Abstract
Steady-state visual evoked potentials (SSVEPs) have been extensively utilized to develop brain–computer interfaces (BCIs) due to the advantages of robustness, large number of commands, high classification accuracies, and information transfer rates (ITRs). However, the use of several simultaneous flickering stimuli often causes high levels of user discomfort, tiredness, annoyingness, and fatigue. Here we propose to design a stimuli-responsive hybrid speller by using electroencephalography (EEG) and video-based eye-tracking to increase user comfortability levels when presented with large numbers of simultaneously flickering stimuli. Interestingly, a canonical correlation analysis (CCA)-based framework was useful to identify target frequency with a 1 s duration of flickering signal. Our proposed BCI-speller uses only six frequencies to classify forty-eight targets, thus achieve greatly increased ITR, whereas basic SSVEP BCI-spellers use an equal number of frequencies to the number of targets. Using this speller, we obtained an average classification accuracy of 90.35 ± 3.597% with an average ITR of 184.06 ± 12.761 bits per minute in a cued-spelling task and an ITR of 190.73 ± 17.849 bits per minute in a free-spelling task. Consequently, our proposed speller is superior to the other spellers in terms of targets classified, classification accuracy, and ITR, while producing less fatigue, annoyingness, tiredness and discomfort. Together, our proposed hybrid eye tracking and SSVEP BCI-based system will ultimately enable a truly high-speed communication channel.
Highlights
A brain–computer interface (BCI) provides a direct line of communication between a human brain and a computer by converting physiological signals into commands for the control of external devices [1,2,3,4,5]
We propose a hybrid strategy to increase user comfort and to achieve high eye tracking and state visually evoked potentials (SSVEPs)-BCI-based speller classification accuracy and information transfer rates (ITRs)
The performance of the proposed speller was compared with the performance of a previously developed basic BCI-speller with SSVEPs only and hybrid EEG and eye tracking-based speller systems
Summary
A brain–computer interface (BCI) provides a direct line of communication between a human brain and a computer by converting physiological signals into commands for the control of external devices [1,2,3,4,5]. Several BCI systems have been developed by using EEG signals, including [14] event-related desynchronization/synchronization. SSVEP-based BCIs are the most practical, because they support a large number of output commands and require little training time [19,20,21,22,23,24,25,26,27]. Users of an SSVEP-based BCI are presented with a set of visual targets that are associated with possible characters, each of which flickers at a different, fixed frequency [32]. In an SSVEP BCI, target character/command where user is looking at is decoded by using corresponding
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