基于视频的人体跟踪方法分析与评价

S. Shukor, Shafarudin Amiruddin, B. Ilias
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引用次数: 1

摘要

人体跟踪一直是一个兴趣,因为它在许多领域的重要性,从安全,监视,国防,以及移动机器人应用,如人类跟随。近年来,人们提出了大量的跟踪算法,并对其中的许多算法进行了比较和广泛的评价,但仍然局限于某些方法或情况。在这里,对跟踪算法-卡尔曼滤波器(KF), Mean-Shift滤波器(MSF)和偏最小二乘(PLS)进行了分析,以评估它们的性能。选取室外环境中人体行走和跑步两种情况,对色彩效果、人体方位和运动等参数的跟踪计算时间进行了分析和评价。在选定的算法进行跟踪时,分析了这些参数的影响。在此基础上分析了MSF和KF在指定条件下对人的跟踪效果。除此之外,还可以得出结论,所选择的参数确实会对这些算法在跟踪人体时的性能产生影响,这可以作为未来开发更鲁棒算法的指导。
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Analysis and evaluation of human tracking methods from video
Human tracking has always been an interest, due to its importance in many areas, from security, surveillance, defence, as well as for mobile robotics applications like human following. Recently, a large number of tracking algorithms have been proposed, and a lot of them have been compared for extensive evaluation, however there are still limited to certain methods or situations only. Here, analysis towards tracking algorithms - Kalman Filter (KF), Mean-Shift Filter (MSF) and Partial Least Square (PLS) - are done to evaluate their performances. Two situations of human walking and running in outdoor surrounding were chosen, and the computational time over tracking in several parameters of colour effect, human orientation and movement were analysed and evaluated. The effect of these parameters were also analysed while the selected algorithms perform the tracking. Based on the analysis, it is shown that MSF and KF perform well in tracking human in the designated conditions. Apart from that, it can also be concluded that the selected parameters do give impacts towards the performance of these algorithms in tracking human, which can act as a guide in developing a more robust algorithm in the future.
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