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Robust Object Tracking Using Regional Mutual Information and Normalized Cross Correlation

机译:使用区域互信息和归一化互相关的强大对象跟踪

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摘要

In this paper, a novel feature point-based background detection algorithm is proposed to distinguish crowded and un-crowded background. This algorithm uses regional mutual information (RMI) and normalized cross correlation (NCC) as similarity measure based on background type criterion for template matching. RMI is suitable as similarity measure for object tracking in order to reduce sensitivity to noise, partial occlusion and illumination variation. Experimental results demonstrate that our proposed algorithm has high ability to tracking object when the background changes from un-crowded background to crowded background or vice versa.
机译:本文提出了一种新的基于特征点的背景检测算法来区分拥挤和不拥挤的背景。该算法使用区域互信息(RMI)和归一化互相关(NCC)作为基于模板匹配的背景类型准则的相似性度量。 RMI适合作为对象跟踪的相似性度量,以降低对噪声,部分遮挡和照明变化的敏感性。实验结果表明,当背景从不拥挤的背景变为拥挤的背景,反之亦然时,我们提出的算法具有很高的跟踪对象的能力。

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