Handwritten Mathematical Symbol Recognition using Neural Network Architectures

Kayal Padmanandam, Alekhya Yadav, Aishwarya, Harshitha N
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Abstract

Mathematical symbol recognition is a topic of attention that convert physical documents into digital format. Despite the existing techniques to recognize handwritten characters and symbols, recognition accuracy is unstable. The main objective of this work is to build an intelligent system to recognize handwritten characters or symbols written in different styles with improved and stable accuracy. The proposed system can read handwritten mathematical characters or symbols as input and recognize them with corresponding characters or symbol names. The proposed implementation uses various machine learning and deep learning algorithms like Logistic Regression, Convolutional Neural networks, and Dense net. The dataset used for this research is 46 MB, which contains images of numerical values from 0 to 9, mathematical symbols, and alphabets that are available in the Kaggle open-source platform. Each data category has around 500 plus handwritten images. The implementation uses various machine learning and deep learning algorithms like Logistic Regression, Convolutional Neural networks, and Dense net to address the symbol recognition challenges. The comparative study is implemented with these algorithms and the Dense net has presented exceptional results during the training and testing phase with an accuracy of 99% and 94.2% respectively. This improved accuracy is due to the utilization of Densenet over other CNN architectures, as the DenseNet concatenates the output of the predecessor layer with the successor layer and it weakens the vanishing gradient problem. Also, the Dynamic feature propagation helps in the regulated flow of information in the dense network architecture.
使用神经网络架构的手写数学符号识别
数学符号识别是将物理文档转换为数字格式的一个研究课题。尽管现有的识别手写字符和符号的技术,识别精度是不稳定的。本工作的主要目标是建立一个智能系统来识别不同风格的手写字符或符号,并提高和稳定的准确性。所提出的系统可以读取手写的数学字符或符号作为输入,并使用相应的字符或符号名称识别它们。提议的实现使用各种机器学习和深度学习算法,如逻辑回归,卷积神经网络和密集网络。本研究使用的数据集为46 MB,其中包含从0到9的数值、数学符号和字母的图像,这些图像可以在Kaggle开源平台上获得。每个数据类别都有大约500多个手写图像。该实现使用各种机器学习和深度学习算法,如逻辑回归,卷积神经网络和密集网络来解决符号识别的挑战。与这些算法进行了对比研究,密集网络在训练和测试阶段分别取得了99%和94.2%的优异成绩。这种精度的提高是由于Densenet对其他CNN架构的利用,因为Densenet将前一层的输出与后继层连接起来,并且它削弱了梯度消失问题。此外,动态特征传播有助于在密集网络体系结构中调节信息的流动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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