329 lines
		
	
	
		
			13 KiB
		
	
	
	
		
			C++
		
	
	
			
		
		
	
	
			329 lines
		
	
	
		
			13 KiB
		
	
	
	
		
			C++
		
	
	
| /* ----------------------------------------------------------------------------
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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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| 
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|  * See LICENSE for the license information
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| 
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|  * -------------------------------------------------------------------------- */
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| 
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| /**
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|  * @file    testDoglegOptimizer.cpp
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|  * @brief   Unit tests for DoglegOptimizer
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|  * @author  Richard Roberts
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|  * @author  Frank dellaert
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|  */
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| 
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| #include <CppUnitLite/TestHarness.h>
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| 
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| #include <tests/smallExample.h>
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| #include <gtsam/geometry/Pose2.h>
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| #include <gtsam/nonlinear/DoglegOptimizer.h>
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| #include <gtsam/nonlinear/DoglegOptimizerImpl.h>
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| #include <gtsam/nonlinear/NonlinearEquality.h>
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| #include <gtsam/slam/BetweenFactor.h>
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| #include <gtsam/nonlinear/ISAM2.h>
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| #include <gtsam/slam/SmartProjectionPoseFactor.h>
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| #include "examples/SFMdata.h"
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| 
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| #include <functional>
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| 
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| using namespace std;
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| using namespace gtsam;
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| 
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| // Convenience for named keys
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| using symbol_shorthand::X;
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| 
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| /* ************************************************************************* */
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| TEST(DoglegOptimizer, ComputeBlend) {
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|   // Create an arbitrary Bayes Net
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|   GaussianBayesNet gbn;
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|   gbn.emplace_shared<GaussianConditional>(
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|       0, Vector2(1.0,2.0), (Matrix(2, 2) << 3.0,4.0,0.0,6.0).finished(),
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|       3, (Matrix(2, 2) << 7.0,8.0,9.0,10.0).finished(),
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|       4, (Matrix(2, 2) << 11.0,12.0,13.0,14.0).finished());
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|   gbn.emplace_shared<GaussianConditional>(
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|       1, Vector2(15.0,16.0), (Matrix(2, 2) << 17.0,18.0,0.0,20.0).finished(),
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|       2, (Matrix(2, 2) << 21.0,22.0,23.0,24.0).finished(),
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|       4, (Matrix(2, 2) << 25.0,26.0,27.0,28.0).finished());
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|   gbn.emplace_shared<GaussianConditional>(
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|       2, Vector2(29.0,30.0), (Matrix(2, 2) << 31.0,32.0,0.0,34.0).finished(),
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|       3, (Matrix(2, 2) << 35.0,36.0,37.0,38.0).finished());
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|   gbn.emplace_shared<GaussianConditional>(
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|       3, Vector2(39.0,40.0), (Matrix(2, 2) << 41.0,42.0,0.0,44.0).finished(),
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|       4, (Matrix(2, 2) << 45.0,46.0,47.0,48.0).finished());
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|   gbn.emplace_shared<GaussianConditional>(
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|       4, Vector2(49.0,50.0), (Matrix(2, 2) << 51.0,52.0,0.0,54.0).finished());
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| 
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|   // Compute steepest descent point
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|   VectorValues xu = gbn.optimizeGradientSearch();
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| 
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|   // Compute Newton's method point
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|   VectorValues xn = gbn.optimize();
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| 
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|   // The Newton's method point should be more "adventurous", i.e. larger, than the steepest descent point
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|   EXPECT(xu.vector().norm() < xn.vector().norm());
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| 
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|   // Compute blend
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|   double Delta = 1.5;
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|   VectorValues xb = DoglegOptimizerImpl::ComputeBlend(Delta, xu, xn);
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|   DOUBLES_EQUAL(Delta, xb.vector().norm(), 1e-10);
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| }
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| 
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| /* ************************************************************************* */
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| TEST(DoglegOptimizer, ComputeBlendEdgeCases) {
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|   // Test Derived from Issue #1861
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|   // Evaluate ComputeBlend Behavior for edge cases where the trust region
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|   // is equal in size to that of the newton step or the gradient step.
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| 
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|   // Simulated Newton (n) and Gradient Descent (u) step vectors w/ ||n|| > ||u||
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|   VectorValues::Dims dims;
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|   dims[0] = 3;
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|   VectorValues n(Vector3(0.3233546123, -0.2133456123, 0.3664345632), dims);
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|   VectorValues u(Vector3(0.0023456342, -0.04535687, 0.087345661212), dims);
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|   
