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							- // Ceres Solver - A fast non-linear least squares minimizer
 
- // Copyright 2015 Google Inc. All rights reserved.
 
- // http://ceres-solver.org/
 
- //
 
- // Redistribution and use in source and binary forms, with or without
 
- // modification, are permitted provided that the following conditions are met:
 
- //
 
- // * Redistributions of source code must retain the above copyright notice,
 
- //   this list of conditions and the following disclaimer.
 
- // * Redistributions in binary form must reproduce the above copyright notice,
 
- //   this list of conditions and the following disclaimer in the documentation
 
- //   and/or other materials provided with the distribution.
 
- // * Neither the name of Google Inc. nor the names of its contributors may be
 
- //   used to endorse or promote products derived from this software without
 
- //   specific prior written permission.
 
- //
 
- // THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS"
 
- // AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE
 
- // IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE
 
- // ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT OWNER OR CONTRIBUTORS BE
 
- // LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR
 
- // CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF
 
- // SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR PROFITS; OR BUSINESS
 
- // INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN
 
- // CONTRACT, STRICT LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE)
 
- // ARISING IN ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF THE
 
- // POSSIBILITY OF SUCH DAMAGE.
 
- //
 
- // Author: sameeragarwal@google.com (Sameer Agarwal)
 
- #include "ceres/schur_complement_solver.h"
 
- #include <algorithm>
 
- #include <ctime>
 
- #include <memory>
 
- #include <set>
 
- #include <vector>
 
- #include "Eigen/Dense"
 
- #include "Eigen/SparseCore"
 
- #include "ceres/block_random_access_dense_matrix.h"
 
- #include "ceres/block_random_access_matrix.h"
 
- #include "ceres/block_random_access_sparse_matrix.h"
 
- #include "ceres/block_sparse_matrix.h"
 
- #include "ceres/block_structure.h"
 
- #include "ceres/conjugate_gradients_solver.h"
 
- #include "ceres/detect_structure.h"
 
- #include "ceres/internal/eigen.h"
 
- #include "ceres/lapack.h"
 
- #include "ceres/linear_solver.h"
 
- #include "ceres/sparse_cholesky.h"
 
- #include "ceres/triplet_sparse_matrix.h"
 
- #include "ceres/types.h"
 
- #include "ceres/wall_time.h"
 
- namespace ceres {
 
- namespace internal {
 
- using std::make_pair;
 
- using std::pair;
 
- using std::set;
 
- using std::vector;
 
- namespace {
 
- class BlockRandomAccessSparseMatrixAdapter : public LinearOperator {
 
-  public:
 
-   explicit BlockRandomAccessSparseMatrixAdapter(
 
-       const BlockRandomAccessSparseMatrix& m)
 
-       : m_(m) {}
 
-   virtual ~BlockRandomAccessSparseMatrixAdapter() {}
 
-   // y = y + Ax;
 
-   void RightMultiply(const double* x, double* y) const final {
 
-     m_.SymmetricRightMultiply(x, y);
 
-   }
 
-   // y = y + A'x;
 
-   void LeftMultiply(const double* x, double* y) const final {
 
-     m_.SymmetricRightMultiply(x, y);
 
-   }
 
-   int num_rows() const final { return m_.num_rows(); }
 
-   int num_cols() const final { return m_.num_rows(); }
 
-  private:
 
-   const BlockRandomAccessSparseMatrix& m_;
 
- };
 
- class BlockRandomAccessDiagonalMatrixAdapter : public LinearOperator {
 
-  public:
 
-   explicit BlockRandomAccessDiagonalMatrixAdapter(
 
-       const BlockRandomAccessDiagonalMatrix& m)
 
-       : m_(m) {}
 
-   virtual ~BlockRandomAccessDiagonalMatrixAdapter() {}
 
-   // y = y + Ax;
 
-   void RightMultiply(const double* x, double* y) const final {
 
-     m_.RightMultiply(x, y);
 
-   }
 
-   // y = y + A'x;
 
-   void LeftMultiply(const double* x, double* y) const final {
 
-     m_.RightMultiply(x, y);
 
-   }
 
-   int num_rows() const final { return m_.num_rows(); }
 
-   int num_cols() const final { return m_.num_rows(); }
 
-  private:
 
-   const BlockRandomAccessDiagonalMatrix& m_;
 
- };
 
- }  // namespace
 
- LinearSolver::Summary SchurComplementSolver::SolveImpl(
 
-     BlockSparseMatrix* A,
 
-     const double* b,
 
-     const LinearSolver::PerSolveOptions& per_solve_options,
 
-     double* x) {
 
-   EventLogger event_logger("SchurComplementSolver::Solve");
 
-   const CompressedRowBlockStructure* bs = A->block_structure();
 
-   if (eliminator_.get() == NULL) {
 
-     const int num_eliminate_blocks = options_.elimination_groups[0];
 
-     const int num_f_blocks = bs->cols.size() - num_eliminate_blocks;
 
-     InitStorage(bs);
 
-     DetectStructure(*bs,
 
-                     num_eliminate_blocks,
 
-                     &options_.row_block_size,
 
-                     &options_.e_block_size,
 
-                     &options_.f_block_size);
 
-     // For the special case of the static structure <2,3,6> with
 
-     // exactly one f block use the SchurEliminatorForOneFBlock.
 
