Candra Henry, Yuwono Mitchell, Handojoseno Ardi, Chai Rifai, Su Steven, Nguyen Hung T
Annu Int Conf IEEE Eng Med Biol Soc. 2015;2015:6030-3. doi: 10.1109/EMBC.2015.7319766.
Objectively recognizing emotions is a particularly important task to ensure that patients with emotional symptoms are given the appropriate treatments. The aim of this study was to develop an emotion recognition system using Electroencephalogram (EEG) signals to identify four emotions including happy, sad, angry, and relaxed. We approached this objective by firstly investigating the relevant EEG frequency band followed by deciding the appropriate feature extraction method. Two features were considered namely: 1. Wavelet Energy, and 2. Wavelet Entropy. EEG Channels reduction was then implemented to reduce the complexity of the features. The ground truth emotional states of each subject were inferred using Russel's circumplex model of emotion, that is, by mapping the subjectively reported degrees of valence (pleasure) and arousal to the appropriate emotions - for example, an emotion with high valence and high arousal is equivalent to a happy' emotional state, while low valence and low arousal is equivalent to a
sad' emotional state. The Support Vector Machine (SVM) classifier was then used for mapping each feature vector into corresponding discrete emotions. The results presented in this study indicated thatWavelet features extracted from alpha, beta and gamma bands seem to provide the necessary information for describing the aforementioned emotions. Using the DEAP (Dataset for Emotion Analysis using electroencephalogram, Physiological and Video Signals), our proposed method achieved an average sensitivity and specificity of 77.4% ± 14.1% and 69.1% ± 12.8%, respectively.
客观地识别情绪是一项特别重要的任务,以确保有情绪症状的患者能得到适当的治疗。本研究的目的是开发一种利用脑电图(EEG)信号的情绪识别系统,以识别包括快乐、悲伤、愤怒和放松在内的四种情绪。我们通过首先研究相关的脑电频段,然后确定合适的特征提取方法来实现这一目标。考虑了两个特征,即:1. 小波能量,以及2. 小波熵。然后进行脑电通道约简以降低特征的复杂性。使用罗素情绪环形模型推断每个受试者的真实情绪状态,即通过将主观报告的效价(愉悦)和唤醒程度映射到相应的情绪——例如,高效价和高唤醒的情绪等同于“快乐”的情绪状态,而低效价和低唤醒等同于“悲伤”的情绪状态。然后使用支持向量机(SVM)分类器将每个特征向量映射到相应的离散情绪。本研究给出的结果表明,从阿尔法、贝塔和伽马频段提取的小波特征似乎为描述上述情绪提供了必要信息。使用DEAP(用于使用脑电图、生理和视频信号进行情绪分析的数据集),我们提出的方法分别实现了77.4%±14.1%的平均灵敏度和69.1%±12.8%的平均特异性。