The recent embedding of electroencephalographic (EEG) electrodes in wearable devices raises the problem of the quality of the data recorded in such uncontrolled environments. These recordings are often obtained with dry single-channel EEG devices, and may be contaminated by many sources of noise which can compromise the detection and characterization of the brain state studied. In this paper, we propose a classification-based approach to effectively quantify artefact contamination in EEG segments, and discriminate muscular artefacts. The performance of our method were assessed on different databases containing either artificially contaminated or real artefacts recorded with different type of sensors, includingwet and dry EEG electrodes. Furthermore, the quality of unlabelled databases was evaluated. For all the studied databases, the proposed method is able to rapidly assess the quality of the EEG signals with an accuracy higher than 90%. The obtained performance suggests that our approach provide an efficient, fast and automated quality assessment of EEG signals from low-cost wearable devices typically composed of a dry single EEG channel.

Quality assessment of single-channel EEG for wearable devices / Grosselin, F.; Navarro-Sune, X.; Vozzi, A.; Pandremmenou, K.; Fallani, F. V.; Attal, Y.; Chavez, M.. - In: SENSORS. - ISSN 1424-8220. - 19:3(2019), p. 601. [10.3390/s19030601]

Quality assessment of single-channel EEG for wearable devices

Vozzi A.
Investigation
;
2019

Abstract

The recent embedding of electroencephalographic (EEG) electrodes in wearable devices raises the problem of the quality of the data recorded in such uncontrolled environments. These recordings are often obtained with dry single-channel EEG devices, and may be contaminated by many sources of noise which can compromise the detection and characterization of the brain state studied. In this paper, we propose a classification-based approach to effectively quantify artefact contamination in EEG segments, and discriminate muscular artefacts. The performance of our method were assessed on different databases containing either artificially contaminated or real artefacts recorded with different type of sensors, includingwet and dry EEG electrodes. Furthermore, the quality of unlabelled databases was evaluated. For all the studied databases, the proposed method is able to rapidly assess the quality of the EEG signals with an accuracy higher than 90%. The obtained performance suggests that our approach provide an efficient, fast and automated quality assessment of EEG signals from low-cost wearable devices typically composed of a dry single EEG channel.
2019
Artefact detection; Electroencephalography (EEG); Muscular artefacts; Quality assessment; Single-channel EEG; Wearable systems; Algorithms; Artifacts; Brain; Brain-Computer Interfaces; Electrodes; Electroencephalography; Humans; Wearable Electronic Devices
01 Pubblicazione su rivista::01a Articolo in rivista
Quality assessment of single-channel EEG for wearable devices / Grosselin, F.; Navarro-Sune, X.; Vozzi, A.; Pandremmenou, K.; Fallani, F. V.; Attal, Y.; Chavez, M.. - In: SENSORS. - ISSN 1424-8220. - 19:3(2019), p. 601. [10.3390/s19030601]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1487491
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