An Adaptive Noise Cancellation System Based on Linear and Widely Linear Complex Valued Least Mean Square Algorithms for Removing Electrooculography Artifacts from Electroencephalography Signals

In this study, an adaptive noise cancellation (ANC) system based on linear and widely linear (WL) complex valued least mean square (LMS) algorithms is designed for removing electrooculography (EOG) artifacts from electroencephalography (EEG) signals. The real valued EOG and EEG signals (Fp1 and Fp2)...

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Main Authors: Engin Cemal MENGÜÇ, Salim ÇINAR, Nurettin ACIR
Format: Article
Language:English
Published: Gazi University 2018-03-01
Series:Gazi Üniversitesi Fen Bilimleri Dergisi
Subjects:
Online Access:http://dergipark.gov.tr/download/article-file/435276
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spelling doaj-71232a51edfc433aa802d2a3facbbdc32021-09-02T01:17:43ZengGazi UniversityGazi Üniversitesi Fen Bilimleri Dergisi2147-95262018-03-016120521910.29109/http-gujsc-gazi-edu-tr.335575An Adaptive Noise Cancellation System Based on Linear and Widely Linear Complex Valued Least Mean Square Algorithms for Removing Electrooculography Artifacts from Electroencephalography SignalsEngin Cemal MENGÜÇSalim ÇINARNurettin ACIRIn this study, an adaptive noise cancellation (ANC) system based on linear and widely linear (WL) complex valued least mean square (LMS) algorithms is designed for removing electrooculography (EOG) artifacts from electroencephalography (EEG) signals. The real valued EOG and EEG signals (Fp1 and Fp2) given in dataset are primarily expressed as a complex valued signal in the complex domain. Then, using the proposed ANC system, the EOG artifacts are eliminated in the complex domain from the EEG signals. Expression of these signals in the complex domain allows us to remove EOG artifacts from two EEG channels simultaneously. Moreover, in this study, it has been shown that the complex valued EEG signal exhibits noncircular behavior, and in the case, the WL-CLMS algorithm enhances the performance of the ANC system compared to real-valued LMS and CLMS algorithms. Simulation results support the proposed approach.http://dergipark.gov.tr/download/article-file/435276Complex domainNoise cancellationWidely linear model
collection DOAJ
language English
format Article
sources DOAJ
author Engin Cemal MENGÜÇ
Salim ÇINAR
Nurettin ACIR
spellingShingle Engin Cemal MENGÜÇ
Salim ÇINAR
Nurettin ACIR
An Adaptive Noise Cancellation System Based on Linear and Widely Linear Complex Valued Least Mean Square Algorithms for Removing Electrooculography Artifacts from Electroencephalography Signals
Gazi Üniversitesi Fen Bilimleri Dergisi
Complex domain
Noise cancellation
Widely linear model
author_facet Engin Cemal MENGÜÇ
Salim ÇINAR
Nurettin ACIR
author_sort Engin Cemal MENGÜÇ
title An Adaptive Noise Cancellation System Based on Linear and Widely Linear Complex Valued Least Mean Square Algorithms for Removing Electrooculography Artifacts from Electroencephalography Signals
title_short An Adaptive Noise Cancellation System Based on Linear and Widely Linear Complex Valued Least Mean Square Algorithms for Removing Electrooculography Artifacts from Electroencephalography Signals
title_full An Adaptive Noise Cancellation System Based on Linear and Widely Linear Complex Valued Least Mean Square Algorithms for Removing Electrooculography Artifacts from Electroencephalography Signals
title_fullStr An Adaptive Noise Cancellation System Based on Linear and Widely Linear Complex Valued Least Mean Square Algorithms for Removing Electrooculography Artifacts from Electroencephalography Signals
title_full_unstemmed An Adaptive Noise Cancellation System Based on Linear and Widely Linear Complex Valued Least Mean Square Algorithms for Removing Electrooculography Artifacts from Electroencephalography Signals
title_sort adaptive noise cancellation system based on linear and widely linear complex valued least mean square algorithms for removing electrooculography artifacts from electroencephalography signals
publisher Gazi University
series Gazi Üniversitesi Fen Bilimleri Dergisi
issn 2147-9526
publishDate 2018-03-01
description In this study, an adaptive noise cancellation (ANC) system based on linear and widely linear (WL) complex valued least mean square (LMS) algorithms is designed for removing electrooculography (EOG) artifacts from electroencephalography (EEG) signals. The real valued EOG and EEG signals (Fp1 and Fp2) given in dataset are primarily expressed as a complex valued signal in the complex domain. Then, using the proposed ANC system, the EOG artifacts are eliminated in the complex domain from the EEG signals. Expression of these signals in the complex domain allows us to remove EOG artifacts from two EEG channels simultaneously. Moreover, in this study, it has been shown that the complex valued EEG signal exhibits noncircular behavior, and in the case, the WL-CLMS algorithm enhances the performance of the ANC system compared to real-valued LMS and CLMS algorithms. Simulation results support the proposed approach.
topic Complex domain
Noise cancellation
Widely linear model
url http://dergipark.gov.tr/download/article-file/435276
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