DocumentCode :
1290895
Title :
Asynchronous BCI Based on Motor Imagery With Automated Calibration and Neurofeedback Training
Author :
Kus, R. ; Valbuena, D. ; Zygierewicz, J. ; Malechka, T. ; Graeser, A. ; Durka, P.
Author_Institution :
Fac. of Phys., Univ. of Warsaw, Warsaw, Poland
Volume :
20
Issue :
6
fYear :
2012
Firstpage :
823
Lastpage :
835
Abstract :
A new multiclass brain-computer interface (BCI) based on the modulation of sensorimotor oscillations by imagining movements is described. By the application of advanced signal processing tools, statistics and machine learning, this BCI system offers: 1) asynchronous mode of operation, 2) automatic selection of user-dependent parameters based on an initial calibration, 3) incremental update of the classifier parameters from feedback data. The signal classification uses spatially filtered signals and is based on spectral power estimation computed in individualized frequency bands, which are automatically identified by a specially tailored AR-based model. Relevant features are chosen by a criterion based on Mutual Information. Final recognition of motor imagery is effectuated by a multinomial logistic regression classifier. This BCI system was evaluated in two studies. In the first study, five participants trained the ability to imagine of the right hand, left hand and feet in response to visual cues. The accuracy of the classifier was evaluated across four training sessions with feedback. The second study assessed the information transfer rate (ITR) of the BCI in an asynchronous application. The subjects´ task was to navigate a cursor along a computer rendered 2-D maze. A peak information transfer rate of 8.0 bit/min was achieved. Five subjects performed with a mean ITR of 4.5 bit/min and an accuracy of 74.84%. These results demonstrate that the use of automated interfaces to reduce complexity for the intended operator (outside the laboratory) is indeed possible. The signal processing and classifier source code embedded in BCI2000 is available from https://www.brain-project.org/downloads.html.
Keywords :
augmented reality; brain-computer interfaces; calibration; electroencephalography; learning (artificial intelligence); medical signal processing; neurophysiology; oscillations; regression analysis; signal classification; BCI2000; EEG data; advanced signal processing tools; automated calibration; classifier parameters; classifier source code; computer rendered 2D maze; feedback data; feet movement; filtered signals; individualized frequency bands; left hand movement; machine learning; motor imagery; movement imagination; multiclass asynchronous brain-computer interface; multinomial logistic regression classifier; mutual information; neurofeedback training; right hand movements; sensorimotor oscillation modulation; signal classification; spectral power estimation; statistics; tailored AR-based model; transfer rate; user-dependent parameter automatic selection; Brain computer interfaces; Calibration; Electroencephalography; Neurofeedback; Training; Brain–computer interface (BCI); electro encephalography (EEG); event-related synchronization and desynchronization (ERD/ERS); motor imagery; neurofeedback; Adult; Algorithms; Brain-Computer Interfaces; Calibration; Computer Graphics; Cortical Synchronization; Cues; Electroencephalography; Female; Humans; Imagination; Joints; Logistic Models; Male; Movement; Neurofeedback; Photic Stimulation; Psychomotor Performance; User-Computer Interface; Young Adult;
fLanguage :
English
Journal_Title :
Neural Systems and Rehabilitation Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1534-4320
Type :
jour
DOI :
10.1109/TNSRE.2012.2214789
Filename :
6311479
Link To Document :
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