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- #include "ceres/line_search.h"
- #include <algorithm>
- #include <cmath>
- #include <iomanip>
- #include <map>
- #include <memory>
- #include <ostream> // NOLINT
- #include <string>
- #include <vector>
- #include "ceres/evaluator.h"
- #include "ceres/function_sample.h"
- #include "ceres/internal/eigen.h"
- #include "ceres/map_util.h"
- #include "ceres/polynomial.h"
- #include "ceres/stringprintf.h"
- #include "ceres/wall_time.h"
- #include "glog/logging.h"
- namespace ceres::internal {
- namespace {
- const int kErrorMessageNumericPrecision = 8;
- }
- std::ostream& operator<<(std::ostream& os, const FunctionSample& sample);
- std::ostream& operator<<(std::ostream& os, const FunctionSample& sample) {
- os << sample.ToDebugString();
- return os;
- }
- LineSearch::~LineSearch() = default;
- LineSearch::LineSearch(const LineSearch::Options& options)
- : options_(options) {}
- std::unique_ptr<LineSearch> LineSearch::Create(
- const LineSearchType line_search_type,
- const LineSearch::Options& options,
- std::string* error) {
- switch (line_search_type) {
- case ceres::ARMIJO:
- return std::make_unique<ArmijoLineSearch>(options);
- case ceres::WOLFE:
- return std::make_unique<WolfeLineSearch>(options);
- default:
- *error = std::string("Invalid line search algorithm type: ") +
- LineSearchTypeToString(line_search_type) +
- std::string(", unable to create line search.");
- }
- return nullptr;
- }
- LineSearchFunction::LineSearchFunction(Evaluator* evaluator)
- : evaluator_(evaluator),
- position_(evaluator->NumParameters()),
- direction_(evaluator->NumEffectiveParameters()),
- scaled_direction_(evaluator->NumEffectiveParameters()),
- initial_evaluator_residual_time_in_seconds(0.0),
- initial_evaluator_jacobian_time_in_seconds(0.0) {}
- void LineSearchFunction::Init(const Vector& position, const Vector& direction) {
- position_ = position;
- direction_ = direction;
- }
- void LineSearchFunction::Evaluate(const double x,
- const bool evaluate_gradient,
- FunctionSample* output) {
- output->x = x;
- output->vector_x_is_valid = false;
- output->value_is_valid = false;
- output->gradient_is_valid = false;
- output->vector_gradient_is_valid = false;
- scaled_direction_ = output->x * direction_;
- output->vector_x.resize(position_.rows(), 1);
- if (!evaluator_->Plus(position_.data(),
- scaled_direction_.data(),
- output->vector_x.data())) {
- return;
- }
- output->vector_x_is_valid = true;
- double* gradient = nullptr;
- if (evaluate_gradient) {
- output->vector_gradient.resize(direction_.rows(), 1);
- gradient = output->vector_gradient.data();
- }
- const bool eval_status = evaluator_->Evaluate(
- output->vector_x.data(), &(output->value), nullptr, gradient, nullptr);
- if (!eval_status || !std::isfinite(output->value)) {
- return;
- }
- output->value_is_valid = true;
- if (!evaluate_gradient) {
- return;
- }
- output->gradient = direction_.dot(output->vector_gradient);
- if (!std::isfinite(output->gradient)) {
- return;
- }
- output->gradient_is_valid = true;
- output->vector_gradient_is_valid = true;
- }
- double LineSearchFunction::DirectionInfinityNorm() const {
- return direction_.lpNorm<Eigen::Infinity>();
- }
- void LineSearchFunction::ResetTimeStatistics() {
- const std::map<std::string, CallStatistics> evaluator_statistics =
- evaluator_->Statistics();
- initial_evaluator_residual_time_in_seconds =
- FindWithDefault(
- evaluator_statistics, "Evaluator::Residual", CallStatistics())
- .time;
