作者
Weili Fang, Lieyun Ding, Hanbin Luo, Peter E.D Love, Botao Zhong
发表日期
2018/4
期刊
Automation in Construction
卷号
91
页码范围
53-61 (WoS ESI Highly Cited Paper)
出版商
Elsevier
简介
Falls from heights (FFH) are major contributors of injuries and deaths in construction. Yet, despite workers being made aware of the dangers associated with not wearing a safety harness, many forget or purposefully do not wear them when working at heights. To address this problem, this paper develops an automated computer vision-based method that uses two convolutional neural network (CNN) models to determine if workers are wearing their harness when performing tasks while working at heights. The algorithms developed are: (1) a Faster-R-CNN to detect the presence of a worker; and (2) a deep CNN model to identify the harness. A database of photographs of people working at heights was created from activities undertaken on several construction projects in Wuhan, China. The database was then used to test and train the developed networks. The precision and recall rates for the Faster R-CNN were 99 …
引用总数
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