Segmentation of Maya hieroglyphs through fine-tuned foundation models
FNU Shivam, Megan Leight, Mary Kate Kelly, Claire Davis, Kelsey, Clodfelter, Jacob Thrasher, Yenumula Reddy, Prashnna Gyawali

TL;DR
This paper demonstrates how fine-tuning foundational AI models on expert-curated datasets can significantly improve the segmentation of Maya hieroglyphs, aiding cultural preservation and accessibility.
Contribution
It introduces a fine-tuning approach for foundational models on a curated dataset to enhance Maya hieroglyph segmentation accuracy.
Findings
Fine-tuning improves segmentation performance.
Expert-curated datasets are valuable for model training.
Open-sourcing datasets encourages future research.
Abstract
The study of Maya hieroglyphic writing unlocks the rich history of cultural and societal knowledge embedded within this ancient civilization's visual narrative. Artificial Intelligence (AI) offers a novel lens through which we can translate these inscriptions, with the potential to allow non-specialists access to reading these texts and to aid in the decipherment of those hieroglyphs which continue to elude comprehensive interpretation. Toward this, we leverage a foundational model to segment Maya hieroglyphs from an open-source digital library dedicated to Maya artifacts. Despite the initial promise of publicly available foundational segmentation models, their effectiveness in accurately segmenting Maya hieroglyphs was initially limited. Addressing this challenge, our study involved the meticulous curation of image and label pairs with the assistance of experts in Maya art and history,…
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Taxonomy
TopicsImage Processing and 3D Reconstruction · Handwritten Text Recognition Techniques · 3D Surveying and Cultural Heritage
MethodsLib
