| // Ceres Solver - A fast non-linear least squares minimizer | 
 | // Copyright 2017 Google Inc. All rights reserved. | 
 | // http://ceres-solver.org/ | 
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 | // | 
 | // Author: sameeragarwal@google.com (Sameer Agarwal) | 
 |  | 
 | #include "ceres/invert_psd_matrix.h" | 
 |  | 
 | #include "ceres/internal/eigen.h" | 
 | #include "gtest/gtest.h" | 
 |  | 
 | namespace ceres::internal { | 
 |  | 
 | static constexpr bool kFullRank = true; | 
 | static constexpr bool kRankDeficient = false; | 
 |  | 
 | template <int kSize> | 
 | typename EigenTypes<kSize, kSize>::Matrix RandomPSDMatrixWithEigenValues( | 
 |     const typename EigenTypes<kSize>::Vector& eigenvalues) { | 
 |   typename EigenTypes<kSize, kSize>::Matrix m(eigenvalues.rows(), | 
 |                                               eigenvalues.rows()); | 
 |   m.setRandom(); | 
 |   Eigen::SelfAdjointEigenSolver<typename EigenTypes<kSize, kSize>::Matrix> es( | 
 |       m); | 
 |   return es.eigenvectors() * eigenvalues.asDiagonal() * | 
 |          es.eigenvectors().transpose(); | 
 | } | 
 |  | 
 | TEST(InvertPSDMatrix, Identity3x3) { | 
 |   const Matrix m = Matrix::Identity(3, 3); | 
 |   const Matrix inverse_m = InvertPSDMatrix<3>(kFullRank, m); | 
 |   EXPECT_NEAR((inverse_m - m).norm() / m.norm(), | 
 |               0.0, | 
 |               std::numeric_limits<double>::epsilon()); | 
 | } | 
 |  | 
 | TEST(InvertPSDMatrix, FullRank5x5) { | 
 |   EigenTypes<5>::Vector eigenvalues; | 
 |   eigenvalues.setRandom(); | 
 |   eigenvalues = eigenvalues.array().abs().matrix(); | 
 |   const Matrix m = RandomPSDMatrixWithEigenValues<5>(eigenvalues); | 
 |   const Matrix inverse_m = InvertPSDMatrix<5>(kFullRank, m); | 
 |   EXPECT_NEAR((m * inverse_m - Matrix::Identity(5, 5)).norm() / 5.0, | 
 |               0.0, | 
 |               10 * std::numeric_limits<double>::epsilon()); | 
 | } | 
 |  | 
 | TEST(InvertPSDMatrix, RankDeficient5x5) { | 
 |   EigenTypes<5>::Vector eigenvalues; | 
 |   eigenvalues.setRandom(); | 
 |   eigenvalues = eigenvalues.array().abs().matrix(); | 
 |   eigenvalues(3) = 0.0; | 
 |   const Matrix m = RandomPSDMatrixWithEigenValues<5>(eigenvalues); | 
 |   const Matrix inverse_m = InvertPSDMatrix<5>(kRankDeficient, m); | 
 |   Matrix pseudo_identity = Matrix::Identity(5, 5); | 
 |   pseudo_identity(3, 3) = 0.0; | 
 |   EXPECT_NEAR((m * inverse_m * m - m).norm() / m.norm(), | 
 |               0.0, | 
 |               10 * std::numeric_limits<double>::epsilon()); | 
 | } | 
 |  | 
 | TEST(InvertPSDMatrix, DynamicFullRank5x5) { | 
 |   EigenTypes<Eigen::Dynamic>::Vector eigenvalues(5); | 
 |   eigenvalues.setRandom(); | 
 |   eigenvalues = eigenvalues.array().abs().matrix(); | 
 |   const Matrix m = RandomPSDMatrixWithEigenValues<Eigen::Dynamic>(eigenvalues); | 
 |   const Matrix inverse_m = InvertPSDMatrix<Eigen::Dynamic>(kFullRank, m); | 
 |   EXPECT_NEAR((m * inverse_m - Matrix::Identity(5, 5)).norm() / 5.0, | 
 |               0.0, | 
 |               10 * std::numeric_limits<double>::epsilon()); | 
 | } | 
 |  | 
 | TEST(InvertPSDMatrix, DynamicRankDeficient5x5) { | 
 |   EigenTypes<Eigen::Dynamic>::Vector eigenvalues(5); | 
 |   eigenvalues.setRandom(); | 
 |   eigenvalues = eigenvalues.array().abs().matrix(); | 
 |   eigenvalues(3) = 0.0; | 
 |   const Matrix m = RandomPSDMatrixWithEigenValues<Eigen::Dynamic>(eigenvalues); | 
 |   const Matrix inverse_m = InvertPSDMatrix<Eigen::Dynamic>(kRankDeficient, m); | 
 |   Matrix pseudo_identity = Matrix::Identity(5, 5); | 
 |   pseudo_identity(3, 3) = 0.0; | 
 |   EXPECT_NEAR((m * inverse_m * m - m).norm() / m.norm(), | 
 |               0.0, | 
 |               10 * std::numeric_limits<double>::epsilon()); | 
 | } | 
 |  | 
 | }  // namespace ceres::internal |