSQ, LSQ, edges;
__vector unsigned char edgeAlign, align;
MSQ = vec_ld(0, (unsigned char *)to); // most significant quadword
LSQ = vec_ld(15, (unsigned char *)to); // least significant quadword
edgeAlign = vec_lvsl(0, to); // permute map to extract edges
edges=vec_perm(LSQ,MSQ,edgeAlign); // extract the edges
align = vec_lvsr( 0, to ); // permute map to misalign data
MSQ = vec_perm(edges,(__vector unsigned char)from,align); // misalign the data (MSQ)
LSQ = vec_perm((__vector unsigned char)from,edges,align); // misalign the data (LSQ)
vec_st( LSQ, 15, (unsigned char *)to ); // Store the LSQ part first
vec_st( MSQ, 0, (unsigned char *)to ); // Store the MSQ part
}
template<> inline void ei_pstoreu(int* to , const v4i& from )
{
// Taken from http://developer.apple.com/hardwaredrivers/ve/alignment.html
// Warning: not thread safe!
__vector unsigned char MSQ, LSQ, edges;
__vector unsigned char edgeAlign, align;
MSQ = vec_ld(0, (unsigned char *)to); // most significant quadword
LSQ = vec_ld(15, (unsigned char *)to); // least significant quadword
edgeAlign = vec_lvsl(0, to); // permute map to extract edges
edges=vec_perm(LSQ,MSQ,edgeAlign); // extract the edges
align = vec_lvsr( 0, to ); // permute map to misalign data
MSQ = vec_perm(edges,(__vector unsigned char)from,align); // misalign the data (MSQ)
LSQ = vec_perm((__vector unsigned char)from,edges,align); // misalign the data (LSQ)
vec_st( LSQ, 15, (unsigned char *)to ); // Store the LSQ part first
vec_st( MSQ, 0, (unsigned char *)to ); // Store the MSQ part
}
template<> inline float ei_pfirst(const v4f& a)
{
float __attribute__(aligned(16)) af[4];
vec_st(a, 0, af);
return af[0];
}
template<> inline int ei_pfirst(const v4i& a)
{
int __attribute__(aligned(16)) ai[4];
vec_st(a, 0, ai);
return ai[0];
}
inline v4f ei_preduxp(const v4f* vecs)
{
v4f v[4], sum[4];
// It's easier and faster to transpose then add as columns
// Check: http://www.freevec.org/function/matrix_4x4_transpose_floats for explanation
// Do the transpose, first set of moves
v[0] = vec_mergeh(vecs[0], vecs[2]);
v[1] = vec_mergel(vecs[0], vecs[2]);
v[2] = vec_mergeh(vecs[1], vecs[3]);
v[3] = vec_mergel(vecs[1], vecs[3]);
// Get the resulting vectors
sum[0] = vec_mergeh(v[0], v[2]);
sum[1] = vec_mergel(v[0], v[2]);
sum[2] = vec_mergeh(v[1], v[3]);
sum[3] = vec_mergel(v[1], v[3]);
// Now do the summation:
// Lines 0+1
sum[0] = vec_add(sum[0], sum[1]);
// Lines 2+3
sum[1] = vec_add(sum[2], sum[3]);
// Add the results
sum[0] = vec_add(sum[0], sum[1]);
return sum[0];
}
inline float ei_predux(const v4f& a)
{
v4f b, sum;
b = (v4f)vec_sld(a, a, 8);
sum = vec_add(a, b);
b = (v4f)vec_sld(sum, sum, 4);
sum = vec_add(sum, b);
return ei_pfirst(sum);
}
inline v4i ei_preduxp(const v4i* vecs)
{
v4i v[4], sum[4];
// It's easier and faster to transpose then add as columns
// Check: http://www.freevec.org/function/matrix_4x4_transpose_floats for explanation
// Do the transpose, first set of moves
v[0] = vec_mergeh(vecs[0], vecs[2]);
v[1] = vec_mergel(vecs[0], vecs[2]);
v[2] = vec_mergeh(vecs[1], vecs[3]);
v[3] = vec_mergel(vecs[1], vecs[3]);
// Get the resulting vectors
sum[0] = vec_mergeh(v[0], v[2]);
sum[1] = vec_mergel(v[0], v[2]);
sum[2] = vec_mergeh(v[1], v[3]);
sum[3] = vec_mergel(v[1], v[3]);
// Now do the summation:
// Lines 0+1
sum[0] = vec_add(sum[0], sum[1]);
// Lines 2+3
sum[1] = vec_add(sum[2], sum[3]);
// Add the results
sum[0] = vec_add(sum[0], sum[1]);
return sum[0];
}
inline int ei_predux(const v4i& a)
{
USE_CONST_v0i;
v4i sum;
sum = vec_sums(a, v0i);
sum = vec_sld(sum, v0i, 12);
return ei_pfirst(sum);
}
template<int Offset>
struct ei_palign_impl<Offset, v4f>
{
inline static void run(v4f& first, const v4f& second)
{
first = vec_sld(first, second, Offset*4);
}
};
template<int Offset>
struct ei_palign_impl<Offset, v4i>
{
inline static void run(v4i& first, const v4i& second)
{
first = vec_sld(first, second, Offset*4);
}
};
#endif // EIGEN_PACKET_MATH_ALTIVEC_H

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@@ -0,0 +1,2 @@
ADD_SUBDIRECTORY(SSE)
ADD_SUBDIRECTORY(AltiVec)

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@@ -0,0 +1,6 @@
FILE(GLOB Eigen_Core_arch_SSE_SRCS "*.h")
INSTALL(FILES
${Eigen_Core_arch_SSE_SRCS}
DESTINATION ${INCLUDE_INSTALL_DIR}/Eigen/src/Core/arch/SSE
)

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@@ -0,0 +1,327 @@
// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_PACKET_MATH_SSE_H
#define EIGEN_PACKET_MATH_SSE_H
#ifndef EIGEN_CACHEFRIENDLY_PRODUCT_THRESHOLD
#define EIGEN_CACHEFRIENDLY_PRODUCT_THRESHOLD 16
#endif
template<> struct ei_packet_traits<float> { typedef __m128 type; enum {size=4}; };
template<> struct ei_packet_traits<double> { typedef __m128d type; enum {size=2}; };
template<> struct ei_packet_traits<int> { typedef __m128i type; enum {size=4}; };
template<> struct ei_unpacket_traits<__m128> { typedef float type; enum {size=4}; };
template<> struct ei_unpacket_traits<__m128d> { typedef double type; enum {size=2}; };
template<> struct ei_unpacket_traits<__m128i> { typedef int type; enum {size=4}; };
template<> EIGEN_STRONG_INLINE __m128 ei_pset1<float>(const float& from) { return _mm_set1_ps(from); }
template<> EIGEN_STRONG_INLINE __m128d ei_pset1<double>(const double& from) { return _mm_set1_pd(from); }
template<> EIGEN_STRONG_INLINE __m128i ei_pset1<int>(const int& from) { return _mm_set1_epi32(from); }
template<> EIGEN_STRONG_INLINE __m128 ei_padd<__m128>(const __m128& a, const __m128& b) { return _mm_add_ps(a,b); }
template<> EIGEN_STRONG_INLINE __m128d ei_padd<__m128d>(const __m128d& a, const __m128d& b) { return _mm_add_pd(a,b); }
template<> EIGEN_STRONG_INLINE __m128i ei_padd<__m128i>(const __m128i& a, const __m128i& b) { return _mm_add_epi32(a,b); }
template<> EIGEN_STRONG_INLINE __m128 ei_psub<__m128>(const __m128& a, const __m128& b) { return _mm_sub_ps(a,b); }
template<> EIGEN_STRONG_INLINE __m128d ei_psub<__m128d>(const __m128d& a, const __m128d& b) { return _mm_sub_pd(a,b); }
template<> EIGEN_STRONG_INLINE __m128i ei_psub<__m128i>(const __m128i& a, const __m128i& b) { return _mm_sub_epi32(a,b); }
template<> EIGEN_STRONG_INLINE __m128 ei_pmul<__m128>(const __m128& a, const __m128& b) { return _mm_mul_ps(a,b); }
template<> EIGEN_STRONG_INLINE __m128d ei_pmul<__m128d>(const __m128d& a, const __m128d& b) { return _mm_mul_pd(a,b); }
template<> EIGEN_STRONG_INLINE __m128i ei_pmul<__m128i>(const __m128i& a, const __m128i& b)
{
return _mm_or_si128(
_mm_and_si128(
_mm_mul_epu32(a,b),
_mm_setr_epi32(0xffffffff,0,0xffffffff,0)),
_mm_slli_si128(
_mm_and_si128(
_mm_mul_epu32(_mm_srli_si128(a,4),_mm_srli_si128(b,4)),
_mm_setr_epi32(0xffffffff,0,0xffffffff,0)), 4));
}
template<> EIGEN_STRONG_INLINE __m128 ei_pdiv<__m128>(const __m128& a, const __m128& b) { return _mm_div_ps(a,b); }
template<> EIGEN_STRONG_INLINE __m128d ei_pdiv<__m128d>(const __m128d& a, const __m128d& b) { return _mm_div_pd(a,b); }
template<> EIGEN_STRONG_INLINE __m128i ei_pdiv<__m128i>(const __m128i& /*a*/, const __m128i& /*b*/)
{ ei_assert(false && "packet integer division are not supported by SSE");
__m128i dummy = ei_pset1<int>(0);
return dummy;
}
// for some weird raisons, it has to be overloaded for packet integer
template<> EIGEN_STRONG_INLINE __m128i ei_pmadd(const __m128i& a, const __m128i& b, const __m128i& c) { return ei_padd(ei_pmul(a,b), c); }
template<> EIGEN_STRONG_INLINE __m128 ei_pmin<__m128>(const __m128& a, const __m128& b) { return _mm_min_ps(a,b); }
template<> EIGEN_STRONG_INLINE __m128d ei_pmin<__m128d>(const __m128d& a, const __m128d& b) { return _mm_min_pd(a,b); }
// FIXME this vectorized min operator is likely to be slower than the standard one
template<> EIGEN_STRONG_INLINE __m128i ei_pmin<__m128i>(const __m128i& a, const __m128i& b)
{
__m128i mask = _mm_cmplt_epi32(a,b);
return _mm_or_si128(_mm_and_si128(mask,a),_mm_andnot_si128(mask,b));
}
template<> EIGEN_STRONG_INLINE __m128 ei_pmax<__m128>(const __m128& a, const __m128& b) { return _mm_max_ps(a,b); }
template<> EIGEN_STRONG_INLINE __m128d ei_pmax<__m128d>(const __m128d& a, const __m128d& b) { return _mm_max_pd(a,b); }
// FIXME this vectorized max operator is likely to be slower than the standard one
template<> EIGEN_STRONG_INLINE __m128i ei_pmax<__m128i>(const __m128i& a, const __m128i& b)
{
__m128i mask = _mm_cmpgt_epi32(a,b);
return _mm_or_si128(_mm_and_si128(mask,a),_mm_andnot_si128(mask,b));
}
template<> EIGEN_STRONG_INLINE __m128 ei_pload<float>(const float* from) { return _mm_load_ps(from); }
template<> EIGEN_STRONG_INLINE __m128d ei_pload<double>(const double* from) { return _mm_load_pd(from); }
template<> EIGEN_STRONG_INLINE __m128i ei_pload<int>(const int* from) { return _mm_load_si128(reinterpret_cast<const __m128i*>(from)); }
template<> EIGEN_STRONG_INLINE __m128 ei_ploadu<float>(const float* from) { return _mm_loadu_ps(from); }
// template<> EIGEN_STRONG_INLINE __m128 ei_ploadu(const float* from) {
// if (size_t(from)&0xF)
// return _mm_loadu_ps(from);
// else
// return _mm_loadu_ps(from);
// }
template<> EIGEN_STRONG_INLINE __m128d ei_ploadu<double>(const double* from) { return _mm_loadu_pd(from); }
template<> EIGEN_STRONG_INLINE __m128i ei_ploadu<int>(const int* from) { return _mm_loadu_si128(reinterpret_cast<const __m128i*>(from)); }
template<> EIGEN_STRONG_INLINE void ei_pstore<float>(float* to, const __m128& from) { _mm_store_ps(to, from); }
template<> EIGEN_STRONG_INLINE void ei_pstore<double>(double* to, const __m128d& from) { _mm_store_pd(to, from); }
template<> EIGEN_STRONG_INLINE void ei_pstore<int>(int* to, const __m128i& from) { _mm_store_si128(reinterpret_cast<__m128i*>(to), from); }
template<> EIGEN_STRONG_INLINE void ei_pstoreu<float>(float* to, const __m128& from) { _mm_storeu_ps(to, from); }
template<> EIGEN_STRONG_INLINE void ei_pstoreu<double>(double* to, const __m128d& from) { _mm_storeu_pd(to, from); }
template<> EIGEN_STRONG_INLINE void ei_pstoreu<int>(int* to, const __m128i& from) { _mm_storeu_si128(reinterpret_cast<__m128i*>(to), from); }
#if defined(_MSC_VER) && (_MSC_VER <= 1500) && defined(_WIN64)
// The temporary variable fixes an internal compilation error.
// Direct of the struct members fixed bug #62.
template<> EIGEN_STRONG_INLINE float ei_pfirst<__m128>(const __m128& a) { return a.m128_f32[0]; }
template<> EIGEN_STRONG_INLINE double ei_pfirst<__m128d>(const __m128d& a) { return a.m128d_f64[0]; }
template<> EIGEN_STRONG_INLINE int ei_pfirst<__m128i>(const __m128i& a) { int x = _mm_cvtsi128_si32(a); return x; }
#elif defined(_MSC_VER) && (_MSC_VER <= 1500)
// The temporary variable fixes an internal compilation error.
template<> EIGEN_STRONG_INLINE float ei_pfirst<__m128>(const __m128& a) { float x = _mm_cvtss_f32(a); return x; }
template<> EIGEN_STRONG_INLINE double ei_pfirst<__m128d>(const __m128d& a) { double x = _mm_cvtsd_f64(a); return x; }
template<> EIGEN_STRONG_INLINE int ei_pfirst<__m128i>(const __m128i& a) { int x = _mm_cvtsi128_si32(a); return x; }
#else
template<> EIGEN_STRONG_INLINE float ei_pfirst<__m128>(const __m128& a) { return _mm_cvtss_f32(a); }
template<> EIGEN_STRONG_INLINE double ei_pfirst<__m128d>(const __m128d& a) { return _mm_cvtsd_f64(a); }
template<> EIGEN_STRONG_INLINE int ei_pfirst<__m128i>(const __m128i& a) { return _mm_cvtsi128_si32(a); }
#endif
#ifdef __SSE3__
// TODO implement SSE2 versions as well as integer versions
template<> EIGEN_STRONG_INLINE __m128 ei_preduxp<__m128>(const __m128* vecs)
{
return _mm_hadd_ps(_mm_hadd_ps(vecs[0], vecs[1]),_mm_hadd_ps(vecs[2], vecs[3]));
}
template<> EIGEN_STRONG_INLINE __m128d ei_preduxp<__m128d>(const __m128d* vecs)
{
return _mm_hadd_pd(vecs[0], vecs[1]);
}
// SSSE3 version:
// EIGEN_STRONG_INLINE __m128i ei_preduxp(const __m128i* vecs)
// {
// return _mm_hadd_epi32(_mm_hadd_epi32(vecs[0], vecs[1]),_mm_hadd_epi32(vecs[2], vecs[3]));
// }
template<> EIGEN_STRONG_INLINE float ei_predux<__m128>(const __m128& a)
{
__m128 tmp0 = _mm_hadd_ps(a,a);
return ei_pfirst(_mm_hadd_ps(tmp0, tmp0));
}
template<> EIGEN_STRONG_INLINE double ei_predux<__m128d>(const __m128d& a) { return ei_pfirst(_mm_hadd_pd(a, a)); }
// SSSE3 version:
// EIGEN_STRONG_INLINE float ei_predux(const __m128i& a)
// {
// __m128i tmp0 = _mm_hadd_epi32(a,a);
// return ei_pfirst(_mm_hadd_epi32(tmp0, tmp0));
// }
#else
// SSE2 versions
template<> EIGEN_STRONG_INLINE float ei_predux<__m128>(const __m128& a)
{
__m128 tmp = _mm_add_ps(a, _mm_movehl_ps(a,a));
return ei_pfirst(_mm_add_ss(tmp, _mm_shuffle_ps(tmp,tmp, 1)));
}
template<> EIGEN_STRONG_INLINE double ei_predux<__m128d>(const __m128d& a)
{
return ei_pfirst(_mm_add_sd(a, _mm_unpackhi_pd(a,a)));
}
template<> EIGEN_STRONG_INLINE __m128 ei_preduxp<__m128>(const __m128* vecs)
{
__m128 tmp0, tmp1, tmp2;
tmp0 = _mm_unpacklo_ps(vecs[0], vecs[1]);
tmp1 = _mm_unpackhi_ps(vecs[0], vecs[1]);
tmp2 = _mm_unpackhi_ps(vecs[2], vecs[3]);
tmp0 = _mm_add_ps(tmp0, tmp1);
tmp1 = _mm_unpacklo_ps(vecs[2], vecs[3]);
tmp1 = _mm_add_ps(tmp1, tmp2);
tmp2 = _mm_movehl_ps(tmp1, tmp0);
tmp0 = _mm_movelh_ps(tmp0, tmp1);
return _mm_add_ps(tmp0, tmp2);
}
template<> EIGEN_STRONG_INLINE __m128d ei_preduxp<__m128d>(const __m128d* vecs)
{
return _mm_add_pd(_mm_unpacklo_pd(vecs[0], vecs[1]), _mm_unpackhi_pd(vecs[0], vecs[1]));
}
#endif // SSE3
template<> EIGEN_STRONG_INLINE int ei_predux<__m128i>(const __m128i& a)
{
__m128i tmp = _mm_add_epi32(a, _mm_unpackhi_epi64(a,a));
return ei_pfirst(tmp) + ei_pfirst(_mm_shuffle_epi32(tmp, 1));
}
template<> EIGEN_STRONG_INLINE __m128i ei_preduxp<__m128i>(const __m128i* vecs)
{
__m128i tmp0, tmp1, tmp2;
tmp0 = _mm_unpacklo_epi32(vecs[0], vecs[1]);
tmp1 = _mm_unpackhi_epi32(vecs[0], vecs[1]);
tmp2 = _mm_unpackhi_epi32(vecs[2], vecs[3]);
tmp0 = _mm_add_epi32(tmp0, tmp1);
tmp1 = _mm_unpacklo_epi32(vecs[2], vecs[3]);
tmp1 = _mm_add_epi32(tmp1, tmp2);
tmp2 = _mm_unpacklo_epi64(tmp0, tmp1);
tmp0 = _mm_unpackhi_epi64(tmp0, tmp1);
return _mm_add_epi32(tmp0, tmp2);
}
#if (defined __GNUC__)
// template <> EIGEN_STRONG_INLINE __m128 ei_pmadd(const __m128& a, const __m128& b, const __m128& c)
// {
// __m128 res = b;
// asm("mulps %[a], %[b] \n\taddps %[c], %[b]" : [b] "+x" (res) : [a] "x" (a), [c] "x" (c));
// return res;
// }
// EIGEN_STRONG_INLINE __m128i _mm_alignr_epi8(const __m128i& a, const __m128i& b, const int i)
// {
// __m128i res = a;
// asm("palignr %[i], %[a], %[b] " : [b] "+x" (res) : [a] "x" (a), [i] "i" (i));
// return res;
// }
#endif
#ifdef __SSSE3__
// SSSE3 versions
template<int Offset>
struct ei_palign_impl<Offset,__m128>
{
EIGEN_STRONG_INLINE static void run(__m128& first, const __m128& second)
{
if (Offset!=0)
first = _mm_castsi128_ps(_mm_alignr_epi8(_mm_castps_si128(second), _mm_castps_si128(first), Offset*4));
}
};
template<int Offset>
struct ei_palign_impl<Offset,__m128i>
{
EIGEN_STRONG_INLINE static void run(__m128i& first, const __m128i& second)
{
if (Offset!=0)
first = _mm_alignr_epi8(second,first, Offset*4);
}
};
template<int Offset>
struct ei_palign_impl<Offset,__m128d>
{
EIGEN_STRONG_INLINE static void run(__m128d& first, const __m128d& second)
{
if (Offset==1)
first = _mm_castsi128_pd(_mm_alignr_epi8(_mm_castpd_si128(second), _mm_castpd_si128(first), 8));
}
};
#else
// SSE2 versions
template<int Offset>
struct ei_palign_impl<Offset,__m128>
{
EIGEN_STRONG_INLINE static void run(__m128& first, const __m128& second)
{
if (Offset==1)
{
first = _mm_move_ss(first,second);
first = _mm_castsi128_ps(_mm_shuffle_epi32(_mm_castps_si128(first),0x39));
}
else if (Offset==2)
{
first = _mm_movehl_ps(first,first);
first = _mm_movelh_ps(first,second);
}
else if (Offset==3)
{
first = _mm_move_ss(first,second);
first = _mm_shuffle_ps(first,second,0x93);
}
}
};
template<int Offset>
struct ei_palign_impl<Offset,__m128i>
{
EIGEN_STRONG_INLINE static void run(__m128i& first, const __m128i& second)
{
if (Offset==1)
{
first = _mm_castps_si128(_mm_move_ss(_mm_castsi128_ps(first),_mm_castsi128_ps(second)));
first = _mm_shuffle_epi32(first,0x39);
}
else if (Offset==2)
{
first = _mm_castps_si128(_mm_movehl_ps(_mm_castsi128_ps(first),_mm_castsi128_ps(first)));
first = _mm_castps_si128(_mm_movelh_ps(_mm_castsi128_ps(first),_mm_castsi128_ps(second)));
}
else if (Offset==3)
{
first = _mm_castps_si128(_mm_move_ss(_mm_castsi128_ps(first),_mm_castsi128_ps(second)));
first = _mm_castps_si128(_mm_shuffle_ps(_mm_castsi128_ps(first),_mm_castsi128_ps(second),0x93));
}
}
};
template<int Offset>
struct ei_palign_impl<Offset,__m128d>
{
EIGEN_STRONG_INLINE static void run(__m128d& first, const __m128d& second)
{
if (Offset==1)
{
first = _mm_castps_pd(_mm_movehl_ps(_mm_castpd_ps(first),_mm_castpd_ps(first)));
first = _mm_castps_pd(_mm_movelh_ps(_mm_castpd_ps(first),_mm_castpd_ps(second)));
}
}
};
#endif
#define ei_vec4f_swizzle1(v,p,q,r,s) \
(_mm_castsi128_ps(_mm_shuffle_epi32( _mm_castps_si128(v), ((s)<<6|(r)<<4|(q)<<2|(p)))))
#endif // EIGEN_PACKET_MATH_SSE_H

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FILE(GLOB Eigen_Core_util_SRCS "*.h")
INSTALL(FILES
${Eigen_Core_util_SRCS}
DESTINATION ${INCLUDE_INSTALL_DIR}/Eigen/src/Core/util
)

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_CONSTANTS_H
#define EIGEN_CONSTANTS_H
/** This value means that a quantity is not known at compile-time, and that instead the value is
* stored in some runtime variable.
*
* Explanation for the choice of this value:
* - It should be positive and larger than any reasonable compile-time-fixed number of rows or columns.
* This allows to simplify many compile-time conditions throughout Eigen.
* - It should be smaller than the sqrt of INT_MAX. Indeed, we often multiply a number of rows with a number
* of columns in order to compute a number of coefficients. Even if we guard that with an "if" checking whether
* the values are Dynamic, we still get a compiler warning "integer overflow". So the only way to get around
* it would be a meta-selector. Doing this everywhere would reduce code readability and lenghten compilation times.
