Supporting Real-Time Cognitive State Classification on a Mobile Individual

The effectiveness of neurophysiologically triggered adaptive systems hinges on reliable and effective signal processing and cognitive state classification. Although this presents a difficult technical challenge in any context, these concerns are particularly pronounced in a system designed for mobil...

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Veröffentlicht in:Journal of cognitive engineering and decision making 2007-09, Vol.1 (3), p.240-270
Hauptverfasser: Dorneich, Michael C., Whitlow, Stephen D., Mathan, Santosh, Ververs, Patricia May, Erdogmus, Deniz, Adami, Andre, Pavel, Misha, Lan, Tian
Format: Artikel
Sprache:eng
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Zusammenfassung:The effectiveness of neurophysiologically triggered adaptive systems hinges on reliable and effective signal processing and cognitive state classification. Although this presents a difficult technical challenge in any context, these concerns are particularly pronounced in a system designed for mobile contexts. This paper describes a neurophysiologically derived cognitive state classification approach designed for ambulatory task contexts. We highlight signal processing and classification components that render the electroencephalogram (EEG) -based cognitive state estimation system robust to noise. Field assessments show classification performance that exceeds 70% for all participants in a context that many have regarded as intractable for cognitive state classification using EEG.
ISSN:1555-3434
2169-5032
DOI:10.1518/155534307X255618