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A statistical method for automatic detection of seizure and epilepsy in the dual tree complex wavelet transform domain
Author Affiliations
Bangladesh University of Engineering and Technology, Kansas State University
Year2014
Citations26
Abstract
In this paper, a statistical method for automatic detection of seizure and epilepsy in the dual-tree complex wavelet transform(DT-CWT) domain is proposed. Variances calculated from the EEG signals and their DT-CWT sub-bands are utilized as features in the classifiers such as artificial neural network(ANN) and support vector machine(SVM). Studies are conducted using EEG signals from a publicly available benchmark EEG database to assess the ability of the proposed method for a number of clinically relevant classification scenario which include healthy vs seizure, healthy and non-seizure(inter-ictal) vs seizure(ictal), and finally, ictal vs inter-ictal records. It is shown that the proposed method using SVM performs better than employing ANN. It gives 100% accuracy, sensitivity and specificity; at least the same or better…
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