FastRobustICP
/
include
/eigen
/unsupported
/Eigen
/src
/Eigenvalues
/ArpackSelfAdjointEigenSolver.h
| // This file is part of Eigen, a lightweight C++ template library | |
| // for linear algebra. | |
| // | |
| // Copyright (C) 2012 David Harmon <dharmon@gmail.com> | |
| // | |
| // This Source Code Form is subject to the terms of the Mozilla | |
| // Public License v. 2.0. If a copy of the MPL was not distributed | |
| // with this file, You can obtain one at http://mozilla.org/MPL/2.0/. | |
| namespace Eigen { | |
| namespace internal { | |
| template<typename Scalar, typename RealScalar> struct arpack_wrapper; | |
| template<typename MatrixSolver, typename MatrixType, typename Scalar, bool BisSPD> struct OP; | |
| } | |
| template<typename MatrixType, typename MatrixSolver=SimplicialLLT<MatrixType>, bool BisSPD=false> | |
| class ArpackGeneralizedSelfAdjointEigenSolver | |
| { | |
| public: | |
| //typedef typename MatrixSolver::MatrixType MatrixType; | |
| /** \brief Scalar type for matrices of type \p MatrixType. */ | |
| typedef typename MatrixType::Scalar Scalar; | |
| typedef typename MatrixType::Index Index; | |
| /** \brief Real scalar type for \p MatrixType. | |
| * | |
| * This is just \c Scalar if #Scalar is real (e.g., \c float or | |
| * \c Scalar), and the type of the real part of \c Scalar if #Scalar is | |
| * complex. | |
| */ | |
| typedef typename NumTraits<Scalar>::Real RealScalar; | |
| /** \brief Type for vector of eigenvalues as returned by eigenvalues(). | |
| * | |
| * This is a column vector with entries of type #RealScalar. | |
| * The length of the vector is the size of \p nbrEigenvalues. | |
| */ | |
| typedef typename internal::plain_col_type<MatrixType, RealScalar>::type RealVectorType; | |
| /** \brief Default constructor. | |
| * | |
| * The default constructor is for cases in which the user intends to | |
| * perform decompositions via compute(). | |
| * | |
| */ | |
| ArpackGeneralizedSelfAdjointEigenSolver() | |
| : m_eivec(), | |
| m_eivalues(), | |
| m_isInitialized(false), | |
| m_eigenvectorsOk(false), | |
| m_nbrConverged(0), | |
| m_nbrIterations(0) | |
| { } | |
| /** \brief Constructor; computes generalized eigenvalues of given matrix with respect to another matrix. | |
| * | |
| * \param[in] A Self-adjoint matrix whose eigenvalues / eigenvectors will | |
| * computed. By default, the upper triangular part is used, but can be changed | |
| * through the template parameter. | |
| * \param[in] B Self-adjoint matrix for the generalized eigenvalue problem. | |
| * \param[in] nbrEigenvalues The number of eigenvalues / eigenvectors to compute. | |
| * Must be less than the size of the input matrix, or an error is returned. | |
| * \param[in] eigs_sigma String containing either "LM", "SM", "LA", or "SA", with | |
| * respective meanings to find the largest magnitude , smallest magnitude, | |
| * largest algebraic, or smallest algebraic eigenvalues. Alternatively, this | |
| * value can contain floating point value in string form, in which case the | |
| * eigenvalues closest to this value will be found. | |
| * \param[in] options Can be #ComputeEigenvectors (default) or #EigenvaluesOnly. | |
| * \param[in] tol What tolerance to find the eigenvalues to. Default is 0, which | |
| * means machine precision. | |
| * | |
| * This constructor calls compute(const MatrixType&, const MatrixType&, Index, string, int, RealScalar) | |
| * to compute the eigenvalues of the matrix \p A with respect to \p B. The eigenvectors are computed if | |
| * \p options equals #ComputeEigenvectors. | |
| * | |
| */ | |
| ArpackGeneralizedSelfAdjointEigenSolver(const MatrixType& A, const MatrixType& B, | |
| Index nbrEigenvalues, std::string eigs_sigma="LM", | |
