YOLOv12 for Human Object Detection in Real-time Video Surveillance Systems

Authors

  • Yohanes Bowo Widodo Universitas Mohammad Husni Thamrin, Indonesia https://orcid.org/0000-0001-6135-3350
  • Sondang Sibuea Universitas Mohammad Husni Thamrin, Indonesia
  • Rano Agustino Universitas Mohammad Husni Thamrin, Indonesia

DOI:

https://doi.org/10.37012/jtik.v11i2.2789

Abstract

This research discusses the application of the YOLO (You Only Look Once) model to detect human objects in real-time video surveillance systems. This model was developed in response to the increasing need for efficiency and accuracy in video surveillance analysis, particularly in identifying abnormal or malicious activities. The application of deep learning technology, especially the YOLO model, has been shown to provide better performance in object recognition compared to traditional methods, such as SVM and Haar-Cascade, which often experience limitations in terms of speed and accuracy. One significant contribution of the use of YOLO lies in its ability to detect objects simultaneously in high-speed video, which is crucial in surveillance contexts that require rapid response to incidents. The implementation of YOLO also promises better collaboration between edge and cloud computing, allowing video processing to be carried out closer to the data source, reducing latency and improving data security. With this approach, the system can generate relevant information for rapid decision-making, such as monitoring human behavior in public settings and detecting suspicious activity. The analysis of this study highlights the significant potential of YOLO in improving real-time video surveillance systems and demonstrates that more accurate object detection capabilities can improve overall public safety. Through this model, we hope to revolutionize surveillance practices, adapt to modern needs, and provide a solid foundation for further development in the field of video surveillance.

Author Biography

Yohanes Bowo Widodo, Universitas Mohammad Husni Thamrin

ID SINTA                 : 6199681

ID ORCID                : 0000-0001-6135-3350

ID Google Scholar : zsNYWvQAAAAJ

ID Garuda               : 416284

Address:
Lembaga Penelitian dan Pengabdian kepada Masyarakat Universitas Mohammad Husni Thamrin
Jl. Raya Pd. Gede No.23-25, RT.2/RW.1, Dukuh, Kec. Kramat jati, Kota Jakarta Timur, Daerah Khusus Ibukota Jakarta 13550

 

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Published

2025-07-24

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