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| #ifndef EIGEN_REAL_SCHUR_H |
| #define EIGEN_REAL_SCHUR_H |
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| #include "./HessenbergDecomposition.h" |
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| namespace Eigen { |
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| template<typename _MatrixType> class RealSchur |
| { |
| public: |
| typedef _MatrixType MatrixType; |
| enum { |
| RowsAtCompileTime = MatrixType::RowsAtCompileTime, |
| ColsAtCompileTime = MatrixType::ColsAtCompileTime, |
| Options = MatrixType::Options, |
| MaxRowsAtCompileTime = MatrixType::MaxRowsAtCompileTime, |
| MaxColsAtCompileTime = MatrixType::MaxColsAtCompileTime |
| }; |
| typedef typename MatrixType::Scalar Scalar; |
| typedef std::complex<typename NumTraits<Scalar>::Real> ComplexScalar; |
| typedef Eigen::Index Index; |
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| typedef Matrix<ComplexScalar, ColsAtCompileTime, 1, Options & ~RowMajor, MaxColsAtCompileTime, 1> EigenvalueType; |
| typedef Matrix<Scalar, ColsAtCompileTime, 1, Options & ~RowMajor, MaxColsAtCompileTime, 1> ColumnVectorType; |
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| explicit RealSchur(Index size = RowsAtCompileTime==Dynamic ? 1 : RowsAtCompileTime) |
| : m_matT(size, size), |
| m_matU(size, size), |
| m_workspaceVector(size), |
| m_hess(size), |
| m_isInitialized(false), |
| m_matUisUptodate(false), |
| m_maxIters(-1) |
| { } |
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| template<typename InputType> |
| explicit RealSchur(const EigenBase<InputType>& matrix, bool computeU = true) |
| : m_matT(matrix.rows(),matrix.cols()), |
| m_matU(matrix.rows(),matrix.cols()), |
| m_workspaceVector(matrix.rows()), |
| m_hess(matrix.rows()), |
| m_isInitialized(false), |
| m_matUisUptodate(false), |
| m_maxIters(-1) |
| { |
| compute(matrix.derived(), computeU); |
| } |
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| const MatrixType& matrixU() const |
| { |
| eigen_assert(m_isInitialized && "RealSchur is not initialized."); |
| eigen_assert(m_matUisUptodate && "The matrix U has not been computed during the RealSchur decomposition."); |
| return m_matU; |
| } |
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| const MatrixType& matrixT() const |
| { |
| eigen_assert(m_isInitialized && "RealSchur is not initialized."); |
| return m_matT; |
| } |
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| template<typename InputType> |
| RealSchur& compute(const EigenBase<InputType>& matrix, bool computeU = true); |
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| template<typename HessMatrixType, typename OrthMatrixType> |
| RealSchur& computeFromHessenberg(const HessMatrixType& matrixH, const OrthMatrixType& matrixQ, bool computeU); |
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| ComputationInfo info() const |
| { |
| eigen_assert(m_isInitialized && "RealSchur is not initialized."); |
| return m_info; |
| } |
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| RealSchur& setMaxIterations(Index maxIters) |
| { |
| m_maxIters = maxIters; |
| return *this; |
| } |
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| Index getMaxIterations() |
| { |
| return m_maxIters; |
| } |
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| static const int m_maxIterationsPerRow = 40; |
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| private: |
| |
| MatrixType m_matT; |
| MatrixType m_matU; |
| ColumnVectorType m_workspaceVector; |
| HessenbergDecomposition<MatrixType> m_hess; |
| ComputationInfo m_info; |
| bool m_isInitialized; |
| bool m_matUisUptodate; |
| Index m_maxIters; |
|
