Restoration and Segmentation of Old Jawi Manuscripts using Variational Image Inpainting and Active Contour Models

Old Jawi Manuscripts (OJM) are crucial to historical studies, offering insights into past societies. However, degradation from mishandling and environmental factors can impair their legibility. To preserve OJM, image inpainting and segmentation are essential for restoring corrupted areas and identif...

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Published in:Journal of Information and Communication Technology
Main Author: Azam A.S.B.; Jumaat A.K.; Azam A.B.B.; Sabri N.A.S.M.; Yahaya A.M.; Ismail A.T.; Razak M.A.A.; Maasar M.A.; Laham M.F.
Format: Article
Language:English
Published: Universiti Utara Malaysia Press 2024
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85208043570&doi=10.32890%2fjict2024.23.4.1&partnerID=40&md5=f207e5c5aafe39ce54764d48b8656a86
id 2-s2.0-85208043570
spelling 2-s2.0-85208043570
Azam A.S.B.; Jumaat A.K.; Azam A.B.B.; Sabri N.A.S.M.; Yahaya A.M.; Ismail A.T.; Razak M.A.A.; Maasar M.A.; Laham M.F.
Restoration and Segmentation of Old Jawi Manuscripts using Variational Image Inpainting and Active Contour Models
2024
Journal of Information and Communication Technology
23
4
10.32890/jict2024.23.4.1
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85208043570&doi=10.32890%2fjict2024.23.4.1&partnerID=40&md5=f207e5c5aafe39ce54764d48b8656a86
Old Jawi Manuscripts (OJM) are crucial to historical studies, offering insights into past societies. However, degradation from mishandling and environmental factors can impair their legibility. To preserve OJM, image inpainting and segmentation are essential for restoring corrupted areas and identifying text. Recently, the Gaussian Regularization Segmentation (GRS) model has shown effectiveness in intensity inhomogeneity grayscale image segmentation, though it was not designed for corrupted OJM images. Therefore, this study aimed to reformulate the GRS model to restore and segment text from real corrupted OJM images. The methodology begins with the incorporation of the Mumford-Shah and Bertalmio inpainting models into the GRS model as new fitting terms, resulting in the Modified Gaussian Regularization Segmentation Mumford-Shah (MGRSM) model and the Modified Gaussian Regularization Segmentation Bertalmio (MGRSB) model, respectively. MATLAB was used to implement these models, and their performance was assessed on 30 corrupted OJM samples from Malay Ethnomathematics Research Group, with expert evaluations and efficiency measured by average elapsed time. The MGRSM model achieved 38.4 percent and 12.4 percent higher overall total scores from experts in terms of segmentation accuracy compared to the GRS and MGRSB models, respectively. While the GRS model is the fastest, the MGRSM model provides superior accuracy, with an average processing time of 9.35 seconds, making it the most optimal for restoring and segmenting OJM images. This approach not only enhances the preservation of historical manuscripts but also provides a practical tool for researchers and historians in safeguarding our cultural heritage. © (2023), (Universiti Utara Malaysia Press). All Rights Reserved.
Universiti Utara Malaysia Press
1675414X
English
Article

author Azam A.S.B.; Jumaat A.K.; Azam A.B.B.; Sabri N.A.S.M.; Yahaya A.M.; Ismail A.T.; Razak M.A.A.; Maasar M.A.; Laham M.F.
spellingShingle Azam A.S.B.; Jumaat A.K.; Azam A.B.B.; Sabri N.A.S.M.; Yahaya A.M.; Ismail A.T.; Razak M.A.A.; Maasar M.A.; Laham M.F.
Restoration and Segmentation of Old Jawi Manuscripts using Variational Image Inpainting and Active Contour Models
author_facet Azam A.S.B.; Jumaat A.K.; Azam A.B.B.; Sabri N.A.S.M.; Yahaya A.M.; Ismail A.T.; Razak M.A.A.; Maasar M.A.; Laham M.F.
author_sort Azam A.S.B.; Jumaat A.K.; Azam A.B.B.; Sabri N.A.S.M.; Yahaya A.M.; Ismail A.T.; Razak M.A.A.; Maasar M.A.; Laham M.F.
title Restoration and Segmentation of Old Jawi Manuscripts using Variational Image Inpainting and Active Contour Models
title_short Restoration and Segmentation of Old Jawi Manuscripts using Variational Image Inpainting and Active Contour Models
title_full Restoration and Segmentation of Old Jawi Manuscripts using Variational Image Inpainting and Active Contour Models
title_fullStr Restoration and Segmentation of Old Jawi Manuscripts using Variational Image Inpainting and Active Contour Models
title_full_unstemmed Restoration and Segmentation of Old Jawi Manuscripts using Variational Image Inpainting and Active Contour Models
title_sort Restoration and Segmentation of Old Jawi Manuscripts using Variational Image Inpainting and Active Contour Models
publishDate 2024
container_title Journal of Information and Communication Technology
container_volume 23
container_issue 4
doi_str_mv 10.32890/jict2024.23.4.1
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85208043570&doi=10.32890%2fjict2024.23.4.1&partnerID=40&md5=f207e5c5aafe39ce54764d48b8656a86
description Old Jawi Manuscripts (OJM) are crucial to historical studies, offering insights into past societies. However, degradation from mishandling and environmental factors can impair their legibility. To preserve OJM, image inpainting and segmentation are essential for restoring corrupted areas and identifying text. Recently, the Gaussian Regularization Segmentation (GRS) model has shown effectiveness in intensity inhomogeneity grayscale image segmentation, though it was not designed for corrupted OJM images. Therefore, this study aimed to reformulate the GRS model to restore and segment text from real corrupted OJM images. The methodology begins with the incorporation of the Mumford-Shah and Bertalmio inpainting models into the GRS model as new fitting terms, resulting in the Modified Gaussian Regularization Segmentation Mumford-Shah (MGRSM) model and the Modified Gaussian Regularization Segmentation Bertalmio (MGRSB) model, respectively. MATLAB was used to implement these models, and their performance was assessed on 30 corrupted OJM samples from Malay Ethnomathematics Research Group, with expert evaluations and efficiency measured by average elapsed time. The MGRSM model achieved 38.4 percent and 12.4 percent higher overall total scores from experts in terms of segmentation accuracy compared to the GRS and MGRSB models, respectively. While the GRS model is the fastest, the MGRSM model provides superior accuracy, with an average processing time of 9.35 seconds, making it the most optimal for restoring and segmenting OJM images. This approach not only enhances the preservation of historical manuscripts but also provides a practical tool for researchers and historians in safeguarding our cultural heritage. © (2023), (Universiti Utara Malaysia Press). All Rights Reserved.
publisher Universiti Utara Malaysia Press
issn 1675414X
language English
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