Smart Attendance System Usign CNN
- URL: http://arxiv.org/abs/2004.14289v1
- Date: Wed, 22 Apr 2020 09:04:33 GMT
- Title: Smart Attendance System Usign CNN
- Authors: Shailesh Arya, Hrithik Mesariya, Vishal Parekh
- Abstract summary: We are introducing a smart and efficient system for attendance using face detection and face recognition.
This system can be used to take attendance in colleges or offices using real-time face recognition.
The attendance records will be updated automatically and stored in an excel sheet as well as in a database.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The research on the attendance system has been going for a very long time,
numerous arrangements have been proposed in the last decade to make this system
efficient and less time consuming, but all those systems have several flaws. In
this paper, we are introducing a smart and efficient system for attendance
using face detection and face recognition. This system can be used to take
attendance in colleges or offices using real-time face recognition with the
help of the Convolution Neural Network(CNN). The conventional methods like
Eigenfaces and Fisher faces are sensitive to lighting, noise, posture,
obstruction, illumination etc. Hence, we have used CNN to recognize the face
and overcome such difficulties. The attendance records will be updated
automatically and stored in an excel sheet as well as in a database. We have
used MongoDB as a backend database for attendance records.
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