A deep learning based system for writer identification in handwritten Arabic historical manuscripts

被引:0
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作者
Michel Chammas
Abdallah Makhoul
Jacques Demerjian
Elie Dannaoui
机构
[1] University of Balamand,Digital Humanities Center
[2] Université de Bourgogne Franche-Comté,Femto
[3] Lebanese University,ST Institute, UMR CNRS 6174
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关键词
Writer identification; Historical documents; Artificial intelligence; Document analysis; Arabic manuscripts;
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摘要
Determining the writer or transcriber of historical Arabic manuscripts has always been a major challenge for researchers in the field of humanities. With the development of advanced techniques in pattern recognition and machine learning, these technologies have been applied to automate the extraction of paleographical features in order to solve this issue. This paper presents a baseline system for writer identification, tested on a Historical Arabic dataset of 11610 single and double folio images. These texts were extracted from a unique collection of 567 Historical Arabic Manuscripts available at the Balamand Digital Humanities Center. A survey has been conducted on the available Arabic datasets and previously proposed techniques and algorithms. The Balamand dataset presents an important challenge due to the geo-historical identity of manuscripts and their physical conditions. An advanced Deep Learning system was developed and tested on three different Latin and Arabic datasets: ICDAR19, ICFHR20 and KHATT, before testing it on the Balamand dataset. The system was compared with many other systems and it has yielded a state-of-the-art performance on the new challenging images with 95.2% mean Average Precision (mAP) and 98.1% accuracy.
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页码:30769 / 30784
页数:15
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