Litcius/Paper detail

Workers’ Unsafe Actions When Working at Heights: Detecting from Images

Qijun Hu, Yu Bai, Leping He, Jie Huang, Haoyu Wang, Guangran Cheng

2022Sustainability13 citationsDOIOpen Access PDF

Abstract

Working at heights causes heavy casualties among workers during construction activities. Workers’ unsafe action detection could play a vital role in strengthening the supervision of workers to avoid them falling from heights. Existing methods for managing workers’ unsafe actions commonly rely on managers’ observation, which consumes a lot of human resources and impossibly covers a whole construction site. In this research, we propose an automatic identification method for detecting workers’ unsafe actions, considering a heights working environment, based on an improved Faster Regions with CNN features (Faster R-CNN) algorithm. We designed and carried out a series of experiments involving five types of unsafe actions to examine their efficiency and accuracy. The results illustrate and verify the method’s feasibility for improving safety inspection and supervision, as well as its limitations.

Topics & Concepts

Action (physics)Identification (biology)Falling (accident)Computer scienceRisk analysis (engineering)Working environmentComputer securityEngineeringBusinessPsychologyPhysicsBotanyMechanical engineeringQuantum mechanicsPsychiatryBiologyOccupational Health and Safety ResearchInfrastructure Maintenance and MonitoringTraffic and Road Safety