Mebarkia Kamel, Reffad Aicha
LIS Laboratory, Electronics Department, Faculty of Technology, Sétif 1 University, Sétif, Algeria.
LAS Laboratory, Electrotechnics Department, Faculty of Technology, Sétif 1 University, Sétif, Algeria.
Australas Phys Eng Sci Med. 2019 Dec;42(4):949-958. doi: 10.1007/s13246-019-00793-y. Epub 2019 Aug 30.
EEG signal can be a good alternative for disabled persons who cannot perform actions or perform them improperly. Brain computer interface (BCI) is an attractive technology which permits control and interaction with a computer or a machine using EEG signals. Brain task identification based on EEG signals is very difficult task and is still challenging researchers. In this paper, the motor imagery of left and right hand actions are identified using new features which are fed to a set of optimized SVM classifiers. Multi classifiers based classification showed having high faculty to improve the classification accuracy when using different kind or diversified features. Features selection was performed by genetic algorithm optimization. In single optimized SVM classifier, a mean classification accuracy of 89.8% was reached. To further improve the rate of classification, three SVMs classifiers have been suggested and optimized in order to find suitable features for each classifier. The three SVMs classifiers were optimized and achieved a performance mean of 94.11%. The achieved performance is a significant improvement comparing to the existing methods which does not exceed 81% while using the same database. Here, combining multi classifiers with selecting suitable features by optimization can be a good alternative for BCI applications.
脑电图(EEG)信号对于无法执行动作或动作执行不当的残疾人来说可能是一个很好的替代方案。脑机接口(BCI)是一项颇具吸引力的技术,它允许使用EEG信号与计算机或机器进行控制和交互。基于EEG信号的脑任务识别是一项非常困难的任务,仍然对研究人员构成挑战。在本文中,利用新特征识别左右手部动作的运动想象,这些新特征被输入到一组优化的支持向量机(SVM)分类器中。基于多分类器的分类在使用不同类型或多样化特征时显示出具有提高分类准确率的强大能力。特征选择通过遗传算法优化来执行。在单个优化的SVM分类器中,平均分类准确率达到了89.8%。为了进一步提高分类率,提出并优化了三个SVM分类器,以便为每个分类器找到合适的特征。这三个SVM分类器经过优化,性能均值达到了94.11%。与使用相同数据库且不超过81%的现有方法相比,所取得的性能有显著提高。在这里,将多分类器与通过优化选择合适的特征相结合可能是BCI应用的一个很好的选择。