基于深度学习的图单恢复

Rui Zhang, Jinlong Chen, Minghao Yang
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引用次数: 2

摘要

人类具有从静态手写图像中恢复顺序的能力,经过大量的数据训练,机器可能会学习训练数据中的一些模式来模仿或学习类似于人类的某种技能。为了克服静态图像笔画序列恢复问题,提出了一种基于深度卷积神经网络模型的笔画恢复方法。在模型训练阶段,利用二维静态手写图像,将一个字体的书写过程转化为三个通道,包括已经书写的笔画、下一个笔画的可能位置和完成的字体,并对输入样本的状态进行量化。在恢复阶段,对恢复后的字体进行预处理,得到字体的笔画段,并利用训练好的模型对不同笔画段的顺序组合进行评估,从而得到正确的笔画顺序。在不超过100个字符的书写经验下,该方法在多书写者手写DOR任务中具有鲁棒性和竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Drawing Order Recovery based on deep learning
Humans have the ability to recover the order from static handwritten images, after a large amount of data training, the machine may learn some patterns in the training data to imitate or learn a certain skill similar to humans. To overcome the problem of sequence recovery of static image strokes, this paper proposes a stroke recovery method based on deep convolutional neural network model. In the model training phase, by using the two-dimensional static handwritten image, the process of writing a font is convert into three channels includes strokes that have been written, possible positions of next strokes, and the completed font, and state of the input sample are quantified. In the recovery phase, the restored font is preprocessed to obtain the stroke segments of the font, and the trained model is used to evaluate the sequential combination of different stroke segments, so as to obtain the correct stroke order. With no more than one hundred of characters’ writing experiences, the proposed method performs robustly and competitively among multi-writer handwriting DOR tasks.
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