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|   // Test upper edge case where trust region is equal to magnitude of newton step
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|   EXPECT(assert_equal(n, DoglegOptimizerImpl::ComputeBlend(n.norm(), u, n, false)));
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|   // Test lower edge case where trust region is equal to magnitude of gradient step 
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|   EXPECT(assert_equal(u, DoglegOptimizerImpl::ComputeBlend(u.norm(), u, n, false)));
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| }
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| 
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| /* ************************************************************************* */
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| TEST(DoglegOptimizer, ComputeDoglegPoint) {
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|   // Create an arbitrary Bayes Net
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|   GaussianBayesNet gbn;
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|   gbn.emplace_shared<GaussianConditional>(
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|       0, Vector2(1.0,2.0), (Matrix(2, 2) << 3.0,4.0,0.0,6.0).finished(),
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|       3, (Matrix(2, 2) << 7.0,8.0,9.0,10.0).finished(),
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|       4, (Matrix(2, 2) << 11.0,12.0,13.0,14.0).finished());
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|   gbn.emplace_shared<GaussianConditional>(
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|       1, Vector2(15.0,16.0), (Matrix(2, 2) << 17.0,18.0,0.0,20.0).finished(),
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|       2, (Matrix(2, 2) << 21.0,22.0,23.0,24.0).finished(),
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|       4, (Matrix(2, 2) << 25.0,26.0,27.0,28.0).finished());
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|   gbn.emplace_shared<GaussianConditional>(
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|       2, Vector2(29.0,30.0), (Matrix(2, 2) << 31.0,32.0,0.0,34.0).finished(),
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|       3, (Matrix(2, 2) << 35.0,36.0,37.0,38.0).finished());
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|   gbn.emplace_shared<GaussianConditional>(
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|       3, Vector2(39.0,40.0), (Matrix(2, 2) << 41.0,42.0,0.0,44.0).finished(),
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|       4, (Matrix(2, 2) << 45.0,46.0,47.0,48.0).finished());
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|   gbn.emplace_shared<GaussianConditional>(
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|       4, Vector2(49.0,50.0), (Matrix(2, 2) << 51.0,52.0,0.0,54.0).finished());
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| 
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|   // Compute dogleg point for different deltas
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| 
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|   double Delta1 = 0.5;  // Less than steepest descent
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|   VectorValues actual1 = DoglegOptimizerImpl::ComputeDoglegPoint(Delta1, gbn.optimizeGradientSearch(), gbn.optimize());
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|   DOUBLES_EQUAL(Delta1, actual1.vector().norm(), 1e-5);
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| 
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|   double Delta2 = 1.5;  // Between steepest descent and Newton's method
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|   VectorValues expected2 = DoglegOptimizerImpl::ComputeBlend(Delta2, gbn.optimizeGradientSearch(), gbn.optimize());
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|   VectorValues actual2 = DoglegOptimizerImpl::ComputeDoglegPoint(Delta2, gbn.optimizeGradientSearch(), gbn.optimize());
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|   DOUBLES_EQUAL(Delta2, actual2.vector().norm(), 1e-5);
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|   EXPECT(assert_equal(expected2, actual2));
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| 
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|   double Delta3 = 5.0;  // Larger than Newton's method point
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|   VectorValues expected3 = gbn.optimize();
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|   VectorValues actual3 = DoglegOptimizerImpl::ComputeDoglegPoint(Delta3, gbn.optimizeGradientSearch(), gbn.optimize());
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|   EXPECT(assert_equal(expected3, actual3));
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| }
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| 
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| /* ************************************************************************* */
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| TEST(DoglegOptimizer, Iterate) {
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|   // really non-linear factor graph
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|   NonlinearFactorGraph fg = example::createReallyNonlinearFactorGraph();
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| 
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|   // config far from minimum
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|   Point2 x0(3,0);
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|   Values config;
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|   config.insert(X(1), x0);
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| 
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|   double Delta = 1.0;
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|   for(size_t it=0; it<10; ++it) {
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|     auto linearized = fg.linearize(config);
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|     
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|     // Iterate assumes that linear error = nonlinear error at the linearization point, and this should be true
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|     double nonlinearError = fg.error(config);
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|     double linearError = linearized->error(config.zeroVectors());
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|     DOUBLES_EQUAL(nonlinearError, linearError, 1e-5);
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|     
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|     auto gbn = linearized->eliminateSequential();
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|     VectorValues dx_u = gbn->optimizeGradientSearch();
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|     VectorValues dx_n = gbn->optimize();
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|     DoglegOptimizerImpl::IterationResult result = DoglegOptimizerImpl::Iterate(
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|         Delta, DoglegOptimizerImpl::SEARCH_EACH_ITERATION, dx_u, dx_n, *gbn, fg,
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|         config, fg.error(config));
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|     Delta = result.delta;
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|     EXPECT(result.f_error < fg.error(config)); // Check that error decreases
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|     
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|     Values newConfig(config.retract(result.dx_d));
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|     config = newConfig;
