Ferdous Md, Ahsan Sk Md Masudul
Department of Computer Science and Engineering, Khulna University of Engineering & Technology (KUET), Khulna, Bangladesh.
PeerJ Comput Sci. 2022 Jun 17;8:e999. doi: 10.7717/peerj-cs.999. eCollection 2022.
With numerous countermeasures, the number of deaths in the construction industry is still higher compared to other industries. Personal Protective Equipment (PPE) is constantly being improved to avoid these accidents, although workers intentionally or unintentionally forget to use such safety measures. It is challenging to manually run a safety check as the number of co-workers on a site can be large; however, it is a prime duty of the authority to provide maximum protection to the workers on the working site. From these motivations, we have created a computer vision (CV) based automatic PPE detection system that detects various types of PPE. This study also created a novel dataset named CHVG (four colored hardhats, vest, safety glass) containing eight different classes, including four colored hardhats, vest, safety glass, person body, and person head. The dataset contains 1,699 images and corresponding annotations of these eight classes. For the detection algorithm, this study has used the You Only Look Once (YOLO) family's anchor-free architecture, YOLOX, which yields better performance than the other object detection models within a satisfactory time interval. Moreover, this study found that the YOLOX-m model yields the highest mean average precision (mAP) than the other three versions of the YOLOX.
尽管采取了众多对策,但与其他行业相比,建筑业的死亡人数仍然更高。个人防护装备(PPE)一直在不断改进以避免此类事故,尽管工人有意或无意地忘记使用这些安全措施。由于工作现场的同事数量可能很多,手动进行安全检查具有挑战性;然而,为工作现场的工人提供最大程度的保护是当局的首要职责。出于这些动机,我们创建了一个基于计算机视觉(CV)的自动PPE检测系统,该系统可以检测各种类型的PPE。本研究还创建了一个名为CHVG(四种颜色的安全帽、背心、安全眼镜)的新颖数据集,其中包含八个不同的类别,包括四种颜色的安全帽、背心、安全眼镜、人体和人头。该数据集包含1699张图像以及这八个类别的相应注释。对于检测算法,本研究使用了You Only Look Once(YOLO)系列的无锚框架构YOLOX,它在令人满意的时间间隔内比其他目标检测模型具有更好的性能。此外,本研究发现,YOLOX-m模型比YOLOX的其他三个版本具有最高的平均精度均值(mAP)。