Abstract

Electroencephalogram (EEG) signal-based emotion recognition has attracted wide interests in recent years and has been broadly adopted in medical, affective computing, and other relevant fields. However, the majority of the research reported in this field tends to focus on the accuracy of classification whilst neglecting the interpretability of emotion progression. In this paper, we propose a new interpretable emotion recognition approach with the activation mechanism by using machine learning and EEG signals. This paper innovatively proposes the emotional activation curve to demonstrate the activation process of emotions. The algorithm first extracts features from EEG signals and classifies emotions using machine learning techniques, in which different parts of a trial are used to train the proposed model and assess its impact on emotion recognition results. Second, novel activation curves of emotions are constructed based on the classification results, and two emotion coefficients, i.e., the correlation coefficients and entropy coefficients. The activation curve can not only classify emotions but also reveals to a certain extent the emotional activation mechanism. Finally, a weight coefficient is obtained from the two coefficients to improve the accuracy of emotion recognition. To validate the proposed method, experiments have been carried out on the DEAP and SEED dataset. The results support the point that emotions are progressively activated throughout the experiment, and the weighting coefficients based on the correlation coefficient and the entropy coefficient can effectively improve the EEG-based emotion recognition accuracy.

Highlights

  • With the rapid development of computer and humancomputer interaction technology, there is a high demand to build a more intelligent and humanized human-machine interface (HMI) in the field of human-computer interaction (HCI) [1], [2]

  • A series of experiments have been designed and conducted on both Database for Emotion Analysis using Physiological Signals (DEAP) and SJTU Emotion EEG Dataset (SEED) datasets to validate the effectiveness of our method including emotion activation curves, the interpretability and accuracy improvement

  • We showed that the weight coefficients based on the correlation coefficients and entropy coefficients have improved classification accuracy compared to current benchmark algorithms

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Summary

Introduction

With the rapid development of computer and humancomputer interaction technology, there is a high demand to build a more intelligent and humanized human-machine interface (HMI) in the field of human-computer interaction (HCI) [1], [2]. It is worth noting that in the process of HCI, the user’s interactive behavior is only an external behavior, and the nature of that behavior is driven by the user’s perception. If the machine has the ability to accurately recognizing human emotions, it is significant to build a more intelligent and humanized human-computer interaction system. In this context, affective computing emerges as required, and it is being studied as a hot spot [3]–[7].

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