G-VOM: A GPU Accelerated Voxel Off-Road Mapping System Institutional Repository Document uri icon

abstract

  • We present a local 3D voxel mapping framework for off-road path planning and navigation. Our method provides both hard and soft positive obstacle detection, negative obstacle detection, slope estimation, and roughness estimation. By using a 3D array lookup table data structure and by leveraging the GPU it can provide online performance. We then demonstrate the system working on three vehicles, a Clearpath Robotics Warthog, Moose, and a Polaris Ranger, and compare against a set of pre-recorded waypoints. This was done at 4.5 m/s in autonomous operation and 12 m/s in manual operation with a map update rate of 10 Hz. Finally, an open-source ROS implementation is provided. https://github.com/unmannedlab/G-VOM

author list (cited authors)

  • Overbye, T., & Saripalli, S.

citation count

  • 0

complete list of authors

  • Overbye, Timothy||Saripalli, Srikanth

Book Title

  • arXiv

publication date

  • September 2021