28 August 2020 Low-rank tensor singular value decomposition model for hyperspectral image super-resolution
Changzhong Zou, Xusheng Huang
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Abstract

We propose a method for hyperspectral image (HSI) super-resolution by designing a tensor singular value decomposition (t-SVD) and three-dimensional total variation (3D-TV) regularization terms. The super-resolution method is designed as an optimization problem whose cost function consists of a data-fidelity term, the low-rank representation term by t-SVD, and the 3D-TV regularization term. The sparse representation term is used to enhance the low-rank quality to unify the spectrum and space of HSI. Furthermore, the 3D-TV regularization term exploits the spectral and spatial similarity between adjacent pixels of HSI. Then we develop an effective algorithm for solving the resulting optimization by the alternative direction method of multipliers. The results on the simulated and the real data demonstrate that the proposed method is competitive with other state-of-the-art methods.

© 2020 SPIE and IS&T 1017-9909/2020/$28.00© 2020 SPIE and IS&T
Changzhong Zou and Xusheng Huang "Low-rank tensor singular value decomposition model for hyperspectral image super-resolution," Journal of Electronic Imaging 29(4), 043027 (28 August 2020). https://doi.org/10.1117/1.JEI.29.4.043027
Received: 28 November 2019; Accepted: 11 August 2020; Published: 28 August 2020
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KEYWORDS
Super resolution

3D modeling

Hyperspectral imaging

Distortion

Matrices

Optimization (mathematics)

Multispectral imaging

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