用GAN实现艺术图片风格转换

Xinlong Wu, Desheng Zheng, Kexin Zhang, Yanling Lai, Zhifeng Liu, Zhihong Zhang
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引用次数: 0

摘要

图像转换是指将图像从一种样式转换为另一种样式,并确保图像的内容保持不变。使用生成对抗网络(GAN)进行图像转换可以取得很好的效果。然而,如果有足够的样本,目标域中的任何图像都可以映射到相同的输入集。在此基础上,提出了循环一致性生成对抗网络(CycleGAN)。本文对CycleGAN模型在图像样式转换中的优缺点进行了验证和讨论。CycleGAN使用两个发生器网络和两个鉴别器网络。目的是学习源域和目标域之间的映射关系和逆映射关系。它可以减少映射,提高生成图像的质量。通过循环的思想,减少了图像样式转换过程中信息的丢失。在评价实验结果时,将判断输入图像内容的保留程度。通过实验结果,CycleGAN可以了解艺术家的整体艺术风格,并成功转换真实的山水画。优点是可以保留原画面的大部分内容,只将画面的纹理线改变到类似艺术家风格的水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of Art Pictures Style Conversion with GAN
Image conversion refers to converting an image from one style to another and ensuring that the content of the image remains unchanged. Using Generative Adversarial Networks (GAN) for image conversion can achieve good results. However, if there are enough samples, any image in the target domain can be mapped to the same set of inputs. On this basis, the Cycle Consistency Generative Adversarial Network (CycleGAN) was developed. This article verifies and discusses the advantages and disadvantages of the CycleGAN model in image style conversion. CycleGAN uses two generator networks and two discriminator networks. The purpose is to learn the mapping relationship and inverse mapping relationship between the source domain and the target domain. It can reduce the mapping and improve the quality of the generated image. Through the idea of loop, the loss of information in image style conversion is reduced. When evaluating the results of the experiment, the degree of retention of the input image content will be judged. Through the experimental results, CycleGAN can understand the artist’s overall artistic style and successfully convert real landscape paintings. The advantage is that most of the content of the original picture can be retained, and only the texture line of the picture is changed to a level similar to the artist’s style.
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