Research on the Application of Emotion Recognition in Virtual Reality Interaction
DOI:
https://doi.org/10.54691/d805xy34Keywords:
Multimodal emotion recognition; emotion-driven interaction; virtual social training; adaptive interaction mechanism; virtual reality application.Abstract
The combination of virtual reality technology and emotion computing brings new research directions in the field of human-computer interaction. This paper proposes a virtual reality interaction system based on multimodal emotion recognition, innovatively designs an emotion-driven adaptive interaction mechanism, and realises the dynamic mapping between emotional states and virtual environment parameters. The research constructs a virtual training system for people with social disorders, and it is experimentally verified that the programme can effectively enhance users' social skills and improve the training effect. The research results provide a new technical path for the application of emotion-aware virtual reality, which is of great significance in promoting the application of virtual reality technology in the fields of psychotherapy, education and training.
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