Safety Measure Detection Using Deep Learning

Tejas Bagthaliya, Vaidehi Shah, Shubham Shelke, Devang Shukla, Yatin Shukla
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Abstract

This implementation is for a computer vision application that detects individuals and verifies their compliance with safety gear regulations, such as safety jackets and hard-hats. The system counts the number of individuals violating safety standards and keeps track of the total number of individuals detected. The system uses advanced image processing techniques, including object detection and classification, to accurately identify the presence or absence of safety gear. The user interface provides real-time analysis of the data, with the option to alert the user of any violations. This implementation is a valuable tool for organizations looking to ensure the safety of their employees and customers, providing a comprehensive solution for monitoring compliance with safety regulations. It can also be used to analyze trends and identify areas for improvement, making it an essential tool for safety professionals and facilities managers.
利用深度学习检测安全措施
本实施方案是一个计算机视觉应用程序,用于检测人员并验证其是否符合安全装备规定,如安全夹克和硬质帽子。系统会计算违反安全标准的人数,并跟踪检测到的总人数。系统采用先进的图像处理技术,包括物体检测和分类,以准确识别是否有安全装备。用户界面可对数据进行实时分析,并可提醒用户注意任何违规行为。对于希望确保员工和客户安全的企业来说,该系统是一个非常有价值的工具,为监控安全法规的遵守情况提供了一个全面的解决方案。它还可用于分析趋势和确定需要改进的地方,是安全专业人员和设施管理人员的必备工具。
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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