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Papers/HDNet: High-resolution Dual-domain Learning for Spectral C...

HDNet: High-resolution Dual-domain Learning for Spectral Compressive Imaging

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

2022-03-04CVPR 2022 1Spectral ReconstructionVocal Bursts Intensity PredictionImage ReconstructionCompressive SensingImage Restoration
PaperPDFCodeCode(official)

Abstract

The rapid development of deep learning provides a better solution for the end-to-end reconstruction of hyperspectral image (HSI). However, existing learning-based methods have two major defects. Firstly, networks with self-attention usually sacrifice internal resolution to balance model performance against complexity, losing fine-grained high-resolution (HR) features. Secondly, even if the optimization focusing on spatial-spectral domain learning (SDL) converges to the ideal solution, there is still a significant visual difference between the reconstructed HSI and the truth. Therefore, we propose a high-resolution dual-domain learning network (HDNet) for HSI reconstruction. On the one hand, the proposed HR spatial-spectral attention module with its efficient feature fusion provides continuous and fine pixel-level features. On the other hand, frequency domain learning (FDL) is introduced for HSI reconstruction to narrow the frequency domain discrepancy. Dynamic FDL supervision forces the model to reconstruct fine-grained frequencies and compensate for excessive smoothing and distortion caused by pixel-level losses. The HR pixel-level attention and frequency-level refinement in our HDNet mutually promote HSI perceptual quality. Extensive quantitative and qualitative evaluation experiments show that our method achieves SOTA performance on simulated and real HSI datasets. Code and models will be released at https://github.com/caiyuanhao1998/MST

Results

TaskDatasetMetricValueModel
Image RestorationKAISTPSNR34.97HDNet
Image RestorationKAISTSSIM0.943HDNet
Image RestorationCAVEPSNR34.97HDNet
Image RestorationCAVESSIM0.943HDNet
Image RestorationReal HSIUser Study Score11HDNet
Image RestorationARAD-1KMRAE0.2048HDNet
Image RestorationARAD-1KPSNR32.13HDNet
Image RestorationARAD-1KRMSE0.0317HDNet
10-shot image generationKAISTPSNR34.97HDNet
10-shot image generationKAISTSSIM0.943HDNet
10-shot image generationCAVEPSNR34.97HDNet
10-shot image generationCAVESSIM0.943HDNet
10-shot image generationReal HSIUser Study Score11HDNet
10-shot image generationARAD-1KMRAE0.2048HDNet
10-shot image generationARAD-1KPSNR32.13HDNet
10-shot image generationARAD-1KRMSE0.0317HDNet

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