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Classification of EEG Signals Using Hybrid Feature Extraction and Ensemble Extreme Learning Machine

机译:使用混合特征提取和集合极限学习机的EEG信号分类

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摘要

Electroencephalogram (EEG) signals play an important role in clinical diagnosis and cognitive neuroscience. Automatic classification of EEG signals is gradually becoming the research focus, which contains two procedures: feature extraction and classification. In the phase of feature extraction, a hybrid feature extraction method is proposed and the features are derived by performing linear and nonlinear feature extraction methods, which can describe abundant properties of original EEG signals. In order to eliminate irrelevant and redundant features, feature selection based on class separability is employed to select the optimal feature subset. In the phase of classification, this paper presents a novel ensemble extreme learning machine based on linear discriminant analysis. Linear discriminant analysis is used to transform training subsets that are generated by bootstrap method, through which we can increase the differences of basic classifiers and reduce generalization errors of ensemble extreme learning machine. Experiments on two different EEG datasets are conducted in this study. Class separability is investigated to verify the effectiveness of feature extraction methods. The overall classification results show that compared with other similar studies, the proposed method can significantly enhance the performance of EEG signals classification.
机译:脑电图(EEG)信号在临床诊断和认知神经科学中发挥着重要作用。 EEG信号的自动分类逐渐成为研究重点,其中包含两个程序:特征提取和分类。在特征提取的相位中,提出了一种混合特征提取方法,通过执行线性和非线性特征提取方法来导出特征,其可以描述原始EEG信号的丰富特性。为了消除无关且冗余的功能,采用基于类别可分离性的特征选择来选择最佳特征子集。在分类阶段,本文提出了一种基于线性判别分析的新型集合极限学习机。线性判别分析用于转换由Bootstrap方法生成的训练子集,通过该训练子集,我们可以通过它来增加基本分类器的差异,并减少集合极限学习机的泛化误差。在本研究中进行了两个不同EEG数据集的实验。研究了阶级可分离性以验证特征提取方法的有效性。整体分类结果表明,与其他类似的研究相比,所提出的方法可以显着提高EEG信号分类的性能。

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