| Literature DB >> 28336339 |
Farzan Majeed Noori1, Noman Naseer2, Nauman Khalid Qureshi3, Hammad Nazeer3, Rayyan Azam Khan3.
Abstract
In this paper, a novel technique for determination of the optimal feature combinations and, thereby, acquisition of the maximum classification performance for a functional near-infrared spectroscopy (fNIRS)-based brain-computer interface (BCI), is proposed. After obtaining motor-imagery and rest signals from the motor cortex, filtering is applied to remove the physiological noises. Six features (signal slope, signal mean, signal variance, signal peak, signal kurtosis and signal skewness) are then extracted from the oxygenated hemoglobin (HbO). Afterwards, the hybrid genetic algorithm (GA)-support vector machine (SVM) is applied in order to determine and classify 2- and 3-feature combinations across all subjects. The SVM classifier is applied to classify motor imagery versus rest. Moreover, four time windows (0-20s, 0-10s, 11-20s and 6-15s) are selected, and the hybrid GA-SVM is applied in order to extract the optimal 2- and 3-feature combinations. In the present study, the 11-20s time window showed significantly higher classification accuracies - the minimum accuracy was 91% - than did the other time windows (p<0.05). The proposed hybrid GA-SVM technique, by selecting optimal feature combinations for an fNIRS-based BCI, shows positive classification-performance-enhancing results.Keywords: Brain-computer interface; Functional near-infrared spectroscopy; Genetic algorithm; Motor imagery; Optimal feature selection; Support vector machine
Mesh:
Year: 2017 PMID: 28336339 DOI: 10.1016/j.neulet.2017.03.013
Source DB: PubMed Journal: Neurosci Lett ISSN: 0304-3940 Impact factor: 3.046