基于三维激光雷达欧几里得聚类的障碍物检测

Chen Jinming
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引用次数: 1

摘要

环境感知是无人驾驶的基础,障碍物检测是环境感知技术的一个重要研究领域。为了快速准确地识别车辆行驶方向上的障碍物并获取其位置信息,本文结合PCL (Point Cloud Library)功能模块,设计了一种基于欧氏距离的点云聚类障碍物检测算法。通过三维激光雷达获取环境信息,进行ROI提取、体素滤波采样、离群点滤波、地面点云分割、欧几里得聚类等处理,实现了一种完整的基于PCL的三维点云障碍物检测方法。实验结果表明,车辆能够有效识别区域内障碍物并获取其位置信息。
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Obstacle Detection Based on 3D Lidar Euclidean Clustering
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, voxel filtering sampling, outlier point filtering, ground point cloud segmentation, Euclide clustering and other processing were carried out to achieve a complete PCL based 3D point cloud obstacle detection method. The experimental results show that the vehicle can effectively identify the obstacles in the area and obtain their location information.
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