EEG-based affect states classification using Deep Belief Networks

Haiyan Xu, K. Plataniotis
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引用次数: 24

Abstract

Affective states classification has become an important part of the Brain-Computer Interface (HCI) study. In recent years, affective computing systems using physiological signals, such as ECG, GSR and EEG has shown very promising results. However, like many other machine learning studies involving physiological signals, the bottle neck is always around the database acquisition and the annotation process. To investigate potential ways to address this small sample problem, this paper introduces a Deep Belief Networks (DBN) based learning system for the EEG-based affective processing system. Through the greedy-layer pretraining using unlabeled data as well as a supervised fine-tuning process, the DBN-based approaches significantly reduced the number of labeled samples required. The DBN methods also acted as an application specific feature selector, by examining the weight vector between the input feature vector and the first invisible layer, we can gain much needed insights on the spatial or spectral locations of the most discriminating features. In this study, DBNs are trained on the narrow-band spectral features extracted from multichannel EEG recordings. To evaluate the efficacy of the proposed DBN-based learning system, we carried out an subject-independent affective states classification experiments on the DEAP database to classify 2-dimensional affect states. As a baseline to the proposed DBN approach, the same classification problem was also carried out using support vector machines (SVMs) and one-way ANOVA based feature selection process. The classification results shown that the proposed framework using Deep Belief Networks not only provided better classification performance, but also significantly lower the number of labeled data required to train such machine learning systems.
基于脑电图的深度信念网络情感状态分类
情感状态分类已成为脑机接口(HCI)研究的重要组成部分。近年来,利用ECG、GSR和EEG等生理信号的情感计算系统显示出了很好的结果。然而,像许多其他涉及生理信号的机器学习研究一样,瓶颈总是围绕着数据库获取和注释过程。为了研究解决这一小样本问题的潜在方法,本文为基于脑电图的情感处理系统引入了一种基于深度信念网络(DBN)的学习系统。通过使用未标记数据的贪婪层预训练以及监督微调过程,基于dbn的方法显着减少了所需的标记样本数量。DBN方法还充当了特定于应用程序的特征选择器,通过检查输入特征向量和第一个不可见层之间的权重向量,我们可以获得非常需要的关于最具区别性特征的空间或光谱位置的见解。在这项研究中,dbn是基于从多通道EEG记录中提取的窄带频谱特征进行训练的。为了评估基于dbn的学习系统的有效性,我们在DEAP数据库上进行了独立于主体的情感状态分类实验,对二维情感状态进行分类。作为所提出的DBN方法的基线,同样的分类问题也使用支持向量机(svm)和基于单向方差分析的特征选择过程进行。分类结果表明,使用深度信念网络的框架不仅提供了更好的分类性能,而且显著降低了训练此类机器学习系统所需的标记数据数量。
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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