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Towards on-site hazards identification of improper use of personal protective equipment using deep learning-based geometric relationships and hierarchical scene graph

机译:朝着现场危害使用深度学习的几何关系和分层场景图识别不当使用个人防护设备的使用不当使用

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摘要

Construction sites are one of the most perilous environments where many potential hazards may occur. Personal Protective Equipment (PPE) is an important safety measure used to protect construction workers from accidents. However, PPE usage is not strictly enforced among workers due to all kinds of reasons. This paper proposes a unified model, which enjoys both perceptual and reasoning capabilities, to help to facilitate the safety monitoring work of construction workers to ensure PPE is appropriately used. In contrast to commonly used object detection-based identification approaches, this paper provides a novel solution to identify improper use of PPE by the combination of deep learning-based object detection and individual detection using geometric relationships analysis. Moreover, this paper presents a hierarchical scene graph structure that enables the conditional reasoning for automated hazards identification to address different requirements in each zone of construction sites. The experimental results demonstrate that the proposed approach was capable of identifying the hazards of improper use of PPE with high precision (94.47%) and recall rate (83.20%) while ensuring real-time performance (15.62 FPS on average).
机译:建筑工地是可能发生许多潜在危险的危险环境之一。个人防护设备(PPE)是一种重要的安全措施,用于保护建筑工人免受事故。但是,由于各种原因,工人之间并未严格执行PPE使用情况。本文提出了一个统一的模型,它享有感知和推理能力,有助于促进建筑工人的安全监测工作,以确保PPE适当使用。与常用的基于对象检测的识别方法相比,本文提供了一种新的解决方案,用于通过使用几何关系分析的基于深度学习的物体检测和单独检测的组合来识别PPE不当使用。此外,本文提出了一种分层场景图结构,使自动危险的条件推理能够识别,以解决每个建筑地点的每个区域的不同要求。实验结果表明,该方法能够鉴定具有高精度(94.47%)和召回率(83.20%)的PPE不当使用的危害,同时确保实时性能(平均为15.62 FPS)。

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