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Hyperspectral image feature selection for the fuzzy c-means spatial and spectral clustering

机译:超光图像特征选择,用于模糊C型空间和光谱聚类

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Hyperspectral image clustering is commonly applied for unsupervised classification. However, the clustering results of traditional methods are not sufficient seeing the nature of the image as a data cube with high dimensionality. In addition, the complex relations between spatial neighboring pixels are not considered in traditional methods. In this paper the fuzzy c-means clustering is revisited and customized. The proposed approach aims at the reduction of dimensionality of the data cube while preserving the most relevant spectral features and the improvement of the clustering result. The integration of spatial feature can express natural dependence between neighboring pixels and enhance the clustering. For that the presented approach starts by a band selection method based on the hierarchical clustering of spectral bands using the mutual information measure to reduce the dimensionality of the image. Then, a new version of the fuzzy c-means clustering algorithm is proposed; this version includes spatial and spectral features. Experimental result on real hyperspectral data shows an improvement on the accuracy over conventional clustering methods.
机译:高光谱图像聚类通常适用于无监督的分类。然而,传统方法的聚类结果不充分将图像的性质视为具有高维度的数据立方体。另外,在传统方法中不考虑空间相邻像素之间的复杂关系。在本文中,模糊C-Means集群被重新审视和定制。该方法旨在减少数据立方体的维度,同时保留最相关的光谱特征和群集结果的改进。空间特征的集成可以表达相邻像素之间的自然依赖性并增强聚类。为此,所提出的方法通过基于使用互信息测量的频谱频带的分层聚类来开始频带选择方法来减少图像的维度。然后,提出了一种新版本的模糊C型聚类算法;此版本包括空间和光谱功能。实验结果对实际高光谱数据显示出对传统聚类方法的准确性的提高。

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