Exploring Artificial Neural Network Models for c-VEP Decoding in a Brain-Artificial Intelligence Interface

Publications: Contribution to conferencePaperPeer Reviewed

Abstract

The Conversational Brain-Artificial Intelligence Interface (BAI) is a novel brain-computer interface (BCI) that uses artificial intelligence (AI) to help individuals with severe language impairments communicate. It translates users? broad intentions into coherent, context-specific responses through an advanced AI conversational agent. A critical aspect of intention translation in BAI is the decoding of code-modulated visual evoked potentials (c-VEP) signals. This study evaluates five different artificial neural network (ANN) architectures for decoding c-VEP-based EEG signals in the BAI system, highlighting the efficacy of lightweight, shallow ANN models and pre-training strategies using data from other participants to enhance classification performance. These results provide valuable insights for the application of ANN models in decoding c-VEP-based EEG signals and may benefit other c-VEP-based BCI systems. Index Terms--Brain-Artificial Intelligence Interface (BAI), c- VEP, EEG, chatgpt, artificial neural network (ANN).
Original languageEnglish
Publication statusPublished - Dec 2024
EventThe 5th International Workshop on Machine Learning for EEG Signal Processing - Lisbon
Duration: 3 Sept 20246 Sept 2024
https://ieeebibm.org/BIBM2024/

Conference

ConferenceThe 5th International Workshop on Machine Learning for EEG Signal Processing
CityLisbon
Period3/09/246/09/24
Internet address

Austrian Fields of Science 2012

  • 102039 Neuroinformatics

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