Publication | Closed Access
EMD-Based Temporal and Spectral Features for the Classification of EEG Signals Using Supervised Learning
353
Citations
35
References
2015
Year
EngineeringBiometricsFeature ExtractionEmpirical Mode DecompositionSocial SciencesBiomedical Signal AnalysisEeg Signals UsingData SciencePattern RecognitionTimefrequency AnalysisTemporal Pattern RecognitionNeuroimagingSpectral FeaturesSignal ProcessingBrain-computer InterfaceComputational NeuroscienceEeg Signal ProcessingSpectral CentroidEmd-based TemporalNeuroscienceElectrophysiologyBraincomputer Interface
This paper presents a novel method for feature extraction from electroencephalogram (EEG) signals using empirical mode decomposition (EMD). Its use is motivated by the fact that the EMD gives an effective time-frequency analysis of nonstationary signals. The intrinsic mode functions (IMF) obtained as a result of EMD give the decomposition of a signal according to its frequency components. We present the usage of upto third order temporal moments, and spectral features including spectral centroid, coefficient of variation and the spectral skew of the IMFs for feature extraction from EEG signals. These features are physiologically relevant given that the normal EEG signals have different temporal and spectral centroids, dispersions and symmetries when compared with the pathological EEG signals. The calculated features are fed into the standard support vector machine (SVM) for classification purposes. The performance of the proposed method is studied on a publicly available dataset which is designed to handle various classification problems including the identification of epilepsy patients and detection of seizures. Experiments show that good classification results are obtained using the proposed methodology for the classification of EEG signals. Our proposed method also compares favorably to other state-of-the-art feature extraction methods.
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