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Group Sparse Representation Based on Nonlocal Spatial and Local Spectral Similarity for Hyperspectral Imagery Classification

机译:基于非局部空间和局部光谱相似度的群稀疏表示用于高光谱图像分类

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摘要

Spectral-spatial classification has been widely applied for remote sensing applications, especially for hyperspectral imagery. Traditional methods mainly focus on local spatial similarity and neglect nonlocal spatial similarity. Recently, nonlocal self-similarity (NLSS) has gradually gained support since it can be used to support spatial coherence tasks. However, these methods are biased towards the direct use of spatial information as a whole, while discriminative spectral information is not well exploited. In this paper, we propose a novel method to couple both nonlocal spatial and local spectral similarity together in a single framework. In particular, the proposed approach exploits nonlocal spatial similarities by searching non-overlapped patches, whereas spectral similarity is analyzed locally within the locally discovered patches. By fusion of nonlocal and local information, we then apply group sparse representation (GSR) for classification based on a group structured prior. Experimental results on three real hyperspectral data sets demonstrate the efficiency of the proposed approach, and the improvements are significant over the methods that consider either nonlocal or local similarity.
机译:光谱空间分类已广泛应用于遥感应用,尤其是高光谱图像。传统方法主要关注局部空间相似性,而忽略非局部空间相似性。最近,非局部自相似性(NLSS)逐渐获得支持,因为它可用于支持空间相干任务。但是,这些方法偏向于直接使用整个空间信息,而没有很好地利用区分性光谱信息。在本文中,我们提出了一种在单个框架中将非局部空间和局部光谱相似度耦合在一起的新颖方法。特别地,所提出的方法通过搜索非重叠斑块来利用非局部空间相似性,而频谱相似性是在本地发现的斑块内局部分析的。通过融合非本地和本地信息,我们然后基于基于组结构的先验应用组稀疏表示(GSR)进行分类。在三个真实的高光谱数据集上的实验结果证明了该方法的有效性,并且与考虑非局部或局部相似性的方法相比,改进效果显着。

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