IoT Based Intelligent System for Covid - 19 hotspot detection by CNN Crowd Density Algorithm

Papiya Das, Indrajit Das, Soumyadeep Chakraborty, Sougata Mandal, Subhrapratim Nath
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Abstract

The worldwide health crisis is caused by the widespread of the Covid-19 virus. The virus is transmitted through droplet infection and it causes the common cold, coughing, sneezing, and also respiratory distress in the infected person and sometimes becomes fatal causing death. As the world battles against covid-19, the proposed approach can help to contain the clustering of covid hotspot areas for the treatment of over a million affected patients. Drones/ Unmanned Aerial Vehicles (UAVs) offer a great deal of support in this pandemic. As suggested in this research, they can also be used to get to remote places more quickly and efficiently than with conventional means. In the hospital’s control room, there would be a person in command of the ambulance drone. For hotspot area detection, the drone would be equipped with FLIR camera and for detection and recognition of face the video transmission is used by raspberry pi camera. The detection of face is done by Haar cascade Classifier and recognition of the face with LBPH algorithm. This is used for identify the each individual’s medical history or can be verified by Aadhar Card. Face recognition between still and video photos was compared, and the average accuracy of still and video images was 99.8 percent and 99.57 percent, respectively. To find the hotspot area is to use the CNN Crowd counting algorithm. If the threshold value is less than equal to 0.5 than it is hotspot area , if it is greater than 0.5 and less than equal to 0.75 than it is semi-normal area , if it is greater than 0.75 and less than equal to 1 than it is normal area .
基于CNN人群密度算法的物联网智能Covid - 19热点检测系统
全球卫生危机是由Covid-19病毒的广泛传播引起的。这种病毒通过飞沫感染传播,它会引起感冒、咳嗽、打喷嚏和呼吸窘迫,有时会致命,导致死亡。在全球抗击covid-19的斗争中,拟议的方法可以帮助遏制covid-19热点地区的聚集,以治疗100多万受影响的患者。无人机/无人驾驶飞行器(uav)在此次大流行中提供了大量支持。正如这项研究表明的那样,它们还可以比传统方式更快、更有效地到达偏远地区。在医院的控制室里,会有一个人指挥救护车无人机。对于热点区域的检测,无人机将配备前视红外摄像头,对于人脸的检测和识别,使用树莓派摄像头进行视频传输。人脸检测采用Haar级联分类器,人脸识别采用LBPH算法。这是用于识别每个人的病史或可通过阿达哈尔卡验证。对比了静态和视频照片的人脸识别,静态和视频图像的平均准确率分别为99.8%和99.57%。寻找热点区域的方法是使用CNN人群计数算法。如果阈值小于等于0.5则为热点区域,如果大于0.5且小于等于0.75则为半法线区域,如果大于0.75且小于等于1则为法线区域。
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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