EEG signal classification by Global Field Power
Our project focuses on the emotional face evoked EEG signal recognition. Since EEG signals contain enough information to separate different emotional facial expressions. Thus we propose a new approach which is based on global field power on EEG signal classification. In order to perform this result, firstly, we gather a dataset with EEG signals. This is done by measuring EEG signals from people aged 20-30 that are stimulated by emotional facial expressions (Happy, Neutral, Sad). Secondly, the collected EEG signals are preprocessed through using noise reduction method. And then select features by principal component analysis (PCA) to filter out redundant information. Finally, using fisher classifier and a 10-fold cross validation method for training and testing, a good classification rate is achieved when combination local max global field power EEG signals. The rate is 90.49%.
EEG expression classification global field power PCA fisher
Lijuan Duan Xuebin Wang Zhen Yang Haiyan Zhou Chunpeng Wu Qi Zhang Jun Miao
College of Computer Science and Technology, Beijing University of Technology,Beijing 100124, China Key Laboratory of Intelligent Information Processing,Institute of Computing Technology,Chinese Acade
国际会议
三亚
英文
1434-1437
2012-01-06(万方平台首次上网日期,不代表论文的发表时间)