MULTIMODAL SYSTEM FOR FACIAL EMOTION RECOGNITION BASED ON DEEP LEARNING

Atanas V. Atanassov, D. Pilev, F. Tomova
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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.
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基于深度学习的面部情绪识别多模态系统
情感是人与人之间交流以及表达对物品、产品、服务等态度的主要方式之一。情绪分为语言和非语言两类。人类的语言和语调属于第一类,面部和肢体情绪属于第二类(非语言),即肢体语言。本报告的主题是开发多模态深度学习系统,旨在识别面部和肢体情绪及其与发生场景(天气)的关系。该系统基于三个深度学习神经网络(DNN),分别用于识别面部情绪、肢体情绪和天气。将它们的结果结合起来,我们就能显著改善最终的面部情绪识别(FER)结果。
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来源期刊
Journal of Chemical Technology and Metallurgy
Journal of Chemical Technology and Metallurgy Engineering-Industrial and Manufacturing Engineering
CiteScore
1.40
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