DOI QR코드

DOI QR Code

딥러닝 및 영상처리 기술을 활용한 콘크리트 균열 검출 방법

A Method for Detecting Concrete Cracks using Deep-Learning and Image Processing

  • 정서영 (광운대학교 대학원 건축공학과) ;
  • 이슬기 (광운대학교 건축공학과) ;
  • 박찬일 (광운대학교 대학원 전자통신공학과) ;
  • 조수영 (광운대학교 대학원 전자통신공학과) ;
  • 유정호 (광운대학교 건축공학과)
  • 투고 : 2019.06.04
  • 심사 : 2019.11.06
  • 발행 : 2019.11.30

초록

Most of the current crack investigation work consists of visual inspection using simple measuring equipment such as crack scale. These methods involve the subjection of the inspector, which may lead to differences in the inspection results prepared by the inspector, and may lead to a large number of measurement errors. So, this study proposes an image-based crack detection method to enhance objectivity and efficiency of concrete crack investigation. In this study, YOLOv2 was used to determine the presence of cracks in the image information to ensure the speed and accuracy of detection for real-time analysis. In addition, we extracted shapes of cracks and calculated quantitatively, such as width and length using various image processing techniques. The results of this study will be used as a basis for the development of image-based facility defect diagnosis automation system.

키워드

과제정보

연구 과제 주관 기관 : 한국연구재단

참고문헌

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