Performance Investigation of Handwritten Equation Solver using CNN for Betterment

K. Priyadharsini, Sudharsan Perumal, J. D. Dinesh Kumar, K. Darshan, S. Vignesh, P. Vinoth
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引用次数: 0

Abstract

Identifying strong handwritten characters is a difficult task in the field of medical field and it is tedious process on decoding handwritten medicines. Recognition of handwritten mathematical expressions is a complex issue. The distribution and classification of specific characters makes the task more difficult. In our project, handwritten numbers and symbols are read and further addition, subtraction and multiplication operations are performed. The project includes a study about model deployment using convoluted neural networks and flasks. We use the CNN to classify specific characters. Tracking of character string operations are used to solve equations. The maximum accuracy of the proposed model is 99.12% recall is 95%, sensitivity is 89% and specificity is 68%. Effectiveness of our proposed system is helpful for students who want to get handwritten answers. The equation can be extended to more complex equations and more user data can be trained to improve correction and accuracy.
利用CNN改进手写方程求解器的性能研究
强手写体字符识别是医学领域的一项难点任务,手写药品的解码也是一个繁琐的过程。手写数学表达式的识别是一个复杂的问题。特殊字符的分布和分类使得任务更加困难。在我们的项目中,读取手写的数字和符号,并执行进一步的加法、减法和乘法运算。该项目包括使用卷积神经网络和烧瓶进行模型部署的研究。我们使用CNN对特定的字符进行分类。跟踪字符串操作用于求解方程。该模型的最大准确率为99.12%,召回率为95%,灵敏度为89%,特异性为68%。我们提出的系统的有效性对想要手写答案的学生很有帮助。该方程可以扩展到更复杂的方程,并且可以训练更多的用户数据,以提高校正和精度。
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