Title :
Classification of single-trial EEG signals
Author :
Zhou, Huiyu ; Mo, Xuean ; Ma, Chaogui ; Liu, Jindong ; Jones, Paul
Author_Institution :
Essex Univ., Colchester, UK
Abstract :
Most of the existing electroencephalography (EEG) analysis methods have been developed on the basis of averaging over multiple trials in order to improve their performance against noise. These techniques usually work well in terms of their classification capability. However, they have shown deficiency in the presence of noise or artefact. In this paper, we explore an efficient artefact-removal technique based on a well-established independent component analysis (ICA) method (FastICA). This method is then used to decompose the original EEG signals, where artefacts or significant noise can be removed from the training single trial data. Our second contribution is to develop a modified SVM classification technique, based on the statistical estimation of the elements of the kernel matrix.
Keywords :
electroencephalography; independent component analysis; learning (artificial intelligence); medical signal processing; neurophysiology; signal classification; support vector machines; artefact-removal technique; electroencephalography; independent component analysis method; kernel matrix; modified SVM classification technique; signal decomposition; single-trial EEG signal classification; statistical estimation;
Conference_Titel :
Medical Applications of Signal Processing, 2005. The 3rd IEE International Seminar on (Ref. No. 2005-1119)
Conference_Location :
IET
Print_ISBN :
0-86341-570-9