-     //
 
-     // TODO(sameeragarwal): A more scalable template specialization
 
-     // mechanism that does not cause binary bloat.
 
-     if (options_.row_block_size == 2 &&
 
-         options_.e_block_size == 3 &&
 
-         options_.f_block_size == 6 &&
 
-         num_f_blocks == 1) {
 
-       eliminator_.reset(new SchurEliminatorForOneFBlock<2, 3, 6>);
 
-     } else {
 
-       eliminator_.reset(SchurEliminatorBase::Create(options_));
 
-     }
 
-     CHECK(eliminator_);
 
-     const bool kFullRankETE = true;
 
-     eliminator_->Init(num_eliminate_blocks, kFullRankETE, bs);
 
-   }
 
-   std::fill(x, x + A->num_cols(), 0.0);
 
-   event_logger.AddEvent("Setup");
 
-   eliminator_->Eliminate(BlockSparseMatrixData(*A),
 
-                          b,
 
-                          per_solve_options.D,
 
-                          lhs_.get(),
 
-                          rhs_.get());
 
-   event_logger.AddEvent("Eliminate");
 
-   double* reduced_solution = x + A->num_cols() - lhs_->num_cols();
 
-   const LinearSolver::Summary summary =
 
-       SolveReducedLinearSystem(per_solve_options, reduced_solution);
 
-   event_logger.AddEvent("ReducedSolve");
 
-   if (summary.termination_type == LINEAR_SOLVER_SUCCESS) {
 
-     eliminator_->BackSubstitute(
 
-         BlockSparseMatrixData(*A), b, per_solve_options.D, reduced_solution, x);
 
-     event_logger.AddEvent("BackSubstitute");
 
-   }
 
-   return summary;
 
- }
 
- // Initialize a BlockRandomAccessDenseMatrix to store the Schur
 
- // complement.
 
- void DenseSchurComplementSolver::InitStorage(
 
-     const CompressedRowBlockStructure* bs) {
 
-   const int num_eliminate_blocks = options().elimination_groups[0];
 
-   const int num_col_blocks = bs->cols.size();
 
-   vector<int> blocks(num_col_blocks - num_eliminate_blocks, 0);
 
-   for (int i = num_eliminate_blocks, j = 0; i < num_col_blocks; ++i, ++j) {
 
-     blocks[j] = bs->cols[i].size;
 
-   }
 
-   set_lhs(new BlockRandomAccessDenseMatrix(blocks));
 
-   set_rhs(new double[lhs()->num_rows()]);
 
- }
 
- // Solve the system Sx = r, assuming that the matrix S is stored in a
 
- // BlockRandomAccessDenseMatrix. The linear system is solved using
 
- // Eigen's Cholesky factorization.
 
- LinearSolver::Summary DenseSchurComplementSolver::SolveReducedLinearSystem(
 
-     const LinearSolver::PerSolveOptions& per_solve_options, double* solution) {
 
-   LinearSolver::Summary summary;
 
-   summary.num_iterations = 0;
 
-   summary.termination_type = LINEAR_SOLVER_SUCCESS;
 
-   summary.message = "Success.";
 
-   const BlockRandomAccessDenseMatrix* m =
 
-       down_cast<const BlockRandomAccessDenseMatrix*>(lhs());
 
-   const int num_rows = m->num_rows();
 
-   // The case where there are no f blocks, and the system is block
 
-   // diagonal.
 
-   if (num_rows == 0) {
 
-     return summary;
 
-   }
 
-   summary.num_iterations = 1;
 
-   if (options().dense_linear_algebra_library_type == EIGEN) {
 
-     Eigen::LLT<Matrix, Eigen::Upper> llt =
 
-         ConstMatrixRef(m->values(), num_rows, num_rows)
 
-             .selfadjointView<Eigen::Upper>()
 
-             .llt();
 
-     if (llt.info() != Eigen::Success) {
 
-       summary.termination_type = LINEAR_SOLVER_FAILURE;
 
-       summary.message =
 
-           "Eigen failure. Unable to perform dense Cholesky factorization.";
 
-       return summary;
 
-     }
 
-     VectorRef(solution, num_rows) = llt.solve(ConstVectorRef(rhs(), num_rows));
 
-   } else {
 
-     VectorRef(solution, num_rows) = ConstVectorRef(rhs(), num_rows);
 