| int options=ComputeEigenvectors, RealScalar tol=0.0) | |
| : m_eivec(), | |
| m_eivalues(), | |
| m_isInitialized(false), | |
| m_eigenvectorsOk(false), | |
| m_nbrConverged(0), | |
| m_nbrIterations(0) | |
| { | |
| compute(A, B, nbrEigenvalues, eigs_sigma, options, tol); | |
| } | |
| /** \brief Constructor; computes eigenvalues of given matrix. | |
| * | |
| * \param[in] A Self-adjoint matrix whose eigenvalues / eigenvectors will | |
| * computed. By default, the upper triangular part is used, but can be changed | |
| * through the template parameter. | |
| * \param[in] nbrEigenvalues The number of eigenvalues / eigenvectors to compute. | |
| * Must be less than the size of the input matrix, or an error is returned. | |
| * \param[in] eigs_sigma String containing either "LM", "SM", "LA", or "SA", with | |
| * respective meanings to find the largest magnitude , smallest magnitude, | |
| * largest algebraic, or smallest algebraic eigenvalues. Alternatively, this | |
| * value can contain floating point value in string form, in which case the | |
| * eigenvalues closest to this value will be found. | |
| * \param[in] options Can be #ComputeEigenvectors (default) or #EigenvaluesOnly. | |
| * \param[in] tol What tolerance to find the eigenvalues to. Default is 0, which | |
| * means machine precision. | |
| * | |
| * This constructor calls compute(const MatrixType&, Index, string, int, RealScalar) | |
| * to compute the eigenvalues of the matrix \p A. The eigenvectors are computed if | |
| * \p options equals #ComputeEigenvectors. | |
| * | |
| */ | |
| ArpackGeneralizedSelfAdjointEigenSolver(const MatrixType& A, | |
| Index nbrEigenvalues, std::string eigs_sigma="LM", | |
| int options=ComputeEigenvectors, RealScalar tol=0.0) | |
| : m_eivec(), | |
| m_eivalues(), | |
| m_isInitialized(false), | |
| m_eigenvectorsOk(false), | |
| m_nbrConverged(0), | |
| m_nbrIterations(0) | |
| { | |
| compute(A, nbrEigenvalues, eigs_sigma, options, tol); | |
| } | |
| /** \brief Computes generalized eigenvalues / eigenvectors of given matrix using the external ARPACK library. | |
| * | |
| * \param[in] A Selfadjoint matrix whose eigendecomposition is to be computed. | |
| * \param[in] B Selfadjoint matrix for generalized eigenvalues. | |
| * \param[in] nbrEigenvalues The number of eigenvalues / eigenvectors to compute. | |
| * Must be less than the size of the input matrix, or an error is returned. | |
| * \param[in] eigs_sigma String containing either "LM", "SM", "LA", or "SA", with | |
| * respective meanings to find the largest magnitude , smallest magnitude, | |
| * largest algebraic, or smallest algebraic eigenvalues. Alternatively, this | |
| * value can contain floating point value in string form, in which case the | |
| * eigenvalues closest to this value will be found. | |
| * \param[in] options Can be #ComputeEigenvectors (default) or #EigenvaluesOnly. | |
| * \param[in] tol What tolerance to find the eigenvalues to. Default is 0, which | |
| * means machine precision. | |
| * | |
| * \returns Reference to \c *this | |
| * | |
| * This function computes the generalized eigenvalues of \p A with respect to \p B using ARPACK. The eigenvalues() | |
| * function can be used to retrieve them. If \p options equals #ComputeEigenvectors, | |
| * then the eigenvectors are also computed and can be retrieved by | |
| * calling eigenvectors(). | |
| * | |
| */ | |
| ArpackGeneralizedSelfAdjointEigenSolver& compute(const MatrixType& A, const MatrixType& B, | |
| Index nbrEigenvalues, std::string eigs_sigma="LM", | |
| int options=ComputeEigenvectors, RealScalar tol=0.0); | |
| /** \brief Computes eigenvalues / eigenvectors of given matrix using the external ARPACK library. | |
