Heterogeneous sensor data fusion acquisition model for medical applications

Electrocardiogram (ECG) and portable technologies with Internet of Things (IoT)-based biometric authentication have recently gained popularity. As a cutting-edge, potent technique utilized in numerous ways to increase authentication effectiveness over the past few decades, ECG-based biometric verifi...

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Main Authors: Jyoti Dhanke, M. Pradeepa, R. Karthik, Veeresh Rampur, I. Poonguzhali, Hemanand Chittapragada
Format: Article
Language:English
Published: Elsevier 2022-12-01
Series:Measurement: Sensors
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2665917422001866
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author Jyoti Dhanke
M. Pradeepa
R. Karthik
Veeresh Rampur
I. Poonguzhali
Hemanand Chittapragada
author_facet Jyoti Dhanke
M. Pradeepa
R. Karthik
Veeresh Rampur
I. Poonguzhali
Hemanand Chittapragada
author_sort Jyoti Dhanke
collection DOAJ
description Electrocardiogram (ECG) and portable technologies with Internet of Things (IoT)-based biometric authentication have recently gained popularity. As a cutting-edge, potent technique utilized in numerous ways to increase authentication effectiveness over the past few decades, ECG-based biometric verification has garnered a lot of attention. However, a user's ECG signal may alter based on their health or physical condition, which would prevent verification. It should be vital to create a trustworthy method that takes into account unique ECG variations for verification to be successful. An effective and trustworthy ECG check technique is provided in this study. Using the concept of domain customization, this study presents a novel supervised learning platform. Data from many systems has been combined into a unique feature and given to a particular grader, like a Support Vector Machine (SVM), for verification. Cross-validation searches on two accessible data sets were used to assess how effective the proposed verification scheme was. The evaluation results show that the effectiveness of our suggested system achieved a verification prediction performance of 99.4% with a high level of quality & memory. The conclusions showed that the suggested strategy was well suitable for actual-time software to execute the task.
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spelling doaj.art-7f5a3103a4824246b1fb2c52ac1de7fa2022-12-22T02:27:15ZengElsevierMeasurement: Sensors2665-91742022-12-0124100552Heterogeneous sensor data fusion acquisition model for medical applicationsJyoti Dhanke0M. Pradeepa1R. Karthik2Veeresh Rampur3I. Poonguzhali4Hemanand Chittapragada5Department of Engineering Science (Mathematics), Bharati Vidyapeeth's College of Engineering, Lavale, Pune, 412115, Maharashtra, India; Corresponding author.School of Information Technology and Engineering, Vellore Institute of Technology, Vellore, Tamil Nadu, 632 014, IndiaSchool of Electronics and Communication Engineering, REVA University, Bangalore, IndiaDept of Electronics, Government First Grade College, Naubad, Bidar, 585401, Karnataka State, IndiaDepartment of ECE, Panimalar Engineering College, Poonamallee, 600123, Tamilnadu, IndiaDepartment of CSE, Sri Vasavi Engineering College, Tadepalligudem, 534101, Andhra Pradesh, IndiaElectrocardiogram (ECG) and portable technologies with Internet of Things (IoT)-based biometric authentication have recently gained popularity. As a cutting-edge, potent technique utilized in numerous ways to increase authentication effectiveness over the past few decades, ECG-based biometric verification has garnered a lot of attention. However, a user's ECG signal may alter based on their health or physical condition, which would prevent verification. It should be vital to create a trustworthy method that takes into account unique ECG variations for verification to be successful. An effective and trustworthy ECG check technique is provided in this study. Using the concept of domain customization, this study presents a novel supervised learning platform. Data from many systems has been combined into a unique feature and given to a particular grader, like a Support Vector Machine (SVM), for verification. Cross-validation searches on two accessible data sets were used to assess how effective the proposed verification scheme was. The evaluation results show that the effectiveness of our suggested system achieved a verification prediction performance of 99.4% with a high level of quality & memory. The conclusions showed that the suggested strategy was well suitable for actual-time software to execute the task.http://www.sciencedirect.com/science/article/pii/S2665917422001866Transfer learning ideaIoT-based electrocardiogramPerformance measuresAuthenticationFusion model
spellingShingle Jyoti Dhanke
M. Pradeepa
R. Karthik
Veeresh Rampur
I. Poonguzhali
Hemanand Chittapragada
Heterogeneous sensor data fusion acquisition model for medical applications
Measurement: Sensors
Transfer learning idea
IoT-based electrocardiogram
Performance measures
Authentication
Fusion model
title Heterogeneous sensor data fusion acquisition model for medical applications
title_full Heterogeneous sensor data fusion acquisition model for medical applications
title_fullStr Heterogeneous sensor data fusion acquisition model for medical applications
title_full_unstemmed Heterogeneous sensor data fusion acquisition model for medical applications
title_short Heterogeneous sensor data fusion acquisition model for medical applications
title_sort heterogeneous sensor data fusion acquisition model for medical applications
topic Transfer learning idea
IoT-based electrocardiogram
Performance measures
Authentication
Fusion model
url http://www.sciencedirect.com/science/article/pii/S2665917422001866
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AT ipoonguzhali heterogeneoussensordatafusionacquisitionmodelformedicalapplications
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