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首页> 外文期刊>Journal of Intelligent Systems >Automatic Data Clustering Using Parameter Adaptive Harmony Search Algorithm and Its Application to Image Segmentation
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Automatic Data Clustering Using Parameter Adaptive Harmony Search Algorithm and Its Application to Image Segmentation

机译:参数自适应谐波搜索算法的自动数据聚类及其在图像分割中的应用

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摘要

In this paper, the problem of automatic data clustering is treated as the searching of optimal number of clusters so that the obtained partitions should be optimized. The automatic data clustering technique utilizes a recently developed parameter adaptive harmony search (PAHS) as an underlying optimization strategy. It uses real-coded variable length harmony vector, which is able to detect the number of clusters automatically. The newly developed concepts regarding "threshold setting" and "cutoff" are used to refine the optimization strategy. The assignment of data points to different cluster centers is done based on the newly developed weighted Euclidean distance instead of Euclidean distance. The developed approach is able to detect any type of cluster irrespective of their geometric shape. It is compared with four well-established clustering techniques. It is further applied for automatic segmentation of grayscale and color images, and its performance is compared with other existing techniques. For real-life datasets, statistical analysis is done. The technique shows its effectiveness and the usefulness.
机译:在本文中,自动数据聚类的问题被视为最佳聚类数的搜索,因此应该对获得的分区进行优化。自动数据聚类技术利用最近开发的参数自适应和声搜索(PAHS)作为基础优化策略。它使用实数编码的可变长度和声矢量,该矢量能够自动检测聚类的数量。使用有关“阈值设置”和“临界值”的新开发概念来优化优化策略。数据点到不同聚类中心的分配是根据新开发的加权欧几里得距离而不是欧几里得距离完成的。所开发的方法能够检测任何类型的簇,而不管其几何形状如何。它与四种公认的聚类技术进行了比较。它进一步应用于灰度和彩色图像的自动分割,并将其性能与其他现有技术进行了比较。对于现实生活中的数据集,需要进行统计分析。该技术表明了其有效性和实用性。

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