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NTIS 바로가기Scientific reports, v.12, 2022년, pp.4245 -
Ali, Omair (Faculty of Medicine, Department of Neurosurgery, University Hospital Knappschaftskrankenhaus Bochum GmbH, Bochum, Germany) , Saif-ur-Rehman, Muhammad (Department of Computer Science, Ruhr-West University of Applied Science, Mü) , Dyck, Susanne (lheim an der Ruhr, Germany) , Glasmachers, Tobias (Faculty of Medicine, Department of Neurosurgery, University Hospital Knappschaftskrankenhaus Bochum GmbH, Bochum, Germany) , Iossifidis, Ioannis (Institut Fü) , Klaes, Christian (r Neuroinformatik, Ruhr University Bochum, Bochum, Germany)
Brain-computer interfaces (BCIs) enable communication between humans and machines by translating brain activity into control commands. Electroencephalography (EEG) signals are one of the most used brain signals in non-invasive BCI applications but are often contaminated with noise. Therefore, it is ...
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