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A Feature Extraction Method Based on Differential Entropy and Linear Discriminant Analysis for Emotion Recognition

机译:基于微分熵和线性判别分析的情绪识别特征提取方法

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摘要

Feature extraction of electroencephalography (EEG) signals plays a significant role in the wearable computing field. Due to the practical applications of EEG emotion calculation, researchers often use edge calculation to reduce data transmission times, however, as EEG involves a large amount of data, determining how to effectively extract features and reduce the amount of calculation is still the focus of abundant research. Researchers have proposed many EEG feature extraction methods. However, these methods have problems such as high time complexity and insufficient precision. The main purpose of this paper is to introduce an innovative method for obtaining reliable distinguishing features from EEG signals. This feature extraction method combines differential entropy with Linear Discriminant Analysis (LDA) that can be applied in feature extraction of emotional EEG signals. We use a three-category sentiment EEG dataset to conduct experiments. The experimental results show that the proposed feature extraction method can significantly improve the performance of the EEG classification: Compared with the result of the original dataset, the average accuracy increases by 68%, which is 7% higher than the result obtained when only using differential entropy in feature extraction. The total execution time shows that the proposed method has a lower time complexity.
机译:脑电图(EEG)信号的特征提取在可穿戴计算领域中发挥着重要作用。由于脑电图情感计算的实际应用,研究人员经常使用边缘计算来减少数据传输时间,但是,由于脑电图涉及大量数据,因此,如何有效地提取特征并减少计算量仍然是研究的重点。研究。研究人员提出了许多脑电特征提取方法。但是,这些方法存在时间复杂度高,精度不足等问题。本文的主要目的是介绍一种从脑电信号中获得可靠区分特征的创新方法。这种特征提取方法将微分熵与线性判别分析(LDA)相结合,可用于情感EEG信号的特征提取。我们使用三类情绪EEG数据集进行实验。实验结果表明,提出的特征提取方法可以显着提高脑电分类的性能:与原始数据集的结果相比,平均准确率提高了68%,比仅使用差分法得到的结果高7%。特征提取中的熵。总执行时间表明,该方法具有较低的时间复杂度。

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