UPSI Digital Repository (UDRep)
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Abstract : Perpustakaan Tuanku Bainun |
The aim of this study is to develop a student attendance system using face
recognition for higher educational institution. All attendance sessions will be
recorded for students and lecturers so that they can access it anytime.
Incremental model was used as a methodology to conduct this study.
Moreover, this system went through two testing phases which isa verification
and validation test. In the verification test, the test was done by the researcher
itself, while in the validation test, a usability testing was conducted involving 6
people which were students and lecturers from the computingdepartment. The
result from this test was analyzed and used to improve the system. Lastly, this
study proves that the student attendance system using face recognition could
improve the attendance taking process in the higher educational institution
because it can ease student and lecturer tasks, save time as well as secure the
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References |
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