| * | |
| * \param[in] A Selfadjoint matrix whose eigendecomposition is to be computed. | |
| * \param[in] nbrEigenvalues The number of eigenvalues / eigenvectors to compute. | |
| * Must be less than the size of the input matrix, or an error is returned. | |
| * \param[in] eigs_sigma String containing either "LM", "SM", "LA", or "SA", with | |
| * respective meanings to find the largest magnitude , smallest magnitude, | |
| * largest algebraic, or smallest algebraic eigenvalues. Alternatively, this | |
| * value can contain floating point value in string form, in which case the | |
| * eigenvalues closest to this value will be found. | |
| * \param[in] options Can be #ComputeEigenvectors (default) or #EigenvaluesOnly. | |
| * \param[in] tol What tolerance to find the eigenvalues to. Default is 0, which | |
| * means machine precision. | |
| * | |
| * \returns Reference to \c *this | |
| * | |
| * This function computes the eigenvalues of \p A using ARPACK. The eigenvalues() | |
| * function can be used to retrieve them. If \p options equals #ComputeEigenvectors, | |
| * then the eigenvectors are also computed and can be retrieved by | |
| * calling eigenvectors(). | |
| * | |
| */ | |
| ArpackGeneralizedSelfAdjointEigenSolver& compute(const MatrixType& A, | |
| Index nbrEigenvalues, std::string eigs_sigma="LM", | |
| int options=ComputeEigenvectors, RealScalar tol=0.0); | |
| /** \brief Returns the eigenvectors of given matrix. | |
| * | |
| * \returns A const reference to the matrix whose columns are the eigenvectors. | |
| * | |
| * \pre The eigenvectors have been computed before. | |
| * | |
| * Column \f$ k \f$ of the returned matrix is an eigenvector corresponding | |
| * to eigenvalue number \f$ k \f$ as returned by eigenvalues(). The | |
| * eigenvectors are normalized to have (Euclidean) norm equal to one. If | |
| * this object was used to solve the eigenproblem for the selfadjoint | |
| * matrix \f$ A \f$, then the matrix returned by this function is the | |
| * matrix \f$ V \f$ in the eigendecomposition \f$ A V = D V \f$. | |
| * For the generalized eigenproblem, the matrix returned is the solution \f$ A V = D B V \f$ | |
| * | |
| * Example: \include SelfAdjointEigenSolver_eigenvectors.cpp | |
| * Output: \verbinclude SelfAdjointEigenSolver_eigenvectors.out | |
| * | |
| * \sa eigenvalues() | |
| */ | |
| const Matrix<Scalar, Dynamic, Dynamic>& eigenvectors() const | |
| { | |
| eigen_assert(m_isInitialized && "ArpackGeneralizedSelfAdjointEigenSolver is not initialized."); | |
| eigen_assert(m_eigenvectorsOk && "The eigenvectors have not been computed together with the eigenvalues."); | |
| return m_eivec; | |
| } | |
| /** \brief Returns the eigenvalues of given matrix. | |
| * | |
| * \returns A const reference to the column vector containing the eigenvalues. | |
| * | |
| * \pre The eigenvalues have been computed before. | |
| * | |
| * The eigenvalues are repeated according to their algebraic multiplicity, | |
| * so there are as many eigenvalues as rows in the matrix. The eigenvalues | |
| * are sorted in increasing order. | |
| * | |
| * Example: \include SelfAdjointEigenSolver_eigenvalues.cpp | |
| * Output: \verbinclude SelfAdjointEigenSolver_eigenvalues.out | |
| * | |
| * \sa eigenvectors(), MatrixBase::eigenvalues() | |
| */ | |
| const Matrix<Scalar, Dynamic, 1>& eigenvalues() const | |
| { | |
| eigen_assert(m_isInitialized && "ArpackGeneralizedSelfAdjointEigenSolver is not initialized."); | |
| return m_eivalues; | |
| } | |
| /** \brief Computes the positive-definite square root of the matrix. | |
| * | |
| * \returns the positive-definite square root of the matrix | |
| * | |
