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Angus Kong0ae28bd2013-02-13 14:56:04 -08001// Ceres Solver - A fast non-linear least squares minimizer
2// Copyright 2012 Google Inc. All rights reserved.
3// http://code.google.com/p/ceres-solver/
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6// modification, are permitted provided that the following conditions are met:
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28//
29// Author: sameeragarwal@google.com (Sameer Agarwal)
30
31#include "ceres/dense_normal_cholesky_solver.h"
32
33#include <cstddef>
34
35#include "Eigen/Dense"
Scott Ettinger399f7d02013-09-09 12:54:43 -070036#include "ceres/blas.h"
Angus Kong0ae28bd2013-02-13 14:56:04 -080037#include "ceres/dense_sparse_matrix.h"
Angus Kong0ae28bd2013-02-13 14:56:04 -080038#include "ceres/internal/eigen.h"
39#include "ceres/internal/scoped_ptr.h"
Scott Ettinger399f7d02013-09-09 12:54:43 -070040#include "ceres/lapack.h"
Sascha Haeberling1d2624a2013-07-23 19:00:21 -070041#include "ceres/linear_solver.h"
Angus Kong0ae28bd2013-02-13 14:56:04 -080042#include "ceres/types.h"
Sascha Haeberling1d2624a2013-07-23 19:00:21 -070043#include "ceres/wall_time.h"
Angus Kong0ae28bd2013-02-13 14:56:04 -080044
45namespace ceres {
46namespace internal {
47
48DenseNormalCholeskySolver::DenseNormalCholeskySolver(
49 const LinearSolver::Options& options)
50 : options_(options) {}
51
52LinearSolver::Summary DenseNormalCholeskySolver::SolveImpl(
53 DenseSparseMatrix* A,
54 const double* b,
55 const LinearSolver::PerSolveOptions& per_solve_options,
56 double* x) {
Scott Ettinger399f7d02013-09-09 12:54:43 -070057 if (options_.dense_linear_algebra_library_type == EIGEN) {
58 return SolveUsingEigen(A, b, per_solve_options, x);
59 } else {
60 return SolveUsingLAPACK(A, b, per_solve_options, x);
61 }
62}
63
64LinearSolver::Summary DenseNormalCholeskySolver::SolveUsingEigen(
65 DenseSparseMatrix* A,
66 const double* b,
67 const LinearSolver::PerSolveOptions& per_solve_options,
68 double* x) {
Sascha Haeberling1d2624a2013-07-23 19:00:21 -070069 EventLogger event_logger("DenseNormalCholeskySolver::Solve");
70
Angus Kong0ae28bd2013-02-13 14:56:04 -080071 const int num_rows = A->num_rows();
72 const int num_cols = A->num_cols();
73
Sascha Haeberling1d2624a2013-07-23 19:00:21 -070074 ConstColMajorMatrixRef Aref = A->matrix();
Angus Kong0ae28bd2013-02-13 14:56:04 -080075 Matrix lhs(num_cols, num_cols);
76 lhs.setZero();
77
Sascha Haeberling1d2624a2013-07-23 19:00:21 -070078 event_logger.AddEvent("Setup");
Scott Ettinger399f7d02013-09-09 12:54:43 -070079
Angus Kong0ae28bd2013-02-13 14:56:04 -080080 // lhs += A'A
81 //
82 // Using rankUpdate instead of GEMM, exposes the fact that its the
83 // same matrix being multiplied with itself and that the product is
84 // symmetric.
85 lhs.selfadjointView<Eigen::Upper>().rankUpdate(Aref.transpose());
86
87 // rhs = A'b
88 Vector rhs = Aref.transpose() * ConstVectorRef(b, num_rows);
89
90 if (per_solve_options.D != NULL) {
91 ConstVectorRef D(per_solve_options.D, num_cols);
92 lhs += D.array().square().matrix().asDiagonal();
93 }
Scott Ettinger399f7d02013-09-09 12:54:43 -070094 event_logger.AddEvent("Product");
Angus Kong0ae28bd2013-02-13 14:56:04 -080095
Angus Kong0ae28bd2013-02-13 14:56:04 -080096 LinearSolver::Summary summary;
97 summary.num_iterations = 1;
Carlos Hernandez79397c22014-08-07 17:51:38 -070098 summary.termination_type = LINEAR_SOLVER_SUCCESS;
99 Eigen::LLT<Matrix, Eigen::Upper> llt =
100 lhs.selfadjointView<Eigen::Upper>().llt();
101
102 if (llt.info() != Eigen::Success) {
103 summary.termination_type = LINEAR_SOLVER_FAILURE;
104 summary.message = "Eigen LLT decomposition failed.";
105 } else {
106 summary.termination_type = LINEAR_SOLVER_SUCCESS;
107 summary.message = "Success.";
108 }
109
110 VectorRef(x, num_cols) = llt.solve(rhs);
Sascha Haeberling1d2624a2013-07-23 19:00:21 -0700111 event_logger.AddEvent("Solve");
Angus Kong0ae28bd2013-02-13 14:56:04 -0800112 return summary;
113}
114
Scott Ettinger399f7d02013-09-09 12:54:43 -0700115LinearSolver::Summary DenseNormalCholeskySolver::SolveUsingLAPACK(
116 DenseSparseMatrix* A,
117 const double* b,
118 const LinearSolver::PerSolveOptions& per_solve_options,
119 double* x) {
120 EventLogger event_logger("DenseNormalCholeskySolver::Solve");
121
122 if (per_solve_options.D != NULL) {
123 // Temporarily append a diagonal block to the A matrix, but undo
124 // it before returning the matrix to the user.
125 A->AppendDiagonal(per_solve_options.D);
126 }
127
128 const int num_cols = A->num_cols();
129 Matrix lhs(num_cols, num_cols);
130 event_logger.AddEvent("Setup");
131
132 // lhs = A'A
133 //
134 // Note: This is a bit delicate, it assumes that the stride on this
135 // matrix is the same as the number of rows.
136 BLAS::SymmetricRankKUpdate(A->num_rows(),
137 num_cols,
138 A->values(),
139 true,
140 1.0,
141 0.0,
142 lhs.data());
143
144 if (per_solve_options.D != NULL) {
145 // Undo the modifications to the matrix A.
146 A->RemoveDiagonal();
147 }
148
149 // TODO(sameeragarwal): Replace this with a gemv call for true blasness.
150 // rhs = A'b
151 VectorRef(x, num_cols) =
152 A->matrix().transpose() * ConstVectorRef(b, A->num_rows());
153 event_logger.AddEvent("Product");
154
Scott Ettinger399f7d02013-09-09 12:54:43 -0700155 LinearSolver::Summary summary;
156 summary.num_iterations = 1;
Carlos Hernandez79397c22014-08-07 17:51:38 -0700157 summary.termination_type =
158 LAPACK::SolveInPlaceUsingCholesky(num_cols,
159 lhs.data(),
160 x,
161 &summary.message);
162 event_logger.AddEvent("Solve");
Scott Ettinger399f7d02013-09-09 12:54:43 -0700163 return summary;
164}
Angus Kong0ae28bd2013-02-13 14:56:04 -0800165} // namespace internal
166} // namespace ceres