Employee Presence Using Body Temperature Detection And Face Recognition

Arif Ainur Rafiq, Erna Alimudin, Della Puspa Rani

Abstract


Employee performance can be measured by their presence or attendance, which applies to both civil servants and non-civil servants. Because the attendance system still uses the manual technique, it is considered inefficient due to the potential for data fraud and attendance problems. In addition, the government is adopting precautions against viruses in office buildings to maintain business continuity while the pandemic is being addressed. This study aimed to employ a facial recognition system and temperature measurement to lower the danger of COVID 19 transmission while minimizing paper use by using a facial recognition system as a substitute for presence. It has so far permitted the digitization of formerly manual sights. The OpenCV library allows computers to detect faces using the haar cascade classifier approach and Python as a programming language. A Logitech C930e webcam with a resolution of 1080p at 30fps was used to capture facial data, which was then processed on a Raspberry Pi 4 microprocessor. It uses an MLX90614 sensor to monitor body temperature, which is controlled by an Arduino Uno microcontroller. It is well integrated into the database based on body temperature testing and facial recognition. The development of a more accurate temperature sensor reading method for distance and employee body temperature is a priority for future research.

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References


Republic Indonesia, "Republic of Indonesia Government Regulation No. 30 year 2019", 1945.

M. Hernandez-de-Menendez, R. Morales-Menendez, C. A. Escobar, and J. Arinez, "Biometric applications in education", Int. J. Interact. Des. Manuf., 15(2–3), 365–380, 2021.

S. C. Hoo and H. Ibrahim, "Biometric-Based Attendance Tracking System for Education Sectors: A Literature Survey on Hardware Requirements", J. Sensors, 2019, 7410478, 2019.

V. P. Singh, S. Srivastava, and R. Srivastava, "Automated and effective content-based image retrieval for digital mammography", J. Xray. Sci. Technol., 26, 29–49, 2018.

K. Okereafor, I. Ekong, I. Okon Markson, and K. Enwere, "Fingerprint Biometric System Hygiene and the Risk of COVID-19 Transmission", JMIR Biomed. Eng., 5(1), e19623, 2020.

F. Susanto, F. Fauziah, and A. Andrianingsih, "Lecturer Attendance System using Face Recognition Application an Android-Based", J. Comput. Networks, Archit. High Perform. Comput., 3(2), 167–173, 2021.

T. E. Prabowo, R. Hartanto, and S. Wibirama, “Prototype of Student Attendance Application Based on Face Recognition Using Eigenface Algorithm,” IJITEE (International J. Inf. Technol. Electr. Eng., 3(1), 23, 2019.

A. Ghoshal, A. Aspat, and E. Lemos, “OpenCV Image Processing for AI Pet Robot,” International Journal of Applied Science and Smart Technologies (IJASST), 3(1), 65–82, 2021.

Widiharso, "Teknik Dasar Elektronika Telekomunikasi. Kementerian Pendidikan dan Kebudayaan", 2013.

Health Minister of The Republic Of Indonesia, "Decree of The Health Minister of The Republic of Indonesia Number HK.01.07/Menkes/382/2020 about Community Health Protocol in Public Places and Facilities for The Prevention and Control of Corona Virus Disease 2019 (Covid-19)". Indonesia, 2019.




DOI: https://doi.org/10.24071/ijasst.v4i2.5066

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