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基于长短期记忆网络与注意力机制的脑电信号情绪分类

EEG-Based Emotion Classification Using Long Short-Term Memory Network with Attention Mechanism.

机构信息

Department of Software, Gachon University, Seongnam 13120, Korea.

出版信息

Sensors (Basel). 2020 Nov 25;20(23):6727. doi: 10.3390/s20236727.

Abstract

Recently, studies that analyze emotions based on physiological signals, such as electroencephalogram (EEG), by applying a deep learning algorithm have been actively conducted. However, the study of sequence modeling considering the change of emotional signals over time has not been fully investigated. To consider long-term interaction of emotion, in this study, we propose a long short-term memory network to consider changes in emotion over time and apply an attention mechanism to assign weights to the emotional states appearing at specific moments based on the peak-end rule in psychology. We used 32-channel EEG data from the DEAP database. Two-level (low and high) and three-level (low, middle, and high) classification experiments were performed on the valence and arousal emotion models. The results show accuracies of 90.1% and 87.9% using the two-level classification for the valence and arousal models with four-fold cross validation, respectively. In the case of the three-level classification, these values were obtained as 83.5% and 82.6%, respectively. Additional experiments were conducted using a network combining a convolutional neural network (CNN) submodule with the proposed model. The obtained results showed accuracies of 90.1% and 88.3% in the case of the two-level classification and 86.9% and 84.1% in the case of the three-level classification for the valence and arousal models with four-fold cross validation, respectively. In 10-fold cross validation, there were 91.8% for valence and 91.6% for arousal accuracy, respectively.

摘要

最近,应用深度学习算法基于生理信号(如脑电图(EEG))分析情绪的研究正在积极进行。然而,考虑到情绪信号随时间变化的序列建模研究尚未得到充分探讨。为了考虑情绪的长期交互,在本研究中,我们提出了一个长短期记忆网络(LSTM)来考虑情绪随时间的变化,并应用注意力机制根据心理学中的峰终法则为特定时刻出现的情绪状态分配权重。我们使用了来自 DEAP 数据库的 32 通道 EEG 数据。在效价和唤醒情绪模型上进行了两级(低和高)和三级(低、中、高)分类实验。四折交叉验证的效价和唤醒模型的两级分类准确率分别为 90.1%和 87.9%。在三级分类的情况下,这些值分别为 83.5%和 82.6%。使用与所提出的模型相结合的卷积神经网络(CNN)子模块的网络进行了额外的实验。在四折交叉验证的情况下,对于效价和唤醒模型,两级分类的准确率分别为 90.1%和 88.3%,三级分类的准确率分别为 86.9%和 84.1%。在 10 折交叉验证中,效价的准确率为 91.8%,唤醒的准确率为 91.6%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/02ea/7727805/fb9598cffdea/sensors-20-06727-g001.jpg

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