Deep Invertible Networks for EEG-based brain-signal decoding

17 Jul 2019  ·  Robin Tibor Schirrmeister, Tonio Ball ·

In this manuscript, we investigate deep invertible networks for EEG-based brain signal decoding and find them to generate realistic EEG signals as well as classify novel signals above chance. Further ideas for their regularization towards better decoding accuracies are discussed.

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