source: pacpussensors/trunk/Vislab/lib3dv/eigen/Eigen/src/SPQRSupport/SuiteSparseQRSupport.h@ 136

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1// This file is part of Eigen, a lightweight C++ template library
2// for linear algebra.
3//
4// Copyright (C) 2012 Desire Nuentsa <desire.nuentsa_wakam@inria.fr>
5//
6// This Source Code Form is subject to the terms of the Mozilla
7// Public License v. 2.0. If a copy of the MPL was not distributed
8// with this file, You can obtain one at http://mozilla.org/MPL/2.0/.
9
10#ifndef EIGEN_SUITESPARSEQRSUPPORT_H
11#define EIGEN_SUITESPARSEQRSUPPORT_H
12
13namespace Eigen {
14
15 template<typename MatrixType> class SPQR;
16 template<typename SPQRType> struct SPQRMatrixQReturnType;
17 template<typename SPQRType> struct SPQRMatrixQTransposeReturnType;
18 template <typename SPQRType, typename Derived> struct SPQR_QProduct;
19 namespace internal {
20 template <typename SPQRType> struct traits<SPQRMatrixQReturnType<SPQRType> >
21 {
22 typedef typename SPQRType::MatrixType ReturnType;
23 };
24 template <typename SPQRType> struct traits<SPQRMatrixQTransposeReturnType<SPQRType> >
25 {
26 typedef typename SPQRType::MatrixType ReturnType;
27 };
28 template <typename SPQRType, typename Derived> struct traits<SPQR_QProduct<SPQRType, Derived> >
29 {
30 typedef typename Derived::PlainObject ReturnType;
31 };
32 } // End namespace internal
33
34/**
35 * \ingroup SPQRSupport_Module
36 * \class SPQR
37 * \brief Sparse QR factorization based on SuiteSparseQR library
38 *
39 * This class is used to perform a multithreaded and multifrontal rank-revealing QR decomposition
40 * of sparse matrices. The result is then used to solve linear leasts_square systems.
41 * Clearly, a QR factorization is returned such that A*P = Q*R where :
42 *
43 * P is the column permutation. Use colsPermutation() to get it.
44 *
45 * Q is the orthogonal matrix represented as Householder reflectors.
46 * Use matrixQ() to get an expression and matrixQ().transpose() to get the transpose.
47 * You can then apply it to a vector.
48 *
49 * R is the sparse triangular factor. Use matrixQR() to get it as SparseMatrix.
50 * NOTE : The Index type of R is always SuiteSparse_long. You can get it with SPQR::Index
51 *
52 * \tparam _MatrixType The type of the sparse matrix A, must be a column-major SparseMatrix<>
53 * NOTE
54 *
55 */
56template<typename _MatrixType>
57class SPQR
58{
59 public:
60 typedef typename _MatrixType::Scalar Scalar;
61 typedef typename _MatrixType::RealScalar RealScalar;
62 typedef SuiteSparse_long Index ;
63 typedef SparseMatrix<Scalar, ColMajor, Index> MatrixType;
64 typedef PermutationMatrix<Dynamic, Dynamic> PermutationType;
65 public:
66 SPQR()
67 : m_isInitialized(false), m_ordering(SPQR_ORDERING_DEFAULT), m_allow_tol(SPQR_DEFAULT_TOL), m_tolerance (NumTraits<Scalar>::epsilon()), m_useDefaultThreshold(true)
68 {
69 cholmod_l_start(&m_cc);
70 }
71
72 SPQR(const _MatrixType& matrix)
73 : m_isInitialized(false), m_ordering(SPQR_ORDERING_DEFAULT), m_allow_tol(SPQR_DEFAULT_TOL), m_tolerance (NumTraits<Scalar>::epsilon()), m_useDefaultThreshold(true)
74 {
75 cholmod_l_start(&m_cc);
76 compute(matrix);
77 }
78
79 ~SPQR()
80 {
81 SPQR_free();
82 cholmod_l_finish(&m_cc);
83 }
84 void SPQR_free()
85 {
86 cholmod_l_free_sparse(&m_H, &m_cc);
87 cholmod_l_free_sparse(&m_cR, &m_cc);
88 cholmod_l_free_dense(&m_HTau, &m_cc);
89 std::free(m_E);
90 std::free(m_HPinv);
91 }
92
93 void compute(const _MatrixType& matrix)
94 {
95 if(m_isInitialized) SPQR_free();
96
97 MatrixType mat(matrix);
98
99 /* Compute the default threshold as in MatLab, see:
100 * Tim Davis, "Algorithm 915, SuiteSparseQR: Multifrontal Multithreaded Rank-Revealing
101 * Sparse QR Factorization, ACM Trans. on Math. Soft. 38(1), 2011, Page 8:3
102 */
103 RealScalar pivotThreshold = m_tolerance;
104 if(m_useDefaultThreshold)
105 {
106 using std::max;
107 RealScalar max2Norm = 0.0;
108 for (int j = 0; j < mat.cols(); j++) max2Norm = (max)(max2Norm, mat.col(j).norm());
109 if(max2Norm==RealScalar(0))
110 max2Norm = RealScalar(1);
111 pivotThreshold = 20 * (mat.rows() + mat.cols()) * max2Norm * NumTraits<RealScalar>::epsilon();
112 }
113
114 cholmod_sparse A;
115 A = viewAsCholmod(mat);
116 Index col = matrix.cols();
117 m_rank = SuiteSparseQR<Scalar>(m_ordering, pivotThreshold, col, &A,
118 &m_cR, &m_E, &m_H, &m_HPinv, &m_HTau, &m_cc);
119
120 if (!m_cR)
121 {
122 m_info = NumericalIssue;
123 m_isInitialized = false;
124 return;
125 }
126 m_info = Success;
127 m_isInitialized = true;
128 m_isRUpToDate = false;
129 }
130 /**
131 * Get the number of rows of the input matrix and the Q matrix
132 */
133 inline Index rows() const {return m_cR->nrow; }
134
135 /**
136 * Get the number of columns of the input matrix.
