Real-time detection and tracking of pedestrians at intersections using a network of laserscanners

D. Meissner, Stephan Reuter, K. Dietmayer
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引用次数: 28

Abstract

Accident analysis shows that the majority of accidents with body injuries occur in urban areas and more than 50 percent of those urban accidents happen at intersections. Due to that a major aim of the Ko-PER project, which is part of research initiative Ko-FAS, is to improve safety at intersections by infrastructure based perception. To recognize and track the moving objects, a network of laserscanner sensors observes the intersection and provides a 3D profile of the current scene. By means of the 3D measurements a robust and adaptive Gaussian mixture background model is trained to segment the measurements of dynamic objects and static objects. After the segmentation, the foreground points of each sensor are clustered based on the density of the point clouds and finally pedestrians are classified using dimension features. This paper focuses on tracking of pedestrians, which are the most vulnerable road users. In order to be able to integrate dependencies between the states of the pedestrians, a random finite set particle filter is used to track the pedestrians. The performance of the laserscanner based tracking system is shown and evaluated with measurements from the Ko-PER test intersection at Conti-Safety-Park. Therefore, the optimal subpattern assignment (OSPA) metric is used to evaluate the object recognition and tracking system.
使用激光扫描仪网络实时检测和跟踪十字路口的行人
事故分析表明,大多数人身伤害事故发生在城市地区,其中50%以上的城市事故发生在十字路口。因此,作为研究计划Ko-FAS的一部分,Ko-PER项目的主要目标是通过基于基础设施的感知来提高十字路口的安全性。为了识别和跟踪移动的物体,激光扫描仪传感器网络会观察十字路口,并提供当前场景的3D轮廓。通过三维测量,训练了一个鲁棒的自适应高斯混合背景模型,用于分割动态目标和静态目标的测量值。分割后,根据点云密度对每个传感器的前景点进行聚类,最后利用维数特征对行人进行分类。行人是最脆弱的道路使用者,本文的重点是行人的跟踪。为了能够整合行人状态之间的依赖关系,采用随机有限集粒子滤波对行人进行跟踪。基于激光扫描仪的跟踪系统的性能在康蒂安全公园的Ko-PER测试路口进行了展示和评估。因此,采用最优子模式分配(OSPA)度量来评价目标识别与跟踪系统。
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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