DocumentCode
735085
Title
Feature extraction with deep belief networks for driver´s cognitive states prediction from EEG data
Author
Hajinoroozi, Mehdi ; Tzyy-Ping Jung ; Chin-Teng Lin ; Yufei Huang
Author_Institution
Dept. of Electr. & Comput. Eng., Univ. of Texas at San Antonio, San Antonio, TX, USA
fYear
2015
fDate
12-15 July 2015
Firstpage
812
Lastpage
815
Abstract
This study considers the prediction of driver´s cognitive states from electroencephalographic (EEG) data. Extracting EEG features correlated with driver´s cognitive states is key for achieving accurate prediction. However, high dimensionality and temporal-and-spatial correlations of EEG data make extraction of effective features difficult. This study explores the approaches based on deep belief networks (DBN) for feature extraction and dimension reduction. Experimental results of this study showed that DBN applied to channel epochs (DBN-C) produces the most discriminant features and the best classification performance is achieved when DBN-C is applied to the time-frequency and independent-component-analysis transformed EEG data. The results suggested that DBN-C is a promising new method for extracting complex, discriminant features for EEG-based brain computer interfaces.
Keywords
belief networks; brain-computer interfaces; cognition; electroencephalography; feature extraction; independent component analysis; medical signal processing; DBN-C; EEG data; EEG feature extraction; EEG-based brain computer interface; channel epoch; deep belief network; dimension reduction; driver cognitive states prediction; electroencephalographic data; independent-component-analysis; temporal-and-spatial correlation; time-frequency; Bagging; Boosting; Decision support systems; Indexes; Support vector machines; Classification; Deep belief network; feature extraction;
fLanguage
English
Publisher
ieee
Conference_Titel
Signal and Information Processing (ChinaSIP), 2015 IEEE China Summit and International Conference on
Conference_Location
Chengdu
Type
conf
DOI
10.1109/ChinaSIP.2015.7230517
Filename
7230517
Link To Document