Deep Learning-Based Dzongkha Handwritten Digit Classification

In computer vision applications, pattern recognition is one of the important fields in artificial intelligence. With the advancement in deep learning technology, many machine learning algorithms were developed to tackle the problem of pattern recognition. The purpose of conducting the research is t...

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Main Authors: Yonten Jamtsho, Pema Yangden, Sonam Wangmo, Nima Dema
Format: Article
Language:English
Published: Andalas University 2024-03-01
Series:JITCE (Journal of Information Technology and Computer Engineering)
Subjects:
Online Access:http://10.250.30.20/index.php/JITCE/article/view/202
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author Yonten Jamtsho
Pema Yangden
Sonam Wangmo
Nima Dema
author_facet Yonten Jamtsho
Pema Yangden
Sonam Wangmo
Nima Dema
author_sort Yonten Jamtsho
collection DOAJ
description In computer vision applications, pattern recognition is one of the important fields in artificial intelligence. With the advancement in deep learning technology, many machine learning algorithms were developed to tackle the problem of pattern recognition. The purpose of conducting the research is to create the first-ever Dzongkha handwritten digit dataset and develop a model to classify the digit. In the study, the 3 layer set of CONV → ReLU → POOL, followed by a fully connected layer, dropout layer, and softmax function were used to train the digit. In the dataset, each class (0-9) contains 1500 images which are split into train, validation, and test sets: 70:20:10. The model was trained on three different image dimensions: 28 by 28, 32 by 32, and 64 by 64. Compared to image dimensions 28 by 28 and 32 by 32, 64 by 64 gave the highest train, validation, and test accuracy of 98.66%, 98.9%, and 99.13% respectively. In the future, the sample of digits needs to be increased and use the transfer learning concept to train the model.
format Article
id doaj-art-8329c5e5cd9441b9a742be856675df8e
institution Kabale University
issn 2599-1663
language English
publishDate 2024-03-01
publisher Andalas University
record_format Article
series JITCE (Journal of Information Technology and Computer Engineering)
spelling doaj-art-8329c5e5cd9441b9a742be856675df8e2025-02-08T21:25:59ZengAndalas UniversityJITCE (Journal of Information Technology and Computer Engineering)2599-16632024-03-018110.25077/jitce.8.1.1-7.2024Deep Learning-Based Dzongkha Handwritten Digit ClassificationYonten Jamtsho0Pema Yangden1Sonam Wangmo2Nima Dema3Gyalpozhing College of Information TechnologyGyalpozhing College of Information TechnologyGyalpozhing College of Information TechnologyGyalpozhing College of Information Technology In computer vision applications, pattern recognition is one of the important fields in artificial intelligence. With the advancement in deep learning technology, many machine learning algorithms were developed to tackle the problem of pattern recognition. The purpose of conducting the research is to create the first-ever Dzongkha handwritten digit dataset and develop a model to classify the digit. In the study, the 3 layer set of CONV → ReLU → POOL, followed by a fully connected layer, dropout layer, and softmax function were used to train the digit. In the dataset, each class (0-9) contains 1500 images which are split into train, validation, and test sets: 70:20:10. The model was trained on three different image dimensions: 28 by 28, 32 by 32, and 64 by 64. Compared to image dimensions 28 by 28 and 32 by 32, 64 by 64 gave the highest train, validation, and test accuracy of 98.66%, 98.9%, and 99.13% respectively. In the future, the sample of digits needs to be increased and use the transfer learning concept to train the model. http://10.250.30.20/index.php/JITCE/article/view/202BhutanDzongkha digitsDeep learningCNNPattern Recognition
spellingShingle Yonten Jamtsho
Pema Yangden
Sonam Wangmo
Nima Dema
Deep Learning-Based Dzongkha Handwritten Digit Classification
JITCE (Journal of Information Technology and Computer Engineering)
Bhutan
Dzongkha digits
Deep learning
CNN
Pattern Recognition
title Deep Learning-Based Dzongkha Handwritten Digit Classification
title_full Deep Learning-Based Dzongkha Handwritten Digit Classification
title_fullStr Deep Learning-Based Dzongkha Handwritten Digit Classification
title_full_unstemmed Deep Learning-Based Dzongkha Handwritten Digit Classification
title_short Deep Learning-Based Dzongkha Handwritten Digit Classification
title_sort deep learning based dzongkha handwritten digit classification
topic Bhutan
Dzongkha digits
Deep learning
CNN
Pattern Recognition
url http://10.250.30.20/index.php/JITCE/article/view/202
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AT pemayangden deeplearningbaseddzongkhahandwrittendigitclassification
AT sonamwangmo deeplearningbaseddzongkhahandwrittendigitclassification
AT nimadema deeplearningbaseddzongkhahandwrittendigitclassification