School of Information Science and Engineering, Shandong Normal University, Jinan, People's Republic of China.
Shandong Provincial Key Laboratory for Distributed Computer Software Novel Technology, Jinan, People's Republic of China.
J Neural Eng. 2021 Apr 18;18(4). doi: 10.1088/1741-2552/abea62.
Electroencephalogram (EEG) based emotion recognition mainly extracts traditional features from time domain and frequency domain, and the classification accuracy is often low for the complex nature of EEG signals. However, to the best of our knowledge, the fusion of event-related potential (ERP) components and traditional features is not employed in emotion recognition, and the ERP components are only identified and analyzed by the psychology professionals, which is time-consuming and laborious.In order to recognize the consciousness and unconsciousness emotions, we propose a novel consciousness emotion recognition method using ERP components and modified multi-scale sample entropy (MMSE). Firstly, ERP components such as N200, P300 and N300 are automatically identified and extracted based on shapelet technique. Secondly, variational mode decomposition and wavelet packet decomposition are utilized to process EEG signals for obtaining different levels of emotional variational mode function (VMF), namelyVMFβ+γ, and then nonlinear feature MMSE of eachVMFβ+γare extracted. At last, ERP components and nonlinear feature MMSE are fused to generate a new feature vector, which is fed into random forest to classify the consciousness and unconsciousness emotions.Experimental results demonstrate that the average classification accuracy of our proposed method reach 94.42%, 94.88%, and 94.95% for happiness, horror and anger, respectively.Our study indicates that the fusion of ERP components and nonlinear feature MMSE is more effective for the consciousness and unconsciousness emotions recognition, which provides a new research direction and method for the study of nonlinear time series.
脑电(EEG)情绪识别主要从时域和频域提取传统特征,由于 EEG 信号的复杂性,分类准确率往往较低。然而,据我们所知,事件相关电位(ERP)成分与传统特征的融合并未应用于情绪识别,并且 ERP 成分仅由心理学专业人员识别和分析,这既耗时又费力。为了识别意识和无意识情绪,我们提出了一种使用 ERP 成分和改进的多尺度样本熵(MMSE)的新意识情绪识别方法。首先,基于形状特征技术自动识别和提取 ERP 成分,如 N200、P300 和 N300。其次,利用变分模态分解和小波包分解对 EEG 信号进行处理,以获得不同层次的情绪变分模态函数(VMF),即 VMFβ+γ,然后提取每个 VMFβ+γ的非线性特征 MMSE。最后,将 ERP 成分和非线性特征 MMSE 融合生成新的特征向量,将其输入随机森林进行分类,以识别意识和无意识情绪。实验结果表明,我们提出的方法对幸福、恐惧和愤怒的平均分类准确率分别达到 94.42%、94.88%和 94.95%。我们的研究表明,ERP 成分与非线性特征 MMSE 的融合更有利于意识和无意识情绪的识别,为非线性时间序列的研究提供了新的研究方向和方法。