363 lines
14 KiB
C++
363 lines
14 KiB
C++
// Ceres Solver - A fast non-linear least squares minimizer
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// Copyright 2015 Google Inc. All rights reserved.
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// http://ceres-solver.org/
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//
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// Redistribution and use in source and binary forms, with or without
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// modification, are permitted provided that the following conditions are met:
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//
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// * Redistributions of source code must retain the above copyright notice,
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// this list of conditions and the following disclaimer.
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// * Redistributions in binary form must reproduce the above copyright notice,
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// this list of conditions and the following disclaimer in the documentation
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// and/or other materials provided with the distribution.
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// * Neither the name of Google Inc. nor the names of its contributors may be
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// used to endorse or promote products derived from this software without
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// specific prior written permission.
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//
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// THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS"
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// AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE
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// IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE
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// ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT OWNER OR CONTRIBUTORS BE
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// LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR
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// CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF
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// SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR PROFITS; OR BUSINESS
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// INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN
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// CONTRACT, STRICT LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE)
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// ARISING IN ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF THE
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// POSSIBILITY OF SUCH DAMAGE.
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//
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// Author: sameeragarwal@google.com (Sameer Agarwal)
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//
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// Abstract interface for objects solving linear systems of various
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// kinds.
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#ifndef CERES_INTERNAL_LINEAR_SOLVER_H_
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#define CERES_INTERNAL_LINEAR_SOLVER_H_
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#include <cstddef>
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#include <map>
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#include <string>
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#include <vector>
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#include "ceres/block_sparse_matrix.h"
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#include "ceres/casts.h"
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#include "ceres/compressed_row_sparse_matrix.h"
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#include "ceres/dense_sparse_matrix.h"
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#include "ceres/execution_summary.h"
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#include "ceres/triplet_sparse_matrix.h"
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#include "ceres/types.h"
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#include "glog/logging.h"
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namespace ceres {
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namespace internal {
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enum LinearSolverTerminationType {
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// Termination criterion was met.
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LINEAR_SOLVER_SUCCESS,
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// Solver ran for max_num_iterations and terminated before the
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// termination tolerance could be satisfied.
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LINEAR_SOLVER_NO_CONVERGENCE,
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// Solver was terminated due to numerical problems, generally due to
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// the linear system being poorly conditioned.
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LINEAR_SOLVER_FAILURE,
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// Solver failed with a fatal error that cannot be recovered from,
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// e.g. CHOLMOD ran out of memory when computing the symbolic or
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// numeric factorization or an underlying library was called with
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// the wrong arguments.
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LINEAR_SOLVER_FATAL_ERROR
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};
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class LinearOperator;
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// Abstract base class for objects that implement algorithms for
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// solving linear systems
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//
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// Ax = b
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//
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// It is expected that a single instance of a LinearSolver object
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// maybe used multiple times for solving multiple linear systems with
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// the same sparsity structure. This allows them to cache and reuse
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// information across solves. This means that calling Solve on the
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// same LinearSolver instance with two different linear systems will
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// result in undefined behaviour.
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//
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// Subclasses of LinearSolver use two structs to configure themselves.
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// The Options struct configures the LinearSolver object for its
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// lifetime. The PerSolveOptions struct is used to specify options for
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// a particular Solve call.
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class LinearSolver {
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public:
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struct Options {
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Options()
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: type(SPARSE_NORMAL_CHOLESKY),
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preconditioner_type(JACOBI),
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visibility_clustering_type(CANONICAL_VIEWS),
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dense_linear_algebra_library_type(EIGEN),
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sparse_linear_algebra_library_type(SUITE_SPARSE),
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use_postordering(false),
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dynamic_sparsity(false),
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use_explicit_schur_complement(false),
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min_num_iterations(1),
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max_num_iterations(1),
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num_threads(1),
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residual_reset_period(10),
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row_block_size(Eigen::Dynamic),
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e_block_size(Eigen::Dynamic),
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f_block_size(Eigen::Dynamic) {
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}
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LinearSolverType type;
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PreconditionerType preconditioner_type;
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VisibilityClusteringType visibility_clustering_type;
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DenseLinearAlgebraLibraryType dense_linear_algebra_library_type;
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SparseLinearAlgebraLibraryType sparse_linear_algebra_library_type;
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// See solver.h for information about these flags.
