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Expression-EEG Bimodal Fusion Emotion Recognition Method Based on Deep Learning

机译:基于深度学习的表达-EEG双峰融合情绪识别方法

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As one of the key issues in the field of emotional computing, emotion recognition has rich application scenarios and important research value. However, the single biometric recognition in the actual scene has the problem of low accuracy of emotion recognition classification due to its own limitations. In response to this problem, this paper combines deep neural networks to propose a deep learning-based expression-EEG bimodal fusion emotion recognition method. This method is based on the improved VGG-FACE network model to realize the rapid extraction of facial expression features and shorten the training time of the network model. The wavelet soft threshold algorithm is used to remove artifacts from EEG signals to extract high-quality EEG signal features. Then, based on the long- and short-term memory network models and the decision fusion method, the model is built and trained using the signal feature data extracted under the expression-EEG bimodality to realize the final bimodal fusion emotion classification and identification research. Finally, the proposed method is verified based on the MAHNOB-HCI data set. Experimental results show that the proposed model can achieve a high recognition accuracy of 0.89, which can increase the accuracy of 8.51% compared with the traditional LSTM model. In terms of the running time of the identification method, the proposed method can effectively be shortened by about 20?s compared with the traditional method.
机译:作为情绪计算领域的关键问题之一,情感认可具有丰富的应用方案和重要的研究价值。然而,由于其自​​身的限制,实际场景中的单一生物识别识别具有低精度识别分类准确性的问题。在响应这个问题时,本文结合了深度神经网络,提出了一种基于深度学习的表达-iEG双峰融合情绪识别方法。该方法基于改进的VGG面网络模型来实现面部表情特征的快速提取,缩短网络模型的训练时间。小波软阈值算法用于从EEG信号中删除伪像以提取高质量EEG信号特征。然后,基于长期和短期内存网络模型和决策融合方法,使用表达式-EEG BimoDality下提取的信号特征数据构建和培训模型,以实现最终的双峰融合情绪分类和识别研究。最后,基于Mahnob-HCI数据集验证了所提出的方法。实验结果表明,与传统的LSTM模型相比,所提出的模型可以达到0.89的高识别精度,这可以提高8.51%的准确性。就识别方法的运行时间而言,与传统方法相比,所提出的方法可以有效地缩短约20°S。

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