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Object tracking via Modified CamShift in Sequential Bayesian Filtering Framework

机译:在顺序贝叶斯过滤框架中通过修改的CamShift进行对象跟踪

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We present a robust object tracking algorithm which integrates Modified Continuous Adaptive Mean shift and Particle Filtering providing a framework for state estimation in nonlinear and non-Gaussian dynamic system. In order to overcome the various kinds of clutter and distracters problem, we employ a parameter associated with the similarity measurement to update window width adaptively via calculating histogram intersection between object and its background. Meanwhile, special morphological operations are adopted to improve the accuracy of object histogram back-projection. Experimental results show that the proposed algorithm is robust to partial occlusion, clutter and fast motion. Finally, we could obtain and analysis the target trajectory with fast motion as the basis for behavior analyze and understanding.
机译:我们提出了一种鲁棒的目标跟踪算法,该算法集成了改进的连续自适应均值漂移和粒子滤波,为非线性和非高斯动态系统中的状态估计提供了框架。为了克服各种混乱和干扰因素,我们采用与相似性度量相关的参数来通过计算对象与其背景之间的直方图相交来自适应地更新窗口宽度。同时,采用特殊的形态学运算来提高物体直方图反投影的精度。实验结果表明,该算法对部分遮挡,杂波和快速运动具有鲁棒性。最后,我们可以获得并分析快速运动的目标轨迹,作为进行行为分析和理解的基础。

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