An integrated classification method for brain computer interface system

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Date

10/07/2015

Journal Title

Journal ISSN

Volume Title

Type

Article

Publisher

IEEE

Series Info

Fifth International Conference on Digital Information Processing and Communications (ICDIPC) الصفحات 141-146;الصفحات 141-146

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Abstract

A channel of communication for both human brain and computer system is provided via a system called Brain Computer Interface (BCI). The vital aim of BCI research is to develop a system that helps the disabled people to interact with other persons and allows their interaction with the external environments or as an additional man-machine interaction channel for healthy users. Different techniques have been developed in the literature for the classification of brain signals. The purpose of this work is to deveolp a novel method of analyzing the EEG signals. We have used high pass filter to remove artifacts, DWT algorithms for feature extraction and features like Mean Absolute Value, Root Mean Square, and Simple Square Integral are used. The neural network algorithm is used to find the correct class label for EEG signal after clustering the feature vectors using K-Nearest Neighbor algorithm. It has been depicted from results that the proposed integrated technique outperforms a better performance than methods mentioned in literature

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MSA GOOGLE SCHOLAR

Keywords

October University for University for Electroencephalography, Classification algorithms, Feature extraction, Clustering algorithms, Feature extraction, Mathematical model, Discrete wavelet transforms, Brain modeling

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