Abstract

Emotion detection is an important research issue in electroencephalogram (EEG). Signal preprocessing and feature selection are parts of feature engineering, which determines the performance of emotion detection and reduces the training time of the deep learning models. To select the efficient features for emotion detection, we propose a maximum marginal approach on EEG signal preprocessing. The approach selects the least similar segments between two EEG signals as features that can represent the difference between EEG signals caused by emotions. The method defines a signal similarity described as the distance between two EEG signals to find the features. The frequency domain of EEG is calculated by using a wavelet transform that exploits a wavelet to calculate EEG components in a different frequency. We have conducted experiments by using the selected feature from real EEG data recorded from 10 college students. The experimental results show that the proposed approach performs better than other feature selection methods by 17.9% on average in terms of accuracy. The maximum marginal approach-based models achieve better performance than the models without feature selection by 21% on average in terms of accuracy.

Highlights

  • An electroencephalogram (EEG) is a biosignal that reflects brain activity

  • Signal preprocessing and feature selection play an important role in emotion detection, which can remove the noise from the EEG signal and select correlated features with emotions to improve the performance of deep learning models [11,12]

  • We propose a maximum marginal approach (MM) on the EEG signal preprocessing for emotion detection

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Summary

Introduction

An electroencephalogram (EEG) is a biosignal that reflects brain activity. In the environment of artificial intelligence, the analysis of EEG is an important research area. Signal preprocessing and feature selection play an important role in emotion detection, which can remove the noise from the EEG signal and select correlated features with emotions to improve the performance of deep learning models [11,12]. It can reduce the training time of deep learning model. We propose a maximum marginal approach (MM) on the EEG signal preprocessing for emotion detection It defines the similarity of two class signals and selects the feature on the frequency domain.

Related Work
Maximum Marginal Approach
Detail Components Set Construction
Feature Selection
BiLSTM Network
Experimental Results
Dataset
Results and Analysis
Conclusions
Full Text
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