Can Mean Shift Trackers Perform Better?

Huiyu Zhou, G. Schaefer, Yuan Yuan, M. E. Celebi
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引用次数: 1

Abstract

Many tracking algorithms have difficulties dealing with occlusions and background clutters, and consequently don't converge to an appropriate solution. Tracking based on the mean shift algorithm has shown robust performance in many circumstances but still fails e.g.\ when encountering dramatic intensity or colour changes in a pre-defined neighbourhood. In this paper, we present a robust tracking algorithm that integrates the advantages of mean shift tracking with those of tracking local invariant features. These features are integrated into the mean shift formulation so that tracking is performed based both on mean shift and feature probability distributions, coupled with an expectation maximisation scheme. Experimental results show robust tracking performance on a series of complicated real image sequences.
Mean Shift追踪器能表现得更好吗?
许多跟踪算法难以处理遮挡和背景杂波,因此不能收敛到一个合适的解。基于mean shift算法的跟踪在许多情况下表现出鲁棒性,但仍然失败,例如在预定义的邻域中遇到剧烈的强度或颜色变化时。本文提出了一种鲁棒跟踪算法,该算法综合了均值漂移跟踪和局部不变特征跟踪的优点。这些特征被整合到平均移位公式中,以便基于平均移位和特征概率分布进行跟踪,并结合期望最大化方案。实验结果表明,该方法对一系列复杂的真实图像序列具有良好的跟踪性能。
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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