| * \pre The eigenvalues and eigenvectors of a positive-definite matrix | |
| * have been computed before. | |
| * | |
| * The square root of a positive-definite matrix \f$ A \f$ is the | |
| * positive-definite matrix whose square equals \f$ A \f$. This function | |
| * uses the eigendecomposition \f$ A = V D V^{-1} \f$ to compute the | |
| * square root as \f$ A^{1/2} = V D^{1/2} V^{-1} \f$. | |
| * | |
| * Example: \include SelfAdjointEigenSolver_operatorSqrt.cpp | |
| * Output: \verbinclude SelfAdjointEigenSolver_operatorSqrt.out | |
| * | |
| * \sa operatorInverseSqrt(), | |
| * \ref MatrixFunctions_Module "MatrixFunctions Module" | |
| */ | |
| Matrix<Scalar, Dynamic, Dynamic> operatorSqrt() const | |
| { | |
| eigen_assert(m_isInitialized && "SelfAdjointEigenSolver is not initialized."); | |
| eigen_assert(m_eigenvectorsOk && "The eigenvectors have not been computed together with the eigenvalues."); | |
| return m_eivec * m_eivalues.cwiseSqrt().asDiagonal() * m_eivec.adjoint(); | |
| } | |
| /** \brief Computes the inverse square root of the matrix. | |
| * | |
| * \returns the inverse positive-definite square root of the matrix | |
| * | |
| * \pre The eigenvalues and eigenvectors of a positive-definite matrix | |
| * have been computed before. | |
| * | |
| * This function uses the eigendecomposition \f$ A = V D V^{-1} \f$ to | |
| * compute the inverse square root as \f$ V D^{-1/2} V^{-1} \f$. This is | |
| * cheaper than first computing the square root with operatorSqrt() and | |
| * then its inverse with MatrixBase::inverse(). | |
| * | |
| * Example: \include SelfAdjointEigenSolver_operatorInverseSqrt.cpp | |
| * Output: \verbinclude SelfAdjointEigenSolver_operatorInverseSqrt.out | |
| * | |
| * \sa operatorSqrt(), MatrixBase::inverse(), | |
| * \ref MatrixFunctions_Module "MatrixFunctions Module" | |
| */ | |
| Matrix<Scalar, Dynamic, Dynamic> operatorInverseSqrt() const | |
| { | |
| eigen_assert(m_isInitialized && "SelfAdjointEigenSolver is not initialized."); | |
| eigen_assert(m_eigenvectorsOk && "The eigenvectors have not been computed together with the eigenvalues."); | |
| return m_eivec * m_eivalues.cwiseInverse().cwiseSqrt().asDiagonal() * m_eivec.adjoint(); | |
| } | |
| /** \brief Reports whether previous computation was successful. | |
| * | |
| * \returns \c Success if computation was successful, \c NoConvergence otherwise. | |
| */ | |
| ComputationInfo info() const | |
| { | |
| eigen_assert(m_isInitialized && "ArpackGeneralizedSelfAdjointEigenSolver is not initialized."); | |
| return m_info; | |
| } | |
| size_t getNbrConvergedEigenValues() const | |
| { return m_nbrConverged; } | |
| size_t getNbrIterations() const | |
| { return m_nbrIterations; } | |
| protected: | |
| Matrix<Scalar, Dynamic, Dynamic> m_eivec; | |
| Matrix<Scalar, Dynamic, 1> m_eivalues; | |
| ComputationInfo m_info; | |
| bool m_isInitialized; | |
| bool m_eigenvectorsOk; | |
| size_t m_nbrConverged; | |
| size_t m_nbrIterations; | |
| }; | |
| template<typename MatrixType, typename MatrixSolver, bool BisSPD> | |
| ArpackGeneralizedSelfAdjointEigenSolver<MatrixType, MatrixSolver, BisSPD>& | |
| ArpackGeneralizedSelfAdjointEigenSolver<MatrixType, MatrixSolver, BisSPD> | |
| ::compute(const MatrixType& A, Index nbrEigenvalues, | |
| std::string eigs_sigma, int options, RealScalar tol) | |
| { | |
| MatrixType B(0,0); | |
| compute(A, B, nbrEigenvalues, eigs_sigma, options, tol); | |
| return *this; | |
| } | |
| template<typename MatrixType, typename MatrixSolver, bool BisSPD> | |
| ArpackGeneralizedSelfAdjointEigenSolver<MatrixType, MatrixSolver, BisSPD>& | |
| ArpackGeneralizedSelfAdjointEigenSolver<MatrixType, MatrixSolver, BisSPD> | |
| ::compute(const MatrixType& A, const MatrixType& B, Index nbrEigenvalues, | |
