Neural Network for Handwriting Recognition

  • M. Butaev M
  • Yu. Babich M
  • Salnikovq I
  • et al.
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Abstract

Today, in the digital age, the problem of pattern recognition is very relevant. In particular, the task of text recognition is important in banking, for the automatic reading of documents and their control; in video control systems, for example, to identify the license plate of a car that violated traffic rules; in security systems, for example, to check banknotes at an ATM and in many other areas. A large number of methods are known for solving the problem of pattern recognition, but the main advantage of neural networks over other methods is their learning ability. It is this feature that makes neural networks attractive to study. The article proposes a basic neural network model. The main algorithms are considered and a programming model is implemented in the Python programming language. In the course of research, the following shortcomings of the basic model were revealed: low learning rate (the number of correctly recognized digits in the first epochs of learning); retraining - the network has not learned to generalize the knowledge gained; low probability of recognition - 95.13%.To solve the above disadvantages, various techniques were used that increase the accuracy and speed of work, as well as reduce the effect of network retraining.

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APA

M. Butaev, M., Yu. Babich, M., Salnikovq, I. I., Martyshkin, A. I., Pashchenko, D. V., & Trokoz, D. A. (2020). Neural Network for Handwriting Recognition. Nexo Revista Científica, 33(02), 623–637. https://doi.org/10.5377/nexo.v33i02.10798

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