AbstractThis paper explores the advanced properties of empirical mode decomposition (EMD) and its multivariate '/> Emotion recognition from EEG signals by using multivariate empirical mode decomposition
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Emotion recognition from EEG signals by using multivariate empirical mode decomposition

机译:利用多元经验模态分解从脑电信号中识别情绪

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AbstractThis paper explores the advanced properties of empirical mode decomposition (EMD) and its multivariate extension (MEMD) for emotion recognition. Since emotion recognition using EEG is a challenging study due to nonstationary behavior of the signals caused by complicated neuronal activity in the brain, sophisticated signal processing methods are required to extract the hidden patterns in the EEG. In addition, multichannel analysis is another issue to be considered when dealing with EEG signals. EMD is a recently proposed iterative method to analyze nonlinear and nonstationary time series. It decomposes a signal into a set of oscillations called intrinsic mode functions (IMFs) without requiring a set of basis functions. In this study, a MEMD-based feature extraction method is proposed to process multichannel EEG signals for emotion recognition. The multichannel IMFs extracted by MEMD are analyzed using various time and frequency domain techniques such as power ratio, power spectral density, entropy, Hjorth parameters and correlation as features of valance and arousal scales of the participants. The proposed method is applied to the DEAP emotional EEG data set, and the results are compared with similar previous studies for benchmarking.
机译: Abstract 本文探讨了经验模式分解(EMD)及其多元变量的高级特性扩展(MEMD)用于情感识别。由于由于大脑中复杂的神经元活动导致信号的不稳定行为,因此使用EEG进行情绪识别是一项具有挑战性的研究,因此需要复杂的信号处理方法来提取EEG中的隐藏模式。另外,在处理EEG信号时,多通道分析是另一个要考虑的问题。 EMD是最近提出的一种用于分析非线性和非平稳时间序列的迭代方法。它将信号分解为称为固有模式函数(IMF)的一组振荡,而无需一组基本函数。在这项研究中,提出了一种基于MEMD的特征提取方法来处理多通道EEG信号以进行情感识别。通过MEMD提取的多通道IMF使用各种时域和频域技术进行分析,例如功率比,功率谱密度,熵,Hjorth参数和相关性,作为参与者的价数和唤醒尺度的特征。将该方法应用于DEAP情绪脑电数据集,并将其结果与以往类似研究进行比较。

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