Improving industrial security device detection with convolutional neural networks

Q2 Mathematics
Orlando Iparraguirre-Villanueva, Josemaria Gonzales-Huaman, Jose Machuca-Solano, John Ruiz-Alvarado
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引用次数: 0

Abstract

Employee safety is paramount in the manufacturing industry to ensure their well-being and protection. Technological advancements, particularly convolutional neural networks (CNN), have significantly enhanced this safety aspect by facilitating object detection and recognition. This project aims to utilize CNN technology to detect personal protective equipment and implement a safety implement detection system. The CNN architecture with the YOLOv5x model was employed to train a dataset. Dataset videos were converted into frames, with resolution scale adjustments made during the data collection phase. Subsequently, the dataset was labeled, underwent data cleaning, and label and bounding box revisions. The results revealed significant metrics in safety equipment detection in industrial settings. Helmet precision reached 91%, with a recall of 74%. Goggles achieved 85% precision and an 87% recall. Mask absence recorded 92% precision and an 89% recall. The YOLOv5x model exhibited commendable performance, showcasing its robust ability to accurately locate and detect objects. In conclusion, the utilization of a CNN-based safety equipment detection system, such as YOLOv5x, has yielded substantial improvements in both speed and accuracy. These findings lay a solid foundation for future industrial security applications aimed at safeguarding workers, fostering responsible workplace behavior, and optimizing the utilization of information technology resources.
利用卷积神经网络改进工业安全设备检测
在制造业中,员工安全对于确保他们的福利和保护至关重要。技术的进步,特别是卷积神经网络(CNN),通过促进物体检测和识别,极大地增强了这一安全方面。本项目旨在利用 CNN 技术检测个人防护设备,并实施安全装置检测系统。采用了带有 YOLOv5x 模型的 CNN 架构来训练数据集。数据集视频被转换成帧,并在数据收集阶段进行了分辨率比例调整。随后,对数据集进行标注、数据清理、标注和边界框修订。结果显示,工业环境中的安全设备检测指标显著提高。头盔的精确度达到 91%,召回率为 74%。护目镜的精确度达到 85%,召回率为 87%。面罩缺失的精确度为 92%,召回率为 89%。YOLOv5x 模型的性能值得称赞,展示了其准确定位和检测物体的强大能力。总之,利用基于 CNN 的安全设备检测系统(如 YOLOv5x),在速度和准确性方面都有了大幅提高。这些发现为未来的工业安全应用奠定了坚实的基础,这些应用旨在保护工人安全、促进负责任的工作场所行为以及优化信息技术资源的利用。
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来源期刊
CiteScore
2.90
自引率
0.00%
发文量
782
期刊介绍: The aim of Indonesian Journal of Electrical Engineering and Computer Science (formerly TELKOMNIKA Indonesian Journal of Electrical Engineering) is to publish high-quality articles dedicated to all aspects of the latest outstanding developments in the field of electrical engineering. Its scope encompasses the applications of Telecommunication and Information Technology, Applied Computing and Computer, Instrumentation and Control, Electrical (Power), Electronics Engineering and Informatics which covers, but not limited to, the following scope: Signal Processing[...] Electronics[...] Electrical[...] Telecommunication[...] Instrumentation & Control[...] Computing and Informatics[...]
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