DocumentCode :
3862586
Title :
Modelling and Recognition of Movement Related EEG Signal
Author :
J. Dolezal;J. Stastny;P Sovka
Author_Institution :
Biological Signal Lab., College of Electrical Engineering, Czech Technical University in Prague, Technick? 2, Praha 6, 166 27 Czech Republic, dolezj5@fel.cvut.cz
fYear :
2006
Firstpage :
27
Lastpage :
30
Abstract :
Our previous study was aimed at the classification of right index finger movement direction by means of the movement-related EEG signal. The EEG database we used was originally recorded for a physiological research; from our point of view it has one significant drawback: there is no continuous non-movement related (resting) EEG of sufficient length (>10 sec) in the database. To overcome this limitation we decided to generate artificial resting EEG signal. This article describes method and process of non-movement related (resting) EEG signal generation along with the reached new classification results including the false alarm rate. Artificial EEG signal was generated by AR modelling. The AR model parameters were estimated from short segments (3 sec) of resting EEG already present in the database using the autocorrelation method. Owing to large intra-and inter-personal variability one set of parameters had to be estimated for each person and electrode. The artificial EEG was used for the classification with satisfactory classification results.
Keywords :
"Brain modeling","Electroencephalography","Databases","Fingers","Signal generators","Biological system modeling","Educational institutions","Signal processing","Parameter estimation","Autocorrelation"
Publisher :
ieee
Conference_Titel :
Applied Electronics, 2006. AE 2006. International Conference on
Print_ISBN :
80-7043-442-2
Type :
conf
DOI :
10.1109/AE.2006.4382955
Filename :
4382955
Link To Document :
بازگشت