1 / 2017-10-15 16:12:42
Adaptive CSP with subspace alignment for subject-to-subject transfer in motor imagery brain-computer interfaces
BCI, motor imagery, transfer learning, CSP, subspace alignment
Draft Pending
In brain-computer interfaces, adapting a classifier from one user to another is challenging but essential to reduce training time for new users. Common Spatial Patterns (CSP) is a widely used method for learning spatial filters for user specific feature extraction but the performance is degraded when applied to a different user. This paper proposes a novel Adaptive Selective Common Spatial Pattern (ASCSP) method to update the covariance matrix using the most probable candidates. Subspace alignment is then applied to the extracted features before classification. The proposed method outperforms the standard CSP and adaptive CSP algorithms proposed by other authors. Visualization of extracted features is provided to demonstrate how subspace alignment contributes to reduce the domain variance between source and target domain.
Important Date
  • Conference Date

    Jan 15

    2018

    to

    Jan 17

    2018

  • Oct 01 2017

    Abstract Submission Deadline

  • Oct 15 2017

    Draft paper submission deadline

  • Nov 15 2017

    Draft Paper Acceptance Notification

  • Dec 15 2017

    Final Paper Deadline

  • Jan 17 2018

    Registration deadline

Sponsored By
IEEE
Organized By
Korea University
BK21 Plus Global Leader Develop Division in Brain Engineering