Abstract

Emotion plays a nuclear part in human attention, decision-making, and communication. Electroencephalogram (EEG)-based emotion recognition has developed a lot due to the application of Brain-Computer Interface (BCI) and its effectiveness compared to body expressions and other physiological signals. Despite significant progress in affective computing, emotion recognition is still an unexplored problem. This paper introduced Logistic Regression (LR) with Gaussian kernel and Laplacian prior for EEG-based emotion recognition. The Gaussian kernel enhances the EEG data separability in the transformed space. The Laplacian prior promotes the sparsity of learned LR regressors to avoid over-specification. The LR regressors are optimized using the logistic regression via variable splitting and augmented Lagrangian (LORSAL) algorithm. For simplicity, the introduced method is noted as LORSAL. Experiments were conducted on the dataset for emotion analysis using EEG, physiological and video signals (DEAP). Various spectral features and features by combining electrodes (power spectral density (PSD), differential entropy (DE), differential asymmetry (DASM), rational asymmetry (RASM), and differential caudality (DCAU)) were extracted from different frequency bands (Delta, Theta, Alpha, Beta, Gamma, and Total) with EEG signals. The Naive Bayes (NB), support vector machine (SVM), linear LR with L1-regularization (LR_L1), linear LR with L2-regularization (LR_L2) were used for comparison in the binary emotion classification for valence and arousal. LORSAL obtained the best classification accuracies (77.17% and 77.03% for valence and arousal, respectively) on the DE features extracted from total frequency bands. This paper also investigates the critical frequency bands in emotion recognition. The experimental results showed the superiority of Gamma and Beta bands in classifying emotions. It was presented that DE was the most informative and DASM and DCAU had lower computational complexity with relatively ideal accuracies. An analysis of LORSAL and the recently deep learning (DL) methods is included in the discussion. Conclusions and future work are presented in the final section.

Highlights

  • Affective computing defined by Picard [1] is a multidisciplinary research field that relates to computer science, psychology, neuroscience, and cognitive science

  • LORSAL obtained the best classification accuracies (77.17% and 77.03% for valence and arousal, respectively) on the Differential entropy (DE) features extracted from total frequency bands

  • LORSAL method compared with four classifiers, Naive Bayes (NB) [27], support vector machine (SVM) [25,26], linear logistic regression (LR) with L1-regularization (LR_L1), linear LR with L2-regularization (LR_L2)

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Summary

Introduction

Affective computing defined by Picard [1] is a multidisciplinary research field that relates to computer science, psychology, neuroscience, and cognitive science. Emotion recognition methods include two main categories, according to the methods humans communicate emotions, including body expressions, and physiological signals. According to Connon’s theory [5], the emotion changes are associated with quick responses in physiological signals coordinated by the autonomic nervous systems (ANS). This makes the physiological signals not controlled and overcome the shortcomings of body expressions [4]. Physiological signals have been widely applied in many studies for emotion recognition [3,4] These physiological signals, including ECG and EMG, are still not a direct reaction to emotion changes. EEG signals effectively reflect the brain electrical activity, and have been widely applied in many fields, including cognitive performance prediction [6], mental load analysis [7,8], mental fatigue assessment [9], recommendation system [10]

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