Image blind restoration based on degradation representation network |
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Affiliation: | 1. Institute of Micro-Nano Optoelectronics, Shenzhen University, Shenzhen 518060, China;2. College of Mechanical and Electrical Engineering, Guangdong University of Science and Technology, Dongguan, Guangdong 523083, China;3. School of Communication and Information Engineering, Xi''an University of Posts and Telecommunications, Xi''an, Shanxi 710121, China |
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Abstract: | Most deep learning (DL)-based image restoration methods have exploited excellent performance by learning a non-linear mapping function from low quality images to high quality images. However, two major problems restrict the development of the image restoration methods. First, most existing methods based on fixed degradation suffer from significant performance drop when facing the unknown degradation, because of the huge gap between the fixed degradation and the unknown degradation. Second, the unknown-degradation estimation may lead to restoration task failure due to uncertain estimation errors. To handle the unknown degradation in the real application, we introduce a degradation representation network for single image blind restoration (DRN). Different from the methods of estimating pixel space, we use an encoder network to learn abstract representations for estimating different degradation kernels in the representation space. Furthermore, a degradation perception module with flexible adaptability to different degradation kernels is used to restore more structural details. In our experiments, we compare our DRN with several state-of-the-art methods for two image restoration tasks, including image super-resolution (SR) and image denoising. Quantitative results show that our degradation representation network is accurate and efficient for single image restoration. |
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Keywords: | Deep learning Contrastive learning Image restoration Convolution neural network |
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