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Emotion Recognition from Multi-Channel EEG through Parallel Convolutional Recurrent Neural Network

机译:基于并行卷积递归神经网络的多通道脑电信号情感识别

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As a challenging pattern recognition task, automatic real-time emotion recognition based on multi-channel EEG signals is becoming an important computer-aided method for emotion disorder diagnose in neurology and psychiatry. Traditional machine learning approaches require to design and extract various features from single or multiple channels based on comprehensive domain knowledge. Consequently, these approaches may be an obstacle for non-domain experts. On the contrast, deep learning approaches have been used successfully in many recent literatures to learn features and classify different types of data. In this paper, baseline signals are considered and a simple but effective pre-processing method has been proposed to improve the recognition accuracy. Meanwhile, a hybrid neural network which combines 'Convolutional Neural Network (CNN)' and 'Recurrent Neural Network (RNN)' has been applied to classify human emotion states by effectively learning compositional spatial-temporal representation of raw EEG streams. The CNN module is used to mine the inter-channel correlation among physically adjacent EEG signals by converting the chain-like EEG sequence into 2D-like frame sequence. The LSTM module is adopted to mine contextual information. Experiments are carried out in a segment-level emotion identification task, on the DEAP benchmarking dataset. Our experimental results indicate that the proposed pre-processing method can increase emotion recognition accuracy by 32% approximately and the model achieves a high performance with a mean accuracy of 90.80% and 91.03% on valence and arousal classification task respectively.
机译:作为一种具有挑战性的模式识别任务,基于多通道EEG信号的自动实时情感识别正在成为神经病学和精神病学中情感障碍诊断的一种重要的计算机辅助方法。传统的机器学习方法需要基于全面的领域知识,从单个或多个通道中设计和提取各种功能。因此,这些方法可能会成为非领域专家的障碍。相比之下,深度学习方法已在许多最新文献中成功使用,以学习特征并分类不同类型的数据。本文考虑了基线信号,并提出了一种简单有效的预处理方法来提高识别精度。同时,结合了“卷积神经网络(CNN)”和“递归神经网络(RNN)”的混合神经网络已通过有效地学习原始EEG流的时空表示来对人类情绪状态进行分类。 CNN模块用于通过将类似链的EEG序列转换为类似2D的帧序列来挖掘物理上相邻的EEG信号之间的通道间相关性。采用LSTM模块来挖掘上下文信息。实验是在DEAP基准数据集上的段级情感识别任务中进行的。我们的实验结果表明,所提出的预处理方法可以将情绪识别准确率提高约32%,并且该模型在价和唤醒分类任务上均具有较高的性能,平均准确率分别为90.80%和91.03%。

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