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Real-Time Tracking Algorithm Based on Improved Mean Shift and Kalman Filter

机译:基于改进均值漂移和卡尔曼滤波的实时跟踪算法

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In traditional Mean Shift algorithm, color histograM is usually used as the features vectors, and the dissimilarity between the referenced targets and the target candidates is expressed by the metric derived from the Bhattacharyya coefficients. The traditional Mean Shift procedure is used to find the real position of the target by looking for the regional minimum of the distance function iteratively. While the target's color is similar to the background, the algorithm will miss the target This paper presents a new mean shift algorithm based on spatial edge orientation histograms, using space distribution and texture information as matching information. Meanwhile a Kalman filter will be used to predict the target's position. Experimental results demonstrate that the proposed algorithm can deal with intricate conditions, such as significant clutter, partial occlusions, and it can track objects efficiently and robustly.
机译:在传统的均值漂移算法中,通常使用颜色histograM作为特征向量,并且参考目标和目标候选之间的差异由从Bhattacharyya系数得出的度量表示。传统的均值平移程序用于通过迭代查找距离函数的区域最小值来找到目标的实际位置。当目标的颜色与背景相似时,该算法会错过目标。本文提出一种基于空间边缘方向直方图的新均值漂移算法,该算法使用空间分布和纹理信息作为匹配信息。同时,将使用卡尔曼滤波器来预测目标的位置。实验结果表明,该算法可以处理复杂的情况,例如明显的杂波,部分遮挡,并且可以高效,鲁棒地跟踪目标。

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