153 lines
		
	
	
		
			6.9 KiB
		
	
	
	
		
			Matlab
		
	
	
			
		
		
	
	
			153 lines
		
	
	
		
			6.9 KiB
		
	
	
	
		
			Matlab
		
	
	
| close all
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| clc
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| 
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| import gtsam.*;
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| disp('Example of application of ISAM2 for visual-inertial navigation on the KITTI VISION BENCHMARK SUITE (http://www.computervisiononline.com/dataset/kitti-vision-benchmark-suite)')
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| 
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| %% Read metadata and compute relative sensor pose transforms
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| % IMU metadata
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| disp('-- Reading sensor metadata')
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| IMU_metadata = importdata('KittiEquivBiasedImu_metadata.txt');
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| IMU_metadata = cell2struct(num2cell(IMU_metadata.data), IMU_metadata.colheaders, 2);
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| IMUinBody = Pose3.Expmap([IMU_metadata.BodyPtx; IMU_metadata.BodyPty; IMU_metadata.BodyPtz;
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|   IMU_metadata.BodyPrx; IMU_metadata.BodyPry; IMU_metadata.BodyPrz; ]);
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| if ~IMUinBody.equals(Pose3, 1e-5)
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|   error 'Currently only support IMUinBody is identity, i.e. IMU and body frame are the same';
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| end
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| 
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| % VO metadata
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| VO_metadata = importdata('KittiRelativePose_metadata.txt');
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| VO_metadata = cell2struct(num2cell(VO_metadata.data), VO_metadata.colheaders, 2);
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| VOinBody = Pose3.Expmap([VO_metadata.BodyPtx; VO_metadata.BodyPty; VO_metadata.BodyPtz;
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|   VO_metadata.BodyPrx; VO_metadata.BodyPry; VO_metadata.BodyPrz; ]);
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| VOinIMU = IMUinBody.inverse().compose(VOinBody);
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| 
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| %% Read data and change coordinate frame of GPS and VO measurements to IMU frame
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| disp('-- Reading sensor data from file')
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| % IMU data
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| IMU_data = importdata('KittiEquivBiasedImu.txt');
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| IMU_data = cell2struct(num2cell(IMU_data.data), IMU_data.colheaders, 2);
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| imum = cellfun(@(x) x', num2cell([ [IMU_data.accelX]' [IMU_data.accelY]' [IMU_data.accelZ]' [IMU_data.omegaX]' [IMU_data.omegaY]' [IMU_data.omegaZ]' ], 2), 'UniformOutput', false);
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| [IMU_data.acc_omega] = deal(imum{:});
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| clear imum
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| 
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| % VO data
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| VO_data = importdata('KittiRelativePose.txt');
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| VO_data = cell2struct(num2cell(VO_data.data), VO_data.colheaders, 2);
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| % Merge relative pose fields and convert to Pose3
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| logposes = [ [VO_data.dtx]' [VO_data.dty]' [VO_data.dtz]' [VO_data.drx]' [VO_data.dry]' [VO_data.drz]' ];
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| logposes = num2cell(logposes, 2);
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| relposes = arrayfun(@(x) {gtsam.Pose3.Expmap(x{:}')}, logposes);
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| relposes = arrayfun(@(x) {VOinIMU.compose(x{:}).compose(VOinIMU.inverse())}, relposes);
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| [VO_data.RelativePose] = deal(relposes{:});
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| VO_data = rmfield(VO_data, { 'dtx' 'dty' 'dtz' 'drx' 'dry' 'drz' });
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| noiseModelVO = noiseModel.Diagonal.Sigmas([ VO_metadata.RotationSigma * [1;1;1]; VO_metadata.TranslationSigma * [1;1;1] ]);
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| clear logposes relposes
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| 
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| %% Get initial conditions for the estimated trajectory
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| currentPoseGlobal = Pose3;
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| currentVelocityGlobal = LieVector([0;0;0]); % the vehicle is stationary at the beginning
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| currentBias = imuBias.ConstantBias(zeros(3,1), zeros(3,1));
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| sigma_init_x = noiseModel.Isotropic.Sigmas([ 1.0; 1.0; 0.01; 0.01; 0.01; 0.01 ]);
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| sigma_init_v = noiseModel.Isotropic.Sigma(3, 1000.0);
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| sigma_init_b = noiseModel.Isotropic.Sigmas([ 0.100; 0.100; 0.100; 5.00e-05; 5.00e-05; 5.00e-05 ]);
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| sigma_between_b = [ IMU_metadata.AccelerometerBiasSigma * ones(3,1); IMU_metadata.GyroscopeBiasSigma * ones(3,1) ];
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| g = [0;0;-9.8];
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| w_coriolis = [0;0;0];
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| 
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| %% Solver object
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| isamParams = ISAM2Params;
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| isamParams.setFactorization('CHOLESKY');
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| isamParams.setRelinearizeSkip(10);
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| isam = gtsam.ISAM2(isamParams);
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| newFactors = NonlinearFactorGraph;
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| newValues = Values;
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| 
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| %% Main loop:
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| % (1) we read the measurements
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| % (2) we create the corresponding factors in the graph
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| % (3) we solve the graph to obtain and optimal estimate of robot trajectory
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| timestamps = [VO_data.Time]';
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| 
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| timestamps = timestamps(15:end,:); % there seem to be issues with the initial IMU measurements
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| IMUtimes = [IMU_data.Time];
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| 
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| disp('-- Starting main loop: inference is performed at each time step, but we plot trajectory every 100 steps')
