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Perceptual image quality using dual generative adversarial network

机译:感知图像质量使用双生成对抗网络

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摘要

Generative adversarial networks have received a remarkable success in many computer vision applications for their ability to learn from complex data distribution. In particular, they are capable to generate realistic images from latent space with a simple and intuitive structure. The main focus of existing models has been improving the performance; however, there is a little attention to make a robust model. In this paper, we investigate solutions to the super-resolution problems-in particular perceptual quality-by proposing a robust GAN. The proposed model unlike the standard GAN employs two generators and two discriminators in which, a discriminator determines that the samples are from real data or generated one, while another discriminator acts as classifier to return the wrong samples to its corresponding generators. Generators learn a mixture of many distributions from prior to the complex distribution. This new methodology is trained with the feature matching loss and allows us to return the wrong samples to the corresponding generators, in order to regenerate the real-look samples. Experimental results in various datasets show the superiority of the proposed model compared to the state of the art methods.
机译:生成的对策网络在许多计算机视觉应用程序中获得了显着的成功,以便他们从复杂数据分发中学习的能力。特别是,它们能够通过简单而直观的结构从潜在空间产生现实图像。现有模型的主要焦点一直在提高性能;但是,有一点关注制作强大的模型。在本文中,我们通过提出强大的GaN调查对超分辨率问题的解决方案 - 特别是感知质量。拟议的模型与标准GaN不同,使用两个生成器和两个鉴别器,其中鉴别器确定样本来自真实数据或生成一个,而另一个鉴别器充当分类器以将错误的样本返回到其相应的发电机。发电机在复杂分布之前学习许多分布的混合。这种新方法培训了具有功能匹配损耗,并允许我们将错误的样本返回给相应的发电机,以便重新生成实际样本。与现有技术相比,各种数据集中的实验结果显示了所提出的模型的优越性。

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