Deep Learning Based Models for Offline Gurmukhi Handwritten Character and Numeral Recognition

Authors

  • Manoj Kumar Mahto Gurukula Kangri Vishwavidyalaya, Haridwar, U.K., India https://orcid.org/0000-0002-8258-055X
  • Karamjit Bhatia Gurukula Kangri Vishwavidyalaya, Haridwar, U.K., India
  • Rajendra Kumar Sharma Thapar Institute of Engineering & Technology, Patiala, Punjab, India

Abstract

Over the last few years, several researchers have worked on handwritten character recognition and have proposed various techniques to improve the performance of Indic and non-Indic scripts recognition. Here, a Deep Convolutional Neural Network has been proposed that learns deep features for offline Gurmukhi handwritten character and numeral recognition (HCNR). The proposed network works efficiently for training as well as testing and exhibits a good recognition performance. Two primary datasets comprising of offline handwritten Gurmukhi characters and Gurmukhi numerals have been employed in the present work. The testing accuracies achieved using the proposed network is 98.5% for characters and 98.6% for numerals.

Keywords

Character and Text Recognition, Handwritten Recognition

Published

2022-01-18

Downloads

Download data is not yet available.