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인공지능을 활용한 지능형 기록관리 방안

Intelligent Records and Archives Management That Applies Artificial Intelligence

한국기록관리학회지 / Journal of Korean Society of Archives and Records Management, (P)1598-1487; (E)2671-7247
2017, v.17 no.4, pp.225-250
https://doi.org/10.14404/JKSARM.2017.17.4.225
김인택 (명지대학교)
안대진 (명지대학교 기록정보과학전문대학원, (주)아카이브랩 대표)
이해영 (명지대학교)
  • 다운로드 수
  • 조회수

초록

4차 산업혁명에 대한 관심이 고조되고 있다. 인공지능은 그 기반기술이며 핵심적인 기술이다. 기록관리 분야에서도 해외를 중심으로 효율적인 업무처리를 위해 인공지능이 도입되고 있는 추세이다. 본 연구에서는 먼저 인공지능의 개념을 제시 한 후, 인공지능이 태동되게 된 배경을 알아보았다, 또 인공지능의 다양한 분야에 대해 알아보고, 획기적인 사례를 중심으로 발전 과정을 살펴보았다. 다양한 영역에서 인공지능의 활용사례를 텍스트 분석, 영상인식 관련, 음성인식 관련하여 살펴보았다. 이 각각의 영역에서 기록정보서비스 측면에서의 적용 사례를 확인해보고, 지능형 기록정보서비스 모듈 구성 및 인터페이스 등 앞으로 기록관리 영역에서 가능한 활용 방안을 알아보고 제시하였다.

keywords
records and archives management, artificial intelligence, AI, text analysis, image recognition, speech recognition, intelligent records and archives information services, 기록관리, 인공지능, 텍스트 분석, 영상인식, 음성인식, 기록정보서비스

Abstract

The Fourth Industrial Revolution has become a focus of attention. Artificial intelligence (AI) is the key technology that will lead us to the industrial revolution. AI is also used to facilitate efficient workflow in records and archives management area, particularly abroad. In this study, we introduced the concept of AI and examined the background on how it rose. Then we reviewed the various applications of AI with prominent examples. We have also examined how AI is used in various areas such as text analysis, and image and speech recognition. In each of these areas, we have reviewed the application of AI from the viewpoint of records and archives management and suggested further utilization of the methods, including module and interface for intelligent records and archives information services.

keywords
records and archives management, artificial intelligence, AI, text analysis, image recognition, speech recognition, intelligent records and archives information services, 기록관리, 인공지능, 텍스트 분석, 영상인식, 음성인식, 기록정보서비스

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