MSSNet: Multi-Scale-Stage Network for Single Image Deblurring

19 Feb 2022  ·  Kiyeon Kim, Seungyong Lee, Sunghyun Cho ·

Most of traditional single image deblurring methods before deep learning adopt a coarse-to-fine scheme that estimates a sharp image at a coarse scale and progressively refines it at finer scales. While this scheme has also been adopted to several deep learning-based approaches, recently a number of single-scale approaches have been introduced showing superior performance to previous coarse-to-fine approaches both in quality and computation time. In this paper, we revisit the coarse-to-fine scheme, and analyze defects of previous coarse-to-fine approaches that degrade their performance. Based on the analysis, we propose Multi-Scale-Stage Network (MSSNet), a novel deep learning-based approach to single image deblurring that adopts our remedies to the defects. Specifically, MSSNet adopts three novel technical components: stage configuration reflecting blur scales, an inter-scale information propagation scheme, and a pixel-shuffle-based multi-scale scheme. Our experiments show that MSSNet achieves the state-of-the-art performance in terms of quality, network size, and computation time.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Deblurring GoPro MSSNet-large PSNR 33.39 # 11
SSIM 0.964 # 10
Deblurring GoPro MSSNet-small PSNR 32.02 # 29
SSIM 0.953 # 26
Deblurring GoPro MSSNet PSNR 33.01 # 19
SSIM 0.961 # 19
Deblurring RealBlur-J MSSNet SSIM (sRGB) 0.928 # 5
PSNR (sRGB) 32.1 # 5
Params(M) 15.6 # 3
Deblurring RealBlur-J (trained on GoPro) MSSNet PSNR (sRGB) 28.79 # 7
SSIM (sRGB) 0.879 # 5
Deblurring RealBlur-R MSSNet PSNR (sRGB) 39.76 # 4
SSIM (sRGB) 0.972 # 3
Params 15.59 # 2
Deblurring RealBlur-R (trained on GoPro) MSSNet PSNR (sRGB) 35.93 # 8
SSIM (sRGB) 0.953 # 7

Methods


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