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A dynamic niching clustering algorithm based on individual-connectedness and its application to color image segmentation

机译:基于个体连通性的动态小聚类算法及其在彩色图像分割中的应用

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In this paper, a dynamic niching clustering algorithm based on individual-connectedness (DNIC) is proposed for unsupervised classification with no prior knowledge. It aims to automatically evolve the optimal number of clusters as well as the cluster centers of the data set based on the proposed adaptive compact k-distance neighborhood algorithm. More specifically, with the adaptive selection of the number of the nearest neighbor and the individual-connectedness algorithm, DNIC often achieves several sets of connecting individuals and each set composes an independent niche. In practice, each set of connecting individuals corresponds to a homogeneous cluster and this ensures the separability of an arbitrary data set theoretically. An application of the DNIC clustering algorithm in color image segmentation is also provided. Experimental results demonstrate that the DNIC clustering algorithm has high performance and flexibility. (C) 2016 Elsevier Ltd. All rights reserved.
机译:在没有先验知识的情况下,提出了一种基于个体连接性(DNIC)的动态小聚类算法,用于无监督分类。它旨在基于提出的自适应紧凑型k距离邻域算法自动演化最佳数目的聚类以及数据集的聚类中心。更具体地说,通过对最近邻居数的自适应选择和个体连接算法,DNIC经常获得几组个体连接,每组组成一个独立的利基市场。实际上,每组连接的个人都对应于同质的群集,这从理论上确保了任意数据集的可分离性。还提供了DNIC聚类算法在彩色图像分割中的应用。实验结果表明,DNIC聚类算法具有高性能和灵活性。 (C)2016 Elsevier Ltd.保留所有权利。

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