< Back to previous page

Publication

Classifying the Auditory P300 using mobile EEG recordings without calibration phase

Book Contribution - Book Chapter Conference Contribution

One of the major drawbacks in mobile EEG Brain Computer Interfaces (BCI) is the need for subject specific training data to train a classifier. By removing the need for supervised classification and calibration phase, new users could start immediate interaction with a BCI. We propose a solution to exploit the structural difference by means of canonical polyadic decomposition (CPD) for three-class auditory oddball data without the need for subject-specific information. We achieve this by adding average event-related-potential (ERP) templates to the CPD model. This constitutes a novel similarity measure between single-trial pairs and known-templates, which results in a fast and interpretable classifier. These results have similar accuracy to those of the supervised and cross-validated stepwise LDA approach but without the need for having subject-dependent data. Therefore the described CPD method has a significant practical advantage over the traditional and widely used approach.
Book: Proc. of the 37th Annual International Conference of the IEEE Engineering in Medicine and Biology Society of the IEEE
Pages: 1777 - 1780
ISBN:9781424492718
Publication year:2015
BOF-keylabel:yes
IOF-keylabel:yes
Authors from:Government, Higher Education
Accessibility:Open