-
Notifications
You must be signed in to change notification settings - Fork 0
/
Copy pathPose2SLAMExample.cpp
130 lines (106 loc) · 5.93 KB
/
Pose2SLAMExample.cpp
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
/* ----------------------------------------------------------------------------
* 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/PriorFactor.h>
#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.add(PriorFactor<Pose2>(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.add(BetweenFactor<Pose2>(1, 2, Pose2(2, 0, 0 ), model));
graph.add(BetweenFactor<Pose2>(2, 3, Pose2(2, 0, M_PI_2), model));
graph.add(BetweenFactor<Pose2>(3, 4, Pose2(2, 0, M_PI_2), model));
graph.add(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.add(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;
}