* Also, disabling compiler warnings for integer overflow, sounds like a bad idea.
*
* If you wish to port Eigen to a platform where sizeof(int)==2, it is perfectly possible to set Dynamic to, say, 100.
*/
const int Dynamic = 10000;
/** This value means +Infinity; it is currently used only as the p parameter to MatrixBase::lpNorm<int>().
* The value Infinity there means the L-infinity norm.
*/
const int Infinity = -1;
/** \defgroup flags flags
* \ingroup Core_Module
*
* These are the possible bits which can be OR'ed to constitute the flags of a matrix or
* expression.
*
* It is important to note that these flags are a purely compile-time notion. They are a compile-time property of
* an expression type, implemented as enum's. They are not stored in memory at runtime, and they do not incur any
* runtime overhead.
*
* \sa MatrixBase::Flags
*/
/** \ingroup flags
*
* for a matrix, this means that the storage order is row-major.
* If this bit is not set, the storage order is column-major.
* For an expression, this determines the storage order of
* the matrix created by evaluation of that expression. */
const unsigned int RowMajorBit = 0x1;
/** \ingroup flags
*
* means the expression should be evaluated by the calling expression */
const unsigned int EvalBeforeNestingBit = 0x2;
/** \ingroup flags
*
* means the expression should be evaluated before any assignement */
const unsigned int EvalBeforeAssigningBit = 0x4;
/** \ingroup flags
*
* Short version: means the expression might be vectorized
*
* Long version: means that the coefficients can be handled by packets
* and start at a memory location whose alignment meets the requirements
* of the present CPU architecture for optimized packet access. In the fixed-size
* case, there is the additional condition that the total size of the coefficients
* array is a multiple of the packet size, so that it is possible to access all the
* coefficients by packets. In the dynamic-size case, there is no such condition
* on the total size, so it might not be possible to access the few last coeffs
* by packets.
*
* \note This bit can be set regardless of whether vectorization is actually enabled.
* To check for actual vectorizability, see \a ActualPacketAccessBit.
*/
const unsigned int PacketAccessBit = 0x8;
#ifdef EIGEN_VECTORIZE
/** \ingroup flags
*
* If vectorization is enabled (EIGEN_VECTORIZE is defined) this constant
* is set to the value \a PacketAccessBit.
*
* If vectorization is not enabled (EIGEN_VECTORIZE is not defined) this constant
* is set to the value 0.
*/
const unsigned int ActualPacketAccessBit = PacketAccessBit;
#else
const unsigned int ActualPacketAccessBit = 0x0;
#endif
/** \ingroup flags
*
* Short version: means the expression can be seen as 1D vector.
*
* Long version: means that one can access the coefficients
* of this expression by coeff(int), and coeffRef(int) in the case of a lvalue expression. These
* index-based access methods are guaranteed
* to not have to do any runtime computation of a (row, col)-pair from the index, so that it
* is guaranteed that whenever it is available, index-based access is at least as fast as
* (row,col)-based access. Expressions for which that isn't possible don't have the LinearAccessBit.
*
* If both PacketAccessBit and LinearAccessBit are set, then the
* packets of this expression can be accessed by packet(int), and writePacket(int) in the case of a
* lvalue expression.
*
* Typically, all vector expressions have the LinearAccessBit, but there is one exception:
* Product expressions don't have it, because it would be troublesome for vectorization, even when the
* Product is a vector expression. Thus, vector Product expressions allow index-based coefficient access but
* not index-based packet access, so they don't have the LinearAccessBit.
*/
const unsigned int LinearAccessBit = 0x10;
/** \ingroup flags
*
* Means that the underlying array of coefficients can be directly accessed. This means two things.
* First, references to the coefficients must be available through coeffRef(int, int). This rules out read-only
* expressions whose coefficients are computed on demand by coeff(int, int). Second, the memory layout of the
* array of coefficients must be exactly the natural one suggested by rows(), cols(), stride(), and the RowMajorBit.
* This rules out expressions such as DiagonalCoeffs, whose coefficients, though referencable, do not have
* such a regular memory layout.
*/
const unsigned int DirectAccessBit = 0x20;
/** \ingroup flags
*
* means the first coefficient packet is guaranteed to be aligned */
const unsigned int AlignedBit = 0x40;
/** \ingroup flags
*
* means all diagonal coefficients are equal to 0 */
const unsigned int ZeroDiagBit = 0x80;
/** \ingroup flags
*
* means all diagonal coefficients are equal to 1 */
const unsigned int UnitDiagBit = 0x100;
/** \ingroup flags
*
* means the matrix is selfadjoint (M=M*). */
const unsigned int SelfAdjointBit = 0x200;
/** \ingroup flags
*
* means the strictly lower triangular part is 0 */
const unsigned int UpperTriangularBit = 0x400;
/** \ingroup flags
*
* means the strictly upper triangular part is 0 */
const unsigned int LowerTriangularBit = 0x800;
/** \ingroup flags
*
* means the expression includes sparse matrices and the sparse path has to be taken. */
const unsigned int SparseBit = 0x1000;
// list of flags that are inherited by default
const unsigned int HereditaryBits = RowMajorBit
| EvalBeforeNestingBit
| EvalBeforeAssigningBit
| SparseBit;
// Possible values for the Mode parameter of part() and of extract()
const unsigned int UpperTriangular = UpperTriangularBit;
const unsigned int StrictlyUpperTriangular = UpperTriangularBit | ZeroDiagBit;
const unsigned int LowerTriangular = LowerTriangularBit;
const unsigned int StrictlyLowerTriangular = LowerTriangularBit | ZeroDiagBit;
const unsigned int SelfAdjoint = SelfAdjointBit;
// additional possible values for the Mode parameter of extract()
const unsigned int UnitUpperTriangular = UpperTriangularBit | UnitDiagBit;
const unsigned int UnitLowerTriangular = LowerTriangularBit | UnitDiagBit;
const unsigned int Diagonal = UpperTriangular | LowerTriangular;
enum { Aligned, Unaligned };
enum { ForceAligned, AsRequested };
enum { ConditionalJumpCost = 5 };
enum CornerType { TopLeft, TopRight, BottomLeft, BottomRight };
enum DirectionType { Vertical, Horizontal };
enum ProductEvaluationMode { NormalProduct, CacheFriendlyProduct, DiagonalProduct, SparseTimeSparseProduct, SparseTimeDenseProduct, DenseTimeSparseProduct };
enum {
/** \internal Equivalent to a slice vectorization for fixed-size matrices having good alignment
* and good size */
InnerVectorization,
/** \internal Vectorization path using a single loop plus scalar loops for the
* unaligned boundaries */
LinearVectorization,
/** \internal Generic vectorization path using one vectorized loop per row/column with some
* scalar loops to handle the unaligned boundaries */
SliceVectorization,
NoVectorization
};
enum {
NoUnrolling,
InnerUnrolling,
CompleteUnrolling
};
enum {
ColMajor = 0,
RowMajor = 0x1, // it is only a coincidence that this is equal to RowMajorBit -- don't rely on that
/** \internal Don't require alignment for the matrix itself (the array of coefficients, if dynamically allocated, may still be
requested to be aligned) */
DontAlign = 0,
/** \internal Align the matrix itself if it is vectorizable fixed-size */
AutoAlign = 0x2
};
enum {
IsDense = 0,
IsSparse = SparseBit,
NoDirectAccess = 0,
HasDirectAccess = DirectAccessBit
};
const int EiArch_Generic = 0x0;
const int EiArch_SSE = 0x1;
const int EiArch_AltiVec = 0x2;
#if defined EIGEN_VECTORIZE_SSE
const int EiArch = EiArch_SSE;
#elif defined EIGEN_VECTORIZE_ALTIVEC
const int EiArch = EiArch_AltiVec;
#else
const int EiArch = EiArch_Generic;
#endif
#endif // EIGEN_CONSTANTS_H

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#ifdef _MSC_VER
#pragma warning( push )
#pragma warning( disable : 4181 4244 4127 4211 4717 )
#endif

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@@ -0,0 +1,4 @@
#ifdef _MSC_VER
#pragma warning( pop )
#endif

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_FORWARDDECLARATIONS_H
#define EIGEN_FORWARDDECLARATIONS_H
template<typename T> struct ei_traits;
template<typename T> struct NumTraits;
template<typename _Scalar, int _Rows, int _Cols,
int _Options = EIGEN_DEFAULT_MATRIX_STORAGE_ORDER_OPTION | AutoAlign,
int _MaxRows = _Rows, int _MaxCols = _Cols> class Matrix;
template<typename ExpressionType, unsigned int Added, unsigned int Removed> class Flagged;
template<typename ExpressionType> class NestByValue;
template<typename ExpressionType> class SwapWrapper;
template<typename MatrixType> class Minor;
template<typename MatrixType, int BlockRows=Dynamic, int BlockCols=Dynamic, int PacketAccess=AsRequested,
int _DirectAccessStatus = ei_traits<MatrixType>::Flags&DirectAccessBit ? DirectAccessBit
: ei_traits<MatrixType>::Flags&SparseBit> class Block;
template<typename MatrixType> class Transpose;
template<typename MatrixType> class Conjugate;
template<typename NullaryOp, typename MatrixType> class CwiseNullaryOp;
template<typename UnaryOp, typename MatrixType> class CwiseUnaryOp;
template<typename BinaryOp, typename Lhs, typename Rhs> class CwiseBinaryOp;
template<typename Lhs, typename Rhs, int ProductMode> class Product;
template<typename CoeffsVectorType> class DiagonalMatrix;
template<typename MatrixType> class DiagonalCoeffs;
template<typename MatrixType, int PacketAccess = AsRequested> class Map;
template<typename MatrixType, unsigned int Mode> class Part;
template<typename MatrixType, unsigned int Mode> class Extract;
template<typename ExpressionType> class Cwise;
template<typename ExpressionType> class WithFormat;
template<typename MatrixType> struct CommaInitializer;
template<typename Lhs, typename Rhs> struct ei_product_mode;
template<typename Lhs, typename Rhs, int ProductMode = ei_product_mode<Lhs,Rhs>::value> struct ProductReturnType;
template<typename Scalar> struct ei_scalar_sum_op;
template<typename Scalar> struct ei_scalar_difference_op;
template<typename Scalar> struct ei_scalar_product_op;
template<typename Scalar> struct ei_scalar_quotient_op;
template<typename Scalar> struct ei_scalar_opposite_op;
template<typename Scalar> struct ei_scalar_conjugate_op;
template<typename Scalar> struct ei_scalar_real_op;
template<typename Scalar> struct ei_scalar_imag_op;
template<typename Scalar> struct ei_scalar_abs_op;
template<typename Scalar> struct ei_scalar_abs2_op;
template<typename Scalar> struct ei_scalar_sqrt_op;
template<typename Scalar> struct ei_scalar_exp_op;
template<typename Scalar> struct ei_scalar_log_op;
template<typename Scalar> struct ei_scalar_cos_op;
template<typename Scalar> struct ei_scalar_sin_op;
template<typename Scalar> struct ei_scalar_pow_op;
template<typename Scalar> struct ei_scalar_inverse_op;
template<typename Scalar> struct ei_scalar_square_op;
template<typename Scalar> struct ei_scalar_cube_op;
template<typename Scalar, typename NewType> struct ei_scalar_cast_op;
template<typename Scalar> struct ei_scalar_multiple_op;
template<typename Scalar> struct ei_scalar_quotient1_op;
template<typename Scalar> struct ei_scalar_min_op;
template<typename Scalar> struct ei_scalar_max_op;
template<typename Scalar> struct ei_scalar_random_op;
template<typename Scalar> struct ei_scalar_add_op;
template<typename Scalar> struct ei_scalar_constant_op;
template<typename Scalar> struct ei_scalar_identity_op;
struct IOFormat;
template<typename Scalar>
void ei_cache_friendly_product(
int _rows, int _cols, int depth,
bool _lhsRowMajor, const Scalar* _lhs, int _lhsStride,
bool _rhsRowMajor, const Scalar* _rhs, int _rhsStride,
bool resRowMajor, Scalar* res, int resStride);
// Array module
template<typename ConditionMatrixType, typename ThenMatrixType, typename ElseMatrixType> class Select;
template<typename MatrixType, typename BinaryOp, int Direction> class PartialReduxExpr;
template<typename ExpressionType, int Direction> class PartialRedux;
template<typename MatrixType> class LU;
template<typename MatrixType> class QR;
template<typename MatrixType> class SVD;
template<typename MatrixType> class LLT;
template<typename MatrixType> class LDLT;
// Geometry module:
template<typename Derived, int _Dim> class RotationBase;
template<typename Lhs, typename Rhs> class Cross;
template<typename Scalar> class Quaternion;
template<typename Scalar> class Rotation2D;
template<typename Scalar> class AngleAxis;
template<typename Scalar,int Dim> class Transform;
template <typename _Scalar, int _AmbientDim> class ParametrizedLine;
template <typename _Scalar, int _AmbientDim> class Hyperplane;
template<typename Scalar,int Dim> class Translation;
template<typename Scalar,int Dim> class Scaling;
// Sparse module:
template<typename Lhs, typename Rhs, int ProductMode> class SparseProduct;
#endif // EIGEN_FORWARDDECLARATIONS_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_MACROS_H
#define EIGEN_MACROS_H
#undef minor
#define EIGEN_WORLD_VERSION 2
#define EIGEN_MAJOR_VERSION 0
#define EIGEN_MINOR_VERSION 14
#define EIGEN_VERSION_AT_LEAST(x,y,z) (EIGEN_WORLD_VERSION>x || (EIGEN_WORLD_VERSION>=x && \
(EIGEN_MAJOR_VERSION>y || (EIGEN_MAJOR_VERSION>=y && \
EIGEN_MINOR_VERSION>=z))))
// 16 byte alignment is only useful for vectorization. Since it affects the ABI, we need to enable 16 byte alignment on all
// platforms where vectorization might be enabled. In theory we could always enable alignment, but it can be a cause of problems
// on some platforms, so we just disable it in certain common platform (compiler+architecture combinations) to avoid these problems.
#if defined(__GNUC__) && !(defined(__i386__) || defined(__x86_64__) || defined(__powerpc__) || defined(__ppc__) || defined(__ia64__))
#define EIGEN_GCC_AND_ARCH_DOESNT_WANT_ALIGNMENT 1
#else
#define EIGEN_GCC_AND_ARCH_DOESNT_WANT_ALIGNMENT 0
#endif
#if defined(__GNUC__) && (__GNUC__ <= 3)
#define EIGEN_GCC3_OR_OLDER 1
#else
#define EIGEN_GCC3_OR_OLDER 0
#endif
// FIXME vectorization + alignment is completely disabled with sun studio
#if !EIGEN_GCC_AND_ARCH_DOESNT_WANT_ALIGNMENT && !EIGEN_GCC3_OR_OLDER && !defined(__SUNPRO_CC) && !defined(__QNXNTO__)
#define EIGEN_ARCH_WANTS_ALIGNMENT 1
#else
#define EIGEN_ARCH_WANTS_ALIGNMENT 0
#endif
// EIGEN_ALIGN is the true test whether we want to align or not. It takes into account both the user choice to explicitly disable
// alignment (EIGEN_DONT_ALIGN) and the architecture config (EIGEN_ARCH_WANTS_ALIGNMENT). Henceforth, only EIGEN_ALIGN should be used.
#if EIGEN_ARCH_WANTS_ALIGNMENT && !defined(EIGEN_DONT_ALIGN)
#define EIGEN_ALIGN 1
#else
#define EIGEN_ALIGN 0
#ifdef EIGEN_VECTORIZE
#error "Vectorization enabled, but our platform checks say that we don't do 16 byte alignment on this platform. If you added vectorization for another architecture, you also need to edit this platform check."
#endif
#ifndef EIGEN_DISABLE_UNALIGNED_ARRAY_ASSERT
#define EIGEN_DISABLE_UNALIGNED_ARRAY_ASSERT
#endif
#endif
#ifdef EIGEN_DEFAULT_TO_ROW_MAJOR
#define EIGEN_DEFAULT_MATRIX_STORAGE_ORDER_OPTION RowMajor
#else
#define EIGEN_DEFAULT_MATRIX_STORAGE_ORDER_OPTION ColMajor
#endif
/** \internal Defines the maximal loop size to enable meta unrolling of loops.
* Note that the value here is expressed in Eigen's own notion of "number of FLOPS",
* it does not correspond to the number of iterations or the number of instructions
*/
#ifndef EIGEN_UNROLLING_LIMIT
#define EIGEN_UNROLLING_LIMIT 100
#endif
/** \internal Define the maximal size in Bytes of blocks fitting in CPU cache.
* The current value is set to generate blocks of 256x256 for float
*
* Typically for a single-threaded application you would set that to 25% of the size of your CPU caches in bytes
*/
#ifndef EIGEN_TUNE_FOR_CPU_CACHE_SIZE
#define EIGEN_TUNE_FOR_CPU_CACHE_SIZE (sizeof(float)*256*256)
#endif
// FIXME this should go away quickly
#ifdef EIGEN_TUNE_FOR_L2_CACHE_SIZE
#error EIGEN_TUNE_FOR_L2_CACHE_SIZE is now called EIGEN_TUNE_FOR_CPU_CACHE_SIZE.
#endif
#define USING_PART_OF_NAMESPACE_EIGEN \
EIGEN_USING_MATRIX_TYPEDEFS \
using Eigen::Matrix; \
using Eigen::MatrixBase; \
using Eigen::ei_random; \
using Eigen::ei_real; \
using Eigen::ei_imag; \
using Eigen::ei_conj; \
using Eigen::ei_abs; \
using Eigen::ei_abs2; \
using Eigen::ei_sqrt; \
using Eigen::ei_exp; \
using Eigen::ei_log; \
using Eigen::ei_sin; \
using Eigen::ei_cos;
#ifdef NDEBUG
# ifndef EIGEN_NO_DEBUG
# define EIGEN_NO_DEBUG
# endif
#endif
#ifndef ei_assert
#ifdef EIGEN_NO_DEBUG
#define ei_assert(x)
#else
#define ei_assert(x) assert(x)
#endif
#endif
#ifdef EIGEN_INTERNAL_DEBUGGING
#define ei_internal_assert(x) ei_assert(x)
#else
#define ei_internal_assert(x)
#endif
#ifdef EIGEN_NO_DEBUG
#define EIGEN_ONLY_USED_FOR_DEBUG(x) (void)x
#else
#define EIGEN_ONLY_USED_FOR_DEBUG(x)
#endif
// EIGEN_ALWAYS_INLINE_ATTRIB should be use in the declaration of function
// which should be inlined even in debug mode.
// FIXME with the always_inline attribute,
// gcc 3.4.x reports the following compilation error:
// Eval.h:91: sorry, unimplemented: inlining failed in call to 'const Eigen::Eval<Derived> Eigen::MatrixBase<Scalar, Derived>::eval() const'
// : function body not available
#if EIGEN_GNUC_AT_LEAST(4,0)
#define EIGEN_ALWAYS_INLINE_ATTRIB __attribute__((always_inline))
#else
#define EIGEN_ALWAYS_INLINE_ATTRIB
#endif
// EIGEN_FORCE_INLINE means "inline as much as possible"
#if (defined _MSC_VER)
#define EIGEN_STRONG_INLINE __forceinline
#else
#define EIGEN_STRONG_INLINE inline
#endif
#if (defined __GNUC__)
#define EIGEN_DONT_INLINE __attribute__((noinline))
#elif (defined _MSC_VER)
#define EIGEN_DONT_INLINE __declspec(noinline)
#else
#define EIGEN_DONT_INLINE
#endif
#if (defined __GNUC__)
#define EIGEN_DEPRECATED __attribute__((deprecated))
#elif (defined _MSC_VER)
#define EIGEN_DEPRECATED __declspec(deprecated)
#else
#define EIGEN_DEPRECATED
#endif
/* EIGEN_ALIGN_128 forces data to be 16-byte aligned, EVEN if vectorization (EIGEN_VECTORIZE) is disabled,
* so that vectorization doesn't affect binary compatibility.
*
* If we made alignment depend on whether or not EIGEN_VECTORIZE is defined, it would be impossible to link
* vectorized and non-vectorized code.
*/
#if !EIGEN_ALIGN
#define EIGEN_ALIGN_128
#elif (defined __GNUC__)
#define EIGEN_ALIGN_128 __attribute__((aligned(16)))
#elif (defined _MSC_VER)
#define EIGEN_ALIGN_128 __declspec(align(16))
#else
#error Please tell me what is the equivalent of __attribute__((aligned(16))) for your compiler
#endif
#ifdef EIGEN_DONT_USE_RESTRICT_KEYWORD
#define EIGEN_RESTRICT
#endif
#ifndef EIGEN_RESTRICT
#define EIGEN_RESTRICT __restrict
#endif
#ifndef EIGEN_STACK_ALLOCATION_LIMIT
#define EIGEN_STACK_ALLOCATION_LIMIT 1000000
#endif
#ifndef EIGEN_DEFAULT_IO_FORMAT
#define EIGEN_DEFAULT_IO_FORMAT Eigen::IOFormat()
#endif
// format used in Eigen's documentation
// needed to define it here as escaping characters in CMake add_definition's argument seems very problematic.
#define EIGEN_DOCS_IO_FORMAT IOFormat(3, AlignCols, " ", "\n", "", "")
#define EIGEN_INHERIT_ASSIGNMENT_OPERATOR(Derived, Op) \
template<typename OtherDerived> \
EIGEN_STRONG_INLINE Derived& operator Op(const Eigen::MatrixBase<OtherDerived>& other) \
{ \
return Base::operator Op(other.derived()); \
} \
EIGEN_STRONG_INLINE Derived& operator Op(const Derived& other) \
{ \
return Base::operator Op(other); \
}
#define EIGEN_INHERIT_SCALAR_ASSIGNMENT_OPERATOR(Derived, Op) \
template<typename Other> \
EIGEN_STRONG_INLINE Derived& operator Op(const Other& scalar) \
{ \
return Base::operator Op(scalar); \
}
#define EIGEN_INHERIT_ASSIGNMENT_OPERATORS(Derived) \
EIGEN_INHERIT_ASSIGNMENT_OPERATOR(Derived, =) \
EIGEN_INHERIT_ASSIGNMENT_OPERATOR(Derived, +=) \
EIGEN_INHERIT_ASSIGNMENT_OPERATOR(Derived, -=) \
EIGEN_INHERIT_SCALAR_ASSIGNMENT_OPERATOR(Derived, *=) \
EIGEN_INHERIT_SCALAR_ASSIGNMENT_OPERATOR(Derived, /=)
#define _EIGEN_GENERIC_PUBLIC_INTERFACE(Derived, BaseClass) \
typedef BaseClass Base; \
typedef typename Eigen::ei_traits<Derived>::Scalar Scalar; \
typedef typename Eigen::NumTraits<Scalar>::Real RealScalar; \
typedef typename Base::PacketScalar PacketScalar; \
typedef typename Eigen::ei_nested<Derived>::type Nested; \
enum { RowsAtCompileTime = Eigen::ei_traits<Derived>::RowsAtCompileTime, \
ColsAtCompileTime = Eigen::ei_traits<Derived>::ColsAtCompileTime, \
MaxRowsAtCompileTime = Eigen::ei_traits<Derived>::MaxRowsAtCompileTime, \
MaxColsAtCompileTime = Eigen::ei_traits<Derived>::MaxColsAtCompileTime, \
Flags = Eigen::ei_traits<Derived>::Flags, \
CoeffReadCost = Eigen::ei_traits<Derived>::CoeffReadCost, \
SizeAtCompileTime = Base::SizeAtCompileTime, \
MaxSizeAtCompileTime = Base::MaxSizeAtCompileTime, \
IsVectorAtCompileTime = Base::IsVectorAtCompileTime };
#define EIGEN_GENERIC_PUBLIC_INTERFACE(Derived) \
_EIGEN_GENERIC_PUBLIC_INTERFACE(Derived, Eigen::MatrixBase<Derived>)
#define EIGEN_ENUM_MIN(a,b) (((int)a <= (int)b) ? (int)a : (int)b)
#define EIGEN_SIZE_MIN(a,b) (((int)a == 1 || (int)b == 1) ? 1 \
: ((int)a == Dynamic || (int)b == Dynamic) ? Dynamic \
: ((int)a <= (int)b) ? (int)a : (int)b)
#define EIGEN_ENUM_MAX(a,b) (((int)a >= (int)b) ? (int)a : (int)b)
// just an empty macro !