- initial_evaluator_jacobian_time_in_seconds =
- FindWithDefault(
- evaluator_statistics, "Evaluator::Jacobian", CallStatistics())
- .time;
- }
- void LineSearchFunction::TimeStatistics(
- double* cost_evaluation_time_in_seconds,
- double* gradient_evaluation_time_in_seconds) const {
- const std::map<std::string, CallStatistics> evaluator_time_statistics =
- evaluator_->Statistics();
- *cost_evaluation_time_in_seconds =
- FindWithDefault(
- evaluator_time_statistics, "Evaluator::Residual", CallStatistics())
- .time -
- initial_evaluator_residual_time_in_seconds;
-
-
-
-
-
-
- *gradient_evaluation_time_in_seconds =
- FindWithDefault(
- evaluator_time_statistics, "Evaluator::Jacobian", CallStatistics())
- .time -
- initial_evaluator_jacobian_time_in_seconds;
- }
- void LineSearch::Search(double step_size_estimate,
- double initial_cost,
- double initial_gradient,
- Summary* summary) const {
- const double start_time = WallTimeInSeconds();
- CHECK(summary != nullptr);
- *summary = LineSearch::Summary();
- summary->cost_evaluation_time_in_seconds = 0.0;
- summary->gradient_evaluation_time_in_seconds = 0.0;
- summary->polynomial_minimization_time_in_seconds = 0.0;
- options().function->ResetTimeStatistics();
- this->DoSearch(step_size_estimate, initial_cost, initial_gradient, summary);
- options().function->TimeStatistics(
- &summary->cost_evaluation_time_in_seconds,
- &summary->gradient_evaluation_time_in_seconds);
- summary->total_time_in_seconds = WallTimeInSeconds() - start_time;
- }
- double LineSearch::InterpolatingPolynomialMinimizingStepSize(
- const LineSearchInterpolationType& interpolation_type,
- const FunctionSample& lowerbound,
- const FunctionSample& previous,
- const FunctionSample& current,
- const double min_step_size,
- const double max_step_size) const {
- if (!current.value_is_valid ||
- (interpolation_type == BISECTION && max_step_size <= current.x)) {
-
-
- return std::min(std::max(current.x * 0.5, min_step_size), max_step_size);
- } else if (interpolation_type == BISECTION) {
- CHECK_GT(max_step_size, current.x);
-
-
-
-
-
- return max_step_size;
- }
-
-
-
- CHECK(lowerbound.value_is_valid)
- << std::scientific << std::setprecision(kErrorMessageNumericPrecision)
- << "Ceres bug: lower-bound sample for interpolation is invalid, "
- << "please contact the developers!, interpolation_type: "
- << LineSearchInterpolationTypeToString(interpolation_type)
- << ", lowerbound: " << lowerbound << ", previous: " << previous
- << ", current: " << current;
-
-
- std::vector<FunctionSample> samples;
- samples.push_back(lowerbound);
- if (interpolation_type == QUADRATIC) {
-
-
- samples.emplace_back(current.x, current.value);
- if (previous.value_is_valid) {
-
-
- samples.emplace_back(previous.x, previous.value);
- }
- } else if (interpolation_type == CUBIC) {
-
- samples.push_back(current);
- if (previous.value_is_valid) {
-
-
- samples.push_back(previous);
- }
- } else {
- LOG(FATAL) << "Ceres bug: No handler for interpolation_type: "
- << LineSearchInterpolationTypeToString(interpolation_type)
- << ", please contact the developers!";
- }
- double step_size = 0.0, unused_min_value = 0.0;
- MinimizeInterpolatingPolynomial(
- samples, min_step_size, max_step_size, &step_size, &unused_min_value);
- return step_size;
- }
- ArmijoLineSearch::ArmijoLineSearch(const LineSearch::Options& options)
- : LineSearch(options) {}
- void ArmijoLineSearch::DoSearch(const double step_size_estimate,
- const double initial_cost,
- const double initial_gradient,
