This work explores the potential of Transformer models focusing on the translation of ancient Egyptian hieroglyphs. We present a novel Hieroglyphic Transformer model, built upon the powerful M2M-100 multilingual translation framework and trained on a dataset we customised from the Thesaurus Linguae Aegyptiae database. Our experiments demonstrate promising results, with the model achieving significant accuracy in translating hieroglyphics into both German and English. This work holds significant implications for Egyptology, potentially accelerating the translation process and unlocking new research approaches.

Deep Learning Meets Egyptology: a Hieroglyphic Transformer for Translating Ancient Egyptian / Colonna, Angelo. - (2024), pp. 71-86. ( 1st Workshop on Machine Learning for Ancient Languages, ML4AL 2024 Thailand and online ).

Deep Learning Meets Egyptology: a Hieroglyphic Transformer for Translating Ancient Egyptian

Angelo Colonna
2024

Abstract

This work explores the potential of Transformer models focusing on the translation of ancient Egyptian hieroglyphs. We present a novel Hieroglyphic Transformer model, built upon the powerful M2M-100 multilingual translation framework and trained on a dataset we customised from the Thesaurus Linguae Aegyptiae database. Our experiments demonstrate promising results, with the model achieving significant accuracy in translating hieroglyphics into both German and English. This work holds significant implications for Egyptology, potentially accelerating the translation process and unlocking new research approaches.
2024
1st Workshop on Machine Learning for Ancient Languages, ML4AL 2024
AI; Deep Lerning; Egyptology; Egyptian Language; Hieroglyphs
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Deep Learning Meets Egyptology: a Hieroglyphic Transformer for Translating Ancient Egyptian / Colonna, Angelo. - (2024), pp. 71-86. ( 1st Workshop on Machine Learning for Ancient Languages, ML4AL 2024 Thailand and online ).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1751045
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