FACIAL EMOTION RECOGNITION FOR EMOJI RECOMMENDATION IN CHAT APPLICATION
Abstract
his thesis presents a different way to deal with improving the client experience in chat
applications by coordinating emotion recognition. The point is to empower constant recognition
of the client's emotion during the conversation and give ideas of stickers or emoticons as needs
be. The chat app can accurately analyze the user's emotional state based on facial expressions
captured by the device's camera by utilizing facial emotion recognition algorithms. Users can
easily and interactively express their feelings in digital conversations with the proposed system.
To accurately recognize emotions, the research aims to create a robust and effective framework
that combines real-time image processing with deep learning methods. Additionally, the thesis
explores the design and implementation of an intelligent recommendation system that suggests
relevant stickers or emojis based on the detected emotions. A definitive objective is to make a
connecting with and expressive correspondence stage that upgrades client experience and works
with more meaningful interactions