Chip-SAGAN:中国水墨画风格传递的自关注生成对抗网络

Jiaoju Zhou, Feng Gao, Xuebo Yang, Weiyang Lin
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引用次数: 0

摘要

在计算机视觉中,艺术风格的转换是一项重要而艰巨的任务。与西方绘画相比,中国水墨画有其独特的特点,使得现有的方法无法产生令人满意的效果,比如空隙、笔触、水墨的色调和扩散。主要问题包括:1)生成器没有集中于关键的全局特征;2)生成的画作失去了原内容图像的色彩;3)生成的画没有明亮的边缘和光滑的阴影。在本文中,我们提出了一种将现实世界的图片转化为中国水墨画的创新方法Chip-SAGAN,该方法使用未配对的照片和中国水墨画进行训练。我们在生成器中引入了一个自关注模块来捕获特性之间的全局依赖关系。此外,我们引入了促进边缘的对抗损失和颜色重建损失,以确保生成的绘画与内容图像的边缘和颜色匹配。实验结果表明,我们的方法可以将真实世界的图片转化为高质量的中国水墨画,并且超越了目前最先进的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chip-SAGAN: A Self-Attention Generative Adversarial Network for Chinese Ink Wash Painting Style Transfer
The transfer of artistic style is a major and demanding task in computer vision. Compared with western paintings, Chinese ink wash paintings have unique characteristics that prevent existing methods from yielding satisfactory results, such as voids, brush strokes, and ink wash tone and diffusion. The main problems include: 1) the generator does not concentrate on key global features; 2) the generated paintings lose the color of the original content image; 3) the generated paintings do not have bright edges and smooth shading. In this paper, we propose Chip-SAGAN, an innovative approach to transforming real-world pictures into Chinese ink wash paintings, which is trained with unpaired photos and Chinese ink wash paintings. We introduce a self-attention module into the generator to capture global dependencies between features. Furthermore, we introduce an edge-promoting adversarial loss and a color reconstruction loss to ensure that the generated painting matches the content image’s edges and colors. The experimental results show that our method can transform real-world pictures into high-quality Chinese ink wash paintings, and surpass state-of-the-art algorithms.
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