- Summary* summary) const {
- CHECK_GE(step_size_estimate, 0.0);
- CHECK_GT(options().sufficient_decrease, 0.0);
- CHECK_LT(options().sufficient_decrease, 1.0);
- CHECK_GT(options().max_num_iterations, 0);
- LineSearchFunction* function = options().function;
-
-
- FunctionSample initial_position(0.0, initial_cost, initial_gradient);
- initial_position.vector_x = function->position();
- initial_position.vector_x_is_valid = true;
- const double descent_direction_max_norm = function->DirectionInfinityNorm();
- FunctionSample previous;
- FunctionSample current;
-
-
-
-
- const bool kEvaluateGradient = options().interpolation_type == CUBIC;
- ++summary->num_function_evaluations;
- if (kEvaluateGradient) {
- ++summary->num_gradient_evaluations;
- }
- function->Evaluate(step_size_estimate, kEvaluateGradient, ¤t);
- while (!current.value_is_valid ||
- current.value > (initial_cost + options().sufficient_decrease *
- initial_gradient * current.x)) {
-
-
- ++summary->num_iterations;
- if (summary->num_iterations >= options().max_num_iterations) {
- summary->error = StringPrintf(
- "Line search failed: Armijo failed to find a point "
- "satisfying the sufficient decrease condition within "
- "specified max_num_iterations: %d.",
- options().max_num_iterations);
- if (!options().is_silent) {
- LOG(WARNING) << summary->error;
- }
- return;
- }
- const double polynomial_minimization_start_time = WallTimeInSeconds();
- const double step_size = this->InterpolatingPolynomialMinimizingStepSize(
- options().interpolation_type,
- initial_position,
- previous,
- current,
- (options().max_step_contraction * current.x),
- (options().min_step_contraction * current.x));
- summary->polynomial_minimization_time_in_seconds +=
- (WallTimeInSeconds() - polynomial_minimization_start_time);
- if (step_size * descent_direction_max_norm < options().min_step_size) {
- summary->error = StringPrintf(
- "Line search failed: step_size too small: %.5e "
- "with descent_direction_max_norm: %.5e.",
- step_size,
- descent_direction_max_norm);
- if (!options().is_silent) {
- LOG(WARNING) << summary->error;
- }
- return;
- }
- previous = current;
- ++summary->num_function_evaluations;
- if (kEvaluateGradient) {
- ++summary->num_gradient_evaluations;
- }
- function->Evaluate(step_size, kEvaluateGradient, ¤t);
- }
- summary->optimal_point = current;
- summary->success = true;
- }
- WolfeLineSearch::WolfeLineSearch(const LineSearch::Options& options)
- : LineSearch(options) {}
- void WolfeLineSearch::DoSearch(const double step_size_estimate,
- const double initial_cost,
- const double initial_gradient,
- Summary* summary) const {
-
-
- CHECK_GE(step_size_estimate, 0.0);
- CHECK_GT(options().sufficient_decrease, 0.0);
- CHECK_GT(options().sufficient_curvature_decrease,
- options().sufficient_decrease);
- CHECK_LT(options().sufficient_curvature_decrease, 1.0);
- CHECK_GT(options().max_step_expansion, 1.0);
-
-
- FunctionSample initial_position(0.0, initial_cost, initial_gradient);
- initial_position.vector_x = options().function->position();
- initial_position.vector_x_is_valid = true;
- bool do_zoom_search = false;
-
-
-
- FunctionSample solution, bracket_low, bracket_high;
-
-
-
-
-
-
-
-
-
-
-
-
- if (!this->BracketingPhase(initial_position,
- step_size_estimate,
- &bracket_low,
- &bracket_high,
- &do_zoom_search,
- summary)) {
-
-
-
- return;
- }
- if (!do_zoom_search) {
-
-
-
-
-
-
-
-
-
-
- summary->optimal_point = bracket_low;
- summary->success = true;
- return;
- }
