A fine-tuning deep residual convolutional neural network for emotion recognition based on frequency-channel matrices representation of one-dimensional electroencephalography.

IF 1.7 4区 医学 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Jichi Chen, Yuguo Cui, Cheng Qian, Enqiu He
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引用次数: 0

Abstract

Emotion recognition (ER) plays a crucial role in enabling machines to perceive human emotional and psychological states, thus enhancing human-machine interaction. Recently, there has been a growing interest in ER based on electroencephalogram (EEG) signals. However, due to the noisy, nonlinear, and nonstationary properties of electroencephalography signals, developing an automatic and high-accuracy ER system is still a challenging task. In this study, a pretrained deep residual convolutional neural network model, including 17 convolutional layers and one fully connected layer with transfer learning technique in combination frequency-channel matrices (FCM) of two-dimensional data based on Welch power spectral density estimate from the one-dimensional EEG data has been proposed for improving the ER by automatically learning the underlying intrinsic features of multi-channel EEG data. The experiment result shows a mean accuracy of 93.61 ± 0.84%, a mean precision of 94.70 ± 0.60%, a mean sensitivity of 95.13 ± 1.02%, a mean specificity of 91.04 ± 1.02%, and a mean F1-score of 94.91 ± 0.68%, respectively using 5-fold cross-validation on the DEAP dataset. Meanwhile, to better explore and understand how the proposed model works, we noted that the ranking of clustering effect of FCM for the same category by employing the t-distributed stochastic neighbor embedding strategy is: softmax layer activation is the best, the middle convolutional layer activation is the second, and the early max pooling layer activation is the worst. These findings confirm the promising potential of combining deep learning approaches with transfer learning techniques and FCM for effective ER tasks.

基于一维脑电图频率通道矩阵表示的微调深度残差卷积神经网络情绪识别。
情感识别(ER)在使机器感知人类的情绪和心理状态,从而增强人机交互方面起着至关重要的作用。近年来,人们对基于脑电图(EEG)信号的内质网研究越来越感兴趣。然而,由于脑电图信号的噪声、非线性和非平稳特性,开发一种自动、高精度的ER系统仍然是一项具有挑战性的任务。本文基于一维脑电数据的Welch功率谱密度估计,提出了一种基于二维数据组合频道矩阵(FCM)的深度残差卷积神经网络预训练模型,该模型包括17个卷积层和1个全连接层,并采用迁移学习技术,通过自动学习多通道脑电数据的内在特征来提高ER。实验结果表明,在DEAP数据集上进行5倍交叉验证,平均准确率为93.61±0.84%,平均精密度为94.70±0.60%,平均灵敏度为95.13±1.02%,平均特异性为91.04±1.02%,平均f1评分为94.91±0.68%。同时,为了更好地探索和理解所提出模型的工作原理,我们注意到,采用t分布随机邻居嵌入策略的FCM对同一类别的聚类效果排序为:softmax层激活最佳,中间卷积层激活次之,早期max池化层激活最差。这些发现证实了将深度学习方法与迁移学习技术和FCM结合起来进行有效ER任务的潜力。
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来源期刊
CiteScore
4.10
自引率
6.20%
发文量
179
审稿时长
4-8 weeks
期刊介绍: The primary aims of Computer Methods in Biomechanics and Biomedical Engineering are to provide a means of communicating the advances being made in the areas of biomechanics and biomedical engineering and to stimulate interest in the continually emerging computer based technologies which are being applied in these multidisciplinary subjects. Computer Methods in Biomechanics and Biomedical Engineering will also provide a focus for the importance of integrating the disciplines of engineering with medical technology and clinical expertise. Such integration will have a major impact on health care in the future.
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