| std::string eigs_sigma, int options, RealScalar tol) | |
| { | |
| eigen_assert(A.cols() == A.rows()); | |
| eigen_assert(B.cols() == B.rows()); | |
| eigen_assert(B.rows() == 0 || A.cols() == B.rows()); | |
| eigen_assert((options &~ (EigVecMask | GenEigMask)) == 0 | |
| && (options & EigVecMask) != EigVecMask | |
| && "invalid option parameter"); | |
| bool isBempty = (B.rows() == 0) || (B.cols() == 0); | |
| // For clarity, all parameters match their ARPACK name | |
| // | |
| // Always 0 on the first call | |
| // | |
| int ido = 0; | |
| int n = (int)A.cols(); | |
| // User options: "LA", "SA", "SM", "LM", "BE" | |
| // | |
| char whch[3] = "LM"; | |
| // Specifies the shift if iparam[6] = { 3, 4, 5 }, not used if iparam[6] = { 1, 2 } | |
| // | |
| RealScalar sigma = 0.0; | |
| if (eigs_sigma.length() >= 2 && isalpha(eigs_sigma[0]) && isalpha(eigs_sigma[1])) | |
| { | |
| eigs_sigma[0] = toupper(eigs_sigma[0]); | |
| eigs_sigma[1] = toupper(eigs_sigma[1]); | |
| // In the following special case we're going to invert the problem, since solving | |
| // for larger magnitude is much much faster | |
| // i.e., if 'SM' is specified, we're going to really use 'LM', the default | |
| // | |
| if (eigs_sigma.substr(0,2) != "SM") | |
| { | |
| whch[0] = eigs_sigma[0]; | |
| whch[1] = eigs_sigma[1]; | |
| } | |
| } | |
| else | |
| { | |
| eigen_assert(false && "Specifying clustered eigenvalues is not yet supported!"); | |
| // If it's not scalar values, then the user may be explicitly | |
| // specifying the sigma value to cluster the evs around | |
| // | |
| sigma = atof(eigs_sigma.c_str()); | |
| // If atof fails, it returns 0.0, which is a fine default | |
| // | |
| } | |
| // "I" means normal eigenvalue problem, "G" means generalized | |
| // | |
| char bmat[2] = "I"; | |
| if (eigs_sigma.substr(0,2) == "SM" || !(isalpha(eigs_sigma[0]) && isalpha(eigs_sigma[1])) || (!isBempty && !BisSPD)) | |
| bmat[0] = 'G'; | |
| // Now we determine the mode to use | |
| // | |
| int mode = (bmat[0] == 'G') + 1; | |
| if (eigs_sigma.substr(0,2) == "SM" || !(isalpha(eigs_sigma[0]) && isalpha(eigs_sigma[1]))) | |
| { | |
| // We're going to use shift-and-invert mode, and basically find | |
| // the largest eigenvalues of the inverse operator | |
| // | |
| mode = 3; | |
| } | |
| // The user-specified number of eigenvalues/vectors to compute | |
| // | |
| int nev = (int)nbrEigenvalues; | |
| // Allocate space for ARPACK to store the residual | |
| // | |
| Scalar *resid = new Scalar[n]; | |
| // Number of Lanczos vectors, must satisfy nev < ncv <= n | |
| // Note that this indicates that nev != n, and we cannot compute | |
| // all eigenvalues of a mtrix | |
| // | |
| int ncv = std::min(std::max(2*nev, 20), n); | |
| // The working n x ncv matrix, also store the final eigenvectors (if computed) | |
| // | |
| Scalar *v = new Scalar[n*ncv]; | |
| int ldv = n; | |
| // Working space | |
| // | |
| Scalar *workd = new Scalar[3*n]; | |
| int lworkl = ncv*ncv+8*ncv; // Must be at least this length | |
| Scalar *workl = new Scalar[lworkl]; | |
| int *iparam= new int[11]; | |
| iparam[0] = 1; // 1 means we let ARPACK perform the shifts, 0 means we'd have to do it | |
| iparam[2] = std::max(300, (int)std::ceil(2*n/std::max(ncv,1))); | |
| iparam[6] = mode; // The mode, 1 is standard ev problem, 2 for generalized ev, 3 for shift-and-invert | |
| // Used during reverse communicate to notify where arrays start | |
| // | |
| int *ipntr = new int[11]; | |
| // Error codes are returned in here, initial value of 0 indicates a random initial | |
| // residual vector is used, any other values means resid contains the initial residual | |
