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Neural Abstract Style Transfer for Chinese Traditional Painting

机译:中国传统绘画的神经抽象式转移

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Chinese traditional painting is one of the most historical artworks in the world. It is very popular in Eastern and Southeast Asia due to being aesthetically appealing. Compared with western artistic painting, it is usually more visually abstract and textureless. Recently, neural network based style transfer methods have shown promising and appealing results which are mainly focused on western painting. It remains a challenging problem to preserve abstraction in neural style transfer. In this paper, we present a Neural Abstract Style Transfer method for Chinese traditional painting. It learns tc preserve abstraction and other style jointly end-to-end via a novel MXDoG-guided filter (Modified version of the eXtended Difference-of-Gaussians) and three fully differentiable loss terms. To the best of our knowledge, there is little work study on neural style transfer of Chinese traditional painting. To promote research on this direction, we collect a new dataset with diverse photo-realistic images and Chinese traditional paintings (The dataset will be released at https://github.com/lbsswu/Chinese_style_transfer.). In experiments, the proposed method shows more appealing stylized results in transferring the style of Chinese traditional painting than state-of-the-art neural style transfer methods.
机译:中国传统绘画是世界上最历史的艺术品之一。由于在审美吸引力,它在东部和东南亚非常受欢迎。与西方艺术绘画相比,它通常更具目测抽象和造影。最近,基于神经网络的样式转移方法表明了主要集中在西方绘画的有前途和吸引力的结果。保持神经风格转移的抽象仍然是一个有挑战性的问题。在本文中,我们为中国传统绘画提出了一种神经抽象式转移方法。它通过新颖的MXDOG引导滤波器(改进版本的扩展差分差分)和三个完全可差化的损失术语来学习TC Psureve抽象和其他样式。据我们所知,对中国传统绘画的神经风格转移几乎没有工作研究。为了促进对此方向的研究,我们收集了一个不同的照片 - 现实图像和中国传统绘画的新数据集(数据集将在https://github.com/lbsswu/chinese_style_transfer发布。在实验中,该方法表明了更具吸引力的程式化结果,转移了中国传统绘画的风格,而不是最先进的神经风格转移方法。

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