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Fast Personal Protective Equipment Detection for Real Construction Sites Using Deep Learning Approaches

机译:使用深度学习方法的真实施工网站的快速个人防护设备检测

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摘要

The existing deep learning-based Personal Protective Equipment (PPE) detectors can only detect limited types of PPE and their performance needs to be improved, particularly for their deployment on real construction sites. This paper introduces an approach to train and evaluate eight deep learning detectors, for real application purposes, based on You Only Look Once (YOLO) architectures for six classes, including helmets with four colours, person, and vest. Meanwhile, a dedicated high-quality dataset, CHV, consisting of 1330 images, is constructed by considering real construction site background, different gestures, varied angles and distances, and multi PPE classes. The comparison result among the eight models shows that YOLO v5x has the best mAP (86.55%), and YOLO v5s has the fastest speed (52 FPS) on GPU. The detection accuracy of helmet classes on blurred faces decreases by 7%, while there is no effect on other person and vest classes. And the proposed detectors trained on the CHV dataset have a superior performance compared to other deep learning approaches on the same datasets. The novel multiclass CHV dataset is open for public use.
机译:现有的基于深度学习的个人防护设备(PPE)探测器只能检测有限类型的PPE,并且它们需要改进其性能,特别是在实际施工地点的部署。本文介绍了一种培训和评估八个深度学习探测器的方法,用于真正的应用目的,基于您只有六个类的一次(YOLO)架构,包括带有四种颜色,人和背心的头盔。同时,通过考虑真正的施工现场背景,不同的手势,多个角度和距离和多PPE类,构建专用高质量数据集,由1330个图像组成的CHV。八种模型中的比较结果表明,YOLO V5X具有最佳地图(86.55%),而YOLO V5S在GPU上具有最快的速度(52 FPS)。模糊面上的头盔课程的检测精度降低了7%,而对其他人和背心类没有影响。与在CHV数据集上训练的建议检测器与同一数据集上的其他深度学习方法相比具有卓越的性能。新颖的Multiclass CHV数据集是公共使用的开放式。

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