adding 3 camera, 3 landmark test
parent
39ec641c4a
commit
d1de6b29a9
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@ -151,16 +151,6 @@ TEST( MultiProjectionFactor, noisy ){
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double actualError = smartFactor->error(values);
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double expectedError = sqrt(0.08);
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const SharedDiagonal noisePrior = noiseModel::Isotropic::Sigma(6, 0.10);
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NonlinearFactorGraph graph;
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graph.push_back(smartFactor);
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graph.add(PriorFactor<Pose3>(x1, level_pose, noisePrior));
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LevenbergMarquardtOptimizer optimizer(graph, values);
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Values result = optimizer.optimize();
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result.print("results of the optimization \n");
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// we do not expect to be able to predict the error, since the error on the pixel will change
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// the triangulation of the landmark which is internal to the factor.
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// DOUBLES_EQUAL(expectedError, actualError, 1e-7);
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@ -169,7 +159,7 @@ TEST( MultiProjectionFactor, noisy ){
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///* ************************************************************************* */
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TEST( MultiProjectionFactor, 3poses ){
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cout << " ************************ MultiProjectionFactor: noisy ****************************" << endl;
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cout << " ************************ MultiProjectionFactor: 3 cams + 3 landmarks **********************" << endl;
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Symbol x1('X', 1);
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Symbol x2('X', 2);
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@ -178,53 +168,78 @@ TEST( MultiProjectionFactor, 3poses ){
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const SharedDiagonal noiseProjection = noiseModel::Isotropic::Sigma(2, 1);
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std::vector<Key> views;
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views += x1, x2; //, x3;
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views += x1, x2, x3;
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Cal3_S2::shared_ptr K(new Cal3_S2(1500, 1200, 0, 640, 480));
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// create first camera. Looking along X-axis, 1 meter above ground plane (x-y)
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Pose3 level_pose = Pose3(Rot3::ypr(-M_PI/2, 0., -M_PI/2), gtsam::Point3(0,0,1));
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SimpleCamera level_camera(level_pose, *K);
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Pose3 pose1 = Pose3(Rot3::ypr(-M_PI/2, 0., -M_PI/2), gtsam::Point3(0,0,1));
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SimpleCamera cam1(pose1, *K);
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// create second camera 1 meter to the right of first camera
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Pose3 level_pose_right = level_pose * Pose3(Rot3(), Point3(1,0,0));
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SimpleCamera level_camera_right(level_pose_right, *K);
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Pose3 pose2 = pose1 * Pose3(Rot3(), Point3(1,0,0));
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SimpleCamera cam2(pose2, *K);
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// landmark ~5 meters infront of camera
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Point3 landmark(5, 0.5, 1.2);
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// create third camera 1 meter above the first camera
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Pose3 pose3 = pose1 * Pose3(Rot3(), Point3(0,-1,0));
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SimpleCamera cam3(pose2, *K);
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// 1. Project two landmarks into two cameras and triangulate
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Point2 pixelError(0.2,0.2);
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Point2 level_uv = level_camera.project(landmark) + pixelError;
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Point2 level_uv_right = level_camera_right.project(landmark);
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// three landmarks ~5 meters infront of camera
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Point3 landmark1(5, 0.5, 1.2);
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Point3 landmark2(5, -0.5, 1.2);
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Point3 landmark3(5, 0, 3.0);
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Values values;
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values.insert(x1, level_pose);
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Pose3 noise_pose = Pose3(Rot3::ypr(-M_PI/10, 0., -M_PI/10), gtsam::Point3(0.5,0.1,0.3));
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values.insert(x2, level_pose_right.compose(noise_pose));
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vector<Point2> measurements_cam1, measurements_cam2, measurements_cam3;
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// poses += level_pose, level_pose_right;
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vector<Point2> measurements;
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measurements += level_uv, level_uv_right;
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// 1. Project three landmarks into three cameras and triangulate
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Point2 cam1_uv1 = cam1.project(landmark1);
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Point2 cam2_uv1 = cam2.project(landmark1);
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Point2 cam3_uv1 = cam3.project(landmark1);
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measurements_cam1 += cam1_uv1, cam2_uv1, cam3_uv1;
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SmartProjectionFactor<Pose3, Point3, Cal3_S2>::shared_ptr
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smartFactor(new SmartProjectionFactor<Pose3, Point3, Cal3_S2>(measurements, noiseProjection, views, K));
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//
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Point2 cam1_uv2 = cam1.project(landmark2);
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Point2 cam2_uv2 = cam2.project(landmark2);
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Point2 cam3_uv2 = cam3.project(landmark2);
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measurements_cam2 += cam1_uv2, cam2_uv2, cam3_uv2;
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double actualError = smartFactor->error(values);
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double expectedError = sqrt(0.08);
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Point2 cam1_uv3 = cam1.project(landmark3);
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Point2 cam2_uv3 = cam2.project(landmark3);
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Point2 cam3_uv3 = cam3.project(landmark3);
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measurements_cam3 += cam1_uv3, cam2_uv3, cam3_uv3;
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typedef SmartProjectionFactor<Pose3, Point3, Cal3_S2> SmartFactor;
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SmartFactor::shared_ptr smartFactor1(new SmartFactor(measurements_cam1, noiseProjection, views, K));
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SmartFactor::shared_ptr smartFactor2(new SmartFactor(measurements_cam2, noiseProjection, views, K));
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SmartFactor::shared_ptr smartFactor3(new SmartFactor(measurements_cam3, noiseProjection, views, K));
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// double actualError = smartFactor->error(values);
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// double expectedError = sqrt(0.08);
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const SharedDiagonal noisePrior = noiseModel::Isotropic::Sigma(6, 0.10);
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NonlinearFactorGraph graph;
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graph.push_back(smartFactor);
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graph.add(PriorFactor<Pose3>(x1, level_pose, noisePrior));
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graph.push_back(smartFactor1);
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graph.push_back(smartFactor2);
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graph.push_back(smartFactor3);
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graph.add(PriorFactor<Pose3>(x1, pose1, noisePrior));
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LevenbergMarquardtOptimizer optimizer(graph, values);
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Pose3 noise_pose = Pose3(Rot3::ypr(-M_PI/10, 0., -M_PI/10), gtsam::Point3(0.5,0.1,0.3));
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Values values;
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values.insert(x1, pose1);
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values.insert(x2, pose1);
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values.insert(x3, pose3* noise_pose);
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LevenbergMarquardtParams params;
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params.verbosityLM = LevenbergMarquardtParams::TRYLAMBDA;
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params.verbosity = NonlinearOptimizerParams::ERROR;
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LevenbergMarquardtOptimizer optimizer(graph, values, params);
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Values result = optimizer.optimize();
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result.print("results of the optimization \n");
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// we do not expect to be able to predict the error, since the error on the pixel will change
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// the triangulation of the landmark which is internal to the factor.
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// DOUBLES_EQUAL(expectedError, actualError, 1e-7);
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result.print("results of 3 camera, 3 landmark optimization \n");
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}
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