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Unsupervised Hyperspectral Image Band Selection Based on Deep Subspace Clustering

机译:基于深度子空间聚类的无监督高光谱图像波段选择

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摘要

Hyperspectral image (HSI) consists of hundreds of continuous narrow bands with high redundancy, resulting in the curse of dimensionality and an increased computation complexity in HSI classification. Many clustering-based band selection approaches have been proposed to deal with such a problem. However, a few of them consider the spectral and spatial relationship simultaneously. In this letter, we proposed a novel clustering-based band selection approach using deep subspace clustering (DSC). The proposed approach combines the subspace clustering task into a convolutional autoencoder by treating it as a self-expressive layer, enabling it to be trained end to end. The resulting network can fully extract the interaction of spectral bands based on using spatial information and nonlinear feature transformation. We compared the results of the proposed method with existing band selection methods for three widely used HSI data sets, showing that the proposed method is able to accurately select an informative band subset with remarkable classification accuracy.
机译:高光谱图像(HSI)由数百个具有高冗余度的连续窄带组成,这导致了维数的诅咒和HSI​​分类中计算复杂性的增加。已经提出了许多基于聚类的频带选择方法来解决这个问题。然而,其中一些同时考虑光谱和空间关系。在这封信中,我们提出了一种使用深度子空间聚类(DSC)的新颖的基于聚类的频带选择方法。通过将子空间聚类任务视为自表达层,该方法将子空间聚类任务组合到卷积自动编码器中,从而可以端到端地对其进行训练。基于使用空间信息和非线性特征变换的结果,网络可以完全提取光谱带的相互作用。我们对三种广泛使用的HSI数据集将所提出的方法的结果与现有频带选择方法进行了比较,结果表明,所提出的方法能够准确地选择信息量大的频带子集,具有出色的分类精度。

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