CNN-Based Page Segmentation and Object Classification for Counting Population in Ottoman Archival Documentation

Historical document analysis systems gain importance with the increasing efforts in the digitalization of archives. Page segmentation and layout analysis are crucial steps for such systems. Errors in these steps will affect the outcome of handwritten text recognition and Optical Character Recognitio...

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Main Authors: Yekta Said Can, M. Erdem Kabadayı
Format: Article
Language:English
Published: MDPI AG 2020-05-01
Series:Journal of Imaging
Subjects:
Online Access:https://www.mdpi.com/2313-433X/6/5/32
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spelling doaj-1feb16472d4c42baba96f75680802d282020-11-25T03:12:31ZengMDPI AGJournal of Imaging2313-433X2020-05-016323210.3390/jimaging6050032CNN-Based Page Segmentation and Object Classification for Counting Population in Ottoman Archival DocumentationYekta Said Can0M. Erdem Kabadayı1College of Social Sciences and Humanities, Koc University, Rumelifeneri Yolu, 34450 Sarıyer, Istanbul, TurkeyCollege of Social Sciences and Humanities, Koc University, Rumelifeneri Yolu, 34450 Sarıyer, Istanbul, TurkeyHistorical document analysis systems gain importance with the increasing efforts in the digitalization of archives. Page segmentation and layout analysis are crucial steps for such systems. Errors in these steps will affect the outcome of handwritten text recognition and Optical Character Recognition (OCR) methods, which increase the importance of the page segmentation and layout analysis. Degradation of documents, digitization errors, and varying layout styles are the issues that complicate the segmentation of historical documents. The properties of Arabic scripts such as connected letters, ligatures, diacritics, and different writing styles make it even more challenging to process Arabic script historical documents. In this study, we developed an automatic system for counting registered individuals and assigning them to populated places by using a CNN-based architecture. To evaluate the performance of our system, we created a labeled dataset of registers obtained from the first wave of population registers of the Ottoman Empire held between the 1840s and 1860s. We achieved promising results for classifying different types of objects and counting the individuals and assigning them to populated places.https://www.mdpi.com/2313-433X/6/5/32page segmentationhistorical document analysisconvolutional neural networksArabic script layout analysis
collection DOAJ
language English
format Article
sources DOAJ
author Yekta Said Can
M. Erdem Kabadayı
spellingShingle Yekta Said Can
M. Erdem Kabadayı
CNN-Based Page Segmentation and Object Classification for Counting Population in Ottoman Archival Documentation
Journal of Imaging
page segmentation
historical document analysis
convolutional neural networks
Arabic script layout analysis
author_facet Yekta Said Can
M. Erdem Kabadayı
author_sort Yekta Said Can
title CNN-Based Page Segmentation and Object Classification for Counting Population in Ottoman Archival Documentation
title_short CNN-Based Page Segmentation and Object Classification for Counting Population in Ottoman Archival Documentation
title_full CNN-Based Page Segmentation and Object Classification for Counting Population in Ottoman Archival Documentation
title_fullStr CNN-Based Page Segmentation and Object Classification for Counting Population in Ottoman Archival Documentation
title_full_unstemmed CNN-Based Page Segmentation and Object Classification for Counting Population in Ottoman Archival Documentation
title_sort cnn-based page segmentation and object classification for counting population in ottoman archival documentation
publisher MDPI AG
series Journal of Imaging
issn 2313-433X
publishDate 2020-05-01
description Historical document analysis systems gain importance with the increasing efforts in the digitalization of archives. Page segmentation and layout analysis are crucial steps for such systems. Errors in these steps will affect the outcome of handwritten text recognition and Optical Character Recognition (OCR) methods, which increase the importance of the page segmentation and layout analysis. Degradation of documents, digitization errors, and varying layout styles are the issues that complicate the segmentation of historical documents. The properties of Arabic scripts such as connected letters, ligatures, diacritics, and different writing styles make it even more challenging to process Arabic script historical documents. In this study, we developed an automatic system for counting registered individuals and assigning them to populated places by using a CNN-based architecture. To evaluate the performance of our system, we created a labeled dataset of registers obtained from the first wave of population registers of the Ottoman Empire held between the 1840s and 1860s. We achieved promising results for classifying different types of objects and counting the individuals and assigning them to populated places.
topic page segmentation
historical document analysis
convolutional neural networks
Arabic script layout analysis
url https://www.mdpi.com/2313-433X/6/5/32
work_keys_str_mv AT yektasaidcan cnnbasedpagesegmentationandobjectclassificationforcountingpopulationinottomanarchivaldocumentation
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