471 lines
18 KiB
C++
471 lines
18 KiB
C++
/* ----------------------------------------------------------------------------
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* GTSAM Copyright 2010, Georgia Tech Research Corporation,
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* Atlanta, Georgia 30332-0415
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* All Rights Reserved
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* Authors: Frank Dellaert, et al. (see THANKS for the full author list)
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* See LICENSE for the license information
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* -------------------------------------------------------------------------- */
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/**
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* @file ConcurrentBatchSmoother.cpp
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* @brief A Levenberg-Marquardt Batch Smoother that implements the
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* Concurrent Filtering and Smoothing interface.
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* @author Stephen Williams
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*/
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#include <gtsam_unstable/nonlinear/ConcurrentBatchSmoother.h>
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#include <gtsam_unstable/nonlinear/LinearizedFactor.h>
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#include <gtsam/inference/JunctionTree.h>
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#include <gtsam/base/timing.h>
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#include <boost/lambda/lambda.hpp>
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namespace gtsam {
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/* ************************************************************************* */
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void ConcurrentBatchSmoother::SymbolicPrintTree(const Clique& clique, const Ordering& ordering, const std::string indent) {
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std::cout << indent << "P( ";
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BOOST_FOREACH(Index index, clique->conditional()->frontals()){
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std::cout << DefaultKeyFormatter(ordering.key(index)) << " ";
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}
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if(clique->conditional()->nrParents() > 0) {
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std::cout << "| ";
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}
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BOOST_FOREACH(Index index, clique->conditional()->parents()){
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std::cout << DefaultKeyFormatter(ordering.key(index)) << " ";
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}
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std::cout << ")" << std::endl;
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BOOST_FOREACH(const Clique& child, clique->children()) {
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SymbolicPrintTree(child, ordering, indent+" ");
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}
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}
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/* ************************************************************************* */
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void ConcurrentBatchSmoother::print(const std::string& s,
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const KeyFormatter& keyFormatter) const {
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std::cout << s;
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graph_.print("Factors:\n");
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theta_.print("Values:\n");
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}
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/* ************************************************************************* */
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ConcurrentBatchSmoother::Result ConcurrentBatchSmoother::update(const NonlinearFactorGraph& newFactors, const Values& newTheta) {
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gttic(update);
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// Create result structure
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Result result;
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gttic(augment_system);
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// Add the new factors to the graph
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BOOST_FOREACH(const NonlinearFactor::shared_ptr& factor, newFactors) {
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insertFactor(factor);
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}
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// Add the new variables to theta
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theta_.insert(newTheta);
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gttoc(augment_system);
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// Optimize the graph, updating theta
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gttic(optimize);
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if(graph_.size() > 0){
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// Create an L-M optimizer
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Values linpoint;
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linpoint.insert(theta_);
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if(rootValues_.size() > 0) {
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linpoint.insert(rootValues_);
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}
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LevenbergMarquardtOptimizer optimizer(graph_, linpoint, parameters_);
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// Use a custom optimization loop so the linearization points can be controlled
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double currentError;
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do {
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// Do next iteration
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gttic(optimizer_iteration);
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currentError = optimizer.error();
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optimizer.iterate();
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gttoc(optimizer_iteration);
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// Force variables associated with root keys to keep the same linearization point
