基于深度学习和一类支持向量机的中国书法风格一致性检测

Zhang Jiulong, Guo Luming, Yang Su, Sun Xudong, L. Xiaoshan
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引用次数: 10

摘要

初学者在练习中国书法时,往往照抄古代书法作品,尽量模仿其风格。然而,不可避免地有一些人物的风格没有被正确地遵循。因此,我们有动力在一次练习中检测所有书面字符的风格一致性。利用深度神经网络模型的堆叠自编码器提取的样式,使用训练好的一类支持向量机正确区分样式和异体样式。这样我们就可以挑出那些异常值。该算法取得了令人满意的效果。该算法也可应用于其他图像样式检测问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Chinese calligraphy style consistency by deep learning and one-class SVM
When beginners practice Chinese calligraphy, they often copy from ancient calligraphic works and try to imitate the style as closely as possible. However there are inevitably some characters whose styles are not correctly followed. Thus we are motivated to detect the style consistency of all written characters in one practice. With the styles extracted by using stacked autoencoders of deep neural network model, we discriminate correctly styled and alien styled characters using a trained one-class support vector machine. Thus we can pick out those outliers. The proposed algorithm reaches satisfactory results. The algorithm can also be applied to other image style detection problems.
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