Impact Factor (2025): 6.9
DOI Prefix: 10.47001/IRJIET
This
project aimed at developing an Emotion Based Content Recommendation System
using Deep Learning to provide personalized content suggestions based on users'
emotional states. The system is built to an analyze facial expressions in real
time using Convolutional Neural Networks (CNN), which can accurately identify
emotions such as joy, sorrow, anger, and others. Once an emotion is detected, the
recommendation engine aligns it with suitable music and movie suggestions to
match the user's current mood, thereby enhancing their overall experience.
By bridging the gap between emotion recognition and content
personalization, the system creates an intuitive and mood driven entertainment
experience. The core of this project is the CNN model that enables high
precision emotion detection, while the recommendation module ensures that users
receive relevant and emotionally resonant content. This project demonstrates
the potential of AI in reshaping how users interact with digital media by
adapting to their emotional needs and increasing engagement.
Built as an intelligent recommendation system, it offers not only
enhanced content discovery but also a more personal and satisfying interaction
with multimedia platforms. In short, this project aims to highlight the
practical application of CNNs in emotion recognition and the importance of
adaptive systems in modern entertainment.
Country : India
IRJIET, Volume 9, Issue 4, April 2025 pp. 215-218