#define EIGEN_EMPTY
// concatenate two tokens
#define EIGEN_CAT2(a,b) a ## b
#define EIGEN_CAT(a,b) EIGEN_CAT2(a,b)
// convert a token to a string
#define EIGEN_MAKESTRING2(a) #a
#define EIGEN_MAKESTRING(a) EIGEN_MAKESTRING2(a)
#endif // EIGEN_MACROS_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2008-2009 Benoit Jacob <jacob.benoit.1@gmail.com>
// Copyright (C) 2009 Kenneth Riddile <kfriddile@yahoo.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_MEMORY_H
#define EIGEN_MEMORY_H
// FreeBSD 6 seems to have 16-byte aligned malloc
// See http://svn.freebsd.org/viewvc/base/stable/6/lib/libc/stdlib/malloc.c?view=markup
// FreeBSD 7 seems to have 16-byte aligned malloc except on ARM and MIPS architectures
// See http://svn.freebsd.org/viewvc/base/stable/7/lib/libc/stdlib/malloc.c?view=markup
#if defined(__FreeBSD__) && !defined(__arm__) && !defined(__mips__)
#define EIGEN_FREEBSD_MALLOC_ALREADY_ALIGNED 1
#else
#define EIGEN_FREEBSD_MALLOC_ALREADY_ALIGNED 0
#endif
#if defined(__APPLE__) || defined(_WIN64) || EIGEN_FREEBSD_MALLOC_ALREADY_ALIGNED
#define EIGEN_MALLOC_ALREADY_ALIGNED 1
#else
#define EIGEN_MALLOC_ALREADY_ALIGNED 0
#endif
#if (defined __QNXNTO__) || (((defined _GNU_SOURCE) || ((defined _XOPEN_SOURCE) && (_XOPEN_SOURCE >= 600))) && (defined _POSIX_ADVISORY_INFO) && (_POSIX_ADVISORY_INFO > 0))
#define EIGEN_HAS_POSIX_MEMALIGN 1
#else
#define EIGEN_HAS_POSIX_MEMALIGN 0
#endif
#ifdef EIGEN_VECTORIZE_SSE
#define EIGEN_HAS_MM_MALLOC 1
#else
#define EIGEN_HAS_MM_MALLOC 0
#endif
/** \internal like malloc, but the returned pointer is guaranteed to be 16-byte aligned.
* Fast, but wastes 16 additional bytes of memory.
* Does not throw any exception.
*/
inline void* ei_handmade_aligned_malloc(std::size_t size)
{
void *original = std::malloc(size+16);
void *aligned = reinterpret_cast<void*>((reinterpret_cast<std::size_t>(original) & ~(std::size_t(15))) + 16);
*(reinterpret_cast<void**>(aligned) - 1) = original;
return aligned;
}
/** \internal frees memory allocated with ei_handmade_aligned_malloc */
inline void ei_handmade_aligned_free(void *ptr)
{
if(ptr)
std::free(*(reinterpret_cast<void**>(ptr) - 1));
}
/** \internal allocates \a size bytes. The returned pointer is guaranteed to have 16 bytes alignment.
* On allocation error, the returned pointer is null, and if exceptions are enabled then a std::bad_alloc is thrown.
*/
inline void* ei_aligned_malloc(std::size_t size)
{
#ifdef EIGEN_NO_MALLOC
ei_assert(false && "heap allocation is forbidden (EIGEN_NO_MALLOC is defined)");
#endif
void *result;
#if !EIGEN_ALIGN
result = std::malloc(size);
#elif EIGEN_MALLOC_ALREADY_ALIGNED
result = std::malloc(size);
#elif EIGEN_HAS_POSIX_MEMALIGN
if(posix_memalign(&result, 16, size)) result = 0;
#elif EIGEN_HAS_MM_MALLOC
result = _mm_malloc(size, 16);
#elif (defined _MSC_VER)
result = _aligned_malloc(size, 16);
#else
result = ei_handmade_aligned_malloc(size);
#endif
#ifdef EIGEN_EXCEPTIONS
if(result == 0)
throw std::bad_alloc();
#endif
return result;
}
/** allocates \a size bytes. If Align is true, then the returned ptr is 16-byte-aligned.
* On allocation error, the returned pointer is null, and if exceptions are enabled then a std::bad_alloc is thrown.
*/
template<bool Align> inline void* ei_conditional_aligned_malloc(std::size_t size)
{
return ei_aligned_malloc(size);
}
template<> inline void* ei_conditional_aligned_malloc<false>(std::size_t size)
{
#ifdef EIGEN_NO_MALLOC
ei_assert(false && "heap allocation is forbidden (EIGEN_NO_MALLOC is defined)");
#endif
void *result = std::malloc(size);
#ifdef EIGEN_EXCEPTIONS
if(!result) throw std::bad_alloc();
#endif
return result;
}
/** \internal construct the elements of an array.
* The \a size parameter tells on how many objects to call the constructor of T.
*/
template<typename T> inline T* ei_construct_elements_of_array(T *ptr, std::size_t size)
{
for (std::size_t i=0; i < size; ++i) ::new (ptr + i) T;
return ptr;
}
/** allocates \a size objects of type T. The returned pointer is guaranteed to have 16 bytes alignment.
* On allocation error, the returned pointer is undefined, but if exceptions are enabled then a std::bad_alloc is thrown.
* The default constructor of T is called.
*/
template<typename T> inline T* ei_aligned_new(std::size_t size)
{
T *result = reinterpret_cast<T*>(ei_aligned_malloc(sizeof(T)*size));
return ei_construct_elements_of_array(result, size);
}
template<typename T, bool Align> inline T* ei_conditional_aligned_new(std::size_t size)
{
T *result = reinterpret_cast<T*>(ei_conditional_aligned_malloc<Align>(sizeof(T)*size));
return ei_construct_elements_of_array(result, size);
}
/** \internal free memory allocated with ei_aligned_malloc
*/
inline void ei_aligned_free(void *ptr)
{
#if !EIGEN_ALIGN
std::free(ptr);
#elif EIGEN_MALLOC_ALREADY_ALIGNED
std::free(ptr);
#elif EIGEN_HAS_POSIX_MEMALIGN
std::free(ptr);
#elif EIGEN_HAS_MM_MALLOC
_mm_free(ptr);
#elif defined(_MSC_VER)
_aligned_free(ptr);
#else
ei_handmade_aligned_free(ptr);
#endif
}
/** \internal free memory allocated with ei_conditional_aligned_malloc
*/
template<bool Align> inline void ei_conditional_aligned_free(void *ptr)
{
ei_aligned_free(ptr);
}
template<> inline void ei_conditional_aligned_free<false>(void *ptr)
{
std::free(ptr);
}
/** \internal destruct the elements of an array.
* The \a size parameters tells on how many objects to call the destructor of T.
*/
template<typename T> inline void ei_destruct_elements_of_array(T *ptr, std::size_t size)
{
// always destruct an array starting from the end.
while(size) ptr[--size].~T();
}
/** \internal delete objects constructed with ei_aligned_new
* The \a size parameters tells on how many objects to call the destructor of T.
*/
template<typename T> inline void ei_aligned_delete(T *ptr, std::size_t size)
{
ei_destruct_elements_of_array<T>(ptr, size);
ei_aligned_free(ptr);
}
/** \internal delete objects constructed with ei_conditional_aligned_new
* The \a size parameters tells on how many objects to call the destructor of T.
*/
template<typename T, bool Align> inline void ei_conditional_aligned_delete(T *ptr, std::size_t size)
{
ei_destruct_elements_of_array<T>(ptr, size);
ei_conditional_aligned_free<Align>(ptr);
}
/** \internal \returns the index of the first element of the array that is well aligned for vectorization.
*
* \param array the address of the start of the array
* \param size the size of the array
*
* \note If no element of the array is well aligned, the size of the array is returned. Typically,
* for example with SSE, "well aligned" means 16-byte-aligned. If vectorization is disabled or if the
* packet size for the given scalar type is 1, then everything is considered well-aligned.
*
* \note If the scalar type is vectorizable, we rely on the following assumptions: sizeof(Scalar) is a
* power of 2, the packet size in bytes is also a power of 2, and is a multiple of sizeof(Scalar). On the
* other hand, we do not assume that the array address is a multiple of sizeof(Scalar), as that fails for
* example with Scalar=double on certain 32-bit platforms, see bug #79.
*
* There is also the variant ei_first_aligned(const MatrixBase&, Integer) defined in Coeffs.h.
*/
template<typename Scalar, typename Integer>
inline static Integer ei_alignmentOffset(const Scalar* array, Integer size)
{
typedef typename ei_packet_traits<Scalar>::type Packet;
enum { PacketSize = ei_packet_traits<Scalar>::size,
PacketAlignedMask = PacketSize-1
};
if(PacketSize==1)
{
// Either there is no vectorization, or a packet consists of exactly 1 scalar so that all elements
// of the array have the same aligment.
return 0;
}
else if(std::size_t(array) & (sizeof(Scalar)-1))
{
// There is vectorization for this scalar type, but the array is not aligned to the size of a single scalar.
// Consequently, no element of the array is well aligned.
return size;
}
else
{
return std::min<Integer>( (PacketSize - (Integer((std::size_t(array)/sizeof(Scalar))) & PacketAlignedMask))
& PacketAlignedMask, size);
}
}
/** \internal
* ei_aligned_stack_alloc(SIZE) allocates an aligned buffer of SIZE bytes
* on the stack if SIZE is smaller than EIGEN_STACK_ALLOCATION_LIMIT.
* Otherwise the memory is allocated on the heap.
* Data allocated with ei_aligned_stack_alloc \b must be freed by calling ei_aligned_stack_free(PTR,SIZE).
* \code
* float * data = ei_aligned_stack_alloc(float,array.size());
* // ...
* ei_aligned_stack_free(data,float,array.size());
* \endcode
*/
#ifdef __linux__
#define ei_aligned_stack_alloc(SIZE) (SIZE<=EIGEN_STACK_ALLOCATION_LIMIT) \
? alloca(SIZE) \
: ei_aligned_malloc(SIZE)
#define ei_aligned_stack_free(PTR,SIZE) if(SIZE>EIGEN_STACK_ALLOCATION_LIMIT) ei_aligned_free(PTR)
#else
#define ei_aligned_stack_alloc(SIZE) ei_aligned_malloc(SIZE)
#define ei_aligned_stack_free(PTR,SIZE) ei_aligned_free(PTR)
#endif
#define ei_aligned_stack_new(TYPE,SIZE) ei_construct_elements_of_array(reinterpret_cast<TYPE*>(ei_aligned_stack_alloc(sizeof(TYPE)*SIZE)), SIZE)
#define ei_aligned_stack_delete(TYPE,PTR,SIZE) do {ei_destruct_elements_of_array<TYPE>(PTR, SIZE); \
ei_aligned_stack_free(PTR,sizeof(TYPE)*SIZE);} while(0)
#if EIGEN_ALIGN
#ifdef EIGEN_EXCEPTIONS
#define EIGEN_MAKE_ALIGNED_OPERATOR_NEW_NOTHROW(NeedsToAlign) \
void* operator new(std::size_t size, const std::nothrow_t&) throw() { \
try { return Eigen::ei_conditional_aligned_malloc<NeedsToAlign>(size); } \
catch (...) { return 0; } \
return 0; \
}
#else
#define EIGEN_MAKE_ALIGNED_OPERATOR_NEW_NOTHROW(NeedsToAlign) \
void* operator new(std::size_t size, const std::nothrow_t&) throw() { \
return Eigen::ei_conditional_aligned_malloc<NeedsToAlign>(size); \
}
#endif
#define EIGEN_MAKE_ALIGNED_OPERATOR_NEW_IF(NeedsToAlign) \
void *operator new(std::size_t size) { \
return Eigen::ei_conditional_aligned_malloc<NeedsToAlign>(size); \
} \
void *operator new[](std::size_t size) { \
return Eigen::ei_conditional_aligned_malloc<NeedsToAlign>(size); \
} \
void operator delete(void * ptr) throw() { Eigen::ei_conditional_aligned_free<NeedsToAlign>(ptr); } \
void operator delete[](void * ptr) throw() { Eigen::ei_conditional_aligned_free<NeedsToAlign>(ptr); } \
/* in-place new and delete. since (at least afaik) there is no actual */ \
/* memory allocated we can safely let the default implementation handle */ \
/* this particular case. */ \
static void *operator new(std::size_t size, void *ptr) { return ::operator new(size,ptr); } \
void operator delete(void * memory, void *ptr) throw() { return ::operator delete(memory,ptr); } \
/* nothrow-new (returns zero instead of std::bad_alloc) */ \
EIGEN_MAKE_ALIGNED_OPERATOR_NEW_NOTHROW(NeedsToAlign) \
void operator delete(void *ptr, const std::nothrow_t&) throw() { \
Eigen::ei_conditional_aligned_free<NeedsToAlign>(ptr); \
} \
typedef void ei_operator_new_marker_type;
#else
#define EIGEN_MAKE_ALIGNED_OPERATOR_NEW_IF(NeedsToAlign)
#endif
#define EIGEN_MAKE_ALIGNED_OPERATOR_NEW EIGEN_MAKE_ALIGNED_OPERATOR_NEW_IF(true)
#define EIGEN_MAKE_ALIGNED_OPERATOR_NEW_IF_VECTORIZABLE_FIXED_SIZE(Scalar,Size) \
EIGEN_MAKE_ALIGNED_OPERATOR_NEW_IF(((Size)!=Eigen::Dynamic) && ((sizeof(Scalar)*(Size))%16==0))
/** \class aligned_allocator
*
* \brief stl compatible allocator to use with with 16 byte aligned types
*
* Example:
* \code
* // Matrix4f requires 16 bytes alignment:
* std::map< int, Matrix4f, std::less<int>, aligned_allocator<Matrix4f> > my_map_mat4;
* // Vector3f does not require 16 bytes alignment, no need to use Eigen's allocator:
* std::map< int, Vector3f > my_map_vec3;
* \endcode
*
*/
template<class T>
class aligned_allocator
{
public:
typedef std::size_t size_type;
typedef std::ptrdiff_t difference_type;
typedef T* pointer;
typedef const T* const_pointer;
typedef T& reference;
typedef const T& const_reference;
typedef T value_type;
template<class U>
struct rebind
{
typedef aligned_allocator<U> other;
};
pointer address( reference value ) const
{
return &value;
}
const_pointer address( const_reference value ) const
{
return &value;
}
aligned_allocator() throw()
{
}
aligned_allocator( const aligned_allocator& ) throw()
{
}
template<class U>
aligned_allocator( const aligned_allocator<U>& ) throw()
{
}
~aligned_allocator() throw()
{
}
size_type max_size() const throw()
{
return std::numeric_limits<size_type>::max();
}
pointer allocate( size_type num, const_pointer* hint = 0 )
{
static_cast<void>( hint ); // suppress unused variable warning
return static_cast<pointer>( ei_aligned_malloc( num * sizeof(T) ) );
}
void construct( pointer p, const T& value )
{
::new( p ) T( value );
}
void destroy( pointer p )
{
p->~T();
}
void deallocate( pointer p, size_type /*num*/ )
{
ei_aligned_free( p );
}
bool operator!=(const aligned_allocator<T>& other) const
{ return false; }
bool operator==(const aligned_allocator<T>& other) const
{ return true; }
};
#endif // EIGEN_MEMORY_H

183
Eigen/src/Core/util/Meta.h Normal file
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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_META_H
#define EIGEN_META_H
/** \internal
* \file Meta.h
* This file contains generic metaprogramming classes which are not specifically related to Eigen.
* \note In case you wonder, yes we're aware that Boost already provides all these features,
* we however don't want to add a dependency to Boost.
*/
struct ei_meta_true { enum { ret = 1 }; };
struct ei_meta_false { enum { ret = 0 }; };
template<bool Condition, typename Then, typename Else>
struct ei_meta_if { typedef Then ret; };
template<typename Then, typename Else>
struct ei_meta_if <false, Then, Else> { typedef Else ret; };
template<typename T, typename U> struct ei_is_same_type { enum { ret = 0 }; };
template<typename T> struct ei_is_same_type<T,T> { enum { ret = 1 }; };
template<typename T> struct ei_unref { typedef T type; };
template<typename T> struct ei_unref<T&> { typedef T type; };
template<typename T> struct ei_unpointer { typedef T type; };
template<typename T> struct ei_unpointer<T*> { typedef T type; };
template<typename T> struct ei_unpointer<T*const> { typedef T type; };
template<typename T> struct ei_unconst { typedef T type; };
template<typename T> struct ei_unconst<const T> { typedef T type; };
template<typename T> struct ei_unconst<T const &> { typedef T & type; };
template<typename T> struct ei_unconst<T const *> { typedef T * type; };
template<typename T> struct ei_cleantype { typedef T type; };
template<typename T> struct ei_cleantype<const T> { typedef typename ei_cleantype<T>::type type; };
template<typename T> struct ei_cleantype<const T&> { typedef typename ei_cleantype<T>::type type; };
template<typename T> struct ei_cleantype<T&> { typedef typename ei_cleantype<T>::type type; };
template<typename T> struct ei_cleantype<const T*> { typedef typename ei_cleantype<T>::type type; };
template<typename T> struct ei_cleantype<T*> { typedef typename ei_cleantype<T>::type type; };
/** \internal
* Convenient struct to get the result type of a unary or binary functor.
*
* It supports both the current STL mechanism (using the result_type member) as well as
* upcoming next STL generation (using a templated result member).
* If none of these members is provided, then the type of the first argument is returned. FIXME, that behavior is a pretty bad hack.
*/
template<typename T> struct ei_result_of {};
struct ei_has_none {int a[1];};
struct ei_has_std_result_type {int a[2];};
struct ei_has_tr1_result {int a[3];};
template<typename Func, typename ArgType, int SizeOf=sizeof(ei_has_none)>
struct ei_unary_result_of_select {typedef ArgType type;};
template<typename Func, typename ArgType>
struct ei_unary_result_of_select<Func, ArgType, sizeof(ei_has_std_result_type)> {typedef typename Func::result_type type;};
template<typename Func, typename ArgType>
struct ei_unary_result_of_select<Func, ArgType, sizeof(ei_has_tr1_result)> {typedef typename Func::template result<Func(ArgType)>::type type;};
template<typename Func, typename ArgType>
struct ei_result_of<Func(ArgType)> {
template<typename T>
static ei_has_std_result_type testFunctor(T const *, typename T::result_type const * = 0);
template<typename T>
static ei_has_tr1_result testFunctor(T const *, typename T::template result<T(ArgType)>::type const * = 0);
static ei_has_none testFunctor(...);
// note that the following indirection is needed for gcc-3.3
enum {FunctorType = sizeof(testFunctor(static_cast<Func*>(0)))};
typedef typename ei_unary_result_of_select<Func, ArgType, FunctorType>::type type;
};
template<typename Func, typename ArgType0, typename ArgType1, int SizeOf=sizeof(ei_has_none)>
struct ei_binary_result_of_select {typedef ArgType0 type;};
template<typename Func, typename ArgType0, typename ArgType1>
struct ei_binary_result_of_select<Func, ArgType0, ArgType1, sizeof(ei_has_std_result_type)>
{typedef typename Func::result_type type;};
template<typename Func, typename ArgType0, typename ArgType1>
struct ei_binary_result_of_select<Func, ArgType0, ArgType1, sizeof(ei_has_tr1_result)>
{typedef typename Func::template result<Func(ArgType0,ArgType1)>::type type;};
template<typename Func, typename ArgType0, typename ArgType1>
struct ei_result_of<Func(ArgType0,ArgType1)> {
template<typename T>
static ei_has_std_result_type testFunctor(T const *, typename T::result_type const * = 0);
template<typename T>
static ei_has_tr1_result testFunctor(T const *, typename T::template result<T(ArgType0,ArgType1)>::type const * = 0);
static ei_has_none testFunctor(...);
// note that the following indirection is needed for gcc-3.3
enum {FunctorType = sizeof(testFunctor(static_cast<Func*>(0)))};
typedef typename ei_binary_result_of_select<Func, ArgType0, ArgType1, FunctorType>::type type;
};
/** \internal In short, it computes int(sqrt(\a Y)) with \a Y an integer.
