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Training an End-to-End System for Handwritten Mathematical Expression Recognition by Generated Patterns

机译:通过生成的模式训练手写数学表达式识别的端到端系统

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Motivated by recent successes in neural machine translation and image caption generation, we present an end-to-end system to recognize Online Handwritten Mathematical Expressions (OHMEs). Our system has three parts: a convolution neural network for feature extraction, a bidirectional LSTM for encoding extracted features, and an LSTM and an attention model for generating target LaTex. For recognizing complex structures, our system needs large data for training. We propose local and global distortion models for generating OHMEs from the CROHME database. We evaluate the end-to-end system on the CROHME database and the generated databases. The experiential results show that the end-to-end system achieves 28.09% and 35.19% recognition rates on CROHME without and with the generated data, respectively.
机译:最近在神经机翻译和图像字幕生成中取得的成功,我们展示了一个端到端的系统来识别在线手写的数学表达式(欧姆)。我们的系统有三个部分:用于特征提取的卷积神经网络,用于编码提取的特征的双向LSTM,以及用于产生目标乳胶的LSTM和注意模型。为了识别复杂结构,我们的系统需要大量的培训数据。我们提出了从Crohme数据库生成欧姆的本地和全局失真模型。我们评估Crohme数据库和生成的数据库上的端到端系统。经验结果表明,端到端系统分别在Crohme上实现了28.09%和35.19%的识别率,分别没有生成的数据。

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