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Channel Selection of EEG Emotion Recognition using Stepwise Discriminant Analysis

机译:逐步判别分析的脑电信号情感识别通道选择

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EEG has been used by many applications recently, not only in the field of medicine but also telemarketing, games, and cybernetics. Measuring brain signal by involving EEG is complicated and delicate work because it involves many channels, frequency bands, and features. An efficient and effective method in EEG measurement is then becoming crucial among the scientists. This paper proposed a channel selection study for emotion recognition based on the EEG signal by using Stepwise Discriminant Analysis (SDA). SDA is the extension of statistical tool for discriminant analysis that include stepwise technique. In this paper, the data was obtained from the public emotion EEG dataset which was recorded using 62 channels of EEG devices for three target emotions (i.e., positive, negative and neutral). In order to handle high dimensionality in EEG signals, we extracted differential entropy feature from five frequency bands: delta, theta, alpha, beta, and gamma. The selection criteria in SDA was based on Wilks Lambda score to get the optimal channel. In order to measure the performance of selected channels, we fed the features vector of the EEG signal to the LDA classifier. We conducted several scenarios from the different number of selected channels in experiments, such as 3, 4, 7, and 15 channels. The highest accuracy of 99.85% was obtained from 15 channels scenario in all combinations of frequency bands. Our results also confirm that alpha, beta, and gamma frequency bands are reliable for EEG emotion recognition.
机译:EEG最近已被许多应用程序使用,不仅在医学领域,而且在电话销售,游戏和控制论方面。通过涉及脑电图来测量脑信号是复杂而微妙的工作,因为它涉及许多通道,频带和特征。因此,一种有效的脑电测量方法在科学家中变得至关重要。提出了一种基于脑电信号的逐步判别分析(SDA)的情感选择通道选择研究。 SDA是用于区分分析的统计工具的扩展,其中包括逐步技术。在本文中,数据来自公共情感EEG数据集,该数据集使用62个EEG设备通道记录了三种目标情感(即积极,消极和中立)。为了处理EEG信号中的高维数,我们从5个频带中提取了差分熵特征:δ,θ,α,β和γ。 SDA中的选择标准基于Wilks Lambda得分来获得最佳渠道。为了测量所选通道的性能,我们将EEG信号的特征向量馈入了LDA分类器。我们在实验中从不同数量的选定通道中进行了几种场景,例如3、4、7和15个通道。在所有频段组合中,从15个信道场景中获得的最高准确度为99.85%。我们的结果还证实,α,β和gamma频带对于EEG情绪识别是可靠的。

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