Multibandwidth Kernel-Based Object Tracking

Aras Dargazany, A. Soleimani, A. Ahmadyfard
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引用次数: 4

Abstract

Object tracking using Mean Shift (MS) has been attracting considerable attention recently. In this paper, we try to deal with one of its shortcoming. Mean shift is designed to find local maxima for tracking objects. Therefore, in large target movement between two consecutive frames, the local and global modes are not the same as previous frames so that Mean Shift tracker may fail in tracking the desired object via localizing the global mode. To overcome this problem, a multibandwidth procedure is proposed to help conventional MS tracker reach the global mode of the density function using any staring points. This gradually smoothening procedure is called Multi Bandwidth Mean Shift (MBMS) which in fact smoothens the Kernel Function through a multiple kernel-based sampling procedure automatically. Since it is important for us to have less computational complexity for real-time applications, we try to decrease the number of iterations to reach the global mode. Based on our results, this proposed version of MS enables us to track an object with the same initial point much faster than conventional MS tracker.
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基于多带宽内核的目标跟踪
利用Mean Shift (MS)进行目标跟踪是近年来研究的热点。在本文中,我们试图解决它的一个缺点。均值移位的设计是为了寻找局部最大值来跟踪目标。因此,在连续两帧之间的大型目标运动中,局部和全局模式与前一帧不同,使得Mean Shift跟踪器无法通过局部化全局模式来跟踪目标。为了克服这一问题,提出了一种多带宽处理方法,使传统的MS跟踪器可以使用任意起始点达到密度函数的全局模式。这种逐渐平滑的过程被称为多带宽平均移位(MBMS),它实际上是通过一个基于多核的采样过程自动平滑核函数。由于降低实时应用程序的计算复杂度对我们来说很重要,因此我们尝试减少迭代次数以达到全局模式。根据我们的结果,该版本的MS使我们能够比传统的MS跟踪器更快地跟踪具有相同初始点的物体。
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