Classification methods for handwritten digit recognition: A survey

Introduction/purpose: This paper provides a survey of handwritten digit recognition methods tested on the MNIST dataset. Methods: The paper analyzes, synthesizes and compares the development of different classifiers applied to the handwritten digit recognition problem, from linear classifiers to...

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Bibliographic Details
Main Authors: Ira M. Tuba, Una M. Tuba, Mladen Đ. Veinović
Format: Article
Language:English
Published: University of Defence in Belgrade 2023-01-01
Series:Vojnotehnički Glasnik
Subjects:
Online Access:https://scindeks.ceon.rs/article.aspx?artid=0042-84692301113T
Description
Summary:Introduction/purpose: This paper provides a survey of handwritten digit recognition methods tested on the MNIST dataset. Methods: The paper analyzes, synthesizes and compares the development of different classifiers applied to the handwritten digit recognition problem, from linear classifiers to convolutional neural networks. Results: Handwritten digit recognition classification accuracy tested on the MNIST dataset while using training and testing sets is now higher than 99.5% and the most successful method is a convolutional neural network. Conclusions: Handwritten digit recognition is a problem with numerous real-life applications. Accurate recognition of various handwriting styles, specifically digits is a task studied for decades and this paper summarizes the achieved results. The best results have been achieved with convolutional neural networks while the worst methods are linear classifiers. The convolutional neural networks give better results if the dataset is expended with data augmentation.
ISSN:0042-8469
2217-4753