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Hyperspectral Super-Resolution with Coupled Tucker Approximation: Recoverability and SVD-based algorithms

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We propose a novel approach for hyperspectral super-resolution, that is based on low-rank tensor approximation for a coupled low-rank multilinear (Tucker) model. We show that the correct recovery holds for a wide range of multilinear ranks. For coupled tensor approximation, we propose two SVD-based algorithms that are simple and fast, but with a performance comparable to the state-of-the-art methods. The approach is applicable to the case of unknown spatial degradation and to the pansharpening problem.

Cl\'emence Pr\'evost, Konstantin Usevich, Pierre Comon, David Brie• 2018

Related benchmarks

TaskDatasetResultRank
Hyperspectral Image Super-ResolutionPavia University
mSAM0.0612
25
Hyperspectral Image Super-ResolutionJasper Ridge
RSNR28.67
10
Hyperspectral Super-ResolutionJasper Ridge
RSNR27.17
10
Hyperspectral Image Super-ResolutionPavia University (test)
RSNR24.29
10
Hyperspectral Image ReconstructionUrban subimage HYDICE
RSNR23.74
10
Hyperspectral Image Super-ResolutionWashington DC
RSNR25.08
10
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