EEG-based emotion recognition using domain adaptation network

Yi-Ming Jin, Yun Luo, Wei-Long Zheng, Bao-Liang Lu
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引用次数: 28

Abstract

This paper explores a fundamental problem of eliminating the differences between source subject and target subject in EEG-based emotion recognition. The major limitation of traditional classification methods is that the lack of domain adaptation and subspace alignment will degrade the performance of cross-subject emotion recognition. To address this problem, we adopt Domain Adaptation Network (DAN) for knowledge transfer, which maintains both feature discriminativeness and domain-invariance during training stage. A feed-forward neural network is constructed by augmenting a few standard layers and a gradient reversal layer. Compared with five traditional methods, DAN outperforms its counterparts and achieves the mean accuracy of 79.19%. Moreover, a visualization of the features learned by DAN is represented in this paper, which intuitively describes the transfer virtue of domain adaptation network.
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基于eeg的情感识别领域自适应网络
本文探讨了基于脑电图的情感识别中消除源主语和目标主语差异的基本问题。传统分类方法的主要局限性在于缺乏领域自适应和子空间对齐,会降低跨主题情感识别的性能。为了解决这一问题,我们采用领域自适应网络(DAN)进行知识转移,该网络在训练阶段既保持特征的区别性,又保持领域的不变性。通过增加几个标准层和一个梯度反转层来构造前馈神经网络。与5种传统方法相比,DAN的平均准确率为79.19%,优于其他方法。此外,本文还对DAN学习到的特征进行了可视化处理,直观地描述了领域自适应网络的传递特性。
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