Biomedical Engineering Group, Department of Applied Mechanics, Indian Institute of Technology Madras, Chennai, India.
Peter L. Reichertz Institute for Medical Informatics of TU Braunschweig and Hannover Medical School, Germany.
Stud Health Technol Inform. 2022 May 25;294:943-944. doi: 10.3233/SHTI220632.
In this work, an attempt has been made to classify arousal and valence states of emotion using time-domain features extracted from the Wavelet Packet Transform. For this, Electroencephalogram (EEG) signals from the publicly available DEAP database are considered. EEG signals are first decomposed using wavelet packet decomposition into θ, α, β, and γ bands. Then featural, namely band energy, sub-band energy ratio, root mean of energy, and information entropy of band energy is estimated. These features are fed into various machine learning classifiers such as support vector machines, linear discriminant analysis, K-nearest neighbor, and random forest. Results indicate that features extracted from wavelet packet transform can predict the arousal and valence emotional states. It is also seen that Support Vector Machines perform the best for both arousal (f-m = 75.68%) and valence(f-m=57.53%). This method can be used for the recognition of emotional states for various clinical purposes in emotion-related psychological disorders like major depressive disorder.
在这项工作中,我们尝试使用从小波包变换中提取的时域特征来对情感的唤醒度和效价状态进行分类。为此,我们考虑了来自公共可用的 DEAP 数据库的脑电图 (EEG) 信号。首先,使用小波包分解将 EEG 信号分解为 θ、α、β 和 γ 频段。然后,估计特征,即频段能量、子频段能量比、能量均方根和频段能量的信息熵。这些特征被输入到各种机器学习分类器中,如支持向量机、线性判别分析、K-最近邻和随机森林。结果表明,从小波包变换中提取的特征可以预测唤醒度和效价的情感状态。还可以看出,支持向量机在唤醒度(f-m=75.68%)和效价(f-m=57.53%)方面表现最佳。这种方法可用于各种与情绪相关的心理障碍中,如重度抑郁症等情绪相关的心理障碍,用于识别情感状态。