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首页> 外文期刊>Egyptian Informatics Journal >Employing PCA and t-statistical approach for feature extraction and classification of emotion from multichannel EEG signal
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Employing PCA and t-statistical approach for feature extraction and classification of emotion from multichannel EEG signal

机译:采用PCA和 T - 来自多通道EEG信号的特征提取和情感分类的斜体> - 秘密方法

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To achieve a highly efficient brain-computer interface (BCI) system regarding emotion recognition from electroencephalogram (EEG) signal, the most crucial issues are feature extractions and classifier selection. This work proposes an innovative method that hybridizes the principal component analysis (PCA) andt-statistics for feature extraction. This work contributes to successfully implement spatial PCA to reduce signal dimensionality and to select the suitable features based on thet-statistical inferences among the classes. The proposed method has been applied on the SEED dataset (SJTU Emotion EEG Dataset) that yielded significant channels and features for getting higher classification accuracy. With extracted features, four classifiers– support vector machine (SVM), artificial neural network (ANN), linear discriminant analysis (LDA), and k-nearest neighbor (kNN) method were applied to classify the emotional states. The classifiers showed slightly different classification accuracies compared to each other. ANN and SVM showed the highest classification accuracy (86.57?±?4.08 and 85.85?±?5.72) in case of subject dependent approach. On the other hand, the proposed method provides 84.3% and 77.1% classification accuracy with ANN and SVM, respectively in case of subject independent approach. Eventually, the proposed method and its outcomes demonstrate that this proposal is better than the several existing methods in emotion recognition.
机译:为了实现关于从脑电图(EEG)信号的情绪识别的高效脑电脑界面(BCI)系统,最重要的问题是特征提取和分类器选择。这项工作提出了一种创新方法,杂交特征提取的主成分分析(PCA)Andt-Statistics。这项工作有助于成功实施空间PCA以减少信号维度,并根据类别中的特征选择合适的特征。所提出的方法已应用于种子数据集(SJTU情绪EEG数据集),其产生了显着的通道和功能,以获得更高的分类精度。利用提取的特征,应用四个分类器 - 支持向量机(SVM),人工神经网络(ANN),线性判别分析(LDA)和K最近邻(KNN)方法来分类情绪状态。分类器彼此相比显示了略微不同的分类精度。 ANN和SVM在受试者依赖方法的情况下显示出最高的分类精度(86.57?±4.08和85.85?±5.72)。另一方面,在主题独立方法的情况下,拟议的方法分别提供84.3%和77.1%的分类准确性,分别与ANN和SVM。最终,拟议的方法及其结果表明,该提案优于情感识别中的几种现有方法。

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