| Literature DB >> 31711330 |
Pramod Gaur1, Karl McCreadie1, Ram Bilas Pachori2, Hui Wang3, Girijesh Prasad4.
Abstract
The performance of a brain-computer interface (BCI) will generally improve by increasing the volume of training data on which it is trained. However, a classifier's generalization ability is often negatively affected when highly non-stationary data are collected across both sessions and subjects. The aim of this work is to reduce the long calibration time in BCI systems by proposing a transfer learning model which can be used for evaluating unseen single trials for a subject without the need for training session data. A method is proposed which combines a generalization of the previously proposed subject-specific "multivariate empirical-mode decomposition" preprocessing technique by taking a fixed band of 8-30Hz for all four motor imagery tasks and a novel classification model which exploits the structure of tangent space features drawn from the Riemannian geometry framework, that is shared among the training data of multiple sessions and subjects. Results demonstrate comparable performance improvement across multiple subjects without subject-specific calibration, when compared with other state-of-the-art techniques.Entities:
Keywords: Motor imagery; brain–computer interface (BCI); covariance matrix; multivariate empirical-mode decomposition (MEMD); subject-specific multivariate empirical-mode decomposition-based filtering (SS-MEMDBF); tangent space
Mesh:
Year: 2019 PMID: 31711330 DOI: 10.1142/S0129065719500254
Source DB: PubMed Journal: Int J Neural Syst ISSN: 0129-0657 Impact factor: 5.866