4.6 Article

Classification of Event-Related Potentials with Regularized Spatiotemporal LCMV Beamforming

Journal

APPLIED SCIENCES-BASEL
Volume 12, Issue 6, Pages -

Publisher

MDPI
DOI: 10.3390/app12062918

Keywords

brain-computer interface; event-related potential; beamforming; regularization

Funding

  1. special research fund of the KU Leuven [GPUDL/20/031, C24/18/098]
  2. Belgian Fund for Scientific Research-Flanders [1SC3419N, G0A4118N, G0A4321N, G0C1522N]
  3. European Union [857375]
  4. Hercules Foundation [AKUL 043]

Ask authors/readers for more resources

This study introduces two regularized estimators to improve the performance of brain-computer interfaces (BCIs) and enhance the classification accuracy of EEG signals. Through validation and comparison with limited training data, the results show that these estimators perform well and structured regularization has advantages in terms of training time and memory usage.
Featured Application Brain-computer interfaces as assistive technology to restore communication capabilities for disabled patients. The usability of EEG-based visual brain-computer interfaces (BCIs) based on event-related potentials (ERPs) benefits from reducing the calibration time before BCI operation. Linear decoding models, such as the spatiotemporal beamformer model, yield state-of-the-art accuracy. Although the training time of this model is generally low, it can require a substantial amount of training data to reach functional performance. Hence, BCI calibration sessions should be sufficiently long to provide enough training data. This work introduces two regularized estimators for the beamformer weights. The first estimator uses cross-validated L2-regularization. The second estimator exploits prior information about the structure of the EEG by assuming Kronecker-Toeplitz-structured covariance. The performances of these estimators are validated and compared with the original spatiotemporal beamformer and a Riemannian-geometry-based decoder using a BCI dataset with P300-paradigm recordings for 21 subjects. Our results show that the introduced estimators are well-conditioned in the presence of limited training data and improve ERP classification accuracy for unseen data. Additionally, we show that structured regularization results in lower training times and memory usage, and a more interpretable classification model.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.6
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available