blob: bed8f3a2671c12902692425b798ec6fecacbe80f [file] [log] [blame]
Keir Mierle8ebb0732012-04-30 23:09:08 -07001// Ceres Solver - A fast non-linear least squares minimizer
2// Copyright 2010, 2011, 2012 Google Inc. All rights reserved.
3// http://code.google.com/p/ceres-solver/
4//
5// Redistribution and use in source and binary forms, with or without
6// modification, are permitted provided that the following conditions are met:
7//
8// * Redistributions of source code must retain the above copyright notice,
9// this list of conditions and the following disclaimer.
10// * Redistributions in binary form must reproduce the above copyright notice,
11// this list of conditions and the following disclaimer in the documentation
12// and/or other materials provided with the distribution.
13// * Neither the name of Google Inc. nor the names of its contributors may be
14// used to endorse or promote products derived from this software without
15// specific prior written permission.
16//
17// THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS"
18// AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE
19// IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE
20// ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT OWNER OR CONTRIBUTORS BE
21// LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR
22// CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF
23// SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR PROFITS; OR BUSINESS
24// INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN
25// CONTRACT, STRICT LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE)
26// ARISING IN ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF THE
27// POSSIBILITY OF SUCH DAMAGE.
28//
29// Author: sameeragarwal@google.com (Sameer Agarwal)
30
31#include "ceres/schur_eliminator.h"
32
Keir Mierle8ebb0732012-04-30 23:09:08 -070033#include "Eigen/Dense"
34#include "ceres/block_random_access_dense_matrix.h"
35#include "ceres/block_sparse_matrix.h"
36#include "ceres/casts.h"
37#include "ceres/detect_structure.h"
Keir Mierle8ebb0732012-04-30 23:09:08 -070038#include "ceres/internal/eigen.h"
39#include "ceres/internal/scoped_ptr.h"
Sameer Agarwal0beab862012-08-13 15:12:01 -070040#include "ceres/linear_least_squares_problems.h"
Sameer Agarwalc6bbecf2012-08-14 11:16:03 -070041#include "ceres/test_util.h"
Sameer Agarwal0beab862012-08-13 15:12:01 -070042#include "ceres/triplet_sparse_matrix.h"
Keir Mierle8ebb0732012-04-30 23:09:08 -070043#include "ceres/types.h"
Sameer Agarwal0beab862012-08-13 15:12:01 -070044#include "glog/logging.h"
45#include "gtest/gtest.h"
Keir Mierle8ebb0732012-04-30 23:09:08 -070046
47// TODO(sameeragarwal): Reduce the size of these tests and redo the
48// parameterization to be more efficient.
49
Keir Mierle8ebb0732012-04-30 23:09:08 -070050namespace ceres {
51namespace internal {
52
53class SchurEliminatorTest : public ::testing::Test {
54 protected:
55 void SetUpFromId(int id) {
56 scoped_ptr<LinearLeastSquaresProblem>
57 problem(CreateLinearLeastSquaresProblemFromId(id));
58 CHECK_NOTNULL(problem.get());
59 SetupHelper(problem.get());
60 }
61
Keir Mierle8ebb0732012-04-30 23:09:08 -070062 void SetupHelper(LinearLeastSquaresProblem* problem) {
63 A.reset(down_cast<BlockSparseMatrix*>(problem->A.release()));
64 b.reset(problem->b.release());
65 D.reset(problem->D.release());
66
67 num_eliminate_blocks = problem->num_eliminate_blocks;
68 num_eliminate_cols = 0;
69 const CompressedRowBlockStructure* bs = A->block_structure();
70
71 for (int i = 0; i < num_eliminate_blocks; ++i) {
72 num_eliminate_cols += bs->cols[i].size;
73 }
74 }
75
76 // Compute the golden values for the reduced linear system and the
77 // solution to the linear least squares problem using dense linear
78 // algebra.
