학술논문

다중 카메라와 객체 탐지를 활용한 건설 현장 사고 감지 시스템
Accident Detection System for Construction Sites Using Multiple Cameras and Object Detection
Document Type
Article
Text
Source
The Journal of the Convergence on Culture Technology (JCCT), 10/31/2023, Vol. 9, Issue 5, p. 605-611
Subject
객체 탐지
인공지능
사고 감지
object detection
AI
accident detection
Language
한국어(KOR)
ISSN
2384-0358
Abstract
Accidents at construction sites have a very high rate of fatalities due to the nature of being prone to severe injury patients. In order to reduce the mortality rate of severely injury patients, quick response is required, and some systems that detect accidents using AI technology and cameras have been devised to respond quickly to accidents. However, since existing accident detection systems use only a single camera, there are blind spots, Thus, they cannot detect all accidents at a construction site. Therefore, in this paper, we present the system that minimizes the detection blind spot by using multiple cameras. Our implemented system extracts feature points from the images of multiple cameras with the YOLO-pose library, and inputs the extracted feature points to a Long Short Term Memory-based recurrent neural network in order to detect accidents. In our experimental result, we confirme that the proposed system shows high accuracy while minimizing detection blind spots by using multiple cameras.