* Usage example: \code ei_meta_sqrt<1023>::ret \endcode
*/
template<int Y,
int InfX = 0,
int SupX = ((Y==1) ? 1 : Y/2),
bool Done = ((SupX-InfX)<=1 ? true : ((SupX*SupX <= Y) && ((SupX+1)*(SupX+1) > Y))) >
// use ?: instead of || just to shut up a stupid gcc 4.3 warning
class ei_meta_sqrt
{
enum {
MidX = (InfX+SupX)/2,
TakeInf = MidX*MidX > Y ? 1 : 0,
NewInf = int(TakeInf) ? InfX : int(MidX),
NewSup = int(TakeInf) ? int(MidX) : SupX
};
public:
enum { ret = ei_meta_sqrt<Y,NewInf,NewSup>::ret };
};
template<int Y, int InfX, int SupX>
class ei_meta_sqrt<Y, InfX, SupX, true> { public: enum { ret = (SupX*SupX <= Y) ? SupX : InfX }; };
/** \internal determines whether the product of two numeric types is allowed and what the return type is */
template<typename T, typename U> struct ei_scalar_product_traits
{
// dummy general case where T and U aren't compatible -- not allowed anyway but we catch it elsewhere
//enum { Cost = NumTraits<T>::MulCost };
typedef T ReturnType;
};
template<typename T> struct ei_scalar_product_traits<T,T>
{
//enum { Cost = NumTraits<T>::MulCost };
typedef T ReturnType;
};
template<typename T> struct ei_scalar_product_traits<T,std::complex<T> >
{
//enum { Cost = 2*NumTraits<T>::MulCost };
typedef std::complex<T> ReturnType;
};
template<typename T> struct ei_scalar_product_traits<std::complex<T>, T>
{
//enum { Cost = 2*NumTraits<T>::MulCost };
typedef std::complex<T> ReturnType;
};
// FIXME quick workaround around current limitation of ei_result_of
template<typename Scalar, typename ArgType0, typename ArgType1>
struct ei_result_of<ei_scalar_product_op<Scalar>(ArgType0,ArgType1)> {
typedef typename ei_scalar_product_traits<typename ei_cleantype<ArgType0>::type, typename ei_cleantype<ArgType1>::type>::ReturnType type;
};
#endif // EIGEN_META_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_STATIC_ASSERT_H
#define EIGEN_STATIC_ASSERT_H
/* Some notes on Eigen's static assertion mechanism:
*
* - in EIGEN_STATIC_ASSERT(CONDITION,MSG) the parameter CONDITION must be a compile time boolean
* expression, and MSG an enum listed in struct ei_static_assert<true>
*
* - define EIGEN_NO_STATIC_ASSERT to disable them (and save compilation time)
* in that case, the static assertion is converted to the following runtime assert:
* ei_assert(CONDITION && "MSG")
*
* - currently EIGEN_STATIC_ASSERT can only be used in function scope
*
*/
#ifndef EIGEN_NO_STATIC_ASSERT
#ifdef __GXX_EXPERIMENTAL_CXX0X__
// if native static_assert is enabled, let's use it
#define EIGEN_STATIC_ASSERT(X,MSG) static_assert(X,#MSG);
#else // CXX0X
template<bool condition>
struct ei_static_assert {};
template<>
struct ei_static_assert<true>
{
enum {
YOU_TRIED_CALLING_A_VECTOR_METHOD_ON_A_MATRIX,
YOU_MIXED_VECTORS_OF_DIFFERENT_SIZES,
YOU_MIXED_MATRICES_OF_DIFFERENT_SIZES,
THIS_METHOD_IS_ONLY_FOR_VECTORS_OF_A_SPECIFIC_SIZE,
THIS_METHOD_IS_ONLY_FOR_MATRICES_OF_A_SPECIFIC_SIZE,
YOU_MADE_A_PROGRAMMING_MISTAKE,
YOU_CALLED_A_FIXED_SIZE_METHOD_ON_A_DYNAMIC_SIZE_MATRIX_OR_VECTOR,
UNALIGNED_LOAD_AND_STORE_OPERATIONS_UNIMPLEMENTED_ON_ALTIVEC,
NUMERIC_TYPE_MUST_BE_FLOATING_POINT,
COEFFICIENT_WRITE_ACCESS_TO_SELFADJOINT_NOT_SUPPORTED,
WRITING_TO_TRIANGULAR_PART_WITH_UNIT_DIAGONAL_IS_NOT_SUPPORTED,
THIS_METHOD_IS_ONLY_FOR_FIXED_SIZE,
INVALID_MATRIX_PRODUCT,
INVALID_VECTOR_VECTOR_PRODUCT__IF_YOU_WANTED_A_DOT_OR_COEFF_WISE_PRODUCT_YOU_MUST_USE_THE_EXPLICIT_FUNCTIONS,
INVALID_MATRIX_PRODUCT__IF_YOU_WANTED_A_COEFF_WISE_PRODUCT_YOU_MUST_USE_THE_EXPLICIT_FUNCTION,
YOU_MIXED_DIFFERENT_NUMERIC_TYPES__YOU_NEED_TO_USE_THE_CAST_METHOD_OF_MATRIXBASE_TO_CAST_NUMERIC_TYPES_EXPLICITLY,
THIS_METHOD_IS_ONLY_FOR_COLUMN_MAJOR_MATRICES,
THIS_METHOD_IS_ONLY_FOR_ROW_MAJOR_MATRICES,
INVALID_MATRIX_TEMPLATE_PARAMETERS,
INVALID_MATRIXBASE_TEMPLATE_PARAMETERS,
BOTH_MATRICES_MUST_HAVE_THE_SAME_STORAGE_ORDER,
THIS_METHOD_IS_ONLY_FOR_DIAGONAL_MATRIX
};
};
// Specialized implementation for MSVC to avoid "conditional
// expression is constant" warnings. This implementation doesn't
// appear to work under GCC, hence the multiple implementations.
#ifdef _MSC_VER
#define EIGEN_STATIC_ASSERT(CONDITION,MSG) \
{Eigen::ei_static_assert<CONDITION ? true : false>::MSG;}
#else
#define EIGEN_STATIC_ASSERT(CONDITION,MSG) \
if (Eigen::ei_static_assert<CONDITION ? true : false>::MSG) {}
#endif
#endif // not CXX0X
#else // EIGEN_NO_STATIC_ASSERT
#define EIGEN_STATIC_ASSERT(CONDITION,MSG) ei_assert((CONDITION) && #MSG);
#endif // EIGEN_NO_STATIC_ASSERT
// static assertion failing if the type \a TYPE is not a vector type
#define EIGEN_STATIC_ASSERT_VECTOR_ONLY(TYPE) \
EIGEN_STATIC_ASSERT(TYPE::IsVectorAtCompileTime, \
YOU_TRIED_CALLING_A_VECTOR_METHOD_ON_A_MATRIX)
// static assertion failing if the type \a TYPE is not fixed-size
#define EIGEN_STATIC_ASSERT_FIXED_SIZE(TYPE) \
EIGEN_STATIC_ASSERT(TYPE::SizeAtCompileTime!=Eigen::Dynamic, \
YOU_CALLED_A_FIXED_SIZE_METHOD_ON_A_DYNAMIC_SIZE_MATRIX_OR_VECTOR)
// static assertion failing if the type \a TYPE is not a vector type of the given size
#define EIGEN_STATIC_ASSERT_VECTOR_SPECIFIC_SIZE(TYPE, SIZE) \
EIGEN_STATIC_ASSERT(TYPE::IsVectorAtCompileTime && TYPE::SizeAtCompileTime==SIZE, \
THIS_METHOD_IS_ONLY_FOR_VECTORS_OF_A_SPECIFIC_SIZE)
// static assertion failing if the type \a TYPE is not a vector type of the given size
#define EIGEN_STATIC_ASSERT_MATRIX_SPECIFIC_SIZE(TYPE, ROWS, COLS) \
EIGEN_STATIC_ASSERT(TYPE::RowsAtCompileTime==ROWS && TYPE::ColsAtCompileTime==COLS, \
THIS_METHOD_IS_ONLY_FOR_MATRICES_OF_A_SPECIFIC_SIZE)
// static assertion failing if the two vector expression types are not compatible (same fixed-size or dynamic size)
#define EIGEN_STATIC_ASSERT_SAME_VECTOR_SIZE(TYPE0,TYPE1) \
EIGEN_STATIC_ASSERT( \
(int(TYPE0::SizeAtCompileTime)==Eigen::Dynamic \
|| int(TYPE1::SizeAtCompileTime)==Eigen::Dynamic \
|| int(TYPE0::SizeAtCompileTime)==int(TYPE1::SizeAtCompileTime)),\
YOU_MIXED_VECTORS_OF_DIFFERENT_SIZES)
#define EIGEN_PREDICATE_SAME_MATRIX_SIZE(TYPE0,TYPE1) \
((int(TYPE0::RowsAtCompileTime)==Eigen::Dynamic \
|| int(TYPE1::RowsAtCompileTime)==Eigen::Dynamic \
|| int(TYPE0::RowsAtCompileTime)==int(TYPE1::RowsAtCompileTime)) \
&& (int(TYPE0::ColsAtCompileTime)==Eigen::Dynamic \
|| int(TYPE1::ColsAtCompileTime)==Eigen::Dynamic \
|| int(TYPE0::ColsAtCompileTime)==int(TYPE1::ColsAtCompileTime)))
// static assertion failing if it is guaranteed at compile-time that the two matrix expression types have different sizes
#define EIGEN_STATIC_ASSERT_SAME_MATRIX_SIZE(TYPE0,TYPE1) \
EIGEN_STATIC_ASSERT( \
EIGEN_PREDICATE_SAME_MATRIX_SIZE(TYPE0,TYPE1),\
YOU_MIXED_MATRICES_OF_DIFFERENT_SIZES)
#endif // EIGEN_STATIC_ASSERT_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_XPRHELPER_H
#define EIGEN_XPRHELPER_H
// just a workaround because GCC seems to not really like empty structs
#ifdef __GNUG__
struct ei_empty_struct{char _ei_dummy_;};
#define EIGEN_EMPTY_STRUCT : Eigen::ei_empty_struct
#else
#define EIGEN_EMPTY_STRUCT
#endif
//classes inheriting ei_no_assignment_operator don't generate a default operator=.
class ei_no_assignment_operator
{
#if EIGEN_GCC3_OR_OLDER
protected:
void nevermind_this_is_just_to_work_around_a_stupid_gcc3_warning();
#endif
private:
ei_no_assignment_operator& operator=(const ei_no_assignment_operator&);
};
/** \internal If the template parameter Value is Dynamic, this class is just a wrapper around an int variable that
* can be accessed using value() and setValue().
* Otherwise, this class is an empty structure and value() just returns the template parameter Value.
*/
template<int Value> class ei_int_if_dynamic EIGEN_EMPTY_STRUCT
{
public:
ei_int_if_dynamic() {}
explicit ei_int_if_dynamic(int) {}
static int value() { return Value; }
void setValue(int) {}
};
template<> class ei_int_if_dynamic<Dynamic>
{
int m_value;
ei_int_if_dynamic() {}
public:
explicit ei_int_if_dynamic(int value) : m_value(value) {}
int value() const { return m_value; }
void setValue(int value) { m_value = value; }
};
template<typename T> struct ei_functor_traits
{
enum
{
Cost = 10,
PacketAccess = false
};
};
template<typename T> struct ei_packet_traits
{
typedef T type;
enum {size=1};
};
template<typename T> struct ei_unpacket_traits
{
typedef T type;
enum {size=1};
};
template<typename Scalar, int Rows, int Cols, int Options, int MaxRows, int MaxCols>
class ei_compute_matrix_flags
{
enum {
row_major_bit = Options&RowMajor ? RowMajorBit : 0,
inner_max_size = int(MaxRows==1) ? int(MaxCols)
: int(MaxCols==1) ? int(MaxRows)
: int(row_major_bit) ? int(MaxCols) : int(MaxRows),
is_big = inner_max_size == Dynamic,
storage_has_fixed_size = MaxRows != Dynamic && MaxCols != Dynamic,
storage_has_aligned_fixed_size = storage_has_fixed_size
&& ( (MaxCols*MaxRows) % ei_packet_traits<Scalar>::size == 0 ),
aligned_bit = ( (Options&AutoAlign)
&& (is_big || storage_has_aligned_fixed_size)
) ? AlignedBit : 0,
packet_access_bit = ei_packet_traits<Scalar>::size > 1 && aligned_bit ? PacketAccessBit : 0
};
public:
enum { ret = LinearAccessBit | DirectAccessBit | packet_access_bit | row_major_bit | aligned_bit };
};
template<int _Rows, int _Cols> struct ei_size_at_compile_time
{
enum { ret = (_Rows==Dynamic || _Cols==Dynamic) ? Dynamic : _Rows * _Cols };
};
/* ei_eval : the return type of eval(). For matrices, this is just a const reference
* in order to avoid a useless copy
*/
template<typename T, int Sparseness = ei_traits<T>::Flags&SparseBit> class ei_eval;
template<typename T> struct ei_eval<T,IsDense>
{
typedef Matrix<typename ei_traits<T>::Scalar,
ei_traits<T>::RowsAtCompileTime,
ei_traits<T>::ColsAtCompileTime,
AutoAlign | (ei_traits<T>::Flags&RowMajorBit ? RowMajor : ColMajor),
ei_traits<T>::MaxRowsAtCompileTime,
ei_traits<T>::MaxColsAtCompileTime
> type;
};
// for matrices, no need to evaluate, just use a const reference to avoid a useless copy
template<typename _Scalar, int _Rows, int _Cols, int _StorageOrder, int _MaxRows, int _MaxCols>
struct ei_eval<Matrix<_Scalar, _Rows, _Cols, _StorageOrder, _MaxRows, _MaxCols>, IsDense>
{
typedef const Matrix<_Scalar, _Rows, _Cols, _StorageOrder, _MaxRows, _MaxCols>& type;
};
/* ei_plain_matrix_type : the difference from ei_eval is that ei_plain_matrix_type is always a plain matrix type,
* whereas ei_eval is a const reference in the case of a matrix
*/
template<typename T> struct ei_plain_matrix_type
{
typedef Matrix<typename ei_traits<T>::Scalar,
ei_traits<T>::RowsAtCompileTime,
ei_traits<T>::ColsAtCompileTime,
AutoAlign | (ei_traits<T>::Flags&RowMajorBit ? RowMajor : ColMajor),
ei_traits<T>::MaxRowsAtCompileTime,
ei_traits<T>::MaxColsAtCompileTime
> type;
};
/* ei_plain_matrix_type_column_major : same as ei_plain_matrix_type but guaranteed to be column-major
*/
template<typename T> struct ei_plain_matrix_type_column_major
{
typedef Matrix<typename ei_traits<T>::Scalar,
ei_traits<T>::RowsAtCompileTime,
ei_traits<T>::ColsAtCompileTime,
AutoAlign | ColMajor,
ei_traits<T>::MaxRowsAtCompileTime,
ei_traits<T>::MaxColsAtCompileTime
> type;
};
/* ei_plain_matrix_type_row_major : same as ei_plain_matrix_type but guaranteed to be row-major
*/
template<typename T> struct ei_plain_matrix_type_row_major
{
typedef Matrix<typename ei_traits<T>::Scalar,
ei_traits<T>::RowsAtCompileTime,
ei_traits<T>::ColsAtCompileTime,
AutoAlign | RowMajor,
ei_traits<T>::MaxRowsAtCompileTime,
ei_traits<T>::MaxColsAtCompileTime
> type;
};
template<typename T> struct ei_must_nest_by_value { enum { ret = false }; };
template<typename T> struct ei_must_nest_by_value<NestByValue<T> > { enum { ret = true }; };
/** \internal Determines how a given expression should be nested into another one.
* For example, when you do a * (b+c), Eigen will determine how the expression b+c should be
* nested into the bigger product expression. The choice is between nesting the expression b+c as-is, or
* evaluating that expression b+c into a temporary variable d, and nest d so that the resulting expression is
* a*d. Evaluating can be beneficial for example if every coefficient access in the resulting expression causes
* many coefficient accesses in the nested expressions -- as is the case with matrix product for example.
*
* \param T the type of the expression being nested
* \param n the number of coefficient accesses in the nested expression for each coefficient access in the bigger expression.
*
* Example. Suppose that a, b, and c are of type Matrix3d. The user forms the expression a*(b+c).
* b+c is an expression "sum of matrices", which we will denote by S. In order to determine how to nest it,
* the Product expression uses: ei_nested<S, 3>::ret, which turns out to be Matrix3d because the internal logic of
* ei_nested determined that in this case it was better to evaluate the expression b+c into a temporary. On the other hand,
* since a is of type Matrix3d, the Product expression nests it as ei_nested<Matrix3d, 3>::ret, which turns out to be
* const Matrix3d&, because the internal logic of ei_nested determined that since a was already a matrix, there was no point
* in copying it into another matrix.
*/
template<typename T, int n=1, typename PlainMatrixType = typename ei_eval<T>::type> struct ei_nested
{
enum {
CostEval = (n+1) * int(NumTraits<typename ei_traits<T>::Scalar>::ReadCost),
CostNoEval = (n-1) * int(ei_traits<T>::CoeffReadCost)
};
typedef typename ei_meta_if<
ei_must_nest_by_value<T>::ret,
T,
typename ei_meta_if<
(int(ei_traits<T>::Flags) & EvalBeforeNestingBit)
|| ( int(CostEval) <= int(CostNoEval) ),
PlainMatrixType,
const T&
>::ret
>::ret type;
};
template<unsigned int Flags> struct ei_are_flags_consistent
{
enum { ret = !( (Flags&UnitDiagBit && Flags&ZeroDiagBit) )
};
};
/** \internal Gives the type of a sub-matrix or sub-vector of a matrix of type \a ExpressionType and size \a Size
* TODO: could be a good idea to define a big ReturnType struct ??
*/
template<typename ExpressionType, int RowsOrSize=Dynamic, int Cols=Dynamic> struct BlockReturnType {
typedef Block<ExpressionType, (ei_traits<ExpressionType>::RowsAtCompileTime == 1 ? 1 : RowsOrSize),
(ei_traits<ExpressionType>::ColsAtCompileTime == 1 ? 1 : RowsOrSize)> SubVectorType;
typedef Block<ExpressionType, RowsOrSize, Cols> Type;
};
template<typename CurrentType, typename NewType> struct ei_cast_return_type
{
typedef typename ei_meta_if<ei_is_same_type<CurrentType,NewType>::ret,const CurrentType&,NewType>::ret type;
};
#endif // EIGEN_XPRHELPER_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_ALIGNEDBOX_H
#define EIGEN_ALIGNEDBOX_H
/** \geometry_module \ingroup Geometry_Module
* \nonstableyet
*
* \class AlignedBox
*
* \brief An axis aligned box
*
* \param _Scalar the type of the scalar coefficients
* \param _AmbientDim the dimension of the ambient space, can be a compile time value or Dynamic.
*
* This class represents an axis aligned box as a pair of the minimal and maximal corners.
*/
template <typename _Scalar, int _AmbientDim>
class AlignedBox
{
public:
EIGEN_MAKE_ALIGNED_OPERATOR_NEW_IF_VECTORIZABLE_FIXED_SIZE(_Scalar,_AmbientDim==Dynamic ? Dynamic : _AmbientDim+1)
enum { AmbientDimAtCompileTime = _AmbientDim };
typedef _Scalar Scalar;
typedef typename NumTraits<Scalar>::Real RealScalar;
typedef Matrix<Scalar,AmbientDimAtCompileTime,1> VectorType;
/** Default constructor initializing a null box. */
inline explicit AlignedBox()
{ if (AmbientDimAtCompileTime!=Dynamic) setNull(); }
/** Constructs a null box with \a _dim the dimension of the ambient space. */
inline explicit AlignedBox(int _dim) : m_min(_dim), m_max(_dim)
{ setNull(); }
/** Constructs a box with extremities \a _min and \a _max. */
inline AlignedBox(const VectorType& _min, const VectorType& _max) : m_min(_min), m_max(_max) {}
/** Constructs a box containing a single point \a p. */
inline explicit AlignedBox(const VectorType& p) : m_min(p), m_max(p) {}
~AlignedBox() {}
/** \returns the dimension in which the box holds */
inline int dim() const { return AmbientDimAtCompileTime==Dynamic ? m_min.size()-1 : AmbientDimAtCompileTime; }
/** \returns true if the box is null, i.e, empty. */
inline bool isNull() const { return (m_min.cwise() > m_max).any(); }
/** Makes \c *this a null/empty box. */
inline void setNull()
{
m_min.setConstant( std::numeric_limits<Scalar>::max());
m_max.setConstant(-std::numeric_limits<Scalar>::max());
}
/** \returns the minimal corner */
inline const VectorType& min() const { return m_min; }
/** \returns a non const reference to the minimal corner */
inline VectorType& min() { return m_min; }
/** \returns the maximal corner */
inline const VectorType& max() const { return m_max; }
/** \returns a non const reference to the maximal corner */
inline VectorType& max() { return m_max; }
/** \returns true if the point \a p is inside the box \c *this. */
inline bool contains(const VectorType& p) const
{ return (m_min.cwise()<=p).all() && (p.cwise()<=m_max).all(); }
/** \returns true if the box \a b is entirely inside the box \c *this. */
inline bool contains(const AlignedBox& b) const
{ return (m_min.cwise()<=b.min()).all() && (b.max().cwise()<=m_max).all(); }
/** Extends \c *this such that it contains the point \a p and returns a reference to \c *this. */
inline AlignedBox& extend(const VectorType& p)
{ m_min = m_min.cwise().min(p); m_max = m_max.cwise().max(p); return *this; }
/** Extends \c *this such that it contains the box \a b and returns a reference to \c *this. */
inline AlignedBox& extend(const AlignedBox& b)
{ m_min = m_min.cwise().min(b.m_min); m_max = m_max.cwise().max(b.m_max); return *this; }
/** Clamps \c *this by the box \a b and returns a reference to \c *this. */
inline AlignedBox& clamp(const AlignedBox& b)
{ m_min = m_min.cwise().max(b.m_min); m_max = m_max.cwise().min(b.m_max); return *this; }
/** Translate \c *this by the vector \a t and returns a reference to \c *this. */
inline AlignedBox& translate(const VectorType& t)
{ m_min += t; m_max += t; return *this; }
/** \returns the squared distance between the point \a p and the box \c *this,
* and zero if \a p is inside the box.
* \sa exteriorDistance()
*/
inline Scalar squaredExteriorDistance(const VectorType& p) const;
/** \returns the distance between the point \a p and the box \c *this,
* and zero if \a p is inside the box.
* \sa squaredExteriorDistance()
*/
inline Scalar exteriorDistance(const VectorType& p) const
{ return ei_sqrt(squaredExteriorDistance(p)); }
/** \returns \c *this with scalar type casted to \a NewScalarType
*
* Note that if \a NewScalarType is equal to the current scalar type of \c *this
* then this function smartly returns a const reference to \c *this.
*/
template<typename NewScalarType>
inline typename ei_cast_return_type<AlignedBox,
AlignedBox<NewScalarType,AmbientDimAtCompileTime> >::type cast() const
{
return typename ei_cast_return_type<AlignedBox,
AlignedBox<NewScalarType,AmbientDimAtCompileTime> >::type(*this);
}
/** Copy constructor with scalar type conversion */
template<typename OtherScalarType>
inline explicit AlignedBox(const AlignedBox<OtherScalarType,AmbientDimAtCompileTime>& other)
{
m_min = other.min().template cast<Scalar>();
m_max = other.max().template cast<Scalar>();
}
/** \returns \c true if \c *this is approximately equal to \a other, within the precision
* determined by \a prec.
*
* \sa MatrixBase::isApprox() */
bool isApprox(const AlignedBox& other, typename NumTraits<Scalar>::Real prec = precision<Scalar>()) const
{ return m_min.isApprox(other.m_min, prec) && m_max.isApprox(other.m_max, prec); }
protected:
VectorType m_min, m_max;
};
template<typename Scalar,int AmbiantDim>
inline Scalar AlignedBox<Scalar,AmbiantDim>::squaredExteriorDistance(const VectorType& p) const
{
Scalar dist2 = 0.;
Scalar aux;
for (int k=0; k<dim(); ++k)
{
if ((aux = (p[k]-m_min[k]))<0.)
dist2 += aux*aux;
else if ( (aux = (m_max[k]-p[k]))<0. )
dist2 += aux*aux;
}
return dist2;
}
#endif // EIGEN_ALIGNEDBOX_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_ANGLEAXIS_H
#define EIGEN_ANGLEAXIS_H
/** \geometry_module \ingroup Geometry_Module
*
* \class AngleAxis
*
* \brief Represents a 3D rotation as a rotation angle around an arbitrary 3D axis
*
* \param _Scalar the scalar type, i.e., the type of the coefficients.
*
* The following two typedefs are provided for convenience:
* \li \c AngleAxisf for \c float
* \li \c AngleAxisd for \c double
*
* \addexample AngleAxisForEuler \label How to define a rotation from Euler-angles
*
* Combined with MatrixBase::Unit{X,Y,Z}, AngleAxis can be used to easily
* mimic Euler-angles. Here is an example:
* \include AngleAxis_mimic_euler.cpp
* Output: \verbinclude AngleAxis_mimic_euler.out
*
* \note This class is not aimed to be used to store a rotation transformation,
* but rather to make easier the creation of other rotation (Quaternion, rotation Matrix)
* and transformation objects.
