EEG signal classification using neural network and support vector machine in brain computer interface
International Conference on Advanced Intelligent Systems and Informatics • 2016
Publication Information
Authors
MM El Bahy, M Hosny, Wael A Mohamed, Shawky Ibrahim
Keywords
Not Available
Journal
International Conference on Advanced Intelligent Systems and Informatics
Publisher
Springer, Cham
Volume
Not Available
Issue
Not Available
Pages
246-256
publication.type
Local
Paper Link
Not Available
Supplementary Materials
Not Available
Abstract
Classification of EEG signals is one of the biggest problems in Brain Computer Interface (BCI) systems. This paper presents a BCI system based on using the EEG signals associated with five mental tasks (baseline, math, mental letter composing, geometric figure rotation and visual counting). EEG data for these five cognitive tasks from one subject were taken from the Colorado University database. Wavelet Transform (WT), Fast Fourier Transform (FFT) and Principal Component Analysis (PCA) were used for features extraction. Artificial Neural Network (ANN) trained by a standard back propagation algorithm and Support Vector Machines (SVMs) were used for classifying different combinations mental tasks. Experimental results show the classification accuracies achieved with the three used feature extraction techniques and the two classification techniques.
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