Artificial Neural Network Classification of Motor-Related EEG: An Increase in Classification Accuracy by Reducing Signal Complexity

被引:69
作者
Maksimenko, Vladimir A. [1 ]
Kurkin, Semen A. [1 ]
Pitsik, Elena N. [1 ]
Musatov, Vyacheslav Yu [1 ]
Runnova, Anastasia E. [1 ]
Efremova, Tatyana Yu [1 ]
Hramov, Alexander E. [1 ]
Pisarchik, Alexander N. [1 ,2 ]
机构
[1] Yuri Gagarin State Tech Univ Saratov, REC Artificial Intelligence Syst & Neurotechnol, Saratov 410054, Russia
[2] Tech Univ Madrid, Ctr Biomed Technol, Madrid 28223, Spain
基金
俄罗斯科学基金会;
关键词
BRAIN-COMPUTER-INTERFACE; GENETIC ALGORITHM; CHANNEL SELECTION; IMAGERY; FEATURES; BCI; PERFORMANCE; PATTERN; TASK;
D O I
10.1155/2018/9385947
中图分类号
O1 [数学];
学科分类号
0701 ; 070101 ;
摘要
We apply artificial neural network (ANN) for recognition and classification of electroencephalographic (EEG) patterns associated with motor imagery in untrained subjects. Classification accuracy is optimized by reducing complexity of input experimental data. From multichannel EEG recorded by the set of 31 electrodes arranged according to extended international 10-10 system, we select an appropriate type of ANN which reaches 80 +/- 10% accuracy for single trial classification. Then, we reduce the number of the EEG channels and obtain an appropriate recognition quality (up to 73 +/- 15%) using only 8 electrodes located in frontal lobe. Finally, we analyze the time-frequency structure of EEG signals and find that motor-related features associated with left and right leg motor imagery are more pronounced in the mu (8-13 Hz) and delta (1-5 Hz) brainwaves than in the high-frequency beta brainwave (15-30 Hz). Based on the obtained results, we propose further ANN optimization by preprocessing the EEG signals with a low-pass filter with different cutoffs. We demonstrate that the filtration of high-frequency spectral components significantly enhances the classification performance (up to 90 +/- 5% accuracy using 8 electrodes only). The obtained results are of particular interest for the development of brain-computer interfaces for untrained subjects.
引用
收藏
页数:10
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