-     summary.termination_type = LAPACK::SolveInPlaceUsingCholesky(
 
-         num_rows, m->values(), solution, &summary.message);
 
-   }
 
-   return summary;
 
- }
 
- SparseSchurComplementSolver::SparseSchurComplementSolver(
 
-     const LinearSolver::Options& options)
 
-     : SchurComplementSolver(options) {
 
-   if (options.type != ITERATIVE_SCHUR) {
 
-     sparse_cholesky_ = SparseCholesky::Create(options);
 
-   }
 
- }
 
- SparseSchurComplementSolver::~SparseSchurComplementSolver() {}
 
- // Determine the non-zero blocks in the Schur Complement matrix, and
 
- // initialize a BlockRandomAccessSparseMatrix object.
 
- void SparseSchurComplementSolver::InitStorage(
 
-     const CompressedRowBlockStructure* bs) {
 
-   const int num_eliminate_blocks = options().elimination_groups[0];
 
-   const int num_col_blocks = bs->cols.size();
 
-   const int num_row_blocks = bs->rows.size();
 
-   blocks_.resize(num_col_blocks - num_eliminate_blocks, 0);
 
-   for (int i = num_eliminate_blocks; i < num_col_blocks; ++i) {
 
-     blocks_[i - num_eliminate_blocks] = bs->cols[i].size;
 
-   }
 
-   set<pair<int, int>> block_pairs;
 
-   for (int i = 0; i < blocks_.size(); ++i) {
 
-     block_pairs.insert(make_pair(i, i));
 
-   }
 
-   int r = 0;
 
-   while (r < num_row_blocks) {
 
-     int e_block_id = bs->rows[r].cells.front().block_id;
 
-     if (e_block_id >= num_eliminate_blocks) {
 
-       break;
 
-     }
 
-     vector<int> f_blocks;
 
-     // Add to the chunk until the first block in the row is
 
-     // different than the one in the first row for the chunk.
 
-     for (; r < num_row_blocks; ++r) {
 
-       const CompressedRow& row = bs->rows[r];
 
-       if (row.cells.front().block_id != e_block_id) {
 
-         break;
 
-       }
 
-       // Iterate over the blocks in the row, ignoring the first
 
-       // block since it is the one to be eliminated.
 
-       for (int c = 1; c < row.cells.size(); ++c) {
 
-         const Cell& cell = row.cells[c];
 
-         f_blocks.push_back(cell.block_id - num_eliminate_blocks);
 
-       }
 
-     }
 
-     sort(f_blocks.begin(), f_blocks.end());
 
-     f_blocks.erase(unique(f_blocks.begin(), f_blocks.end()), f_blocks.end());
 
-     for (int i = 0; i < f_blocks.size(); ++i) {
 
-       for (int j = i + 1; j < f_blocks.size(); ++j) {
 
-         block_pairs.insert(make_pair(f_blocks[i], f_blocks[j]));
 
-       }
 
-     }
 
-   }
 
-   // Remaining rows do not contribute to the chunks and directly go
 
-   // into the schur complement via an outer product.
 
-   for (; r < num_row_blocks; ++r) {
 
-     const CompressedRow& row = bs->rows[r];
 
-     CHECK_GE(row.cells.front().block_id, num_eliminate_blocks);
 
-     for (int i = 0; i < row.cells.size(); ++i) {
 
-       int r_block1_id = row.cells[i].block_id - num_eliminate_blocks;
 
-       for (int j = 0; j < row.cells.size(); ++j) {
 
-         int r_block2_id = row.cells[j].block_id - num_eliminate_blocks;
 
-         if (r_block1_id <= r_block2_id) {
 
-           block_pairs.insert(make_pair(r_block1_id, r_block2_id));
 
-         }
 
-       }
 
-     }
 
-   }
 
-   set_lhs(new BlockRandomAccessSparseMatrix(blocks_, block_pairs));
 
-   set_rhs(new double[lhs()->num_rows()]);
 
- }
 
- LinearSolver::Summary SparseSchurComplementSolver::SolveReducedLinearSystem(
 
-     const LinearSolver::PerSolveOptions& per_solve_options, double* solution) {
 
-   if (options().type == ITERATIVE_SCHUR) {
 
-     return SolveReducedLinearSystemUsingConjugateGradients(per_solve_options,
 
-                                                            solution);
 
-   }
 
-   LinearSolver::Summary summary;
 
-   summary.num_iterations = 0;
 
-   summary.termination_type = LINEAR_SOLVER_SUCCESS;
 
-   summary.message = "Success.";
 
-   const TripletSparseMatrix* tsm =
 
-       down_cast<const BlockRandomAccessSparseMatrix*>(lhs())->matrix();
 
-   if (tsm->num_rows() == 0) {
 
-     return summary;
 
