Optimization of generative adversarial network based image super-resolution by using image mask
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1.School of Information Science and Technology, ShanghaiTech University, Shanghai 201210, P. R. China;2.Shanghai Institute of Microsystem and Information Technology, Chinese Academy of Sciences, Shanghai 200050, P. R. China;3.University of Chinese Academy of Sciences, Beijing 100049, P. R. China

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Supported by the National Key Research and Development Program (2018YFB2100500) and National Natural Science Foundation of China (61976138, 61977047).

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    Abstract:

    Inferring high resolution image from single low resolution (LR) input is ill-posed and deep learning helps to some extent. The latest algorithms take the advantage of the Generative Adversarial Network (GAN) and present photo-realistic results by learning low/high resolution mappings from super resolution datasets. However, training of GANs can be hard and traditional GAN-based architectures often exhibit noise and texture distortion in their super-resolution (SR) results. In this paper, a mask-aided adversarial training strategy for current GAN-based SR frameworks is proposed. During training, mask module helps the discriminator by introducing additional perceptual quality information with generator’s outputs and the ground truth images. In experiment, three current state-of-the-art GAN-based SR models are selected and the mask module is integrated into their adversarial training. The improved mask-aided models yield better results in both quantitative and qualitative benchmarks than the original ones. Mask module only modifies GAN framework and thus is suitable for many GAN-based solutions for further improving the SR perceptual quality.

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蒋琪雷,马原曦.利用图像掩膜优化基于生成对抗网络的图像超分辨率模型[J].重庆大学学报,2023,46(5):93~101

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  • Received:March 11,2021
  • Online: May 31,2023
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