Document Type
Article
Publication Date
1-1-2016
Abstract
In the existing electroencephalogram (EEG) signals peak classification research, the existing models, such as Dumpala, Acir, Liu, and Dingle peak models, employ different set of features. However, all these models may not be able to offer good performance for various applications and it is found to be problem dependent. Therefore, the objective of this study is to combine all the associated features from the existing models before selecting the best combination of features. A new optimization algorithm, namely as angle modulated simulated Kalman filter (AMSKF) will be employed as feature selector. Also, the neural network random weight method is utilized in the proposed AMSKF technique as a classifier. In the conducted experiment, 11,781 samples of peak candidate are employed in this study for the validation purpose. The samples are collected from three different peak event-related EEG signals of 30 healthy subjects; (1) single eye blink, (2) double eye blink, and (3) eye movement signals. The experimental results have shown that the proposed AMSKF feature selector is able to find the best combination of features and performs at par with the existing related studies of epileptic EEG events classification.
Keywords
Neural network with random weights (NNRW ), Kalman filtering, Simulated Kalman filter (SKF), Electroencephalogram (EEG), Peak detection algorithm, Pattern recognition
Divisions
fac_eng
Funders
High Impact Research Fund (UM.C/HIR/MOHE/ENG/16 Account code: D000016-16001),Matching Grant (Q.K130000.3043.00M79),Internal UMP Grant (GRS1503120)
Publication Title
SpringerPlus
Volume
5
Issue
1
Publisher
SpringerOpen