Computational Balancing between Wearable Sensor and Smartphone towards Energy-Efficient Remote Healthcare Monitoring

Recent advances in the development of wearable sensors and smartphones open up opportunities for executing computing operations on the devices instead of using them for streaming raw data. By minimizing power consumption due to the wireless transmission, limited energy resources of wearable devic...

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Main Authors: SECERBEGOVIC, A., GOGIC, A., SULJANOVIC, N., ZAJC, M., MUJCIC, A.
Format: Article
Language:English
Published: Stefan cel Mare University of Suceava 2018-11-01
Series:Advances in Electrical and Computer Engineering
Subjects:
Online Access:http://dx.doi.org/10.4316/AECE.2018.04001
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spelling doaj-087bdd37b0ab4a74b905a07a9a271ab82020-11-24T22:17:49ZengStefan cel Mare University of SuceavaAdvances in Electrical and Computer Engineering1582-74451844-76002018-11-0118431010.4316/AECE.2018.04001Computational Balancing between Wearable Sensor and Smartphone towards Energy-Efficient Remote Healthcare MonitoringSECERBEGOVIC, A.GOGIC, A.SULJANOVIC, N.ZAJC, M.MUJCIC, A.Recent advances in the development of wearable sensors and smartphones open up opportunities for executing computing operations on the devices instead of using them for streaming raw data. By minimizing power consumption due to the wireless transmission, limited energy resources of wearable devices can be utilized not only for sensing, but also for processing physiological signals. Computational tasks between a wearable sensor and a smartphone can be distributed efficiently in order to provide balance between power consumption of both processing and transmission of the data. In this paper, we have analyzed the computational balancing between a wearable sensor and a smartphone. Presented models show different trade-offs between classification accuracy, processing time and power consumption due to different number and types of extracted features and classification models. Our results are based on a physiological dataset, where electrocardiogram and electro dermal activity signals were collected from 24 individuals in short-term stress and mental workload detection scenario. Our findings show that placing a feature extraction on a wearable sensor is efficient when processing cost of the extracted features is small. On the other hand, moving classification task to the smartphone can improve accuracy of recognition without compromising the overall power consumption.http://dx.doi.org/10.4316/AECE.2018.04001wearable sensorsmobile computingbody sensor networksbiomedical signal processingperformance evaluation
collection DOAJ
language English
format Article
sources DOAJ
author SECERBEGOVIC, A.
GOGIC, A.
SULJANOVIC, N.
ZAJC, M.
MUJCIC, A.
spellingShingle SECERBEGOVIC, A.
GOGIC, A.
SULJANOVIC, N.
ZAJC, M.
MUJCIC, A.
Computational Balancing between Wearable Sensor and Smartphone towards Energy-Efficient Remote Healthcare Monitoring
Advances in Electrical and Computer Engineering
wearable sensors
mobile computing
body sensor networks
biomedical signal processing
performance evaluation
author_facet SECERBEGOVIC, A.
GOGIC, A.
SULJANOVIC, N.
ZAJC, M.
MUJCIC, A.
author_sort SECERBEGOVIC, A.
title Computational Balancing between Wearable Sensor and Smartphone towards Energy-Efficient Remote Healthcare Monitoring
title_short Computational Balancing between Wearable Sensor and Smartphone towards Energy-Efficient Remote Healthcare Monitoring
title_full Computational Balancing between Wearable Sensor and Smartphone towards Energy-Efficient Remote Healthcare Monitoring
title_fullStr Computational Balancing between Wearable Sensor and Smartphone towards Energy-Efficient Remote Healthcare Monitoring
title_full_unstemmed Computational Balancing between Wearable Sensor and Smartphone towards Energy-Efficient Remote Healthcare Monitoring
title_sort computational balancing between wearable sensor and smartphone towards energy-efficient remote healthcare monitoring
publisher Stefan cel Mare University of Suceava
series Advances in Electrical and Computer Engineering
issn 1582-7445
1844-7600
publishDate 2018-11-01
description Recent advances in the development of wearable sensors and smartphones open up opportunities for executing computing operations on the devices instead of using them for streaming raw data. By minimizing power consumption due to the wireless transmission, limited energy resources of wearable devices can be utilized not only for sensing, but also for processing physiological signals. Computational tasks between a wearable sensor and a smartphone can be distributed efficiently in order to provide balance between power consumption of both processing and transmission of the data. In this paper, we have analyzed the computational balancing between a wearable sensor and a smartphone. Presented models show different trade-offs between classification accuracy, processing time and power consumption due to different number and types of extracted features and classification models. Our results are based on a physiological dataset, where electrocardiogram and electro dermal activity signals were collected from 24 individuals in short-term stress and mental workload detection scenario. Our findings show that placing a feature extraction on a wearable sensor is efficient when processing cost of the extracted features is small. On the other hand, moving classification task to the smartphone can improve accuracy of recognition without compromising the overall power consumption.
topic wearable sensors
mobile computing
body sensor networks
biomedical signal processing
performance evaluation
url http://dx.doi.org/10.4316/AECE.2018.04001
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