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Call for Paper - May 2015 Edition
IJCA solicits original research papers for the May 2015 Edition. Last date of manuscript submission is April 20, 2015. Read More

The Detection of Normal and Epileptic EEG Signals using ANN Methods with Matlab-based GUI

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International Journal of Computer Applications
© 2015 by IJCA Journal
Volume 114 - Number 12
Year of Publication: 2015
Authors:
Gamze Dogali Çetin
Özdemir Çetin
Mehmet Recep Bozkurt
10.5120/20034-2145

Gamze Dogali Cetin, Ozdemir Cetin and Mehmet Recep Bozkurt. Article: The Detection of Normal and Epileptic EEG Signals using ANN Methods with Matlab-based GUI. International Journal of Computer Applications 114(12):45-50, March 2015. Full text available. BibTeX

@article{key:article,
	author = {Gamze Dogali Cetin and Ozdemir Cetin and Mehmet Recep Bozkurt},
	title = {Article: The Detection of Normal and Epileptic EEG Signals using ANN Methods with Matlab-based GUI},
	journal = {International Journal of Computer Applications},
	year = {2015},
	volume = {114},
	number = {12},
	pages = {45-50},
	month = {March},
	note = {Full text available}
}

Abstract

Epilepsy is common neurological disorder disease in the world. Electroencephalogram (EEG) can provide significant information about epileptic activity in human brain. Since detection of the epileptic activity requires analyzing of very length EEG recordings by an expert, researchers tend to improve automated diagnostic systems for epilepsy in recent years. In this work, we try to automate detection of epilepsy using EEG based on Matlab Graphical User Interface (GUI). Three different types of Artificial Neural Networks (ANN), namely, Feed Forward Backpropagation, Cascade and Elman neural networks, are used for the classification EEG (existence of epileptic seizure or not). Before classification process, we use autoregressive model to data reduction and three different AR model algorithms to calculate the coefficients. Developed Matlab-based GUI provides flexible and visual utilization to observe normal/epileptic EEG and test results. Training parameters and type of neural networks are decided by users on the interface. Performance of the proposed model is evaluated using overall accuracy.

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