An Embedded Machine Learning System For Real-time Face Mask Detection And Human Temperature Measurement

Lien-dai Nguyen, Trang N. M. Cao, Lam Huynh-Anh, Hanh Dang-Ngoc
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引用次数: 2

Abstract

In this paper, an efficient embedded machine learning system is proposed to automatically detect face masks and measure human temperature in a real-time application. In particular, our system uses a Raspberry-Pi camera to collect realtime video and detect face masks by implementing a classification model on Raspberry Pi 3 in public places. The face mask detector is built based on MobileNetV2, with ImageNet pre-trained weights, to detect three cases of correctly wearing, incorrectly wearing and not wearing a mask. We also design a human temperature measurement framework by deploying a temperature sensor on the Raspberry Pi 3. The numerical results prove the practicality and effectiveness of our embedded systems compared to some state-of-the-art researches. The results of accuracy rate in detecting three cases of wearing a face mask are 98.61% based on the training results and 97.63% for validation results. Meanwhile, our proposed system needs a short time of 6 seconds for each person to be tested through the whole process of face mask detection and human forehead temperature measurement.
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一种用于实时口罩检测和人体温度测量的嵌入式机器学习系统
本文提出了一种高效的嵌入式机器学习系统,在实时应用中自动检测口罩和测量人体温度。特别地,我们的系统使用树莓派相机采集实时视频,并通过在公共场所的树莓派3上实现分类模型来检测人脸。基于MobileNetV2构建口罩检测器,使用ImageNet预训练的权值,检测正确佩戴、不正确佩戴和未佩戴口罩三种情况。我们还通过在树莓派3上部署温度传感器来设计人体温度测量框架。与目前的研究成果相比,数值结果证明了我们的嵌入式系统的实用性和有效性。基于训练结果的3例口罩检测准确率为98.61%,验证结果为97.63%。同时,我们提出的系统通过口罩检测和人体额头温度测量的整个过程,每个人只需6秒的短时间即可完成测试。
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