Electroencephalogram Emotion Recognition Based on Three-Dimensional Feature Matrix and Multivariate Neural Network

Wei Xu, Ruoxuan Zhou, Qiuming Liu
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Abstract

Electroencephalogram signals (EEG) has been widely used in emotion recognition because of its authenticity and unforgeability. Therefore, EEG emotion recognition has become one of the main technologies of emotion computing. EEG signals are composed of complex time domain, frequency domain and spatial domain (TFS) related information. Aiming at the problems of insufficient mining of TFS feature information and low recognition rate in EEG emotion recognition. This paper presents a Multi-Task Joint Neural Network (MT-2DCNN-LSTM) model constructed by two-dimensional convolutional neural network (2DCNN) and long short-term memory neural network (LSTM). In this paper, frequency domain and spatial domain features are used to construct 3D feature matrix graph, and time domain features are used to construct 2D sequence information. Then these two features are used as input of the model to fully extract the TFS feature information of EEG signals. In order to verify the recognition ability of the model for EEG signals, a multivariate classification experiment was carried out on the DEAP dataset, a well-known dataset for comparison purposes. Among them, the average accuracy of emotion recognition of arousal and valence is 97.29% and 97.72%, respectively. The results show that MT-2DCNN-LSTM has excellent performance.
基于三维特征矩阵和多元神经网络的脑电图情绪识别
脑电图信号因其真实性和不可伪造性在情感识别中得到了广泛的应用。因此,脑电情感识别已成为情感计算的主要技术之一。脑电信号是由复杂的时域、频域和空域(TFS)相关信息组成的。针对脑电情感识别中TFS特征信息挖掘不足、识别率低的问题。本文提出了一种由二维卷积神经网络(2DCNN)和长短期记忆神经网络(LSTM)构建的多任务联合神经网络(MT-2DCNN-LSTM)模型。本文利用频域和空间域特征构建三维特征矩阵图,利用时域特征构建二维序列信息。然后将这两个特征作为模型的输入,充分提取脑电信号的TFS特征信息。为了验证该模型对脑电信号的识别能力,在比较用的知名数据集DEAP数据集上进行了多元分类实验。其中,唤醒和效价情绪识别的平均正确率分别为97.29%和97.72%。结果表明,MT-2DCNN-LSTM具有优异的性能。
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