Abstract

Chinese painting is one of the most important cultural heritages. However, creating a Chinese painting usually requires specific skills, patience, and years of professional training. Moreover, most existing style transfer methods mainly focus on photograph or western painting, and there are intrinsic differences between Chinese and western paintings. To this end, we propose a novel algorithm of Chinese painting style transfer (CPST) towards transferring with unique ink and wash characteristics, which automatically generates Chinese paintings with machine learning technology. In this paper, firstly, comparing Chinese paintings with western works, we set up four key restrictions in the style transfer, i.e., with special considerations of typical ink and wash features, including brush stroke, space reservation, ink tone with diffusion and yellowing. In order to incorporate these restrictions into the transferring convolutional neural networks (CNN), we separate different layers of the CNN into layers of style and content, so as to faithfully reserve the style of the reference image. Secondly, as Chinese paintings can be divided into fine brushwork and freehand brushwork, to cope with diverse painting skills, we devise different strategies to transfer not only the ink tone but also the painting skills to the target images. Experiments show that taking the aesthetic characteristics of Chinese painting style as reference, our results are more visually satisfactory and successfully overcome spillovers.

Highlights

  • Over recent years, rapid growth of computer power and technology for database search, digital storage and people’s daily access to the Internet have unleashed a wave of innovations, reshaping the way people access cultural heritages and arts

  • We propose a new algorithm of Chinese painting style transfer (CPST) to serve ink and wash paintings

  • From what has been discussed above, we present a novel CPST algorithm to serve Chinese painting style transfer, in which different strategies and four key restrictions are incorporated into the transferring convolutional neural networks (CNN) with special considerations on the characteristics of Chinese paintings, including different painting skills, brush stroke, ink tone with diffusion, space reservation, and yellowing

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Summary

Introduction

Rapid growth of computer power and technology for database search, digital storage and people’s daily access to the Internet have unleashed a wave of innovations, reshaping the way people access cultural heritages and arts. Since traditional Chinese paintings have been regarded as a significant part of the Chinese cultural heritage, their digitalization and processing are becoming a hot topic. Existing research on Chinese paintings mainly focuses on image retrieval and image classification [1]–[3]. Creating a Chinese painting usually needs specific skills, patience, and years of professional training. How to automatically generate Chinese paintings by using computer technology has become. A problem that needs to be solved. If we can automatically convert natural images into Chinese paintings, Chinese paintings will be easy to be achieved

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