2021
DOI: 10.22158/asir.v5n3p39
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Obstacle Detection Based on 3D Lidar Euclidean Clustering

Abstract: Environment perception is the basis of unmanned driving and obstacle detection is an important research area of environment perception technology. In order to quickly and accurately identify the obstacles in the direction of vehicle travel and obtain their location information, combined with the PCL (Point Cloud Library) function module, this paper designed a euclidean distance based Point Cloud clustering obstacle detection algorithm. Environmental information was obtained by 3D lidar, and ROI extraction, vox… Show more

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