Applications of SSVEP signals in Brain-Computer Interfaces - multidimensional approach To Human-Computer Interaction

Authors

  • Adrianna Piszcz Kazimierz Wielki University

DOI:

https://doi.org/10.34767/SIMIS.2024.03.02

Keywords:

brain-computer interface, SSVEP, VR, AR, human-computer interaction

Abstract

This work aims to showcase the diverse applications of SSVEP (Steady-State Visually Evoked Potentials) signals in brain-computer interfaces (BCI). BCIs based on SSVEP allow for intuitive and versatile control, opening new possibilities in areas like assistive device control, virtual and augmented reality, smart home control, gaming, and entertainment. The paper will discuss methods for acquiring and processing EEG signals, classification algorithms, and their application in various systems. Research results demonstrate the effectiveness of SSVEP technology in providing reliable and precise interactions, making it a key element in the development of modern user interfaces and support systems.

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Published

2024-12-20

How to Cite

Applications of SSVEP signals in Brain-Computer Interfaces - multidimensional approach To Human-Computer Interaction. (2024). Studia I Materiały Informatyki Stosowanej, 16(3), 12-17. https://doi.org/10.34767/SIMIS.2024.03.02