| // vector, possibly from a previous run | |
| // | |
| int info = 0; | |
| Scalar scale = 1.0; | |
| //if (!isBempty) | |
| //{ | |
| //Scalar scale = B.norm() / std::sqrt(n); | |
| //scale = std::pow(2, std::floor(std::log(scale+1))); | |
| ////M /= scale; | |
| //for (size_t i=0; i<(size_t)B.outerSize(); i++) | |
| // for (typename MatrixType::InnerIterator it(B, i); it; ++it) | |
| // it.valueRef() /= scale; | |
| //} | |
| MatrixSolver OP; | |
| if (mode == 1 || mode == 2) | |
| { | |
| if (!isBempty) | |
| OP.compute(B); | |
| } | |
| else if (mode == 3) | |
| { | |
| if (sigma == 0.0) | |
| { | |
| OP.compute(A); | |
| } | |
| else | |
| { | |
| // Note: We will never enter here because sigma must be 0.0 | |
| // | |
| if (isBempty) | |
| { | |
| MatrixType AminusSigmaB(A); | |
| for (Index i=0; i<A.rows(); ++i) | |
| AminusSigmaB.coeffRef(i,i) -= sigma; | |
| OP.compute(AminusSigmaB); | |
| } | |
| else | |
| { | |
| MatrixType AminusSigmaB = A - sigma * B; | |
| OP.compute(AminusSigmaB); | |
| } | |
| } | |
| } | |
| if (!(mode == 1 && isBempty) && !(mode == 2 && isBempty) && OP.info() != Success) | |
| std::cout << "Error factoring matrix" << std::endl; | |
| do | |
| { | |
| internal::arpack_wrapper<Scalar, RealScalar>::saupd(&ido, bmat, &n, whch, &nev, &tol, resid, | |
| &ncv, v, &ldv, iparam, ipntr, workd, workl, | |
| &lworkl, &info); | |
| if (ido == -1 || ido == 1) | |
| { | |
| Scalar *in = workd + ipntr[0] - 1; | |
| Scalar *out = workd + ipntr[1] - 1; | |
| if (ido == 1 && mode != 2) | |
| { | |
| Scalar *out2 = workd + ipntr[2] - 1; | |
| if (isBempty || mode == 1) | |
| Matrix<Scalar, Dynamic, 1>::Map(out2, n) = Matrix<Scalar, Dynamic, 1>::Map(in, n); | |
| else | |
| Matrix<Scalar, Dynamic, 1>::Map(out2, n) = B * Matrix<Scalar, Dynamic, 1>::Map(in, n); | |
| in = workd + ipntr[2] - 1; | |
| } | |
| if (mode == 1) | |
| { | |
| if (isBempty) | |
| { | |
| // OP = A | |
| // | |
| Matrix<Scalar, Dynamic, 1>::Map(out, n) = A * Matrix<Scalar, Dynamic, 1>::Map(in, n); | |
| } | |
| else | |
| { | |
| // OP = L^{-1}AL^{-T} | |
| // | |
| internal::OP<MatrixSolver, MatrixType, Scalar, BisSPD>::applyOP(OP, A, n, in, out); | |
| } | |
| } | |
| else if (mode == 2) | |
| { | |
| if (ido == 1) | |
| Matrix<Scalar, Dynamic, 1>::Map(in, n) = A * Matrix<Scalar, Dynamic, 1>::Map(in, n); | |
| // OP = B^{-1} A | |
| // | |
| Matrix<Scalar, Dynamic, 1>::Map(out, n) = OP.solve(Matrix<Scalar, Dynamic, 1>::Map(in, n)); | |
| } | |
| else if (mode == 3) | |
| { | |
| // OP = (A-\sigmaB)B (\sigma could be 0, and B could be I) | |
| // The B * in is already computed and stored at in if ido == 1 | |
| // | |
| if (ido == 1 || isBempty) | |
| Matrix<Scalar, Dynamic, 1>::Map(out, n) = OP.solve(Matrix<Scalar, Dynamic, 1>::Map(in, n)); | |
| else | |
| Matrix<Scalar, Dynamic, 1>::Map(out, n) = OP.solve(B * Matrix<Scalar, Dynamic, 1>::Map(in, n)); | |
| } | |
| } | |
| else if (ido == 2) | |
| { | |
| Scalar *in = workd + ipntr[0] - 1; | |
| Scalar *out = workd + ipntr[1] - 1; | |
| if (isBempty || mode == 1) | |
| Matrix<Scalar, Dynamic, 1>::Map(out, n) = Matrix<Scalar, Dynamic, 1>::Map(in, n); | |
| else | |
| Matrix<Scalar, Dynamic, 1>::Map(out, n) = B * Matrix<Scalar, Dynamic, 1>::Map(in, n); | |
| } | |
| } while (ido != 99); | |
| if (info == 1) | |
| m_info = NoConvergence; | |
| else if (info == 3) | |
| m_info = NumericalIssue; | |
| else if (info < 0) | |
| m_info = InvalidInput; | |
| else if (info != 0) | |
| eigen_assert(false && "Unknown ARPACK return value!"); | |
| else | |
| { | |
| // Do we compute eigenvectors or not? | |
| // | |
| int rvec = (options & ComputeEigenvectors) == ComputeEigenvectors; | |
| // "A" means "All", use "S" to choose specific eigenvalues (not yet supported in ARPACK)) | |