*
* \sa class Quaternion, class Transform, MatrixBase::UnitX()
*/
template<typename _Scalar> struct ei_traits<AngleAxis<_Scalar> >
{
typedef _Scalar Scalar;
};
template<typename _Scalar>
class AngleAxis : public RotationBase<AngleAxis<_Scalar>,3>
{
typedef RotationBase<AngleAxis<_Scalar>,3> Base;
public:
using Base::operator*;
enum { Dim = 3 };
/** the scalar type of the coefficients */
typedef _Scalar Scalar;
typedef Matrix<Scalar,3,3> Matrix3;
typedef Matrix<Scalar,3,1> Vector3;
typedef Quaternion<Scalar> QuaternionType;
protected:
Vector3 m_axis;
Scalar m_angle;
public:
/** Default constructor without initialization. */
AngleAxis() {}
/** Constructs and initialize the angle-axis rotation from an \a angle in radian
* and an \a axis which must be normalized. */
template<typename Derived>
inline AngleAxis(Scalar angle, const MatrixBase<Derived>& axis) : m_axis(axis), m_angle(angle) {}
/** Constructs and initialize the angle-axis rotation from a quaternion \a q. */
inline AngleAxis(const QuaternionType& q) { *this = q; }
/** Constructs and initialize the angle-axis rotation from a 3x3 rotation matrix. */
template<typename Derived>
inline explicit AngleAxis(const MatrixBase<Derived>& m) { *this = m; }
Scalar angle() const { return m_angle; }
Scalar& angle() { return m_angle; }
const Vector3& axis() const { return m_axis; }
Vector3& axis() { return m_axis; }
/** Concatenates two rotations */
inline QuaternionType operator* (const AngleAxis& other) const
{ return QuaternionType(*this) * QuaternionType(other); }
/** Concatenates two rotations */
inline QuaternionType operator* (const QuaternionType& other) const
{ return QuaternionType(*this) * other; }
/** Concatenates two rotations */
friend inline QuaternionType operator* (const QuaternionType& a, const AngleAxis& b)
{ return a * QuaternionType(b); }
/** Concatenates two rotations */
inline Matrix3 operator* (const Matrix3& other) const
{ return toRotationMatrix() * other; }
/** Concatenates two rotations */
inline friend Matrix3 operator* (const Matrix3& a, const AngleAxis& b)
{ return a * b.toRotationMatrix(); }
/** Applies rotation to vector */
inline Vector3 operator* (const Vector3& other) const
{ return toRotationMatrix() * other; }
/** \returns the inverse rotation, i.e., an angle-axis with opposite rotation angle */
AngleAxis inverse() const
{ return AngleAxis(-m_angle, m_axis); }
AngleAxis& operator=(const QuaternionType& q);
template<typename Derived>
AngleAxis& operator=(const MatrixBase<Derived>& m);
template<typename Derived>
AngleAxis& fromRotationMatrix(const MatrixBase<Derived>& m);
Matrix3 toRotationMatrix(void) const;
/** \returns \c *this with scalar type casted to \a NewScalarType
*
* Note that if \a NewScalarType is equal to the current scalar type of \c *this
* then this function smartly returns a const reference to \c *this.
*/
template<typename NewScalarType>
inline typename ei_cast_return_type<AngleAxis,AngleAxis<NewScalarType> >::type cast() const
{ return typename ei_cast_return_type<AngleAxis,AngleAxis<NewScalarType> >::type(*this); }
/** Copy constructor with scalar type conversion */
template<typename OtherScalarType>
inline explicit AngleAxis(const AngleAxis<OtherScalarType>& other)
{
m_axis = other.axis().template cast<Scalar>();
m_angle = Scalar(other.angle());
}
/** \returns \c true if \c *this is approximately equal to \a other, within the precision
* determined by \a prec.
*
* \sa MatrixBase::isApprox() */
bool isApprox(const AngleAxis& other, typename NumTraits<Scalar>::Real prec = precision<Scalar>()) const
{ return m_axis.isApprox(other.m_axis, prec) && ei_isApprox(m_angle,other.m_angle, prec); }
};
/** \ingroup Geometry_Module
* single precision angle-axis type */
typedef AngleAxis<float> AngleAxisf;
/** \ingroup Geometry_Module
* double precision angle-axis type */
typedef AngleAxis<double> AngleAxisd;
/** Set \c *this from a quaternion.
* The axis is normalized.
*/
template<typename Scalar>
AngleAxis<Scalar>& AngleAxis<Scalar>::operator=(const QuaternionType& q)
{
Scalar n2 = q.vec().squaredNorm();
if (n2 < precision<Scalar>()*precision<Scalar>())
{
m_angle = 0;
m_axis << 1, 0, 0;
}
else
{
m_angle = 2*std::acos(q.w());
m_axis = q.vec() / ei_sqrt(n2);
}
return *this;
}
/** Set \c *this from a 3x3 rotation matrix \a mat.
*/
template<typename Scalar>
template<typename Derived>
AngleAxis<Scalar>& AngleAxis<Scalar>::operator=(const MatrixBase<Derived>& mat)
{
// Since a direct conversion would not be really faster,
// let's use the robust Quaternion implementation:
return *this = QuaternionType(mat);
}
/** Constructs and \returns an equivalent 3x3 rotation matrix.
*/
template<typename Scalar>
typename AngleAxis<Scalar>::Matrix3
AngleAxis<Scalar>::toRotationMatrix(void) const
{
Matrix3 res;
Vector3 sin_axis = ei_sin(m_angle) * m_axis;
Scalar c = ei_cos(m_angle);
Vector3 cos1_axis = (Scalar(1)-c) * m_axis;
Scalar tmp;
tmp = cos1_axis.x() * m_axis.y();
res.coeffRef(0,1) = tmp - sin_axis.z();
res.coeffRef(1,0) = tmp + sin_axis.z();
tmp = cos1_axis.x() * m_axis.z();
res.coeffRef(0,2) = tmp + sin_axis.y();
res.coeffRef(2,0) = tmp - sin_axis.y();
tmp = cos1_axis.y() * m_axis.z();
res.coeffRef(1,2) = tmp - sin_axis.x();
res.coeffRef(2,1) = tmp + sin_axis.x();
res.diagonal() = (cos1_axis.cwise() * m_axis).cwise() + c;
return res;
}
#endif // EIGEN_ANGLEAXIS_H

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FILE(GLOB Eigen_Geometry_SRCS "*.h")
INSTALL(FILES
${Eigen_Geometry_SRCS}
DESTINATION ${INCLUDE_INSTALL_DIR}/Eigen/src/Geometry
)

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_EULERANGLES_H
#define EIGEN_EULERANGLES_H
/** \geometry_module \ingroup Geometry_Module
* \nonstableyet
*
* \returns the Euler-angles of the rotation matrix \c *this using the convention defined by the triplet (\a a0,\a a1,\a a2)
*
* Each of the three parameters \a a0,\a a1,\a a2 represents the respective rotation axis as an integer in {0,1,2}.
* For instance, in:
* \code Vector3f ea = mat.eulerAngles(2, 0, 2); \endcode
* "2" represents the z axis and "0" the x axis, etc. The returned angles are such that
* we have the following equality:
* \code
* mat == AngleAxisf(ea[0], Vector3f::UnitZ())
* * AngleAxisf(ea[1], Vector3f::UnitX())
* * AngleAxisf(ea[2], Vector3f::UnitZ()); \endcode
* This corresponds to the right-multiply conventions (with right hand side frames).
*/
template<typename Derived>
inline Matrix<typename MatrixBase<Derived>::Scalar,3,1>
MatrixBase<Derived>::eulerAngles(int a0, int a1, int a2) const
{
/* Implemented from Graphics Gems IV */
EIGEN_STATIC_ASSERT_MATRIX_SPECIFIC_SIZE(Derived,3,3)
Matrix<Scalar,3,1> res;
typedef Matrix<typename Derived::Scalar,2,1> Vector2;
const Scalar epsilon = precision<Scalar>();
const int odd = ((a0+1)%3 == a1) ? 0 : 1;
const int i = a0;
const int j = (a0 + 1 + odd)%3;
const int k = (a0 + 2 - odd)%3;
if (a0==a2)
{
Scalar s = Vector2(coeff(j,i) , coeff(k,i)).norm();
res[1] = ei_atan2(s, coeff(i,i));
if (s > epsilon)
{
res[0] = ei_atan2(coeff(j,i), coeff(k,i));
res[2] = ei_atan2(coeff(i,j),-coeff(i,k));
}
else
{
res[0] = Scalar(0);
res[2] = (coeff(i,i)>0?1:-1)*ei_atan2(-coeff(k,j), coeff(j,j));
}
}
else
{
Scalar c = Vector2(coeff(i,i) , coeff(i,j)).norm();
res[1] = ei_atan2(-coeff(i,k), c);
if (c > epsilon)
{
res[0] = ei_atan2(coeff(j,k), coeff(k,k));
res[2] = ei_atan2(coeff(i,j), coeff(i,i));
}
else
{
res[0] = Scalar(0);
res[2] = (coeff(i,k)>0?1:-1)*ei_atan2(-coeff(k,j), coeff(j,j));
}
}
if (!odd)
res = -res;
return res;
}
#endif // EIGEN_EULERANGLES_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_HYPERPLANE_H
#define EIGEN_HYPERPLANE_H
/** \geometry_module \ingroup Geometry_Module
*
* \class Hyperplane
*
* \brief A hyperplane
*
* A hyperplane is an affine subspace of dimension n-1 in a space of dimension n.
* For example, a hyperplane in a plane is a line; a hyperplane in 3-space is a plane.
*
* \param _Scalar the scalar type, i.e., the type of the coefficients
* \param _AmbientDim the dimension of the ambient space, can be a compile time value or Dynamic.
* Notice that the dimension of the hyperplane is _AmbientDim-1.
*
* This class represents an hyperplane as the zero set of the implicit equation
* \f$ n \cdot x + d = 0 \f$ where \f$ n \f$ is a unit normal vector of the plane (linear part)
* and \f$ d \f$ is the distance (offset) to the origin.
*/
template <typename _Scalar, int _AmbientDim>
class Hyperplane
{
public:
EIGEN_MAKE_ALIGNED_OPERATOR_NEW_IF_VECTORIZABLE_FIXED_SIZE(_Scalar,_AmbientDim==Dynamic ? Dynamic : _AmbientDim+1)
enum { AmbientDimAtCompileTime = _AmbientDim };
typedef _Scalar Scalar;
typedef typename NumTraits<Scalar>::Real RealScalar;
typedef Matrix<Scalar,AmbientDimAtCompileTime,1> VectorType;
typedef Matrix<Scalar,int(AmbientDimAtCompileTime)==Dynamic
? Dynamic
: int(AmbientDimAtCompileTime)+1,1> Coefficients;
typedef Block<Coefficients,AmbientDimAtCompileTime,1> NormalReturnType;
/** Default constructor without initialization */
inline explicit Hyperplane() {}
/** Constructs a dynamic-size hyperplane with \a _dim the dimension
* of the ambient space */
inline explicit Hyperplane(int _dim) : m_coeffs(_dim+1) {}
/** Construct a plane from its normal \a n and a point \a e onto the plane.
* \warning the vector normal is assumed to be normalized.
*/
inline Hyperplane(const VectorType& n, const VectorType& e)
: m_coeffs(n.size()+1)
{
normal() = n;
offset() = -e.dot(n);
}
/** Constructs a plane from its normal \a n and distance to the origin \a d
* such that the algebraic equation of the plane is \f$ n \cdot x + d = 0 \f$.
* \warning the vector normal is assumed to be normalized.
*/
inline Hyperplane(const VectorType& n, Scalar d)
: m_coeffs(n.size()+1)
{
normal() = n;
offset() = d;
}
/** Constructs a hyperplane passing through the two points. If the dimension of the ambient space
* is greater than 2, then there isn't uniqueness, so an arbitrary choice is made.
*/
static inline Hyperplane Through(const VectorType& p0, const VectorType& p1)
{
Hyperplane result(p0.size());
result.normal() = (p1 - p0).unitOrthogonal();
result.offset() = -result.normal().dot(p0);
return result;
}
/** Constructs a hyperplane passing through the three points. The dimension of the ambient space
* is required to be exactly 3.
*/
static inline Hyperplane Through(const VectorType& p0, const VectorType& p1, const VectorType& p2)
{
EIGEN_STATIC_ASSERT_VECTOR_SPECIFIC_SIZE(VectorType, 3)
Hyperplane result(p0.size());
result.normal() = (p2 - p0).cross(p1 - p0).normalized();
result.offset() = -result.normal().dot(p0);
return result;
}
/** Constructs a hyperplane passing through the parametrized line \a parametrized.
* If the dimension of the ambient space is greater than 2, then there isn't uniqueness,
* so an arbitrary choice is made.
*/
// FIXME to be consitent with the rest this could be implemented as a static Through function ??
explicit Hyperplane(const ParametrizedLine<Scalar, AmbientDimAtCompileTime>& parametrized)
{
normal() = parametrized.direction().unitOrthogonal();
offset() = -normal().dot(parametrized.origin());
}
~Hyperplane() {}
/** \returns the dimension in which the plane holds */
inline int dim() const { return AmbientDimAtCompileTime==Dynamic ? m_coeffs.size()-1 : AmbientDimAtCompileTime; }
/** normalizes \c *this */
void normalize(void)
{
m_coeffs /= normal().norm();
}
/** \returns the signed distance between the plane \c *this and a point \a p.
* \sa absDistance()
*/
inline Scalar signedDistance(const VectorType& p) const { return p.dot(normal()) + offset(); }
/** \returns the absolute distance between the plane \c *this and a point \a p.
* \sa signedDistance()
*/
inline Scalar absDistance(const VectorType& p) const { return ei_abs(signedDistance(p)); }
/** \returns the projection of a point \a p onto the plane \c *this.
*/
inline VectorType projection(const VectorType& p) const { return p - signedDistance(p) * normal(); }
/** \returns a constant reference to the unit normal vector of the plane, which corresponds
* to the linear part of the implicit equation.
*/
inline const NormalReturnType normal() const { return NormalReturnType(m_coeffs,0,0,dim(),1); }
/** \returns a non-constant reference to the unit normal vector of the plane, which corresponds
* to the linear part of the implicit equation.
*/
inline NormalReturnType normal() { return NormalReturnType(m_coeffs,0,0,dim(),1); }
/** \returns the distance to the origin, which is also the "constant term" of the implicit equation
* \warning the vector normal is assumed to be normalized.
*/
inline const Scalar& offset() const { return m_coeffs.coeff(dim()); }
/** \returns a non-constant reference to the distance to the origin, which is also the constant part
* of the implicit equation */
inline Scalar& offset() { return m_coeffs(dim()); }
/** \returns a constant reference to the coefficients c_i of the plane equation:
* \f$ c_0*x_0 + ... + c_{d-1}*x_{d-1} + c_d = 0 \f$
*/
inline const Coefficients& coeffs() const { return m_coeffs; }
/** \returns a non-constant reference to the coefficients c_i of the plane equation:
* \f$ c_0*x_0 + ... + c_{d-1}*x_{d-1} + c_d = 0 \f$
*/
inline Coefficients& coeffs() { return m_coeffs; }
/** \returns the intersection of *this with \a other.
*
* \warning The ambient space must be a plane, i.e. have dimension 2, so that \c *this and \a other are lines.
*
* \note If \a other is approximately parallel to *this, this method will return any point on *this.
*/
VectorType intersection(const Hyperplane& other)
{
EIGEN_STATIC_ASSERT_VECTOR_SPECIFIC_SIZE(VectorType, 2)
Scalar det = coeffs().coeff(0) * other.coeffs().coeff(1) - coeffs().coeff(1) * other.coeffs().coeff(0);
// since the line equations ax+by=c are normalized with a^2+b^2=1, the following tests
// whether the two lines are approximately parallel.
if(ei_isMuchSmallerThan(det, Scalar(1)))
{ // special case where the two lines are approximately parallel. Pick any point on the first line.
if(ei_abs(coeffs().coeff(1))>ei_abs(coeffs().coeff(0)))
return VectorType(coeffs().coeff(1), -coeffs().coeff(2)/coeffs().coeff(1)-coeffs().coeff(0));
else
return VectorType(-coeffs().coeff(2)/coeffs().coeff(0)-coeffs().coeff(1), coeffs().coeff(0));
}
else
{ // general case
Scalar invdet = Scalar(1) / det;
return VectorType(invdet*(coeffs().coeff(1)*other.coeffs().coeff(2)-other.coeffs().coeff(1)*coeffs().coeff(2)),
invdet*(other.coeffs().coeff(0)*coeffs().coeff(2)-coeffs().coeff(0)*other.coeffs().coeff(2)));
}
}
/** Applies the transformation matrix \a mat to \c *this and returns a reference to \c *this.
*
* \param mat the Dim x Dim transformation matrix
* \param traits specifies whether the matrix \a mat represents an Isometry
* or a more generic Affine transformation. The default is Affine.
*/
template<typename XprType>
inline Hyperplane& transform(const MatrixBase<XprType>& mat, TransformTraits traits = Affine)
{
if (traits==Affine)
normal() = mat.inverse().transpose() * normal();
else if (traits==Isometry)
normal() = mat * normal();
else
{
ei_assert("invalid traits value in Hyperplane::transform()");
}
return *this;
}
/** Applies the transformation \a t to \c *this and returns a reference to \c *this.
*
* \param t the transformation of dimension Dim
* \param traits specifies whether the transformation \a t represents an Isometry
* or a more generic Affine transformation. The default is Affine.
* Other kind of transformations are not supported.
*/
inline Hyperplane& transform(const Transform<Scalar,AmbientDimAtCompileTime>& t,
TransformTraits traits = Affine)
{
transform(t.linear(), traits);
offset() -= t.translation().dot(normal());
return *this;
}
/** \returns \c *this with scalar type casted to \a NewScalarType
*
* Note that if \a NewScalarType is equal to the current scalar type of \c *this
* then this function smartly returns a const reference to \c *this.
*/
template<typename NewScalarType>
inline typename ei_cast_return_type<Hyperplane,
Hyperplane<NewScalarType,AmbientDimAtCompileTime> >::type cast() const
{
return typename ei_cast_return_type<Hyperplane,
Hyperplane<NewScalarType,AmbientDimAtCompileTime> >::type(*this);
}
/** Copy constructor with scalar type conversion */
template<typename OtherScalarType>
inline explicit Hyperplane(const Hyperplane<OtherScalarType,AmbientDimAtCompileTime>& other)
{ m_coeffs = other.coeffs().template cast<Scalar>(); }
/** \returns \c true if \c *this is approximately equal to \a other, within the precision
* determined by \a prec.
*
* \sa MatrixBase::isApprox() */
bool isApprox(const Hyperplane& other, typename NumTraits<Scalar>::Real prec = precision<Scalar>()) const
{ return m_coeffs.isApprox(other.m_coeffs, prec); }
protected:
Coefficients m_coeffs;
};
#endif // EIGEN_HYPERPLANE_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_ORTHOMETHODS_H
#define EIGEN_ORTHOMETHODS_H
/** \geometry_module
*
* \returns the cross product of \c *this and \a other
*
* Here is a very good explanation of cross-product: http://xkcd.com/199/
*/
template<typename Derived>
template<typename OtherDerived>
inline typename MatrixBase<Derived>::PlainMatrixType
MatrixBase<Derived>::cross(const MatrixBase<OtherDerived>& other) const
{
EIGEN_STATIC_ASSERT_VECTOR_SPECIFIC_SIZE(Derived,3)
// Note that there is no need for an expression here since the compiler
// optimize such a small temporary very well (even within a complex expression)
const typename ei_nested<Derived,2>::type lhs(derived());
const typename ei_nested<OtherDerived,2>::type rhs(other.derived());
return typename ei_plain_matrix_type<Derived>::type(
lhs.coeff(1) * rhs.coeff(2) - lhs.coeff(2) * rhs.coeff(1),
lhs.coeff(2) * rhs.coeff(0) - lhs.coeff(0) * rhs.coeff(2),
lhs.coeff(0) * rhs.coeff(1) - lhs.coeff(1) * rhs.coeff(0)
);
}
template<typename Derived, int Size = Derived::SizeAtCompileTime>
struct ei_unitOrthogonal_selector
{
typedef typename ei_plain_matrix_type<Derived>::type VectorType;
typedef typename ei_traits<Derived>::Scalar Scalar;
typedef typename NumTraits<Scalar>::Real RealScalar;
inline static VectorType run(const Derived& src)
{
VectorType perp(src.size());
/* Let us compute the crossed product of *this with a vector
* that is not too close to being colinear to *this.
*/
/* unless the x and y coords are both close to zero, we can
* simply take ( -y, x, 0 ) and normalize it.
*/
if((!ei_isMuchSmallerThan(src.x(), src.z()))
|| (!ei_isMuchSmallerThan(src.y(), src.z())))
{
RealScalar invnm = RealScalar(1)/src.template start<2>().norm();
perp.coeffRef(0) = -ei_conj(src.y())*invnm;
perp.coeffRef(1) = ei_conj(src.x())*invnm;
perp.coeffRef(2) = 0;
}
/* if both x and y are close to zero, then the vector is close
* to the z-axis, so it's far from colinear to the x-axis for instance.
* So we take the crossed product with (1,0,0) and normalize it.
*/
else
{
RealScalar invnm = RealScalar(1)/src.template end<2>().norm();
perp.coeffRef(0) = 0;
perp.coeffRef(1) = -ei_conj(src.z())*invnm;
perp.coeffRef(2) = ei_conj(src.y())*invnm;
}
if( (Derived::SizeAtCompileTime!=Dynamic && Derived::SizeAtCompileTime>3)
|| (Derived::SizeAtCompileTime==Dynamic && src.size()>3) )
perp.end(src.size()-3).setZero();
return perp;
}
};
template<typename Derived>
struct ei_unitOrthogonal_selector<Derived,2>
{
typedef typename ei_plain_matrix_type<Derived>::type VectorType;
inline static VectorType run(const Derived& src)
{ return VectorType(-ei_conj(src.y()), ei_conj(src.x())).normalized(); }
};
/** \returns a unit vector which is orthogonal to \c *this
*
* The size of \c *this must be at least 2. If the size is exactly 2,
* then the returned vector is a counter clock wise rotation of \c *this, i.e., (-y,x).normalized().
*
* \sa cross()
*/
template<typename Derived>
typename MatrixBase<Derived>::PlainMatrixType
MatrixBase<Derived>::unitOrthogonal() const
{
EIGEN_STATIC_ASSERT_VECTOR_ONLY(Derived)
return ei_unitOrthogonal_selector<Derived>::run(derived());
}
#endif // EIGEN_ORTHOMETHODS_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2008 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_PARAMETRIZEDLINE_H
#define EIGEN_PARAMETRIZEDLINE_H
/** \geometry_module \ingroup Geometry_Module
*
* \class ParametrizedLine
*
* \brief A parametrized line
*
* A parametrized line is defined by an origin point \f$ \mathbf{o} \f$ and a unit
* direction vector \f$ \mathbf{d} \f$ such that the line corresponds to
* the set \f$ l(t) = \mathbf{o} + t \mathbf{d} \f$, \f$ l \in \mathbf{R} \f$.
*
* \param _Scalar the scalar type, i.e., the type of the coefficients
* \param _AmbientDim the dimension of the ambient space, can be a compile time value or Dynamic.
*/
template <typename _Scalar, int _AmbientDim>
class ParametrizedLine
{
public:
EIGEN_MAKE_ALIGNED_OPERATOR_NEW_IF_VECTORIZABLE_FIXED_SIZE(_Scalar,_AmbientDim)
enum { AmbientDimAtCompileTime = _AmbientDim };
typedef _Scalar Scalar;
typedef typename NumTraits<Scalar>::Real RealScalar;
typedef Matrix<Scalar,AmbientDimAtCompileTime,1> VectorType;
/** Default constructor without initialization */
inline explicit ParametrizedLine() {}
/** Constructs a dynamic-size line with \a _dim the dimension
* of the ambient space */
inline explicit ParametrizedLine(int _dim) : m_origin(_dim), m_direction(_dim) {}
/** Initializes a parametrized line of direction \a direction and origin \a origin.
* \warning the vector direction is assumed to be normalized.
*/
ParametrizedLine(const VectorType& origin, const VectorType& direction)
: m_origin(origin), m_direction(direction) {}
explicit ParametrizedLine(const Hyperplane<_Scalar, _AmbientDim>& hyperplane);
/** Constructs a parametrized line going from \a p0 to \a p1. */
static inline ParametrizedLine Through(const VectorType& p0, const VectorType& p1)
{ return ParametrizedLine(p0, (p1-p0).normalized()); }
~ParametrizedLine() {}
/** \returns the dimension in which the line holds */
inline int dim() const { return m_direction.size(); }
const VectorType& origin() const { return m_origin; }
VectorType& origin() { return m_origin; }
const VectorType& direction() const { return m_direction; }
VectorType& direction() { return m_direction; }
/** \returns the squared distance of a point \a p to its projection onto the line \c *this.
