Emotion Estimation from EEG -- A Dual Deep Learning Approach Combined
with Saliency
- URL: http://arxiv.org/abs/2201.03891v1
- Date: Tue, 11 Jan 2022 11:38:36 GMT
- Title: Emotion Estimation from EEG -- A Dual Deep Learning Approach Combined
with Saliency
- Authors: Victor Delvigne, Antoine Facchini, Hazem Wannous, Thierry Dutoit,
Laurence Ris and Jean-Philippe Vandeborre
- Abstract summary: We propose a dual method considering the physiological knowledge defined by specialists combined with novel deep learning (DL) models initially dedicated to computer vision.
To present a global approach, the model has been evaluated on four publicly available datasets and achieves similar results to the state-of-theart approaches.
- Score: 2.555313870523154
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Emotion estimation is an active field of research that has an important
impact on the interaction between human and computer. Among the different
modality to assess emotion, electroencephalogram (EEG) representing the
electrical brain activity presented motivating results during the last decade.
Emotion estimation from EEG could help in the diagnosis or rehabilitation of
certain diseases. In this paper, we propose a dual method considering the
physiological knowledge defined by specialists combined with novel deep
learning (DL) models initially dedicated to computer vision. The joint learning
has been enhanced with model saliency analysis. To present a global approach,
the model has been evaluated on four publicly available datasets and achieves
similar results to the state-of-theart approaches and outperforming results for
two of the proposed datasets with a lower standard deviation that reflects
higher stability. For sake of reproducibility, the codes and models proposed in
this paper are available at github.com/VDelv/Emotion-EEG.
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