PRESENT: An Android-Based Class Attendance Monitoring System Using Face
Recognition Technology
- URL: http://arxiv.org/abs/2012.01907v1
- Date: Fri, 20 Nov 2020 02:25:00 GMT
- Title: PRESENT: An Android-Based Class Attendance Monitoring System Using Face
Recognition Technology
- Authors: Djoanna Marie V. Salac
- Abstract summary: The researcher used incremental model as the software development process and the application was evaluated by seventeen (17) faculty members.
The respondents assessed the developed application as moderately acceptable in terms of functionality, reliability and usability.
With the integration of different technologies such as Android, face recognition and SMS, the traditional way of checking class attendance can be made easier, faster, reliable and secured.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The study aimed to develop an Android-Based Class Attendance Monitoring
Application using Face Recognition to make attendance checking and monitoring
easier and faster. The researcher used incremental model as the software
development process and the application was evaluated by seventeen (17) faculty
members .A validated evaluation questionnaire was used to rate the level of
acceptability of the application based on ISO 9126 software quality and the
level of satisfaction for its major features. For the statistical treatment of
the data collected, Likert Scale, weighted mean and t-test were utilized by the
researcher. The results revealed that instructors find the existing way of
checking attendance as time consuming and a tedious task. Furthermore, the
respondents assessed the developed application as moderately acceptable in
terms of functionality, reliability and usability while portability was rated
as highly acceptable. With regards to the features, the respondents were very
satisfied. The researcher concluded that the developed application was useful
and it can support the needs of the instructors to make attendance checking and
monitoring easier, faster, and reliable. Due to its acceptable evaluation
result, instructors should consider the use of this tool as an alternative to
the existing process of checking and monitoring class attendance. With the
integration of different technologies such as Android, face recognition and
SMS, the traditional way of checking class attendance can be made easier,
faster, reliable and secured, thus improving classroom management.
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