Title of article
Minimizing inter-subject variability in fNIRS-based brain–computer interfaces via multiple-kernel support vector learning
Author/Authors
Abibullaev، نويسنده , , Berdakh and An، نويسنده , , Jinung and Jin، نويسنده , , Sang-Hyeon and Lee، نويسنده , , Seung Hyun and Moon، نويسنده , , Jeon Il، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2013
Pages
8
From page
1811
To page
1818
Abstract
Brain signal variation across different subjects and sessions significantly impairs the accuracy of most brain–computer interface (BCI) systems. Herein, we present a classification algorithm that minimizes such variation, using linear programming support-vector machines (LP-SVM) and their extension to multiple kernel learning methods. The minimization is based on the decision boundaries formed in classifiers’ feature spaces and their relation to BCI variation. Specifically, we estimate subject/session-invariant features in the reproducing kernel Hilbert spaces (RKHS) induced with Gaussian kernels. The idea is to construct multiple subject/session-dependent RKHS and to perform classification with LP-SVMs. To evaluate the performance of the algorithm, we applied it to oxy-hemoglobin data sets acquired from eight sessions and seven subjects as they performed two different mental tasks. Results show that our classifiers maintain good performance when applied to random patterns across varying sessions/subjects.
Keywords
Brain–computer interfaces , Functional near-infrared spectroscopy , Inter-subject variability , Support Vector Machines , RKHS , Multiple kernel learning
Journal title
Medical Engineering and Physics
Serial Year
2013
Journal title
Medical Engineering and Physics
Record number
1732397
Link To Document