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基于深度学习的中文字体风格转换研究综述
引用本文:程若然,赵晓丽,周浩军,叶翰辰.基于深度学习的中文字体风格转换研究综述[J].浙江大学学报(自然科学版 ),2022,56(3):510.
作者姓名:程若然  赵晓丽  周浩军  叶翰辰
作者单位:上海工程技术大学 电子电气工程学院,上海 201620
基金项目:国家自然科学基金资助项目(61772328)
摘    要:根据中文字体风格转换研究发展的不同阶段进行方法分类,简要回顾传统方法,梳理分析深度学习方法. 介绍常用的公开数据集和评价标准. 分别从提高生成质量、增强个性化差异、减少训练样本数量和学习书法字体风格共4个方面展望未来研究.

关 键 词:字体风格转换  深度学习  图像翻译  神经网络  字体生成  

Review of Chinese font style transfer research based on deep learning
Ruo-ran CHENG,Xiao-li ZHAO,Hao-jun ZHOU,Han-chen YE.Review of Chinese font style transfer research based on deep learning[J].Journal of Zhejiang University(Engineering Science),2022,56(3):510.
Authors:Ruo-ran CHENG  Xiao-li ZHAO  Hao-jun ZHOU  Han-chen YE
Abstract:The research works of Chinese font style transfer were classified according to different stages of research development. The traditional methods were briefly reviewed and the deep learning-based methods were combed and analyzed. The commonly used open data sets and evaluation criteria were introduced. The future research trends were expected from four aspects, which were to improve the generation quality, enhance personalized differences, reduce the number of training samples, and learn calligraphy font style.
Keywords:font style transfer  deep learning  image translation  neural network  font generation  
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