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In this global health crisis, several efforts have been launched to monitor and control the spread of the COVID-19 pandemic. Those efforts require the support of new technologies like the Internet of Things, Artificial Intelligence, Image and Video Processing, Big Data, and Machine Learning to tackle various problems related to this viral pandemic. In these circumstances, public places such as hospitals, public transportation, and supermarkets need a more scientific and practical system/guidance to identify the probable COVID-19 cases. In this paper, we design an Internet of Things-Artificial Intelligence IoT-AI based intelligent system to monitor the suspect cases in public places. Based on implicit/Explicit data acquisition flow, the system provides information to public authorities. In a public place, the actions of suspicious people are collected by sensors such as thermal cameras, connected cameras, and Smartphone embedded sensors. Subsequently, this data is sent to the system for analysis. Thanks to artificial intelligence technology, the system can extract useful information to determine suspicious COVID-19 cases. In this article, we will describe the proposed global system. The design of this type of system is a trend for the future wider application to deal with COVID-19.
Bouchareb et al. (Thu,) studied this question.
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