基于子空间组合聚类和自适应波段选择的高光谱图像降维

Chunsen Zhang, Hengheng Liu
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引用次数: 2

摘要

提出了一种基于自动子空间分割、基于互信息的k均值聚类和自适应波段选择的高光谱图像降维方法。该方法首先采用自动子空间划分方法来确定初始子空间,在各个初始子空间中通过图像方差与波段之间的互信息和K -均值来确定聚类中心,并从相邻的两个波段中选择聚类中心及其互信息之间的差值的绝对最小波段作为边界来划分分子空间;然后在子空间中对各波段进行划分,采用自适应选择波段指标的方法,得到各波段子空间的最大指标,并根据指标从大到小的顺序,最后在前三个波段中进行波段的选择。利用OMIS高光谱数据进行实验,该方法比以往的波段选择方法具有更高的分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dimensionality reduction of hyperspectral images based on subspace combination clustering and adaptive band selection
This paper proposes a method of hyperspectral image dimensionality reduction based on automatic subspace partition, k-means clustering based on mutual information and adaptive band selection. This method first automatic subspace division method is used to determine the initial subspace, in various initial subspace through the mutual information between image variance and band and K - means to determine the clustering center and clustering center from two adjacent band selection and their mutual information between the difference between the absolute minimum band as a boundary to delimit the molecular space, and then in the subspace of division of each band is obtained by applying the method of adaptive band selection index, get the biggest index of each subspace of band and from big to small order according to the index, at last in the first three band is the selection of bands. OMIS hyperspectral data were used to conduct experiments, and this method has a higher classification accuracy than the previous band selection methods.
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