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Hyperspectral Image Classification Using Kernel Sparse Representation and Semilocal Spatial Graph Regularization

机译:使用核稀疏表示和半局部空间图正则化的高光谱图像分类

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This letter presents a postprocessing algorithm for a kernel sparse representation (KSR)-based hyperspectral image classifier, which is based on the integration of spatial and spectral information. A pixelwise KSR is first used to find the sparse coefficient vectors of the hyperspectral image. Then, a sparsity concentration index (SCI) rule-guided semilocal spatial graph regularization (SSG), called SSG+SCI, is proposed to determine refined sparse coefficient vectors that promote spatial continuity within each class. Finally, these refined coefficient vectors are used to obtain the final classification map. Compared with previous approaches based on similar spatial–spectral postprocessing strategies, SSG+SCI clearly outperforms their results in terms of accuracy and the number of training samples, as it is demonstrated with two real hyperspectral images.
机译:这封信提出了一种基于内核稀疏表示(KSR)的高光谱图像分类器的后处理算法,该算法基于空间和光谱信息的集成。首先使用像素级KSR来查找高光谱图像的稀疏系数矢量。然后,提出了一种稀疏集中度索引(SCI)规则指导的半局部空间图正则化(SSG),称为SSG + SCI,以确定可提高每个类内空间连续性的精简稀疏系数矢量。最后,将这些精炼系数向量用于获得最终分类图。与基于类似空间光谱后处理策略的先前方法相比,SSG + SCI在准确性和训练样本数量方面明显胜过其结果,如两个真实的高光谱图像所示。

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