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| 
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| for measurementIndex = 1:length(timestamps)
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|   
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|   % At each non=IMU measurement we initialize a new node in the graph
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|   currentPoseKey = symbol('x',measurementIndex);
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|   currentVelKey =  symbol('v',measurementIndex);
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|   currentBiasKey = symbol('b',measurementIndex);
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|   t = timestamps(measurementIndex, 1);
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|   
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|   if measurementIndex == 1
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|     %% Create initial estimate and prior on initial pose, velocity, and biases
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|     newValues.insert(currentPoseKey, currentPoseGlobal);
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|     newValues.insert(currentVelKey, currentVelocityGlobal);
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|     newValues.insert(currentBiasKey, currentBias);
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|     newFactors.add(PriorFactorPose3(currentPoseKey, currentPoseGlobal, sigma_init_x));
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|     newFactors.add(PriorFactorLieVector(currentVelKey, currentVelocityGlobal, sigma_init_v));
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|     newFactors.add(PriorFactorConstantBias(currentBiasKey, currentBias, sigma_init_b));
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|   else
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|     t_previous = timestamps(measurementIndex-1, 1);
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|     %% Summarize IMU data between the previous GPS measurement and now
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|     IMUindices = find(IMUtimes >= t_previous & IMUtimes <= t);
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|     
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|     currentSummarizedMeasurement = gtsam.ImuFactorPreintegratedMeasurements( ...
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|       currentBias, IMU_metadata.AccelerometerSigma.^2 * eye(3), ...
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|       IMU_metadata.GyroscopeSigma.^2 * eye(3), IMU_metadata.IntegrationSigma.^2 * eye(3));
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|     
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|     for imuIndex = IMUindices
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|       accMeas = [ IMU_data(imuIndex).accelX; IMU_data(imuIndex).accelY; IMU_data(imuIndex).accelZ ];
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|       omegaMeas = [ IMU_data(imuIndex).omegaX; IMU_data(imuIndex).omegaY; IMU_data(imuIndex).omegaZ ];
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|       deltaT = IMU_data(imuIndex).dt;
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|       currentSummarizedMeasurement.integrateMeasurement(accMeas, omegaMeas, deltaT);
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|     end
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|     
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|     % Create IMU factor
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|     newFactors.add(ImuFactor( ...
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|       currentPoseKey-1, currentVelKey-1, ...
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|       currentPoseKey, currentVelKey, ...
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|       currentBiasKey, currentSummarizedMeasurement, g, w_coriolis));
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|     
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|     % LC: sigma_init_b is wrong: this should be some uncertainty on bias evolution given in the IMU metadata
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|     newFactors.add(BetweenFactorConstantBias(currentBiasKey-1, currentBiasKey, imuBias.ConstantBias(zeros(3,1), zeros(3,1)), ...
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|       noiseModel.Diagonal.Sigmas(sqrt(numel(IMUindices)) * sigma_between_b)));
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|     
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|     %% Create VO factor
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|       VOpose = VO_data(measurementIndex).RelativePose;
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|       newFactors.add(BetweenFactorPose3(currentPoseKey - 1, currentPoseKey, VOpose, noiseModelVO));
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|     
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|     % Add initial value
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|     newValues.insert(currentPoseKey, currentPoseGlobal.compose(VOpose));
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|     newValues.insert(currentVelKey, currentVelocityGlobal);
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|     newValues.insert(currentBiasKey, currentBias);
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|     
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|     % Update solver
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|     % =======================================================================
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|     isam.update(newFactors, newValues);
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|     newFactors = NonlinearFactorGraph;
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|     newValues = Values;
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|     
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|     if rem(measurementIndex,100)==0 % plot every 100 time steps
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|       cla;
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|       plot3DTrajectory(isam.calculateEstimate, 'g-');
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|       title('Estimated trajectory using ISAM2 (IMU+VO)')
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|       xlabel('[m]')
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|       ylabel('[m]')
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|       zlabel('[m]')
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|       axis equal
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|       drawnow;
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|     end
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|     % ======================================================================= 
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|     currentPoseGlobal = isam.calculateEstimate(currentPoseKey);
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|     currentVelocityGlobal = isam.calculateEstimate(currentVelKey);
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|     currentBias = isam.calculateEstimate(currentBiasKey);   
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|   end
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|    
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| end % end main loop
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| 
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| disp('-- Reached end of sensor data')
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