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Intelligent artifacts removal in a non-invasive single channel EEG recording

Abstract : Muscle noises, line noises and eye movements are the main interferences that make difficulties when interpreting and analyzing electroencephalographic signals. Many methods have been proposed for artifacts removing from EEG measurements, and especially those arising from an ocular source.Principal Component Analysis (PCA) and Independent Component Analysis (ICA) have been proposed to remove ocular artifacts from multichannel EEG. In contrast to this, we present a new algorithm for ocular artifacts removal from a single electroencephalographic channel recording. This method is based on a set of information on brain wave frequencies. Our results on EEG data, collected from healthy subjects, show that our algorithm can effectively detect and remove ocular artifacts in EEG recordings.
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https://hal.uvsq.fr/hal-02541579
Contributor : Sylvain Chevallier <>
Submitted on : Tuesday, April 14, 2020 - 8:09:49 AM
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Amin Zammouri, Abdelaziz Ait Moussa, Sylvain Chevallier, Eric Monacelli. Intelligent artifacts removal in a non-invasive single channel EEG recording. Intelligent Systems and Computer Vision (ISCV), Mar 2015, Fez, Morocco, France. ⟨hal-02541579⟩

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