Multi-Modal Emotion Recognition Based On deep Learning Of EEG And Audio Signals

Zhongjie Li, Gaoyan Zhang, J. Dang, Longbiao Wang, Jianguo Wei
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引用次数: 5

Abstract

Automatic recognition of human emotional states has attracted many researchers' attention in Human-Computer Interactions and emotional brain-computer interface recently. However, the accuracy of emotion recognition is not satisfying. Considering the advantage of information supplement based on deep learning of multi-modal signals related to emotion, this study proposed a novel emotion recognition architecture to fuse emotional features from brain electroencephalography (EEG) signal and the corresponding audio signal in emotion recognition on DEAP dataset. We used convolutional neural network (CNN) to extract EEG features and bidirectional long short term memory (BiLSTM) neural networks to extract audio features. After that, we combine the multi-modal features into a deep learning architecture to recognize arousal and valence levels. Results showed an improved accuracy compared with previous studies that merely used the EEG signals in both arousal level and valence level, which suggests the effectiveness of our proposed multi-modal fused emotion recognition model. In future work, multi-modal data from nature interaction scenes will be collected and inputted into this architecture to further validate the effectiveness of the method.
基于脑电和音频信号深度学习的多模态情绪识别
人类情绪状态的自动识别是近年来人机交互和情感脑机接口领域研究的热点。然而,情感识别的准确性并不令人满意。考虑到基于深度学习的情感相关多模态信号信息补充的优势,本研究提出了一种新的情感识别架构,在DEAP数据集上融合情感识别中脑电信号和相应音频信号的情感特征。我们使用卷积神经网络(CNN)提取EEG特征,使用双向长短期记忆(BiLSTM)神经网络提取音频特征。之后,我们将多模态特征结合到一个深度学习架构中,以识别唤醒和价态水平。结果表明,与以往仅使用脑电信号在唤醒水平和效价水平上进行识别相比,该模型的准确率有所提高,表明了多模态融合情绪识别模型的有效性。在未来的工作中,将收集来自自然交互场景的多模态数据并将其输入到该架构中,以进一步验证该方法的有效性。
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