DeepHadad: Enhancing the Readability of Ancient Northwest Semitic Inscriptions

Open Access
Authors
  • A.C. Aioanei
  • J. Klein
  • K.M. Klein ORCID logo
  • R.R. Hunziker-Rodewald
  • D.L. Michels
Publication date 2024
Host editors
  • M. Corsini
  • D. Ferdani
  • A. Kuijper
  • H. Kutlu
Book title Eurographics Workshop on Graphics and Cultural Heritage
ISBN
  • 9783038682486
Event GCH 2024
Number of pages 6
Publisher Goslar: The Eurographics Association
Organisations
  • Faculty of Humanities (FGw) - Amsterdam Institute for Humanities Research (AIHR) - Amsterdam School of Historical Studies (ASH)
Abstract
We present DeepHadad, a novel deep learning approach to improve the readability of severely damaged ancient Northwest Semitic inscriptions. By leveraging concepts of displacement maps and image-to-image translation, DeepHadad effectively recovers text from barely recognizable inscriptions, such as the one on the Hadad statue. A main challenge is the lack of pairs of well-preserved and damaged glyphs as training data since each available glyph instance has a unique shape and is not available in different states of erosion. We overcome this issue by generating synthetic training data through a simulated erosion process, on which we then train a neural network that successfully generalizes to real data. We demonstrate significant improvements in readability and historical authenticity compared to existing methods, opening new avenues for AI-assisted epigraphic analysis.
Document type Conference contribution
Language English
Published at https://doi.org/10.2312/gch.20241242
Downloads
DeepHadad (Final published version)
Permalink to this page
Back