Deep-learning online EEG decoding brain-computer interface using error-related potentials recorded with a consumer-grade headset

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Abstract

Objective. Brain-computer interfaces (BCIs) allow subjects with sensorimotor disability to interact with the environment. Non-invasive BCIs relying on EEG signals such as event-related potentials (ERPs) have been established as a reliable compromise between spatio-temporal resolution and patient impact, but limitations due to portability and versatility preclude their broad application. Here we describe a deep-learning augmented error-related potential (ErrP) discriminating BCI using a consumer-grade portable headset EEG, the Emotiv EPOC+. Approach. We recorded and discriminated ErrPs offline and online from 14 subjects during a visual feedback task. Main results: We achieved online discrimination accuracies of up to 81%, comparable to those obtained with professional 32/64-channel EEG devices via deep-learning using either a generative-adversarial network or an intrinsic-mode function augmentation of the training data and minimalistic computing resources. Significance. Our BCI model has the potential of expanding the spectrum of BCIs to more portable, artificial intelligence-enhanced, efficient interfaces accelerating the routine deployment of these devices outside the controlled environment of a scientific laboratory.

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APA

Ancau, D. M., Ancau, M., & Ancau, M. (2022). Deep-learning online EEG decoding brain-computer interface using error-related potentials recorded with a consumer-grade headset. Biomedical Physics and Engineering Express, 8(2). https://doi.org/10.1088/2057-1976/ac4c28

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