Publication | Closed Access
Removal of EMG and ECG artifacts from EEG based on wavelet transform and ICA
83
Citations
10
References
2005
Year
Unknown Venue
Source SeparationEngineeringWavelet AnalysisWavelet TransformElectroencephalographyEcg ArtifactsSocial SciencesBiomedical Signal AnalysisElectrophysiological EvaluationBiosignal ProcessingIndependent Component AnalysisHigh Order StatisticsStatisticsNeuroimagingWavelet TheorySignal ProcessingEeg Signal ProcessingHigher Order StatisticsElectrophysiologySignal SeparationWaveform Analysis
In this study, the methods of wavelet threshold de-noising and independent component analysis (ICA) are introduced. ICA is a novel signal processing technique based on high order statistics, and is used to separate independent components from measurements. The extended ICA algorithm does not need to calculate the higher order statistics, converges fast, and can be used to separate subGaussian and superGaussian sources. A pre-whitening procedure is performed to de-correlate the mixed signals before extracting sources. The experimental results indicate the electromyogram (EMG) and electrocardiograph (ECG) artifacts in electroencephalograph (EEG) can be removed by a combination of wavelet threshold de-noising and ICA.
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