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SHUBHCHINTAK: An efficient remote health monitoring approach for elderly people

With the proliferation of IoT technology, it is anticipated that healthcare services, particularly for the elderly persons, will become a major thrust area of research in the coming days. Aim of this work is to design a fit-band containing multiple sensors to provide remote healthcare services for t...

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Published in:Multimedia tools and applications 2022, Vol.81 (26), p.37137-37163
Main Authors: Banerjee, Ayan, Maji, Dibyendu, Datta, Rajdeep, Barman, Subhas, Samanta, Debasis, Chattopadhyay, Samiran
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container_issue 26
container_start_page 37137
container_title Multimedia tools and applications
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creator Banerjee, Ayan
Maji, Dibyendu
Datta, Rajdeep
Barman, Subhas
Samanta, Debasis
Chattopadhyay, Samiran
description With the proliferation of IoT technology, it is anticipated that healthcare services, particularly for the elderly persons, will become a major thrust area of research in the coming days. Aim of this work is to design a fit-band containing multiple sensors to provide remote healthcare services for the elderly persons. An application has been designed to capture health data from the fit-band, pre-process the data and then send them to cloud for further analysis. A wireless Bluetooth enabled connection is proposed to establish communications between sensors and the application for data transmission. In the proposed application, there are three different front-end interfaces for three different users: system administrator, patient and doctor. The data collected from the patient’s fit-band are sent to a cloud data storage, where the data will be analyzed to detect anomaly (e.g., heart attack, sleep apnea, etc.). A Convolution Neural Network (CNN) model is proposed for anomaly detection. For the classification of anomaly, a Long Short Term Memory (LSTM) model is proposed. In the presence of anomaly, the system immediately connects a doctor through a phone call. A prototype system termed as Shubhchintak has been developed in Android/IOS environment and tested with a number of users. The fit-band provides data tracking with an overall accuracy of 99%; the system provides a response with 3000 requests in less than 100 ms. Also, Shubhchintak provides a real-time feedback with an accuracy of 97%. Shubhchintak is also tested by patients and doctors of a nearby hospital. Shubhchintak is shown to be a simple to use, cost effective, comfortable, and efficient system compared to the existing state of the art solutions.
doi_str_mv 10.1007/s11042-022-13539-y
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subjects 1211: AIoT Support and Applications with Multimedia
Computer Communication Networks
Computer Science
Data Structures and Information Theory
Multimedia Information Systems
Special Purpose and Application-Based Systems
title SHUBHCHINTAK: An efficient remote health monitoring approach for elderly people
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