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Spatial information-enhanced hyperspectral imagery classification based on joint spatial-aware collaborative representation

机译:基于联合空间感知协作表示的空间信息增强的高光谱图像

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摘要

To address the insufficiency of texture information-based classification features to classify samples, we proposed two methods for spatial information-enhanced hyperspectral imagery classification based on joint spatial-aware collaborative representation (JSaCR). First, we introduce a texture regularized-based joint spatial-aware collaborative representation (TRJSaCR) method, in which prior texture is regarded as a regularization term to constrain the coefficient of the objection function of JSaCR and the closed-form solution is obtained to reconstruct the test sample. Second is a spatial information-assisted discrimination rules (SIDR) method coupled with TRJSaCR (TRJSaCR-SIDR) for classification. More precisely, the label information of the test samples and their corresponding neighborhoods are specified by TRJSaCR-SIDR, and the final labels are determined by considering their neighborhood label distribution. Our work aims to broaden the knowledge of the utilization of spatial information in hyperspectral classification. Experimental results on two benchmark hyperspectral datasets, Indian Pines and Pavia University, indicate that the proposed algorithms are superior to other state-of-the-art classifiers. (C) 2020 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:为了解决基于纹理信息的分类功能来对样本进行分类,我们提出了基于联合空间感知协作表示(JSACR)的空间信息增强的超光图像分类方法。首先,我们引入基于纹理正则化的联合空间感知协作表示(TRJSACR)方法,其中先前的纹理被认为是规范化术语,以限制JSACR的异议函数的系数,并获得闭合液解决方案来重建测试样品。其次是一种空间信息辅助歧视规则(SIDR)方法,耦合与TRJSACR(TRJSACR-SIDR)进行分类。更确切地说,测试样本的标签信息及其相应的邻域由TRJSACR-SIDR指定,并且通过考虑其邻域标签分布来确定最终标签。我们的工作旨在扩大高光谱分类中空间信息利用的知识。两个基准高光谱数据集,印度松树和帕维亚大学的实验结果表明,所提出的算法优于其他最先进的分类器。 (c)2020光学仪表工程师协会(SPIE)

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