图着色的网络聚类:天文图像的应用

E. Zarrazola, D. Gómez, J. Montero, J. Yáñez, A. I. G. D. Castro
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引用次数: 2

摘要

本文提出了一种高效的多项式层次聚类技术,用于图连接项的无监督分类。该算法的输出以一种分裂的方式显示了集群的进化,在这种方式下,只要两个项目被包含在同一个集群中,它们就会加入一个共同的集群,直到最后一次迭代,其中所有的项目都属于一个单一的集群。这个输出可以看作是一个模糊聚类,其中对于每个alpha cut,我们都有一个网络的标准聚类。我们在本文中提出的聚类工具允许对相关项目进行分层聚类,避免了在聚类问题中经常假设的一些不切实际的约束。将该方法应用于天文图像的分层分割问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Network clustering by graph coloring: An application to astronomical images
In this paper we propose an efficient and polynomial hierarchical clustering technique for unsupervised classification of items being connected by a graph. The output of this algorithm shows the cluster evolution in a divisive way, in such a way that as soon as two items are included in the same cluster they will join a common cluster until the last iteration, in which all the items belong to a singleton cluster. This output can be viewed as a fuzzy clustering in which for each alpha cut we have a standard cluster of the network. The clustering tool we present in this paper allows a hierarchical clustering of related items avoiding some unrealistic constraints that are quite often assumed in clustering problems. The proposed procedure is applied to a hierarchical segmentation problem in astronomical images.
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