An Effective Classification Approach for EEG-based BCI System

Mingzhao Li, Jing Pan
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引用次数: 3

Abstract

One way to enhance performance of a BCI system is to improve accuracy of classifier. In this paper we apply two development Adaboost classifiers on the basis of an advanced boosting learning algorithm: AdaboostNN and Gentle Adaboost. AdaboostNN works by training nearest-neighbour weak learner on the resampled weighted training data in each iteration, then the weak hypotheses is linearly combined as the final prediction, while a decision tree classifier is available as the weak learner adopted by Gentle Adaboost. LDA and SVM classification methods are also tested to make a comparison with AdaboostNN and Gentle Adaboost. Besides, influence of the number of CSP filters on classification result is also discussed in this paper. By comparison, we get a conclusion that both of these two classifiers are considered to perform more effectively than LDA and SVM, even when the EEG features get a lower separability between two classes.
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一种基于脑电图的脑机接口系统分类方法
提高脑机接口系统性能的一个途径是提高分类器的准确率。本文在一种先进的增强学习算法的基础上,应用了AdaboostNN和Gentle Adaboost两种Adaboost分类器。AdaboostNN的工作原理是在每次迭代中对重采样的加权训练数据进行最近邻弱学习器的训练,然后将弱假设线性组合作为最终预测,而Gentle Adaboost采用决策树分类器作为弱学习器。对LDA和SVM分类方法进行了测试,并与AdaboostNN和Gentle Adaboost进行了比较。此外,本文还讨论了CSP滤波器个数对分类结果的影响。通过比较,我们得出结论,即使脑电特征在两类之间的可分性较低,这两种分类器也被认为比LDA和SVM更有效。
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