基于加权子块的Mean-Shift运动目标跟踪算法

Wang Xing-mei, Dong Hongbin, Yang Xue, Li Lin
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引用次数: 1

摘要

为了减少动态场景中背景变化和遮挡引起的跟踪误差,提出了一种基于加权子块的Mean-Shift运动目标跟踪算法。运动目标跟踪是通过阻塞目标区域来完成的。每个子块的权重由目标子块与候选子块的相似度以及目标子块面积与整体面积的比值确定。同时,利用Sobel算子边缘检测算法找到目标子块的边缘位置。从而得到目标子块区域。在描述每个子块内目标和候选区域的特征模型时,同时考虑了目标区域的RGB颜色信息和像素的位置信息。实验表明,该方法对背景变化和遮挡不敏感,具有较好的跟踪性能,具有较高的跟踪精度和自适应性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mean-Shift moving target tracking algorithm based on weighted sub-block
To reduce the tracking errors caused by the background change and occlusion in dynamic scenes, a novel Mean-Shift moving target tracking algorithm based on weighted sub-block is proposed in this paper. Moving target tracking is completed by blocking the target region. The weight of each sub-block is determined by the combination of the similarity between target sub-block and candidate sub-block and the ratio of the target sub-block area and the overall area. At the same time, the edge position of the target sub-block is found by means of a Sobel operator edge detection algorithm. By which, the target sub-block area is obtained. Both of the target region's RGB color information and the pixel's position information are taken into consideration while describing the characteristic model of target and candidate region inside each sub-block. The experiments demonstrate that the proposed method is insensitive to the background change and occlusion, and has better tracking performance with higher tracking accuracy and adaptability.
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