Deep Aramaic: Towards a synthetic data paradigm enabling machine learning in epigraphy

Open Access
Authors
  • A.C. Aioanei
  • R.R. Hunziker-Rodewald
  • K.M. Klein ORCID logo
  • D.L. Michels
Publication date 2024
Journal PLoS ONE
Article number e0299297
Volume | Issue number 19 | 4
Number of pages 29
Organisations
  • Faculty of Humanities (FGw) - Amsterdam Institute for Humanities Research (AIHR) - Amsterdam School of Historical Studies (ASH)
Abstract
Epigraphy is witnessing a growing integration of artificial intelligence, notably through its subfield of machine learning (ML), especially in tasks like extracting insights from ancient inscriptions. However, scarce labeled data for training ML algorithms severely limits current techniques, especially for ancient scripts like Old Aramaic. Our research pioneers an innovative methodology for generating synthetic training data tailored to Old Aramaic letters. Our pipeline synthesizes photo-realistic Aramaic letter datasets, incorporating textural features, lighting, damage, and augmentations to mimic real-world inscription diversity. Despite minimal real examples, we engineer a dataset of 250 000 training and 25 000 validation images covering the 22 letter classes in the Aramaic alphabet. This comprehensive corpus provides a robust volume of data for training a residual neural network (ResNet) to classify highly degraded Aramaic letters. The ResNet model demonstrates 95% accuracy in classifying real images from the 8th century BCE Hadad statue inscription. Additional experiments validate performance on varying materials and styles, proving effective generalization. Our results validate the model’s capabilities in handling diverse real-world scenarios, proving the viability of our synthetic data approach and avoiding the dependence on scarce training data that has constrained epigraphic analysis. Our innovative framework elevates interpretation accuracy on damaged inscriptions, thus enhancing knowledge extraction from these historical resources.
Document type Article
Language English
Published at https://doi.org/10.1371/journal.pone.0299297
Other links http://github.com/aioaneia/deep-aramaic
Downloads
journal.pone.0299297 (Final published version)
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