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Generating Chinese Typographic and Handwriting Fonts from a Small Font Sample Set

机译:从一个小字体样本集生成中文排版和手写字体

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摘要

Traditional Chinese is significantly different from other major languages, as compared to western countries use Latin alphabet letters system, Chinese contains over 13,000 common and sub-commonly used characters. Each of these Chinese characters is composed of multiple parts, which are arranged and combined according to various orthographies. Therefore, how to handle these enormous character counts and how to design of more efficient fonts are longstanding issues in the creation of Chinese fonts. In this study, we seek to address these issues using deep learning based on the concept of style transfer. Previous font generating methods generally require multiple pre-processing steps for feature extraction, and these cannot be simultaneously adapted to typographic and handwritten characters. In this study, we propose a neural network architecture for Chinese fonts conversion, which directly uses images as inputs. In this architecture, neural networks are trained using a small number of selected characters, which are then used to extract and convert the features of an input font. The outputs of the architecture are characters with identical content albeit different font styles. We apply our method to ten different font style including typographic and handwriting and demonstrate it capable of converting Chinese-character fonts into fonts that are similar to the original fonts.
机译:繁体中文与其他主要语言有很大差异,与西方国家相比,使用拉丁字母字母系统,中文包含超过13,000多个常见和次级使用的字符。这些汉字中的每一个由多个部分组成,这些部分根据各种拼写器排列和组合。因此,如何处理这些巨大的角色计数以及如何设计更高效的字体是在创建中文字体中的长期问题。在这项研究中,我们寻求使用基于风格转移概念的深度学习来解决这些问题。以前的字体生成方法通常需要用于特征提取的多个预处理步骤,并且这些步骤不能同时适应印刷和手写字符。在本研究中,我们提出了一种用于中国字体转换的神经网络架构,它直接使用图像作为输入。在这种架构中,使用少量选定的字符训练神经网络,然后用于提取并转换输入字体的特征。架构的输出是具有相同内容的字符,尽管不同的字体样式。我们将我们的方法应用于十种不同的字体样式,包括印刷和手写,并演示它能够将汉字字体转换为类似于原始字体的字体。

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