This paper proposes a method for recognizing online handwritten mathematical expressions (OnHME) by building a symbol relation tree (SRT) directly from a sequence of strokes. A bidirectional recurrent neural network learns from multiple derived paths of SRT to predict both symbols and spatial relations between symbols using global context. The recognition system has two parts: a temporal classifier and a tree connector. The temporal classifier produces an SRT by recognizing an OnHME pattern. The tree connector splits the SRT into several sub-SRTs. The final SRT is formed by looking up the best combination among those sub-SRTs. Besides, we adopt a tree sorting method to deal with various stroke orders. Recognition experiments indicate that the proposed OnHME recognition system is competitive to other methods. The recognition system achieves 44.12% and 41.76% expression recognition rates on the Competition on Recognition of Online Handwritten Mathematical Expressions (CROHME) 2014 and 2016 testing sets.
翻译:本文建议了一种方法来识别在线手写数学表达式(OnHME),方法是直接从中划线序列中建立符号关系树(SRT)。双向经常性神经网络从SRT的多衍生路径中学习,以预测符号和使用全球背景的符号之间的空间关系。识别系统有两个部分:时间分类器和树连接器。时间分类器通过识别OnHME模式生成SRT。树连接器将SRT分割成几个子SRT。最终的 SRT是通过查找这些子SRT的最佳组合而形成的。此外,我们采用树排序方法处理各种划线。识别实验表明,拟议的OnHME识别系统与其他方法相比具有竞争力。识别系统在承认在线手写数学表达式(CREHME)2014年和2016年测试组的竞赛中实现了44.12%和41.76%的表达识别率。