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Font Style Transfer Using Neural Style Transfer and Unsupervised Cross-domain Transfer

机译:使用神经样式转移和无监督跨域转移的字体样式转移

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摘要

In this paper, we study about font generation and conversion. The previous methods dealt with characters as ones made of strokes. On the contrary, we extract features, which are equivalent to the strokes, from font images and texture or pattern images using deep learning, and transform the design pattern of font images. We expect that generation of original font such as hand written characters will be generated automatically by the proposed approach. In the experiments, we have created unique datasets such as a ketchup character image dataset and improve image generation quality and readability of character by combining neural style transfer with unsupervised cross-domain learning.
机译:在本文中,我们研究字体的生成和转换。先前的方法将字符视为由笔画组成的字符。相反,我们使用深度学习从字体图像和纹理或图案图像中提取与笔画等效的特征,并转换字体图像的设计图案。我们期望通过所提出的方法可以自动生成诸如手写字符之类的原始字体。在实验中,我们创建了独特的数据集,例如番茄酱字符图像数据集,并通过将神经样式转移与无监督的跨域学习相结合来提高图像生成质量和字符的可读性。

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