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Falls from heights: A computer vision-based approach for safety harness detection

机译:从高处跌落:安全带检测的基于计算机视觉的方法

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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% and 95%, and the CNN models 80% and 98%, respectively. The results demonstrate that the developed method can accurately detect workers not wearing their harness. Thus, the computer vision-based approach developed can be used by construction and safety managers as a mechanism to proactively identify unsafe behavior and therefore take immediate action to mitigate the likelihood of a FFH occurring.
机译:高处坠落(FFH)是造成建筑伤亡的主要原因。然而,尽管工人已经意识到不佩戴安全带会带来的危险,但许多人忘记或故意在高空工作时不佩戴安全带。为了解决这个问题,本文开发了一种基于计算机视觉的自动化方法,该方法使用两个卷积神经网络(CNN)模型来确定工人在高空工作时执行任务时是否佩戴安全带。开发的算法是:(1)Faster-R-CNN,用于检测工人的存在; (2)用于识别线束的深层CNN模型。根据中国武汉几个建筑项目开展的活动,创建了一个高空工作人员照片数据库。然后,该数据库用于测试和培训开发的网络。 Faster R-CNN的精确度和召回率分别为99%和95%,CNN模型分别为80%和98%。结果表明,所开发的方法可以准确地检测未佩戴安全带的工人。因此,开发的基于计算机视觉的方法可被施工和安全管理人员用作主动识别不安全行为并因此立即采取行动以减轻FFH发生可能性的机制。

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