基于模式搜索的人体跟踪

Csaba Beleznai, B. Fruhstuck, H. Bischof
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引用次数: 21

摘要

背景减法变化检测是检测移动前景的常用方法。通常根据像素连通性对得到的差分图像进行阈值处理以获得目标,随后跟踪得到的blob目标。本文提出了一种不需要对差分图像进行二值化的检测方法。差分图像中的局部密度最大值(通常表示运动物体)通过快速的非参数均值移位聚类过程来勾画。利用均值漂移过程的寻模特性,通过不断更新和传播聚类参数来实现目标跟踪。针对遮挡目标,提出了一种快速确定目标结构的方法,使图像似然性最大化。最后给出了拥挤场景下的检测和跟踪结果,并对所提出的跟踪框架进行了评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human tracking by mode seeking
Change detection by background subtraction is a common approach to detect moving foreground. The resulting difference image is usually thresholded to obtain objects based on pixel connectedness and resulting blob objects are subsequently tracked. This paper proposes a detection approach not requiring the binarization of the difference image. Local density maxima in the difference image - usually representing moving objects - are outlined by a fast non-parametric mean shift clustering procedure. Object tracking is carried out by updating and propagating cluster parameters over time using the mode seeking property of the mean shift procedure. For occluding targets, a fast procedure determining the object configuration maximizing image likelihood is presented. Detection and tracking results are demonstrated for a crowded scene and evaluation of the proposed tracking framework is presented.
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