Comparison of Large Language Models and Traditional Neural Networks in Optical Character Recognition for Old Alphabets [Articol]
Date
2024
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Abstract
This study compares large language models (LLMs) and traditional neural networks (TNNs) in Optical Character Recognition (OCR) for historical alphabets. While deep learning has advanced OCR technology, recognizing old scripts remains challenging due to their complexity. LLMs, with vision capabilities, offer a novel approach by integrating visual and linguistic understanding. This research evaluates the accuracy and robustness of both models on a dataset of an ancient alphabet, highlighting the potential of LLMs to improve OCR in historical linguistics and digital preservation. The findings provide valuable insights for applying modern AI to the preservation of historical texts.
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Keywords
Large Language Models (LLMs), Traditional Neural Networks (TNNs), Optical Character Recognition (OCR), Historical Scripts, Digital Preservation, Text Recognition
Citation
CERESCU, Marius and Tudor BUMBU. Comparison of Large Language Models and Traditional Neural Networks in Optical Character Recognition for Old Alphabets. In: International Conference dedicated to the 60th anniversary of the foundation of Vladimir Andrunachievici Institute of Mathematics and Computer Science, MSU, October 10-13 2024. Chisinau: [S. n.], 2024, pp. 259-265. ISBN 978-9975-68-515-3.