2023
DOI: 10.53375/ijecer.2023.370
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Optimizing SSVEP-based BCI training through Adversarial Generative Neural Networks

Guilherme Figueiredo,
Sarah Negreiros Carvalho,
Guilherme Vargas
et al.

Abstract: Brain-computer interfaces (BCIs) based on steady-state visually evoked potential (SSVEP) use brain activity to control external devices, with applications ranging from assistive technologies to gaming. Typically, BCI systems are developed using supervised learning techniques that require labelled brain signals. However, acquiring these labelled signals can be tiring and time-consuming, especially for subjects with disabilities. In this study, we evaluated the performance impact of using synthetic brain signals… Show more

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