Publish In |
International Journal of Advance Computational Engineering and Networking (IJACEN)-IJACEN |
Journal Home Volume Issue |
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Issue |
Volume-5,Issue-8 ( Aug, 2017 ) | |||||||||
Paper Title |
P300 Analysis using Artificial Neural Network | |||||||||
Author Name |
Ajay Shanbhag, Aman Prabhu Kholkar, Saish Sawant, Allister Vicente, Sparsh Martires, Supriya Patil | |||||||||
Affilition |
Padre Conceicao College Of Engineering, Verna, Goa, India | |||||||||
Pages |
30-34 | |||||||||
Abstract |
Electroencephalogram (EEG) is the measurement of electrical activity of the neurons in the brain from the scalp. This study evaluates the relative performance of two established feature extraction techniques on data collected using the P300 Speller paradigm, originally described by Farwell and Donchin [17]. We have used the following two methods: Wavelet Transform (WT) and Principal Component Analysis (PCA) in our research. In this work, WT and PCA are used as a preprocessing method and neural network is used for classification. With the aim to improve the distinct features extracted by wavelet transformation in P300 detection, we researched the P300 frequency domain of Event Related Potentials (ERP) and instigate the mother wavelet selection towards the divisibility of extracted features. PCA has been implemented on P300 for feature reduction for classification. Index Terms- Brain Computer Interface (BCI), Electroencephalogram (EEG), P300 Speller, Event Related Potential (ERP), Discrete Wavelet Transform (DWT), Principal Component Analysis (PCA), Neural Network. | |||||||||
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