Recognition of Handwritten Mathematical Expressions Using Systems of Convolutional Neural Networks

Tate Rowney, Alexander I. Iliev
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Abstract

Accurate recognition of handwritten mathematical expressions has proven difficult due to their two-dimensional structure. Various machine-learning techniques have previously been employed to transcribe handwritten math, including approaches based on convolutional neural networks (CNNs) and larger encoder/decoder-based models. In this work, we explore a CNN-based method for transcribing handwritten math expressions into the typesetting language known as LaTeX. This approach utilizes machine learning not only for classifying individual characters but also for extracting individual characters from handwritten inputs and determining what forms of two-dimensionality exist within the expression. This approach achieves significant reliability when recognizing common mathematical expressions.
利用卷积神经网络系统识别手写数学表达式
由于手写数学表达式的二维结构,准确识别手写数学表达式已被证明十分困难。以前曾采用过多种机器学习技术来转录手写数学表达式,包括基于卷积神经网络(CNN)的方法和更大的基于编码器/解码器的模型。在这项工作中,我们探索了一种基于 CNN 的方法,用于将手写数学表达式转录到称为 LaTeX 的排版语言中。这种方法不仅利用机器学习对单个字符进行分类,还利用机器学习从手写输入中提取单个字符,并确定表达式中存在哪些二维形式。在识别常见的数学表达式时,这种方法的可靠性非常高。
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