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首页> 外文期刊>IEEE Geoscience and Remote Sensing Letters >Unsupervised Classification of Hyperspectral-Image Data Using Fuzzy Approaches That Spatially Exploit Membership Relations
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Unsupervised Classification of Hyperspectral-Image Data Using Fuzzy Approaches That Spatially Exploit Membership Relations

机译:使用空间关系成员关系的模糊方法对高光谱图像数据进行无监督分类

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摘要

This letter presents unsupervised hyperspectral-image classification based on fuzzy-clustering algorithms that spatially exploit membership relations. Not only is the conventional fuzzy c-means approach used to demonstrate the advantage of using membership relations but also Gustafson-Kessel clustering, which uses an adaptive distance norm, is, for the first time, used for the segmentation of hyperspectral images. A novel approach to include spatial information in the segmentation process is achieved by making use of spatial relations of fuzzy-membership functions among neighbor pixels. Two- and three-dimensional Gaussian filtering of fuzzy-membership degrees is utilized for this purpose. A novel phase-correlation-based similarity measure is used to further enhance the performance of the proposed approach by taking spatial relations into account for pixels with similar spectral characteristics only. It is shown that the proposed approach provides superior clustering performance for hyperspectral images.
机译:这封信提出了基于模糊聚类算法的无监督高光谱图像分类,该算法在空间上利用隶属关系。不仅传统的模糊c均值方法用于证明使用隶属关系的优势,而且Gustafson-Kessel聚类首次使用了自适应距离范数,也被用于高光谱图像的分割。通过利用相邻像素之间的模糊隶属函数的空间关系,实现了一种在分割过程中包括空间信息的新颖方法。为此,利用了模糊隶属度的二维和三维高斯滤波。通过仅考虑具有相似光谱特征的像素的空间关系,可以使用一种基于相位相关性的新颖性相似性度量来进一步增强该方法的性能。结果表明,所提出的方法为高光谱图像提供了优异的聚类性能。

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