Multiple mental tasks classification based on nonlinear parameter of mean period using support vector machines
- Author:
Hailong LIU
;
Jue WANG
;
Chongxun ZHENG
- Publication Type:Journal Article
- Keywords:
electroencephalography (EEG);
brain-computer interface (BCI);
mental tasks classification;
mean period;
support vector machine (SVM)
- From:
Journal of Pharmaceutical Analysis
2007;19(1):70-72
- CountryChina
- Language:Chinese
-
Abstract:
Mental task classification is one of the most important problems in Brain-computer interface. This paper studies the classification of five-class mental tasks. The nonlinear parameter of mean period obtained from frequency domain information was used as features for classification implemented by using the method of SVM (support vector machines). The averaged classification accuracy of 85.6% over 7 subjects was achieved for 2-second EEG segments. And the results for EEG segments of 0.5s and 5.0s compared favorably to those of Garrett's. The results indicate that the parameter of mean period represents mental tasks well for classification. Furthermore, the method of mean period is less computationally demanding, which indicates its potential use for online BCI systems.