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Design for Access Control System based on Voice Recognition for Infectious Disease Prevention

전염성 확산 차단을 위한 음성인식 기반의 출입통제시스템 설계

  • Mun, Hyung-Jin (Dept. of Information and Communication Engineering, Sungkyul University) ;
  • Han, Kun-Hee (Division of ICT, Baekseok University)
  • 문형진 (성결대학교 정보통신공학과) ;
  • 한군희 (백석대학교 ICT학부)
  • Received : 2020.05.15
  • Accepted : 2020.07.20
  • Published : 2020.07.28

Abstract

WHO declared a global pandemic on March 11th for Corona 19. However, there is a situation where you have to go to building for face-to-face education or seminars for economic and social activities. The first check method of COVID-19 infection is to measure body temperature, so the primary entrance and exit is blocked for near-field body temperature measurement. However, since it is troublesome to check directly, thermal camera is installed at the entrance of the building, and body temperature is measured indirectly using the infrared camera to control access. In case of middle and high schools, universities, and lifelong education center, we need a system that is possible to interoperate with attendance checks and automatically recognizes whether to wear masks and can authenticate students. We proposed the system that is to confirm whether to wear a mask with a camera that is embedded in a smart mirror, and that authenticates the user through voice recognition of the user who wants to enter the building by using voice recognition technology and determines whether to enter them or not. The proposed system can check attendance if it is linked with near-field temperature measurement and attendance check APP of student's smart phone.

WHO는 3월 11일 코로나 19에 대한 세계적 대유행, 팬더믹(pandemic)을 선언하였다. 하지만 경제 및 사회적 활동으로 인하여 면대면 교육이나 세미나를 위해 건물 출입을 해야하는 상황이 발생한다. 코로나 19의 감염여부의 1차 체크 방법으로 체온 측정이 있어 근거리 체온 측정을 통해 1차적인 출입 차단을 실시하고 있다. 그로 인해 일일이 직접 체크하는 것이 번거롭기 때문에 열화상 카메라를 건물 입구에 설치하고, 적외선 카메라를 이용하여 간접적으로 체온을 측정하여 출입 통제를 하고 있다. 중고교나 대학 및 평생교육의 경우 출석체크 등과의 연동이 가능하고, 마스크 착용 여부를 자동으로 인식하고, 수강생의 인증이 가능한 시스템이 필요하다. 제안시스템은 스마트미러에 탐재된 카메라로 마스크 착용 여부를 확인하고, 음성인식 기술을 활용하여 건물안으로 들어오고자 하는 사용자의 목소리 인식을 통해 사용자를 인증하고, 출입 여부를 결정하는 시스템을 제안하고자 한다. 제안 시스템은 근거리 온도 측정과 수강생의 스마트 폰의 출석체크 APP와 연동을 하게 되면 출석체크도 가능하다.

Keywords

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