Designing the IoT based Social Distancing Monitoring System for Reducing the impact of Covid-19

Authors

  • HUSAM K SALIH JUBOORI
  • Mohanad F Jwaid
  • Mohammed Alaa H. Altemimi

Keywords:

COVID-19, IoT, Social Distancing, Deep Learning, Computer Vision

Abstract

The unprecedented pandemic of 2019 that was COVID-19 of the Health Organization (WHO) has left hundreds of governments precarious around the world. The strain on virtually every nation in the world of the COVID 19 virus, the consequences of which the Chinese alone had previously seen. Along with fear of overwhelming care systems, a large proportion of these countries were compelled, due to lack of resources to resist the COVID 19 outbreak, to partly or completely cut off. Social distancing is essential if viral diseases such as COVID-19 are to be prevented. By reducing close physical contact between people, we reduce the chance of capturing and spreading the virus throughout the community. The pandemic has been rapidly exploited by various research communities since it
started and IoT is one of the pioneers in this field, taking advantage of a wide variety of technologies to address this global threat. The IoT system / liable devices / applications are used in the context of COVID-19 to reduce COVID-19 spread to others in early diagnostic procedures, patient monitoring and post-patient recuperation practice of defined protocols. We emphasize here for an Open-CV, Computer Vision and Deep Learning surveillance method to keep track of footpaths and prevent overcrowding. The objects can be detected using Closed Circuit TV (CCTV) and Drones can be used to detect and measure the distance between the crowds by the camera.

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Published

2023-12-19

How to Cite

HUSAM K SALIH JUBOORI, Mohanad F Jwaid, & Mohammed Alaa H. Altemimi. (2023). Designing the IoT based Social Distancing Monitoring System for Reducing the impact of Covid-19. Elementary Education Online, 20(5), 4169–4177. Retrieved from https://ilkogretim-online.org/index.php/pub/article/view/6070

Issue

Section

Articles