一般空间模糊下高光谱图像超分辨率的广义张量公式

IF 18.6
Yinjian Wang;Wei Li;Yuanyuan Gui;Qian Du;James E. Fowler
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引用次数: 0

摘要

高光谱超分辨率通常是通过将低空间分辨率的高光谱成像与高空间分辨率的多光谱图像融合来实现的,最近提出了许多基于张量的方法来完成这一任务。然而,在这种基于张量的方法中,假设从期望的超分辨图像中创建观测到的高光谱图像的空间模糊操作可分离为独立的水平和垂直模糊。最近的研究表明,这种可分离的空间退化不适用于模拟真实传感器的操作,例如,各向异性模糊。为了适应这一事实,提出了一个基于Kronecker分解的广义张量公式来处理任何一般的空间退化矩阵,包括那些如先前假设的不可分离的矩阵。通过对广义公式的分析,揭示了保证所需超分辨图像精确恢复的条件,并提出了一种由块群稀疏正则化驱动的实用的超分辨图像恢复算法。大量的实验结果表明,所提出的广义张量方法不仅优于传统的基于矩阵的方法,而且优于最新的基于张量的方法;相对于后者的增益在各向异性空间模糊的情况下尤为显著。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Generalized Tensor Formulation for Hyperspectral Image Super-Resolution Under General Spatial Blurring
Hyperspectral super-resolution is commonly accomplished by the fusing of a hyperspectral imaging of low spatial resolution with a multispectral image of high spatial resolution, and many tensor-based approaches to this task have been recently proposed. Yet, it is assumed in such tensor-based methods that the spatial-blurring operation that creates the observed hyperspectral image from the desired super-resolved image is separable into independent horizontal and vertical blurring. Recent work has argued that such separable spatial degradation is ill-equipped to model the operation of real sensors which may exhibit, for example, anisotropic blurring. To accommodate this fact, a generalized tensor formulation based on a Kronecker decomposition is proposed to handle any general spatial-degradation matrix, including those that are not separable as previously assumed. Analysis of the generalized formulation reveals conditions under which exact recovery of the desired super-resolved image is guaranteed, and a practical algorithm for such recovery, driven by a blockwise-group-sparsity regularization, is proposed. Extensive experimental results demonstrate that the proposed generalized tensor approach outperforms not only traditional matrix-based techniques but also state-of-the-art tensor-based methods; the gains with respect to the latter are especially significant in cases of anisotropic spatial blurring.
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