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Xin Tao; Hongyun Gao; Yi Wang; Xiaoyong Shen; Jue Wang; Jiaya Jia

Abstract
In single image deblurring, the "coarse-to-fine" scheme, i.e. gradually restoring the sharp image on different resolutions in a pyramid, is very successful in both traditional optimization-based methods and recent neural-network-based approaches. In this paper, we investigate this strategy and propose a Scale-recurrent Network (SRN-DeblurNet) for this deblurring task. Compared with the many recent learning-based approaches in [25], it has a simpler network structure, a smaller number of parameters and is easier to train. We evaluate our method on large-scale deblurring datasets with complex motion. Results show that our method can produce better quality results than state-of-the-arts, both quantitatively and qualitatively.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| deblurring-on-gopro | SRN | SSIM: 0.9342 |
| deblurring-on-hide-trained-on-gopro | SRN | PSNR (sRGB): 28.36 Params (M): 8.06 SSIM (sRGB): 0.915 |
| deblurring-on-realblur-j-1 | SRN | PSNR (sRGB): 31.38 Params(M): 8.06 SSIM (sRGB): 0.909 |
| deblurring-on-realblur-j-trained-on-gopro | SRN | PSNR (sRGB): 28.56 |
| deblurring-on-realblur-r | SRN | PSNR (sRGB): 38.65 Params: 8.06 SSIM (sRGB): 0.965 |
| deblurring-on-realblur-r-trained-on-gopro | SRN | SSIM (sRGB): 0.947 |
| deblurring-on-rsblur | SRN-Deblur | Average PSNR: 32.53 |
| image-deblurring-on-gopro | SRN | Params (M): 8.06 SSIM: 0.9342 |
| image-relighting-on-vidit20-validation-set | SRN | LPIPS: 0.4319 MPS: 0.5670 PSNR: 16.94 Runtime(s): 0.87 SSIM: 0.5660 |
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