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Computer vision for behaviour-based safety in construction: A review and future directions

机译:建筑中基于行为的安全的计算机视觉:回顾与未来方向

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摘要

The process of identifying and bringing to the fore people's unsafe behaviour is a core function of implementing a behaviour-based safety (BBS) program in construction. This can be a labour-intensive and challenging process but is needed to enable people to reflect and learn about how their unsafe actions can jeopardise not only their safety but that of their co-workers. With advances being made in computer vision, the capability exists to automatically capture and identify unsafe behaviour and hazards in real-time from two-dimensional (2D) digital images/videos. The corollary developments in computer vision have stimulated a wealth of research in construction to examine its potential application to practice. Hindering the application of computer vision in construction has been its inability to accurately, and generalise the detection of objects. To address this shortcoming, developments in deep learning have provided computer vision with the ability to improve the accuracy, reliability and ability to generalise object detection and therefore its usage in construction. In this paper we review the developments of computer vision studies that have been used to identify unsafe behaviour from 2D images that arises on construction sites. Then, in light of advances made with deep learning, we examine and discuss its integration with computer vision to support BBS. We also suggest that future computer-vision research should aim to support BBS by being able to: (1) observe and record unsafe behaviour; (2) understand why people act unsafe behaviour; (3) learn from unsafe behaviour; and (4) predict unsafe behaviour.
机译:识别和突出人们的不安全行为的过程是在建筑中实施基于行为的安全(BBS)程序的核心功能。这可能是一个劳动密集型且具有挑战性的过程,但使人们能够反思并了解他们的不安全行为如何不仅危害他们的安全,而且危害其同事的安全,也是必需的。随着计算机视觉技术的进步,可以从二维(2D)数字图像/视频中实时自动捕获和识别不安全的行为和危害。计算机视觉的必然发展刺激了建筑方面的大量研究,以检验其在实践中的潜在应用。阻碍了计算机视觉在建筑中的应用的一直是其无法准确地进行对象检测的普遍性。为了解决这个缺点,深度学习的发展为计算机视觉提供了提高准确性,可靠性和泛化对象检测的能力,因此可以在建筑中使用。在本文中,我们回顾了计算机视觉研究的发展,这些研究已用于从建筑工地上出现的2D图像中识别不安全行为。然后,根据深度学习的进展,我们研究和讨论其与计算机视觉的集成以支持BBS。我们还建议,未来的计算机视觉研究应通过以下方面来支持BBS:(1)观察和记录不安全的行为; (2)了解人们为什么采取不安全的行为; (3)学习不安全行为; (4)预测不安全行为。

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  • 来源
    《Advanced engineering informatics 》 |2020年第1期| 100980.1-100980.13| 共13页
  • 作者单位

    School of Civil Engineering and Mechanics Huazhong University of Science and Technology Wuhan Hubei 430074 China Hubei Engineering Research Center for Virtual Safe and Automated Construction Wuhan Hubei 430074 China School of Civil and Mechanical Engineering Curtin University GPO Box U1987 Perth Western Australia 6845 Australia Department of Civil Engineering and Engineering Mechanics Columbia University New York 10027 USA;

    School of Civil and Mechanical Engineering Curtin University GPO Box U1987 Perth Western Australia 6845 Australia;

    School of Civil Engineering and Mechanics Huazhong University of Science and Technology Wuhan Hubei 430074 China Hubei Engineering Research Center for Virtual Safe and Automated Construction Wuhan Hubei 430074 China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Behaviour-based safety; Unsafe behaviour; Computer vision; Deep learning; Convolutional neural network;

    机译:基于行为的安全性;不安全行为;计算机视觉;深度学习;卷积神经网络;

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