Accurate EEG-Based Emotion Recognition on Combined Features Using Deep Convolutional Neural Networks

Jingxia Chen(Northwestern Polytechnical University), Ping Zhang(Shaanxi University of Science and Technology), Zijing Mao(The University of Texas at San Antonio), Youdong Huang(The University of Texas Health Science Center at San Antonio), Dongmei Jiang(Northwestern Polytechnical University), Yushan Zhang(Northwestern Polytechnical University)
IEEE Access
January 1, 2019
Cited by 249Open Access
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Abstract

In order to improve the accuracy of emotional recognition by end-to-end automatic learning of emotional features in spatial and temporal dimensions of electroencephalogram (EEG), an EEG emotional feature learning and classification method using deep convolution neural network (CNN) was proposed based on temporal features, frequential features, and their combinations of EEG signals in DEAP dataset. The shallow machine learning models including bagging tree (BT), support vector machine (SVM), linear discriminant analysis (LDA), and Bayesian linear discriminant analysis (BLDA) models and deep CNN models were used to make emotional binary classification experiments on DEAP datasets in valence and arousal dimensions. The experimental results showed that the deep CNN models which require no feature engineering achieved the best recognition performance on temporal and frequency combined features in both valence and arousal dimensions, which is 3.58% higher than the performance of the best traditional BT classifier in valence dimension and 3.29% higher than that of BT classifier in arousal dimension.


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