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Journal Article CATS: cultural-heritage classification using LLMs and distribute model
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Authors
Hyerin Hwang, Chan-Woo Park, Hee-Kwon Kim, Jae-Ho Lee
Issue Date
2025-03
Citation
HERITAGE SCIENCE, v.13, pp.1-13
ISSN
2050-7445
Publisher
SPRINGER
Language
English
Type
Journal Article
DOI
https://dx.doi.org/10.1038/s40494-025-01621-1
Abstract
In this paper, we introduce CATS (Cultural-heritage Advanced Translation Systems), a generative model applied to creating images for classification and exploring relationships among cultural heritage. We aimed to address the issue where large language models (LLMs) fail to generate appropriate sentences due to the limited training on classical Korean language, and the problem where text-to-image models trained on Korean language do not produce accurate sentences when using Korean words as they are. To solve this problem, a large language model was used to translate historical content containing classical Korean words into English sentences, which were then used as input for the text-to-image generation model. We found that the generation model using the translated English text produced more accurate and consistent images compared to the model using the original Korean text. Consequently, this approach offers highly convenient visual information for users and administrators at a low cost through the use of open-source models. Therefore, we propose the potential of a system that leverages generated images to facilitate the search and extraction of relevant information.
KSP Keywords
Cultural Heritage, Generation model, Generative models, Korean language, Low-cost, image generation, image models, language models, open source, relevant information, visual information
This work is distributed under the term of Creative Commons License (CCL)
(CC BY NC ND)
CC BY NC ND