Dual Passive Reactive Brain-Computer Interface: A Novel Approach to Human-Machine Symbiosis

The present study proposes a novel concept of neuroadaptive technology, namely a dual passive-reactive Brain-Computer Interface (BCI), that enables bi-directional interaction between humans and machines. We have implemented such a system in a realistic flight simulator using the NextMind classificat...

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Veröffentlicht in:Frontiers in neuroergonomics 2022-04, Vol.3, p.824780-824780
Hauptverfasser: Dehais, Frédéric, Ladouce, Simon, Darmet, Ludovic, Nong, Tran-Vu, Ferraro, Giuseppe, Torre Tresols, Juan, Velut, Sébastien, Labedan, Patrice
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Sprache:eng
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Zusammenfassung:The present study proposes a novel concept of neuroadaptive technology, namely a dual passive-reactive Brain-Computer Interface (BCI), that enables bi-directional interaction between humans and machines. We have implemented such a system in a realistic flight simulator using the NextMind classification algorithms and framework to decode pilots' intention (reactive BCI) and to infer their level of attention (passive BCI). Twelve pilots used the reactive BCI to perform checklists along with an anti-collision radar monitoring task that was supervised by the passive BCI. The latter simulated an automatic avoidance maneuver when it detected that pilots missed an incoming collision. The reactive BCI reached 100% classification accuracy with a mean reaction time of 1.6 s when exclusively performing the checklist task. Accuracy was up to 98.5% with a mean reaction time of 2.5 s when pilots also had to fly the aircraft and monitor the anti-collision radar. The passive BCI achieved a -score of 0.94. This first demonstration shows the potential of a dual BCI to improve human-machine teaming which could be applied to a variety of applications.
ISSN:2673-6195
2673-6195
DOI:10.3389/fnrgo.2022.824780