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Handwritten Mathematical Expression Recognition via Paired Adversarial Learning

机译:通过配对的对抗性学习手写的数学表达识别

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摘要

Recognition of handwritten mathematical expressions (MEs) is an important problem that has wide applications in practice. Handwritten ME recognition is challenging due to the variety of writing styles and ME formats. As a result, recognizers trained by optimizing the traditional supervision loss do not perform satisfactorily. To improve the robustness of the recognizer with respect to writing styles, in this work, we propose a novel paired adversarial learning method to learn semantic-invariant features. Specifically, our proposed model, named PAL-v2, consists of an attention-based recognizer and a discriminator. During training, handwritten MEs and their printed templates are fed into PAL-v2 simultaneously. The attention-based recognizer is trained to learn semantic-invariant features with the guide of the discriminator. Moreover, we adopt a convolutional decoder to alleviate the vanishing and exploding gradient problems of RNN-based decoder, and further, improve the coverage of decoding with a novel attention method. We conducted extensive experiments on the CROHME dataset to demonstrate the effectiveness of each part of the method and achieved state-of-the-art performance.
机译:对手写数学表达式(MES)的认识是在实践中具有广泛应用的重要问题。手写的我的认可由于类型的写作风格和我的格式而挑战。因此,通过优化传统监督损失训练的识别员不会令人满意地表现。为了提高识别器关于写作风格的稳健性,在这项工作中,我们提出了一种新颖的对抗的对抗学习方法来学习语义不变的功能。具体而言,我们提出的模型名为PAL-V2,包括基于关注的识别器和鉴别者。在培训期间,手写的MES及其印刷模板同时进入PAL-V2。受关注的识别器培训,以便使用鉴别器的指南学习语义不变功能。此外,我们采用卷积解码器来缓解基于RNN的解码器的消失和爆炸梯度问题,进一步提高了用新的注意方法进行解码的覆盖范围。我们对Crohme数据集进行了广泛的实验,以证明该方法各部分的有效性并实现了最先进的性能。

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