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Robust K-means algorithm with automatically splitting and merging clusters and its applications for surveillance data

机译:具有自动拆分和合并群集的鲁棒K均值算法及其在监控数据中的应用

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With the pervasive of the definition of the smart city, the data volume of the surveillance system, huge number of video surveillance devices is now rapidly expanding. The research to surveillance data mining and analytics has attracted increasing attention due to its applications. Cluster analysis as an important task of data mining in video surveillance has recently been highly explored. K-means algorithm is the most popular and widely-used partitional clustering algorithm in practice. However, traditional k-means algorithm suffers from sensitive initial selection of cluster centers, and it is not easy to specify the number of clusters in advance. In this paper, we propose a robust k-means algorithm that can automatically split and merge clusters which incorporates the new ideas in dealing with huge scale of video data. This novel algorithm not only addresses the sensitivity in selecting initial cluster centers, but also is resilient to the initial number of clusters. The performance is experimentally verified using synthetic and publicly available datasets. The experiments demonstrate the effectiveness and robustness of the proposed algorithm. Moreover, experiment is conducted on a real video surveillance dataset and the result shows that the novel approach can be applicated friendly in video surveillance.
机译:随着智能城市的定义,监视系统的数据量的普及,大量的视频监视设备正在迅速扩展。监视数据挖掘和分析的研究由于其应用而引起了越来越多的关注。聚类分析作为视频监控中数据挖掘的重要任务,最近得到了高度研究。在实践中,K均值算法是最流行和使用最广泛的分区聚类算法。然而,传统的k-means算法受簇中心的初始选择敏感的影响,并且不容易预先指定簇的数量。在本文中,我们提出了一种鲁棒的k均值算法,该算法可以自动拆分和合并群集,其中融合了处理大量视频数据的新思路。这种新颖的算法不仅解决了选择初始聚类中心的敏感性,而且对初始聚类数量具有弹性。使用合成的和公开可用的数据集对性能进行了实验验证。实验证明了该算法的有效性和鲁棒性。此外,在真实的视频监控数据集上进行了实验,结果表明该方法可适用于视频监控。

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