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Machine Learning-Based Risk Analysis for Construction Worker Safety from Ubiquitous Site Photos and Videos

机译:基于机器学习的建筑工人安全风险分析来自普遍存在的网站和视频

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This paper proposes a new method for single-worker severity level prediction from already collected site images and video clips. Onsite safety observers often assess workers' severity levels during construction activities. While risk analysis is key to improving long-term construction site safety, omnipresent monitoring is still time-consuming and costly to implement. The recent growth of visual data captured actively on construction sites has opened a new opportunity to increase the frequency of worker safety monitoring. This paper shows that a comprehensive vision-based assessment is the most informative to automatically infer worker severity level from images. Efficient computer vision models are presented to conduct this risk analysis. The method is validated on a challenging image dataset first of its kind. Specifically, the proposed method detects and evaluates the worker state from visual data, defined by (1) worker body posture, (2) the usage of personal protective equipment, (3) worker interactions with tools and materials, (4) the construction activity being performed, and (5) the presence of surrounding workplace hazards. To estimate the worker state, a multitasked recognition model is introduced that recognizes objects, activity, and keypoints from visual data simultaneously, taking 36.6% less time and 40.1% less memory while keeping comparably performances compared to a system running individual models for each subtask. Worker activity recognition is further improved with a spatio-temporal graph neural network model using recognized per-frame worker activity, detected bounding boxes of tools and materials, and estimated worker poses. Finally, severity levels are predicted by a trained classifier on a dataset of images of construction workers accompanied with ground truth severity level annotations. In the test dataset assembled from real-world projects, the severity level prediction model achieves 85.7% cross-validation accuracy in a bricklaying task and 86.6% cross-validation accuracy for a plastering task, demonstrating the potential for near real-time worker safety detection and severity assessment. (C) 2021 American Society of Civil Engineers.
机译:本文提出了从已经收集的网站图像和视频剪辑的单人级别级别预测的新方法。现场安全观察员经常在施工活动期间评估工人的严重程度。虽然风险分析是提高长期建造现场安全的关键,但无所不在的监测仍然耗时,实现昂贵。最近在建筑工地积极捕获的视觉数据的增长已经开辟了增加工人安全监测频率的新机会。本文表明,基于视觉的视觉评估是自动从图像自动推断工人严重程度的最佳信息。提出了高效的计算机视觉模型来进行这种风险分析。首先在具有挑战性的图像数据集上验证该方法。具体地,所提出的方法从视觉数据检测和评估由(1)工作体姿势的视觉数据,(2)个人防护设备的使用,(3)与工具和材料的工人交互,(4)施工活动正在进行,(5)存在周围的工作场所危险。为了估计工人状态,引入了一个多任务识别模型,其同时识别来自视觉数据的对象,活动和关键点,与每个子任务运行各个模型的系统相比,保持比较较少的时间和40.1%的存储器。使用识别的每帧工作人员活动的时空图形神经网络模型进一步改善了工作人员活动识别,检测到的工具和材料的边界框,以及估计工人姿势。最后,培训的分类器在建筑工人的图像数据集上预测严重程度,伴随着地面真理严重性级别注释。在从现实世界项目组装的测试数据集中,严重程度的预测模型在砌砖任务中实现了85.7%的交叉验证精度和涂抹任务的86.6%的交叉验证精度,展示了近实时工作者安全检测的可能性和严重程度评估。 (c)2021年美国土木工程师协会。

著录项

  • 来源
    《Journal of Computing in Civil Engineering 》 |2021年第6期| 04021020.1-04021020.19| 共19页
  • 作者单位

    Univ Illinois Dept Civil & Environm Engn 205 North Mathews Ave Urbana IL 61801 USA;

    Univ Illinois Civil Engn Comp Sci & Technol Entrepreneurship 205 North Mathews Ave Urbana IL 61801 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
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