127 lines
		
	
	
		
			5.9 KiB
		
	
	
	
		
			C++
		
	
	
			
		
		
	
	
			127 lines
		
	
	
		
			5.9 KiB
		
	
	
	
		
			C++
		
	
	
| /* ----------------------------------------------------------------------------
 | |
|  * GTSAM Copyright 2010, Georgia Tech Research Corporation,
 | |
|  * Atlanta, Georgia 30332-0415
 | |
|  * All Rights Reserved
 | |
|  * Authors: Frank Dellaert, et al. (see THANKS for the full author list)
 | |
|  * See LICENSE for the license information
 | |
|  * -------------------------------------------------------------------------- */
 | |
| 
 | |
| /**
 | |
|  * @file Pose2SLAMExample.cpp
 | |
|  * @brief A 2D Pose SLAM example
 | |
|  * @date Oct 21, 2010
 | |
|  * @author Yong Dian Jian
 | |
|  */
 | |
| 
 | |
| /**
 | |
|  * A simple 2D pose slam example
 | |
|  *  - The robot moves in a 2 meter square
 | |
|  *  - The robot moves 2 meters each step, turning 90 degrees after each step
 | |
|  *  - The robot initially faces along the X axis (horizontal, to the right in 2D)
 | |
|  *  - We have full odometry between pose
 | |
|  *  - We have a loop closure constraint when the robot returns to the first position
 | |
|  */
 | |
| 
 | |
| // In planar SLAM example we use Pose2 variables (x, y, theta) to represent the robot poses
 | |
| #include <gtsam/geometry/Pose2.h>
 | |
| 
 | |
| // We will use simple integer Keys to refer to the robot poses.
 | |
| #include <gtsam/inference/Key.h>
 | |
| 
 | |
| // In GTSAM, measurement functions are represented as 'factors'. Several common factors
 | |
| // have been provided with the library for solving robotics/SLAM/Bundle Adjustment problems.
 | |
| // Here we will use Between factors for the relative motion described by odometry measurements.
 | |
| // We will also use a Between Factor to encode the loop closure constraint
 | |
| // Also, we will initialize the robot at the origin using a Prior factor.
 | |
| #include <gtsam/slam/BetweenFactor.h>
 | |
| 
 | |
| // When the factors are created, we will add them to a Factor Graph. As the factors we are using
 | |
| // are nonlinear factors, we will need a Nonlinear Factor Graph.
 | |
| #include <gtsam/nonlinear/NonlinearFactorGraph.h>
 | |
| 
 | |
| // Finally, once all of the factors have been added to our factor graph, we will want to
 | |
| // solve/optimize to graph to find the best (Maximum A Posteriori) set of variable values.
 | |
| // GTSAM includes several nonlinear optimizers to perform this step. Here we will use the
 | |
| // a Gauss-Newton solver
 | |
| #include <gtsam/nonlinear/GaussNewtonOptimizer.h>
 | |
| 
 | |
| // Once the optimized values have been calculated, we can also calculate the marginal covariance
 | |
| // of desired variables
 | |
| #include <gtsam/nonlinear/Marginals.h>
 | |
| 
 | |
| // The nonlinear solvers within GTSAM are iterative solvers, meaning they linearize the
 | |
| // nonlinear functions around an initial linearization point, then solve the linear system
 | |
| // to update the linearization point. This happens repeatedly until the solver converges
 | |
| // to a consistent set of variable values. This requires us to specify an initial guess
 | |
| // for each variable, held in a Values container.
 | |
| #include <gtsam/nonlinear/Values.h>
 | |
| 
 | |
| 
 | |
| using namespace std;
 | |
| using namespace gtsam;
 | |
| 
 | |
| int main(int argc, char** argv) {
 | |
| 
 | |
|   // 1. Create a factor graph container and add factors to it
 | |
|   NonlinearFactorGraph graph;
 | |
| 
 | |
|   // 2a. Add a prior on the first pose, setting it to the origin
