Optimization of Real-Time Student Face Recognition Attendance Using the YOLO v10 Algorithm

Authors

  • Mesra Betty Yel Sekolah Tinggi Ilmu Komputer Cipta Karya Informatika Jakarta
  • Elviwani Elviwani Sekolah Tinggi Ilmu Komputer Cipta Karya Informatika Jakarta
  • Nandang Sutisna Sekolah Tinggi Ilmu Komputer Cipta Karya Informatika Jakarta
  • Ziyad Fernanda Syams Sekolah Tinggi Ilmu Komputer Cipta Karya Informatika Jakarta

DOI:

https://doi.org/10.62951/ijcts.v2i4.328

Keywords:

Automated Attendance, Computer Vision, Face Detection, Realtime, YOLO v10

Abstract

This research is motivated by the problems in manual attendance systems at schools, which remain vulnerable to fraud, time-consuming, and inefficient. The expected solution is to develop an automated attendance system based on face recognition that can operate in realtime with high accuracy. The research object is vocational high school students, with the applied method implementing the YOLO v10 algorithm for face detection, followed by the face_recognition library for identification. The instruments used include an Imou CCTV camera as the input device, a mid-range laptop as the hardware platform, and Python with SQLite as the software environment for data processing and attendance storage. The results show that the developed system achieved an average face detection accuracy of 96% under normal lighting and 91% under low lighting, with an average processing speed of 27 FPS. The implementation of an anti-duplication feature also ensured data validity by allowing each student to be recorded only once per day. In conclusion, the use of YOLO v10 in face-based attendance proved to be effective, efficient, and capable of reducing fraud. The implication of this study is that the system can be applied in both Islamic boarding schools and general schools as a modernization of attendance systems, with a recommendation for further development through web-based application and cloud database integration.

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Published

2025-10-30

How to Cite

Mesra Betty Yel, Elviwani Elviwani, Nandang Sutisna, & Ziyad Fernanda Syams. (2025). Optimization of Real-Time Student Face Recognition Attendance Using the YOLO v10 Algorithm. International Journal of Computer Technology and Science, 2(4), 50–59. https://doi.org/10.62951/ijcts.v2i4.328

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