Class Attendance Using Face Recognition

2019 ◽  
Vol 2 (1) ◽  
Author(s):  
MICHAEL CLARO ◽  
JOSHUA KIM LAURE ◽  
BERNARD OGDOC ◽  
DAISA GUPIT
Author(s):  
Prof. C. S. More

In today’s world, face recognition is the type of biometric that is used in almost every field. This technology is used for security purposes and can be used in many verification and security system. Though it is less efficient than eyes recognition and fingerprint recognition, is still in market due to its untouchability and non-intrusive method. Besides, face recognition should also be utilized for attendance checking in schools, colleges, offices, etc. Face Recognition method pivot to build up a class attendance system which uses the idea of face recognition as present hand done attendance process is lethargic and not suitable to keep. And there are chances of too much proxy attendance. Thus, the want for this method is much needed. This method involves 4 stages- database introduction, face detection, face recognition, attendance updation. The database is made by taking the snap shots of the students in elegance. Face detection and popularity is done using python opencv. Attendance is to be exported at the end of semester.


Author(s):  
Ma. Ian P. Delos Trinos ◽  
Jozar H. Rios ◽  
Keith Gabriel O. Portades ◽  
Paulo Rae O. Portades ◽  
Renielle Miguel P. Langreo ◽  
...  

Electronics ◽  
2019 ◽  
Vol 8 (10) ◽  
pp. 1088 ◽  
Author(s):  
Zhao Pei ◽  
Hang Xu ◽  
Yanning Zhang ◽  
Min Guo ◽  
Yee-Hong Yang

Class attendance is an important means in the management of university students. Using face recognition is one of the most effective techniques for taking daily class attendance. Recently, many face recognition algorithms via deep learning have achieved promising results with large-scale labeled samples. However, due to the difficulties of collecting samples, face recognition using convolutional neural networks (CNNs) for daily attendance taking remains a challenging problem. Data augmentation can enlarge the samples and has been applied to the small sample learning. In this paper, we address this problem using data augmentation through geometric transformation, image brightness changes, and the application of different filter operations. In addition, we determine the best data augmentation method based on orthogonal experiments. Finally, the performance of our attendance method is demonstrated in a real class. Compared with PCA and LBPH methods with data augmentation and VGG-16 network, the accuracy of our proposed method can achieve 86.3%. Additionally, after a period of collecting more data, the accuracy improves to 98.1%.


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