- VLOG(3) << std::scientific << std::setprecision(kErrorMessageNumericPrecision)
- << "Starting line search zoom phase with bracket_low: " << bracket_low
- << ", bracket_high: " << bracket_high
- << ", bracket width: " << fabs(bracket_low.x - bracket_high.x)
- << ", bracket abs delta cost: "
- << fabs(bracket_low.value - bracket_high.value);
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
- if (!this->ZoomPhase(
- initial_position, bracket_low, bracket_high, &solution, summary) &&
- !solution.value_is_valid) {
-
-
- return;
- }
-
-
-
-
-
- if (!solution.value_is_valid || solution.value > bracket_low.value) {
- summary->optimal_point = bracket_low;
- } else {
- summary->optimal_point = solution;
- }
- summary->success = true;
- }
- bool WolfeLineSearch::BracketingPhase(const FunctionSample& initial_position,
- const double step_size_estimate,
- FunctionSample* bracket_low,
- FunctionSample* bracket_high,
- bool* do_zoom_search,
- Summary* summary) const {
- LineSearchFunction* function = options().function;
- FunctionSample previous = initial_position;
- FunctionSample current;
- const double descent_direction_max_norm = function->DirectionInfinityNorm();
- *do_zoom_search = false;
- *bracket_low = initial_position;
-
-
-
-
-
-
-
-
-
- ++summary->num_function_evaluations;
- ++summary->num_gradient_evaluations;
- const bool kEvaluateGradient = true;
- function->Evaluate(step_size_estimate, kEvaluateGradient, ¤t);
- while (true) {
- ++summary->num_iterations;
- if (current.value_is_valid &&
- (current.value > (initial_position.value +
- options().sufficient_decrease *
- initial_position.gradient * current.x) ||
- (previous.value_is_valid && current.value > previous.value))) {
-
-
-
- *do_zoom_search = true;
- *bracket_low = previous;
- *bracket_high = current;
- VLOG(3) << std::scientific
- << std::setprecision(kErrorMessageNumericPrecision)
- << "Bracket found: current step (" << current.x
- << ") violates Armijo sufficient condition, or has passed an "
- << "inflection point of f() based on value.";
- break;
- }
- if (current.value_is_valid &&
- fabs(current.gradient) <= -options().sufficient_curvature_decrease *
- initial_position.gradient) {
-
-
- *bracket_low = current;
- *bracket_high = current;
- VLOG(3) << std::scientific
- << std::setprecision(kErrorMessageNumericPrecision)
- << "Bracketing phase found step size: " << current.x
- << ", satisfying strong Wolfe conditions, initial_position: "
- << initial_position << ", current: " << current;
- break;
- } else if (current.value_is_valid && current.gradient >= 0) {
-
-
-
-
-
- *do_zoom_search = true;
-
- *bracket_low = current;
- *bracket_high = previous;
- VLOG(3) << "Bracket found: current step (" << current.x
- << ") satisfies Armijo, but has gradient >= 0, thus have passed "
- << "an inflection point of f().";
- break;
- } else if (current.value_is_valid &&
- fabs(current.x - previous.x) * descent_direction_max_norm <
- options().min_step_size) {
-
-
-
-
-
- if (!options().is_silent) {
- LOG(WARNING) << "Line search failed: Wolfe bracketing phase shrank "
- << "bracket width: " << fabs(current.x - previous.x)
- << ", to < tolerance: " << options().min_step_size
- << ", with descent_direction_max_norm: "
- << descent_direction_max_norm << ", and failed to find "
- << "a point satisfying the strong Wolfe conditions or a "
- << "bracketing containing such a point. Accepting "
- << "point found satisfying Armijo condition only, to "
- << "allow continuation.";
- }
- *bracket_low = current;
- break;