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|     DOUBLES_EQUAL(fg.error(config), result.f_error, 1e-5); // Check that error is correctly filled in
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|   }
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| }
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| 
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| /* ************************************************************************* */
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| TEST(DoglegOptimizer, Constraint) {
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|   // Create a pose-graph graph with a constraint on the first pose
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|   NonlinearFactorGraph graph;
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|   const Pose2 origin(0, 0, 0), pose2(2, 0, 0);
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|   graph.emplace_shared<NonlinearEquality<Pose2> >(1, origin);
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|   auto model = noiseModel::Diagonal::Sigmas(Vector3(0.2, 0.2, 0.1));
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|   graph.emplace_shared<BetweenFactor<Pose2> >(1, 2, pose2, model);
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| 
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|   // Create feasible initial estimate
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|   Values initial;
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|   initial.insert(1, origin); // feasible !
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|   initial.insert(2, Pose2(2.3, 0.1, -0.2));
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| 
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|   // Optimize the initial values using DoglegOptimizer
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|   DoglegParams params;
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|   params.setVerbosityDL("VERBOSITY");
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|   DoglegOptimizer optimizer(graph, initial, params);
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|   Values result = optimizer.optimize();
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| 
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|   // Check result
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|   EXPECT(assert_equal(pose2, result.at<Pose2>(2)));
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| 
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|   // Create infeasible initial estimate
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|   Values infeasible;
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|   infeasible.insert(1, Pose2(0.1, 0, 0)); // infeasible !
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|   infeasible.insert(2, Pose2(2.3, 0.1, -0.2));
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| 
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|   // Try optimizing with infeasible initial estimate
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|   DoglegOptimizer optimizer2(graph, infeasible, params);
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| 
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| #ifdef GTSAM_USE_TBB
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|   CHECK_EXCEPTION(optimizer2.optimize(), std::exception);
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| #else
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|   CHECK_EXCEPTION(optimizer2.optimize(), std::invalid_argument);
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| #endif
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| }
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| 
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| /* ************************************************************************* */
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| /**
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|  * Test created to fix issue in ISAM2 when using the DogLegOptimizer.
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|  * Originally reported by kvmanohar22 in issue #301
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|  * https://github.com/borglab/gtsam/issues/301
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|  *
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|  * This test is based on a script provided by kvmanohar22
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|  * to help reproduce the issue.
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|  */
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| TEST(DogLegOptimizer, VariableUpdate) {
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|   // Make the typename short so it looks much cleaner
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|   typedef SmartProjectionPoseFactor<Cal3_S2> SmartFactor;
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| 
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|   // create a typedef to the camera type
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|   typedef PinholePose<Cal3_S2> Camera;
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|   // Define the camera calibration parameters
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|   Cal3_S2::shared_ptr K(new Cal3_S2(50.0, 50.0, 0.0, 50.0, 50.0));
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| 
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|   // Define the camera observation noise model
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|   noiseModel::Isotropic::shared_ptr measurementNoise =
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|       noiseModel::Isotropic::Sigma(2, 1.0);  // one pixel in u and v
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| 
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|   // Create the set of ground-truth landmarks and poses
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|   vector<Point3> points = createPoints();
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|   vector<Pose3> poses = createPoses();
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| 
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|   // Create a factor graph
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|   NonlinearFactorGraph graph;
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| 
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|   ISAM2DoglegParams doglegparams = ISAM2DoglegParams();
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|   doglegparams.verbose = false;
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|   ISAM2Params isam2_params;
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|   isam2_params.evaluateNonlinearError = true;
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|   isam2_params.relinearizeThreshold = 0.0;
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|   isam2_params.enableRelinearization = true;
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|   isam2_params.optimizationParams = doglegparams;
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|   isam2_params.relinearizeSkip = 1;
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|   ISAM2 isam2(isam2_params);
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| 
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|   // Simulated measurements from each camera pose, adding them to the factor
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|   // graph
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|   unordered_map<int, SmartFactor::shared_ptr> smart_factors;
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|   for (size_t j = 0; j < points.size(); ++j) {
