utomated real-time classification of functional states: the significance of individual tuning stage

Automated classification of a human functional state is an important problem, with applications including stress resistance evaluation, supervision over operators of critical infrastructure, teaching and phobia therapy. Such classification is particularly efficient in systems for teaching and phobia...

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Bibliographic Details
Main Authors: Galatenko, Vladimir V., Livshitz, Evgeniy D., Chernorizov, Alexsander M., Zinchenko, Yury P., Galatenko, Alexey V., Staroverov, Vladimir M., Isaychev, Sergey A., Lebedev, Vyacheslav V., Menshikova, G.Ya., Sadovnichy, Victor A., Gusev, Alexey N., Gabidullina, Rozaliya F., Podol’skii, Vladimir E
Format: Article
Language:English
Published: M.V. Lomonosov Moscow State University 2013-09-01
Series:Psychology in Russia: State of Art
Subjects:
Online Access:http://psychologyinrussia.com/volumes/pdf/2013_3/2013_3_41-48.Pdf
Description
Summary:Automated classification of a human functional state is an important problem, with applications including stress resistance evaluation, supervision over operators of critical infrastructure, teaching and phobia therapy. Such classification is particularly efficient in systems for teaching and phobia therapy that include a virtual reality module, and provide the capability for dynamic adjustment of task complexity. In this paper, a method for automated real-time binary classification of human functional states (calm wakefulness vs. stress) based on discrete wavelet transform of EEG data is considered. It is shown that an individual tuning stage of the classification algorithm — a stage that allows the involvement of certain information on individual peculiarities in the classification, using very short individual learning samples, significantly increases classification reliability. The experimental study that proved this assertion was based on a specialized scenario in which individuals solved the task of detecting objects with given properties in a dynamic set of flying objects.
ISSN:2074-6857
2307-2202