* \sa distance()
*/
RealScalar squaredDistance(const VectorType& p) const
{
VectorType diff = p-origin();
return (diff - diff.dot(direction())* direction()).squaredNorm();
}
/** \returns the distance of a point \a p to its projection onto the line \c *this.
* \sa squaredDistance()
*/
RealScalar distance(const VectorType& p) const { return ei_sqrt(squaredDistance(p)); }
/** \returns the projection of a point \a p onto the line \c *this. */
VectorType projection(const VectorType& p) const
{ return origin() + (p-origin()).dot(direction()) * direction(); }
Scalar intersection(const Hyperplane<_Scalar, _AmbientDim>& hyperplane);
/** \returns \c *this with scalar type casted to \a NewScalarType
*
* Note that if \a NewScalarType is equal to the current scalar type of \c *this
* then this function smartly returns a const reference to \c *this.
*/
template<typename NewScalarType>
inline typename ei_cast_return_type<ParametrizedLine,
ParametrizedLine<NewScalarType,AmbientDimAtCompileTime> >::type cast() const
{
return typename ei_cast_return_type<ParametrizedLine,
ParametrizedLine<NewScalarType,AmbientDimAtCompileTime> >::type(*this);
}
/** Copy constructor with scalar type conversion */
template<typename OtherScalarType>
inline explicit ParametrizedLine(const ParametrizedLine<OtherScalarType,AmbientDimAtCompileTime>& other)
{
m_origin = other.origin().template cast<Scalar>();
m_direction = other.direction().template cast<Scalar>();
}
/** \returns \c true if \c *this is approximately equal to \a other, within the precision
* determined by \a prec.
*
* \sa MatrixBase::isApprox() */
bool isApprox(const ParametrizedLine& other, typename NumTraits<Scalar>::Real prec = precision<Scalar>()) const
{ return m_origin.isApprox(other.m_origin, prec) && m_direction.isApprox(other.m_direction, prec); }
protected:
VectorType m_origin, m_direction;
};
/** Constructs a parametrized line from a 2D hyperplane
*
* \warning the ambient space must have dimension 2 such that the hyperplane actually describes a line
*/
template <typename _Scalar, int _AmbientDim>
inline ParametrizedLine<_Scalar, _AmbientDim>::ParametrizedLine(const Hyperplane<_Scalar, _AmbientDim>& hyperplane)
{
EIGEN_STATIC_ASSERT_VECTOR_SPECIFIC_SIZE(VectorType, 2)
direction() = hyperplane.normal().unitOrthogonal();
origin() = -hyperplane.normal()*hyperplane.offset();
}
/** \returns the parameter value of the intersection between \c *this and the given hyperplane
*/
template <typename _Scalar, int _AmbientDim>
inline _Scalar ParametrizedLine<_Scalar, _AmbientDim>::intersection(const Hyperplane<_Scalar, _AmbientDim>& hyperplane)
{
return -(hyperplane.offset()+origin().dot(hyperplane.normal()))
/(direction().dot(hyperplane.normal()));
}
#endif // EIGEN_PARAMETRIZEDLINE_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_QUATERNION_H
#define EIGEN_QUATERNION_H
template<typename Other,
int OtherRows=Other::RowsAtCompileTime,
int OtherCols=Other::ColsAtCompileTime>
struct ei_quaternion_assign_impl;
/** \geometry_module \ingroup Geometry_Module
*
* \class Quaternion
*
* \brief The quaternion class used to represent 3D orientations and rotations
*
* \param _Scalar the scalar type, i.e., the type of the coefficients
*
* This class represents a quaternion \f$ w+xi+yj+zk \f$ that is a convenient representation of
* orientations and rotations of objects in three dimensions. Compared to other representations
* like Euler angles or 3x3 matrices, quatertions offer the following advantages:
* \li \b compact storage (4 scalars)
* \li \b efficient to compose (28 flops),
* \li \b stable spherical interpolation
*
* The following two typedefs are provided for convenience:
* \li \c Quaternionf for \c float
* \li \c Quaterniond for \c double
*
* \sa class AngleAxis, class Transform
*/
template<typename _Scalar> struct ei_traits<Quaternion<_Scalar> >
{
typedef _Scalar Scalar;
};
template<typename _Scalar>
class Quaternion : public RotationBase<Quaternion<_Scalar>,3>
{
typedef RotationBase<Quaternion<_Scalar>,3> Base;
public:
EIGEN_MAKE_ALIGNED_OPERATOR_NEW_IF_VECTORIZABLE_FIXED_SIZE(_Scalar,4)
using Base::operator*;
/** the scalar type of the coefficients */
typedef _Scalar Scalar;
/** the type of the Coefficients 4-vector */
typedef Matrix<Scalar, 4, 1> Coefficients;
/** the type of a 3D vector */
typedef Matrix<Scalar,3,1> Vector3;
/** the equivalent rotation matrix type */
typedef Matrix<Scalar,3,3> Matrix3;
/** the equivalent angle-axis type */
typedef AngleAxis<Scalar> AngleAxisType;
/** \returns the \c x coefficient */
inline Scalar x() const { return m_coeffs.coeff(0); }
/** \returns the \c y coefficient */
inline Scalar y() const { return m_coeffs.coeff(1); }
/** \returns the \c z coefficient */
inline Scalar z() const { return m_coeffs.coeff(2); }
/** \returns the \c w coefficient */
inline Scalar w() const { return m_coeffs.coeff(3); }
/** \returns a reference to the \c x coefficient */
inline Scalar& x() { return m_coeffs.coeffRef(0); }
/** \returns a reference to the \c y coefficient */
inline Scalar& y() { return m_coeffs.coeffRef(1); }
/** \returns a reference to the \c z coefficient */
inline Scalar& z() { return m_coeffs.coeffRef(2); }
/** \returns a reference to the \c w coefficient */
inline Scalar& w() { return m_coeffs.coeffRef(3); }
/** \returns a read-only vector expression of the imaginary part (x,y,z) */
inline const Block<Coefficients,3,1> vec() const { return m_coeffs.template start<3>(); }
/** \returns a vector expression of the imaginary part (x,y,z) */
inline Block<Coefficients,3,1> vec() { return m_coeffs.template start<3>(); }
/** \returns a read-only vector expression of the coefficients (x,y,z,w) */
inline const Coefficients& coeffs() const { return m_coeffs; }
/** \returns a vector expression of the coefficients (x,y,z,w) */
inline Coefficients& coeffs() { return m_coeffs; }
/** Default constructor leaving the quaternion uninitialized. */
inline Quaternion() {}
/** Constructs and initializes the quaternion \f$ w+xi+yj+zk \f$ from
* its four coefficients \a w, \a x, \a y and \a z.
*
* \warning Note the order of the arguments: the real \a w coefficient first,
* while internally the coefficients are stored in the following order:
* [\c x, \c y, \c z, \c w]
*/
inline Quaternion(Scalar w, Scalar x, Scalar y, Scalar z)
{ m_coeffs << x, y, z, w; }
/** Copy constructor */
inline Quaternion(const Quaternion& other) { m_coeffs = other.m_coeffs; }
/** Constructs and initializes a quaternion from the angle-axis \a aa */
explicit inline Quaternion(const AngleAxisType& aa) { *this = aa; }
/** Constructs and initializes a quaternion from either:
* - a rotation matrix expression,
* - a 4D vector expression representing quaternion coefficients.
* \sa operator=(MatrixBase<Derived>)
*/
template<typename Derived>
explicit inline Quaternion(const MatrixBase<Derived>& other) { *this = other; }
Quaternion& operator=(const Quaternion& other);
Quaternion& operator=(const AngleAxisType& aa);
template<typename Derived>
Quaternion& operator=(const MatrixBase<Derived>& m);
/** \returns a quaternion representing an identity rotation
* \sa MatrixBase::Identity()
*/
inline static Quaternion Identity() { return Quaternion(1, 0, 0, 0); }
/** \sa Quaternion::Identity(), MatrixBase::setIdentity()
*/
inline Quaternion& setIdentity() { m_coeffs << 0, 0, 0, 1; return *this; }
/** \returns the squared norm of the quaternion's coefficients
* \sa Quaternion::norm(), MatrixBase::squaredNorm()
*/
inline Scalar squaredNorm() const { return m_coeffs.squaredNorm(); }
/** \returns the norm of the quaternion's coefficients
* \sa Quaternion::squaredNorm(), MatrixBase::norm()
*/
inline Scalar norm() const { return m_coeffs.norm(); }
/** Normalizes the quaternion \c *this
* \sa normalized(), MatrixBase::normalize() */
inline void normalize() { m_coeffs.normalize(); }
/** \returns a normalized version of \c *this
* \sa normalize(), MatrixBase::normalized() */
inline Quaternion normalized() const { return Quaternion(m_coeffs.normalized()); }
/** \returns the dot product of \c *this and \a other
* Geometrically speaking, the dot product of two unit quaternions
* corresponds to the cosine of half the angle between the two rotations.
* \sa angularDistance()
*/
inline Scalar dot(const Quaternion& other) const { return m_coeffs.dot(other.m_coeffs); }
inline Scalar angularDistance(const Quaternion& other) const;
Matrix3 toRotationMatrix(void) const;
template<typename Derived1, typename Derived2>
Quaternion& setFromTwoVectors(const MatrixBase<Derived1>& a, const MatrixBase<Derived2>& b);
inline Quaternion operator* (const Quaternion& q) const;
inline Quaternion& operator*= (const Quaternion& q);
Quaternion inverse(void) const;
Quaternion conjugate(void) const;
Quaternion slerp(Scalar t, const Quaternion& other) const;
template<typename Derived>
Vector3 operator* (const MatrixBase<Derived>& vec) const;
/** \returns \c *this with scalar type casted to \a NewScalarType
*
* Note that if \a NewScalarType is equal to the current scalar type of \c *this
* then this function smartly returns a const reference to \c *this.
*/
template<typename NewScalarType>
inline typename ei_cast_return_type<Quaternion,Quaternion<NewScalarType> >::type cast() const
{ return typename ei_cast_return_type<Quaternion,Quaternion<NewScalarType> >::type(*this); }
/** Copy constructor with scalar type conversion */
template<typename OtherScalarType>
inline explicit Quaternion(const Quaternion<OtherScalarType>& other)
{ m_coeffs = other.coeffs().template cast<Scalar>(); }
/** \returns \c true if \c *this is approximately equal to \a other, within the precision
* determined by \a prec.
*
* \sa MatrixBase::isApprox() */
bool isApprox(const Quaternion& other, typename NumTraits<Scalar>::Real prec = precision<Scalar>()) const
{ return m_coeffs.isApprox(other.m_coeffs, prec); }
protected:
Coefficients m_coeffs;
};
/** \ingroup Geometry_Module
* single precision quaternion type */
typedef Quaternion<float> Quaternionf;
/** \ingroup Geometry_Module
* double precision quaternion type */
typedef Quaternion<double> Quaterniond;
// Generic Quaternion * Quaternion product
template<int Arch,typename Scalar> inline Quaternion<Scalar>
ei_quaternion_product(const Quaternion<Scalar>& a, const Quaternion<Scalar>& b)
{
return Quaternion<Scalar>
(
a.w() * b.w() - a.x() * b.x() - a.y() * b.y() - a.z() * b.z(),
a.w() * b.x() + a.x() * b.w() + a.y() * b.z() - a.z() * b.y(),
a.w() * b.y() + a.y() * b.w() + a.z() * b.x() - a.x() * b.z(),
a.w() * b.z() + a.z() * b.w() + a.x() * b.y() - a.y() * b.x()
);
}
#ifdef EIGEN_VECTORIZE_SSE
template<> inline Quaternion<float>
ei_quaternion_product<EiArch_SSE,float>(const Quaternion<float>& _a, const Quaternion<float>& _b)
{
const __m128 mask = _mm_castsi128_ps(_mm_setr_epi32(0,0,0,0x80000000));
Quaternion<float> res;
__m128 a = _a.coeffs().packet<Aligned>(0);
__m128 b = _b.coeffs().packet<Aligned>(0);
__m128 flip1 = _mm_xor_ps(_mm_mul_ps(ei_vec4f_swizzle1(a,1,2,0,2),
ei_vec4f_swizzle1(b,2,0,1,2)),mask);
__m128 flip2 = _mm_xor_ps(_mm_mul_ps(ei_vec4f_swizzle1(a,3,3,3,1),
ei_vec4f_swizzle1(b,0,1,2,1)),mask);
ei_pstore(&res.x(),
_mm_add_ps(_mm_sub_ps(_mm_mul_ps(a,ei_vec4f_swizzle1(b,3,3,3,3)),
_mm_mul_ps(ei_vec4f_swizzle1(a,2,0,1,0),
ei_vec4f_swizzle1(b,1,2,0,0))),
_mm_add_ps(flip1,flip2)));
return res;
}
#endif
/** \returns the concatenation of two rotations as a quaternion-quaternion product */
template <typename Scalar>
inline Quaternion<Scalar> Quaternion<Scalar>::operator* (const Quaternion& other) const
{
return ei_quaternion_product<EiArch>(*this,other);
}
/** \sa operator*(Quaternion) */
template <typename Scalar>
inline Quaternion<Scalar>& Quaternion<Scalar>::operator*= (const Quaternion& other)
{
return (*this = *this * other);
}
/** Rotation of a vector by a quaternion.
* \remarks If the quaternion is used to rotate several points (>1)
* then it is much more efficient to first convert it to a 3x3 Matrix.
* Comparison of the operation cost for n transformations:
* - Quaternion: 30n
* - Via a Matrix3: 24 + 15n
*/
template <typename Scalar>
template<typename Derived>
inline typename Quaternion<Scalar>::Vector3
Quaternion<Scalar>::operator* (const MatrixBase<Derived>& v) const
{
// Note that this algorithm comes from the optimization by hand
// of the conversion to a Matrix followed by a Matrix/Vector product.
// It appears to be much faster than the common algorithm found
// in the litterature (30 versus 39 flops). It also requires two
// Vector3 as temporaries.
Vector3 uv;
uv = 2 * this->vec().cross(v);
return v + this->w() * uv + this->vec().cross(uv);
}
template<typename Scalar>
inline Quaternion<Scalar>& Quaternion<Scalar>::operator=(const Quaternion& other)
{
m_coeffs = other.m_coeffs;
return *this;
}
/** Set \c *this from an angle-axis \a aa and returns a reference to \c *this
*/
template<typename Scalar>
inline Quaternion<Scalar>& Quaternion<Scalar>::operator=(const AngleAxisType& aa)
{
Scalar ha = Scalar(0.5)*aa.angle(); // Scalar(0.5) to suppress precision loss warnings
this->w() = ei_cos(ha);
this->vec() = ei_sin(ha) * aa.axis();
return *this;
}
/** Set \c *this from the expression \a xpr:
* - if \a xpr is a 4x1 vector, then \a xpr is assumed to be a quaternion
* - if \a xpr is a 3x3 matrix, then \a xpr is assumed to be rotation matrix
* and \a xpr is converted to a quaternion
*/
template<typename Scalar>
template<typename Derived>
inline Quaternion<Scalar>& Quaternion<Scalar>::operator=(const MatrixBase<Derived>& xpr)
{
ei_quaternion_assign_impl<Derived>::run(*this, xpr.derived());
return *this;
}
/** Convert the quaternion to a 3x3 rotation matrix */
template<typename Scalar>
inline typename Quaternion<Scalar>::Matrix3
Quaternion<Scalar>::toRotationMatrix(void) const
{
// NOTE if inlined, then gcc 4.2 and 4.4 get rid of the temporary (not gcc 4.3 !!)
// if not inlined then the cost of the return by value is huge ~ +35%,
// however, not inlining this function is an order of magnitude slower, so
// it has to be inlined, and so the return by value is not an issue
Matrix3 res;
const Scalar tx = 2*this->x();
const Scalar ty = 2*this->y();
const Scalar tz = 2*this->z();
const Scalar twx = tx*this->w();
const Scalar twy = ty*this->w();
const Scalar twz = tz*this->w();
const Scalar txx = tx*this->x();
const Scalar txy = ty*this->x();
const Scalar txz = tz*this->x();
const Scalar tyy = ty*this->y();
const Scalar tyz = tz*this->y();
const Scalar tzz = tz*this->z();
res.coeffRef(0,0) = 1-(tyy+tzz);
res.coeffRef(0,1) = txy-twz;
res.coeffRef(0,2) = txz+twy;
res.coeffRef(1,0) = txy+twz;
res.coeffRef(1,1) = 1-(txx+tzz);
res.coeffRef(1,2) = tyz-twx;
res.coeffRef(2,0) = txz-twy;
res.coeffRef(2,1) = tyz+twx;
res.coeffRef(2,2) = 1-(txx+tyy);
return res;
}
/** Sets *this to be a quaternion representing a rotation sending the vector \a a to the vector \a b.
*
* \returns a reference to *this.
*
* Note that the two input vectors do \b not have to be normalized.
*/
template<typename Scalar>
template<typename Derived1, typename Derived2>
inline Quaternion<Scalar>& Quaternion<Scalar>::setFromTwoVectors(const MatrixBase<Derived1>& a, const MatrixBase<Derived2>& b)
{
Vector3 v0 = a.normalized();
Vector3 v1 = b.normalized();
Scalar c = v0.dot(v1);
// if dot == 1, vectors are the same
if (ei_isApprox(c,Scalar(1)))
{
// set to identity
this->w() = 1; this->vec().setZero();
return *this;
}
// if dot == -1, vectors are opposites
if (ei_isApprox(c,Scalar(-1)))
{
this->vec() = v0.unitOrthogonal();
this->w() = 0;
return *this;
}
Vector3 axis = v0.cross(v1);
Scalar s = ei_sqrt((Scalar(1)+c)*Scalar(2));
Scalar invs = Scalar(1)/s;
this->vec() = axis * invs;
this->w() = s * Scalar(0.5);
return *this;
}
/** \returns the multiplicative inverse of \c *this
* Note that in most cases, i.e., if you simply want the opposite rotation,
* and/or the quaternion is normalized, then it is enough to use the conjugate.
*
* \sa Quaternion::conjugate()
*/
template <typename Scalar>
inline Quaternion<Scalar> Quaternion<Scalar>::inverse() const
{
// FIXME should this function be called multiplicativeInverse and conjugate() be called inverse() or opposite() ??
Scalar n2 = this->squaredNorm();
if (n2 > 0)
return Quaternion(conjugate().coeffs() / n2);
else
{
// return an invalid result to flag the error
return Quaternion(Coefficients::Zero());
}
}
/** \returns the conjugate of the \c *this which is equal to the multiplicative inverse
* if the quaternion is normalized.
* The conjugate of a quaternion represents the opposite rotation.
*
* \sa Quaternion::inverse()
*/
template <typename Scalar>
inline Quaternion<Scalar> Quaternion<Scalar>::conjugate() const
{
return Quaternion(this->w(),-this->x(),-this->y(),-this->z());
}
/** \returns the angle (in radian) between two rotations
* \sa dot()
*/
template <typename Scalar>
inline Scalar Quaternion<Scalar>::angularDistance(const Quaternion& other) const
{
double d = ei_abs(this->dot(other));
if (d>=1.0)
return 0;
return Scalar(2) * std::acos(d);
}
/** \returns the spherical linear interpolation between the two quaternions
* \c *this and \a other at the parameter \a t
*/
template <typename Scalar>
Quaternion<Scalar> Quaternion<Scalar>::slerp(Scalar t, const Quaternion& other) const
{
static const Scalar one = Scalar(1) - machine_epsilon<Scalar>();
Scalar d = this->dot(other);
Scalar absD = ei_abs(d);
Scalar scale0;
Scalar scale1;
if (absD>=one)
{
scale0 = Scalar(1) - t;
scale1 = t;
}
else
{
// theta is the angle between the 2 quaternions
Scalar theta = std::acos(absD);
Scalar sinTheta = ei_sin(theta);
scale0 = ei_sin( ( Scalar(1) - t ) * theta) / sinTheta;
scale1 = ei_sin( ( t * theta) ) / sinTheta;
if (d<0)
scale1 = -scale1;
}
return Quaternion<Scalar>(scale0 * coeffs() + scale1 * other.coeffs());
}
// set from a rotation matrix
template<typename Other>
struct ei_quaternion_assign_impl<Other,3,3>
{
typedef typename Other::Scalar Scalar;
inline static void run(Quaternion<Scalar>& q, const Other& mat)
{
// This algorithm comes from "Quaternion Calculus and Fast Animation",
// Ken Shoemake, 1987 SIGGRAPH course notes
Scalar t = mat.trace();
if (t > 0)
{
t = ei_sqrt(t + Scalar(1.0));
q.w() = Scalar(0.5)*t;
t = Scalar(0.5)/t;
q.x() = (mat.coeff(2,1) - mat.coeff(1,2)) * t;
q.y() = (mat.coeff(0,2) - mat.coeff(2,0)) * t;
q.z() = (mat.coeff(1,0) - mat.coeff(0,1)) * t;
}
else
{
int i = 0;
if (mat.coeff(1,1) > mat.coeff(0,0))
i = 1;
if (mat.coeff(2,2) > mat.coeff(i,i))
i = 2;
int j = (i+1)%3;
int k = (j+1)%3;
t = ei_sqrt(mat.coeff(i,i)-mat.coeff(j,j)-mat.coeff(k,k) + Scalar(1.0));
q.coeffs().coeffRef(i) = Scalar(0.5) * t;
t = Scalar(0.5)/t;
q.w() = (mat.coeff(k,j)-mat.coeff(j,k))*t;
q.coeffs().coeffRef(j) = (mat.coeff(j,i)+mat.coeff(i,j))*t;
q.coeffs().coeffRef(k) = (mat.coeff(k,i)+mat.coeff(i,k))*t;
}
}
};
// set from a vector of coefficients assumed to be a quaternion
template<typename Other>
struct ei_quaternion_assign_impl<Other,4,1>
{
typedef typename Other::Scalar Scalar;
inline static void run(Quaternion<Scalar>& q, const Other& vec)
{
q.coeffs() = vec;
}
};
#endif // EIGEN_QUATERNION_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_ROTATION2D_H
#define EIGEN_ROTATION2D_H
/** \geometry_module \ingroup Geometry_Module
*
* \class Rotation2D
*
* \brief Represents a rotation/orientation in a 2 dimensional space.
*
* \param _Scalar the scalar type, i.e., the type of the coefficients
*
* This class is equivalent to a single scalar representing a counter clock wise rotation
* as a single angle in radian. It provides some additional features such as the automatic
* conversion from/to a 2x2 rotation matrix. Moreover this class aims to provide a similar
* interface to Quaternion in order to facilitate the writing of generic algorithms
* dealing with rotations.
*
* \sa class Quaternion, class Transform
*/
template<typename _Scalar> struct ei_traits<Rotation2D<_Scalar> >
{
typedef _Scalar Scalar;
};
template<typename _Scalar>
class Rotation2D : public RotationBase<Rotation2D<_Scalar>,2>
{
typedef RotationBase<Rotation2D<_Scalar>,2> Base;
public:
using Base::operator*;
enum { Dim = 2 };
/** the scalar type of the coefficients */
typedef _Scalar Scalar;
typedef Matrix<Scalar,2,1> Vector2;
typedef Matrix<Scalar,2,2> Matrix2;
protected:
Scalar m_angle;
public:
/** Construct a 2D counter clock wise rotation from the angle \a a in radian. */
inline Rotation2D(Scalar a) : m_angle(a) {}
/** \returns the rotation angle */
inline Scalar angle() const { return m_angle; }
/** \returns a read-write reference to the rotation angle */
inline Scalar& angle() { return m_angle; }
/** \returns the inverse rotation */
inline Rotation2D inverse() const { return -m_angle; }
/** Concatenates two rotations */
inline Rotation2D operator*(const Rotation2D& other) const
{ return m_angle + other.m_angle; }
/** Concatenates two rotations */
inline Rotation2D& operator*=(const Rotation2D& other)
{ return m_angle += other.m_angle; return *this; }
/** Applies the rotation to a 2D vector */
Vector2 operator* (const Vector2& vec) const
{ return toRotationMatrix() * vec; }
template<typename Derived>
Rotation2D& fromRotationMatrix(const MatrixBase<Derived>& m);
Matrix2 toRotationMatrix(void) const;
/** \returns the spherical interpolation between \c *this and \a other using
* parameter \a t. It is in fact equivalent to a linear interpolation.
