Egyptian Informatics Journal (Dec 2023)

Self-ChakmaNet: A deep learning framework for indigenous language learning using handwritten characters

  • Kanchon Kanti Podder,
  • Ludmila Emdad Khan,
  • Jyoti Chakma,
  • Muhammad E.H. Chowdhury,
  • Proma Dutta,
  • Khan Md Anwarus Salam,
  • Amith Khandakar,
  • Mohamed Arselene Ayari,
  • Bikash Kumar Bhawmick,
  • S M Arafin Islam,
  • Serkan Kiranyaz

Journal volume & issue
Vol. 24, no. 4
p. 100413

Abstract

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According to UNESCO's Atlas of the World's Languages in Danger, 40% of the languages today are counted as endangered in the future. Indigenous languages are endangered because of the less availability of interactive learning mediums for those languages. Thus this paper proposes an interactive deep learning method for Handwritten Character Recognition of the indigenous language “Chakma.” The method comprises dataset creation using a mobile app named “EthnicData.” It reports the first “Handwriting Character Dataset” of Chakma containing 47,000 images of 47 characters of Chakma language using the app. A novel SelfONN-based deep learning model, Self-ChakmaNet, is proposed in this research for Chakma Handwritten character recognition. The Self-ChakmaNet achieved 99.84% for overall accuracy, precision, recall, F1 score, and sensitivity. The proposed model with high accuracy can be implemented in mobile devices for handwritten character recognition as the model has less number of parameters and a faster processing speed.

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