77 lines
		
	
	
		
			2.5 KiB
		
	
	
	
		
			Matlab
		
	
	
			
		
		
	
	
			77 lines
		
	
	
		
			2.5 KiB
		
	
	
	
		
			Matlab
		
	
	
| %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
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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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| % @brief Simple robotics example using the pre-built planar SLAM domain
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| % @author Alex Cunningham
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| % @author Frank Dellaert
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| % @author Chris Beall
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| % @author Vadim Indelman
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| % @author Can Erdogan
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| %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
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| 
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| %% Assumptions
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| %  - All values are axis aligned
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| %  - Robot poses are facing along the X axis (horizontal, to the right in images)
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| %  - We have full odometry for measurements
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| %  - The robot is on a grid, moving 2 meters each step
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| 
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| %% Create graph container and add factors to it
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| graph = pose2SLAMGraph;
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| 
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| %% Add prior
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| % gaussian for prior
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| priorNoise = gtsamSharedNoiseModel_Sigmas([0.3; 0.3; 0.1]);
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| priorMean = gtsamPose2(0.0, 0.0, 0.0); % prior at origin
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| graph.addPrior(1, priorMean, priorNoise); % add directly to graph
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| 
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| %% Add odometry
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| % general noisemodel for odometry
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| odometryNoise = gtsamSharedNoiseModel_Sigmas([0.2; 0.2; 0.1]);
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| odometry = gtsamPose2(2.0, 0.0, 0.0); % create a measurement for both factors (the same in this case)
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| graph.addOdometry(1, 2, odometry, odometryNoise);
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| graph.addOdometry(2, 3, odometry, odometryNoise);
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| 
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| %% Add measurements
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| % general noisemodel for measurements
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| measurementNoise = gtsamSharedNoiseModel_Sigmas([0.1; 0.2]);
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| 
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| % print
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| graph.print('full graph');
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| 
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| %% Initialize to noisy points
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| initialEstimate = pose2SLAMValues;
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| initialEstimate.insertPose(1, gtsamPose2(0.5, 0.0, 0.2));
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| initialEstimate.insertPose(2, gtsamPose2(2.3, 0.1,-0.2));
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| initialEstimate.insertPose(3, gtsamPose2(4.1, 0.1, 0.1));
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| 
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| initialEstimate.print('initial estimate');
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| 
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| %% set up solver, choose ordering and optimize
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| %params = gtsamNonlinearOptimizationParameters_newDecreaseThresholds(1e-15, 1e-15);
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| %
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| %ord = graph.orderingCOLAMD(initialEstimate);
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| %
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| %result = pose2SLAMOptimizer(graph,initialEstimate,ord,params);                      
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| %result.print('final result');
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| 
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| %% Optimize using Levenberg-Marquardt optimization with an ordering from colamd
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| result = graph.optimize(initialEstimate);
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| result.print('final result');
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| 
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| %% Get the corresponding dense matrix
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| ord = graph.orderingCOLAMD(result);
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| gfg = graph.linearize(result,ord);
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| denseAb = gfg.denseJacobian;
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| 
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| %% Get sparse matrix A and RHS b
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| IJS = gfg.sparseJacobian_();
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| Ab=sparse(IJS(1,:),IJS(2,:),IJS(3,:));
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| A = Ab(:,1:end-1);
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| b = full(Ab(:,end));
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| spy(A);
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