MULTIMODAL SYSTEM FOR FACIAL EMOTION RECOGNITION BASED ON DEEP LEARNING

Authors

  • Atanas Atanassov University of Chemical Technology and Metallurgy
  • Dimitar Pilev University of Chemical Technology and Metallurgy
  • Fani Tomova University of Chemical Technology and Metallurgy

DOI:

https://doi.org/10.59957/jctm.v59.i3.2024.29

Keywords:

facial emotion recognition, deep learning neural network, body gesture recognition, weather recognition

Abstract

Emotions are one of the main ways of communication between people and of expressing attitudes towards objects, products, services, etc. They are divided to verbal and non-verbal classes. Human speech and intonation belong to the first class, and to the second (non-verbal) facial and body emotions, known as body language. The subject of this report is the development of multimodal deep learning system intended to recognize facial and body emotions and their relationship with the scene (weather) in which they occur. It is based on three deep learning neural networks (DNN) each one for recognition of facial emotion, body emotion and weather. Combining their results, we improve significantly the final facial emotion recognition (FER) results.

Downloads

Published

2024-05-07

Issue

Section

Articles