| // | |
| char howmny[2] = "A"; | |
| // if howmny == "S", specifies the eigenvalues to compute (not implemented in ARPACK) | |
| // | |
| int *select = new int[ncv]; | |
| // Final eigenvalues | |
| // | |
| m_eivalues.resize(nev, 1); | |
| internal::arpack_wrapper<Scalar, RealScalar>::seupd(&rvec, howmny, select, m_eivalues.data(), v, &ldv, | |
| &sigma, bmat, &n, whch, &nev, &tol, resid, &ncv, | |
| v, &ldv, iparam, ipntr, workd, workl, &lworkl, &info); | |
| if (info == -14) | |
| m_info = NoConvergence; | |
| else if (info != 0) | |
| m_info = InvalidInput; | |
| else | |
| { | |
| if (rvec) | |
| { | |
| m_eivec.resize(A.rows(), nev); | |
| for (int i=0; i<nev; i++) | |
| for (int j=0; j<n; j++) | |
| m_eivec(j,i) = v[i*n+j] / scale; | |
| if (mode == 1 && !isBempty && BisSPD) | |
| internal::OP<MatrixSolver, MatrixType, Scalar, BisSPD>::project(OP, n, nev, m_eivec.data()); | |
| m_eigenvectorsOk = true; | |
| } | |
| m_nbrIterations = iparam[2]; | |
| m_nbrConverged = iparam[4]; | |
| m_info = Success; | |
| } | |
| delete[] select; | |
| } | |
| delete[] v; | |
| delete[] iparam; | |
| delete[] ipntr; | |
| delete[] workd; | |
| delete[] workl; | |
| delete[] resid; | |
| m_isInitialized = true; | |
| return *this; | |
| } | |
| // Single precision | |
| // | |
| extern "C" void ssaupd_(int *ido, char *bmat, int *n, char *which, | |
| int *nev, float *tol, float *resid, int *ncv, | |
| float *v, int *ldv, int *iparam, int *ipntr, | |
| float *workd, float *workl, int *lworkl, | |
| int *info); | |
| extern "C" void sseupd_(int *rvec, char *All, int *select, float *d, | |
| float *z, int *ldz, float *sigma, | |
| char *bmat, int *n, char *which, int *nev, | |
| float *tol, float *resid, int *ncv, float *v, | |
| int *ldv, int *iparam, int *ipntr, float *workd, | |
| float *workl, int *lworkl, int *ierr); | |
| // Double precision | |
| // | |
| extern "C" void dsaupd_(int *ido, char *bmat, int *n, char *which, | |
| int *nev, double *tol, double *resid, int *ncv, | |
| double *v, int *ldv, int *iparam, int *ipntr, | |
| double *workd, double *workl, int *lworkl, | |
| int *info); | |
| extern "C" void dseupd_(int *rvec, char *All, int *select, double *d, | |
| double *z, int *ldz, double *sigma, | |
| char *bmat, int *n, char *which, int *nev, | |
| double *tol, double *resid, int *ncv, double *v, | |
| int *ldv, int *iparam, int *ipntr, double *workd, | |
| double *workl, int *lworkl, int *ierr); | |
| namespace internal { | |
| template<typename Scalar, typename RealScalar> struct arpack_wrapper | |
| { | |
| static inline void saupd(int *ido, char *bmat, int *n, char *which, | |
| int *nev, RealScalar *tol, Scalar *resid, int *ncv, | |
| Scalar *v, int *ldv, int *iparam, int *ipntr, | |
| Scalar *workd, Scalar *workl, int *lworkl, int *info) | |
| { | |
| EIGEN_STATIC_ASSERT(!NumTraits<Scalar>::IsComplex, NUMERIC_TYPE_MUST_BE_REAL) | |
| } | |
| static inline void seupd(int *rvec, char *All, int *select, Scalar *d, | |
| Scalar *z, int *ldz, RealScalar *sigma, | |
| char *bmat, int *n, char *which, int *nev, | |
| RealScalar *tol, Scalar *resid, int *ncv, Scalar *v, | |
| int *ldv, int *iparam, int *ipntr, Scalar *workd, | |
| Scalar *workl, int *lworkl, int *ierr) | |
| { | |
| EIGEN_STATIC_ASSERT(!NumTraits<Scalar>::IsComplex, NUMERIC_TYPE_MUST_BE_REAL) | |
| } | |
| }; | |
| template <> struct arpack_wrapper<float, float> | |
| { | |
| static inline void saupd(int *ido, char *bmat, int *n, char *which, | |
| int *nev, float *tol, float *resid, int *ncv, | |
| float *v, int *ldv, int *iparam, int *ipntr, | |
| float *workd, float *workl, int *lworkl, int *info) | |
| { | |
