Published August 12, 2019 | Version v1
Journal article Open

Investigating the Various Approaches towards Handwritten Digit Recognition

  • 1. Assistant Professor, Department of Information Science and Engineering, Ramaiah Institute of Technology Bangalore, Karnataka, India
  • 2. PG Student, Department of Information Science and Engineering, Ramaiah Institute of Technology Bangalore, Karnataka, India

Description

Pattern recognition plays a vital role due to demand in artificial intelligence in practical problem. One of the problem is, that the machine faced problem in handwritten digit recognition. To recognize the digits, different features are considered such as style, orientation, curve, size, edge, thickness of the digit. Based on these factors they classifies the digits. This paper describes the different approaches that where followed to recognize the Handwritten digits. And the discussion about the different algorithms used. There are two steps involved, one is feature extraction for that there are many feature extraction methods available like, Linear Binary Pattern, Histogram Oriented Graph, Convolutional Neural Network and many more algorithms. Another one is feature classification for that many machine learning methods available like Support Vector Machine, K Nearest Neighbor so on. The main objective of all these approaches is to improve the prediction accuracy. So our main intention is to find the most appropriate method which could give highest prediction rate. In order to obtain that we created a comparative table, which compares with respect to classification method, feature extraction method, accuracy, purpose, pros and cons. Also plotted graph to compare them.

 

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References

  • Leo Pauly, Rahul D Raj, Dr.Binu paul (2015),"Handwritten Digit Recogition System for South Indian Languages using Artificial Neural Network"
  • Nurul Ilmi, Tjokorda (2016),"Handwriting Digit Recognition using Local Binary Pattern Variance and K-Nearest Neighbor Classification", 2106 Fourth International Conference and Communication Technologies
  • Yoshihiro Shima, Yumi (2017), "Pattern Augmentation for Handwritten Digit Classification based on Combination of Pre- trained CNN and SVM"
  • Retno Larasati, Dr Hak KeungLam (2017),"Handwritten Digit Recognition using Ensemble Neural Netwok and Ensemble Decision Tree", 2017 International Conference on Smart Cities, Automation Intelligent Computing System Yogyakarta, Indonesia
  • Pritam Khan Boni (2018), "Handwritten Bangla Digit Recognition Using Chemical Reaction Optimization", 9th ICCCNT

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