A Crowdsourced Contact Tracing Model to Detect COVID-19 Patients using
Smartphones
- URL: http://arxiv.org/abs/2112.01244v1
- Date: Wed, 17 Nov 2021 19:56:24 GMT
- Title: A Crowdsourced Contact Tracing Model to Detect COVID-19 Patients using
Smartphones
- Authors: Linta Islam, Mafizur Rahman, Nabila Ahmad, Tasnia Sharmin, Jannatul
Ferdous Sorna
- Abstract summary: The model has been formulated for Location base COVID-19 patient identification using mobile crowdsourcing.
It will notify other users in the vulnerable area to stay at 6 feet or 1.8-meter distance to remain safe.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Millions of people have died all across the world because of the COVID-19
outbreak. Researchers worldwide are working together and facing many challenges
to bring out the proper vaccines to prevent this infectious virus. Therefore,
in this study, a system has been designed which will be adequate to stop the
outbreak of COVID-19 by spreading awareness of the COVID-19 infected patient
situated area. The model has been formulated for Location base COVID-19 patient
identification using mobile crowdsourcing. In this system, the government will
update the information about inflected COVID-19 patients. It will notify other
users in the vulnerable area to stay at 6 feet or 1.8-meter distance to remain
safe. We utilized the Haversine formula and circle formula to generate the
unsafe area. Ten thousand valid information has been collected to support the
results of this research. The algorithm is tested for 10 test cases every time,
and the datasets are increased by 1000. The run time of that algorithm is
growing linearly. Thus, we can say that the proposed algorithm can run in
polynomial time. The algorithm's correctness is also being tested where it is
found that the proposed algorithm is correct and efficient. We also implement
the system, and the application is evaluated by taking feedback from users.
Thus, people can use our system to keep themselves in a safe area and decrease
COVID patients' rate.
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