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Chapter Deep Learning-Based Pose Estimation for Identifying Potential Fall Hazards of Construction Worker

Authors :
Lee, Seungsoo
Choi, Woonggyu
Park, Minsoo
Jeon, Yuntae
Quoc Tran, Dai
Park, Seunghee
Publication Year :
2023
Publisher :
Florence: Firenze University Press, 2023.

Abstract

Fall from height (FFH) is one of the major causes of injury and fatalities in construction industry. Deep learning-based computer vision for safety monitoring has gained attention due to its relatively lower initial cost compared to traditional sensing technologies. However, a single detection model that has been used in many related studies cannot consider various contexts at the construction site. In this paper, we propose a deep learning-based pose estimation approach for identifying potential fall hazards of construction workers. This approach can relatively increase the accuracy of estimating the distance between the worker and the fall hazard area compared to the existing methods from the experimental results. Our proposed approach can improve the robustness of worker location estimation compared to existing methods in complex construction site environments with obstacles that can obstruct the worker's position. Also, it is possible to provide information on whether a worker is aware of a potential fall risk area. Our approach can contribute to preventing FFH by providing access information to fall risk areas such as construction site openings and inducing workers to recognize the risk area even in Inattentional blindness (IB) situations

Details

Language :
English
ISBN :
979-1-221-50289-3
ISSN :
27045846
ISBNs :
9791221502893
Database :
OAPEN Library
Notes :
ONIX_20240402_9791221502893_39, , https://books.fupress.com/doi/capitoli/979-12-215-0289-3_62
Publication Type :
eBook
Accession number :
edsoap.20.500.12657.89070
Document Type :
chapter
Full Text :
https://doi.org/10.36253/979-12-215-0289-3.62