ROG-Map: An Efficient Robocentric Occupancy Grid Map for LiDAR-based Motion Planning

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  • čas přidán 27. 02. 2023
  • ROG-Map: An Efficient Robocentric Occupancy Grid Map for Large-scene and High-resolution LiDAR-based Motion Planning.
    Recent advances in LiDAR technology have opened up new possibilities for robotic navigation. Given the widespread use of occupancy grid maps (OGMs) in robotic motion planning, this paper aims to address the challenges of integrating LiDAR with OGMs. To this end, we propose ROG-Map, a uniform grid-based OGM that maintains a local map moving along with the robot to enable efficient map operation and reduce memory costs for large-scene autonomous flight. Moreover, we present a novel incremental obstacle inflation method that significantly reduces the computational cost in inflation. The proposed method outperforms state-of-the-art (SOTA) methods on various public datasets. To demonstrate the effectiveness and efficiency of ROG-Map, we integrate it into a complete quadrotor system and perform autonomous flights against both small obstacles and large-scale scenes. We release ROG-Map as an open-source ROS package to promote the development of LiDAR-based motion planning.
    github: github.com/hku-mars/ROG-Map
    arxiv preprint: arxiv.org/abs/2302.14819
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Komentáře • 3

  • @xingyuchen4504
    @xingyuchen4504 Před rokem +2

    This is ammmmmmmazzzzzzing!!!!!!!!!!!!!!!

  • @lipisoftware
    @lipisoftware Před rokem +1

    Awesome, nice work!

  • @arghyasvlog7157
    @arghyasvlog7157 Před rokem +1

    You can create a repo on how to create your UAV (drone) platform to deploy this autonomous solutions. Most of the modern robotics labs does that.