Real Time Attendance System using Convolutional Neural Networks(CNN)
Ch. Raghava Prasad1, Mallavelli Jaya SriNandan2, Veerubhotla Surya Atchyuth3, Siddana Phaneendra4

1Ch. Raghava Prasad, Assoc.Professor (Electronics and Communications Engineering) K L E F Guntur, India.
2Mallavelli Jaya SriNandan, B.Tech Student (Electronics and Communications Engineering)K L E F Guntur, India.
3Veerubhotla Surya Atchyuth, B.Tech Student (Electronics and Communications Engineering) K L E F Guntur, India
4Siddana Phaneendra, B.Tech Student(Electronics and Communications Engineering K L E F Guntur, India.

Manuscript received on November 16, 2019. | Revised Manuscript received on 23 November, 2019. | Manuscript published on December 10, 2019. | PP: 3942-4946 | Volume-9 Issue-2, December 2019. | Retrieval Number: B6876129219/2019©BEIESP | DOI: 10.35940/ijitee.B6876.129219
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Abstract: The management of the attendance can be an incredible weight on the instructors in the event that it is completed in registers. Determining this issue, keen and automatic attendance marking system by using the executive’s framework is being used. In any case, verification is a significant problem in this framework. Brilliant attendance framework is implemented commonly along with the assistance of soft biometrics. Acknowledgment of face is one of the updated biometric techniques this framework got to be enhanced. Being a principle element of biometric confirmation, facial acknowledgment feature has become most utilized enormously in a few such applications, similar to video observing and surveillance-based CCTV film framework, a connection between PC and people and admittance frameworks existing inside and in network security. By using this structure, the issue present in along with intermediaries, understudies also have been checking on the present despite the fact that they are not physically present can without much of a stretch be illuminated. The primary usage steps utilized regarding this sort of framework are facial discovery and perceiving the distinguished the different face of the people. This term paper recommends a perfect model for actualizing a computerized attendance the board framework in order to make understudies for a class by utilizing the procedure of acknowledgment-based face detection procedure, by means of utilizing Convolutional Neural Network (CNN), Max pooling. 
Keywords: Max Pooling, SoftMax Function, ReLu Rectified Linear Unit, CNN.
Scope of the Article: Neural Information Processing