Author: Meraj, M.; Alvi, S. A. M.; Quasim, M. T.; Haidar, S. W.
Title: A Critical Review of Detection and Prediction of Infectious Disease using IOT Sensors Cord-id: s770vjjb Document date: 2021_1_1
ID: s770vjjb
Snippet: Detection and prediction of infectious disease is a very challenging task due to the lack of substantial evidence of the disease and its behaviours. The effective infection prevention mechanisms through IoT sensors have been explored in the various researches in recent times. Various researchers use the Internet of Things (IoT) to collect real-time sensory information data for the detection and prediction of Infectious Disease. A group of sensors distributed in the workplace to detect or gathere
Document: Detection and prediction of infectious disease is a very challenging task due to the lack of substantial evidence of the disease and its behaviours. The effective infection prevention mechanisms through IoT sensors have been explored in the various researches in recent times. Various researchers use the Internet of Things (IoT) to collect real-time sensory information data for the detection and prediction of Infectious Disease. A group of sensors distributed in the workplace to detect or gathered data related to Infectious Disease is one of the major explorations of this paper. Sensors could collect the real-time data gathered in the cloud storage unit and further the user has to be intimated with the real scenario of data suggested. Behind this filtering and analytics process to execute on the gathered data and extract the data in form of user information. This paper explores the Flu, COVID-19, Zika, and H1N1, especially focus on COVID-19 as the recent pandemic. The technique as the Remote Excess of Experts thought IoT data is also the research investigation of this paper. © 2021 IEEE.
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