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SwinFIR: Revisiting the SwinIR with Fast Fourier Convolution and Improved Training for Image Super-Resolution

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Transformer-based methods have achieved impressive image restoration performance due to their capacities to model long-range dependency compared to CNN-based methods. However, advances like SwinIR adopts the window-based and local attention strategy to balance the performance and computational overhead, which restricts employing large receptive fields to capture global information and establish long dependencies in the early layers. To further improve the efficiency of capturing global information, in this work, we propose SwinFIR to extend SwinIR by replacing Fast Fourier Convolution (FFC) components, which have the image-wide receptive field. We also revisit other advanced techniques, i.e, data augmentation, pre-training, and feature ensemble to improve the effect of image reconstruction. And our feature ensemble method enables the performance of the model to be considerably enhanced without increasing the training and testing time. We applied our algorithm on multiple popular large-scale benchmarks and achieved state-of-the-art performance comparing to the existing methods. For example, our SwinFIR achieves the PSNR of 32.83 dB on Manga109 dataset, which is 0.8 dB higher than the state-of-the-art SwinIR method.

Dafeng Zhang, Feiyu Huang, Shizhuo Liu, Xiaobing Wang, Zhezhu Jin• 2022

Related benchmarks

TaskDatasetResultRank
Image Super-resolutionManga109
PSNR40.61
821
Super-ResolutionSet5
PSNR38.65
785
Image Super-resolutionSet5
PSNR38.65
692
Image Super-resolutionSet14
PSNR34.93
506
Single Image Super-ResolutionUrban100
PSNR34.57
500
Image DenoisingUrban100
PSNR35.34
308
Image Super-resolutionBSD100
PSNR (dB)32.64
271
Image Super-resolutionBSD100 (test)
PSNR32.64
220
Single Image Super-ResolutionBSD100
PSNR32.64
211
Color Image DenoisingCBSD68
PSNR34.43
140
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