2022
DOI: 10.3389/fnrgo.2022.1045653
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Merging Brain-Computer Interface P300 speller datasets: Perspectives and pitfalls

Abstract: BackgroundIn the last decades, the P300 Speller paradigm was replicated in many experiments, and collected data were released to the public domain to allow research groups, particularly those in the field of machine learning, to test and improve their algorithms for higher performances of brain-computer interface (BCI) systems. Training data is needed to learn the identification of brain activity. The more training data are available, the better the algorithms will perform. The availability of larger datasets … Show more

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