HCFeb 7, 2021

Brain-computer interface with rapid serial multimodal presentation using artificial facial images and voice

arXiv:2102.03796v2
Originality Incremental advance
AI Analysis

This research addresses the problem of improving gaze-independent BCI systems by investigating the effect of multimodal stimuli in rapid serial presentations, which is an incremental step for BCI users.

This paper developed a rapid serial multimodal presentation (RSMP) brain-computer interface (BCI) using artificial facial images and voice stimuli. The audiovisual stimuli improved BCI performance, achieving an online accuracy of 85.7% +- 11.5%.

Electroencephalography (EEG) signals elicited by multimodal stimuli can drive brain-computer interfaces (BCIs), and research has demonstrated that visual and auditory stimuli can be employed simultaneously to improve BCI performance. However, no studies have investigated the effect of multimodal stimuli in rapid serial visual presentation (RSVP) BCIs. In the present study, we propose a rapid serial multimodal presentation (RSMP) BCI that incorporates artificial facial images and artificial voice stimuli. To clarify the effect of audiovisual stimuli on the RSMP BCI, scrambled images and masked sounds were applied instead of visual and auditory stimuli, respectively. Our findings indicated that the audiovisual stimuli improved the performance of the RSMP BCI, and that the P300 at Pz contributed to classification accuracy. Online accuracy of BCI reached 85.7+-11.5%. Taken together, these findings may aid in the development of better gaze-independent BCI systems.

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