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CDBA:一种用于基于脑电图的情绪识别的新型多分支特征融合模型。

CDBA: a novel multi-branch feature fusion model for EEG-based emotion recognition.

作者信息

Huang Zhentao, Ma Yahong, Su Jianyun, Shi Hangyu, Jia Shanshan, Yuan Baoxi, Li Weisu, Geng Jingzhi, Yang Tingting

机构信息

School of Electronic Information, Xijing University, Xi'an, China.

Department of Neurosurgery, Affiliate Children's Hospital of Xi'an Jiaotong University, Xi'an, China.

出版信息

Front Physiol. 2023 Jul 20;14:1200656. doi: 10.3389/fphys.2023.1200656. eCollection 2023.

Abstract

EEG-based emotion recognition through artificial intelligence is one of the major areas of biomedical and machine learning, which plays a key role in understanding brain activity and developing decision-making systems. However, the traditional EEG-based emotion recognition is a single feature input mode, which cannot obtain multiple feature information, and cannot meet the requirements of intelligent and high real-time brain computer interface. And because the EEG signal is nonlinear, the traditional methods of time domain or frequency domain are not suitable. In this paper, a CNN-DSC-Bi-LSTM-Attention (CDBA) model based on EEG signals for automatic emotion recognition is presented, which contains three feature-extracted channels. The normalized EEG signals are used as an input, the feature of which is extracted by multi-branching and then concatenated, and each channel feature weight is assigned through the attention mechanism layer. Finally, Softmax was used to classify EEG signals. To evaluate the performance of the proposed CDBA model, experiments were performed on SEED and DREAMER datasets, separately. The validation experimental results show that the proposed CDBA model is effective in classifying EEG emotions. For triple-category (positive, neutral and negative) and four-category (happiness, sadness, fear and neutrality), the classification accuracies were respectively 99.44% and 99.99% on SEED datasets. For five classification (Valence 1-Valence 5) on DREAMER datasets, the accuracy is 84.49%. To further verify and evaluate the model accuracy and credibility, the multi-classification experiments based on ten-fold cross-validation were conducted, the elevation indexes of which are all higher than other models. The results show that the multi-branch feature fusion deep learning model based on attention mechanism has strong fitting and generalization ability and can solve nonlinear modeling problems, so it is an effective emotion recognition method. Therefore, it is helpful to the diagnosis and treatment of nervous system diseases, and it is expected to be applied to emotion-based brain computer interface systems.

摘要

基于脑电图的人工智能情感识别是生物医学和机器学习的主要领域之一,在理解大脑活动和开发决策系统方面发挥着关键作用。然而,传统的基于脑电图的情感识别是单一特征输入模式,无法获取多个特征信息,不能满足智能和高实时性脑机接口的要求。而且由于脑电信号是非线性的,传统的时域或频域方法并不适用。本文提出了一种基于脑电信号的用于自动情感识别的CNN-DSC-Bi-LSTM-Attention(CDBA)模型,该模型包含三个特征提取通道。将归一化后的脑电信号作为输入,通过多分支提取其特征然后进行拼接,并通过注意力机制层为每个通道特征分配权重。最后,使用Softmax对脑电信号进行分类。为了评估所提出的CDBA模型的性能,分别在SEED和DREAMER数据集上进行了实验。验证实验结果表明,所提出的CDBA模型在脑电情感分类方面是有效的。对于三类(积极、中性和消极)和四类(快乐、悲伤、恐惧和中性)情感分类,在SEED数据集上的分类准确率分别为99.44%和99.99%。对于DREAMER数据集上的五类(效价1-效价5)情感分类,准确率为84.49%。为了进一步验证和评估模型的准确性和可信度,进行了基于十折交叉验证的多分类实验,其提升指标均高于其他模型。结果表明,基于注意力机制的多分支特征融合深度学习模型具有很强的拟合和泛化能力,能够解决非线性建模问题,是一种有效的情感识别方法。因此,它有助于神经系统疾病的诊断和治疗,有望应用于基于情感的脑机接口系统。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ea40/10399240/b4b4c38b3bc1/fphys-14-1200656-g001.jpg

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