Automatic Attendance Marking System Using Face Recognition
Keywords:
Image processing, Face recognition, Microcontroller, and CameraAbstract
Face Recognition as it is often referred to as, analyses characteristics of a person's face image input through a camera. Facial recognition or face recognition as it is often referred to as, analyses characteristics of a person's face image input through a camera. Verification or identification can be accomplished from two feet away or more, without requiring the user to wait for long periods of time or do anything more than look at the camera. Traditionally staff attendance is taken manually by using attendance sheet, given by the college member in class. The Current attendance marking methods are monotonous & time consuming. Manually recorded attendance can be easily manipulated. Hence the project is proposed to tackle all these issues. The proposed system consists of a high resolution digital camera put on gate to monitor the office room. The data or images obtained by the camera are sent to a computer programmed system for further Analysis. The obtained images are then compared with a set of reference images of each of the staff & salary the corresponding attendance. The camera module can be a wireless or wired system.
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