yashspatel09 / online_learning

Online learning for human classification in 3D LiDAR-based tracking

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

Online learning for human classification in 3D LiDAR-based tracking

Build Status Codacy Badge License: MIT

This is a ROS-based online learning framework for human classification in 3D LiDAR scans, taking advantage of robust multi-target tracking to avoid the need for data annotation by a human expert. Please watch the videos below for more details.

YouTube Video 1 YouTube Video 2

For a standalone implementation of the clustering method, please refer to: https://github.com/yzrobot/adaptive_clustering

Install & Build

$ cd catkin_ws/src
// Install prerequisite packages 
$ git clone https://github.com/wg-perception/people.git
$ git clone https://github.com/DLu/wu_ros_tools.git
$ sudo apt-get install ros-kinetic-bfl
// The core 
$ git clone https://github.com/yzrobot/online_learning
// Build
$ cd catkin_ws
$ catkin_make

Run

After catkin_make succeed, modify 'line 3' of online_learning/object3d_detector/launch/object3d_detector.launch, and make the value is the path where your bag files are located:

<arg name="bag" value="/home/yq/Downloads/LCAS_20160523_1200_1218.bag"/>

The bag file offered by Lincoln Centre for Autonomous Systems is in velodyne_msgs/VelodyneScan message type, so we would need related velodyne packages in ROS:

$ sudo apt-get install ros-kinetic-velodyne*

Now, the svm should be able to run:

$ cd catkin_ws
$ source devel/setup.bash
$ roslaunch object3d_detector object3d_detector.launch

Citation

If you are considering using this code, please reference the following:

@inproceedings{yz17iros,
   author = {Zhi Yan and Tom Duckett and Nicola Bellotto},
   title = {Online learning for human classification in {3D LiDAR-based} tracking},
   booktitle = {In Proceedings of the 2017 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)},
   pages = {864--871},
   address = {Vancouver, Canada},
   month = {September},
   year = {2017}
}

About

Online learning for human classification in 3D LiDAR-based tracking

License:MIT License


Languages

Language:C++ 95.3%Language:Python 2.7%Language:CMake 1.4%Language:C 0.6%