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Estimation psychophysiological state via nonlinear dynamic integral models

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dc.contributor.author Pavlenko, Vitaliy
dc.contributor.author Павленко, Віталій Данилович
dc.contributor.author Павленко, Виталий Данилович
dc.contributor.author Shamanina, Tetiana
dc.contributor.author Шаманіна, Тетяна Володимірівна
dc.contributor.author Шаманина, Татьяна Владимировна
dc.contributor.author Chori, Vladуslav
dc.contributor.author Чорі, Владислав Владиславович
dc.contributor.author Чори, Владислав Владиславович
dc.date.accessioned 2023-07-07T12:55:06Z
dc.date.available 2023-07-07T12:55:06Z
dc.date.issued 2023-07-03
dc.identifier.citation Pavlenko, V., Shamanina, T., Chori, V. (2023). Estimation psychophysiological state via nonlinear dynamic integral models. Аpplied Aspects of Information Technology, Vol. 6, N 2, р. 117–129. еn
dc.identifier.citation Pavlenko, V. Estimation psychophysiological state via nonlinear dynamic integral models / V. Pavlenko, T. Shamanina, V. Chori // Аpplied Aspects of Information Technology = Прикладні аспекти інформ. технологій. – Оdesa, 2023. – Vol. 6, N 2. – P. 117–129. еn
dc.identifier.issn 2617-4316
dc.identifier.issn 2663-7723
dc.identifier.uri http://dspace.opu.ua/jspui/handle/123456789/13901
dc.description.abstract The method of experimental research “input-output”of the human oculo-motor system was developed and implemented using innovative eye-tracking technology for recording oculo-motor systemresponses to test visual stimuli. Stimuli are displayed on the monitor screen at different distances from the starting position. This formally corresponds to the action of step signals with different amplitudes at the input of the oculo-motor system. According to the empirical data of the “input-output”studies of the respondent's oculo-motor systemobtained with the aid of the TobiiProTX300 eye tracker, the transient functions of the first and diagonal intersections of the transient functions of the second and third orders of the oculo-motor systemwere determined. Experimental studies of the respondent's oculo-motor systemto identify the state of fatigue were carried out before the beginning (in the morning) and after the working day (in the evening). The obtained multidimensional transient functions are used as a source of primary data in the implementation of intelligent information technology for diagnosis and monitoring of the psychophysiological state of a person. Instrumental algorithmic and software tools for determining diagnostic features based on the identification data of the oculo-motor systemin the form of multidimensional transient functionsin the Python language have been developed.Training samples of data fortwo states of the respondent (“Normal”and “Fatigue”) were formed on the basis of the proposed heuristic features, which are determined using integral and differential transformations of the obtained multidimensional transient functionsof the oculo-motor system. Training samples of data are used to build classifiers of psychophysiological states of an individual using machine learning tools. The informativeness of individual features and all their possible combinations in pairs according to the indicator of the probability of correct recognition was studied using the method of complete search. The research results were obtained by evaluating the quality of recognition of states built by Bayesian classifiers in different spaces of the proposed features. An analysis of the stability of the correct recognitioninformativeness indicator of different feature spaces under the influence of different levels of additive noise on the features was carried out. Two-dimensional feature spaces with the maximum and most stable value of the correct recognitionindicator were found when solving the scientific and practical task of assessing the psychophysiological state (fatigue) of a person (0.9375). Thus, it seems appropriate to use the multidimensional transient functionsobtained from eye-tracking data in diagnostic studies in the fields of neuroscience and experimental psychology. en
dc.language.iso en en
dc.publisher Nauka i Tekhnika en
dc.subject Estimation of psychophysiological state en
dc.subject diagnosis en
dc.subject oculo-motor system en
dc.subject identification en
dc.subject Volterra model en
dc.subject multidimensional transient functions en
dc.subject est visual stimuli en
dc.subject eye-tracking technology en
dc.title Estimation psychophysiological state via nonlinear dynamic integral models en
dc.title.alternative Оцінка психофізіологічного стану за допомогою нелінійних динамічних інтегральних моделей uk
dc.type Article en
opu.citation.journal Applied Aspects of Information Technology en
opu.citation.volume 2 en
opu.citation.firstpage 117 en
opu.citation.lastpage 129 en
opu.citation.issue 6 en


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