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Style Transfer for Anime Sketches with Enhanced Residual U-net and Auxiliary Classifier GAN

机译:带有增强型残留U-net和辅助分类器的Animation Sketch的样式转移

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Recently, with the revolutionary neural style transferring methods, creditable paintings can be synthesized automatically from content images and style images. However, when it comes to the task of applying a painting's style to an anime sketch, these methods will just randomly colorize sketch lines as outputs and fail in the main task: specific style transfer. In this paper, we integrated residual U-net to apply the style to the gray-scale sketch with auxiliary classifier generative adversarial network (AC-GAN). The whole process is automatic and fast. Generated results are creditable in the quality of art style as well as colorization.
机译:近年来,借助革命性的神经样式转换方法,可以根据内容图像和样式图像自动合成可信任的绘画。但是,当涉及将绘画的样式应用于动漫草图的任务时,这些方法只会将草图线随机着色为输出,而无法完成主要任务:特定的样式转换。在本文中,我们将残差U-net与辅助分类器生成对抗网络(AC-GAN)应用于灰度草图。整个过程是自动且快速的。产生的结果在艺术风格和色彩质量方面值得信赖。

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