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EEG Based Patient Emotion Monitoring using Relative Wavelet Energy Feature and Back Propagation Neural Network

机译:基于EEG基于患者情感监控,使用相对小波能量特征和后传播神经网络

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In EEG-based emotion recognition, feature extraction is as important as the classification algorithm. A good choice of features results in higher recognition rate. However, there is no standard method for feature extraction in EEG-based emotion recognition, especially for real time monitoring, where speed of computation is crucial. In this work, we assess the use of relative wavelet energy as features and Back Propagation Neural Network (BPNN) as classifier for emotion recognition. This method was implemented in simulated real time emotion recognition by using a publicly accessible database. The results showed that relative wavelet energy and BPNN achieved an average recognition rate of 92.03% The highest average recognition rate was achieved when the time window was 30s.
机译:在基于EEG的情感识别中,特征提取与分类算法一样重要。良好选择的功能导致较高的识别率。然而,在基于EEG的情感识别中没有标准方法进行特征提取,特别是对于实时监测,计算速度至关重要。在这项工作中,我们评估了相对小波能量作为特征和后传播神经网络(BPNN)作为情感识别的分类器。通过使用可公开访问的数据库,在模拟实时情感识别中实现了该方法。结果表明,当时间窗口为30秒时,相对小波能量和BPNN实现了92.03%的平均识别率。

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