Historical documents from Late Antiquity to the early Middle Ages often suffer from degraded image quality due to aging, inadequate preservation, and environmental factors, presenting significant challenges for paleographical analysis. These documents contain crucial graphical symbols representing administrative, economic, and cultural information, which are time-consuming and error-prone to interpret manually. This research investigates image processing algorithms and deep learning models for enhancing these historical documents. Using image processing techniques, we improve symbol readability and visibility, while our deep learning approach aids in reconstructing degraded content and identifying patterns. This work contributes to improving the quality of historical document analysis, particularly for graphical symbol interpretation in paleographical studies.

Enhancing Historical Documents: Deep Learning and Image Processing Approaches / Ziran Z.; Mecella M.; Marinai S.. - ELETTRONICO. - 3937:(2025), pp. 0-0. ( 21st Conference on Information and Research Science Connecting to Digital and Library Science, IRCDL 2025 ita 2025).

Enhancing Historical Documents: Deep Learning and Image Processing Approaches

Marinai S.
2025

Abstract

Historical documents from Late Antiquity to the early Middle Ages often suffer from degraded image quality due to aging, inadequate preservation, and environmental factors, presenting significant challenges for paleographical analysis. These documents contain crucial graphical symbols representing administrative, economic, and cultural information, which are time-consuming and error-prone to interpret manually. This research investigates image processing algorithms and deep learning models for enhancing these historical documents. Using image processing techniques, we improve symbol readability and visibility, while our deep learning approach aids in reconstructing degraded content and identifying patterns. This work contributes to improving the quality of historical document analysis, particularly for graphical symbol interpretation in paleographical studies.
2025
CEUR Workshop Proceedings
21st Conference on Information and Research Science Connecting to Digital and Library Science, IRCDL 2025
ita
2025
Ziran Z.; Mecella M.; Marinai S.
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1425397
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