CNN models with attention reach 99.05% top-1 accuracy on line-level splits and 78.61% on page-disjoint splits for writer identification after expanding the labeled portion of the Muharaf historical Arabic manuscript dataset.
arXiv preprint arXiv:2410.02179 (2024)
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Controlled experiments across nine datasets show Arabic HTR maintains a 5-7 CER gap over Latin even at full data scale, with Arabic requiring more samples due to heavier-tailed character distributions and more visually similar confusions.
Joint training of CRNN and HTR-VT models across Arabic-script datasets yields lower character error rates than single-language training in low-resource regimes, reaching 9.99 CER on Persian and 14.45 on Urdu.
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