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Novel character segmentation method for overlapped Chinese handwriting recognition based on LSTM neural networks

机译:基于LSTM神经网络的重叠汉字识别的字符分割新方法。

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Overlapped handwriting recognition is widely used to input text in smart devices since it allows to write continuous characters on an size-restricted screens. How to segment the stroke sequences into characters is a crucial step before recognition. It is currently formulated as a two-class classification problem merely evaluating on the relationships between a pair of adjacent strokes. To facilitate the long contextual dependency, the paper novelly presents the problem as a sequential classification problem. Firstly each adjacent stroke pair is expressed as a feature vector. Secondly a LSTM model is learned to encode the long contextual history information from massive data. Finally the model is propagated forward to predict the labels once new samples are fed. Experiments are conducted on a public online Chinese handwriting database. The results show that the proposed method outperforms the traditional ones with about 10 percent improvement in terms of both specificity and precision.
机译:重叠手写识别被广泛用于智能设备中的文本输入,因为它允许在尺寸受限的屏幕上写入连续的字符。如何将笔划序列分割为字符是识别之前的关键步骤。当前仅将其评估为一对相邻笔画之间的关系,将其表述为两类分类问题。为了促进长期的上下文相关性,本文将问题新颖地提出为顺序分类问题。首先,每个相邻的笔画对都表示为特征向量。其次,学习LSTM模型,以从海量数据中对较长的上下文历史信息进行编码。最后,一旦喂入新样品,模型将向前传播以预测标签。实验是在公共的在线中文手写数据库上进行的。结果表明,该方法在特异性和精密度方面均优于传统方法,并提高了约10%。

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