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IMPERSONAL: An IoT-Aided Computer Vision Framework for Social Distancing for Health Safety

Authors :
Anna Maria Vegni
Romeo Giuliano
Alessandro Vizzarri
Franco Mazzenga
Eros Innocenti
Giuliano, Romeo
Innocenti, Ero
Mazzenga, Franco
Vegni, ANNA MARIA
Vizzarri, Alessandro
Source :
IEEE Internet of Things Journal. 9:7261-7272
Publication Year :
2022
Publisher :
Institute of Electrical and Electronics Engineers (IEEE), 2022.

Abstract

Recently, pushed by COVID-19 pandemic, the need of respecting social distancing has motivated several researchers to define novel technological solutions to monitor and track user movements. Information and Communications Technologies (ICT) world has addressed this challenge by means of the use of different technologies, such as Bluetooth, in order to track user inter-distance and encounter time. Technology solutions should be able to not only track contacts, but also alert users to restore social distancing. In this paper, we present IMPERSONAL framework, with the twofold aim of both (i) tracking and monitoring social distancing, and (ii) alerting users in case of gatherings. The framework is based on a sub-network of computer vision-based devices that is adopted to monitor and track users’movements to estimate their inter-distance and compute the encounter time. Such information is then the input to an Internet of Things sub-network, aiming to retrieve the anonymous IDs of people belonging to a gathering, as well as to send alert messages to them. We assess IMPERSONAL framework by means of extensive Monte Carlo simulations and experimental results, showing its effectiveness in terms of accuracy in correctly identifying users and gatherings in videos taken from live cameras, both in case of indoor and outdoor real scenarios. The benefits of IMPERSONAL framework are expressed in terms of the ability to track people, solve gatherings and send warning messages. IEEE

Details

ISSN :
23722541
Volume :
9
Database :
OpenAIRE
Journal :
IEEE Internet of Things Journal
Accession number :
edsair.doi.dedup.....2d6288b318ffe62e4c0bd7d5cba8e84c
Full Text :
https://doi.org/10.1109/jiot.2021.3097590