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Handwritten Mathematical Expression Recognition Using Convolutional Neural Network

机译:卷积神经网络的手写数学表达识别

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Recognizing mathematical expressions on raster images usually consists of two steps: detecting individual symbols and analyzing their spatial structure to form a coherent equation. In this work, we focus on the first step and propose a detection method that is able to locate small and difficult handwritten symbols. We use a deep convolutional neural network with robust detection performance. It is able to achieve a mean average precision score of 0.65 for 106 different mathematical symbols on the dataset we created. For structural analysis, we use the DRACULAE parser since it has high accuracy given that the symbols were correctly detected.
机译:识别光栅图像上的数学表达式通常包括两个步骤:检测单个符号并分析其空间结构以形成一个连贯的方程式。在这项工作中,我们将重点放在第一步上,并提出一种能够定位小的且困难的手写符号的检测方法。我们使用具有强大检测性能的深度卷积神经网络。对于我们创建的数据集上的106个不同数学符号,它可以获得0.65的平均平均精度得分。对于结构分析,我们使用DRACULAE解析器,因为只要正确检测到符号,它就具有很高的准确性。

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