Detection Of Worker Presence Using The YoloModel Based On Digital Image

Authors

  • Jazmi Matondang Magister of Computer Science, Potensi Utama University Author
  • Rika Rosnelly Magister of Computer Science, Potensi Utama University Author
  • Roslina Magister of Computer Science, Potensi Utama University Author

Keywords:

Face Detection, YOLO, Deep Learning

Abstract

The large number of workers requires a long time for administrative officers to check worker attendance manually so work efficiency cannot be achieved. It takes quite a long time to check worker attendance manually. Attendance reports are sent to office social media, including the names of each worker and so on. This is considered less efficient and sufficient as a basis for providing a solution by detecting worker presence using the YOLO (You Only Look Once) method so that the process of checking worker attendance can be more efficient. The test results with low pixels and training of 100 epochs, namely 224x192 pixels, obtained an accuracy of 86%, while the best test results were using dimensions of 1088x640 pixels in the worker's photo as test data with original photo dimensions of 1080x1920 pixels in the YOLO model which succeeded in detecting faces with 100% accuracy. So, it can be concluded that the higher the pixel value, the better the accuracy tends to be. However, in this case, it also has pixel limitations that are recognized by the model.

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Published

2024-11-27

How to Cite

Detection Of Worker Presence Using The YoloModel Based On Digital Image. (2024). ASTEEC Conference Proceeding: Computer Science, 1(1), 172-175. https://www.proceedings.asteec.com/index.php/acp-cs/article/view/51