- } else if (summary->num_iterations >= options().max_num_iterations) {
-
-
-
- summary->error = StringPrintf(
- "Line search failed: Wolfe bracketing phase failed to "
- "find a point satisfying strong Wolfe conditions, or a "
- "bracket containing such a point within specified "
- "max_num_iterations: %d",
- options().max_num_iterations);
- if (!options().is_silent) {
- LOG(WARNING) << summary->error;
- }
-
-
-
- *bracket_low =
- current.value_is_valid && current.value < bracket_low->value
- ? current
- : *bracket_low;
- break;
- }
-
-
-
-
-
-
-
-
-
-
-
-
-
- const double min_step_size =
- current.value_is_valid ? current.x : previous.x;
- const double max_step_size =
- current.value_is_valid ? (current.x * options().max_step_expansion)
- : current.x;
-
-
-
-
- const FunctionSample unused_previous;
- DCHECK(!unused_previous.value_is_valid);
-
- const double polynomial_minimization_start_time = WallTimeInSeconds();
- const double step_size = this->InterpolatingPolynomialMinimizingStepSize(
- options().interpolation_type,
- previous,
- unused_previous,
- current,
- min_step_size,
- max_step_size);
- summary->polynomial_minimization_time_in_seconds +=
- (WallTimeInSeconds() - polynomial_minimization_start_time);
- if (step_size * descent_direction_max_norm < options().min_step_size) {
- summary->error = StringPrintf(
- "Line search failed: step_size too small: %.5e "
- "with descent_direction_max_norm: %.5e",
- step_size,
- descent_direction_max_norm);
- if (!options().is_silent) {
- LOG(WARNING) << summary->error;
- }
- return false;
- }
-
-
-
-
- previous = current.value_is_valid ? current : previous;
- ++summary->num_function_evaluations;
- ++summary->num_gradient_evaluations;
- function->Evaluate(step_size, kEvaluateGradient, ¤t);
- }
-
-
- if (*do_zoom_search &&
- fabs(bracket_high->x - bracket_low->x) * descent_direction_max_norm <
- options().min_step_size) {
- *do_zoom_search = false;
- }
- return true;
- }
- bool WolfeLineSearch::ZoomPhase(const FunctionSample& initial_position,
- FunctionSample bracket_low,
- FunctionSample bracket_high,
- FunctionSample* solution,
- Summary* summary) const {
- LineSearchFunction* function = options().function;
- CHECK(bracket_low.value_is_valid && bracket_low.gradient_is_valid)
- << std::scientific << std::setprecision(kErrorMessageNumericPrecision)
- << "Ceres bug: f_low input to Wolfe Zoom invalid, please contact "
- << "the developers!, initial_position: " << initial_position
- << ", bracket_low: " << bracket_low << ", bracket_high: " << bracket_high;
-
-
-
-
-
-
-
-
-
-
-
-
- CHECK(bracket_high.value_is_valid)
- << std::scientific << std::setprecision(kErrorMessageNumericPrecision)
- << "Ceres bug: f_high input to Wolfe Zoom invalid, please "
- << "contact the developers!, initial_position: " << initial_position
- << ", bracket_low: " << bracket_low << ", bracket_high: " << bracket_high;
- if (bracket_low.gradient * (bracket_high.x - bracket_low.x) >= 0) {
-
-
-
-
-
-
-
-
-
- summary->error = StringPrintf(
- "Line search failed: Wolfe zoom phase passed a bracket "
- "which does not satisfy: bracket_low.gradient * "
- "(bracket_high.x - bracket_low.x) < 0 [%.8e !< 0] "
- "with initial_position: %s, bracket_low: %s, bracket_high:"
- " %s, the most likely cause of which is the cost function "
- "returning inconsistent gradient & function values.",
- bracket_low.gradient * (bracket_high.x - bracket_low.x),
- initial_position.ToDebugString().c_str(),
- bracket_low.ToDebugString().c_str(),
- bracket_high.ToDebugString().c_str());
