QUEUE DISTANCING BASED ON IMAGE PROCESSING

Authors

  • Riski Anandita Basyuni
  • Budi Sugandi

Keywords:

Queue distancing, deteksi objek, yolo, real time

Abstract

This article aims to propose a system to detect queue distancing based on You Only Look Once (YOLO) algorithm as real-time image processing. YOLO perform single neural network to whole image. The networks divide an image into some pieces and predict a bounding box and probability to all of image parts.The method could detect and classify the object simultaneously. Our proposed system is evaluated in real time lift queue within queue distance 1 meter. The system alarm is given to the queue distance below than 1 meter. Sistem diuji secara real time di suatu antrian lift dengan jarak antar objek 1 m. The system performed succesfully queue distancing detection accuracy 100% in 10 times experiment.

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Published

2023-01-23

How to Cite

Riski Anandita Basyuni, & Budi Sugandi. (2023). QUEUE DISTANCING BASED ON IMAGE PROCESSING. Prosiding Seminar Nasional Terapan Riset Inovatif (SENTRINOV), 8(1), 286 - 293. Retrieved from https://proceeding.isas.or.id/index.php/sentrinov/article/view/1169