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gttic(enforce_consistency);
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if(rootValues_.size() > 0) {
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// Put the old values of the root keys back into the optimizer state
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optimizer.state().values.update(rootValues_);
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optimizer.state().error = graph_.error(optimizer.state().values);
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}
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gttoc(enforce_consistency);
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// Maybe show output
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if(parameters_.verbosity >= NonlinearOptimizerParams::VALUES) optimizer.values().print("newValues");
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if(parameters_.verbosity >= NonlinearOptimizerParams::ERROR) std::cout << "newError: " << optimizer.error() << std::endl;
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} while(optimizer.iterations() < parameters_.maxIterations &&
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!checkConvergence(parameters_.relativeErrorTol, parameters_.absoluteErrorTol,
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parameters_.errorTol, currentError, optimizer.error(), parameters_.verbosity));
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// Update theta from the optimizer, then remove root variables
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theta_ = optimizer.values();
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BOOST_FOREACH(const Values::ConstKeyValuePair& key_value, rootValues_) {
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theta_.erase(key_value.key);
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}
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result.iterations = optimizer.state().iterations;
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result.nonlinearVariables = theta_.size();
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result.linearVariables = rootValues_.size();
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result.error = optimizer.state().error;
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}
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gttoc(optimize);
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// Move all of the Pre-Sync code to the end of the update. This allows the smoother to perform these
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// calculations while the filter is still running
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gttic(presync);
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// Calculate and store the information passed up to the root clique. This requires:
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// 1) Calculate an ordering that forces the rootKey variables to be in the root
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// 2) Perform an elimination, constructing a Bayes Tree from the currnet
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// variable values. This elimination will use the iSAM2 version of a clique so
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// that cached factors are stored
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// 3) Verify the root's cached factors involve only root keys; all others should
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// be marginalized
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// 4) Convert cached factors into 'Linearized' nonlinear factors
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if(rootValues_.size() > 0) {
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// Force variables associated with root keys to keep the same linearization point
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gttic(enforce_consistency);
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Values linpoint;
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linpoint.insert(theta_);
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linpoint.insert(rootValues_);
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//linpoint.print("ConcurrentBatchSmoother::presync() LinPoint:\n");
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gttoc(enforce_consistency);
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// Calculate a root-constrained ordering
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gttic(compute_ordering);
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std::map<Key, int> constraints;
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BOOST_FOREACH(const Values::ConstKeyValuePair& key_value, rootValues_) {
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constraints[key_value.key] = 1;
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}
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Ordering ordering = *graph_.orderingCOLAMDConstrained(linpoint, constraints);
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gttoc(compute_ordering);
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// Create a Bayes Tree using iSAM2 cliques
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gttic(create_bayes_tree);
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JunctionTree<GaussianFactorGraph, ISAM2Clique> jt(*graph_.linearize(linpoint, ordering));
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ISAM2Clique::shared_ptr root = jt.eliminate(parameters_.getEliminationFunction());
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BayesTree<GaussianConditional, ISAM2Clique> bayesTree;
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bayesTree.insert(root);
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gttoc(create_bayes_tree);
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//ordering.print("ConcurrentBatchSmoother::presync() Ordering:\n");
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std::cout << "ConcurrentBatchSmoother::presync() Root Keys: "; BOOST_FOREACH(const Values::ConstKeyValuePair& key_value, rootValues_) { std::cout << DefaultKeyFormatter(key_value.key) << " "; } std::cout << std::endl;
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std::cout << "ConcurrentBatchSmoother::presync() Bayes Tree:" << std::endl;
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SymbolicPrintTree(root, ordering, " ");
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// Extract the marginal factors from the smoother
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// For any non-filter factor that involves a root variable,
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// calculate its marginal on the root variables using the
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// current linearization point.
