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Revealing critical channels and frequency bands for emotion recognition from EEG with deep belief network

机译:揭示具有深层信念网络的EEG情绪识别的关键通道和频带

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For EEG-based emotion recognition tasks, there are many irrelevant channel signals contained in multichannel EEG data, which may cause noise and degrade the performance of emotion recognition systems. In order to tackle this problem, we propose a novel deep belief network (DBN) based method for examining critical channels and frequency bands in this paper. First, we design an emotion experiment and collect EEG data while subjects are watching emotional film clips. Then we train DBN for recognizing three emotions (positive, neutral, and negative) with extracted differential entropy features as input and compare DBN with other shallow models such as KNN, LR, and SVM. The experiment results show that DBN achieves the best average accuracy of 86.08%. We further explore critical channels and frequency bands by examining the weight distribution learned by DBN, which is different from the existing work. We identify four profiles with 4, 6, 9 and 12 channels, which achieve recognition accuracies of 82.88%, 85.03%, 84.02%, 86.65%, respectively, using SVM.
机译:对于基于EEG的情感识别任务,多通道EEG数据中包含许多不相关的通道信号,这可能会引起噪声并降低情感识别系统的性能。为了解决这个问题,我们提出了一种新颖的基于深度信念网络(DBN)的方法来检查关键信道和频带。首先,我们设计了一个情感实验,并在对象观看情感影片剪辑时收集EEG数据。然后,我们训练DBN以提取的差分熵特征作为输入来识别三种情绪(正,中性和负性),并将DBN与其他浅层模型(如KNN,LR和SVM)进行比较。实验结果表明,DBN达到了86.08%的最佳平均准确度。通过检查DBN获知的权重分布,我们将进一步探索关键信道和频带,这与现有工作有所不同。我们使用SVM识别具有4、6、9和12个通道的四个配置文件,它们分别达到82.88%,85.03%,84.02%,86.65%的识别准确度。

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