Abstract

Electroencephalogram (EEG) comprises valuable details related to the different physiological state of the brain. In this paper, a framework is offered for detecting the epileptic seizures from EEG data recorded from normal subjects and epileptic patients. This framework is based on a discrete wavelet transform (DWT) analysis of EEG signals using linear and nonlinear classifiers. The performance of the different combinations of two-class epilepsy detection is studied using Support Vector Machine (SVM) and neural network analysis (NNA) classifiers for the derived statistical features from DWT. In this new approach first parse EEG signals to sub-bands in different categories with the help of discrete wavelet transform (DWT) and then we derive statistical features such as Mean, Median, Standard Deviation, Kurtosis, Entropy, Skewness for each sub-band. These features, extracted from details and approximation coefficients of DWT sub-bands, are used as input to Principal Component Analysis (PCA). The classification is based on reducing the feature dimension using PCA and deriving the Support Vector Machine (SVM) and neural network analysis (NNA). In classification of normal and epileptic, results obtained exhibited an accuracy of 100% by applying NNA and 99% by SVM it has been found that the computation time of NNA classifier is lesser than SVM to provide 100% accuracy.

Highlights

  • Epilepsy is a chronic neurological brain disorder Characterized by abnormal brain electrical activity which affects about one percent of world population [1]

  • It is found that the entropy and kurtosis from all the five sub-bands are optimum for classification of EEG signals and it gives high performance accuracy

  • An expert model was developed for detection of epilepsy on the background of EEG by using discrete wavelet transform and Support Vector Machine (SVM) and MLPNN classifiers

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Summary

Introduction

Epilepsy is a chronic neurological brain disorder Characterized by abnormal brain electrical activity which affects about one percent of world population [1]. The most common way for epilepsy diagnosis is through analysis of EEG. Traditional epileptic diagnosis relies on tedious visual screening by neurologists from lengthy EEG recording that requires the presence of seizure activities. With the advent of new signal processing techniques, there has been an increased interest in the analysis of the EEG for prediction of epileptic seizures. These algorithms can detect abnormal disorder and malfunctioning of the brain during the seizure and can detect the onset of seizure up to some extent. Manisha Chandani and Arun Kumar: EEG Signal Processing for Epileptic Seizure Prediction by

Material and Method
Wavelet Transform for Signal Analysis
Feature Extraction
Classification
Experimental Result
Findings
Conclusion

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