工业安全帽检测:基于 CNN 的创新分类方法

Febro Herdyanto, Muhamad Fatchan, Wahyu Hadikristanto
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摘要

本研究介绍了一个基于 CNN 的模型的开发和评估,该模型用于检测工业环境中的安全头盔。该模型利用来自 GitHub 的数据集(其中包括在各种工业环境中佩戴安全头盔的个人图像),使用 YOLOv8 架构进行了 100 次历时训练。综合训练过程采用了数据增强技术,以提高泛化能力。评估结果表明,头盔检测的精确度(0.92)和召回率(0.856)都很高,总体 mAP50 为 0.766。通过精确度-置信度曲线进行的直观分析证实了该模型在较高置信度阈值下检测头盔的高可靠性。这些研究结果表明,在实时监控系统中实施该模型可以减少人工检测工作量,确保符合安全法规,从而大大提高工业安全水平。
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Industrial Safety Helmet Detection: Innovative CNN-Based Classification Approach
This study presents the development and evaluation of a CNN-based model for detecting safety helmets in industrial settings. Utilizing a dataset from GitHub, which includes images of individuals wearing safety helmets in various industrial environments, the model was trained using the YOLOv8 architecture over 100 epochs. The comprehensive training process involved data augmentation techniques to enhance generalization capabilities. The evaluation results demonstrated high precision (0.92) and recall (0.856) for helmet detection, with an overall mAP50 of 0.766. Visual analysis through precision-confidence curves confirmed the model's high reliability in detecting helmets at higher confidence thresholds. These findings suggest that the implementation of this model in real-time monitoring systems could significantly enhance industrial safety by reducing manual inspection efforts and ensuring compliance with safety regulations
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