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A Research on the Method of P300 Feature Extraction Based on Blind Source Separation |
ZANG Li-guo1,ZANG Yu-man1,JIN Mei1,JIN Ju2,YU Guo-hui3 |
1.Measurement Technology and Instrumentation Key Lab of Hebei Province, Yanshan University,Qinhuangdao, Hebei 066004, China
2.School of Civil Engineering, Hebei University of Technology, Tianjin 300401, China
3.Audio-Visual Machinery Research Institute, Qinhuangdao,Hebei 066000, China |
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Abstract P300 is widely used in the field of brain cognition and BCI, however, its intensity is so weak that it is easy to suffer from interferences of environment and artifacts of blink, ECG, and EMG and normally submerged in EEG. In order to separate P300 from interferences speedily and efficiently, the feature of P300 in time, frequency and spatial domain are analyzed. A method is proposed based on BSS to extract P300 feature, combining coherence average, wavelet transformation and BSS. A new technique is described aiming at selecting ICs corresponding to P300 after BSS to multi-lead EEG. Three BSS algorithms, Informax, FastICA and AMUSE are compared in the performance of P300 feature extraction. Experimental results verify that the proposed method has an obvious improvement in P300 feature extraction compared with the other methods using temporal and frequency characteristics of P300 only.
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Received: 18 April 2014
Published: 20 October 2015
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