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// Find all of the smoother branches as the children of root cliques that are not also root cliques
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gttic(find_smoother_branches);
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std::set<ISAM2Clique::shared_ptr> rootCliques;
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std::set<ISAM2Clique::shared_ptr> smootherBranches;
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BOOST_FOREACH(const Values::ConstKeyValuePair& key_value, rootValues_) {
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const ISAM2Clique::shared_ptr& clique = bayesTree.nodes().at(ordering.at(key_value.key));
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if(clique) {
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rootCliques.insert(clique);
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smootherBranches.insert(clique->children().begin(), clique->children().end());
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}
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}
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BOOST_FOREACH(const ISAM2Clique::shared_ptr& rootClique, rootCliques) {
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smootherBranches.erase(rootClique);
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}
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gttoc(find_smoother_branches);
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// Extract the cached factors on the root cliques from the smoother branches
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gttic(extract_cached_factors);
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GaussianFactorGraph cachedFactors;
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BOOST_FOREACH(const ISAM2Clique::shared_ptr& clique, smootherBranches) {
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cachedFactors.push_back(clique->cachedFactor());
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}
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gttoc(extract_cached_factors);
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std::cout << "ConcurrentBatchSmoother::presync() Cached Factors Before:" << std::endl;
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BOOST_FOREACH(const GaussianFactor::shared_ptr& factor, cachedFactors) {
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std::cout << " g( ";
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BOOST_FOREACH(Index index, factor->keys()) {
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std::cout << DefaultKeyFormatter(ordering.key(index)) << " ";
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}
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std::cout << ")" << std::endl;
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}
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// Marginalize out any additional (non-root) variables
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gttic(marginalize_extra_variables);
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// The rootKeys have been ordered last, so their linear indices will be { linpoint.size()-rootKeys.size() :: linpoint.size()-1 }
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Index minRootIndex = linpoint.size() - rootValues_.size();
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// Calculate the set of keys to be marginalized
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FastSet<Index> cachedIndices = cachedFactors.keys();
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std::vector<Index> marginalizeIndices;
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std::remove_copy_if(cachedIndices.begin(), cachedIndices.end(), std::back_inserter(marginalizeIndices), boost::lambda::_1 >= minRootIndex);
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std::cout << "ConcurrentBatchSmoother::presync() Marginalize Keys: ";
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BOOST_FOREACH(Index index, marginalizeIndices) { std::cout << DefaultKeyFormatter(ordering.key(index)) << " "; }
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std::cout << std::endl;
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// If non-root-keys are present, marginalize them out
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if(marginalizeIndices.size() > 0) {
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// Eliminate the extra variables, stored the remaining factors back into the 'cachedFactors' graph
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GaussianConditional::shared_ptr conditional;
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boost::tie(conditional, cachedFactors) = cachedFactors.eliminate(marginalizeIndices, parameters_.getEliminationFunction());
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}
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gttoc(marginalize_extra_variables);
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std::cout << "ConcurrentBatchSmoother::presync() Cached Factors After:" << std::endl;
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BOOST_FOREACH(const GaussianFactor::shared_ptr& factor, cachedFactors) {
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std::cout << " g( ";
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BOOST_FOREACH(Index index, factor->keys()) {
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std::cout << DefaultKeyFormatter(ordering.key(index)) << " ";
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}
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std::cout << ")" << std::endl;
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}
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// Convert factors into 'Linearized' nonlinear factors
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gttic(store_cached_factors);
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smootherSummarization_.resize(0);
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BOOST_FOREACH(const GaussianFactor::shared_ptr& gaussianFactor, cachedFactors) {
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LinearizedGaussianFactor::shared_ptr factor;
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if(const JacobianFactor::shared_ptr rhs = boost::dynamic_pointer_cast<JacobianFactor>(gaussianFactor))
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factor = LinearizedJacobianFactor::shared_ptr(new LinearizedJacobianFactor(rhs, ordering, linpoint));
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else if(const HessianFactor::shared_ptr rhs = boost::dynamic_pointer_cast<HessianFactor>(gaussianFactor))
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factor = LinearizedHessianFactor::shared_ptr(new LinearizedHessianFactor(rhs, ordering, linpoint));
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else
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throw std::invalid_argument("In ConcurrentBatchSmoother::presync(...), cached factor is neither a JacobianFactor nor a HessianFactor");
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smootherSummarization_.push_back(factor);
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}
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gttoc(store_cached_factors);
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std::cout << "ConcurrentBatchSmoother::presync() Smoother Summarization:" << std::endl;
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BOOST_FOREACH(const NonlinearFactor::shared_ptr& factor, smootherSummarization_) {
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std::cout << " f( ";
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BOOST_FOREACH(Key key, factor->keys()) {
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std::cout << DefaultKeyFormatter(key) << " ";
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}
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std::cout << ")" << std::endl;
