基于非局部稀疏张量分解的高光谱图像超分辨率

Renwei Dian, Leyuan Fang, Shutao Li
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引用次数: 199

摘要

高光谱图像(HSI)是一种融合低分辨率(LR)高光谱图像和高分辨率(HR)多光谱图像(MSI)的超分辨率图像,近年来备受关注。目前大多数恒指的超分辨率方法都是基于矩阵分解,在处理之前将三维恒指作为矩阵展开。一般来说,矩阵展开运算后得到的矩阵数据表示难以充分挖掘恒指固有的空间光谱结构。提出了一种基于非局部稀疏张量分解(NLSTF)的HSI超分辨方法。稀疏张量分解可以直接将HSI的每个立方体分解为三个模式的稀疏核张量和字典,从而将HSI超分辨率问题重新表述为每个立方体的稀疏核张量和字典的估计。为了进一步利用HSI的非局部空间自相似性,将相似的多维数据集分组在一起,并假设它们共享相同的字典。从每个组的LR-HSI和HR-MSI中学习字典,并通过对每个立方体的学习字典进行备用编码来估计相应的稀疏核张量。实验结果表明,所提出的NLSTF方法优于几种最先进的HSI超分辨率方法。
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Hyperspectral Image Super-Resolution via Non-local Sparse Tensor Factorization
Hyperspectral image (HSI) super-resolution, which fuses a low-resolution (LR) HSI with a high-resolution (HR) multispectral image (MSI), has recently attracted much attention. Most of the current HSI super-resolution approaches are based on matrix factorization, which unfolds the three-dimensional HSI as a matrix before processing. In general, the matrix data representation obtained after the matrix unfolding operation makes it hard to fully exploit the inherent HSI spatial-spectral structures. In this paper, a novel HSI super-resolution method based on non-local sparse tensor factorization (called as the NLSTF) is proposed. The sparse tensor factorization can directly decompose each cube of the HSI as a sparse core tensor and dictionaries of three modes, which reformulates the HSI super-resolution problem as the estimation of sparse core tensor and dictionaries for each cube. To further exploit the non-local spatial self-similarities of the HSI, similar cubes are grouped together, and they are assumed to share the same dictionaries. The dictionaries are learned from the LR-HSI and HR-MSI for each group, and corresponding sparse core tensors are estimated by spare coding on the learned dictionaries for each cube. Experimental results demonstrate the superiority of the proposed NLSTF approach over several state-of-the-art HSI super-resolution approaches.
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