IoT and AI based intelligent system to fight against COVID-19

Asmae Bouchareb, Abdelhak Boulaalam, I. Bellamine
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Abstract

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.
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基于物联网和人工智能的智能系统抗击新冠肺炎
在这场全球卫生危机中,为监测和控制COVID-19大流行的传播,开展了多项努力。这些努力需要物联网、人工智能、图像和视频处理、大数据和机器学习等新技术的支持,以解决与这种病毒大流行相关的各种问题。在这种情况下,医院、公共交通、超市等公共场所需要更加科学实用的系统/指导来识别新冠肺炎可能病例。本文设计了一种基于物联网-人工智能(IoT-AI)的公共场所可疑案件智能监控系统。基于隐式/显式数据采集流程,系统向公共部门提供信息。在公共场所,通过热像仪、联网摄像机和智能手机嵌入式传感器等传感器收集可疑人员的行为。随后,这些数据被发送到系统进行分析。通过人工智能技术,该系统可以提取有用的信息,以确定可疑病例。在本文中,我们将描述拟议的全球系统。这种系统的设计是未来更广泛应用于应对COVID-19的趋势。
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