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GAN with Pixel and Perceptual Regularizations for Photo-Realistic Joint Deblurring and Super-Resolution

机译:具有像素和感知正则化的GAN,用于真实感联合去模糊和超分辨率

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In this paper, we propose a Generative Adversarial Network with Pixel and Perceptual regularizations, denoted as P~2GAN, to restore single motion blurry and low-resolution images jointly into clear and high-resolution images. It is an end-to-end neural network consisting of deblurring module and super-resolution module, which repairs degraded pixels in the motion-blur images firstly, and then outputs the deblurred images and deblurred features for further reconstruction. More specifically, the proposed P'GAN integrates pixel-wise loss in pixel-level, contextual loss and adversarial loss in perceptual level simultaneously, in order to guide on deblurring and super-resolution reconstruction of the raw images that are blurry and in low-resolution, which help obtaining realistic images. Extensive experiments conducted on a real-world dataset manifest the effectiveness of the proposed approaches, outperforming the state-of-the-art models.
机译:在本文中,我们提出了一种具有像素和感知正则化的生成对抗网络,称为P〜2GAN,以将单个运动模糊和低分辨率图像共同还原为清晰和高分辨率图像。它是由去模糊模块和超分辨率模块组成的端到端神经网络,它首先修复运动模糊图像中的退化像素,然后输出去模糊图像和去模糊特征以供进一步重建。更具体地说,拟议的P'GAN将像素级的像素级损失,感知级的上下文损失和对抗性损失同时进行整合,以指导模糊和低分辨率原始图像的去模糊和超分辨率重建分辨率,有助于获得逼真的图像。在现实世界的数据集上进行的大量实验证明了所提出方法的有效性,其性能优于最新模型。

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