Unsupervised Feature Learning for EEG-based Emotion Recognition

Zirui Lan, O. Sourina, Lipo Wang, Reinhold Scherer, G. Müller-Putz
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引用次数: 10

Abstract

Spectral band power features are one of the most widely used features in the studies of electroencephalogram (EEG)-based emotion recognition. The power spectral density of EEG signals is partitioned into different bands such as delta, theta, alpha and beta band etc. Though based on neuroscientific findings, the partition of frequency bands is somewhat on an ad-hoc basis, and the definition of frequency ranges of the bands of interest can vary between studies. On the other hand, it is also arguable that one definition of power bands could perform equally well on all subjects. In this paper, we propose to use autoencoder to automatically learn from each subject the salient frequency components from power spectral density estimated as periodogram by Fast Fourier Transform (FFT). We propose a network architecture especially for EEG feature extraction, one that adopts hidden unit clustering with added pooling neuron per cluster. The classification accuracy with features extracted by our proposed method is benchmarked against that with standard power features. Experimental results show that our proposed feature extraction method achieves accuracy ranging from 44% to 59% for three-emotion classification. We also see a 4-20% accuracy improvement over standard band power features.
基于脑电图的情感识别的无监督特征学习
谱带功率特征是基于脑电图(EEG)的情感识别研究中应用最广泛的特征之一。将脑电信号的功率谱密度划分为δ、θ、α、β等不同波段。尽管基于神经科学的发现,频带的划分在某种程度上是临时的,并且感兴趣的频带的频率范围的定义可以在不同的研究中有所不同。另一方面,也有争议的是,一个功率波段的定义可以在所有科目上表现得同样好。在本文中,我们提出使用自编码器从快速傅立叶变换(FFT)估计为周期图的功率谱密度中自动学习每个主题的显著频率分量。我们提出了一种专门用于EEG特征提取的网络结构,该结构采用隐藏单元聚类,每个聚类增加池化神经元。将该方法提取的特征与标准功率特征的分类准确率进行了比较。实验结果表明,本文提出的特征提取方法对三种情绪的分类准确率在44% ~ 59%之间。我们还看到,与标准频段功率特性相比,准确度提高了4-20%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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