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|     // every landmark represent a single landmark, we use shared pointer to init
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|     // the factor, and then insert measurements.
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|     SmartFactor::shared_ptr smartfactor(new SmartFactor(measurementNoise, K));
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| 
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|     for (size_t i = 0; i < poses.size(); ++i) {
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|       // generate the 2D measurement
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|       Camera camera(poses[i], K);
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|       Point2 measurement = camera.project(points[j]);
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| 
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|       // call add() function to add measurement into a single factor, here we
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|       // need to add:
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|       //    1. the 2D measurement
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|       //    2. the corresponding camera's key
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|       //    3. camera noise model
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|       //    4. camera calibration
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| 
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|       // add only first 3 measurements and update the later measurements
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|       // incrementally
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|       if (i < 3) smartfactor->add(measurement, i);
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|     }
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| 
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|     // insert the smart factor in the graph
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|     smart_factors[j] = smartfactor;
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|     graph.push_back(smartfactor);
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|   }
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| 
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|   // Add a prior on pose x0. This indirectly specifies where the origin is.
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|   // 30cm std on x,y,z 0.1 rad on roll,pitch,yaw
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|   noiseModel::Diagonal::shared_ptr noise = noiseModel::Diagonal::Sigmas(
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|       (Vector(6) << Vector3::Constant(0.3), Vector3::Constant(0.1)).finished());
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|   graph.emplace_shared<PriorFactor<Pose3> >(0, poses[0], noise);
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| 
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|   // Because the structure-from-motion problem has a scale ambiguity, the
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|   // problem is still under-constrained. Here we add a prior on the second pose
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|   // x1, so this will fix the scale by indicating the distance between x0 and
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|   // x1. Because these two are fixed, the rest of the poses will be also be
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|   // fixed.
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|   graph.emplace_shared<PriorFactor<Pose3> >(1, poses[1],
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|                                             noise);  // add directly to graph
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| 
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|   // Create the initial estimate to the solution
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|   // Intentionally initialize the variables off from the ground truth
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|   Values initialEstimate;
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|   Pose3 delta(Rot3::Rodrigues(-0.1, 0.2, 0.25), Point3(0.05, -0.10, 0.20));
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|   for (size_t i = 0; i < 3; ++i)
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|     initialEstimate.insert(i, poses[i].compose(delta));
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|   // initialEstimate.print("Initial Estimates:\n");
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| 
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|   // Optimize the graph and print results
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|   isam2.update(graph, initialEstimate);
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|   Values result = isam2.calculateEstimate();
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|   // result.print("Results:\n");
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| 
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|   // we add new measurements from this pose
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|   size_t pose_idx = 3;
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| 
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|   // Now update existing smart factors with new observations
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|   for (size_t j = 0; j < points.size(); ++j) {
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|     SmartFactor::shared_ptr smartfactor = smart_factors[j];
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| 
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|     // add the 4th measurement
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|     Camera camera(poses[pose_idx], K);
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|     Point2 measurement = camera.project(points[j]);
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|     smartfactor->add(measurement, pose_idx);
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|   }
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| 
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|   graph.resize(0);
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|   initialEstimate.clear();
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| 
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|   // update initial estimate for the new pose
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|   initialEstimate.insert(pose_idx, poses[pose_idx].compose(delta));
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| 
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|   // this should break the system
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|   isam2.update(graph, initialEstimate);
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|   result = isam2.calculateEstimate();
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|   EXPECT(std::find(result.keys().begin(), result.keys().end(), pose_idx) !=
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|          result.keys().end());
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| }
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| 
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| /* ************************************************************************* */
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| int main() { TestResult tr; return TestRegistry::runAllTests(tr); }
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| /* ************************************************************************* */
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