118 lines
		
	
	
		
			3.9 KiB
		
	
	
	
		
			C++
		
	
	
			
		
		
	
	
			118 lines
		
	
	
		
			3.9 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   testSubgraphSolver.cpp
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|  *  @brief  Unit tests for SubgraphSolver
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|  *  @author Yong-Dian Jian
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|  **/
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| 
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| #include <CppUnitLite/TestHarness.h>
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| 
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| #if 0
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| 
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| #include <tests/smallExample.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/iterative.h>
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| #include <gtsam/linear/GaussianFactorGraph.h>
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| #include <gtsam/linear/SubgraphSolver.h>
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| #include <gtsam/inference/Ordering.h>
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| #include <gtsam/base/numericalDerivative.h>
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| 
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| #include <boost/foreach.hpp>
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| #include <boost/tuple/tuple.hpp>
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| #include <boost/assign/std/list.hpp>
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| using namespace boost::assign;
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| 
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| using namespace std;
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| using namespace gtsam;
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| using namespace example;
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| 
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| /* ************************************************************************* */
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| /** unnormalized error */
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| static double error(const GaussianFactorGraph& fg, const VectorValues& x) {
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|   double total_error = 0.;
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|   BOOST_FOREACH(const GaussianFactor::shared_ptr& factor, fg)
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|     total_error += factor->error(x);
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|   return total_error;
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| }
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| 
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| 
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| /* ************************************************************************* */
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| TEST( SubgraphSolver, constructor1 )
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| {
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|   // Build a planar graph
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|   GaussianFactorGraph Ab;
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|   VectorValues xtrue;
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|   size_t N = 3;
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|   boost::tie(Ab, xtrue) = planarGraph(N); // A*x-b
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| 
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|   // The first constructor just takes a factor graph (and parameters)
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|   // and it will split the graph into A1 and A2, where A1 is a spanning tree
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|   SubgraphSolverParameters parameters;
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|   SubgraphSolver solver(Ab, parameters);
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|   VectorValues optimized = solver.optimize(); // does PCG optimization
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|   DOUBLES_EQUAL(0.0, error(Ab, optimized), 1e-5);
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| }
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| 
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| /* ************************************************************************* */
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| TEST( SubgraphSolver, constructor2 )
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| {
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|   // Build a planar graph
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|   GaussianFactorGraph Ab;
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|   VectorValues xtrue;
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|   size_t N = 3;
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|   boost::tie(Ab, xtrue) = planarGraph(N); // A*x-b
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| 
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|   // Get the spanning tree and corresponding ordering
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|   GaussianFactorGraph Ab1_, Ab2_; // A1*x-b1 and A2*x-b2
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|   boost::tie(Ab1_, Ab2_) = splitOffPlanarTree(N, Ab);
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| 
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|   // The second constructor takes two factor graphs,
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|   // so the caller can specify the preconditioner (Ab1) and the constraints that are left out (Ab2)
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|   SubgraphSolverParameters parameters;
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|   SubgraphSolver solver(Ab1_, Ab2_, parameters);
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|   VectorValues optimized = solver.optimize();
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|   DOUBLES_EQUAL(0.0, error(Ab, optimized), 1e-5);
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| }
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| 
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| /* ************************************************************************* */
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| TEST( SubgraphSolver, constructor3 )
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| {
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|   // Build a planar graph
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|   GaussianFactorGraph Ab;
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|   VectorValues xtrue;
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|   size_t N = 3;
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|   boost::tie(Ab, xtrue) = planarGraph(N); // A*x-b
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| 
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|   // Get the spanning tree and corresponding ordering
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|   GaussianFactorGraph Ab1_, Ab2_; // A1*x-b1 and A2*x-b2
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|   boost::tie(Ab1_, Ab2_) = splitOffPlanarTree(N, Ab);
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| 
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|   // The caller solves |A1*x-b1|^2 == |R1*x-c1|^2 via QR factorization, where R1 is square UT
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|   GaussianBayesNet::shared_ptr Rc1 = //
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|       EliminationTree<GaussianFactor>::Create(Ab1_)->eliminate(&EliminateQR);
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| 
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|   // The third constructor allows the caller to pass an already solved preconditioner Rc1_
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|   // as a Bayes net, in addition to the "loop closing constraints" Ab2, as before
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|   SubgraphSolverParameters parameters;
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|   SubgraphSolver solver(Rc1, Ab2_, parameters);
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|   VectorValues optimized = solver.optimize();
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|   DOUBLES_EQUAL(0.0, error(Ab, optimized), 1e-5);
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| }
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| 
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| #endif
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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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