Oculomotor activity parameters of the operator in the P300 brain computer interface and similar stimulus situations

436

Abstract

Hypotheses about the relationship of the processes of visual perception and variations of the task in an identical stimulus environment was tested. The following tasks were tested: 1) a simple observation of the illuminations of the character in the matrix; 2) counting the number of highlights; 3) monitoring of the target symbol highlights and typing text with the P300 BCI. In a group of 14 people showed that the highest average length of visual fixation and the lowest dispersion of fixation observed for the second type of task. Statistically significant differences in the level of dispersion of visual fixations found between 1-2 and 1-3 modes; differences between the modes for the duration of fixations are at trends. Significant differences in the number of visual fixations on the target symbols wasn’t detected. The overall conclusion is the high perspective of pairing methodology brain-computer interface on the P300 wave with eye tracking to optimize the characteristics of the stimulus in the BCI environment. The differences in the parameters of oculomotor activity between the tasks reflect the level of attention concentration in the target symbols of the P300 BCI

General Information

Keywords: brain-computer interface; event-related potentials; P300 wave; N200 wave; visual attention; human operator

Journal rubric: Research Methods

Article type: scientific article

DOI: https://doi.org/10.17759/exppsy.2015080410

For citation: Basiul I.A. Oculomotor activity parameters of the operator in the P300 brain computer interface and similar stimulus situations. Eksperimental'naâ psihologiâ = Experimental Psychology (Russia), 2015. Vol. 8, no. 4, pp. 134–144. DOI: 10.17759/exppsy.2015080410. (In Russ., аbstr. in Engl.)

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Information About the Authors

Ivan A. Basiul, Junior Researcher. Laboratory of Cognitive Processes and Mathematical Psychology, Institute of Psychology of the Russian Academy of Sciences, Lecturer of the Department of General Psychology, Moscow Institute of Psychoanalysis, Research laboratory assistant, Institute of Experimental Psychology of MSPPU, Moscow, Russia, ORCID: https://orcid.org/0000-0003-3153-2096, e-mail: basul@inbox.ru

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