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基于Mean-shift的灰度目标跟踪新算法 被引量:22

A new algorithm for tracking gray object based on Mean-shift
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摘要 Mean-shift算法是一种非参数密度估计算法,可以实现快速的最优匹配,在目标的实时跟踪领域起着非常重要的作用。为了有效的将Mean-shift算法应用到灰度图像中,采用了以方向直方图建立目标模型的策略,提出了在灰度图像中以Mean-shift为核心的目标跟踪算法。实验结果表明,该算法具有不受光照条件影响的优点,在低对比度的情况下仍能实现稳定、实时的跟踪目标。 The Mean-shift algorithm is a nonparametric density estimation method. The fast and optimal mode matching can be achieved by this method. This algorithm plays a very important roles in real-time object tracking field. In order to apply Mean-shift algorithm on gray-level image, a strategy that using orientation histogram to represent target is adopted. A new algorithm based on Mean-shift is established. Experiment results show that this algorithm can adapt the change of illumination. Though the contrast of image is low, the object can be tracked robust and real-time using the new algorithm.
出处 《光学技术》 EI CAS CSCD 北大核心 2007年第2期226-229,共4页 Optical Technique
关键词 目标跟踪 Mean—shift 方向编码 方向直方图 BHATTACHARYYA系数 ohiect tracking Mean-shift orientation code orientation histogram Bhattachawa coefficient
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