基于加权增量神经网络的一种新型神经模糊系统的无监督高光谱图像分割

H. Muhammed
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引用次数: 12

摘要

分割高光谱图像是一项重要的任务,通过聚焦于数据集的某一部分或相同或至少“接近”光谱属性的数据样本来简化数据分析。本文简要介绍了一种基于加权增量神经网络(WINN)的新型神经模糊系统,并举例说明了其在高光谱图像无监督分割中的应用。WINN算法产生一个由边连接的节点网络,它反映并保留了输入数据集的拓扑结构。与输入空间中的局部数据密度成比例的附加权重与结果节点和边相关联,以存储有关给定输入数据集中拓扑关系的有用信息。在系统中引入了一个与网络连通性有关的模糊因子。一个类似于分水岭的程序被用来聚类得到的网。结果集群的数量由此过程确定。实验结果表明,本文提出的神经模糊系统在多维数据聚类和图像分割,特别是高光谱图像分割方面是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised hyperspectral image segmentation using a new class of neuro-fuzzy systems based on weighted incremental neural networks
Segmenting hyperspectral images is an important task for simplifying the analysis of the data by focusing on a certain part of the data set or on data samples of the same or at least "nearby" spectral properties. A new class of neuro-fuzzy systems, based on so-called weighted incremental neural networks (WINN), is briefly introduced, exemplified and finally used for unsupervised segmentation of hyperspectral images. The WINN algorithm produces a net of nodes connected by edges, which reflects and preserves the topology of the input data set. Additional weights, which are proportional to the local data densities in the input space, are associated with the resulting nodes and edges to store useful information about the topological relations in the given input data set. A fuzziness factor, related to the connectedness of the net, is introduced in the system. A watershed-like procedure is used to cluster the resulting net. The number of the resulting clusters is determined by this procedure. Experimental results underline the usefulness and efficiency of the proposed neuro-fuzzy system for multi-dimensional data clustering and image segmentation, especially hyperspectral images.
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