Hyperspectral Super-Resolution via Coupled Tensor Ring Factorization
- URL: http://arxiv.org/abs/2001.01547v1
- Date: Mon, 6 Jan 2020 13:19:59 GMT
- Title: Hyperspectral Super-Resolution via Coupled Tensor Ring Factorization
- Authors: Wei He, Yong Chen, Naoto Yokoya, Chao Li, Qibin Zhao
- Abstract summary: Hyperspectral super-resolution (HSR) fuses a low-resolution hyperspectral image (HSI) and a high-resolution multispectral image (MSI) to obtain a high-resolution HSI (HR-HSI)
We propose a new model, named coupled tensor ring factorization (CTRF), for HSR.
The proposed CTRF approach simultaneously learns high spectral resolution core tensor from the HSI and high spatial resolution core tensors from the MSI, and reconstructs the HR-HSI via tensor ring (TR) representation.
- Score: 40.146997900687374
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Hyperspectral super-resolution (HSR) fuses a low-resolution hyperspectral
image (HSI) and a high-resolution multispectral image (MSI) to obtain a
high-resolution HSI (HR-HSI). In this paper, we propose a new model, named
coupled tensor ring factorization (CTRF), for HSR. The proposed CTRF approach
simultaneously learns high spectral resolution core tensor from the HSI and
high spatial resolution core tensors from the MSI, and reconstructs the HR-HSI
via tensor ring (TR) representation (Figure~\ref{fig:framework}). The CTRF
model can separately exploit the low-rank property of each class (Section
\ref{sec:analysis}), which has been never explored in the previous coupled
tensor model. Meanwhile, it inherits the simple representation of coupled
matrix/CP factorization and flexible low-rank exploration of coupled Tucker
factorization.
Guided by Theorem~\ref{th:1}, we further propose a spectral nuclear norm
regularization to explore the global spectral low-rank property.
The experiments have demonstrated the advantage of the proposed nuclear norm
regularized CTRF (NCTRF) as compared to previous matrix/tensor and deep
learning methods.
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