DONEX: Real-time occupancy grid based dynamic echo classification for 3D point cloud

Niklas Stralau, Chengxuan Fu
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引用次数: 0

Abstract

For driving assistance and autonomous driving systems, it is important to differentiate between dynamic objects such as moving vehicles and static objects such as guard rails. Among all the sensor modalities, RADAR and FMCW LiDAR can provide information regarding the motion state of the raw measurement data. On the other hand, perception pipelines using measurement data from ToF LiDAR typically can only differentiate between dynamic and static states on the object level. In this work, a new algorithm called DONEX was developed to classify the motion state of 3D LiDAR point cloud echoes using an occupancy grid approach. Through algorithmic improvements, e.g. 2D grid approach, it was possible to reduce the runtime. Scenarios, in which the measuring sensor is located in a moving vehicle, were also considered.
DONEX:基于实时占用网格的三维点云动态回波分类
对于驾驶辅助和自动驾驶系统,区分移动车辆等动态物体和护栏等静态物体非常重要。在所有的传感器模式中,雷达和FMCW激光雷达可以提供有关原始测量数据的运动状态的信息。另一方面,使用ToF激光雷达测量数据的感知管道通常只能区分物体层面的动态和静态状态。在这项工作中,开发了一种名为DONEX的新算法,使用占用网格方法对3D LiDAR点云回波的运动状态进行分类。通过算法改进,例如2D网格方法,可以减少运行时间。还考虑了测量传感器位于移动车辆中的场景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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