# Multiple objects detection, tracking and classification from LIDAR scans/point-clouds ![Sample demo of multiple object tracking using LIDAR scans](https://media.giphy.com/media/3YKG95w9gu263yQwDa/giphy.gif) PCL based ROS package to Detect/Cluster --> Track --> Classify static and dynamic objects in real-time from LIDAR scans implemented in C++. ### Features: - K-D tree based point cloud processing for object feature detection from point clouds - Unsupervised k-means clustering based on detected features and refinement using RANSAC - Stable tracking (object ID & data association) with an ensemble of Kalman Filters - Robust compared to k-means clustering with mean-flow tracking ### Usage: Follow the steps below to use this (`multi_object_tracking_lidar`) package: 1. [Create a catkin workspace](http://wiki.ros.org/catkin/Tutorials/create_a_workspace) (if you do not have one setup already). 1. Navigate to the `src` folder in your catkin workspace: `cd ~/catkin_ws/src` 1. Clone this repository: `git clone https://github.com/praveen-palanisamy/multiple-object-tracking-lidar.git` 1. Compile and build the package: `cd ~/catkin_ws && catkin_make` 1. Add the catkin workspace to your ROS environment: `source ~/catkin_ws/devel/setup.bash` 1. Run the `kf_tracker` ROS node in this package: `rosrun multi_object_tracking_lidar kf_tracker` If all went well, the ROS node should be up and running! As long as you have the point clouds published on to the `filtered_cloud` rostopic, you should see outputs from this node published onto the `obj_id`, `cluster_0`, `cluster_1`, …, `cluster_5` topics along with the markers on `viz` topic which you can visualize using RViz. ### Supported point-cloud streams/sources: The input point-clouds can be from: 1. A real LiDAR or 2. A simulated LiDAR or 3. A point cloud dataset or 4. Any other data source that produces point clouds