Publication | Closed Access
Effect of filtering with time domain features for the detection of epileptic seizure from EEG signals
26
Citations
28
References
2018
Year
EngineeringBiometricsFeature ExtractionNeurophysiological BiomarkersVector MachinesElectroencephalographySocial SciencesBiomedical Signal AnalysisData SciencePattern RecognitionEeg SignalsCognitive ElectrophysiologyTimefrequency AnalysisEpileptic SeizureNaive BayesStandard DeviationStatistical Pattern RecognitionSignal ProcessingBrain-computer InterfaceNeurophysiologyComputational NeuroscienceEeg Signal ProcessingTime Domain FeaturesElectrophysiologyBrain ElectrophysiologyNeuroscienceBraincomputer InterfaceWaveform Analysis
Pattern recognition plays an important role in the detection of epileptic seizure from electroencephalogram (EEG) signals. In this pattern recognition study, the effect of filtering with the time domain (TD) features in the detection of epileptic signal has been studied using naive Bayes (NB) and supports vector machines (SVM). It is the first time the authors attempted to use TD features such as waveform length (WL), number of zero-crossings (ZC) and number of slope sign changes (SSC) derived from the filtered and unfiltered EEG data, and performance of these features is studied along with mean absolute value (MAV) which has been already attempted by the researchers. The other TD features which are attempted by the researchers such as standard deviation (SD) and average power (AVP) along with MAV are studied. A comparison is made in effect of filtering and without filtering for the University of Bonn database using NB and SVM for the TD features attempted first time along with MAV. The effect of individual and combined TD features is studied and the highest classification accuracy obtained in using direct TD features would be 99.87%, whereas it is 100% with filtered EEG data. The raw EEG data can be segmented and filtered using the fourth-order Butterworth band-pass filter.
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