| ssaupd_(ido, bmat, n, which, nev, tol, resid, ncv, v, ldv, iparam, ipntr, workd, workl, lworkl, info); | |
| } | |
| static inline void seupd(int *rvec, char *All, int *select, float *d, | |
| float *z, int *ldz, float *sigma, | |
| char *bmat, int *n, char *which, int *nev, | |
| float *tol, float *resid, int *ncv, float *v, | |
| int *ldv, int *iparam, int *ipntr, float *workd, | |
| float *workl, int *lworkl, int *ierr) | |
| { | |
| sseupd_(rvec, All, select, d, z, ldz, sigma, bmat, n, which, nev, tol, resid, ncv, v, ldv, iparam, ipntr, | |
| workd, workl, lworkl, ierr); | |
| } | |
| }; | |
| template <> struct arpack_wrapper<double, double> | |
| { | |
| static inline void saupd(int *ido, char *bmat, int *n, char *which, | |
| int *nev, double *tol, double *resid, int *ncv, | |
| double *v, int *ldv, int *iparam, int *ipntr, | |
| double *workd, double *workl, int *lworkl, int *info) | |
| { | |
| dsaupd_(ido, bmat, n, which, nev, tol, resid, ncv, v, ldv, iparam, ipntr, workd, workl, lworkl, info); | |
| } | |
| static inline void seupd(int *rvec, char *All, int *select, double *d, | |
| double *z, int *ldz, double *sigma, | |
| char *bmat, int *n, char *which, int *nev, | |
| double *tol, double *resid, int *ncv, double *v, | |
| int *ldv, int *iparam, int *ipntr, double *workd, | |
| double *workl, int *lworkl, int *ierr) | |
| { | |
| dseupd_(rvec, All, select, d, v, ldv, sigma, bmat, n, which, nev, tol, resid, ncv, v, ldv, iparam, ipntr, | |
| workd, workl, lworkl, ierr); | |
| } | |
| }; | |
| template<typename MatrixSolver, typename MatrixType, typename Scalar, bool BisSPD> | |
| struct OP | |
| { | |
| static inline void applyOP(MatrixSolver &OP, const MatrixType &A, int n, Scalar *in, Scalar *out); | |
| static inline void project(MatrixSolver &OP, int n, int k, Scalar *vecs); | |
| }; | |
| template<typename MatrixSolver, typename MatrixType, typename Scalar> | |
| struct OP<MatrixSolver, MatrixType, Scalar, true> | |
| { | |
| static inline void applyOP(MatrixSolver &OP, const MatrixType &A, int n, Scalar *in, Scalar *out) | |
| { | |
| // OP = L^{-1} A L^{-T} (B = LL^T) | |
| // | |
| // First solve L^T out = in | |
| // | |
| Matrix<Scalar, Dynamic, 1>::Map(out, n) = OP.matrixU().solve(Matrix<Scalar, Dynamic, 1>::Map(in, n)); | |
| Matrix<Scalar, Dynamic, 1>::Map(out, n) = OP.permutationPinv() * Matrix<Scalar, Dynamic, 1>::Map(out, n); | |
| // Then compute out = A out | |
| // | |
| Matrix<Scalar, Dynamic, 1>::Map(out, n) = A * Matrix<Scalar, Dynamic, 1>::Map(out, n); | |
| // Then solve L out = out | |
| // | |
| Matrix<Scalar, Dynamic, 1>::Map(out, n) = OP.permutationP() * Matrix<Scalar, Dynamic, 1>::Map(out, n); | |
| Matrix<Scalar, Dynamic, 1>::Map(out, n) = OP.matrixL().solve(Matrix<Scalar, Dynamic, 1>::Map(out, n)); | |
| } | |
| static inline void project(MatrixSolver &OP, int n, int k, Scalar *vecs) | |
| { | |
| // Solve L^T out = in | |
| // | |
| Matrix<Scalar, Dynamic, Dynamic>::Map(vecs, n, k) = OP.matrixU().solve(Matrix<Scalar, Dynamic, Dynamic>::Map(vecs, n, k)); | |
| Matrix<Scalar, Dynamic, Dynamic>::Map(vecs, n, k) = OP.permutationPinv() * Matrix<Scalar, Dynamic, Dynamic>::Map(vecs, n, k); | |
| } | |
| }; | |
| template<typename MatrixSolver, typename MatrixType, typename Scalar> | |
| struct OP<MatrixSolver, MatrixType, Scalar, false> | |
| { | |
| static inline void applyOP(MatrixSolver &OP, const MatrixType &A, int n, Scalar *in, Scalar *out) | |
| { | |
| eigen_assert(false && "Should never be in here..."); | |
| } | |
| static inline void project(MatrixSolver &OP, int n, int k, Scalar *vecs) | |
| { | |
| eigen_assert(false && "Should never be in here..."); | |
| } | |
| }; | |
| } // end namespace internal | |
| } // end namespace Eigen | |