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Hidden Markov Model Based Time-Series Images Clustering Algorithm and its Application in Sports Image Processing

机译:基于隐马尔可夫模型的时序图像聚类算法及其在体育图像处理中的应用

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摘要

This paper proposed a structure optimization principle according to the entropy calculating method of the HMM, and then introduced the TOM as the evaluation stander of the clustering result firstly. Then this paper proposed the WTOM by weighted the TOM, and divided the samples according to the value WTOM. Based on this work, this paper proposed an HMM based time-series images clustering algorithm which named HTICA, HTICA clustered the images hierarchically, theoretical analysis and experiments show that the proposed algorithm is very reliable, it can segment and identify the continuous time series samples unsupervised. And the application results in typical action extraction for badminton athlete is very well.
机译:本文提出了根据亨姆熵计算方法的结构优化原理,然后将汤姆作为聚类结果的评估标准引入。 然后本文提出了加权汤姆的WTOM,并根据值WTOM划分样品。 基于这项工作,本文提出了一种基于HMM的时间序列图像聚类算法,其命名为HTICA,HTICA在层次的层次上聚类图像,理论分析和实验表明,该算法非常可靠,它可以段和识别连续时间序列样本 无监督。 申请导致羽毛球运动员的典型动作提取非常好。

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