递归神经网络手写数学符号分类的离线特征

Francisco Alvaro, Joan Andreu Sánchez, J. Benedí
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引用次数: 27

摘要

在数学表达式识别中,符号分类是至关重要的一步。已经发表了许多识别手写数学符号的方法,但大多数方法要么是在线方法,要么是混合方法。目前还没有针对手写数学符号识别的离线特征的研究。此外,许多论文提供的结果难以比较。在本文中,我们评估了该任务中几个知名的离线特征的性能。我们还测试了一组新的基于极坐标直方图和垂直重定位的特征提取方法。最后,我们报告并分析了在一个大型在线手写数学表达式公共数据库上使用递归神经网络的几个实验结果。在线和离线特征的结合显著提高了识别率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Offline Features for Classifying Handwritten Math Symbols with Recurrent Neural Networks
In mathematical expression recognition, symbol classification is a crucial step. Numerous approaches for recognizing handwritten math symbols have been published, but most of them are either an online approach or a hybrid approach. There is an absence of a study focused on offline features for handwritten math symbol recognition. Furthermore, many papers provide results difficult to compare. In this paper we assess the performance of several well-known offline features for this task. We also test a novel set of features based on polar histograms and the vertical repositioning method for feature extraction. Finally, we report and analyze the results of several experiments using recurrent neural networks on a large public database of online handwritten math expressions. The combination of online and offline features significantly improved the recognition rate.
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