An Adaptive Joint Sparsity Recovery for Compressive Sensing Based EEG System

The last decade has witnessed tremendous efforts to shape the Internet of things (IoT) platforms to be well suited for healthcare applications. These platforms are comprised of a network of wireless sensors to monitor several physical and physiological quantities. For instance, long-term monitoring...

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Main Authors: Hamza Djelouat, Hamza Baali, Abbes Amira, Faycal Bensaali
Format: Article
Language:English
Published: Hindawi-Wiley 2017-01-01
Series:Wireless Communications and Mobile Computing
Online Access:http://dx.doi.org/10.1155/2017/9823684
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spelling doaj-c0d4b76441c744fbb71869fc0483e37c2020-11-24T23:34:59ZengHindawi-WileyWireless Communications and Mobile Computing1530-86691530-86772017-01-01201710.1155/2017/98236849823684An Adaptive Joint Sparsity Recovery for Compressive Sensing Based EEG SystemHamza Djelouat0Hamza Baali1Abbes Amira2Faycal Bensaali3College of Engineering, Qatar University, P.O. Box 2713, Doha, QatarCollege of Engineering, Qatar University, P.O. Box 2713, Doha, QatarCollege of Engineering, Qatar University, P.O. Box 2713, Doha, QatarCollege of Engineering, Qatar University, P.O. Box 2713, Doha, QatarThe last decade has witnessed tremendous efforts to shape the Internet of things (IoT) platforms to be well suited for healthcare applications. These platforms are comprised of a network of wireless sensors to monitor several physical and physiological quantities. For instance, long-term monitoring of brain activities using wearable electroencephalogram (EEG) sensors is widely exploited in the clinical diagnosis of epileptic seizures and sleeping disorders. However, the deployment of such platforms is challenged by the high power consumption and system complexity. Energy efficiency can be achieved by exploring efficient compression techniques such as compressive sensing (CS). CS is an emerging theory that enables a compressed acquisition using well-designed sensing matrices. Moreover, system complexity can be optimized by using hardware friendly structured sensing matrices. This paper quantifies the performance of a CS-based multichannel EEG monitoring. In addition, the paper exploits the joint sparsity of multichannel EEG using subspace pursuit (SP) algorithm as well as a designed sparsifying basis in order to improve the reconstruction quality. Furthermore, the paper proposes a modification to the SP algorithm based on an adaptive selection approach to further improve the performance in terms of reconstruction quality, execution time, and the robustness of the recovery process.http://dx.doi.org/10.1155/2017/9823684
collection DOAJ
language English
format Article
sources DOAJ
author Hamza Djelouat
Hamza Baali
Abbes Amira
Faycal Bensaali
spellingShingle Hamza Djelouat
Hamza Baali
Abbes Amira
Faycal Bensaali
An Adaptive Joint Sparsity Recovery for Compressive Sensing Based EEG System
Wireless Communications and Mobile Computing
author_facet Hamza Djelouat
Hamza Baali
Abbes Amira
Faycal Bensaali
author_sort Hamza Djelouat
title An Adaptive Joint Sparsity Recovery for Compressive Sensing Based EEG System
title_short An Adaptive Joint Sparsity Recovery for Compressive Sensing Based EEG System
title_full An Adaptive Joint Sparsity Recovery for Compressive Sensing Based EEG System
title_fullStr An Adaptive Joint Sparsity Recovery for Compressive Sensing Based EEG System
title_full_unstemmed An Adaptive Joint Sparsity Recovery for Compressive Sensing Based EEG System
title_sort adaptive joint sparsity recovery for compressive sensing based eeg system
publisher Hindawi-Wiley
series Wireless Communications and Mobile Computing
issn 1530-8669
1530-8677
publishDate 2017-01-01
description The last decade has witnessed tremendous efforts to shape the Internet of things (IoT) platforms to be well suited for healthcare applications. These platforms are comprised of a network of wireless sensors to monitor several physical and physiological quantities. For instance, long-term monitoring of brain activities using wearable electroencephalogram (EEG) sensors is widely exploited in the clinical diagnosis of epileptic seizures and sleeping disorders. However, the deployment of such platforms is challenged by the high power consumption and system complexity. Energy efficiency can be achieved by exploring efficient compression techniques such as compressive sensing (CS). CS is an emerging theory that enables a compressed acquisition using well-designed sensing matrices. Moreover, system complexity can be optimized by using hardware friendly structured sensing matrices. This paper quantifies the performance of a CS-based multichannel EEG monitoring. In addition, the paper exploits the joint sparsity of multichannel EEG using subspace pursuit (SP) algorithm as well as a designed sparsifying basis in order to improve the reconstruction quality. Furthermore, the paper proposes a modification to the SP algorithm based on an adaptive selection approach to further improve the performance in terms of reconstruction quality, execution time, and the robustness of the recovery process.
url http://dx.doi.org/10.1155/2017/9823684
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