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Examples of AI Technology Applications in the Field of Cultural Heritage Record Management -Focusing on "Finding Cultural Heritage - ZOOM"-

문화유산 기록관리 분야 AI기술 적용 사례 -'문화유산 찾아-ZOOM'을 중심으로-

  • Received : 2024.07.18
  • Accepted : 2024.08.22
  • Published : 2024.08.31

Abstract

This study explores the integration of cutting-edge technology with records management, aiming to create new value not only in work processes but also in record information services. The research focuses on the case of constructing an "AI-based cultural heritage research record learning data and search system," carried out by the National Research Institute of Cultural Heritage (NRICH) Archives, and analyzes user satisfaction results. "Discovering Cultural Heritage with ZOOM" is a system designed to proactively predict research data demand by constructing big data (learning data) from images (675,338 items) contained in 1,421 volumes of publications in the cultural heritage field, spanning from 1973 to the present, and simultaneously presenting 50 similar images. This initiative aims to foster change and development in the field of records management and cultural heritage in response to the Fourth Industrial Revolution's advanced technologies. It is expected to provide valuable information to researchers, practitioners, and the general public alike.

본고는 국립문화유산연구원 기록관에서 진행해온 'AI기반의 문화유산 연구기록물 학습데이터 및 검색시스템 구축' 사례를 통해 최신 첨단기술과 기록관리 분야의 접목이 업무 뿐 아니라 기록정보서비스에 새로운 가능성을 창출할 수 있을 것인지에 대한 적용방안 및 추진과정을 소개하고 있다. '문화유산 찾아-ZOOM'은 1973년부터 현재까지 문화유산 분야에서 발간한 간행물에 수록된 이미지를 학습데이터로 구축하여, 유사 이미지를 동시에 제시함으로써 연구 자료에 대한 사전 수요 예측이 가능하도록 선제적으로 제공하고 있는 시스템이다. 4차 산업혁명으로 인한 첨단기술과 기록관리 분야에 새로운 변화와 발전을 도모하고자 시도한 사례로, 기록관리, 문화유산 분야 연구자들 뿐만 아니라, 실무자와 일반대중에게도 유용한 정보로 활용되기를 바란다.

Keywords

References

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