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| typedef Matrix<Scalar,3,1> Vector3s; |
|
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| Scalar computeNormOfT(); |
| Index findSmallSubdiagEntry(Index iu, const Scalar& considerAsZero); |
| void splitOffTwoRows(Index iu, bool computeU, const Scalar& exshift); |
| void computeShift(Index iu, Index iter, Scalar& exshift, Vector3s& shiftInfo); |
| void initFrancisQRStep(Index il, Index iu, const Vector3s& shiftInfo, Index& im, Vector3s& firstHouseholderVector); |
| void performFrancisQRStep(Index il, Index im, Index iu, bool computeU, const Vector3s& firstHouseholderVector, Scalar* workspace); |
| }; |
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| template<typename MatrixType> |
| template<typename InputType> |
| RealSchur<MatrixType>& RealSchur<MatrixType>::compute(const EigenBase<InputType>& matrix, bool computeU) |
| { |
| const Scalar considerAsZero = (std::numeric_limits<Scalar>::min)(); |
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| eigen_assert(matrix.cols() == matrix.rows()); |
| Index maxIters = m_maxIters; |
| if (maxIters == -1) |
| maxIters = m_maxIterationsPerRow * matrix.rows(); |
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| Scalar scale = matrix.derived().cwiseAbs().maxCoeff(); |
| if(scale<considerAsZero) |
| { |
| m_matT.setZero(matrix.rows(),matrix.cols()); |
| if(computeU) |
| m_matU.setIdentity(matrix.rows(),matrix.cols()); |
| m_info = Success; |
| m_isInitialized = true; |
| m_matUisUptodate = computeU; |
| return *this; |
| } |
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| m_hess.compute(matrix.derived()/scale); |
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| m_workspaceVector.resize(matrix.cols()); |
| if(computeU) |
| m_hess.matrixQ().evalTo(m_matU, m_workspaceVector); |
| computeFromHessenberg(m_hess.matrixH(), m_matU, computeU); |
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| m_matT *= scale; |
| |
| return *this; |
| } |
| template<typename MatrixType> |
| template<typename HessMatrixType, typename OrthMatrixType> |
| RealSchur<MatrixType>& RealSchur<MatrixType>::computeFromHessenberg(const HessMatrixType& matrixH, const OrthMatrixType& matrixQ, bool computeU) |
| { |
| using std::abs; |
|
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| m_matT = matrixH; |
| m_workspaceVector.resize(m_matT.cols()); |
| if(computeU && !internal::is_same_dense(m_matU,matrixQ)) |
| m_matU = matrixQ; |
| |
| Index maxIters = m_maxIters; |
| if (maxIters == -1) |
| maxIters = m_maxIterationsPerRow * matrixH.rows(); |
| Scalar* workspace = &m_workspaceVector.coeffRef(0); |
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| Index iu = m_matT.cols() - 1; |
| Index iter = 0; |
| Index totalIter = 0; |
| Scalar exshift(0); |
| Scalar norm = computeNormOfT(); |
| |
| |
| Scalar considerAsZero = numext::maxi<Scalar>( norm * numext::abs2(NumTraits<Scalar>::epsilon()), |
| (std::numeric_limits<Scalar>::min)() ); |
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| if(norm!=Scalar(0)) |
| { |
| while (iu >= 0) |
| { |
| Index il = findSmallSubdiagEntry(iu,considerAsZero); |
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| |
| if (il == iu) |
| { |
| m_matT.coeffRef(iu,iu) = m_matT.coeff(iu,iu) + exshift; |
| if (iu > 0) |
| m_matT.coeffRef(iu, iu-1) = Scalar(0); |
| iu--; |
| iter = 0; |
| } |
| else if (il == iu-1) |
| { |
| splitOffTwoRows(iu, computeU, exshift); |
| iu -= 2; |
| iter = 0; |
| } |
| else |
| { |
| |
| Vector3s firstHouseholderVector = Vector3s::Zero(), shiftInfo; |
| computeShift(iu, iter, exshift, shiftInfo); |
| iter = iter + 1; |
| totalIter = totalIter + 1; |
| if (totalIter > maxIters) break; |
| Index im; |
| initFrancisQRStep(il, iu, shiftInfo, im, firstHouseholderVector); |
