DocumentCode :
1127682
Title :
The Berlin Brain--Computer Interface: Accurate Performance From First-Session in BCI-NaÏve Subjects
Author :
Blankertz, Benjamin ; Losch, Florian ; Krauledat, Matthias ; Dornhege, Guido ; Curio, Gabriel ; Muller, Klaus-Robert
Author_Institution :
Machine Learning Lab., Tech. Univ. of Berlin, Berlin
Volume :
55
Issue :
10
fYear :
2008
Firstpage :
2452
Lastpage :
2462
Abstract :
The Berlin brain-computer interface (BBCI) project develops a noninvasive BCI system whose key features are: 1) the use of well-established motor competences as control paradigms; 2) high-dimensional features from multichannel EEG; and 3) advanced machine-learning techniques. Spatio-spectral changes of sensorimotor rhythms are used to discriminate imagined movements (left hand, right hand, and foot). A previous feedback study [M. Krauledat, K.-R. Muller, and G. Curio. (2007) The non-invasive Berlin brain-computer Interface: Fast acquisition of effective performance in untrained subjects. NeuroImage. [Online]. 37(2), pp. 539--550. Available: http://dx.doi.org/10.1016/j.neuroimage.2007.01.051] with ten subjects provided preliminary evidence that the BBCI system can be operated at high accuracy for subjects with less than five prior BCI exposures. Here, we demonstrate in a group of 14 fully BCI-naive subjects that 8 out of 14 BCI novices can perform at >84% accuracy in their very first BCI session, and a further four subjects at >70%. Thus, 12 out of 14 BCI-novices had significant above-chance level performances without any subject training even in the first session, as based on an optimized EEG analysis by advanced machine-learning algorithms.
Keywords :
brain; electroencephalography; learning (artificial intelligence); neurophysiology; user interfaces; BCI; Berlin brain-computer interface; machine-learning; multichannel EEG; sensorimotor rhythms; Algorithm design and analysis; Computer interfaces; Control systems; Data analysis; Electrical capacitance tomography; Electroencephalography; Foot; Learning systems; Machine learning; Machine learning algorithms; Neurofeedback; Pattern analysis; Performance analysis; Rhythm; Brain-computer interface; No index terms provided; common spatial pattern analysis; electroencephalography; event-related desynchronization; machine learning; pattern classification; sensorymotor rhythms; single-trial analysis; Adult; Artificial Intelligence; Biofeedback (Psychology); Brain; Brain Mapping; Electroencephalography; Electromyography; Electrooculography; Evoked Potentials, Visual; Female; Foot; Functional Laterality; Hand; Humans; Imagination; Learning; Male; Man-Machine Systems; Movement; Pattern Recognition, Automated; Psychomotor Performance; Signal Processing, Computer-Assisted; User-Computer Interface;
fLanguage :
English
Journal_Title :
Biomedical Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9294
Type :
jour
DOI :
10.1109/TBME.2008.923152
Filename :
4487097
Link To Document :
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