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}
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}
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gttoc(presync);
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gttoc(update);
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return result;
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}
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/* ************************************************************************* */
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void ConcurrentBatchSmoother::presync() {
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gttic(presync);
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gttoc(presync);
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}
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/* ************************************************************************* */
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void ConcurrentBatchSmoother::getSummarizedFactors(NonlinearFactorGraph& summarizedFactors) {
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gttic(get_summarized_factors);
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// Copy the previous calculated smoother summarization factors into the output
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summarizedFactors.push_back(smootherSummarization_);
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gttic(get_summarized_factors);
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}
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/* ************************************************************************* */
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void ConcurrentBatchSmoother::synchronize(const NonlinearFactorGraph& smootherFactors, const Values& smootherValues,
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const NonlinearFactorGraph& summarizedFactors, const Values& rootValues) {
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gttic(synchronize);
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// Remove the previous filter summarization from the graph
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BOOST_FOREACH(size_t slot, filterSummarizationSlots_) {
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removeFactor(slot);
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}
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filterSummarizationSlots_.clear();
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// Insert the new filter summarized factors
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BOOST_FOREACH(const NonlinearFactor::shared_ptr& factor, summarizedFactors) {
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filterSummarizationSlots_.push_back(insertFactor(factor));
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}
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// Insert the new smoother factors
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BOOST_FOREACH(const NonlinearFactor::shared_ptr& factor, smootherFactors) {
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insertFactor(factor);
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}
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// Insert new linpoints into the values
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theta_.insert(smootherValues);
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// Update the list of root keys
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rootValues_ = rootValues;
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gttoc(synchronize);
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}
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/* ************************************************************************* */
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void ConcurrentBatchSmoother::postsync() {
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gttic(postsync);
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gttoc(postsync);
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}
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/* ************************************************************************* */
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size_t ConcurrentBatchSmoother::insertFactor(const NonlinearFactor::shared_ptr& factor) {
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gttic(insert_factor);
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// Insert the factor into an existing hole in the factor graph, if possible
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size_t slot;
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if(availableSlots_.size() > 0) {
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slot = availableSlots_.front();
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availableSlots_.pop();
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graph_.replace(slot, factor);
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} else {
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slot = graph_.size();
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graph_.push_back(factor);
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}
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// Update the FactorIndex
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BOOST_FOREACH(Key key, *factor) {
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factorIndex_[key].insert(slot);
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}
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gttoc(insert_factors);
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return slot;
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}
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/* ************************************************************************* */
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void ConcurrentBatchSmoother::removeFactor(size_t slot) {
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gttic(remove_factors);
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// Remove references to this factor from the FactorIndex
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BOOST_FOREACH(Key key, *(graph_.at(slot))) {
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factorIndex_[key].erase(slot);
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}
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// Remove this factor from the graph
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graph_.remove(slot);
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// Mark the factor slot as avaiable
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availableSlots_.push(slot);
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gttoc(remove_factors);
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}
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/* ************************************************************************* */
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std::set<size_t> ConcurrentBatchSmoother::findFactorsWithAny(const std::set<Key>& keys) const {
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// Find the set of factor slots for each specified key
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std::set<size_t> factorSlots;
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BOOST_FOREACH(Key key, keys) {
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FactorIndex::const_iterator iter = factorIndex_.find(key);
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if(iter != factorIndex_.end()) {
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factorSlots.insert(iter->second.begin(), iter->second.end());
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}
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}
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return factorSlots;
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}
