Improving the effect of low-resolution face images output in AnimeGAN

Shengyi Tu
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Abstract

In this paper, a novel approach for improving the output cartoon-style effect of low-resolution face images in AnimeGAN is proposed, which is an useful and effective method to generate high-quality cartoon-style face images. This new approach I proposed combines generative adversarial networks (GAN), AnimeGAN and SRGAN. The previous existing methods do not give satisfactory results on processing low-resolution images. The cartoon-style images generated from the LR images have many significant visual issues. For example, the output cartoon-style faces have some unreasonable and weird shadows and wrinkles, which is unreal and far from the effect of original images. In this paper, I introduce a new method of using SRGAN to increase the resolution of the original LR images in order to improve the output effect in AnimeGAN. At last, the experimental results show that my combined method has good output from LR images and improves the cartoon-style faces effect as well as the performance of AnimeGAN.
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改进了AnimeGAN中低分辨率人脸图像的输出效果
本文提出了一种改进AnimeGAN低分辨率人脸图像输出卡通风格效果的新方法,为生成高质量的卡通风格人脸图像提供了一种有效的方法。我提出的这种新方法结合了生成对抗网络(GAN)、AnimeGAN和SRGAN。现有方法对低分辨率图像的处理效果不理想。由LR图像生成的卡通风格图像存在许多显著的视觉问题。例如,输出的卡通风格的人脸有一些不合理和怪异的阴影和皱纹,不真实,与原始图像的效果相差甚远。本文介绍了一种利用SRGAN提高原始LR图像分辨率的新方法,以提高AnimeGAN的输出效果。最后,实验结果表明,我的组合方法对LR图像有很好的输出效果,提高了卡通风格的人脸效果和AnimeGAN的性能。
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