Narrowing Your FOV With SOLiD: Spatially Organized and Lightweight Global Descriptor for FOV-Constrained LiDAR Place Recognition

  • Kim, Hogyun
  • Choi, Jiwon
  • Sim, Taehu
  • Kim, Giseop
  • Cho, Younggun
Citations

WEB OF SCIENCE

17
Citations

SCOPUS

22

초록

We often encounter limited FOV situations due to various factors such as sensor fusion or sensor mount in real-world robot navigation. However, the limited FOV interrupts the generation of descriptions and impacts place recognition adversely. Therefore, we suffer from correcting accumulated drift errors in a consistent map using LiDAR-based place recognition with limited FOV. Thus, in this letter, we propose a robust LiDAR-based place recognition method for handling narrow FOV scenarios. The proposed method establishes spatial organization based on the range-elevation bin and azimuth-elevation bin to represent places. In addition, we achieve a robust place description through reweighting based on vertical direction information. Based on these representations, our method enables addressing rotational changes and determining the initial heading. Additionally, we designed a lightweight and fast approach for the robot's onboard autonomy. For rigorous validation, the proposed method was tested across various LiDAR place recognition scenarios (i.e., single-session, multi-session, and multi-robot scenarios). To the best of our knowledge, we report the first method to cope with the restricted FOV.

키워드

LiDARlimited FOVplace recognitionlightweightonboard computingLiDARlimited FOVplace recognitionlightweightonboard computingSCAN CONTEXT
제목
Narrowing Your FOV With SOLiD: Spatially Organized and Lightweight Global Descriptor for FOV-Constrained LiDAR Place Recognition
저자
Kim, HogyunChoi, JiwonSim, TaehuKim, GiseopCho, Younggun
DOI
10.1109/LRA.2024.3440089
발행일
2024-11
유형
Article
저널명
IEEE Robotics and Automation Letters
9
11
페이지
9645 ~ 9652