 | |
|   // A prior factor consists of a mean and a noise model (covariance matrix)
 | |
|   noiseModel::Diagonal::shared_ptr priorNoise = noiseModel::Diagonal::Sigmas(Vector3(0.3, 0.3, 0.1));
 | |
|   graph.addPrior(1, Pose2(0, 0, 0), priorNoise);
 | |
| 
 | |
|   // For simplicity, we will use the same noise model for odometry and loop closures
 | |
|   noiseModel::Diagonal::shared_ptr model = noiseModel::Diagonal::Sigmas(Vector3(0.2, 0.2, 0.1));
 | |
| 
 | |
|   // 2b. Add odometry factors
 | |
|   // Create odometry (Between) factors between consecutive poses
 | |
|   graph.emplace_shared<BetweenFactor<Pose2> >(1, 2, Pose2(2, 0, 0     ), model);
 | |
|   graph.emplace_shared<BetweenFactor<Pose2> >(2, 3, Pose2(2, 0, M_PI_2), model);
 | |
|   graph.emplace_shared<BetweenFactor<Pose2> >(3, 4, Pose2(2, 0, M_PI_2), model);
 | |
|   graph.emplace_shared<BetweenFactor<Pose2> >(4, 5, Pose2(2, 0, M_PI_2), model);
 | |
| 
 | |
|   // 2c. Add the loop closure constraint
 | |
|   // This factor encodes the fact that we have returned to the same pose. In real systems,
 | |
|   // these constraints may be identified in many ways, such as appearance-based techniques
 | |
|   // with camera images. We will use another Between Factor to enforce this constraint:
 | |
|   graph.emplace_shared<BetweenFactor<Pose2> >(5, 2, Pose2(2, 0, M_PI_2), model);
 | |
|   graph.print("\nFactor Graph:\n"); // print
 | |
| 
 | |
|   // 3. Create the data structure to hold the initialEstimate estimate to the solution
 | |
|   // For illustrative purposes, these have been deliberately set to incorrect values
 | |
|   Values initialEstimate;
 | |
|   initialEstimate.insert(1, Pose2(0.5, 0.0,  0.2   ));
 | |
|   initialEstimate.insert(2, Pose2(2.3, 0.1, -0.2   ));
 | |
|   initialEstimate.insert(3, Pose2(4.1, 0.1,  M_PI_2));
 | |
|   initialEstimate.insert(4, Pose2(4.0, 2.0,  M_PI  ));
 | |
|   initialEstimate.insert(5, Pose2(2.1, 2.1, -M_PI_2));
 | |
|   initialEstimate.print("\nInitial Estimate:\n"); // print
 | |
| 
 | |
|   // 4. Optimize the initial values using a Gauss-Newton nonlinear optimizer
 | |
|   // The optimizer accepts an optional set of configuration parameters,
 | |
|   // controlling things like convergence criteria, the type of linear
 | |
|   // system solver to use, and the amount of information displayed during
 | |
|   // optimization. We will set a few parameters as a demonstration.
 | |
|   GaussNewtonParams parameters;
 | |
|   // Stop iterating once the change in error between steps is less than this value
 | |
|   parameters.relativeErrorTol = 1e-5;
 | |
|   // Do not perform more than N iteration steps
 | |
|   parameters.maxIterations = 100;
 | |
|   // Create the optimizer ...
 | |
|   GaussNewtonOptimizer optimizer(graph, initialEstimate, parameters);
 | |
|   // ... and optimize
 | |
|   Values result = optimizer.optimize();
 | |
|   result.print("Final Result:\n");
 | |
| 
 | |
|   // 5. Calculate and print marginal covariances for all variables
 | |
|   cout.precision(3);
 | |
|   Marginals marginals(graph, result);
 | |
|   cout << "x1 covariance:\n" << marginals.marginalCovariance(1) << endl;
 | |
|   cout << "x2 covariance:\n" << marginals.marginalCovariance(2) << endl;
 | |
|   cout << "x3 covariance:\n" << marginals.marginalCovariance(3) << endl;
 | |
|   cout << "x4 covariance:\n" << marginals.marginalCovariance(4) << endl;
 | |
|   cout << "x5 covariance:\n" << marginals.marginalCovariance(5) << endl;
 | |
| 
 | |
|   return 0;
 | |
| }
 |