This directory contains all GTSAM C++ examples GTSAM pertaining to SFM
- SimpleRotation: a simple example of optimizing a single rotation according to a single prior
- CameraResectioning: resection camera from some known points
- SFMExample: basic structure from motion
- SFMExample_bal: same, but read data from read from BAL file
- SelfCalibrationExample: Do SFM while also optimizing for calibration
Visual odometry using a stereo rig:
- StereoVOExample: basic example of stereo VO
- StereoVOExample_large: larger, with a snippet of Kitti data
The following examples illustrate some concepts from Georgia Tech's research papers, listed in the references section at the end:
- VisualISAMExample: uses iSAM [TRO08]
- VisualISAM2Example: uses iSAM2 [IJRR12]
- SFMExample_SmartFactor: uses smartFactors [ICRA14]
- elaboratePoint2KalmanFilter: simple linear Kalman filter on a moving 2D point, but done using factor graphs
- easyPoint2KalmanFilter: uses the generic templated Kalman filter class to do the same
- fullStateKalmanFilter: simple 1D example with a full-state filter
- errorStateKalmanFilter: simple 1D example of a moving target measured by a accelerometer, incl. drift-rate bias
- LocalizationExample.cpp: modeling robot motion
- LocalizationExample2.cpp: example with GPS like measurements
- Pose2SLAMExample: A 2D Pose SLAM example using the predefined typedefs in gtsam/slam/pose2SLAM.h
- Pose2SLAMExample_advanced: same, but uses an Optimizer object
- Pose2SLAMwSPCG: solve a simple 3 by 3 grid of Pose2 SLAM problem by using easy SPCG interface
- PlanarSLAMExample: simple robotics example using the pre-built planar SLAM domain
- PlanarSLAMExample_selfcontained: simple robotics example with all typedefs internal to this script.
The directory vSLAMexample includes 2 simple examples using GTSAM:
- vSFMexample using visual SLAM for structure-from-motion (SFM)
- vISAMexample using visual SLAM and ISAM for incremental SLAM updates
See the separate README file there.
##Undirected Graphical Models (UGM) The best representation for a Markov Random Field is a factor graph :-) This is illustrated with some discrete examples from the UGM MATLAB toolbox, which can be found at http://www.di.ens.fr/~mschmidt/Software/UGM
##Building and Running To build, cd into the directory and do:
mkdir build
cd build
cmake ..
For each .cpp file in this directory two make targets are created, one to build the executable, and one to build and run it. For example, the file CameraResectioning.cpp
contains simple example to resection a camera from 4 known points. You can build it using
make CameraResectioning
or build and run it immediately with
make CameraResectioning.run
which should output:
Final result:
Values with 1 values:
Value x1: R:
[
1, 0.0, 0.0,
0.0, -1, 0.0,
0.0, 0.0, -1,
];
t: [0, 0, 2]';
- [TRO08]: iSAM: Incremental Smoothing and Mapping, Michael Kaess, Michael Kaess, Ananth Ranganathan, and Frank Dellaert, IEEE Transactions on Robotics, 2008
- [IJRR12]: iSAM2: Incremental Smoothing and Mapping Using the Bayes Tree, Michael Kaess, Hordur Johannsson, Richard Roberts, Viorela Ila, John Leonard, and Frank Dellaert, International Journal of Robotics Research, 2012
- [ICRA14]: Eliminating Conditionally Independent Sets in Factor Graphs: A Unifying Perspective based on Smart Factors, Luca Carlone, Zsolt Kira, Chris Beall, Vadim Indelman, and Frank Dellaert, IEEE International Conference on Robotics and Automation (ICRA), 2014