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引用次数: 2

摘要

手写体数学表达式的识别在模式识别研究中受到越来越多的关注。它是接收原始数据并根据数据的类别做出操作的过程。在本文中,我们提出了一个识别手写数学表达式的工具。所提出的体系结构旨在处理手写表达式,其方法是基于每个笔的上下笔对输入进行分割,然后进行符号分类。作为分类器,使用极限学习机和支持向量机,选择准确率最高的分类器,在各种手写数学表达式中进行符号训练,在符号分类阶段取得了较好的结果。一旦对符号进行分类,相应的输出将被转换为LaTex格式。
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Handwritten Mathematical Recognition Tool
The recognition of handwritten mathematical expressions has received an increasing amount of attention in pattern recognition research. It is the process of taking in raw data and making actions based on the category of the data. In this paper, we present a tool for recognizing handwritten mathematical expressions. The proposed architecture aims at handling the handwritten expressions by performing segmentation of the input based on each pen ups and pen downs followed by symbol classification. As a classifier, an Extreme Learning Machine and Support Vector machines are used, the classifier which produces a best accuracy is selected and then the symbols are trained among various handwritten mathematical expression and a promising result are achieved at symbol classification stage. Once the symbols are classified, the corresponding output is converted to LaTex format.
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