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Methods of EEG Signal Features Extraction Using Linear Analysis in Frequency and Time-Frequency Domains
Author(s) -
Amjed Al Fahoum,
Ausilah Alfraihat
Publication year - 2014
Publication title -
isrn neuroscience
Language(s) - English
Resource type - Journals
ISSN - 2314-4661
DOI - 10.1155/2014/730218
Subject(s) - computer science , feature extraction , fast fourier transform , pattern recognition (psychology) , electroencephalography , artificial intelligence , signal processing , signal (programming language) , frequency domain , feature (linguistics) , property (philosophy) , waveform , wavelet , wavelet transform , time–frequency analysis , interface (matter) , speech recognition , digital signal processing , computer vision , algorithm , philosophy , filter (signal processing) , psychiatry , linguistics , psychology , telecommunications , epistemology , programming language , radar , computer hardware , maximum bubble pressure method , bubble , parallel computing
Technically, a feature represents a distinguishing property, a recognizable measurement, and a functional component obtained from a section of a pattern. Extracted features are meant to minimize the loss of important information embedded in the signal. In addition, they also simplify the amount of resources needed to describe a huge set of data accurately. This is necessary to minimize the complexity of implementation, to reduce the cost of information processing, and to cancel the potential need to compress the information. More recently, a variety of methods have been widely used to extract the features from EEG signals, among these methods are time frequency distributions (TFD), fast fourier transform (FFT), eigenvector methods (EM), wavelet transform (WT), and auto regressive method (ARM), and so on. In general, the analysis of EEG signal has been the subject of several studies, because of its ability to yield an objective mode of recording brain stimulation which is widely used in brain-computer interface researches with application in medical diagnosis and rehabilitation engineering. The purposes of this paper, therefore, shall be discussing some conventional methods of EEG feature extraction methods, comparing their performances for specific task, and finally, recommending the most suitable method for feature extraction based on performance.

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