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Mean shift track initiation algorithm based on Hough transform

机译:基于霍夫变换的均值漂移轨迹起始算法

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To solve the problem of initiating tracks for multi-target in dense clutters environment, a Mean shift track initiation algorithm based on Hough transform is proposed. In the algorithm, firstly, hough transform is applied to transform observation points from input space, referred to as feature space into curves in a special parameter space; then a Mean shift clustering algorithm is executed to cluster the items gained in the parameter space, and the problem of peak seeking is also solved adaptively. Furthermore, a fuzzy influential factor, which is based on the vote number of accumulation matrix and distance between items in the parameter space and clustering center, is defined to design kernel function of Mean shift; thus clutters are removed more effectively. Experimental results show that proposed algorithm has high detection accuracy and can initiate tracks effectively.
机译:为解决密集杂波环境下多目标航迹起始问题,提出了一种基于霍夫变换的Mean shift航迹起始算法。在该算法中,首先,使用霍夫变换将来自输入空间(称为特征空间)的观察点转换为特殊参数空间中的曲线。然后采用均值漂移聚类算法对参数空间中获得的项进行聚类,并自适应地解决了寻峰问题。此外,基于累加矩阵的投票数和参数空间与聚类中心项之间的距离,定义了模糊影响因子,以设计均值漂移的核函数。因此,可以更有效地消除杂波。实验结果表明,该算法具有较高的检测精度,可以有效地进行跟踪。

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