基于嵌入式系统和深度学习的体温检测和口罩佩戴合规性自动门

Rahman Indra Kesuma, Rivaldo Fernandes, Martin Clinton Tosima Manullang
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引用次数: 0

摘要

一种名为n-Cov的新型冠状病毒变种已经出现,传播速度很快。世界卫生组织(WHO)将新冠肺炎(COVID-19)宣布为需要特别处理的全球大流行疾病。许多缔约方已通过执行卫生议定书和适应新的正常生活方式,努力减少病毒传播。健康协议的实施产生了新的问题,特别是在主要入口的健康检查方面。负责测量体温的工作人员有被感染的危险。这样的测量容易出错。本研究提出了一种基于新常态健康协议的自动门禁系统的构建方案。该系统采用MLX90614非接触式温度传感器对体温进行探测。它应用深度学习实现卷积神经网络(CNN)算法,并将MobileNetV2架构作为戴口罩条件的决定因素。该系统配备了一个基于物联网的遥控器来控制门。实验结果表明,该系统运行良好。温度测量对每个用户的响应时间为20秒,传感器和掩模分类模型的准确率为99%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Gate for Body Temperature Check and Masks Wearing Compliance Using an Embedded System and Deep Learning
- A new coronavirus variant known as n-Cov has emerged with a fast transmission rate. The World Health Organization (WHO) has declared the related disease or COVID-19 as a global pandemic that requires special handling. Many parties have shown efforts to reduce virus transmission by implementing health protocols and adapting a new normal lifestyle. Implementation of the health protocol creates new problems, especially in the health check at the main entrance. The officers in charge of measuring body temperature are at risk of getting infected by COVID. Such a measurement is prone to errors. This study proposed a solution to build an automatic gate system that worked based on the new normal health protocol. The system utilizes the MLX90614 contactless temperature sensor to probe body temperature. It applies deep learning implementing the Convolutional Neural Network (CNN) algorithm with the MobileNetV2 architecture as a determinant of the conditions of wearing face masks. The system is equipped with an IoT-based remote controller to control the gate. Experimental results prove that the system works well. Temperature measurement takes a response time of 20 seconds for each user with 99% accuracy for the sensor and masks classification model.
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