Improved mean shift algorithm for moving object tracking

Ning Li, D. Zhang, Xiaorong Gu, Li Huang, W. Liu, T. Xu
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引用次数: 13

Abstract

Mean shift is a nonparametric estimator of density gradient. Traditional mean shift algorithm is rather sensitive to the influence of background. Therefore, an improved mean shift object tracking algorithm is proposed. Firstly, a novel weights given method is given, which improves the kernel function. The method is that the pixels which near the centre of object are given biggest weights, and the pixels which at the edge of the object are given by exponent distribution as a result of occlusion. In order to hand the occlusion, the occlusion detecting method based on sub-block detecting is also established. The novel sub-block detecting algorithm is that the tracking window is divided into two parts, including right and left, and the similarity measure is calculated respectively. The simulation results show that the improved mean shift algorithm can hand the occlusion effectively and track the moving object very well, and it can track moving object more powerful than the basic mean shift tracked.
运动目标跟踪的改进均值移位算法
均值漂移是密度梯度的非参数估计量。传统的均值移位算法对背景的影响比较敏感。为此,提出了一种改进的平均位移目标跟踪算法。首先,提出了一种新的权值给定方法,对核函数进行了改进;该方法是将靠近物体中心的像素赋予最大的权重,而在物体边缘的像素由于遮挡而由指数分布赋予权重。为了处理遮挡,还建立了基于子块检测的遮挡检测方法。新的子块检测算法是将跟踪窗口分为左右两部分,分别计算相似度测度。仿真结果表明,改进的平均移位算法能有效地处理遮挡,并能很好地跟踪运动目标,对运动目标的跟踪能力比基本的平均移位算法更强。
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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