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Modern Way of Attendance System

Ajay A. Gidd, Anuarg R. Patil, Shekhar A. Molaj, Shubham D. Bhosekar, Seema G. Bavachkar

Abstract


Face recognition has a lot of popularity in the various purposes like security purpose, biometric control, gender classification, for students or employee’s attendance. By calling a roll number by teachers this take so much time, this method is not applicable for the class whose number of students is high. This system takes small time to make the attendance of the students, which will use for the students. There are four techniques of our attendance system, first we create a testing database, then we take the testing photo of students in the classroom, then we match the faces with the testing database.


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References


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