Journal ArticleUnknown
Statistical parameters in the dual tree complex wavelet transform domain for the detection of epilepsy and seizure
Author Affiliations
Bangladesh University of Engineering and Technology, Kansas State University
Published In2013 International Conference on Electrical Information and Communication Technology (EICT)
Year2014
Citations15
Abstract
In this paper, a comprehensive statistical analysis of electroencephalogram (EEG) signals is carried out in the dual tree complex wavelet transform domain using a publicly available EEG database. It is shown that variance and kurtosis can be effective in distinguishing EEG signals at sub-band levels. It is further shown that the parameters of a normal inverse Gaussian probability density function can equally discriminate the EEG signals at sub-band levels. Thus, these statistical quantities may be used to characterize EEG signals and help the researchers in developing improved classifiers for the detection of epilepsy and seizure and building a better understanding of the diverse process of EEG signals.
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