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An Optimal EEG-based Emotion Recognition Algorithm Using Gabor Features

机译:基于Gabor特征的基于EEG的最优情绪识别算法

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Feature extraction and accurate classification of the emotion-related EEG-characteristics have a key role in success of emotion recognition systems. In this paper, an optimal EEG-based emotion recognition algorithm based on spectral features and neural network classifiers is proposed. In this algorithm, spectral, spatial and temporal features are selected from the emotion-related EEG signals by applying Gabor functions and wavelet transform. Then neural network classifiers such as improved particle swarm optimization (IPSO) and probabilistic neural network (PNN) are developed to determine an optimal nonlinear decision boundary between the extracted features from the six basic emotions (happiness, surprise, anger, fear, disgust and sadness). The best result is obtained when Gabor-based features and PNN classifier are used. In this condition, our algorithm can achieve average accuracy of 64.78% that can be used in brain-computer interfaces systems.
机译:与情感有关的脑电特征的特征提取和准确分类在情感识别系统的成功中起着关键作用。提出了一种基于频谱特征和神经网络分类器的基于EEG的情感识别算法。在该算法中,通过应用Gabor函数和小波变换从与情绪有关的EEG信号中选择频谱,空间和时间特征。然后开发诸如改进的粒子群优化(IPSO)和概率神经网络(PNN)之类的神经网络分类器,以确定从六种基本情感(幸福,惊讶,愤怒,恐惧,厌恶和悲伤)提取的特征之间的最佳非线性决策边界)。当使用基于Gabor的特征和PNN分类器时,可获得最佳结果。在这种情况下,我们的算法可以达到64.78%的平均精度,可用于脑机接口系统。

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