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PPE Compliance Detection using Artificial Intelligence in Learning Factories

机译:使用人工智能在学习工厂中的PPE合规性检测

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This project demonstrates the application of Artificial Intelligence (AI) and machine vision for the identification of Personal Protective Equipment (PPE), particularly safety glasses in zones of the Learning Factory, where safety risks exist. The objective is to design and implement an automated system for ensuring the safety of personnel when they are in the vicinity of machinery that presents potential risks to the eyes. Microsoft Azure Custom Vision AI and Intelligent AI Services, in conjunction with low-cost vision devices with lightweight onboard AI capability, provide a platform for a deep learning neural network model using publicly available images under the Creative Commons License. A combination of cloud-based and on-premises AI is used in this proof of concept system to provide a real-time vision-based safety system capable of detecting and recording potential safety breaches, promoting compliance, and ultimately preventing accidents before they happen. This system can be used to initiate different control actions in the event of safety violations and can detect multiple forms of protective wear. The flexibility of the system offers multiple benefits to learning factories and manufacturing organizations such as improved user safety, reduced insurance costs, and better detection and recording of safety violations. The hybrid AI architecture approach allows for flexibility in training and deployment based on the capability of local computing resources.
机译:该项目展示了人工智能(AI)和机器视觉的应用,以确定个人防护设备(PPE),特别是在学习厂的区域中的安全眼镜,存在安全风险。目的是设计和实施自动化系统,以确保人员的安全性,当它们位于对眼睛潜在风险的机械附近时。 Microsoft Azure自定义Vision AI和智能AI服务与具有轻量级的低成本愿景设备配合使用轻量级的底座AI功能,为深度学习神经网络模型提供了一个平台,用于在Creative Commons许可证下使用公开的图像。基于云和本地AI的组合用于该概念系统证明,提供了一种基于视觉的安全系统,能够检测和记录潜在的安全漏洞,促进合规性和最终在发生之前防止事故。该系统可用于在安全违规事件中启动不同的控制动作,并且可以检测多种形式的保护磨损。该系统的灵活性为学习工厂和制造组织提供了多种优势,例如提高用户安全性,降低保险费,更好地检测和记录安全违规行为。混合AI架构方法允许基于本地计算资源的能力进行培训和部署的灵活性。

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