Emo-Tune: Harnessing Emotion-based Music for Patient Wellness
Authors/Creators
- 1. SRM Valliammai Engineering College
Description
Music has consistently been a favored means of conveying and comprehending human emotions, serving as a powerful medium of expression. It has profound impact on human emotions, and our work aims to leverage this connection to enhance the human experience. This paper aims to enhance emotional wellbeing by identifying an individual's emotional state and playing music that aligns with their current feelings. Existing models of emotion-based music recommendation are based on various algorithms like PCA, SVM, ANN, etc., However those models have not yielded optimal results and are still pursued. Among those models, low accuracy and delayed real time emotion recognition are observed. This paper targets to improvise those drawbacks by proposing a simple user-friendly machine learning system that can provide results based on human emotional state. The central focus of this paper endeavor is training machine learning model on extensive datasets of facial emotions as the input training data from the user. The machine is trained enough pto detect the user’s facial expression by their face biometrics using ML algorithm CNN in OpenCV platform. By analyzing physiological data of the user’s face, the proposed system identifies emotional patterns, affinities, and recommends the associated playlists, music tracks and albums based on the recognized emotion. The proposed model is designed to capture the nuances of various emotional states including joy, sadness, neutral, rock and surprise. The proposed system marks a notable advancement in combining machine learning with music, presenting an innovative method to deeply link music with human emotions
Files
MP0225DEC003.pdf
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Additional details
Dates
- Available
-
2026-01-15