Automatic EEG Based Emotion Recognition Using Extreme Learning Machine

Nalini Pusarla, Ashutosh Kumar Singh, S. Tripathi
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Abstract

Emotion is very essential natural feeling of humans. Emotion recognition is often used in brain-computer interface devices to assist impaired people. Electroencephalogram (EEG) signal is essential for identifying emotional states since it reacts instantly to every variation in the individual's brain. In this work, the usefulness of the tunable-Q wavelet transform (TQWT) for classifying various emotions in EEG signals is studied. TQWT breaks the EEG signals into sub-bands and extracts statistical momemts from the sub-bands. The extracted moments are features which are fed to classifier named extreme learning machine, which classifies different emotions. In comparison to other existing approaches, the experimental results of the proposed technique acheived improved emotion recognition performance on open-source datasets, SEED, SEED-IV, and DEAP. The maximum accuracy obtained with the proposed emotion recognition system is 95.2%, 95%, and 93.8% using SEED, SEED-IV, and DEAP databases, respectively, which is higher compared to the state-of-art methods.
基于极限学习机的自动EEG情绪识别
情感是人类非常重要的自然情感。情感识别通常用于脑机接口设备,以帮助残疾人。脑电图(EEG)信号对识别情绪状态至关重要,因为它对个体大脑中的每一个变化都能迅速做出反应。在这项工作中,研究了可调q小波变换(TQWT)对脑电信号中各种情绪分类的有效性。TQWT将脑电信号分解成子带,从子带中提取统计矩。提取的矩作为特征输入到极端学习机分类器中,对不同的情绪进行分类。与其他现有方法相比,该方法在开源数据集SEED、SEED- iv和DEAP上取得了更好的情绪识别性能。使用SEED、SEED- iv和DEAP数据库,所提出的情绪识别系统获得的最大准确率分别为95.2%、95%和93.8%,高于目前的方法。
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