unit test for end-2-end hybrid estimation
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/* ----------------------------------------------------------------------------
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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 testHybridEstimation.cpp
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* @brief Unit tests for end-to-end Hybrid Estimation
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* @author Varun Agrawal
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*/
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#include <gtsam/geometry/Pose2.h>
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#include <gtsam/hybrid/HybridBayesNet.h>
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#include <gtsam/hybrid/HybridNonlinearFactorGraph.h>
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#include <gtsam/hybrid/HybridNonlinearISAM.h>
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#include <gtsam/hybrid/HybridSmoother.h>
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#include <gtsam/hybrid/MixtureFactor.h>
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#include <gtsam/inference/Symbol.h>
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#include <gtsam/linear/GaussianBayesNet.h>
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#include <gtsam/linear/GaussianFactorGraph.h>
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#include <gtsam/linear/JacobianFactor.h>
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#include <gtsam/linear/NoiseModel.h>
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#include <gtsam/nonlinear/NonlinearFactorGraph.h>
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#include <gtsam/nonlinear/PriorFactor.h>
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#include <gtsam/slam/BetweenFactor.h>
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// Include for test suite
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#include <CppUnitLite/TestHarness.h>
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#include "Switching.h"
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using namespace std;
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using namespace gtsam;
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using symbol_shorthand::X;
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Ordering getOrdering(HybridGaussianFactorGraph& factors,
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const HybridGaussianFactorGraph& newFactors) {
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factors += newFactors;
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// Get all the discrete keys from the factors
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KeySet allDiscrete = factors.discreteKeys();
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// Create KeyVector with continuous keys followed by discrete keys.
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KeyVector newKeysDiscreteLast;
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const KeySet newFactorKeys = newFactors.keys();
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// Insert continuous keys first.
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for (auto& k : newFactorKeys) {
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if (!allDiscrete.exists(k)) {
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newKeysDiscreteLast.push_back(k);
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}
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}
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// Insert discrete keys at the end
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std::copy(allDiscrete.begin(), allDiscrete.end(),
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std::back_inserter(newKeysDiscreteLast));
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const VariableIndex index(factors);
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// Get an ordering where the new keys are eliminated last
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Ordering ordering = Ordering::ColamdConstrainedLast(
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index, KeyVector(newKeysDiscreteLast.begin(), newKeysDiscreteLast.end()),
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true);
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return ordering;
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}
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/****************************************************************************/
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// Test approximate inference with an additional pruning step.
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TEST(HybridNonlinearISAM, Incremental) {
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size_t K = 10;
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std::vector<double> measurements = {0, 1, 2, 2, 2, 2, 3, 4, 5, 6, 6};
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// Ground truth discrete seq
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std::vector<size_t> discrete_seq = {1, 1, 0, 0, 0, 1, 1, 1, 1, 0};
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Switching switching(K, 1.0, 0.1, measurements);
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// HybridNonlinearISAM smoother;
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HybridSmoother smoother;
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HybridNonlinearFactorGraph graph;
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Values initial;
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// switching.nonlinearFactorGraph.print();
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// switching.linearizationPoint.print();
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// Add the X(1) prior
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graph.push_back(switching.nonlinearFactorGraph.at(0));
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initial.insert(X(1), switching.linearizationPoint.at<double>(X(1)));
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HybridGaussianFactorGraph linearized;
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HybridGaussianFactorGraph bayesNet;
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for (size_t k = 1; k < K; k++) {
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// Motion Model
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graph.push_back(switching.nonlinearFactorGraph.at(k));
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// Measurement
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graph.push_back(switching.nonlinearFactorGraph.at(k + K - 1));
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initial.insert(X(k + 1), switching.linearizationPoint.at<double>(X(k + 1)));
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// std::cout << "\n============= " << k << std::endl;
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// graph.print();
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bayesNet = smoother.hybridBayesNet();
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linearized = *graph.linearize(initial);
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Ordering ordering = getOrdering(bayesNet, linearized);
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ordering.print();
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smoother.update(linearized, ordering, 3);
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// if (k == 2) exit(0);
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// smoother.hybridBayesNet().print();
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graph.resize(0);
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// initial.clear();
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}
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}
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/* ************************************************************************* */
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int main() {
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TestResult tr;
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return TestRegistry::runAllTests(tr);
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}
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/* ************************************************************************* */
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