Affective states classification using EEG and semi-supervised deep learning approaches

Haiyan Xu, K. Plataniotis
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引用次数: 69

Abstract

Affective states of a user provide important information for many applications such as, personalized information (e.g., multimedia content) retrieval/delivery or intelligent human-computer interface design. In recently years, physiological signals, Electroencephalogram (EEG) in particular, have been shown to be very effective in estimating a user's affective states during social interaction or under video or audio stimuli. However, due to the large number of parameters associated with the neural expression of emotion, there is still a lot of unknowns on the specific spatial and spectral correlation of the EEG signal and the affective states expression. To investigate on such correlation, two types of semi-supervised deep learning approaches, stacked denoising autoencoder (SDAE) and deep belief networks (DBN), were applied as application specific feature extractors for the affective states classification problem using EEG signals. To evaluate the efficacy of the proposed semi-supervised approaches, a subject-specific affective states classification experiment were carried out on the DEAP database to classify 2-dimensional affect states. The DBN based model achieved averaged F1 scores of 86.67%, 86.60% and 86.69% for arousal, valence and liking states classification respectively, which has significantly improved the state-of-art classification performance. By examining the weight vectors at each layer, we were also able to gain insights on the spatial or spectral locations of the most discriminating features. Another main advantage of applying the semi-supervised learning methods is that only a small fraction of labeled data, e.g., 1/6 of the training samples, were used in this study.
基于EEG和半监督深度学习方法的情感状态分类
用户的情感状态为个性化信息(如多媒体内容)检索/传递或智能人机界面设计等应用提供了重要信息。近年来,生理信号,特别是脑电图(EEG)已被证明在社交互动或视频或音频刺激下非常有效地估计用户的情感状态。然而,由于与情绪的神经表达相关的参数较多,脑电图信号与情绪状态表达的具体空间和频谱相关性还存在很多未知。为了研究这种相关性,采用两种半监督深度学习方法,即堆叠去噪自编码器(SDAE)和深度信念网络(DBN)作为特定应用的特征提取器,对脑电信号的情感状态分类问题进行了研究。为了评估所提出的半监督方法的有效性,在DEAP数据库上进行了针对特定受试者的情感状态分类实验,对二维情感状态进行了分类。基于DBN的模型在唤醒、价态和喜欢状态分类上的F1平均得分分别为86.67%、86.60%和86.69%,显著提高了分类性能。通过检查每层的权重向量,我们还能够了解最具区别性的特征的空间或光谱位置。应用半监督学习方法的另一个主要优点是,在本研究中只使用了一小部分标记数据,例如1/6的训练样本。
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