Transferring BCI models from calibration to control: Observing shifts in EEG features
- URL: http://arxiv.org/abs/2403.15431v1
- Date: Thu, 14 Mar 2024 09:49:00 GMT
- Title: Transferring BCI models from calibration to control: Observing shifts in EEG features
- Authors: Ivo Pascal de Jong, Lüke Luna van den Wittenboer, Matias Valdenegro-Toro, Andreea Ioana Sburlea,
- Abstract summary: Public Motor Imagery-based brain-computer interface (BCI) datasets are being used to develop increasingly good classifiers.
It is often unclear what changes may happen in the EEG patterns when users attempt to perform a control task with such a BCI.
We demonstrate a new paradigm containing a standard calibration session and a novel BCI control session based on EMG.
- Score: 5.62479170374811
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Public Motor Imagery-based brain-computer interface (BCI) datasets are being used to develop increasingly good classifiers. However, they usually follow discrete paradigms where participants perform Motor Imagery at regularly timed intervals. It is often unclear what changes may happen in the EEG patterns when users attempt to perform a control task with such a BCI. This may lead to generalisation errors. We demonstrate a new paradigm containing a standard calibration session and a novel BCI control session based on EMG. This allows us to observe similarities in sensorimotor rhythms, and observe the additional preparation effects introduced by the control paradigm. In the Movement Related Cortical Potentials we found large differences between the calibration and control sessions. We demonstrate a CSP-based Machine Learning model trained on the calibration data that can make surprisingly good predictions on the BCI-controlled driving data.
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