Publication | Closed Access
Removing Muscle Artifacts From EEG Data: Multichannel or Single-Channel Techniques?
122
Citations
38
References
2015
Year
ElectroencephalographySocial SciencesElectrophysiological EvaluationNeurologyMultichannel Eeg RecordingsReal Eeg RecordingsMuscle ArtifactsHealth SciencesMultichannel EegMulti-channel ProcessingNeuroimagingSignal ProcessingNeurophysiologyEeg Signal ProcessingElectromyographyNeuroscienceElectrophysiologyCentral Nervous SystemBrain ElectrophysiologyBraincomputer InterfaceSignal Separation
Electroencephalogram (EEG) recordings are often contaminated with muscle artifacts. Muscular activities strongly obscure EEG signals and complicate subsequent EEG-based data analysis. Conventional methods for removing muscle artifact from EEG are usually based on blind source separation techniques and involve jointly analyzing multichannel EEG recordings. Instead of using the multichannel approaches, this paper proposes to explore single-channel techniques for muscle artifact removal from multichannel EEG. It may seem paradoxical that we denoise each channel individually while ignoring interchannel relationships. We conduct a performance comparison study, through numerical simulations and applications to real EEG recordings contaminated with muscle artifacts. The results demonstrate the advantage of single-channel techniques over multichannel ones, especially for low signal-to-noise ratios. This paper may change the traditional understanding of denoising the EEG signals.
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