Research Journal of Pharmacy and Technology

SCOPUS
  • Year: 2017
  • Volume: 10
  • Issue: 10

Detection of seizure using EEG Signals by Supervised Learning Algorithms

  • Author:
  • P. Grace Kanmani Prince1,, Rani Hemamalini2, U. Anitha1, J. Premalatha1, K. Sudheera1
  • Total Page Count: 6
  • Page Number: 3443 to 3448

1Sathyabama University, Rajiv Gandhi Road, Chennai, 600118

2St. Peters College of Engineering and Technology, Avadi, Chennai, 600054

Abstract

Epileptic seizure can be detected by many ways but EEG signal prove to be the most important marker. Since EEG signal requires a strenuous effort to go through pages of recorded signal. Automatic seizure detection can be done by extracting features from the EEG signals and then feeding them to the supervised learning algorithms for classification and prediction. In this paper the features that are chosen are mean, standard deviation, skewness, kurtosis, interquartile range and mean absolute deviation. A comparative study of SVM and GRNN are done in this work and GRNN proves to be accurate for seizure detection applications.

Keywords

Epileptic seizure, supervised learning, features, feature, Support vector machine(SVM), Generalized Regression Neural Network (GRNN)