*/
inline Rotation2D slerp(Scalar t, const Rotation2D& other) const
{ return m_angle * (1-t) + other.angle() * t; }
/** \returns \c *this with scalar type casted to \a NewScalarType
*
* Note that if \a NewScalarType is equal to the current scalar type of \c *this
* then this function smartly returns a const reference to \c *this.
*/
template<typename NewScalarType>
inline typename ei_cast_return_type<Rotation2D,Rotation2D<NewScalarType> >::type cast() const
{ return typename ei_cast_return_type<Rotation2D,Rotation2D<NewScalarType> >::type(*this); }
/** Copy constructor with scalar type conversion */
template<typename OtherScalarType>
inline explicit Rotation2D(const Rotation2D<OtherScalarType>& other)
{
m_angle = Scalar(other.angle());
}
/** \returns \c true if \c *this is approximately equal to \a other, within the precision
* determined by \a prec.
*
* \sa MatrixBase::isApprox() */
bool isApprox(const Rotation2D& other, typename NumTraits<Scalar>::Real prec = precision<Scalar>()) const
{ return ei_isApprox(m_angle,other.m_angle, prec); }
};
/** \ingroup Geometry_Module
* single precision 2D rotation type */
typedef Rotation2D<float> Rotation2Df;
/** \ingroup Geometry_Module
* double precision 2D rotation type */
typedef Rotation2D<double> Rotation2Dd;
/** Set \c *this from a 2x2 rotation matrix \a mat.
* In other words, this function extract the rotation angle
* from the rotation matrix.
*/
template<typename Scalar>
template<typename Derived>
Rotation2D<Scalar>& Rotation2D<Scalar>::fromRotationMatrix(const MatrixBase<Derived>& mat)
{
EIGEN_STATIC_ASSERT(Derived::RowsAtCompileTime==2 && Derived::ColsAtCompileTime==2,YOU_MADE_A_PROGRAMMING_MISTAKE)
m_angle = ei_atan2(mat.coeff(1,0), mat.coeff(0,0));
return *this;
}
/** Constructs and \returns an equivalent 2x2 rotation matrix.
*/
template<typename Scalar>
typename Rotation2D<Scalar>::Matrix2
Rotation2D<Scalar>::toRotationMatrix(void) const
{
Scalar sinA = ei_sin(m_angle);
Scalar cosA = ei_cos(m_angle);
return (Matrix2() << cosA, -sinA, sinA, cosA).finished();
}
#endif // EIGEN_ROTATION2D_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_ROTATIONBASE_H
#define EIGEN_ROTATIONBASE_H
// this file aims to contains the various representations of rotation/orientation
// in 2D and 3D space excepted Matrix and Quaternion.
/** \class RotationBase
*
* \brief Common base class for compact rotation representations
*
* \param Derived is the derived type, i.e., a rotation type
* \param _Dim the dimension of the space
*/
template<typename Derived, int _Dim>
class RotationBase
{
public:
enum { Dim = _Dim };
/** the scalar type of the coefficients */
typedef typename ei_traits<Derived>::Scalar Scalar;
/** corresponding linear transformation matrix type */
typedef Matrix<Scalar,Dim,Dim> RotationMatrixType;
inline const Derived& derived() const { return *static_cast<const Derived*>(this); }
inline Derived& derived() { return *static_cast<Derived*>(this); }
/** \returns an equivalent rotation matrix */
inline RotationMatrixType toRotationMatrix() const { return derived().toRotationMatrix(); }
/** \returns the inverse rotation */
inline Derived inverse() const { return derived().inverse(); }
/** \returns the concatenation of the rotation \c *this with a translation \a t */
inline Transform<Scalar,Dim> operator*(const Translation<Scalar,Dim>& t) const
{ return toRotationMatrix() * t; }
/** \returns the concatenation of the rotation \c *this with a scaling \a s */
inline RotationMatrixType operator*(const Scaling<Scalar,Dim>& s) const
{ return toRotationMatrix() * s; }
/** \returns the concatenation of the rotation \c *this with an affine transformation \a t */
inline Transform<Scalar,Dim> operator*(const Transform<Scalar,Dim>& t) const
{ return toRotationMatrix() * t; }
};
/** \geometry_module
*
* Constructs a Dim x Dim rotation matrix from the rotation \a r
*/
template<typename _Scalar, int _Rows, int _Cols, int _Storage, int _MaxRows, int _MaxCols>
template<typename OtherDerived>
Matrix<_Scalar, _Rows, _Cols, _Storage, _MaxRows, _MaxCols>
::Matrix(const RotationBase<OtherDerived,ColsAtCompileTime>& r)
{
EIGEN_STATIC_ASSERT_MATRIX_SPECIFIC_SIZE(Matrix,int(OtherDerived::Dim),int(OtherDerived::Dim))
*this = r.toRotationMatrix();
}
/** \geometry_module
*
* Set a Dim x Dim rotation matrix from the rotation \a r
*/
template<typename _Scalar, int _Rows, int _Cols, int _Storage, int _MaxRows, int _MaxCols>
template<typename OtherDerived>
Matrix<_Scalar, _Rows, _Cols, _Storage, _MaxRows, _MaxCols>&
Matrix<_Scalar, _Rows, _Cols, _Storage, _MaxRows, _MaxCols>
::operator=(const RotationBase<OtherDerived,ColsAtCompileTime>& r)
{
EIGEN_STATIC_ASSERT_MATRIX_SPECIFIC_SIZE(Matrix,int(OtherDerived::Dim),int(OtherDerived::Dim))
return *this = r.toRotationMatrix();
}
/** \internal
*
* Helper function to return an arbitrary rotation object to a rotation matrix.
*
* \param Scalar the numeric type of the matrix coefficients
* \param Dim the dimension of the current space
*
* It returns a Dim x Dim fixed size matrix.
*
* Default specializations are provided for:
* - any scalar type (2D),
* - any matrix expression,
* - any type based on RotationBase (e.g., Quaternion, AngleAxis, Rotation2D)
*
* Currently ei_toRotationMatrix is only used by Transform.
*
* \sa class Transform, class Rotation2D, class Quaternion, class AngleAxis
*/
template<typename Scalar, int Dim>
inline static Matrix<Scalar,2,2> ei_toRotationMatrix(const Scalar& s)
{
EIGEN_STATIC_ASSERT(Dim==2,YOU_MADE_A_PROGRAMMING_MISTAKE)
return Rotation2D<Scalar>(s).toRotationMatrix();
}
template<typename Scalar, int Dim, typename OtherDerived>
inline static Matrix<Scalar,Dim,Dim> ei_toRotationMatrix(const RotationBase<OtherDerived,Dim>& r)
{
return r.toRotationMatrix();
}
template<typename Scalar, int Dim, typename OtherDerived>
inline static const MatrixBase<OtherDerived>& ei_toRotationMatrix(const MatrixBase<OtherDerived>& mat)
{
EIGEN_STATIC_ASSERT(OtherDerived::RowsAtCompileTime==Dim && OtherDerived::ColsAtCompileTime==Dim,
YOU_MADE_A_PROGRAMMING_MISTAKE)
return mat;
}
#endif // EIGEN_ROTATIONBASE_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_SCALING_H
#define EIGEN_SCALING_H
/** \geometry_module \ingroup Geometry_Module
*
* \class Scaling
*
* \brief Represents a possibly non uniform scaling transformation
*
* \param _Scalar the scalar type, i.e., the type of the coefficients.
* \param _Dim the dimension of the space, can be a compile time value or Dynamic
*
* \note This class is not aimed to be used to store a scaling transformation,
* but rather to make easier the constructions and updates of Transform objects.
*
* \sa class Translation, class Transform
*/
template<typename _Scalar, int _Dim>
class Scaling
{
public:
EIGEN_MAKE_ALIGNED_OPERATOR_NEW_IF_VECTORIZABLE_FIXED_SIZE(_Scalar,_Dim)
/** dimension of the space */
enum { Dim = _Dim };
/** the scalar type of the coefficients */
typedef _Scalar Scalar;
/** corresponding vector type */
typedef Matrix<Scalar,Dim,1> VectorType;
/** corresponding linear transformation matrix type */
typedef Matrix<Scalar,Dim,Dim> LinearMatrixType;
/** corresponding translation type */
typedef Translation<Scalar,Dim> TranslationType;
/** corresponding affine transformation type */
typedef Transform<Scalar,Dim> TransformType;
protected:
VectorType m_coeffs;
public:
/** Default constructor without initialization. */
Scaling() {}
/** Constructs and initialize a uniform scaling transformation */
explicit inline Scaling(const Scalar& s) { m_coeffs.setConstant(s); }
/** 2D only */
inline Scaling(const Scalar& sx, const Scalar& sy)
{
ei_assert(Dim==2);
m_coeffs.x() = sx;
m_coeffs.y() = sy;
}
/** 3D only */
inline Scaling(const Scalar& sx, const Scalar& sy, const Scalar& sz)
{
ei_assert(Dim==3);
m_coeffs.x() = sx;
m_coeffs.y() = sy;
m_coeffs.z() = sz;
}
/** Constructs and initialize the scaling transformation from a vector of scaling coefficients */
explicit inline Scaling(const VectorType& coeffs) : m_coeffs(coeffs) {}
const VectorType& coeffs() const { return m_coeffs; }
VectorType& coeffs() { return m_coeffs; }
/** Concatenates two scaling */
inline Scaling operator* (const Scaling& other) const
{ return Scaling(coeffs().cwise() * other.coeffs()); }
/** Concatenates a scaling and a translation */
inline TransformType operator* (const TranslationType& t) const;
/** Concatenates a scaling and an affine transformation */
inline TransformType operator* (const TransformType& t) const;
/** Concatenates a scaling and a linear transformation matrix */
// TODO returns an expression
inline LinearMatrixType operator* (const LinearMatrixType& other) const
{ return coeffs().asDiagonal() * other; }
/** Concatenates a linear transformation matrix and a scaling */
// TODO returns an expression
friend inline LinearMatrixType operator* (const LinearMatrixType& other, const Scaling& s)
{ return other * s.coeffs().asDiagonal(); }
template<typename Derived>
inline LinearMatrixType operator*(const RotationBase<Derived,Dim>& r) const
{ return *this * r.toRotationMatrix(); }
/** Applies scaling to vector */
inline VectorType operator* (const VectorType& other) const
{ return coeffs().asDiagonal() * other; }
/** \returns the inverse scaling */
inline Scaling inverse() const
{ return Scaling(coeffs().cwise().inverse()); }
inline Scaling& operator=(const Scaling& other)
{
m_coeffs = other.m_coeffs;
return *this;
}
/** \returns \c *this with scalar type casted to \a NewScalarType
*
* Note that if \a NewScalarType is equal to the current scalar type of \c *this
* then this function smartly returns a const reference to \c *this.
*/
template<typename NewScalarType>
inline typename ei_cast_return_type<Scaling,Scaling<NewScalarType,Dim> >::type cast() const
{ return typename ei_cast_return_type<Scaling,Scaling<NewScalarType,Dim> >::type(*this); }
/** Copy constructor with scalar type conversion */
template<typename OtherScalarType>
inline explicit Scaling(const Scaling<OtherScalarType,Dim>& other)
{ m_coeffs = other.coeffs().template cast<Scalar>(); }
/** \returns \c true if \c *this is approximately equal to \a other, within the precision
* determined by \a prec.
*
* \sa MatrixBase::isApprox() */
bool isApprox(const Scaling& other, typename NumTraits<Scalar>::Real prec = precision<Scalar>()) const
{ return m_coeffs.isApprox(other.m_coeffs, prec); }
};
/** \addtogroup Geometry_Module */
//@{
typedef Scaling<float, 2> Scaling2f;
typedef Scaling<double,2> Scaling2d;
typedef Scaling<float, 3> Scaling3f;
typedef Scaling<double,3> Scaling3d;
//@}
template<typename Scalar, int Dim>
inline typename Scaling<Scalar,Dim>::TransformType
Scaling<Scalar,Dim>::operator* (const TranslationType& t) const
{
TransformType res;
res.matrix().setZero();
res.linear().diagonal() = coeffs();
res.translation() = m_coeffs.cwise() * t.vector();
res(Dim,Dim) = Scalar(1);
return res;
}
template<typename Scalar, int Dim>
inline typename Scaling<Scalar,Dim>::TransformType
Scaling<Scalar,Dim>::operator* (const TransformType& t) const
{
TransformType res = t;
res.prescale(m_coeffs);
return res;
}
#endif // EIGEN_SCALING_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
// Copyright (C) 2009 Benoit Jacob <jacob.benoit.1@gmail.com>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_TRANSFORM_H
#define EIGEN_TRANSFORM_H
/** Represents some traits of a transformation */
enum TransformTraits {
Isometry, ///< the transformation is a concatenation of translations and rotations
Affine, ///< the transformation is affine (linear transformation + translation)
Projective ///< the transformation might not be affine
};
// Note that we have to pass Dim and HDim because it is not allowed to use a template
// parameter to define a template specialization. To be more precise, in the following
// specializations, it is not allowed to use Dim+1 instead of HDim.
template< typename Other,
int Dim,
int HDim,
int OtherRows=Other::RowsAtCompileTime,
int OtherCols=Other::ColsAtCompileTime>
struct ei_transform_product_impl;
/** \geometry_module \ingroup Geometry_Module
*
* \class Transform
*
* \brief Represents an homogeneous transformation in a N dimensional space
*
* \param _Scalar the scalar type, i.e., the type of the coefficients
* \param _Dim the dimension of the space
*
* The homography is internally represented and stored as a (Dim+1)^2 matrix which
* is available through the matrix() method.
*
* Conversion methods from/to Qt's QMatrix and QTransform are available if the
* preprocessor token EIGEN_QT_SUPPORT is defined.
*
* \sa class Matrix, class Quaternion
*/
template<typename _Scalar, int _Dim>
class Transform
{
public:
EIGEN_MAKE_ALIGNED_OPERATOR_NEW_IF_VECTORIZABLE_FIXED_SIZE(_Scalar,_Dim==Dynamic ? Dynamic : (_Dim+1)*(_Dim+1))
enum {
Dim = _Dim, ///< space dimension in which the transformation holds
HDim = _Dim+1 ///< size of a respective homogeneous vector
};
/** the scalar type of the coefficients */
typedef _Scalar Scalar;
/** type of the matrix used to represent the transformation */
typedef Matrix<Scalar,HDim,HDim> MatrixType;
/** type of the matrix used to represent the linear part of the transformation */
typedef Matrix<Scalar,Dim,Dim> LinearMatrixType;
/** type of read/write reference to the linear part of the transformation */
typedef Block<MatrixType,Dim,Dim> LinearPart;
/** type of a vector */
typedef Matrix<Scalar,Dim,1> VectorType;
/** type of a read/write reference to the translation part of the rotation */
typedef Block<MatrixType,Dim,1> TranslationPart;
/** corresponding translation type */
typedef Translation<Scalar,Dim> TranslationType;
/** corresponding scaling transformation type */
typedef Scaling<Scalar,Dim> ScalingType;
protected:
MatrixType m_matrix;
public:
/** Default constructor without initialization of the coefficients. */
inline Transform() { }
inline Transform(const Transform& other)
{
m_matrix = other.m_matrix;
}
inline explicit Transform(const TranslationType& t) { *this = t; }
inline explicit Transform(const ScalingType& s) { *this = s; }
template<typename Derived>
inline explicit Transform(const RotationBase<Derived, Dim>& r) { *this = r; }
inline Transform& operator=(const Transform& other)
{ m_matrix = other.m_matrix; return *this; }
template<typename OtherDerived, bool BigMatrix> // MSVC 2005 will commit suicide if BigMatrix has a default value
struct construct_from_matrix
{
static inline void run(Transform *transform, const MatrixBase<OtherDerived>& other)
{
transform->matrix() = other;
}
};
template<typename OtherDerived> struct construct_from_matrix<OtherDerived, true>
{
static inline void run(Transform *transform, const MatrixBase<OtherDerived>& other)
{
transform->linear() = other;
transform->translation().setZero();
transform->matrix()(Dim,Dim) = Scalar(1);
transform->matrix().template block<1,Dim>(Dim,0).setZero();
}
};
/** Constructs and initializes a transformation from a Dim^2 or a (Dim+1)^2 matrix. */
template<typename OtherDerived>
inline explicit Transform(const MatrixBase<OtherDerived>& other)
{
construct_from_matrix<OtherDerived, int(OtherDerived::RowsAtCompileTime) == Dim>::run(this, other);
}
/** Set \c *this from a (Dim+1)^2 matrix. */
template<typename OtherDerived>
inline Transform& operator=(const MatrixBase<OtherDerived>& other)
{ m_matrix = other; return *this; }
#ifdef EIGEN_QT_SUPPORT
inline Transform(const QMatrix& other);
inline Transform& operator=(const QMatrix& other);
inline QMatrix toQMatrix(void) const;
inline Transform(const QTransform& other);
inline Transform& operator=(const QTransform& other);
inline QTransform toQTransform(void) const;
#endif
/** shortcut for m_matrix(row,col);
* \sa MatrixBase::operaror(int,int) const */
inline Scalar operator() (int row, int col) const { return m_matrix(row,col); }
/** shortcut for m_matrix(row,col);
* \sa MatrixBase::operaror(int,int) */
inline Scalar& operator() (int row, int col) { return m_matrix(row,col); }
/** \returns a read-only expression of the transformation matrix */
inline const MatrixType& matrix() const { return m_matrix; }
/** \returns a writable expression of the transformation matrix */
inline MatrixType& matrix() { return m_matrix; }
/** \returns a read-only expression of the linear (linear) part of the transformation */
inline const LinearPart linear() const { return m_matrix.template block<Dim,Dim>(0,0); }
/** \returns a writable expression of the linear (linear) part of the transformation */
inline LinearPart linear() { return m_matrix.template block<Dim,Dim>(0,0); }
/** \returns a read-only expression of the translation vector of the transformation */
inline const TranslationPart translation() const { return m_matrix.template block<Dim,1>(0,Dim); }
/** \returns a writable expression of the translation vector of the transformation */
inline TranslationPart translation() { return m_matrix.template block<Dim,1>(0,Dim); }
/** \returns an expression of the product between the transform \c *this and a matrix expression \a other
*
* The right hand side \a other might be either:
* \li a vector of size Dim,
* \li an homogeneous vector of size Dim+1,
* \li a transformation matrix of size Dim+1 x Dim+1.
*/
// note: this function is defined here because some compilers cannot find the respective declaration
template<typename OtherDerived>
inline const typename ei_transform_product_impl<OtherDerived,_Dim,_Dim+1>::ResultType
operator * (const MatrixBase<OtherDerived> &other) const
{ return ei_transform_product_impl<OtherDerived,Dim,HDim>::run(*this,other.derived()); }
/** \returns the product expression of a transformation matrix \a a times a transform \a b
* The transformation matrix \a a must have a Dim+1 x Dim+1 sizes. */
template<typename OtherDerived>
friend inline const typename ProductReturnType<OtherDerived,MatrixType>::Type
operator * (const MatrixBase<OtherDerived> &a, const Transform &b)
{ return a.derived() * b.matrix(); }
/** Contatenates two transformations */
inline const Transform
operator * (const Transform& other) const
{ return Transform(m_matrix * other.matrix()); }
/** \sa MatrixBase::setIdentity() */
void setIdentity() { m_matrix.setIdentity(); }
static const typename MatrixType::IdentityReturnType Identity()
{
return MatrixType::Identity();
}
template<typename OtherDerived>
inline Transform& scale(const MatrixBase<OtherDerived> &other);
template<typename OtherDerived>
inline Transform& prescale(const MatrixBase<OtherDerived> &other);
inline Transform& scale(Scalar s);
inline Transform& prescale(Scalar s);
template<typename OtherDerived>
inline Transform& translate(const MatrixBase<OtherDerived> &other);
template<typename OtherDerived>
inline Transform& pretranslate(const MatrixBase<OtherDerived> &other);
template<typename RotationType>
inline Transform& rotate(const RotationType& rotation);
template<typename RotationType>
inline Transform& prerotate(const RotationType& rotation);
Transform& shear(Scalar sx, Scalar sy);
Transform& preshear(Scalar sx, Scalar sy);
inline Transform& operator=(const TranslationType& t);
inline Transform& operator*=(const TranslationType& t) { return translate(t.vector()); }
inline Transform operator*(const TranslationType& t) const;
inline Transform& operator=(const ScalingType& t);
inline Transform& operator*=(const ScalingType& s) { return scale(s.coeffs()); }
inline Transform operator*(const ScalingType& s) const;
friend inline Transform operator*(const LinearMatrixType& mat, const Transform& t)
{
Transform res = t;
res.matrix().row(Dim) = t.matrix().row(Dim);
res.matrix().template block<Dim,HDim>(0,0) = (mat * t.matrix().template block<Dim,HDim>(0,0)).lazy();
return res;
}
template<typename Derived>
inline Transform& operator=(const RotationBase<Derived,Dim>& r);
template<typename Derived>
inline Transform& operator*=(const RotationBase<Derived,Dim>& r) { return rotate(r.toRotationMatrix()); }
template<typename Derived>
inline Transform operator*(const RotationBase<Derived,Dim>& r) const;
LinearMatrixType rotation() const;
template<typename RotationMatrixType, typename ScalingMatrixType>
void computeRotationScaling(RotationMatrixType *rotation, ScalingMatrixType *scaling) const;
template<typename ScalingMatrixType, typename RotationMatrixType>
void computeScalingRotation(ScalingMatrixType *scaling, RotationMatrixType *rotation) const;
template<typename PositionDerived, typename OrientationType, typename ScaleDerived>
Transform& fromPositionOrientationScale(const MatrixBase<PositionDerived> &position,
const OrientationType& orientation, const MatrixBase<ScaleDerived> &scale);
inline const MatrixType inverse(TransformTraits traits = Affine) const;
/** \returns a const pointer to the column major internal matrix */
const Scalar* data() const { return m_matrix.data(); }
/** \returns a non-const pointer to the column major internal matrix */
Scalar* data() { return m_matrix.data(); }
/** \returns \c *this with scalar type casted to \a NewScalarType
*
* Note that if \a NewScalarType is equal to the current scalar type of \c *this
* then this function smartly returns a const reference to \c *this.
*/
template<typename NewScalarType>
inline typename ei_cast_return_type<Transform,Transform<NewScalarType,Dim> >::type cast() const
{ return typename ei_cast_return_type<Transform,Transform<NewScalarType,Dim> >::type(*this); }
/** Copy constructor with scalar type conversion */
template<typename OtherScalarType>
inline explicit Transform(const Transform<OtherScalarType,Dim>& other)
{ m_matrix = other.matrix().template cast<Scalar>(); }
/** \returns \c true if \c *this is approximately equal to \a other, within the precision
* determined by \a prec.
