4.5 Article

EEG-Based Emotion Recognition Using a 2D CNN with Different Kernels

Journal

BIOENGINEERING-BASEL
Volume 9, Issue 6, Pages -

Publisher

MDPI
DOI: 10.3390/bioengineering9060231

Keywords

emotion recognition; machine learning; convolutional neural network; electroencephalogram

Funding

  1. National Key Research and De-velopment Project [2020YFC2003703, 2020YFC1512304, 2018YFC2001101, 2018YFC2001802]
  2. CAMS Innovation Fund for Medical Sciences [2019-I2M-5-019]
  3. National Natural Science Foundation of China [62071451]

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This article proposes a novel deep neural network based on EEG for emotion classification, and verifies its accuracy through experiments. The results show great potential for research and application in the field of emotion recognition.
Emotion recognition is receiving significant attention in research on health care and Human-Computer Interaction (HCI). Due to the high correlation with emotion and the capability to affect deceptive external expressions such as voices and faces, Electroencephalogram (EEG) based emotion recognition methods have been globally accepted and widely applied. Recently, great improvements have been made in the development of machine learning for EEG-based emotion detection. However, there are still some major disadvantages in previous studies. Firstly, traditional machine learning methods require extracting features manually which is time-consuming and rely heavily on human experts. Secondly, to improve the model accuracies, many researchers used user-dependent models that lack generalization and universality. Moreover, there is still room for improvement in the recognition accuracies in most studies. Therefore, to overcome these shortcomings, an EEG-based novel deep neural network is proposed for emotion classification in this article. The proposed 2D CNN uses two convolutional kernels of different sizes to extract emotion-related features along both the time direction and the spatial direction. To verify the feasibility of the proposed model, the pubic emotion dataset DEAP is used in experiments. The results show accuracies of up to 99.99% and 99.98 for arousal and valence binary classification, respectively, which are encouraging for research and applications in the emotion recognition field.

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