An intelligent Adaptive User Interface (iAUI) for enhancing the communication in a Brain-Computer Interface (BCI)

Conference poster


Gandhi, V., Prasad, G., Coyle, D., Behera, L. and McGinnity, M. 2011. An intelligent Adaptive User Interface (iAUI) for enhancing the communication in a Brain-Computer Interface (BCI). UKIERI workshop on the Fusion of Brain-Computer Interface and Assistive Robotics. University of Ulster 07 - 08 Jul 2011
TypeConference poster
TitleAn intelligent Adaptive User Interface (iAUI) for enhancing the communication in a Brain-Computer Interface (BCI)
AuthorsGandhi, V., Prasad, G., Coyle, D., Behera, L. and McGinnity, M.
Abstract

Aim: A brain Computer Interface (BCI) allows an individual to communicate with external devices using electroencephalogram (EEG) or other brain signals. This paper highlights the capability of the proposed intelligent Adaptive User Interface (iAUI) design in controlling a robot in a time critical scenario.

ConferenceUKIERI workshop on the Fusion of Brain-Computer Interface and Assistive Robotics
Publication process dates
Deposited20 Aug 2013
Output statusPublished
Web address (URL)http://isrc.ulster.ac.uk/ukieri2011/images/files/posters/poster6.pdf
LanguageEnglish
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