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Chinese font migration combining local and global features learning

机译:中文字体迁移结合本地和全球特征学习

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摘要

At present, deep learning has made great progress in the field of glyph modeling. However, existing methods of font generation have some problems, such as missing stroke, structural deformation, artifact and blur. To solve these problems, this paper proposes Chinese font style migration combining local and global feature learning (FTFNet). The model uses skipping connection and dense connection mechanism to enhance the information transfer between the network layers. At the same time, feature attention layer is introduced to capture the dependency relationship between local and global features. So as to achieve the purpose of strengthening local feature learning and global feature fusion. Experiments show that the method in this paper has better performance in the details of font generation, which simplifies the font generation process and improves the quality of generated fonts.
机译:目前,深入学习在综隙建模领域取得了很大进展。 然而,现有的字体生成方法具有一些问题,例如缺失行程,结构变形,伪影和模糊。 要解决这些问题,本文提出了汉语字体样式迁移结合本地和全局特征学习(FTFNET)。 该模型使用跳过连接和密集连接机制来增强网络层之间的信息传输。 同时,引入特征注意层以捕获本地和全局功能之间的依赖关系。 以达到加强当地特色学习和全球特征融合的目的。 实验表明,本文中的方法在字体生成细节中具有更好的性能,这简化了字体生成过程并提高了生成字体的质量。

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