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bool use_postordering;
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bool dynamic_sparsity;
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bool use_explicit_schur_complement;
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// Number of internal iterations that the solver uses. This
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// parameter only makes sense for iterative solvers like CG.
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int min_num_iterations;
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int max_num_iterations;
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// If possible, how many threads can the solver use.
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int num_threads;
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// Hints about the order in which the parameter blocks should be
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// eliminated by the linear solver.
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//
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// For example if elimination_groups is a vector of size k, then
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// the linear solver is informed that it should eliminate the
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// parameter blocks 0 ... elimination_groups[0] - 1 first, and
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// then elimination_groups[0] ... elimination_groups[1] - 1 and so
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// on. Within each elimination group, the linear solver is free to
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// choose how the parameter blocks are ordered. Different linear
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// solvers have differing requirements on elimination_groups.
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//
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// The most common use is for Schur type solvers, where there
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// should be at least two elimination groups and the first
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// elimination group must form an independent set in the normal
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// equations. The first elimination group corresponds to the
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// num_eliminate_blocks in the Schur type solvers.
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std::vector<int> elimination_groups;
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// Iterative solvers, e.g. Preconditioned Conjugate Gradients
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// maintain a cheap estimate of the residual which may become
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// inaccurate over time. Thus for non-zero values of this
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// parameter, the solver can be told to recalculate the value of
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// the residual using a |b - Ax| evaluation.
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int residual_reset_period;
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// If the block sizes in a BlockSparseMatrix are fixed, then in
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// some cases the Schur complement based solvers can detect and
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// specialize on them.
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//
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// It is expected that these parameters are set programmatically
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// rather than manually.
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//
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// Please see schur_complement_solver.h and schur_eliminator.h for
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// more details.
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int row_block_size;
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int e_block_size;
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int f_block_size;
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};
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// Options for the Solve method.
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struct PerSolveOptions {
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PerSolveOptions()
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: D(NULL),
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preconditioner(NULL),
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r_tolerance(0.0),
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q_tolerance(0.0) {
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}
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// This option only makes sense for unsymmetric linear solvers
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// that can solve rectangular linear systems.
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//
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// Given a matrix A, an optional diagonal matrix D as a vector,
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// and a vector b, the linear solver will solve for
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//
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// | A | x = | b |
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// | D | | 0 |
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//
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// If D is null, then it is treated as zero, and the solver returns
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// the solution to
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//
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// A x = b
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//
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// In either case, x is the vector that solves the following
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// optimization problem.
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//
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// arg min_x ||Ax - b||^2 + ||Dx||^2
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//
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// Here A is a matrix of size m x n, with full column rank. If A
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// does not have full column rank, the results returned by the
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// solver cannot be relied on. D, if it is not null is an array of
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// size n. b is an array of size m and x is an array of size n.
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double * D;
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// This option only makes sense for iterative solvers.
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//
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// In general the performance of an iterative linear solver
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// depends on the condition number of the matrix A. For example
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// the convergence rate of the conjugate gradients algorithm
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// is proportional to the square root of the condition number.
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//
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// One particularly useful technique for improving the
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// conditioning of a linear system is to precondition it. In its
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// simplest form a preconditioner is a matrix M such that instead
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// of solving Ax = b, we solve the linear system AM^{-1} y = b
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// instead, where M is such that the condition number k(AM^{-1})
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// is smaller than the conditioner k(A). Given the solution to
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// this system, x = M^{-1} y. The iterative solver takes care of
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// the mechanics of solving the preconditioned system and
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// returning the corrected solution x. The user only needs to
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// supply a linear operator.
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//
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// A null preconditioner is equivalent to an identity matrix being
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// used a preconditioner.
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LinearOperator* preconditioner;
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// The following tolerance related options only makes sense for
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// iterative solvers. Direct solvers ignore them.
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// Solver terminates when
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//
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// |Ax - b| <= r_tolerance * |b|.
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//
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// This is the most commonly used termination criterion for
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// iterative solvers.
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double r_tolerance;
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// For PSD matrices A, let
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//
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// Q(x) = x'Ax - 2b'x
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//
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// be the cost of the quadratic function defined by A and b. Then,
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// the solver terminates at iteration i if
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//
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// i * (Q(x_i) - Q(x_i-1)) / Q(x_i) < q_tolerance.
