Artificial intelligence systems for classifying EEG responses to imaginary and real movements of operators

Here, we introduce the method based on artificial neural networks (ANNs) for recognition and classification of patterns in electroencephalograms (EEGs) associated with imaginary and real movements of untrained volunteers. In order to get the fastest and the most accurate classification performance of multichannel motor imagery EEG-patterns, we propose our approach to selection of appropriate type, topology, learning algorithm and other parameters of neural network. We considered linear neural network, multilayer perceptron, radial basis function network (RBFN) and support vector machine. We revealed that appropriate quality of recognition can be obtained by using particular groups of electrodes according to extended international 10−10 system. Besides, pre-processing of EEGs by low-pass filter can significantly increase the classification performance. We developed mathematical model based on ANN for classification of EEG patterns corresponding to imaginary or real movements, which demonstrated high efficiency for untrained subjects. Achieved recognition accuracy of movements was up to 90−95% for group of subjects. RBFN demonstrated more accurate classification performance in both cases. Pre-filtering of input data using low-pass filter significantly increases recognition accuracy on 10−20% in average, and the low-pass filter with cutoff frequency 4 Hz shows the best results. It was revealed that using different sets of electrodes placed on different brain areas and consisted of 6-12 channels, one can achieve close to maximal classification accuracy. It is convenient to use electrodes on frontal and temporal lobes for real movements, and several sets containing 6-9 electrodes — in case with imagery movements.

[1]  Mark S. Leeson,et al.  Artificial Intelligence in Medicine Channel Selection and Classification of Electroencephalogram Signals: an Artificial Neural Network and Genetic Algorithm-based Approach , 2022 .

[2]  Johan Wessberg,et al.  Evolutionary optimization of classifiers and features for single-trial EEG Discrimination , 2007, Biomedical engineering online.

[3]  Howard J. Rosen,et al.  Disorders of Frontal Lobe Function , 2015 .

[4]  Rabab K. Ward,et al.  Comparing Different Classifiers in Sensory Motor Brain Computer Interfaces , 2015, PloS one.

[5]  A. Walker Electroencephalography, Basic Principles, Clinical Applications and Related Fields , 1982 .

[6]  Juan Luis García Guirao,et al.  New trends in nonlinear dynamics and chaoticity , 2016 .

[7]  Alexey N. Pavlov,et al.  Nonlinear analysis of brain activity, associated with motor action and motor imaginary in untrained subjects , 2018 .

[8]  Minho Lee,et al.  Time-frequency analysis of band-limited EEG with BMFLC and Kalman filter for BCI applications , 2013, Journal of NeuroEngineering and Rehabilitation.

[9]  Feyzullah Temurtas,et al.  Multi-channel EEG signal feature extraction and pattern recognition on horizontal mental imagination task of 1-D cursor movement for brain computer interface , 2015, Australasian Physical & Engineering Sciences in Medicine.

[10]  J. Montalvo Aguilar,et al.  EEG Signals Processing Based on Fractal Dimension Features and Classified by Neural Network and Support Vector Machine in Motor Imagery for a BCI , 2015 .