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Memory-augmented Deep Unfolding Network for Guided Image Super-resolution

About

Guided image super-resolution (GISR) aims to obtain a high-resolution (HR) target image by enhancing the spatial resolution of a low-resolution (LR) target image under the guidance of a HR image. However, previous model-based methods mainly takes the entire image as a whole, and assume the prior distribution between the HR target image and the HR guidance image, simply ignoring many non-local common characteristics between them. To alleviate this issue, we firstly propose a maximal a posterior (MAP) estimation model for GISR with two types of prior on the HR target image, i.e., local implicit prior and global implicit prior. The local implicit prior aims to model the complex relationship between the HR target image and the HR guidance image from a local perspective, and the global implicit prior considers the non-local auto-regression property between the two images from a global perspective. Secondly, we design a novel alternating optimization algorithm to solve this model for GISR. The algorithm is in a concise framework that facilitates to be replicated into commonly used deep network structures. Thirdly, to reduce the information loss across iterative stages, the persistent memory mechanism is introduced to augment the information representation by exploiting the Long short-term memory unit (LSTM) in the image and feature spaces. In this way, a deep network with certain interpretation and high representation ability is built. Extensive experimental results validate the superiority of our method on a variety of GISR tasks, including Pan-sharpening, depth image super-resolution, and MR image super-resolution.

Man Zhou, Keyu Yan, Jinshan Pan, Wenqi Ren, Qi Xie, Xiangyong Cao• 2022

Related benchmarks

TaskDatasetResultRank
PansharpeningWorldView-3 full-resolution original (test)
D_lambda0.054
81
PansharpeningQuickBird full-resolution
D_lambda (Spectral Divergence)0.089
56
PansharpeningQuickBird reduced-resolution
SAM4.5568
44
PansharpeningWorldView-3 (WV3) reduced-resolution Wald's protocol (test)
SAM3.0844
39
PansharpeningWorldView-3 Full Resolution
Dλ (Spectral Divergence)0.054
28
PansharpeningGaoFen-2 (GF2) reduced-resolution Wald's protocol (test)
SAM0.9929
24
PansharpeningGaoFen-2 (GF2) full-resolution original (test)
D_lambda0.0428
23
PansharpeningWorldView-2 reduced-resolution 256 × 256 subscene
Q8 Index0.8143
19
PansharpeningWorldView-3 Reduced Resolution
SAM3.084
16
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