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Detecting Chinese calligraphy style consistency by deep learning and one-class SVM

机译:通过深度学习和一类SVM检测中国书法风格的一致性

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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.
机译:当初学者练习中国书法时,他们经常抄袭古代书法作品,并尝试尽可能地模仿这种风格。但是,不可避免地会有一些字符的样式未正确遵循。因此,我们有动力在一种实践中检测所有书写字符的样式一致性。通过使用深度神经网络模型的堆叠式自动编码器提取样式,我们使用经过训练的一类支持向量机来区分样式正确的字符和外来样式的字符。因此,我们可以挑选出那些离群值。所提出的算法取得了令人满意的结果。该算法还可以应用于其他图像样式检测问题。

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