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TRAVEL for RA-L'22 w/ IROS Option

Best Paper Award winner from RA-L 2022

Official page of "TRAVEL: Traversable Ground and Above-Ground Object Segmentation using Graph Representation for 3D LiDAR Scans", which is accepted by RA-L with IROS'22 option.

Demo

travel_kitti TRAVEL_results

Keywords

Object segmentation, Traversable ground segmentation, Graph search, Autonomous navigation, LiDAR

Test Env.

  • Ubuntu 18.04 LTS
  • ROS Melodic

How to Build

  1. Dependencies
    sudo apt install cmake libeigen3-dev libboost-all-dev
    sudo apt-get install ros-melodic-jsk-recognition
    sudo apt-get install ros-melodic-jsk-common-msgs
    sudo apt-get install ros-melodic-jsk-rviz-plugins
    
  2. Build
    mkdir -p catkin_ws/src/
    cd catkin_ws/src/
    git clone https://github.com/url-kaist/TRAVEL.git
    ../
    catkin_make
    

How to Run TRAVEL

  • RUN!
roslaunch travel travel_run.launch

On your setting.

  1. Include two header files in your source. "tgs.hpp" & "aos.hpp"
  2. Initialize "travel::TravelGroundSeg" and "travel::ObjectCluster"
  3. Use the "setParams()" function in each class to set the parameters.
  4. Use "travel::TravelGroundSeg.estimateGround()" function for traversable ground segmentation
  5. Use "travel::ObjectCluster.segmentObjects()" function for above-ground object segmentation
  • I will upload an example ros node that subscribes to sensor data.
  • If you want to use TRAVEL with python code, then visit here (https://github.com/darrenjkt/TRAVEL). Thank you Darren :)

Citation

If our research has been helpful, please cite the below papers:

@ARTICLE{oh2022travel,  
    author={Oh, Minho and Jung, Euigon and Lim, Hyungtae and Song, Wonho and Hu, Sumin and Lee, Eungchang Mason and Park, Junghee and Kim, Jaekyung and Lee, Jangwoo and Myung, Hyun},  
    journal={IEEE Robotics and Automation Letters},   
    title={TRAVEL: Traversable Ground and Above-Ground Object Segmentation Using Graph Representation of 3D LiDAR Scans},   
    volume={7},  
    number={3},  
    pages={7255-7262},  
    year={2022},
    }
@article{lim2021patchwork,
    title={Patchwork: Concentric Zone-based Region-wise Ground Segmentation with Ground Likelihood Estimation Using a 3D LiDAR Sensor},
    author={Lim, Hyungtae and Minho, Oh and Myung, Hyun},
    journal={IEEE Robot. Autom. Lett.},
    volume={6},
    number={4},
    pages={6458--6465},
    year={2021},
    }
@article{lim2021erasor,
    title={ERASOR: Egocentric Ratio of Pseudo Occupancy-Based Dynamic Object Removal for Static 3D Point Cloud Map Building},
    author={Lim, Hyungtae and Hwang, Sungwon and Myung, Hyun},
    journal={IEEE Robotics and Automation Letters},
    volume={6},
    number={2},
    pages={2272--2279},
    year={2021},
    publisher={IEEE}
    }