LiDAR Point Cloud Descriptor for UAM Place Recognition with Point Cloud Map

Citations

SCOPUS

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초록

Accurate localization is a critical element for the successful and safe operation of Urban Air Mobility (UAM). In this study, we present a method for UAM place recognition that utilizes point cloud map (PCM) data and a virtual LiDAR sensor model. The PCM-based approach enables the creation of a virtual descriptor database (VDD) for place recognition. To generate descriptors invariant to translation and rotation, we introduce a region of interest sampling method and a feature point detection approach, effectively minimizing altitude influence. We also outline a technique for creating translation and rotation invariant descriptors through the integration of robust feature extraction methods. Furthermore, we conduct an experiment utilizing a game engine-based UAM simulator to validate the proposed method. PCM and VDD are generated through the simulator, and a quantitative analysis of descriptors and place recognition is subsequently carried out. © 2024, Institute of Navigation

제목
LiDAR Point Cloud Descriptor for UAM Place Recognition with Point Cloud Map
저자
Im, Ji-UngLee, Yong-HaWon, Jong-Hoon
DOI
10.33012/2024.19521
발행일
2024
유형
Conference paper
저널명
Proceedings of the International Technical Meeting of The Institute of Navigation, ITM
2024-January
페이지
651 ~ 657