Robust vehicle environment reconstruction from point clouds for irregularity detection

A. C. Sidiya, A. Rubaiyat, Y. P. Fallah, G. Bansal, Takayuki Shimizu, X. Li
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Abstract

Understanding the surrounding environment including both still and moving objects is crucial to the design and optimization of intelligent vehicles. Knowledge about the vehicle environment could facilitate reliable detection of moving objects, especially irregular events (e.g., pedestrians crossing the road, vehicles making sudden lane changes,) for the purpose of avoiding collisions. Inspired by the analogy between point cloud and video data, we propose to formulate a problem of reconstructing the vehicle environment (e.g., terrains and buildings) from a sequence of point cloud sets. Built upon existing point cloud registration tool such as iterated closest point (ICP), we have developed an expectation-maximization (EM)-ICP technique that can automatically mosaic multiple point cloud sets into a larger one characterizing the still environment surrounding the vehicle. Moreover, we propose to address the issue of irregularity detection from the extracted moving objects. Our experimental results have shown successful reconstruction of a variety of challenging vehicle environments (including rural and urban, road and intersection, etc.) and simultaneous tracking/segmentation of multiple moving objects.
基于点云的鲁棒车辆环境重建,用于不规则检测
了解周围环境,包括静止和移动的物体,对智能汽车的设计和优化至关重要。对车辆环境的了解有助于可靠地检测移动物体,特别是不规则事件(例如行人过马路,车辆突然变道),以避免碰撞。受点云和视频数据之间类比的启发,我们提出了一个从一系列点云集重构车辆环境(如地形和建筑物)的问题。基于现有的点云配准工具,如迭代最近点(ICP),我们开发了一种期望最大化(EM) ICP技术,该技术可以自动将多个点云集拼接成一个更大的点云集,以表征车辆周围的静止环境。此外,我们提出解决从提取的运动物体中检测不规则性的问题。我们的实验结果表明,我们成功地重建了各种具有挑战性的车辆环境(包括农村和城市,道路和十字路口等),并同时跟踪/分割了多个运动物体。
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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