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Sung-Jin Cho Seo-Won Ji Jun-Pyo Hong Seung-Won Jung Sung-Jea Ko

Abstract
Coarse-to-fine strategies have been extensively used for the architecture design of single image deblurring networks. Conventional methods typically stack sub-networks with multi-scale input images and gradually improve sharpness of images from the bottom sub-network to the top sub-network, yielding inevitably high computational costs. Toward a fast and accurate deblurring network design, we revisit the coarse-to-fine strategy and present a multi-input multi-output U-net (MIMO-UNet). The MIMO-UNet has three distinct features. First, the single encoder of the MIMO-UNet takes multi-scale input images to ease the difficulty of training. Second, the single decoder of the MIMO-UNet outputs multiple deblurred images with different scales to mimic multi-cascaded U-nets using a single U-shaped network. Last, asymmetric feature fusion is introduced to merge multi-scale features in an efficient manner. Extensive experiments on the GoPro and RealBlur datasets demonstrate that the proposed network outperforms the state-of-the-art methods in terms of both accuracy and computational complexity. Source code is available for research purposes at https://github.com/chosj95/MIMO-UNet.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| deblurring-on-gopro | MIMO-UNet++ | PSNR: 32.68 SSIM: 0.959 |
| deblurring-on-realblur-j-1 | MIMO-UNet++ | PSNR (sRGB): 32.05 Params(M): 16.1 SSIM (sRGB): 0.921 |
| deblurring-on-rsblur | MIMO-UNet | Average PSNR: 32.73 |
| deblurring-on-rsblur | MIMO-UNet+ | Average PSNR: 33.37 |
| image-deblurring-on-gopro | MIMO-UNet++ | PSNR: 32.68 Params (M): 16.1 SSIM: 0.959 |
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