Abstract

Emotion is the human brain reacting to objective things. In real life, human emotions are complex and changeable, so research into emotion recognition is of great significance in real life applications. Recently, many deep learning and machine learning methods have been widely applied in emotion recognition based on EEG signals. However, the traditional machine learning method has a major disadvantage in that the feature extraction process is usually cumbersome, which relies heavily on human experts. Then, end-to-end deep learning methods emerged as an effective method to address this disadvantage with the help of raw signal features and time-frequency spectrums. Here, we investigated the application of several deep learning models to the research field of EEG-based emotion recognition, including deep neural networks (DNN), convolutional neural networks (CNN), long short-term memory (LSTM), and a hybrid model of CNN and LSTM (CNN-LSTM). The experiments were carried on the well-known DEAP dataset. Experimental results show that the CNN and CNN-LSTM models had high classification performance in EEG-based emotion recognition, and their accurate extraction rate of RAW data reached 90.12 and 94.17%, respectively. The performance of the DNN model was not as accurate as other models, but the training speed was fast. The LSTM model was not as stable as the CNN and CNN-LSTM models. Moreover, with the same number of parameters, the training speed of the LSTM was much slower and it was difficult to achieve convergence. Additional parameter comparison experiments with other models, including epoch, learning rate, and dropout probability, were also conducted in the paper. Comparison results prove that the DNN model converged to optimal with fewer epochs and a higher learning rate. In contrast, the CNN model needed more epochs to learn. As for dropout probability, reducing the parameters by ~50% each time was appropriate.

Highlights

  • There are many research methods applied to real-time emotion recognition

  • Paul et al (2015) used the multifractral detrended fluctuation analysis (MFDFA) method to extract features and used a support vector machine (SVM) to categorize the EEG feature space related to various emotional states into their respective classes

  • We investigated the application of existing deep learning models widely used in this field, and implemented several popular deep learning models including deep neural networks (DNN), convolutional neural networks (CNN), long short-term memory (LSTM), and a hybrid model of convolutional neural networks and long short-term memory (CNN-LSTM) for EEG emotion recognition

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Summary

Introduction

There are many research methods applied to real-time emotion recognition. For example, researchers use electroencephalogram (EEG) signals and peripheral physiological such as ECG, respiration, skin resistance, and blood pressure to carry out emotion recognition research (Horlings et al, 2008). Paul et al (2015) used the multifractral detrended fluctuation analysis (MFDFA) method to extract features and used a support vector machine (SVM) to categorize the EEG feature space related to various emotional states into their respective classes. Jiang et al (2020a) used transfer learning to reduce the differences in data distribution between the training and testing data (Yang et al, 2016; Jiang et al, 2017) They proposed a novel negative-transferresistant fuzzy clustering model (Jiang et al, 2015) with a shared cross-domain transfer latent space (Jiang et al, 2019)

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