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Few-Shot Compositional Font Generation with Dual Memory

机译:几次拍摄的组成字体生成与双记忆

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Generating a new font library is a very labor-intensive and time-consuming job for glyph-rich scripts. Despite the remarkable success of existing font generation methods, they have significant drawbacks; they require a large number of reference images to generate a new font set, or they fail to capture detailed styles with only a few samples. In this paper, we focus on compositional scripts, a widely used letter system in the world, where each glyph can be decomposed by several components. By utilizing the compositionality of compositional scripts, we propose a novel font generation framework, named Dual Memory-Augmented Font Generation Network (DM-Font), which enables us to generate a high-quality font library with only a few samples. We employ memory components and global-context awareness in the generator to take advantage of the compositionality. In the experiments on Korean-handwriting fonts and Thai-printing fonts, we observe that our method generates a significantly better quality of samples with faithful stylization compared to the state-of-the-art generation methods quantitatively and qualitatively.
机译:产生一个新的字体库是一个非常劳动密集和费时的丰富字形的脚本工作。尽管现有字体生成方法的成功显着,但它们具有显着的缺点;它们需要大量的参考图像来生成新的字体集,或者它们无法捕获只有少数样本的详细样式。在本文中,我们专注于构成脚本,是世界上广泛使用的字母系统,其中每个字形都可以由几个组件分解。通过利用成分脚本的组合性,我们提出了一种新的字体生成框架,命名为双内存增强字体下一代网络(DM-字体),这使我们能够产生,只有少数样本高质量的字体库。我们在发电机中使用内存组件和全球背景知识来利用组成性。在韩国手写字体和泰式印刷字体上的实验中,我们观察到,与定量和定性的最新生成方法相比,我们的方法通过忠实的造型化产生了明显更好的样本质量。

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