Vehicle And Driver Recognition for Access Control

Authors

  • Yasir Hussain Siddiqui Ziauddin University, Faculty of Engineering, Science, Technology and Management, North Nazimabad, Karachi, 74600, Pakistan
  • Sohaib Hussain Siddiqui Ziauddin University, Faculty of Engineering, Science, Technology and Management, North Nazimabad, Karachi, Pakistan.
  • Munaf Rashid Ziauddin University, Faculty of Engineering, Science, Technology and Management, North Nazimabad, Karachi, 74600, Pakistan
  • Kashif Iqbal Ziauddin University, Faculty of Engineering, Science, Technology and Management, North Nazimabad, Karachi, 74600, Pakistan
  • Shahzad Nasim Faculty of Management, Information Science & Technology, The Begum Nusrat Bhutto Women University, Sukkur

DOI:

https://doi.org/10.62019/abbdm.v4i3.225

Keywords:

VDR, Access control, License plate recognition, Facial recognition, YOLOv8, OpenCV, EasyOCR, Machine learning, Neural networks

Abstract

The following paper proposes an advanced vehicle and driver recognition system to enhance security at vehicular entry-exit points in response to the growing needs of more efficient and secure access control systems at these checkpoints. The proposed system will integrate license plate recognition and facial recognition technologies using state of-the-art machine-learning models from Ultralytics: YOLOv8 and EasyOCR, respectively. It works in three stages: license plate detection, character alpha-numeric identification, and then driver identity with facial recognition. Hence, the two-tier authentication process based on license plate detection and facial identification ensures further prevention from unauthorized entry. Preliminary evaluation of the system also produced very high values for precision, recall, and the mean average precision, indicating that the VDR system offers substantial advances in effectiveness and security when compared to conventional methodologies for access control.

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Published

2024-09-30

How to Cite

Vehicle And Driver Recognition for Access Control . (2024). The Asian Bulletin of Big Data Management , 4(3), 143-158. https://doi.org/10.62019/abbdm.v4i3.225

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