137 */
138 inline Index cols() const { return m_cR->ncol; }
139
140 /** \returns the solution X of \f$ A X = B \f$ using the current decomposition of A.
141 *
142 * \sa compute()
143 */
144 template<typename Rhs>
145 inline const internal::solve_retval<SPQR, Rhs> solve(const MatrixBase<Rhs>& B) const
146 {
147 eigen_assert(m_isInitialized && " The QR factorization should be computed first, call compute()");
148 eigen_assert(this->rows()==B.rows()
149 && "SPQR::solve(): invalid number of rows of the right hand side matrix B");
150 return internal::solve_retval<SPQR, Rhs>(*this, B.derived());
151 }
152
153 template<typename Rhs, typename Dest>
154 void _solve(const MatrixBase<Rhs> &b, MatrixBase<Dest> &dest) const
155 {
156 eigen_assert(m_isInitialized && " The QR factorization should be computed first, call compute()");
157 eigen_assert(b.cols()==1 && "This method is for vectors only");
158
159 //Compute Q^T * b
160 typename Dest::PlainObject y, y2;
161 y = matrixQ().transpose() * b;
162
163 // Solves with the triangular matrix R
164 Index rk = this->rank();
165 y2 = y;
166 y.resize((std::max)(cols(),Index(y.rows())),y.cols());
167 y.topRows(rk) = this->matrixR().topLeftCorner(rk, rk).template triangularView<Upper>().solve(y2.topRows(rk));
168
169 // Apply the column permutation
170 // colsPermutation() performs a copy of the permutation,
171 // so let's apply it manually:
172 for(Index i = 0; i < rk; ++i) dest.row(m_E[i]) = y.row(i);
173 for(Index i = rk; i < cols(); ++i) dest.row(m_E[i]).setZero();
174
175// y.bottomRows(y.rows()-rk).setZero();
176// dest = colsPermutation() * y.topRows(cols());
177
178 m_info = Success;
179 }
180
181 /** \returns the sparse triangular factor R. It is a sparse matrix
182 */
183 const MatrixType matrixR() const
184 {
185 eigen_assert(m_isInitialized && " The QR factorization should be computed first, call compute()");
186 if(!m_isRUpToDate) {
187 m_R = viewAsEigen<Scalar,ColMajor, typename MatrixType::Index>(*m_cR);
188 m_isRUpToDate = true;
189 }
190 return m_R;
191 }
192 /// Get an expression of the matrix Q
193 SPQRMatrixQReturnType<SPQR> matrixQ() const
194 {
195 return SPQRMatrixQReturnType<SPQR>(*this);
196 }
197 /// Get the permutation that was applied to columns of A
198 PermutationType colsPermutation() const
199 {
200 eigen_assert(m_isInitialized && "Decomposition is not initialized.");
201 Index n = m_cR->ncol;
202 PermutationType colsPerm(n);
203 for(Index j = 0; j <n; j++) colsPerm.indices()(j) = m_E[j];
204 return colsPerm;
205
206 }
207 /**
208 * Gets the rank of the matrix.
209 * It should be equal to matrixQR().cols if the matrix is full-rank
210 */
211 Index rank() const
212 {
213 eigen_assert(m_isInitialized && "Decomposition is not initialized.");
214 return m_cc.SPQR_istat[4];
215 }
216 /// Set the fill-reducing ordering method to be used
217 void setSPQROrdering(int ord) { m_ordering = ord;}
218 /// Set the tolerance tol to treat columns with 2-norm < =tol as zero
219 void setPivotThreshold(const RealScalar& tol)
220 {
221 m_useDefaultThreshold = false;
222 m_tolerance = tol;
223 }
224
225 /** \returns a pointer to the SPQR workspace */
226 cholmod_common *cholmodCommon() const { return &m_cc; }
227
228
229 /** \brief Reports whether previous computation was successful.
