A real-time multiple vehicle classification and tracking system with occlusion handling

A. Ghasemi, R. Safabakhsh
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引用次数: 17

Abstract

In this paper, we propose a new traffic surveillance system with the ability to perform surveillance tasks in real time. The proposed classification method is able to classify objects into vehicles and non-vehicles (pedestrians and motorcycles). In addition, the system can detect the type of vehicle as large or small efficiently, without considering size-based features. Our tracking algorithm uses a region-based tracker to explicitly define occlusion relationships between vehicles. For occlusion handling, we use a Kalman filter to estimate the position of moving vehicles and a tree structure by which moving regions are arranged in a tree. In this way, we obtain robust motion estimates and trajectories for vehicles, even in presence of occlusions. We show the efficient performance of the proposed system in some experiments with real world traffic scenes.
基于遮挡处理的实时多车辆分类与跟踪系统
本文提出了一种能够实时完成监控任务的新型交通监控系统。提出的分类方法能够将物体分为车辆和非车辆(行人和摩托车)。此外,该系统可以有效地检测车辆的类型是大还是小,而不考虑基于尺寸的特征。我们的跟踪算法使用基于区域的跟踪器来明确定义车辆之间的遮挡关系。对于遮挡处理,我们使用卡尔曼滤波器来估计移动车辆的位置,并使用树形结构来排列移动区域。通过这种方式,即使存在遮挡,我们也可以获得车辆的鲁棒运动估计和轨迹。我们在一些真实世界交通场景的实验中展示了所提出系统的高效性能。
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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