风格驱动的手写字符生成

Özdenur Uçar, Yakup Genç
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引用次数: 0

摘要

手写体字符生成是一个热门的话题,有各种各样的应用。文献中提出了许多汉字生成方法,但这些方法中很少关注在生成手写汉字时保留作者的风格。表现笔迹风格包括表现每个字符的风格和作者的整体风格的挑战。在这项研究中,与文献中的研究不同,它试图通过提取有限数据的人的笔迹风格来产生我们尚未见过的人的字符。在生成手写字符时,使用字符的样条曲线作为输入,以及手写图像。该方法采用深度学习方法之一的条件变量自编码器(CVAE)模型,构建了多任务学习网络。在实验中,对比了三种不同的模型,用样条曲线训练的条件变量自编码器(CVAE)网络的性能优于其他模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Style-driven Handwritten Character Generation
Handwritten character generation is a popular topic with a variety of applications. Many methods of character generation have been proposed in the literature, but few of these methods focus on preserving the writer’s style while producing handwritten characters. Representing handwriting styles involves the challenge of representing both the style of each character and the overall style of the writer. In this study, unlike the studies in the literature, it is tried to produce the characters of the person that we have not seen yet by extracting the handwriting style of the person with limited data. While producing handwritten characters, spline curves of the characters were used as input, as well as handwritten images. In the developed method, a multitasking learning network is proposed by using the Conditional Variable Autoencoder (CVAE) model, which is one of the deep learning methods. In the experiments carried out, three different models were compared and the performance of the Conditionally Variable Autoencoder (CVAE) network trained with spline curves gave better results compared to other models.
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