Research on Smart Site Safety Hazard Warning Technology Based on Yolov5
DOI: 10.23977/fcvpr.2023.010102 | Downloads: 31 | Views: 1920
Author(s)
Yuanyuan Wang 1,2, Jiahui Cao 1, Mingran Qi 1, Sisi Liu 1, Xiuchuan Chen 1
Affiliation(s)
1 School of Computer and Software Engineering, Huaiyin Institute of Technology, Huai'an, 223001, China
2 Jiangsu Provincial Engineering Laboratory of Mobile Interconnection Technology for Internet of Things, Huai'an, 223001, China
Corresponding Author
Yuanyuan WangABSTRACT
Smart Site is an emerging construction industry project management concept, whose main feature is the integration of modern information technology means to help construction safety. The construction industry is a safety accident-prone industry, and due to its complexity and specificity in the production process, it is difficult to truly conduct real-time inspection of safety hazards at construction sites by relying solely on supervisory and managerial safety officers and manual inspections.Aiming at the safety of construction site workers nowadays, in order to reduce potential hazards and considering the poor adaptability and high false detection rate of current fall detection methods, a technical study of fall detection at smart construction sites based on target detection is proposed. This study uses a home-made web public image dataset, the runtime window is optimised using PyQt5 GUI, the algorithm framework uses Yolo v5 training model, and the trained model achieves the recognition of different scenes and different poses of falls, providing a certain code theoretical basis and feasible model support for the development of a system related to abnormal behaviour detection of construction site workers. The experimental results show that the method proposed in this experiment has high accuracy in human fall detection, providing a certain code theoretical basis and feasibility model support for the development of the system related to abnormal behaviour detection of construction site workers in terms of accuracy of measurement, which is more suitable for construction units.
KEYWORDS
Smart site, behaviour recognition, deep learning, Yolov5, PyQt5CITE THIS PAPER
Yuanyuan Wang, Jiahui Cao, Mingran Qi, Sisi Liu, Xiuchuan Chen, Research on Smart Site Safety Hazard Warning Technology Based on Yolov5. Frontiers in Computer Vision and Pattern Recognition (2023) Vol. 1: 9-16. DOI: http://dx.doi.org/10.23977/fcvpr.2023.010102.
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