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Hyperspectral Image Classification by Spatial–Spectral Derivative-Aided Kernel Joint Sparse Representation

机译:基于空间谱导数核联合稀疏表示的高光谱图像分类

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摘要

Sparse representation exhibits good performance in various image processing and has been applied to hyperspectral image (HSI) classification by many researchers. Recently, several new spatial–spectral strategies combined with sparse representation have been proposed to improve classification performance. However, these new strategies rely on spectral reflectance information and its neighborhood, without considering other spectral properties and higher order context information. Thus, in this paper, we present a spatial–spectral derivative-aided kernel joint sparse representation (KJSR-SSDK) for HSI classification. The proposed algorithm includes three novelties: 1) it considers the derivative features of the spectral as well as the original spectral feature; 2) it incorporates higher order spatial context and distinct spectral information; and 3) the mix-norm regularization is imposed on the coefficients of spatial–spectral derivative-aided dictionary for KJSR. Based on the rich experimental comparison with the related state-of-the-art algorithms, the effectiveness of the proposed KJSR-SSDK has been confirmed.
机译:稀疏表示在各种图像处理中表现出良好的性能,并已被许多研究人员应用于高光谱图像(HSI)分类。最近,已经提出了几种新的结合稀疏表示的空间光谱策略来提高分类性能。但是,这些新策略依赖于光谱反射率信息及其邻近区域,而不考虑其他光谱特性和高阶上下文信息。因此,在本文中,我们提出了一种用于HSI分类的空间光谱导数辅助内核联合稀疏表示(KJSR-SSDK)。所提出的算法包括三个新颖之处:1)它考虑了光谱的导数特征以及原始光谱特征; 2)它结合了更高阶的空间背景和独特的光谱信息; 3)将混合范数正则化强加给KJSR的空间谱导数辅助字典的系数。基于与相关最新算法的丰富实验比较,已证实了所提出的KJSR-SSDK的有效性。

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