An fpga-embedded brain-computer interface system to support individual autonomy in locked-in individuals

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Abstract

Brain-computer interfaces (BCI) can detect specific EEG patterns and translate them into control signals for external devices by providing people suffering from severe motor disabilities with an alternative/additional channel to communicate and interact with the outer world. Many EEG-based BCIs rely on the P300 event-related potentials, mainly because they require training times for the user relatively short and provide higher selection speed. This paper proposes a P300-based portable embedded BCI system realized through an embedded hardware platform based on FPGA (field-programmable gate array), ensuring flexibility, reliability, and high-performance features. The system acquires EEG data during user visual stimulation and processes them in a real-time way to correctly detect and recognize the EEG features. The BCI system is designed to allow to user to perform communication and domotic controls.

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Palumbo, A., Ielpo, N., & Calabrese, B. (2022). An fpga-embedded brain-computer interface system to support individual autonomy in locked-in individuals. Sensors, 22(1). https://doi.org/10.3390/s22010318

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