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A Comparison of Cartoon Portrait Generators Based on Generative Adversarial Networks

机译:基于生成对抗网络的卡通人像生成器比较

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摘要

Cartoon portraits are deformed figures that capture the appearance and characteristics of people, and are often used to express one's image in applications such as social media, games, application profiles, and avatars. Current research regarding the translation of facial images into cartoon portraits focuses on translation methods that use unsupervised learning and methods for translating each part individually. However, studies that reflect the unique personality of professional illustrators have yet to be published. In this study, we examine a suitable network for reflecting the unique personality of a professional illustrator. Specifically, we will consider four networks: pix2pix, Cycle Generative Adversarial Network (CycleGAN), Paired CycleGAN, and Cyclepix. The main difference between these is the loss function. Pix2pix takes the error between the training data and the generated data. However, the main difference in CycleGAN is that it takes the error between the input data and the re-converted data obtained by further translating the generated data. Cyclepix takes both errors. Additionally, pix2pix and Paired CycleGAN require that the input of the discriminator be input data and generated data pairs. The difference between CycleGAN and Cyclepix is that only the input of the discriminator is generated data. Using the cycle consistency loss, considering only the input of the discriminator as generated data, and using the LI Loss for supervised learning, the experimental results showed that the evaluation of CycleGAN and Cyclepix was high. This is useful for generating high-precision cartoon portraits.
机译:卡通人像是变形的人物,可以捕捉人们的外貌和特征,并且经常用于在社交媒体,游戏,应用程序个人资料和化身等应用程序中表达自己的形象。当前有关将面部图像转换为卡通肖像的研究集中在使用无监督学习的翻译方法以及分别翻译每个部分的方法。但是,反映专业插画家独特个性的研究尚未发表。在这项研究中,我们研究了一个合适的网络来反映专业插画家的独特个性。具体来说,我们将考虑四个网络:pix2pix,周期生成对抗网络(CycleGAN),成对的CycleGAN和Cyclepix。这些之间的主要区别是损失函数。 Pix2pix接受了训练数据和生成的数据之间的错误。但是,CycleGAN的主要区别在于,它需要输入数据和通过进一步转换生成的数据而获得的重新转换后的数据之间的误差。 Cyclepix会同时遇到两个错误。另外,pix2pix和Paired CycleGAN要求鉴别器的输入是输入数据和生成的数据对。 CycleGAN和Cyclepix之间的区别在于,仅鉴别器的输入是生成数据。使用循环一致性损失,仅将鉴别器的输入作为生成数据,并使用LI损失进行监督学习,实验结果表明,CycleGAN和Cyclepix的评价很高。这对于生成高精度卡通肖像很有用。

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