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Face Detection for Behaviour Analysis using Deep Learning


Affiliations
1 Electronics & Telecommunication Engineering Department, Northeastern University, Boston, United States
     

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The smart classroom of the future we envision will greatly enhance the learning experience and achieve seamless communication between students and teachers through real-time detection and machine intelligence. Additionally, facial recognition can capture student emotions such as happiness, sadness, neutrality, anger, nausea, surprise, and more. From this sentiment we analyze it and in the analysis derive the final overall student behavior of a particular speech. So, you can also get results in the form of teacher feedback and student feedback from student behavior. The three main parts of the student attendance system are then described in detail using two deep learning facial recognition algorithms. Behavioral analysis model based on facial recognition neural network or Haar classifier. iii) Automatic teacher feedback based on student behavior analysis.


Keywords

Face Detection, Face Recognition, Face Identification, Behaviour Analysis.
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  • Face Detection for Behaviour Analysis using Deep Learning

Abstract Views: 178  |  PDF Views: 1

Authors

A. K. Azad
Electronics & Telecommunication Engineering Department, Northeastern University, Boston, United States
M. A. Rashid
Electronics & Telecommunication Engineering Department, Northeastern University, Boston, United States
M. S. Hossain
Electronics & Telecommunication Engineering Department, Northeastern University, Boston, United States

Abstract


The smart classroom of the future we envision will greatly enhance the learning experience and achieve seamless communication between students and teachers through real-time detection and machine intelligence. Additionally, facial recognition can capture student emotions such as happiness, sadness, neutrality, anger, nausea, surprise, and more. From this sentiment we analyze it and in the analysis derive the final overall student behavior of a particular speech. So, you can also get results in the form of teacher feedback and student feedback from student behavior. The three main parts of the student attendance system are then described in detail using two deep learning facial recognition algorithms. Behavioral analysis model based on facial recognition neural network or Haar classifier. iii) Automatic teacher feedback based on student behavior analysis.


Keywords


Face Detection, Face Recognition, Face Identification, Behaviour Analysis.