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A GRU-Based Encoder-Decoder Approach with Attention for Online Handwritten Mathematical Expression Recognition

机译:在线手写数学表达识别的基于GRU的编解码方法

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In this study, we present a novel end-to-end approach based on the encoder-decoder framework with the attention mechanism for online handwritten mathematical expression recognition (OHMER). First, the input two-dimensional ink trajectory information of handwritten expression is encoded via the gated recurrent unit based recurrent neural network (GRU-RNN). Then the decoder is also implemented by the GRU-RNN with a coverage-based attention model. The proposed approach can simultaneously accomplish the symbol recognition and structural analysis to output a character sequence in LaTeX format. Validated on the CROHME 2014 competition task, our approach significantly outperforms the state-of-the-art with an expression recognition accuracy of 52.43% by only using the official training dataset. Furthermore, the alignments between the input trajectories of handwritten expressions and the output LaTeX sequences are visualized by the attention mechanism to show the effectiveness of the proposed method.
机译:在这项研究中,我们提出了一种基于编码器-解码器框架的新颖的端到端方法,并具有用于在线手写数学表达识别(OHMER)的注意力机制。首先,通过基于门控递归单元的递归神经网络(GRU-RNN)对输入的手写表达的二维墨水轨迹信息进行编码。然后,解码器也由GRU-RNN使用基于覆盖的注意力模型来实现。所提出的方法可以同时完成符号识别和结构分析,以LaTeX格式输出字符序列。通过CROHME 2014竞赛任务的验证,我们的方法仅使用官方培训数据集就以52.43 \%的表情识别准确率明显优于最新技术。此外,通过注意力机制可视化手写表达的输入轨迹与输出LaTeX序列之间的对齐方式,以显示该方法的有效性。

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