PREDICTION OF FACIAL EXPRESSION USING DEEP LEARNING

Authors

  • Dr. R.PUNITHAVATHI M.E. PROFESSOR AND HEAD Department Of Information Technology, M Kumarasamy College Of Engineering, Tamil Nadu, India Author
  • NAVEEN KUMAR T. B.Tech Student Department Of Information Technology, M Kumarasamy College Of Engineering, Tamil Nadu, India Author
  • D.PONGOWTHUM S. B.Tech Student Department Of Information Technology, M Kumarasamy College Of Engineering, Tamil Nadu, India Author
  • RAHUL A. B.Tech Student Department Of Information Technology, M Kumarasamy College Of Engineering, Tamil Nadu, India Author
  • SANTHOSKUMAR S. B.Tech Student Department Of Information Technology, M Kumarasamy College Of Engineering, Tamil Nadu, India Author

DOI:

https://doi.org/10.61841/jm4pk203

Keywords:

Deep Learning, Facial Expression, Convolutional Neural Network, Real time emotion, Image resizing.

Abstract

Recommendation suggestion is one of the biggest problems for modern-day applications and their developers. It deals with the content delivery and advertisement, where matching the service provider and the client who requires the service are happening. Now a days, the history and the wish list of the application user are not enough to satisfy the requirements of the user. The real-time emotion of humans needs to be founded out in order to provide the right content to the right user. It can be made possible by building a convolutional neural network using deep learning, where the model will be trained with several thousand images, and then input is passed and output is returned. 

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References

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Published

31.05.2020

How to Cite

R., P. M., T. , N. K., S., D., A. , R., & S. , S. (2020). PREDICTION OF FACIAL EXPRESSION USING DEEP LEARNING. International Journal of Psychosocial Rehabilitation, 24(3), 4153-4158. https://doi.org/10.61841/jm4pk203