Hazardous Behavior Identification Based on BIM and AutoML Applied to Prefabricated Construction

Nairui Hou
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Abstract

With the continuous development of China’s construction projects, safety hazards have emerged endlessly. Safe and standard construction practices are essential in construction projects. In recent years, construction safety accidents caused by construction workers not wearing helmets correctly and safety accidents caused by workers smoking and igniting flammable materials to start site fires have accounted for a large proportion of the safety accidents that have occurred on major construction sites. However, traditional manual supervision is time-consuming, inefficient, subjective, and sometimes challenged by conflicts of interest. Over the years, deep learning-based target object detection has achieved satisfactory results, but the complex deep learning setup is not easily mastered by construction personnel. Therefore, it is of great practical importance to prevent and reduce construction safety accidents by automatically detecting behavioral norms for personnel entering job sites. To this end, this paper presents an automated machine learning (AutoML) framework for helmet detection and smoking recognition. This paper aims to benchmark the AutoML algorithm for helmet detection and smoking. The final results of the experiments show that for helmets, AutoML could achieve 99.0% precision, 91.89% recall, and 99.24% mAP, which demonstrates the usability of AutoML in the construction datasets.
基于BIM和AutoML的装配式建筑危险行为识别
随着中国建设工程的不断发展,安全隐患层出不穷。在建筑工程中,安全和规范的施工方法是必不可少的。近年来,在各大施工现场发生的安全事故中,因施工人员未正确佩戴安全帽引起的施工安全事故和因施工人员吸烟、引燃易燃材料引发现场火灾引起的安全事故占了很大比例。然而,传统的人工监督费时、低效、主观,有时还会受到利益冲突的挑战。多年来,基于深度学习的目标物体检测取得了令人满意的效果,但复杂的深度学习设置并不容易被施工人员掌握。因此,对进入施工现场的人员行为规范进行自动检测,对预防和减少施工安全事故具有重要的现实意义。为此,本文提出了一种用于头盔检测和吸烟识别的自动机器学习(AutoML)框架。本文旨在对头盔检测和吸烟的AutoML算法进行基准测试。最终的实验结果表明,对于头盔,AutoML可以达到99.0%的准确率、91.89%的召回率和99.24%的mAP,证明了AutoML在建筑数据集上的可用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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