Hyperspectral Super-Resolution: A Coupled Tensor Factorization Approach
Charilaos I. Kanatsoulis, Xiao Fu, Nicholas D. Sidiropoulos, and, Wing-Kin Ma

TL;DR
This paper introduces a coupled tensor factorization method for hyperspectral super-resolution that preserves data structure, guarantees identifiability, and requires minimal knowledge of degradation operators, outperforming matrix-based approaches.
Contribution
It proposes a novel tensor-based fusion framework that ensures identifiability and robustness in hyperspectral super-resolution, addressing key limitations of prior matrix-based methods.
Findings
Guarantees SRI identifiability under mild conditions
Effective with limited knowledge of degradation operators
Outperforms existing matrix-based methods in experiments
Abstract
Hyperspectral super-resolution refers to the problem of fusing a hyperspectral image (HSI) and a multispectral image (MSI) to produce a super-resolution image (SRI) that has fine spatial and spectral resolution. State-of-the-art methods approach the problem via low-rank matrix approximations to the matricized HSI and MSI. These methods are effective to some extent, but a number of challenges remain. First, HSIs and MSIs are naturally third-order tensors (data "cubes") and thus matricization is prone to loss of structural information--which could degrade performance. Second, it is unclear whether or not these low-rank matrix-based fusion strategies can guarantee identifiability or exact recovery of the SRI. However, identifiability plays a pivotal role in estimation problems and usually has a significant impact on performance in practice. Third, the majority of the existing methods…
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