- if (!options().is_silent) {
- LOG(WARNING) << summary->error;
- }
- solution->value_is_valid = false;
- return false;
- }
- const int num_bracketing_iterations = summary->num_iterations;
- const double descent_direction_max_norm = function->DirectionInfinityNorm();
- while (true) {
-
-
-
- *solution = bracket_low;
- if (summary->num_iterations >= options().max_num_iterations) {
- summary->error = StringPrintf(
- "Line search failed: Wolfe zoom phase failed to "
- "find a point satisfying strong Wolfe conditions "
- "within specified max_num_iterations: %d, "
- "(num iterations taken for bracketing: %d).",
- options().max_num_iterations,
- num_bracketing_iterations);
- if (!options().is_silent) {
- LOG(WARNING) << summary->error;
- }
- return false;
- }
- if (fabs(bracket_high.x - bracket_low.x) * descent_direction_max_norm <
- options().min_step_size) {
-
-
- summary->error = StringPrintf(
- "Line search failed: Wolfe zoom bracket width: %.5e "
- "too small with descent_direction_max_norm: %.5e.",
- fabs(bracket_high.x - bracket_low.x),
- descent_direction_max_norm);
- if (!options().is_silent) {
- LOG(WARNING) << summary->error;
- }
- return false;
- }
- ++summary->num_iterations;
-
-
- const FunctionSample& lower_bound_step =
- bracket_low.x < bracket_high.x ? bracket_low : bracket_high;
- const FunctionSample& upper_bound_step =
- bracket_low.x < bracket_high.x ? bracket_high : bracket_low;
-
-
-
-
- const FunctionSample unused_previous;
- DCHECK(!unused_previous.value_is_valid);
- const double polynomial_minimization_start_time = WallTimeInSeconds();
- const double step_size = this->InterpolatingPolynomialMinimizingStepSize(
- options().interpolation_type,
- lower_bound_step,
- unused_previous,
- upper_bound_step,
- lower_bound_step.x,
- upper_bound_step.x);
- summary->polynomial_minimization_time_in_seconds +=
- (WallTimeInSeconds() - polynomial_minimization_start_time);
-
-
-
-
-
-
-
-
-
-
-
-
- ++summary->num_function_evaluations;
- ++summary->num_gradient_evaluations;
- const bool kEvaluateGradient = true;
- function->Evaluate(step_size, kEvaluateGradient, solution);
- if (!solution->value_is_valid || !solution->gradient_is_valid) {
- summary->error = StringPrintf(
- "Line search failed: Wolfe Zoom phase found "
- "step_size: %.5e, for which function is invalid, "
- "between low_step: %.5e and high_step: %.5e "
- "at which function is valid.",
- solution->x,
- bracket_low.x,
- bracket_high.x);
- if (!options().is_silent) {
- LOG(WARNING) << summary->error;
- }
- return false;
- }
- VLOG(3) << "Zoom iteration: "
- << summary->num_iterations - num_bracketing_iterations
- << ", bracket_low: " << bracket_low
- << ", bracket_high: " << bracket_high
- << ", minimizing solution: " << *solution;
- if ((solution->value > (initial_position.value +
- options().sufficient_decrease *
- initial_position.gradient * solution->x)) ||
- (solution->value >= bracket_low.value)) {
-
-
- bracket_high = *solution;
- continue;
- }
-
- if (fabs(solution->gradient) <=
- -options().sufficient_curvature_decrease * initial_position.gradient) {
-
- VLOG(3) << std::scientific
- << std::setprecision(kErrorMessageNumericPrecision)
- << "Zoom phase found step size: " << solution->x
- << ", satisfying strong Wolfe conditions.";
- break;
- } else if (solution->gradient * (bracket_high.x - bracket_low.x) >= 0) {
- bracket_high = bracket_low;
- }
- bracket_low = *solution;
- }
-
-
- return true;
- }
- }
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