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Multimodal emotion recognition using deep learning techniques

Tien Dung Nguyen

Year
2020
Citations
6
Access
Open access

Abstract

This thesis investigates the use of deep learning techniques to address the problem of machine understanding of human affective behaviour and improve the accuracy of both unimodal and multimodal human emotion recognition. The objective was to explore how best to configure deep learning networks to capture individually and jointly, the key features contributing to human emotions from three modalities (speech, face, and bodily movements) to accurately classify the expressed human emotion. The outcome of the research should be useful for several applications including the design of social robots.

Keywords

ModalitiesDeep learningEmotion recognitionArtificial intelligenceComputer scienceMultimodal learningHuman–robot interactionKey (lock)Affective computingFacial expression

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