Journal of Neural Engineering

Decoding movement signals from the movement system for brain-computer interfaces

Updated

Abstract

Classification accuracies for movement-related signals were 0.78 ± 0.02 from the cerebrum and 0.70 ± 0.01 from the cerebellum.

  • Electrocerebellography (ECeG) was shown to be a feasible source of movement-related signals for brain-computer interfaces (BCIs).
  • Decoding performance for movement vs. rest was similar between the cerebrum and cerebellum.
  • The delta band (1-3 Hz) was identified as the most useful feature for decoding movement-related signals.
  • ECeG signals closely resembled electroencephalography (EEG) signals, suggesting potential as an alternative when cerebral signals are unreliable.

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