Yang Licai, Li Jinliang, Yao Yucui, Wu Xiaoqing
School of Control Science & Engineering, Shandong University, Ji'nan 25061, China.
Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2008 Feb;25(1):23-6, 52.
How to detect the P300 component in EEG accurately and instantly is a hot problem in the research field of Brain-Computer Interface. In this paper, an algorithm based on F-score feature selection and support vector machines was introduced for P300 detection. Using F-score feature selection method, we reduced input features to overcome the shortcoming of support vector machines in terms of low detection speed, and then implemented the detection of P300 component with support vector machines, which have good classification performance. The algorithm was tested with a P300 dataset from the BCI competition 2003. The results showed that the algorithm achieved an accuracy of 100% in P300 detection within five repetitions, and the detection speed of this algorithm was 2 times higher than that of the traditional support vector machines algorithm without F-score feature selection.
如何准确、快速地检测脑电图中的P300成分是脑机接口研究领域的一个热点问题。本文介绍了一种基于F分数特征选择和支持向量机的算法用于P300检测。利用F分数特征选择方法,我们减少了输入特征以克服支持向量机检测速度低的缺点,然后用具有良好分类性能的支持向量机实现了P300成分的检测。该算法用2003年脑机接口竞赛的一个P300数据集进行了测试。结果表明,该算法在五次重复内对P300的检测准确率达到100%,且该算法的检测速度比未采用F分数特征选择的传统支持向量机算法快2倍。