Syntax-Aware Network for Handwritten Mathematical Expression Recognition

Handwritten mathematical expression recognition (HMER) is a challenging task that has many potential applications. Recent methods for HMER have achieved outstanding performance with an encoder-decoder architecture. However, these methods adhere to the paradigm that the prediction is made "from one character to another", which inevitably yields prediction errors due to the complicated structures of mathematical expressions or crabbed handwritings. In this paper, we propose a simple and efficient method for HMER, which is the first to incorporate syntax information into an encoder-decoder network. Specifically, we present a set of grammar rules for converting the LaTeX markup sequence of each expression into a parsing tree; then, we model the markup sequence prediction as a tree traverse process with a deep neural network. In this way, the proposed method can effectively describe the syntax context of expressions, alleviating the structure prediction errors of HMER. Experiments on three benchmark datasets demonstrate that our method achieves better recognition performance than prior arts. To further validate the effectiveness of our method, we create a large-scale dataset consisting of 100k handwritten mathematical expression images acquired from ten thousand writers. The source code, new dataset, and pre-trained models of this work will be publicly available.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Handwritten Mathmatical Expression Recognition CROHME 2014 SAN ExpRate 56.2 # 9
Handwritten Mathmatical Expression Recognition CROHME 2016 SAN ExpRate 53.6 # 9
Handwritten Mathmatical Expression Recognition CROHME 2019 SAN ExpRate 53.5 # 10
Handwritten Mathmatical Expression Recognition HME100K SAN ExpRate 67.1 # 8

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