# GTSAM Examples This directory contains all GTSAM C++ examples GTSAM pertaining to SFM ## Basic Examples: * **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 ## Stereo Visual Odometry Examples Visual odometry using a stereo rig: * **StereoVOExample**: basic example of stereo VO * **StereoVOExample_large**: larger, with a snippet of Kitti data ## More Advanced Examples 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] ## Kalman Filter Examples * **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 ## 2D Pose SLAM * **LocalizationExample.cpp**: modeling robot motion * **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 ## Planar SLAM with landmarks * **PlanarSLAMExample**: simple robotics example using the pre-built planar SLAM domain * **PlanarSLAMExample_selfcontained**: simple robotics example with all typedefs internal to this script. ## Visual SLAM 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 ## Building and Running To build, cd into the top-level gtsam 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]'; ``` ## References - [TRO08]: [iSAM: Incremental Smoothing and Mapping, Michael Kaess](http://frank.dellaert.com/pub/Kaess08tro.pdf), Michael Kaess, Ananth Ranganathan, and Frank Dellaert, IEEE Transactions on Robotics, 2008 - [IJRR12]: [iSAM2: Incremental Smoothing and Mapping Using the Bayes Tree](http://www.cc.gatech.edu/~dellaert/pub/Kaess12ijrr.pdf), 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](http://frank.dellaert.com/pub/Carlone14icra.pdf), Luca Carlone, Zsolt Kira, Chris Beall, Vadim Indelman, and Frank Dellaert, IEEE International Conference on Robotics and Automation (ICRA), 2014