*
* \sa MatrixBase::isApprox() */
bool isApprox(const Transform& other, typename NumTraits<Scalar>::Real prec = precision<Scalar>()) const
{ return m_matrix.isApprox(other.m_matrix, prec); }
#ifdef EIGEN_TRANSFORM_PLUGIN
#include EIGEN_TRANSFORM_PLUGIN
#endif
protected:
};
/** \ingroup Geometry_Module */
typedef Transform<float,2> Transform2f;
/** \ingroup Geometry_Module */
typedef Transform<float,3> Transform3f;
/** \ingroup Geometry_Module */
typedef Transform<double,2> Transform2d;
/** \ingroup Geometry_Module */
typedef Transform<double,3> Transform3d;
/**************************
*** Optional QT support ***
**************************/
#ifdef EIGEN_QT_SUPPORT
/** Initialises \c *this from a QMatrix assuming the dimension is 2.
*
* This function is available only if the token EIGEN_QT_SUPPORT is defined.
*/
template<typename Scalar, int Dim>
Transform<Scalar,Dim>::Transform(const QMatrix& other)
{
*this = other;
}
/** Set \c *this from a QMatrix assuming the dimension is 2.
*
* This function is available only if the token EIGEN_QT_SUPPORT is defined.
*/
template<typename Scalar, int Dim>
Transform<Scalar,Dim>& Transform<Scalar,Dim>::operator=(const QMatrix& other)
{
EIGEN_STATIC_ASSERT(Dim==2, YOU_MADE_A_PROGRAMMING_MISTAKE)
m_matrix << other.m11(), other.m21(), other.dx(),
other.m12(), other.m22(), other.dy(),
0, 0, 1;
return *this;
}
/** \returns a QMatrix from \c *this assuming the dimension is 2.
*
* \warning this convertion might loss data if \c *this is not affine
*
* This function is available only if the token EIGEN_QT_SUPPORT is defined.
*/
template<typename Scalar, int Dim>
QMatrix Transform<Scalar,Dim>::toQMatrix(void) const
{
EIGEN_STATIC_ASSERT(Dim==2, YOU_MADE_A_PROGRAMMING_MISTAKE)
return QMatrix(m_matrix.coeff(0,0), m_matrix.coeff(1,0),
m_matrix.coeff(0,1), m_matrix.coeff(1,1),
m_matrix.coeff(0,2), m_matrix.coeff(1,2));
}
/** Initialises \c *this from a QTransform assuming the dimension is 2.
*
* This function is available only if the token EIGEN_QT_SUPPORT is defined.
*/
template<typename Scalar, int Dim>
Transform<Scalar,Dim>::Transform(const QTransform& other)
{
*this = other;
}
/** Set \c *this from a QTransform assuming the dimension is 2.
*
* This function is available only if the token EIGEN_QT_SUPPORT is defined.
*/
template<typename Scalar, int Dim>
Transform<Scalar,Dim>& Transform<Scalar,Dim>::operator=(const QTransform& other)
{
EIGEN_STATIC_ASSERT(Dim==2, YOU_MADE_A_PROGRAMMING_MISTAKE)
m_matrix << other.m11(), other.m21(), other.dx(),
other.m12(), other.m22(), other.dy(),
other.m13(), other.m23(), other.m33();
return *this;
}
/** \returns a QTransform from \c *this assuming the dimension is 2.
*
* This function is available only if the token EIGEN_QT_SUPPORT is defined.
*/
template<typename Scalar, int Dim>
QTransform Transform<Scalar,Dim>::toQTransform(void) const
{
EIGEN_STATIC_ASSERT(Dim==2, YOU_MADE_A_PROGRAMMING_MISTAKE)
return QTransform(m_matrix.coeff(0,0), m_matrix.coeff(1,0), m_matrix.coeff(2,0),
m_matrix.coeff(0,1), m_matrix.coeff(1,1), m_matrix.coeff(2,1),
m_matrix.coeff(0,2), m_matrix.coeff(1,2), m_matrix.coeff(2,2));
}
#endif
/*********************
*** Procedural API ***
*********************/
/** Applies on the right the non uniform scale transformation represented
* by the vector \a other to \c *this and returns a reference to \c *this.
* \sa prescale()
*/
template<typename Scalar, int Dim>
template<typename OtherDerived>
Transform<Scalar,Dim>&
Transform<Scalar,Dim>::scale(const MatrixBase<OtherDerived> &other)
{
EIGEN_STATIC_ASSERT_VECTOR_SPECIFIC_SIZE(OtherDerived,int(Dim))
linear() = (linear() * other.asDiagonal()).lazy();
return *this;
}
/** Applies on the right a uniform scale of a factor \a c to \c *this
* and returns a reference to \c *this.
* \sa prescale(Scalar)
*/
template<typename Scalar, int Dim>
inline Transform<Scalar,Dim>& Transform<Scalar,Dim>::scale(Scalar s)
{
linear() *= s;
return *this;
}
/** Applies on the left the non uniform scale transformation represented
* by the vector \a other to \c *this and returns a reference to \c *this.
* \sa scale()
*/
template<typename Scalar, int Dim>
template<typename OtherDerived>
Transform<Scalar,Dim>&
Transform<Scalar,Dim>::prescale(const MatrixBase<OtherDerived> &other)
{
EIGEN_STATIC_ASSERT_VECTOR_SPECIFIC_SIZE(OtherDerived,int(Dim))
m_matrix.template block<Dim,HDim>(0,0) = (other.asDiagonal() * m_matrix.template block<Dim,HDim>(0,0)).lazy();
return *this;
}
/** Applies on the left a uniform scale of a factor \a c to \c *this
* and returns a reference to \c *this.
* \sa scale(Scalar)
*/
template<typename Scalar, int Dim>
inline Transform<Scalar,Dim>& Transform<Scalar,Dim>::prescale(Scalar s)
{
m_matrix.template corner<Dim,HDim>(TopLeft) *= s;
return *this;
}
/** Applies on the right the translation matrix represented by the vector \a other
* to \c *this and returns a reference to \c *this.
* \sa pretranslate()
*/
template<typename Scalar, int Dim>
template<typename OtherDerived>
Transform<Scalar,Dim>&
Transform<Scalar,Dim>::translate(const MatrixBase<OtherDerived> &other)
{
EIGEN_STATIC_ASSERT_VECTOR_SPECIFIC_SIZE(OtherDerived,int(Dim))
translation() += linear() * other;
return *this;
}
/** Applies on the left the translation matrix represented by the vector \a other
* to \c *this and returns a reference to \c *this.
* \sa translate()
*/
template<typename Scalar, int Dim>
template<typename OtherDerived>
Transform<Scalar,Dim>&
Transform<Scalar,Dim>::pretranslate(const MatrixBase<OtherDerived> &other)
{
EIGEN_STATIC_ASSERT_VECTOR_SPECIFIC_SIZE(OtherDerived,int(Dim))
translation() += other;
return *this;
}
/** Applies on the right the rotation represented by the rotation \a rotation
* to \c *this and returns a reference to \c *this.
*
* The template parameter \a RotationType is the type of the rotation which
* must be known by ei_toRotationMatrix<>.
*
* Natively supported types includes:
* - any scalar (2D),
* - a Dim x Dim matrix expression,
* - a Quaternion (3D),
* - a AngleAxis (3D)
*
* This mechanism is easily extendable to support user types such as Euler angles,
* or a pair of Quaternion for 4D rotations.
*
* \sa rotate(Scalar), class Quaternion, class AngleAxis, prerotate(RotationType)
*/
template<typename Scalar, int Dim>
template<typename RotationType>
Transform<Scalar,Dim>&
Transform<Scalar,Dim>::rotate(const RotationType& rotation)
{
linear() *= ei_toRotationMatrix<Scalar,Dim>(rotation);
return *this;
}
/** Applies on the left the rotation represented by the rotation \a rotation
* to \c *this and returns a reference to \c *this.
*
* See rotate() for further details.
*
* \sa rotate()
*/
template<typename Scalar, int Dim>
template<typename RotationType>
Transform<Scalar,Dim>&
Transform<Scalar,Dim>::prerotate(const RotationType& rotation)
{
m_matrix.template block<Dim,HDim>(0,0) = ei_toRotationMatrix<Scalar,Dim>(rotation)
* m_matrix.template block<Dim,HDim>(0,0);
return *this;
}
/** Applies on the right the shear transformation represented
* by the vector \a other to \c *this and returns a reference to \c *this.
* \warning 2D only.
* \sa preshear()
*/
template<typename Scalar, int Dim>
Transform<Scalar,Dim>&
Transform<Scalar,Dim>::shear(Scalar sx, Scalar sy)
{
EIGEN_STATIC_ASSERT(int(Dim)==2, YOU_MADE_A_PROGRAMMING_MISTAKE)
VectorType tmp = linear().col(0)*sy + linear().col(1);
linear() << linear().col(0) + linear().col(1)*sx, tmp;
return *this;
}
/** Applies on the left the shear transformation represented
* by the vector \a other to \c *this and returns a reference to \c *this.
* \warning 2D only.
* \sa shear()
*/
template<typename Scalar, int Dim>
Transform<Scalar,Dim>&
Transform<Scalar,Dim>::preshear(Scalar sx, Scalar sy)
{
EIGEN_STATIC_ASSERT(int(Dim)==2, YOU_MADE_A_PROGRAMMING_MISTAKE)
m_matrix.template block<Dim,HDim>(0,0) = LinearMatrixType(1, sx, sy, 1) * m_matrix.template block<Dim,HDim>(0,0);
return *this;
}
/******************************************************
*** Scaling, Translation and Rotation compatibility ***
******************************************************/
template<typename Scalar, int Dim>
inline Transform<Scalar,Dim>& Transform<Scalar,Dim>::operator=(const TranslationType& t)
{
linear().setIdentity();
translation() = t.vector();
m_matrix.template block<1,Dim>(Dim,0).setZero();
m_matrix(Dim,Dim) = Scalar(1);
return *this;
}
template<typename Scalar, int Dim>
inline Transform<Scalar,Dim> Transform<Scalar,Dim>::operator*(const TranslationType& t) const
{
Transform res = *this;
res.translate(t.vector());
return res;
}
template<typename Scalar, int Dim>
inline Transform<Scalar,Dim>& Transform<Scalar,Dim>::operator=(const ScalingType& s)
{
m_matrix.setZero();
linear().diagonal() = s.coeffs();
m_matrix.coeffRef(Dim,Dim) = Scalar(1);
return *this;
}
template<typename Scalar, int Dim>
inline Transform<Scalar,Dim> Transform<Scalar,Dim>::operator*(const ScalingType& s) const
{
Transform res = *this;
res.scale(s.coeffs());
return res;
}
template<typename Scalar, int Dim>
template<typename Derived>
inline Transform<Scalar,Dim>& Transform<Scalar,Dim>::operator=(const RotationBase<Derived,Dim>& r)
{
linear() = ei_toRotationMatrix<Scalar,Dim>(r);
translation().setZero();
m_matrix.template block<1,Dim>(Dim,0).setZero();
m_matrix.coeffRef(Dim,Dim) = Scalar(1);
return *this;
}
template<typename Scalar, int Dim>
template<typename Derived>
inline Transform<Scalar,Dim> Transform<Scalar,Dim>::operator*(const RotationBase<Derived,Dim>& r) const
{
Transform res = *this;
res.rotate(r.derived());
return res;
}
/************************
*** Special functions ***
************************/
/** \returns the rotation part of the transformation
* \nonstableyet
*
* \svd_module
*
* \sa computeRotationScaling(), computeScalingRotation(), class SVD
*/
template<typename Scalar, int Dim>
typename Transform<Scalar,Dim>::LinearMatrixType
Transform<Scalar,Dim>::rotation() const
{
LinearMatrixType result;
computeRotationScaling(&result, (LinearMatrixType*)0);
return result;
}
/** decomposes the linear part of the transformation as a product rotation x scaling, the scaling being
* not necessarily positive.
*
* If either pointer is zero, the corresponding computation is skipped.
*
* \nonstableyet
*
* \svd_module
*
* \sa computeScalingRotation(), rotation(), class SVD
*/
template<typename Scalar, int Dim>
template<typename RotationMatrixType, typename ScalingMatrixType>
void Transform<Scalar,Dim>::computeRotationScaling(RotationMatrixType *rotation, ScalingMatrixType *scaling) const
{
linear().svd().computeRotationScaling(rotation, scaling);
}
/** decomposes the linear part of the transformation as a product rotation x scaling, the scaling being
* not necessarily positive.
*
* If either pointer is zero, the corresponding computation is skipped.
*
* \nonstableyet
*
* \svd_module
*
* \sa computeRotationScaling(), rotation(), class SVD
*/
template<typename Scalar, int Dim>
template<typename ScalingMatrixType, typename RotationMatrixType>
void Transform<Scalar,Dim>::computeScalingRotation(ScalingMatrixType *scaling, RotationMatrixType *rotation) const
{
linear().svd().computeScalingRotation(scaling, rotation);
}
/** Convenient method to set \c *this from a position, orientation and scale
* of a 3D object.
*/
template<typename Scalar, int Dim>
template<typename PositionDerived, typename OrientationType, typename ScaleDerived>
Transform<Scalar,Dim>&
Transform<Scalar,Dim>::fromPositionOrientationScale(const MatrixBase<PositionDerived> &position,
const OrientationType& orientation, const MatrixBase<ScaleDerived> &scale)
{
linear() = ei_toRotationMatrix<Scalar,Dim>(orientation);
linear() *= scale.asDiagonal();
translation() = position;
m_matrix.template block<1,Dim>(Dim,0).setZero();
m_matrix(Dim,Dim) = Scalar(1);
return *this;
}
/** \nonstableyet
*
* \returns the inverse transformation matrix according to some given knowledge
* on \c *this.
*
* \param traits allows to optimize the inversion process when the transformion
* is known to be not a general transformation. The possible values are:
* - Projective if the transformation is not necessarily affine, i.e., if the
* last row is not guaranteed to be [0 ... 0 1]
* - Affine is the default, the last row is assumed to be [0 ... 0 1]
* - Isometry if the transformation is only a concatenations of translations
* and rotations.
*
* \warning unless \a traits is always set to NoShear or NoScaling, this function
* requires the generic inverse method of MatrixBase defined in the LU module. If
* you forget to include this module, then you will get hard to debug linking errors.
*
* \sa MatrixBase::inverse()
*/
template<typename Scalar, int Dim>
inline const typename Transform<Scalar,Dim>::MatrixType
Transform<Scalar,Dim>::inverse(TransformTraits traits) const
{
if (traits == Projective)
{
return m_matrix.inverse();
}
else
{
MatrixType res;
if (traits == Affine)
{
res.template corner<Dim,Dim>(TopLeft) = linear().inverse();
}
else if (traits == Isometry)
{
res.template corner<Dim,Dim>(TopLeft) = linear().transpose();
}
else
{
ei_assert("invalid traits value in Transform::inverse()");
}
// translation and remaining parts
res.template corner<Dim,1>(TopRight) = - res.template corner<Dim,Dim>(TopLeft) * translation();
res.template corner<1,Dim>(BottomLeft).setZero();
res.coeffRef(Dim,Dim) = Scalar(1);
return res;
}
}
/*****************************************************
*** Specializations of operator* with a MatrixBase ***
*****************************************************/
template<typename Other, int Dim, int HDim>
struct ei_transform_product_impl<Other,Dim,HDim, HDim,HDim>
{
typedef Transform<typename Other::Scalar,Dim> TransformType;
typedef typename TransformType::MatrixType MatrixType;
typedef typename ProductReturnType<MatrixType,Other>::Type ResultType;
static ResultType run(const TransformType& tr, const Other& other)
{ return tr.matrix() * other; }
};
template<typename Other, int Dim, int HDim>
struct ei_transform_product_impl<Other,Dim,HDim, Dim,Dim>
{
typedef Transform<typename Other::Scalar,Dim> TransformType;
typedef typename TransformType::MatrixType MatrixType;
typedef TransformType ResultType;
static ResultType run(const TransformType& tr, const Other& other)
{
TransformType res;
res.translation() = tr.translation();
res.matrix().row(Dim) = tr.matrix().row(Dim);
res.linear() = (tr.linear() * other).lazy();
return res;
}
};
template<typename Other, int Dim, int HDim>
struct ei_transform_product_impl<Other,Dim,HDim, HDim,1>
{
typedef Transform<typename Other::Scalar,Dim> TransformType;
typedef typename TransformType::MatrixType MatrixType;
typedef typename ProductReturnType<MatrixType,Other>::Type ResultType;
static ResultType run(const TransformType& tr, const Other& other)
{ return tr.matrix() * other; }
};
template<typename Other, int Dim, int HDim>
struct ei_transform_product_impl<Other,Dim,HDim, Dim,1>
{
typedef typename Other::Scalar Scalar;
typedef Transform<Scalar,Dim> TransformType;
typedef typename TransformType::LinearPart MatrixType;
typedef const CwiseUnaryOp<
ei_scalar_multiple_op<Scalar>,
NestByValue<CwiseBinaryOp<
ei_scalar_sum_op<Scalar>,
NestByValue<typename ProductReturnType<NestByValue<MatrixType>,Other>::Type >,
NestByValue<typename TransformType::TranslationPart> > >
> ResultType;
// FIXME should we offer an optimized version when the last row is known to be 0,0...,0,1 ?
static ResultType run(const TransformType& tr, const Other& other)
{ return ((tr.linear().nestByValue() * other).nestByValue() + tr.translation().nestByValue()).nestByValue()
* (Scalar(1) / ( (tr.matrix().template block<1,Dim>(Dim,0) * other).coeff(0) + tr.matrix().coeff(Dim,Dim))); }
};
#endif // EIGEN_TRANSFORM_H

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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra. Eigen itself is part of the KDE project.
//
// Copyright (C) 2008 Gael Guennebaud <g.gael@free.fr>
//
// Eigen is free software; you can redistribute it and/or
// modify it under the terms of the GNU Lesser General Public
// License as published by the Free Software Foundation; either
// version 3 of the License, or (at your option) any later version.
//
// Alternatively, you can redistribute it and/or
// modify it under the terms of the GNU General Public License as
// published by the Free Software Foundation; either version 2 of
// the License, or (at your option) any later version.
//
// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY
// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the
// GNU General Public License for more details.
//
// You should have received a copy of the GNU Lesser General Public
// License and a copy of the GNU General Public License along with
// Eigen. If not, see <http://www.gnu.org/licenses/>.
#ifndef EIGEN_TRANSLATION_H
#define EIGEN_TRANSLATION_H
/** \geometry_module \ingroup Geometry_Module
*
* \class Translation
*
* \brief Represents a translation transformation
*
* \param _Scalar the scalar type, i.e., the type of the coefficients.
* \param _Dim the dimension of the space, can be a compile time value or Dynamic
*
* \note This class is not aimed to be used to store a translation transformation,
* but rather to make easier the constructions and updates of Transform objects.
*
* \sa class Scaling, class Transform
*/
template<typename _Scalar, int _Dim>
class Translation
{
public:
EIGEN_MAKE_ALIGNED_OPERATOR_NEW_IF_VECTORIZABLE_FIXED_SIZE(_Scalar,_Dim)
/** dimension of the space */
enum { Dim = _Dim };
/** the scalar type of the coefficients */
typedef _Scalar Scalar;
/** corresponding vector type */
typedef Matrix<Scalar,Dim,1> VectorType;
/** corresponding linear transformation matrix type */
typedef Matrix<Scalar,Dim,Dim> LinearMatrixType;
/** corresponding scaling transformation type */
typedef Scaling<Scalar,Dim> ScalingType;
/** corresponding affine transformation type */
typedef Transform<Scalar,Dim> TransformType;
protected:
VectorType m_coeffs;
public:
/** Default constructor without initialization. */
Translation() {}
/** */
inline Translation(const Scalar& sx, const Scalar& sy)
{
ei_assert(Dim==2);
m_coeffs.x() = sx;
m_coeffs.y() = sy;
}
/** */
inline Translation(const Scalar& sx, const Scalar& sy, const Scalar& sz)
{
ei_assert(Dim==3);
m_coeffs.x() = sx;
m_coeffs.y() = sy;
m_coeffs.z() = sz;
}
/** Constructs and initialize the scaling transformation from a vector of scaling coefficients */
explicit inline Translation(const VectorType& vector) : m_coeffs(vector) {}
const VectorType& vector() const { return m_coeffs; }
VectorType& vector() { return m_coeffs; }
/** Concatenates two translation */
inline Translation operator* (const Translation& other) const
{ return Translation(m_coeffs + other.m_coeffs); }
/** Concatenates a translation and a scaling */
inline TransformType operator* (const ScalingType& other) const;
/** Concatenates a translation and a linear transformation */
inline TransformType operator* (const LinearMatrixType& linear) const;
template<typename Derived>
inline TransformType operator*(const RotationBase<Derived,Dim>& r) const
{ return *this * r.toRotationMatrix(); }
/** Concatenates a linear transformation and a translation */
// its a nightmare to define a templated friend function outside its declaration
friend inline TransformType operator* (const LinearMatrixType& linear, const Translation& t)
{
TransformType res;
res.matrix().setZero();
res.linear() = linear;
res.translation() = linear * t.m_coeffs;
res.matrix().row(Dim).setZero();
res(Dim,Dim) = Scalar(1);
return res;
}
/** Concatenates a translation and an affine transformation */
inline TransformType operator* (const TransformType& t) const;
/** Applies translation to vector */
inline VectorType operator* (const VectorType& other) const
{ return m_coeffs + other; }
/** \returns the inverse translation (opposite) */
Translation inverse() const { return Translation(-m_coeffs); }
Translation& operator=(const Translation& other)
{
m_coeffs = other.m_coeffs;
return *this;
}
/** \returns \c *this with scalar type casted to \a NewScalarType
*
* Note that if \a NewScalarType is equal to the current scalar type of \c *this
* then this function smartly returns a const reference to \c *this.
*/
template<typename NewScalarType>
inline typename ei_cast_return_type<Translation,Translation<NewScalarType,Dim> >::type cast() const
{ return typename ei_cast_return_type<Translation,Translation<NewScalarType,Dim> >::type(*this); }
/** Copy constructor with scalar type conversion */
template<typename OtherScalarType>
inline explicit Translation(const Translation<OtherScalarType,Dim>& other)
{ m_coeffs = other.vector().template cast<Scalar>(); }
/** \returns \c true if \c *this is approximately equal to \a other, within the precision
* determined by \a prec.
*
* \sa MatrixBase::isApprox() */
bool isApprox(const Translation& other, typename NumTraits<Scalar>::Real prec = precision<Scalar>()) const
{ return m_coeffs.isApprox(other.m_coeffs, prec); }
};
/** \addtogroup Geometry_Module */
//@{
typedef Translation<float, 2> Translation2f;
typedef Translation<double,2> Translation2d;
typedef Translation<float, 3> Translation3f;
typedef Translation<double,3> Translation3d;
//@}
template<typename Scalar, int Dim>
inline typename Translation<Scalar,Dim>::TransformType
Translation<Scalar,Dim>::operator* (const ScalingType& other) const
{
TransformType res;
res.matrix().setZero();
res.linear().diagonal() = other.coeffs();
res.translation() = m_coeffs;
res(Dim,Dim) = Scalar(1);
return res;
}
template<typename Scalar, int Dim>
inline typename Translation<Scalar,Dim>::TransformType
Translation<Scalar,Dim>::operator* (const LinearMatrixType& linear) const
{
TransformType res;
res.matrix().setZero();
res.linear() = linear;
res.translation() = m_coeffs;
res.matrix().row(Dim).setZero();
res(Dim,Dim) = Scalar(1);
return res;
}
template<typename Scalar, int Dim>
inline typename Translation<Scalar,Dim>::TransformType
Translation<Scalar,Dim>::operator* (const TransformType& t) const
{
TransformType res = t;
res.pretranslate(m_coeffs);
return res;
}
#endif // EIGEN_TRANSLATION_H

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