Pedestrian tracking in video sequences: A particle filtering approach

Mateusz Owczarek, P. Baranski, P. Strumiłło
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引用次数: 7

Abstract

In this work we study the methods for pedestrian tracking in video sequences and indicate various applications of these methods ranging from surveillance systems to aiding the visually impaired persons. First, we define the general problem of object tracking that comprises the tasks of object detection, identifying the flow of object location in consecutive video images and finally analysis of the tracked trajectory data. We review the well known object tracking techniques i.e. the Mean-Shift and the CAMSHIFT algorithm and discuss their properties. Then we introduce the computational technique known as particle filtering (PF) and explain how we have applied it to the tasks of pedestrian tracking. We compare the PF approach against the Mean-Shift and the CAMSHIFT algorithms in terms of tracking robustness and the required computational demand. We conclude, that on the tested video sequences, the PF tracker outperforms the Mean-Shift and by a small margin the CAMSHIFT algorithm. The PF tracker requires more computational power, however, its tracking performance can be flexibly adjusted to the application requirements.
视频序列中的行人跟踪:粒子滤波方法
在这项工作中,我们研究了视频序列中行人跟踪的方法,并指出了这些方法的各种应用,从监视系统到帮助视障人士。首先,我们定义了目标跟踪的一般问题,包括目标检测、连续视频图像中目标定位流的识别和跟踪轨迹数据的分析。我们回顾了著名的目标跟踪技术,即Mean-Shift和CAMSHIFT算法,并讨论了它们的性质。然后,我们介绍了被称为粒子滤波(PF)的计算技术,并解释了我们如何将其应用于行人跟踪任务。我们在跟踪鲁棒性和所需的计算需求方面比较了PF方法与Mean-Shift和CAMSHIFT算法。我们得出结论,在测试的视频序列上,PF跟踪器的性能优于Mean-Shift算法,并且略微优于CAMSHIFT算法。PF跟踪器需要较高的计算能力,但其跟踪性能可以根据应用需求灵活调整。
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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