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/* ************************************************************************* */
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std::set<size_t> ConcurrentBatchSmoother::findFactorsWithOnly(const std::set<Key>& keys) const {
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// Find the set of factor slots with any of the provided keys
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std::set<size_t> factorSlots = findFactorsWithAny(keys);
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// Test each factor for non-specified keys
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std::set<size_t>::iterator slot = factorSlots.begin();
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while(slot != factorSlots.end()) {
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const NonlinearFactor::shared_ptr& factor = graph_.at(*slot);
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std::set<Key> factorKeys(factor->begin(), factor->end()); // ensure the keys are sorted
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if(!std::includes(keys.begin(), keys.end(), factorKeys.begin(), factorKeys.end())) {
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factorSlots.erase(slot++);
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} else {
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++slot;
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}
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}
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return factorSlots;
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}
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/* ************************************************************************* */
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NonlinearFactor::shared_ptr ConcurrentBatchSmoother::marginalizeKeysFromFactor(const NonlinearFactor::shared_ptr& factor, const std::set<Key>& keysToKeep, const Values& theta) const {
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factor->print("Factor Before:\n");
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// Sort the keys for this factor
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std::set<Key> factorKeys;
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BOOST_FOREACH(Key key, *factor) {
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factorKeys.insert(key);
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}
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// Calculate the set of keys to marginalize
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std::set<Key> marginalizeKeys;
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std::set_difference(factorKeys.begin(), factorKeys.end(), keysToKeep.begin(), keysToKeep.end(), std::inserter(marginalizeKeys, marginalizeKeys.end()));
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std::set<Key> remainingKeys;
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std::set_intersection(factorKeys.begin(), factorKeys.end(), keysToKeep.begin(), keysToKeep.end(), std::inserter(remainingKeys, remainingKeys.end()));
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//
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if(marginalizeKeys.size() == 0) {
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// No keys need to be marginalized out. Simply return the original factor.
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return factor;
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} else if(marginalizeKeys.size() == factor->size()) {
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// All keys need to be marginalized out. Return an empty factor
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return NonlinearFactor::shared_ptr();
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} else {
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// (0) Create an ordering with the remaining keys last
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Ordering ordering;
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BOOST_FOREACH(Key key, marginalizeKeys) {
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ordering.push_back(key);
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}
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BOOST_FOREACH(Key key, remainingKeys) {
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ordering.push_back(key);
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}
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ordering.print("Ordering:\n");
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// (1) construct a linear factor graph
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GaussianFactorGraph graph;
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graph.push_back( factor->linearize(theta, ordering) );
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graph.at(0)->print("Linear Factor Before:\n");
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// (2) solve for the marginal factor
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// Perform partial elimination, resulting in a conditional probability ( P(MarginalizedVariable | RemainingVariables)
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// and factors on the remaining variables ( f(RemainingVariables) ). These are the factors we need to add to iSAM2
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std::vector<Index> variables;
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BOOST_FOREACH(Key key, marginalizeKeys) {
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variables.push_back(ordering.at(key));
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}
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// std::pair<GaussianFactorGraph::sharedConditional, GaussianFactorGraph> result = graph.eliminate(variables);
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GaussianFactorGraph::EliminationResult result = EliminateQR(graph, marginalizeKeys.size());
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result.first->print("Resulting Conditional:\n");
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result.second->print("Resulting Linear Factor:\n");
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// graph = result.second;
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graph.replace(0, result.second);
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// (3) convert the marginal factors into Linearized Factors
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NonlinearFactor::shared_ptr marginalFactor;
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assert(graph.size() <= 1);
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if(graph.size() > 0) {
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graph.at(0)->print("Linear Factor After:\n");
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// These factors are all generated from BayesNet conditionals. They should all be Jacobians.
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JacobianFactor::shared_ptr jacobianFactor = boost::dynamic_pointer_cast<JacobianFactor>(graph.at(0));
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assert(jacobianFactor);
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marginalFactor = LinearizedJacobianFactor::shared_ptr(new LinearizedJacobianFactor(jacobianFactor, ordering, theta));
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}
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marginalFactor->print("Factor After:\n");
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return marginalFactor;
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}
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}
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/* ************************************************************************* */
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}/// namespace gtsam
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