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Papers/Degradation-Aware Unfolding Half-Shuffle Transformer for S...

Degradation-Aware Unfolding Half-Shuffle Transformer for Spectral Compressive Imaging

Yuanhao Cai, Jing Lin, Haoqian Wang, Xin Yuan, Henghui Ding, Yulun Zhang, Radu Timofte, Luc van Gool

2022-05-20Spectral ReconstructionImage ReconstructionCompressive SensingImage Restoration
PaperPDFCode(official)

Abstract

In coded aperture snapshot spectral compressive imaging (CASSI) systems, hyperspectral image (HSI) reconstruction methods are employed to recover the spatial-spectral signal from a compressed measurement. Among these algorithms, deep unfolding methods demonstrate promising performance but suffer from two issues. Firstly, they do not estimate the degradation patterns and ill-posedness degree from the highly related CASSI to guide the iterative learning. Secondly, they are mainly CNN-based, showing limitations in capturing long-range dependencies. In this paper, we propose a principled Degradation-Aware Unfolding Framework (DAUF) that estimates parameters from the compressed image and physical mask, and then uses these parameters to control each iteration. Moreover, we customize a novel Half-Shuffle Transformer (HST) that simultaneously captures local contents and non-local dependencies. By plugging HST into DAUF, we establish the first Transformer-based deep unfolding method, Degradation-Aware Unfolding Half-Shuffle Transformer (DAUHST), for HSI reconstruction. Experiments show that DAUHST significantly surpasses state-of-the-art methods while requiring cheaper computational and memory costs. Code and models will be released at https://github.com/caiyuanhao1998/MST

Results

TaskDatasetMetricValueModel
Image RestorationKAISTPSNR38.36DAUHST-9stg
Image RestorationKAISTSSIM0.967DAUHST-9stg
Image RestorationCAVEPSNR38.36DAUHST-9stg
Image RestorationCAVESSIM0.967DAUHST-9stg
Image RestorationReal HSIUser Study Score15DAUHST-9stg
10-shot image generationKAISTPSNR38.36DAUHST-9stg
10-shot image generationKAISTSSIM0.967DAUHST-9stg
10-shot image generationCAVEPSNR38.36DAUHST-9stg
10-shot image generationCAVESSIM0.967DAUHST-9stg
10-shot image generationReal HSIUser Study Score15DAUHST-9stg

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