Offline yorùbá handwritten word recognition using geometric feature extraction and support vector machine classifier / Matthias Omotayo Oladele …[et al.]

Yorùbá language is one of the three main languages that is been spoken in Nigeria. It is a tonal language that carries an accent on the vowel alphabets. There are twenty-five (25) alphabets in Yorùbá language with one of the alphabets a digraph (GB). Due to the difficulty in typing handwritten Yorùb...

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Main Authors: Oladele, Matthias Omotayo, Adepoju, Temilola Morufat, Olatoke, Olaide Abiodun, Adewale Ojo, Oluwaseun
Format: Article
Language:English
Published: Universiti Teknologi MARA 2020
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Online Access:http://ir.uitm.edu.my/id/eprint/48113/1/48113.pdf
http://ir.uitm.edu.my/id/eprint/48113/
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spelling my.uitm.ir.481132021-06-24T07:36:12Z http://ir.uitm.edu.my/id/eprint/48113/ Offline yorùbá handwritten word recognition using geometric feature extraction and support vector machine classifier / Matthias Omotayo Oladele …[et al.] Oladele, Matthias Omotayo Adepoju, Temilola Morufat Olatoke, Olaide Abiodun Adewale Ojo, Oluwaseun Mathematical physics Elementary particle physics Extraction (Chemistry) Yorùbá language is one of the three main languages that is been spoken in Nigeria. It is a tonal language that carries an accent on the vowel alphabets. There are twenty-five (25) alphabets in Yorùbá language with one of the alphabets a digraph (GB). Due to the difficulty in typing handwritten Yorùbá documents, there is a need to develop a handwritten recognition system that can convert the handwritten texts to digital format. This study discusses the offline Yorùbá handwritten word recognition system (OYHWR) that recognizes Yorùbá uppercase alphabets. Handwritten characters and words were obtained from different writers using the paint application and M708 graphics tablets. The characters were used for training and the words were used for testing. Pre-processing was done on the images and the geometric features of the images were extracted using zoning and gradient-based feature extraction. Geometric features are the different line types that form a particular character such as the vertical, horizontal, and diagonal lines. The geometric features used are the number of horizontal lines, number of vertical lines, number of right diagonal lines, number of left diagonal lines, total length of all horizontal lines, total length of all vertical lines, total length of all right slanting lines, total length of all left-slanting lines and the area of the skeleton. The characters are divided into 9 zones and gradient feature extraction was used to extract the horizontal and vertical components and geometric features in each zone. The words were fed into the support vector machine classifier and the performance was evaluated based on recognition accuracy. Support vector machine is a two-class classifier, hence a multiclass SVM classifier least square support vector machine (LSSVM) was used for word recognition. The one vs one strategy and RBF kernel were used and the recognition accuracy obtained from the tested words ranges between 66.7%, 83.3%, 85.7%, 87.5%, and 100%. The low recognition rate for some of the words could be as a result of the similarity in the extracted features, Universiti Teknologi MARA 2020-10 Article PeerReviewed text en http://ir.uitm.edu.my/id/eprint/48113/1/48113.pdf ID48113 Oladele, Matthias Omotayo and Adepoju, Temilola Morufat and Olatoke, Olaide Abiodun and Adewale Ojo, Oluwaseun (2020) Offline yorùbá handwritten word recognition using geometric feature extraction and support vector machine classifier / Matthias Omotayo Oladele …[et al.]. Malaysian Journal of Computing (MJoC), 5 (2). pp. 504-514. ISSN (eISSN): 2600-8238 https://mjoc.uitm.edu.my
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic Mathematical physics
Elementary particle physics
Extraction (Chemistry)
spellingShingle Mathematical physics
Elementary particle physics
Extraction (Chemistry)
Oladele, Matthias Omotayo
Adepoju, Temilola Morufat
Olatoke, Olaide Abiodun
Adewale Ojo, Oluwaseun
Offline yorùbá handwritten word recognition using geometric feature extraction and support vector machine classifier / Matthias Omotayo Oladele …[et al.]
description Yorùbá language is one of the three main languages that is been spoken in Nigeria. It is a tonal language that carries an accent on the vowel alphabets. There are twenty-five (25) alphabets in Yorùbá language with one of the alphabets a digraph (GB). Due to the difficulty in typing handwritten Yorùbá documents, there is a need to develop a handwritten recognition system that can convert the handwritten texts to digital format. This study discusses the offline Yorùbá handwritten word recognition system (OYHWR) that recognizes Yorùbá uppercase alphabets. Handwritten characters and words were obtained from different writers using the paint application and M708 graphics tablets. The characters were used for training and the words were used for testing. Pre-processing was done on the images and the geometric features of the images were extracted using zoning and gradient-based feature extraction. Geometric features are the different line types that form a particular character such as the vertical, horizontal, and diagonal lines. The geometric features used are the number of horizontal lines, number of vertical lines, number of right diagonal lines, number of left diagonal lines, total length of all horizontal lines, total length of all vertical lines, total length of all right slanting lines, total length of all left-slanting lines and the area of the skeleton. The characters are divided into 9 zones and gradient feature extraction was used to extract the horizontal and vertical components and geometric features in each zone. The words were fed into the support vector machine classifier and the performance was evaluated based on recognition accuracy. Support vector machine is a two-class classifier, hence a multiclass SVM classifier least square support vector machine (LSSVM) was used for word recognition. The one vs one strategy and RBF kernel were used and the recognition accuracy obtained from the tested words ranges between 66.7%, 83.3%, 85.7%, 87.5%, and 100%. The low recognition rate for some of the words could be as a result of the similarity in the extracted features,
format Article
author Oladele, Matthias Omotayo
Adepoju, Temilola Morufat
Olatoke, Olaide Abiodun
Adewale Ojo, Oluwaseun
author_facet Oladele, Matthias Omotayo
Adepoju, Temilola Morufat
Olatoke, Olaide Abiodun
Adewale Ojo, Oluwaseun
author_sort Oladele, Matthias Omotayo
title Offline yorùbá handwritten word recognition using geometric feature extraction and support vector machine classifier / Matthias Omotayo Oladele …[et al.]
title_short Offline yorùbá handwritten word recognition using geometric feature extraction and support vector machine classifier / Matthias Omotayo Oladele …[et al.]
title_full Offline yorùbá handwritten word recognition using geometric feature extraction and support vector machine classifier / Matthias Omotayo Oladele …[et al.]
title_fullStr Offline yorùbá handwritten word recognition using geometric feature extraction and support vector machine classifier / Matthias Omotayo Oladele …[et al.]
title_full_unstemmed Offline yorùbá handwritten word recognition using geometric feature extraction and support vector machine classifier / Matthias Omotayo Oladele …[et al.]
title_sort offline yorùbá handwritten word recognition using geometric feature extraction and support vector machine classifier / matthias omotayo oladele …[et al.]
publisher Universiti Teknologi MARA
publishDate 2020
url http://ir.uitm.edu.my/id/eprint/48113/1/48113.pdf
http://ir.uitm.edu.my/id/eprint/48113/
https://mjoc.uitm.edu.my
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score 13.160551