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Statistical Analysis of Human Emotions to Suggest Suitable Music as per Individual's Mood: An Application of AI and ML for NextGen Smart Cities

Author

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  • Rohit Rastogi

    (Dayalbagh Educational Institute, India & ABES Engineering College, India)

  • Prabhat Yadav

    (ABES Engineering College, India)

  • Jayash Raj Singh Yadav

    (ABES Engineering College, India)

Abstract

There is music recommendation software and music providers that are well explored and commonly used, but those are generally based on simple similarity calculations and manually tagged parameters. This project proposes a music recommendation system based on emotion detection of users, automatic computing, and classification. Music is recommended based on the emotion expressed and temper of the user. Like artists and genre, emotion of the user can also be a crucial recommendation point for music listeners. The different mооds in whiсh the system will сlаssify the imаges аre hаррy, neutrаl, аnd sаd. The system will рre-sоrt the songs according to their genre in the above-mentioned categories. This research project gives us advancement in the music industry with the help of machine learning and artificial intelligence and will reduce the hassle of selecting songs in our leisure time and will automatically play songs by detecting the emotion of the user. This data can be used to play the songs that match the current mood detected from the provided input by the user.

Suggested Citation

  • Rohit Rastogi & Prabhat Yadav & Jayash Raj Singh Yadav, 2021. "Statistical Analysis of Human Emotions to Suggest Suitable Music as per Individual's Mood: An Application of AI and ML for NextGen Smart Cities," International Journal of Cyber Behavior, Psychology and Learning (IJCBPL), IGI Global, vol. 11(3), pages 34-67, July.
  • Handle: RePEc:igg:jcbpl0:v:11:y:2021:i:3:p:34-67
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