-   }
 
-   std::unique_ptr<CompressedRowSparseMatrix> lhs;
 
-   const CompressedRowSparseMatrix::StorageType storage_type =
 
-       sparse_cholesky_->StorageType();
 
-   if (storage_type == CompressedRowSparseMatrix::UPPER_TRIANGULAR) {
 
-     lhs.reset(CompressedRowSparseMatrix::FromTripletSparseMatrix(*tsm));
 
-     lhs->set_storage_type(CompressedRowSparseMatrix::UPPER_TRIANGULAR);
 
-   } else {
 
-     lhs.reset(
 
-         CompressedRowSparseMatrix::FromTripletSparseMatrixTransposed(*tsm));
 
-     lhs->set_storage_type(CompressedRowSparseMatrix::LOWER_TRIANGULAR);
 
-   }
 
-   *lhs->mutable_col_blocks() = blocks_;
 
-   *lhs->mutable_row_blocks() = blocks_;
 
-   summary.num_iterations = 1;
 
-   summary.termination_type = sparse_cholesky_->FactorAndSolve(
 
-       lhs.get(), rhs(), solution, &summary.message);
 
-   return summary;
 
- }
 
- LinearSolver::Summary
 
- SparseSchurComplementSolver::SolveReducedLinearSystemUsingConjugateGradients(
 
-     const LinearSolver::PerSolveOptions& per_solve_options, double* solution) {
 
-   CHECK(options().use_explicit_schur_complement);
 
-   const int num_rows = lhs()->num_rows();
 
-   // The case where there are no f blocks, and the system is block
 
-   // diagonal.
 
-   if (num_rows == 0) {
 
-     LinearSolver::Summary summary;
 
-     summary.num_iterations = 0;
 
-     summary.termination_type = LINEAR_SOLVER_SUCCESS;
 
-     summary.message = "Success.";
 
-     return summary;
 
-   }
 
-   // Only SCHUR_JACOBI is supported over here right now.
 
-   CHECK_EQ(options().preconditioner_type, SCHUR_JACOBI);
 
-   if (preconditioner_.get() == NULL) {
 
-     preconditioner_.reset(new BlockRandomAccessDiagonalMatrix(blocks_));
 
-   }
 
-   BlockRandomAccessSparseMatrix* sc = down_cast<BlockRandomAccessSparseMatrix*>(
 
-       const_cast<BlockRandomAccessMatrix*>(lhs()));
 
-   // Extract block diagonal from the Schur complement to construct the
 
-   // schur_jacobi preconditioner.
 
-   for (int i = 0; i < blocks_.size(); ++i) {
 
-     const int block_size = blocks_[i];
 
-     int sc_r, sc_c, sc_row_stride, sc_col_stride;
 
-     CellInfo* sc_cell_info =
 
-         sc->GetCell(i, i, &sc_r, &sc_c, &sc_row_stride, &sc_col_stride);
 
-     CHECK(sc_cell_info != nullptr);
 
-     MatrixRef sc_m(sc_cell_info->values, sc_row_stride, sc_col_stride);
 
-     int pre_r, pre_c, pre_row_stride, pre_col_stride;
 
-     CellInfo* pre_cell_info = preconditioner_->GetCell(
 
-         i, i, &pre_r, &pre_c, &pre_row_stride, &pre_col_stride);
 
-     CHECK(pre_cell_info != nullptr);
 
-     MatrixRef pre_m(pre_cell_info->values, pre_row_stride, pre_col_stride);
 
-     pre_m.block(pre_r, pre_c, block_size, block_size) =
 
-         sc_m.block(sc_r, sc_c, block_size, block_size);
 
-   }
 
-   preconditioner_->Invert();
 
-   VectorRef(solution, num_rows).setZero();
 
-   std::unique_ptr<LinearOperator> lhs_adapter(
 
-       new BlockRandomAccessSparseMatrixAdapter(*sc));
 
-   std::unique_ptr<LinearOperator> preconditioner_adapter(
 
-       new BlockRandomAccessDiagonalMatrixAdapter(*preconditioner_));
 
-   LinearSolver::Options cg_options;
 
-   cg_options.min_num_iterations = options().min_num_iterations;
 
-   cg_options.max_num_iterations = options().max_num_iterations;
 
-   ConjugateGradientsSolver cg_solver(cg_options);
 
-   LinearSolver::PerSolveOptions cg_per_solve_options;
 
-   cg_per_solve_options.r_tolerance = per_solve_options.r_tolerance;
 
-   cg_per_solve_options.q_tolerance = per_solve_options.q_tolerance;
 
-   cg_per_solve_options.preconditioner = preconditioner_adapter.get();
 
-   return cg_solver.Solve(
 
-       lhs_adapter.get(), rhs(), cg_per_solve_options, solution);
 
- }
 
- }  // namespace internal
 
- }  // namespace ceres
 
 
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