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MRI India Journals Vol. 14 No. 2s (2025): Special Issue: ICAESRTA-2K25

Mood Sync: Personalized Music and Driver Safety through Facial Emotion Recognition

Authors

  • Vaibhav U. Bhosale Project Guide, Dept. of Computer Science and Eng Karmaveer Bhaurao Patil College of Engineering,Satara, Maharashtra, India.
  • Atharva A. Chinke Dept. of Computer Science and Eng Karmaveer Bhaurao Patil College of Engineering,Satara, Maharashtra, India.
  • Shreeya A. Shete Dept. of Computer Science and Eng Karmaveer Bhaurao Patil College of Engineering,Satara, Maharashtra, India.
  • Avishkar V. Bhujbal Dept. of Computer Science and Eng Karmaveer Bhaurao Patil College of Engineering,Satara, Maharashtra, India.
  • Shreyash M. Taralekar Dept. of Computer Science and Eng Karmaveer Bhaurao Patil College of Engineering,Satara, Maharashtra, India.

DOI:

https://doi.org/10.65521/intjournalrecadvengtech.v14i2s.1436

Keywords:

Deep Learning models frameworks drowsiness detection emotion recognition integrated system fatigue signs emotional detection music recommendation dlib library real-time monitoring AWS Rekognition AWS Polly AWS S3 buckets driver safety personalized music

Abstract

With the latest advancements in Deep Learning models and frameworks, we can tackle more complex problems than ever before. In this paper, we focus on two key areas: detecting drowsiness and recognizing emotions. Our goal is to create a system that can understand a driver's emotional and physical state, and respond appropriately. By alerting the driver when signs of fatigue are detected and suggesting music based on their current emotions, we aim to enhance their driving experience.

For drowsiness detection, we use the dlib library and a facial landmark shape predictor to monitor the driver's eye conditions in real time. If the eyelids stay closed for a short period, an alert is triggered to wake the driver. Additionally, we incorporate AWS Rekognition to improve facial emotion detection, AWS Polly to generate audio alerts, and AWS S3 buckets to efficiently store and manage data. This integrated approach not only ensures driver safety but also personalizes their journey with music that suits their mood.

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Published

2025-12-11

How to Cite

Bhosale, V. U., Chinke, A. A., Shete, S. A., Bhujbal, A. V., & Taralekar, S. M. (2025). Mood Sync: Personalized Music and Driver Safety through Facial Emotion Recognition. International Journal of Recent Advances in Engineering and Technology, 14(2s), 36–48. https://doi.org/10.65521/intjournalrecadvengtech.v14i2s.1436

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