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JOURNALS // Informatics and Automation // Archive

Tr. SPIIRAN, 2015 Issue 40, Pages 163–182 (Mi trspy810)

Classification of Electroencephalographic Patterns of Imaginary One-hand Finger Movements for Brain-Computer Interface Development

L. A. Stankevicha, K. M. Sonkina, Zh. V. Nagornovab, J. G. Khomenkoc, N. V. Shemyakinab

a Institute of Computing and Control of St. Petersburg State Polytechnic University
b Sechenov Institute of Evolutionary Physiology and Biochemistry of the Russian Academy of Sciences (IEPhB RAS)
c N.P. Bechtereva Institute of the Human brain of the Russian Academy of Sciences

Abstract: The results of kinesthetic motor imagery EEG-pattern classification of one hand fingers and wrist movements executed in a given rhythm are presented in this study. The classifiers were based on the support vector machine method and on the developed neural network committee. It was shown that the accuracy of pairwise EEG-pattern classification of imaginary movements by means of the neural network committee was higher on average than the accuracy of the support vector machine classifier. The possibility of improving the accuracy of fine motor imaginary classification was revealed with the help of individual approach implementation for selection of EEG-pattern classification parameters.

Keywords: kinesthetic motor imagery; fingers of one hand; electroencephalography, neural network committee; support vector machine with radial basis function; single trial; brain-computer interface.

UDC: 004.93

DOI: {}{}{}



© Steklov Math. Inst. of RAS, 2024