Cartoon domain has recently gained increasing popularity. Previous studies have attempted quality portrait stylization into the cartoon domain; however, this poses a great challenge since they have not properly addressed the critical constraints, such as requiring a large number of training images or the lack of support for abstract cartoon faces. Recently, a layer swapping method has been used for stylization requiring only a limited number of training images; however, its use cases are still narrow as it inherits the remaining issues. In this paper, we propose a novel method called Cross-domain Style mixing, which combines two latent codes from two different domains. Our method effectively stylizes faces into multiple cartoon characters at various face abstraction levels using only a single generator without even using a large number of training images.
翻译:卡通域最近越来越受欢迎。 以前的研究尝试了将质量肖像齐化进入卡通域;然而,这带来了巨大的挑战,因为它们没有适当解决关键制约因素,例如要求大量培训图像或缺乏对抽象卡通面孔的支持。 最近,层互换法被用于Styl化,只需要数量有限的培训图像;然而,其使用案例仍然狭窄,因为它继承了剩余问题。 在本文中,我们提议了一种新颖的方法,叫做跨面体样式混合,将来自两个不同域的两种潜在代码结合在一起。我们的方法有效地将面部面部面部的面部在不同的面部抽象级别上变成多个卡通字符,只使用一个生成器,而不用大量的培训图像。