Computer Vision for Safety Management in the Steel Industry

AI Pub Date : 2024-07-19 DOI:10.3390/ai5030058
Roy Lan, I. Awolusi, Jiannan Cai
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Abstract

The complex nature of the steel manufacturing environment, characterized by different types of hazards from materials and large machinery, makes the need for objective and automated monitoring very critical to replace the traditional methods, which are manual and subjective. This study explores the feasibility of implementing computer vision for safety management in steel manufacturing, with a case study implementation for automated hard hat detection. The research combines hazard characterization, technology assessment, and a pilot case study. First, a comprehensive review of steel manufacturing hazards was conducted, followed by the application of TOPSIS, a multi-criteria decision analysis method, to select a candidate computer vision system from eight commercially available systems. This pilot study evaluated YOLOv5m, YOLOv8m, and YOLOv9c models on 703 grayscale images from a steel mini-mill, assessing performance through precision, recall, F1-score, mAP, specificity, and AUC metrics. Results showed high overall accuracy in hard hat detection, with YOLOv9c slightly outperforming others, particularly in detecting safety violations. Challenges emerged in handling class imbalance and accurately identifying absent hard hats, especially given grayscale imagery limitations. Despite these challenges, this study affirms the feasibility of computer vision-based safety management in steel manufacturing, providing a foundation for future automated safety monitoring systems. Findings underscore the need for larger, diverse datasets and advanced techniques to address industry-specific complexities, paving the way for enhanced workplace safety in challenging industrial environments.
计算机视觉在钢铁行业安全管理中的应用
钢铁制造环境复杂,材料和大型机械会带来不同类型的危险,因此需要客观和自动化的监控来取代传统的人工和主观方法。本研究探讨了在钢铁制造行业实施计算机视觉安全管理的可行性,并以自动检测硬礼帽为案例进行了研究。研究结合了危险特征描述、技术评估和试点案例研究。首先,对钢铁制造业的危险性进行了全面审查,然后应用多标准决策分析方法 TOPSIS,从八个市售系统中选择了一个候选计算机视觉系统。这项试点研究评估了 YOLOv5m、YOLOv8m 和 YOLOv9c 模型在 703 幅小型钢厂灰度图像上的表现,通过精确度、召回率、F1 分数、mAP、特异性和 AUC 指标进行评估。结果表明,硬礼帽检测的总体准确率很高,YOLOv9c 略胜一筹,尤其是在检测安全违规方面。在处理类别不平衡和准确识别不存在的硬礼帽方面存在挑战,特别是考虑到灰度图像的局限性。尽管存在这些挑战,但本研究证实了基于计算机视觉的安全管理在钢铁制造业中的可行性,为未来的自动安全监控系统奠定了基础。研究结果强调,需要更大、更多样的数据集和先进技术来解决特定行业的复杂性,从而为在具有挑战性的工业环境中加强工作场所安全铺平道路。
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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AI
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