| performFrancisQRStep(il, im, iu, computeU, firstHouseholderVector, workspace); |
| } |
| } |
| } |
| if(totalIter <= maxIters) |
| m_info = Success; |
| else |
| m_info = NoConvergence; |
|
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| m_isInitialized = true; |
| m_matUisUptodate = computeU; |
| return *this; |
| } |
|
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| |
| template<typename MatrixType> |
| inline typename MatrixType::Scalar RealSchur<MatrixType>::computeNormOfT() |
| { |
| const Index size = m_matT.cols(); |
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| |
| Scalar norm(0); |
| for (Index j = 0; j < size; ++j) |
| norm += m_matT.col(j).segment(0, (std::min)(size,j+2)).cwiseAbs().sum(); |
| return norm; |
| } |
|
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| |
| template<typename MatrixType> |
| inline Index RealSchur<MatrixType>::findSmallSubdiagEntry(Index iu, const Scalar& considerAsZero) |
| { |
| using std::abs; |
| Index res = iu; |
| while (res > 0) |
| { |
| Scalar s = abs(m_matT.coeff(res-1,res-1)) + abs(m_matT.coeff(res,res)); |
|
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| s = numext::maxi<Scalar>(s * NumTraits<Scalar>::epsilon(), considerAsZero); |
| |
| if (abs(m_matT.coeff(res,res-1)) <= s) |
| break; |
| res--; |
| } |
| return res; |
| } |
|
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| |
| template<typename MatrixType> |
| inline void RealSchur<MatrixType>::splitOffTwoRows(Index iu, bool computeU, const Scalar& exshift) |
| { |
| using std::sqrt; |
| using std::abs; |
| const Index size = m_matT.cols(); |
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| |
| |
| Scalar p = Scalar(0.5) * (m_matT.coeff(iu-1,iu-1) - m_matT.coeff(iu,iu)); |
| Scalar q = p * p + m_matT.coeff(iu,iu-1) * m_matT.coeff(iu-1,iu); |
| m_matT.coeffRef(iu,iu) += exshift; |
| m_matT.coeffRef(iu-1,iu-1) += exshift; |
|
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| if (q >= Scalar(0)) |
| { |
| Scalar z = sqrt(abs(q)); |
| JacobiRotation<Scalar> rot; |
| if (p >= Scalar(0)) |
| rot.makeGivens(p + z, m_matT.coeff(iu, iu-1)); |
| else |
| rot.makeGivens(p - z, m_matT.coeff(iu, iu-1)); |
|
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| m_matT.rightCols(size-iu+1).applyOnTheLeft(iu-1, iu, rot.adjoint()); |
| m_matT.topRows(iu+1).applyOnTheRight(iu-1, iu, rot); |
| m_matT.coeffRef(iu, iu-1) = Scalar(0); |
| if (computeU) |
| m_matU.applyOnTheRight(iu-1, iu, rot); |
| } |
|
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| if (iu > 1) |
| m_matT.coeffRef(iu-1, iu-2) = Scalar(0); |
| } |
|
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| |
| template<typename MatrixType> |
| inline void RealSchur<MatrixType>::computeShift(Index iu, Index iter, Scalar& exshift, Vector3s& shiftInfo) |
| { |
| using std::sqrt; |
| using std::abs; |
| shiftInfo.coeffRef(0) = m_matT.coeff(iu,iu); |
| shiftInfo.coeffRef(1) = m_matT.coeff(iu-1,iu-1); |
| shiftInfo.coeffRef(2) = m_matT.coeff(iu,iu-1) * m_matT.coeff(iu-1,iu); |
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| |
| if (iter % 16 == 0) { |
| |
| if (iter % 32 != 0) { |
| exshift += shiftInfo.coeff(0); |
| for (Index i = 0; i <= iu; ++i) |
| m_matT.coeffRef(i,i) -= shiftInfo.coeff(0); |
| Scalar s = abs(m_matT.coeff(iu,iu-1)) + abs(m_matT.coeff(iu-1,iu-2)); |
| shiftInfo.coeffRef(0) = Scalar(0.75) * s; |
| shiftInfo.coeffRef(1) = Scalar(0.75) * s; |
| shiftInfo.coeffRef(2) = Scalar(-0.4375) * s * s; |
| } else { |
| |
| Scalar s = (shiftInfo.coeff(1) - shiftInfo.coeff(0)) / Scalar(2.0); |
| s = s * s + shiftInfo.coeff(2); |
| if (s > Scalar(0)) |
| { |
| s = sqrt(s); |
| if (shiftInfo.coeff(1) < shiftInfo.coeff(0)) |
| s = -s; |