230 *
231 * \returns \c Success if computation was succesful,
232 * \c NumericalIssue if the sparse QR can not be computed
233 */
234 ComputationInfo info() const
235 {
236 eigen_assert(m_isInitialized && "Decomposition is not initialized.");
237 return m_info;
238 }
239 protected:
240 bool m_isInitialized;
241 bool m_analysisIsOk;
242 bool m_factorizationIsOk;
243 mutable bool m_isRUpToDate;
244 mutable ComputationInfo m_info;
245 int m_ordering; // Ordering method to use, see SPQR's manual
246 int m_allow_tol; // Allow to use some tolerance during numerical factorization.
247 RealScalar m_tolerance; // treat columns with 2-norm below this tolerance as zero
248 mutable cholmod_sparse *m_cR; // The sparse R factor in cholmod format
249 mutable MatrixType m_R; // The sparse matrix R in Eigen format
250 mutable Index *m_E; // The permutation applied to columns
251 mutable cholmod_sparse *m_H; //The householder vectors
252 mutable Index *m_HPinv; // The row permutation of H
253 mutable cholmod_dense *m_HTau; // The Householder coefficients
254 mutable Index m_rank; // The rank of the matrix
255 mutable cholmod_common m_cc; // Workspace and parameters
256 bool m_useDefaultThreshold; // Use default threshold
257 template<typename ,typename > friend struct SPQR_QProduct;
258};
259
260template <typename SPQRType, typename Derived>
261struct SPQR_QProduct : ReturnByValue<SPQR_QProduct<SPQRType,Derived> >
262{
263 typedef typename SPQRType::Scalar Scalar;
264 typedef typename SPQRType::Index Index;
265 //Define the constructor to get reference to argument types
266 SPQR_QProduct(const SPQRType& spqr, const Derived& other, bool transpose) : m_spqr(spqr),m_other(other),m_transpose(transpose) {}
267
268 inline Index rows() const { return m_transpose ? m_spqr.rows() : m_spqr.cols(); }
269 inline Index cols() const { return m_other.cols(); }
270 // Assign to a vector
271 template<typename ResType>
272 void evalTo(ResType& res) const
273 {
274 cholmod_dense y_cd;
275 cholmod_dense *x_cd;
276 int method = m_transpose ? SPQR_QTX : SPQR_QX;
277 cholmod_common *cc = m_spqr.cholmodCommon();
278 y_cd = viewAsCholmod(m_other.const_cast_derived());
279 x_cd = SuiteSparseQR_qmult<Scalar>(method, m_spqr.m_H, m_spqr.m_HTau, m_spqr.m_HPinv, &y_cd, cc);
280 res = Matrix<Scalar,ResType::RowsAtCompileTime,ResType::ColsAtCompileTime>::Map(reinterpret_cast<Scalar*>(x_cd->x), x_cd->nrow, x_cd->ncol);
281 cholmod_l_free_dense(&x_cd, cc);
282 }
283 const SPQRType& m_spqr;
284 const Derived& m_other;
285 bool m_transpose;
286
287};
288template<typename SPQRType>
289struct SPQRMatrixQReturnType{
290
291 SPQRMatrixQReturnType(const SPQRType& spqr) : m_spqr(spqr) {}
292 template<typename Derived>
293 SPQR_QProduct<SPQRType, Derived> operator*(const MatrixBase<Derived>& other)
294 {
295 return SPQR_QProduct<SPQRType,Derived>(m_spqr,other.derived(),false);
296 }
297 SPQRMatrixQTransposeReturnType<SPQRType> adjoint() const
298 {
299 return SPQRMatrixQTransposeReturnType<SPQRType>(m_spqr);
300 }
301 // To use for operations with the transpose of Q
302 SPQRMatrixQTransposeReturnType<SPQRType> transpose() const
303 {
304 return SPQRMatrixQTransposeReturnType<SPQRType>(m_spqr);
305 }
306 const SPQRType& m_spqr;
307};
308
309template<typename SPQRType>
310struct SPQRMatrixQTransposeReturnType{
311 SPQRMatrixQTransposeReturnType(const SPQRType& spqr) : m_spqr(spqr) {}
312 template<typename Derived>
313 SPQR_QProduct<SPQRType,Derived> operator*(const MatrixBase<Derived>& other)
314 {
315 return SPQR_QProduct<SPQRType,Derived>(m_spqr,other.derived(), true);
316 }
317 const SPQRType& m_spqr;
318};
319
320namespace internal {
321
322template<typename _MatrixType, typename Rhs>
323struct solve_retval<SPQR<_MatrixType>, Rhs>
324 : solve_retval_base<SPQR<_MatrixType>, Rhs>
325{
326 typedef SPQR<_MatrixType> Dec;
327 EIGEN_MAKE_SOLVE_HELPERS(Dec,Rhs)
328
329 template<typename Dest> void evalTo(Dest& dst) const
330 {
331 dec()._solve(rhs(),dst);
332 }
333};
334
335} // end namespace internal
336
337}// End namespace Eigen
338#endif
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