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Object Detection in Terrestrial Laser Scanning Point Clouds Based on Hough Forest

机译:基于霍夫森林的地面激光扫描点云目标检测

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摘要

This letter presents a novel rotation-invariant method for object detection from terrestrial 3-D laser scanning point clouds acquired in complex urban environments. We utilize the Implicit Shape Model to describe object categories, and extend the Hough Forest framework for object detection in 3-D point clouds. A 3-D local patch is described by structure and reflectance features and then mapped to the probabilistic vote about the possible location of the object center. Objects are detected at the peak points in the 3-D Hough voting space. To deal with the arbitrary azimuths of objects in real world, circular voting strategy is introduced by rotating the offset vector. To deal with the interference of adjacent objects, distance weighted voting is proposed. Large-scale real-world point cloud data collected by terrestrial mobile laser scanning systems are used to evaluate the performance. Experimental results demonstrate that the proposed method outperforms the state-of-the-art 3-D object detection methods.
机译:这封信提出了一种新颖的旋转不变方法,用于从复杂的城市环境中获取的地面3-D激光扫描点云中进行目标检测。我们利用隐式形状模型来描述对象类别,并扩展了Hough Forest框架用于3-D点云中的对象检测。通过结构和反射特征描述3-D局部面片,然后将其映射到有关对象中心可能位置的概率投票。在3-D Hough投票空间的峰值点检测到对象。为了处理现实世界中物体的任意方位角,通过旋转偏移矢量来引入圆形投票策略。为了处理相邻对象的干扰,提出了距离加权投票。地面移动激光扫描系统收集的大规模现实世界点云数据用于评估性能。实验结果表明,所提出的方法优于最新的3D对象检测方法。

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