Public Models considered for emotion estimation from EEG

Overview

Emotion-EEG

Set of models for emotion estimation from EEG. Composed by the combination of two deep-learing models learning together (RNN and CNN) with the help of a saliency analysis.

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Instruction

The three proposed models are direcly available here:

Installation and Dependencies

Pytorch 1.5

MNE

Cuda 10.1

Installation with pip: pip install -r req.txt

Import of the environment with conda: conda env create -f env.yml

Remarks

Due to the EULA for each dataset, some example signals have been proposed to test the models, however, they are not corresponding to signals from one of tested dataset.

If you are interested in our work, don't hesitate to contact us.

Best! 😄

Owner
Victor Delvigne
PhD candidate at @numediart. My research project focuses on the used of innovative technologies in the context of biomedical signal processing.
Victor Delvigne
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