EEG data augmentation for emotion recognition with a multiple generator conditional Wasserstein GAN

被引:0
作者
Aiming Zhang
Lei Su
Yin Zhang
Yunfa Fu
Liping Wu
Shengjin Liang
机构
[1] Kunming University of Science and Technology,School of Information Engineering and Automation
[2] University of Electronic Science and Technology of China,School of Information and Communication Engineering
来源
Complex & Intelligent Systems | 2022年 / 8卷
关键词
EEG; Emotion recognition; GAN; Data augmentation;
D O I
暂无
中图分类号
学科分类号
摘要
EEG-based emotion recognition has attracted substantial attention from researchers due to its extensive application prospects, and substantial progress has been made in feature extraction and classification modelling from EEG data. However, insufficient high-quality training data are available for building EEG-based emotion recognition models via machine learning or deep learning methods. The artificial generation of high-quality data is an effective approach for overcoming this problem. In this paper, a multi-generator conditional Wasserstein GAN method is proposed for the generation of high-quality artificial that covers a more comprehensive distribution of real data through the use of various generators. Experimental results demonstrate that the artificial data that are generated by the proposed model can effectively improve the performance of emotion classification models that are based on EEG.
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页码:3059 / 3071
页数:12
相关论文
共 91 条
  • [1] Alarcao SM(2017)Emotions recognition using EEG signals: a survey IEEE Trans Affect Comput 10 374-393
  • [2] Fonseca MJ(2017)Review and classification of emotion recognition based on EEG brain–computer interface system research: a systematic review Appl Sci 7 1239-471
  • [3] Al-Nafjan A(2016)Automated classification of depression EEG signals using wavelet entropies and energies J Mech Med Biol 16 1650035-520
  • [4] Hosny M(2018)Effective data generation for imbalanced learning using conditional generative adversarial networks Expert Syst Appl 91 464-107
  • [5] Al-Ohali Y(2006)A kernel method for the two-sample-problem Adv Neural Inf Process Syst 19 513-31
  • [6] Al-Wabil A(2017)DREAMER: a database for emotion recognition through EEG and ECG signals from wireless low-cost off-the-shelf devices IEEE J Biomed Health Inform 22 98-1105
  • [7] Bairy GM(2011)Deap: a database for emotion analysis; using physiological signals IEEE Trans Affect Comput 3 18-58
  • [8] Niranjan U(2012)Imagenet classification with deep convolutional neural networks Adv Neural Inf Process Syst 25 1097-504
  • [9] Puthankattil SD(1997)International affective picture system (IAPS): technical manual and affective ratings NIMH Center Study Emot Atten 1 39-848
  • [10] Douzas G(2020)Data augmentation for enhancing EEG-based emotion recognition with deep generative models J Neural Eng 17 056021-84