| s = s + (shiftInfo.coeff(1) - shiftInfo.coeff(0)) / Scalar(2.0); |
| s = shiftInfo.coeff(0) - shiftInfo.coeff(2) / s; |
| exshift += s; |
| for (Index i = 0; i <= iu; ++i) |
| m_matT.coeffRef(i,i) -= s; |
| shiftInfo.setConstant(Scalar(0.964)); |
| } |
| } |
| } |
| } |
|
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| |
| template<typename MatrixType> |
| inline void RealSchur<MatrixType>::initFrancisQRStep(Index il, Index iu, const Vector3s& shiftInfo, Index& im, Vector3s& firstHouseholderVector) |
| { |
| using std::abs; |
| Vector3s& v = firstHouseholderVector; |
|
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| for (im = iu-2; im >= il; --im) |
| { |
| const Scalar Tmm = m_matT.coeff(im,im); |
| const Scalar r = shiftInfo.coeff(0) - Tmm; |
| const Scalar s = shiftInfo.coeff(1) - Tmm; |
| v.coeffRef(0) = (r * s - shiftInfo.coeff(2)) / m_matT.coeff(im+1,im) + m_matT.coeff(im,im+1); |
| v.coeffRef(1) = m_matT.coeff(im+1,im+1) - Tmm - r - s; |
| v.coeffRef(2) = m_matT.coeff(im+2,im+1); |
| if (im == il) { |
| break; |
| } |
| const Scalar lhs = m_matT.coeff(im,im-1) * (abs(v.coeff(1)) + abs(v.coeff(2))); |
| const Scalar rhs = v.coeff(0) * (abs(m_matT.coeff(im-1,im-1)) + abs(Tmm) + abs(m_matT.coeff(im+1,im+1))); |
| if (abs(lhs) < NumTraits<Scalar>::epsilon() * rhs) |
| break; |
| } |
| } |
|
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| |
| template<typename MatrixType> |
| inline void RealSchur<MatrixType>::performFrancisQRStep(Index il, Index im, Index iu, bool computeU, const Vector3s& firstHouseholderVector, Scalar* workspace) |
| { |
| eigen_assert(im >= il); |
| eigen_assert(im <= iu-2); |
|
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| const Index size = m_matT.cols(); |
|
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| for (Index k = im; k <= iu-2; ++k) |
| { |
| bool firstIteration = (k == im); |
|
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| Vector3s v; |
| if (firstIteration) |
| v = firstHouseholderVector; |
| else |
| v = m_matT.template block<3,1>(k,k-1); |
|
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| Scalar tau, beta; |
| Matrix<Scalar, 2, 1> ess; |
| v.makeHouseholder(ess, tau, beta); |
| |
| if (beta != Scalar(0)) |
| { |
| if (firstIteration && k > il) |
| m_matT.coeffRef(k,k-1) = -m_matT.coeff(k,k-1); |
| else if (!firstIteration) |
| m_matT.coeffRef(k,k-1) = beta; |
|
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| |
| m_matT.block(k, k, 3, size-k).applyHouseholderOnTheLeft(ess, tau, workspace); |
| m_matT.block(0, k, (std::min)(iu,k+3) + 1, 3).applyHouseholderOnTheRight(ess, tau, workspace); |
| if (computeU) |
| m_matU.block(0, k, size, 3).applyHouseholderOnTheRight(ess, tau, workspace); |
| } |
| } |
|
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| Matrix<Scalar, 2, 1> v = m_matT.template block<2,1>(iu-1, iu-2); |
| Scalar tau, beta; |
| Matrix<Scalar, 1, 1> ess; |
| v.makeHouseholder(ess, tau, beta); |
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| if (beta != Scalar(0)) |
| { |
| m_matT.coeffRef(iu-1, iu-2) = beta; |
| m_matT.block(iu-1, iu-1, 2, size-iu+1).applyHouseholderOnTheLeft(ess, tau, workspace); |
| m_matT.block(0, iu-1, iu+1, 2).applyHouseholderOnTheRight(ess, tau, workspace); |
| if (computeU) |
| m_matU.block(0, iu-1, size, 2).applyHouseholderOnTheRight(ess, tau, workspace); |
| } |
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| |
| for (Index i = im+2; i <= iu; ++i) |
| { |
| m_matT.coeffRef(i,i-2) = Scalar(0); |
| if (i > im+2) |
| m_matT.coeffRef(i,i-3) = Scalar(0); |
| } |
| } |
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| } |
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| #endif |
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