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종이기록 데이터화를 위한 AI-OCR 적용 사례연구

A Case Study on the Application of AI-OCR for Data Transformation of Paper Records

  • 투고 : 2022.08.14
  • 심사 : 2022.09.14
  • 발행 : 2022.09.30

초록

현대 업무환경 변화의 중심은 디지털 기술이라고 할 수 있다. 특히 업무관리시스템 및 문서생산시스템에서 생산한 기록으로 업무를 증명하는 일반적인 공공기관에서 기록관리체계는 업무환경 그 자체이기도 하다. 김포시는 제4차 산업혁명기술 시대에 선제적으로 대응하고 업무환경 혁신을 이루기 위해 한국지능정보사회진흥원(NIA)의 2021년 공공부문 클라우드 선도 프로젝트 사업에 지원하였고 선도 기관으로 확정되어 3억 3천의 지원을 받아 공공 클라우드 기반의 AI-OCR을 통한 기록물 검색 및 활용기능 강화 프로젝트를 진행하였다. 이를 통해 규격화된 색인 값에 의존한 검색과 이미지 열람에 그치던 비전자기록의 한계를 넘어 데이터화 하였고 AI-OCR이라는 신기술 적용으로 98%의 인식률을 구현하였다. 공공기관에 디지털 기술을 사용하여 업무 효율화, 생산성 향상, 개발비용 절감, 내·외부 이용자들의 기록관리 서비스 수준의 제고를 이루었기에 신기술과 기록물관리의 결합 사례연구를 통해 기록관리 분야 본연의 전문성을 높이는 방향과 업무환경 혁신 구현 사례를 공유하고자 한다.

It can be said that digital technology is at the center of the change in the modern work environment. In particular, in general public institutions that prove their work with records produced by business management systems and document production systems, the record management system is also the work environment itself. Gimpo City applied for the 2021 public cloud leading project of the National Information Society Agency (NIA) to proactively respond to the 4th industrial revolution technology era and implemented a public cloud-based AI-OCR technology enhancement project with 330 million won in support of 330 million won. Through this, it was converted into data beyond the limitations of non-electronic records limited to search and image viewing that depend on standardized index values. In addition, a 98% recognition rate was realized by applying a new technology called AI-OCR. Since digital technology has been used to improve work efficiency, productivity, development cost, and record management service levels of internal and external users, we would like to share the direction of enhancing expertise in the record management and implementation of work environment innovation.

키워드

참고문헌

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