Automated Human Resource and Attendance Management System Based On Real Time Face Recognition
Keywords:
Real Time Face Recognition, Smart Attendance, HRMS, Bio-Metric Attendance SystemAbstract
Automatic face recognition (AFR) innovations have seen sensational enhancements in execution over the previous years, and such systems are presently generally utilized for security and business applications. A system for human face recognition for an association to stamp the attendance of the employees is been executed. So Smart Attendance utilizing Real Time Face Recognition is a genuine arrangement which accompanies everyday exercises of dealing with employees. The errand is exceptionally troublesome as the ongoing foundation subtraction in a picture is as yet a test. To identify ongoing human face are utilized and a basic quick Principal Component Analysis has used to perceive the faces identified with a high exactness rate. The coordinated face is utilized to stamp attendance of the representative. Our system keeps up the attendance records of employees consequently.
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