Human Body Temperature Detection based on Thermal Imaging and Screening using YOLO Person Detection

Muhammad Faizul Azwan Mushahar, N. Zaini
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引用次数: 3

Abstract

In addressing the worldwide Covid-19 outbreak, one of the actions to curb the spread of the virus is to keep people with Covid-19 symptoms away from others in public places. The most easily detected symptom is high body temperature due to fever, and this is one of the common symptoms of Covid-19 patients. Several methods of body temperature detection have been implemented at the entrance of the premises. One of the most common methods is to use an infrared temperature scanner. This method has some constraints including its use which is time-consuming and can lead to further spread of the virus as gun-type scanners can be a medium of virus spread as has been held by many people. Another more advanced method is the detection of body temperature through a thermal camera with imaging. Although more sophisticated, this method also has the constraint where the temperature is usually detected as a whole and does not differentiate the temperature of the human body and other nearby objects. With a focus on this problem, this study applies a combination of object detection methods through image processing with temperature detection through thermal imaging. For the object detection process, the You Only Look Once (YOLO) model and the OpenCV library have been used, especially in detecting people and non-people. While the calculation of body temperature through thermal images has been made more accurate because the scanned temperature is more specific based on the detected objects. In this way, a person’s body temperature can be separated and will not be affected by the temperature of other objects. From the results and analysis obtained, an accuracy of 100% can be achieved based on a pre-trained model for human body temperature detection. With more specific and accurate detection as produced in this study, then a warning or caution will be issued only when a person actually has a high body temperature and will then not be allowed to enter the premises.
基于热成像和筛选的YOLO人体体温检测
在应对Covid-19全球疫情时,遏制病毒传播的行动之一是让有Covid-19症状的人在公共场所与其他人保持距离。最容易发现的症状是发烧引起的体温升高,这是新冠肺炎患者的常见症状之一。在房屋入口处实施了几种体温检测方法。最常用的方法之一是使用红外温度扫描仪。这种方法有一些限制,包括它的使用是耗时的,并可能导致病毒的进一步传播,因为枪型扫描仪可能是病毒传播的媒介,正如许多人所认为的那样。另一种更先进的方法是通过带成像的热像仪检测体温。虽然更复杂,但这种方法也有一个限制,即温度通常是作为一个整体来检测的,并且不能区分人体和其他附近物体的温度。针对这一问题,本研究将采用图像处理的目标检测方法与热成像的温度检测方法相结合。在对象检测过程中,使用了You Only Look Once (YOLO)模型和OpenCV库,特别是在检测人和非人时。而通过热成像计算体温,由于扫描的温度根据检测到的物体更加具体,因此计算体温更加准确。这样,一个人的体温就可以分开,不会受到其他物体温度的影响。从得到的结果和分析来看,基于预训练的人体体温检测模型可以达到100%的准确率。有了这项研究中更具体和准确的检测,只有当一个人真的有高体温时,才会发出警告或警告,然后不允许进入房屋。
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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