TY - JOUR
T1 - Improvement of classification accuracy in a phase-tagged steady-state visual evoked potential-based brain computer interface using multiclass support vector machine
AU - Yeh, Chia Lung
AU - Lee, Po Lei
AU - Chen, Wei Ming
AU - Chang, Chun Yen
AU - Wu, Yu Te
AU - Lan, Gong Yau
N1 - Funding Information:
This study was funded by the National Central University, the Center for Dynamical Biomarkers and Translational Medicine, National Science Council (99-2628-E-008-003, 99-2628-E-008-012, 100-2628-E-008-001, 100-2221-E −008-006, 100-2623-E-008-006-D), Center for Dynamical Biomarkers and Translational Medicine, National Central University, Taiwan (NSC 100-2911-I-008-001), Veterans General Hospital University System of Taiwan Joint Research Program (VGHUST101-G4-2-2), Taoyuan General Hospital Intramural Project (PTH10116), Cheng Hsin General Hospital Intramural Project ((298)101-06), Cheng Hsin and Yang-Ming University Program (100F117CY30), National Taiwan Normal University (NSC 98-2511-S-003-050-MY3), and National Central University and Landseed Hospital Joint Research Program (NCU-LSH-101-A-023).
PY - 2013/5/21
Y1 - 2013/5/21
N2 - Background: Brain computer interface (BCI) is an emerging technology for paralyzed patients to communicate with external environments. Among current BCIs, the steady-state visual evoked potential (SSVEP)-based BCI has drawn great attention due to its characteristics of easy preparation, high information transfer rate (ITR), high accuracy, and low cost. However, electroencephalogram (EEG) signals are electrophysiological responses reflecting the underlying neural activities which are dependent upon subject's physiological states (e.g., emotion, attention, etc.) and usually variant among different individuals. The development of classification approaches to account for each individual's difference in SSVEP is needed but was seldom reported.Methods: This paper presents a multiclass support vector machine (SVM)-based classification approach for gaze-target detections in a phase-tagged SSVEP-based BCI. In the training steps, the amplitude and phase features of SSVEP from off-line recordings were used to train a multiclass SVM for each subject. In the on-line application study, effective epochs which contained sufficient SSVEP information of gaze targets were first determined using Kolmogorov-Smirnov (K-S) test, and the amplitude and phase features of effective epochs were subsequently inputted to the multiclass SVM to recognize user's gaze targets.Results: The on-line performance using the proposed approach has achieved high accuracy (89.88 ± 4.76%), fast responding time (effective epoch length = 1.13 ± 0.02 s), and the information transfer rate (ITR) was 50.91 ± 8.70 bits/min.Conclusions: The multiclass SVM-based classification approach has been successfully implemented to improve the classification accuracy in a phase-tagged SSVEP-based BCI. The present study has shown the multiclass SVM can be effectively adapted to each subject's SSVEPs to discriminate SSVEP phase information from gazing at different gazed targets.
AB - Background: Brain computer interface (BCI) is an emerging technology for paralyzed patients to communicate with external environments. Among current BCIs, the steady-state visual evoked potential (SSVEP)-based BCI has drawn great attention due to its characteristics of easy preparation, high information transfer rate (ITR), high accuracy, and low cost. However, electroencephalogram (EEG) signals are electrophysiological responses reflecting the underlying neural activities which are dependent upon subject's physiological states (e.g., emotion, attention, etc.) and usually variant among different individuals. The development of classification approaches to account for each individual's difference in SSVEP is needed but was seldom reported.Methods: This paper presents a multiclass support vector machine (SVM)-based classification approach for gaze-target detections in a phase-tagged SSVEP-based BCI. In the training steps, the amplitude and phase features of SSVEP from off-line recordings were used to train a multiclass SVM for each subject. In the on-line application study, effective epochs which contained sufficient SSVEP information of gaze targets were first determined using Kolmogorov-Smirnov (K-S) test, and the amplitude and phase features of effective epochs were subsequently inputted to the multiclass SVM to recognize user's gaze targets.Results: The on-line performance using the proposed approach has achieved high accuracy (89.88 ± 4.76%), fast responding time (effective epoch length = 1.13 ± 0.02 s), and the information transfer rate (ITR) was 50.91 ± 8.70 bits/min.Conclusions: The multiclass SVM-based classification approach has been successfully implemented to improve the classification accuracy in a phase-tagged SSVEP-based BCI. The present study has shown the multiclass SVM can be effectively adapted to each subject's SSVEPs to discriminate SSVEP phase information from gazing at different gazed targets.
UR - http://www.scopus.com/inward/record.url?scp=84878646711&partnerID=8YFLogxK
U2 - 10.1186/1475-925X-12-46
DO - 10.1186/1475-925X-12-46
M3 - 期刊論文
C2 - 23692974
AN - SCOPUS:84878646711
SN - 1475-925X
VL - 12
JO - BioMedical Engineering Online
JF - BioMedical Engineering Online
IS - 1
M1 - 46
ER -