Tensor-patch-based discriminative marginalized least squares regression for membranous nephropathy hyperspectral data classification

Tianhong Chen, Meng Lv, Yue Yang, Tianqi Tu, Wei Li, Wenge Li
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Abstract

Least squares regression (LSR)-based classifiers are effective in multi-classification tasks. For hyperspectral image (HSI) classification, the spatial structure information usually helps to improve the performance, however, most existing LSRbased methods use the spectral-vector as input which ignore the important correlations in the spatial domain. To solve the drawback, a tensor-patch-based discriminative marginalized least squares regression (TPDMLSR) is proposed to modify discriminative marginalized least squares regression (DMLSR) with consideration of inter-class separability by employing the region covariance matrix (RCM). RCM is adopted to exploit a region of interest around each hyperspectral pixel to characterize the intrinsic spatial geometric structure of HSI. Specifically, TPDMLSR not only maintains the ascendancy of DMLSR, but also preserves the spatial-spectral structure and enhances the ability of class discrimination for regression by learning the tensor-patch manifold term with a new region covariance descriptor and measuring the inter-class similarity more accurately. The experimental results on membranous nephropathy (MN) dataset validate that TPDMLSR significantly outperforms LSR-based methods reflected in sensitivity, overall accuracy (OA), average accuracy (AA) and Kappa coefficient (Kappa).
基于张量补丁的判别边缘最小二乘回归用于膜性肾病高光谱数据分类
基于最小二乘回归(LSR)的分类器在多分类任务中是有效的。对于高光谱图像(HSI)分类,空间结构信息通常有助于提高分类性能,但现有的基于lsr的分类方法大多使用光谱向量作为输入,忽略了空间域的重要相关性。针对这一缺陷,提出了一种基于张量补丁的判别性边缘最小二乘回归(TPDMLSR),利用区域协方差矩阵(RCM)对判别性边缘最小二乘回归(DMLSR)进行改进,考虑了类间可分性。RCM利用每个高光谱像元周围的感兴趣区域来表征HSI的内在空间几何结构。具体而言,TPDMLSR不仅保持了DMLSR的优势,而且通过新的区域协方差描述符学习张量-patch流形项,更准确地测量类间相似性,保留了DMLSR的空间-谱结构,增强了回归的类判别能力。膜性肾病(MN)数据集的实验结果验证了TPDMLSR在灵敏度、总体准确率(OA)、平均准确率(AA)和Kappa系数(Kappa)方面显著优于基于lsr的方法。
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