79 void ComputeReferenceSolution(const Vector& D) {
80 Matrix J;
81 A->ToDenseMatrix(&J);
82 VectorRef f(b.get(), J.rows());
83
84 Matrix H = (D.cwiseProduct(D)).asDiagonal();
85 H.noalias() += J.transpose() * J;
86
87 const Vector g = J.transpose() * f;
88 const int schur_size = J.cols() - num_eliminate_cols;
89
90 lhs_expected.resize(schur_size, schur_size);
91 lhs_expected.setZero();
92
93 rhs_expected.resize(schur_size);
94 rhs_expected.setZero();
95
96 sol_expected.resize(J.cols());
97 sol_expected.setZero();
98
99 Matrix P = H.block(0, 0, num_eliminate_cols, num_eliminate_cols);
100 Matrix Q = H.block(0,
101 num_eliminate_cols,
102 num_eliminate_cols,
103 schur_size);
104 Matrix R = H.block(num_eliminate_cols,
105 num_eliminate_cols,
106 schur_size,
107 schur_size);
108 int row = 0;
109 const CompressedRowBlockStructure* bs = A->block_structure();
110 for (int i = 0; i < num_eliminate_blocks; ++i) {
111 const int block_size = bs->cols[i].size;
112 P.block(row, row, block_size, block_size) =
113 P
114 .block(row, row, block_size, block_size)
Sameer Agarwal080d1d02013-08-12 16:28:37 -0700115 .llt()
Keir Mierle8ebb0732012-04-30 23:09:08 -0700116 .solve(Matrix::Identity(block_size, block_size));
117 row += block_size;
118 }
119
120 lhs_expected
121 .triangularView<Eigen::Upper>() = R - Q.transpose() * P * Q;
122 rhs_expected =
123 g.tail(schur_size) - Q.transpose() * P * g.head(num_eliminate_cols);
Sameer Agarwal080d1d02013-08-12 16:28:37 -0700124 sol_expected = H.llt().solve(g);
Keir Mierle8ebb0732012-04-30 23:09:08 -0700125 }
126
127 void EliminateSolveAndCompare(const VectorRef& diagonal,
128 bool use_static_structure,
129 const double relative_tolerance) {
130 const CompressedRowBlockStructure* bs = A->block_structure();
131 const int num_col_blocks = bs->cols.size();
132 vector<int> blocks(num_col_blocks - num_eliminate_blocks, 0);
133 for (int i = num_eliminate_blocks; i < num_col_blocks; ++i) {
134 blocks[i - num_eliminate_blocks] = bs->cols[i].size;
135 }
136
137 BlockRandomAccessDenseMatrix lhs(blocks);
138
139 const int num_cols = A->num_cols();
140 const int schur_size = lhs.num_rows();
141
142 Vector rhs(schur_size);
143
144 LinearSolver::Options options;
Sameer Agarwal0c52f1e2012-09-17 11:30:14 -0700145 options.elimination_groups.push_back(num_eliminate_blocks);
Keir Mierle8ebb0732012-04-30 23:09:08 -0700146 if (use_static_structure) {
147 DetectStructure(*bs,
Sameer Agarwal0c52f1e2012-09-17 11:30:14 -0700148 num_eliminate_blocks,
Keir Mierle8ebb0732012-04-30 23:09:08 -0700149 &options.row_block_size,
150 &options.e_block_size,
151 &options.f_block_size);
152 }
153
154 scoped_ptr<SchurEliminatorBase> eliminator;
155 eliminator.reset(SchurEliminatorBase::Create(options));
156 eliminator->Init(num_eliminate_blocks, A->block_structure());
157 eliminator->Eliminate(A.get(), b.get(), diagonal.data(), &lhs, rhs.data());
158
159 MatrixRef lhs_ref(lhs.mutable_values(), lhs.num_rows(), lhs.num_cols());
160 Vector reduced_sol =
161 lhs_ref
162 .selfadjointView<Eigen::Upper>()
Sameer Agarwal080d1d02013-08-12 16:28:37 -0700163 .llt()
Keir Mierle8ebb0732012-04-30 23:09:08 -0700164 .solve(rhs);
165
166 // Solution to the linear least squares problem.
167 Vector sol(num_cols);
168 sol.setZero();
169 sol.tail(schur_size) = reduced_sol;
170 eliminator->BackSubstitute(A.get(),
171 b.get(),
172 diagonal.data(),
173 reduced_sol.data(),
174 sol.data());
175
176 Matrix delta = (lhs_ref - lhs_expected).selfadjointView<Eigen::Upper>();
177 double diff = delta.norm();
178 EXPECT_NEAR(diff / lhs_expected.norm(), 0.0, relative_tolerance);
179 EXPECT_NEAR((rhs - rhs_expected).norm() / rhs_expected.norm(), 0.0,
180 relative_tolerance);
181 EXPECT_NEAR((sol - sol_expected).norm() / sol_expected.norm(), 0.0,
182 relative_tolerance);
183 }
184
185 scoped_ptr<BlockSparseMatrix> A;
186 scoped_array<double> b;
187 scoped_array<double> D;
188 int num_eliminate_blocks;
189 int num_eliminate_cols;
190
191 Matrix lhs_expected;
192 Vector rhs_expected;
193 Vector sol_expected;
194};
195
196TEST_F(SchurEliminatorTest, ScalarProblem) {
197 SetUpFromId(2);
198 Vector zero(A->num_cols());
199 zero.setZero();
200
201 ComputeReferenceSolution(VectorRef(zero.data(), A->num_cols()));
202 EliminateSolveAndCompare(VectorRef(zero.data(), A->num_cols()), true, 1e-14);
203 EliminateSolveAndCompare(VectorRef(zero.data(), A->num_cols()), false, 1e-14);
204
205 ComputeReferenceSolution(VectorRef(D.get(), A->num_cols()));
206 EliminateSolveAndCompare(VectorRef(D.get(), A->num_cols()), true, 1e-14);
207 EliminateSolveAndCompare(VectorRef(D.get(), A->num_cols()), false, 1e-14);
208}
209
Keir Mierle8ebb0732012-04-30 23:09:08 -0700210} // namespace internal
211} // namespace ceres