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Human emotion recognition using deep belief network architecture

机译:使用深度信仰网络架构的人类情感识别

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摘要

Recently, deep learning methodologies have become popular to analyse physiological signals in multiple modalities via hierarchical architectures for human emotion recognition. In most of the state-of-the-arts of human emotion recognition, deep learning for emotion classification was used. However, deep learning is mostly effective for deep feature extraction. Therefore, in this research, we applied unsupervised deep belief network (DBN) for depth level feature extraction from fused observations of Electro-Dermal Activity (EDA), Photoplethysmogram (PPG) and Zygomaticus Electromyography (zEMG) sensors signals. Afterwards, the DBN produced features are combined with statistical features of EDA, PPG and zEMG to prepare a feature-fusion vector. The prepared feature vector is then used to classify five basic emotions namely Happy, Relaxed, Disgust, Sad and Neutral. As the emotion classes are not linearly separable from the feature-fusion vector, the Fine Gaussian Support Vector Machine (FGSVM) is used with radial basis function kernel for non-linear classification of human emotions. Our experiments on a public multimodal physiological signal dataset show that the DBN, and FGSVM based model significantly increases the accuracy of emotion recognition rate as compared to the existing state-of-the-art emotion classification techniques.
机译:最近,深入学习方法已经流行分析多种方式的生理信号,通过分层架构进行人类情感识别。在大多数人类情感认可的最先进,使用了深入学习情感分类。然而,深度学习大多是对深度特征提取的有效性。因此,在该研究中,我们应用了无监督的深度信仰网络(DBN),用于从融合观察的电力活性(EDA),光增性肌谱(PPG)和Zygomaticus obotrocalicraphic(Zemg)传感器信号的融合观察的深度水平特征提取。然后,DBN产生的特征与EDA,PPG和ZEMG的统计特征组合以制备特征融合向量。然后使用制备的特征向量来对五个基本情绪进行分类,即快乐,轻松,厌恶,悲伤和中立。由于情绪课程与特征融合向量没有线性可分离,因此精细高斯支持向量机(FGSVM)与径向基函数内核一起使用,用于人类情绪的非线性分类。我们对公共多模式生理信号数据集的实验表明,与现有的最先进的情感分类技术相比,DBN和基于FGSVM的模型显着提高了情绪识别率的准确性。

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