In event-related potentials based brain–
computer interfaces, the responses evoked by a well defined
stimuli sequence are usually averaged to overcome the
limitations caused by the intrinsic poor EEG signal-to-noise
ratio. This, however, implies that the time necessary to
detect the brain signals increases and then that the communication
rate can be dramatically reduced. A common
approach is then at first to estimate an optimal fixed number
of responses to be averaged on a calibration data set
and then to use this number on the online/testing dataset.
In contrast to this strategy, several early stopping methods
have been successfully proposed, aiming at dynamically
stopping the stimulation sequence when a certain condition
is met. We propose an efficient and easy to implement early
stopping method that outperforms the ones proposed in
the literature, showing its effectiveness on several publicly
available datasets recorded from either healthy subjects or
amyotrophic lateral sclerosis patients.
Dettaglio pubblicazione
2019, IEEE TRANSACTIONS ON NEURAL SYSTEMS AND REHABILITATION ENGINEERING, Pages 1635-1643 (volume: 27)
A New Early Stopping Method for P300 Spellers (01a Articolo in rivista)
Bianchi Luigi, Liti Chiara, Piccialli Veronica
Gruppo di ricerca: Continuous Optimization
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