Facial Recognition and Thermal Imaging: A Cost-Effective Solution for Covid-19 Detection

Abd Halim Embong, Asyrah Shahierah Ambotang, Syamsul Bahrin Abdul Hamid
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Abstract

The global pandemic induced by the 2019 Novel Coronavirus Disease (Covid-19) has posed significant challenges for nations across the globe. Given the pandemic's pervasive nature, there is an emerging demand for a dependable tool capable of identifying individuals exhibiting fever, a primary symptom of Covid-19 infection. To address this, utilizing facial recognition technology in conjunction with temperature measurement has been widely embraced within various infrastructures such as residential buildings and office spaces. This research proposes the adoption of a system capable of recognizing human faces while simultaneously monitoring individual temperatures. This is achieved through the utilization of Python and open-source libraries such as OpenCV and NumPy to develop an effective facial identification system. Furthermore, this research suggests leveraging the capabilities of a cost-effective AMG8833 thermal imaging camera to measure human body temperature. The thermal image, reflecting the individual's body temperature, is displayed on the Node-RED dashboard, a platform based on Internet of Things (IoT) technology. Should the temperature reading of an individual exceed 37.5 degrees Celsius, the system is designed to activate an alarm and dispatch notifications via an administrative mobile application. All pertinent information regarding the individual is securely stored within a MySQL webserver database. A comparative analysis reveals that the proposed system provides nearly 95% cost reduction when compared against commercial alternatives such as the Flir C3, with the added advantage of image recognition capabilities.
面部识别和热成像:一种低成本的Covid-19检测解决方案
2019年新型冠状病毒病(Covid-19)引发的全球大流行给世界各国带来了重大挑战。鉴于大流行的普遍性,人们对一种能够识别发烧(Covid-19感染的主要症状)的可靠工具的需求正在增加。为了解决这个问题,将面部识别技术与温度测量相结合已被广泛应用于住宅建筑和办公空间等各种基础设施中。这项研究建议采用一种能够识别人脸同时监测个人体温的系统。这是通过利用Python和开源库(如OpenCV和NumPy)来开发有效的面部识别系统来实现的。此外,本研究建议利用具有成本效益的AMG8833热像仪的功能来测量人体温度。反映个人体温的热图像显示在基于物联网(IoT)技术的平台Node-RED仪表板上。如果个人的体温读数超过37.5摄氏度,该系统将通过管理移动应用程序激活警报并发送通知。有关个人的所有相关信息都安全地存储在MySQL网络服务器数据库中。对比分析表明,与商业替代方案(如Flir C3)相比,该系统可将成本降低近95%,并具有图像识别能力的额外优势。
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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