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//
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// This termination criterion is more useful when using CG to
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// solve the Newton step. This particular convergence test comes
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// from Stephen Nash's work on truncated Newton
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// methods. References:
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//
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// 1. Stephen G. Nash & Ariela Sofer, Assessing A Search
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// Direction Within A Truncated Newton Method, Operation
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// Research Letters 9(1990) 219-221.
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//
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// 2. Stephen G. Nash, A Survey of Truncated Newton Methods,
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// Journal of Computational and Applied Mathematics,
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// 124(1-2), 45-59, 2000.
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//
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double q_tolerance;
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};
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// Summary of a call to the Solve method. We should move away from
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// the true/false method for determining solver success. We should
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// let the summary object do the talking.
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struct Summary {
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Summary()
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: residual_norm(0.0),
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num_iterations(-1),
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termination_type(LINEAR_SOLVER_FAILURE) {
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}
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double residual_norm;
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int num_iterations;
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LinearSolverTerminationType termination_type;
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std::string message;
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};
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// If the optimization problem is such that there are no remaining
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// e-blocks, a Schur type linear solver cannot be used. If the
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// linear solver is of Schur type, this function implements a policy
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// to select an alternate nearest linear solver to the one selected
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// by the user. The input linear_solver_type is returned otherwise.
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static LinearSolverType LinearSolverForZeroEBlocks(
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LinearSolverType linear_solver_type);
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virtual ~LinearSolver();
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// Solve Ax = b.
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virtual Summary Solve(LinearOperator* A,
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const double* b,
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const PerSolveOptions& per_solve_options,
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double* x) = 0;
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// The following two methods return copies instead of references so
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// that the base class implementation does not have to worry about
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// life time issues. Further, these calls are not expected to be
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// frequent or performance sensitive.
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virtual std::map<std::string, int> CallStatistics() const {
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return std::map<std::string, int>();
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}
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virtual std::map<std::string, double> TimeStatistics() const {
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return std::map<std::string, double>();
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}
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// Factory
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static LinearSolver* Create(const Options& options);
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};
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// This templated subclass of LinearSolver serves as a base class for
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// other linear solvers that depend on the particular matrix layout of
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// the underlying linear operator. For example some linear solvers
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// need low level access to the TripletSparseMatrix implementing the
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// LinearOperator interface. This class hides those implementation
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// details behind a private virtual method, and has the Solve method
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// perform the necessary upcasting.
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template <typename MatrixType>
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class TypedLinearSolver : public LinearSolver {
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public:
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virtual ~TypedLinearSolver() {}
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virtual LinearSolver::Summary Solve(
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LinearOperator* A,
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const double* b,
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const LinearSolver::PerSolveOptions& per_solve_options,
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double* x) {
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ScopedExecutionTimer total_time("LinearSolver::Solve", &execution_summary_);
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CHECK_NOTNULL(A);
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CHECK_NOTNULL(b);
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CHECK_NOTNULL(x);
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return SolveImpl(down_cast<MatrixType*>(A), b, per_solve_options, x);
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}
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virtual std::map<std::string, int> CallStatistics() const {
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return execution_summary_.calls();
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}
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virtual std::map<std::string, double> TimeStatistics() const {
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return execution_summary_.times();
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}
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private:
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virtual LinearSolver::Summary SolveImpl(
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MatrixType* A,
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const double* b,
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const LinearSolver::PerSolveOptions& per_solve_options,
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double* x) = 0;
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ExecutionSummary execution_summary_;
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};
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// Linear solvers that depend on acccess to the low level structure of
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// a SparseMatrix.
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typedef TypedLinearSolver<BlockSparseMatrix> BlockSparseMatrixSolver; // NOLINT
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typedef TypedLinearSolver<CompressedRowSparseMatrix> CompressedRowSparseMatrixSolver; // NOLINT
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typedef TypedLinearSolver<DenseSparseMatrix> DenseSparseMatrixSolver; // NOLINT
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typedef TypedLinearSolver<TripletSparseMatrix> TripletSparseMatrixSolver; // NOLINT
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} // namespace internal
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} // namespace ceres
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#endif // CERES_INTERNAL_LINEAR_SOLVER_H_
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