Published August 1, 2024 | Version v1
Journal article Open

Multi-agent cloud based license plate recognition system

  • 1. University Hassan II of Casablanca

Description

This paper presents a multi-agent license plate recognition system, specifically designed to address the diverse and challenging nature of license plates. Utilizing a multi-agent architecture with agents operating in individual Docker containers and orchestrated by Kubernetes, the system demonstrates remarkable adaptability and scalability. It leverages advanced neural networks, trained on a comprehensive dataset, to accurately identify various license plate types under dynamic conditions. The system’s efficacy is showcased through its three-layered approach, encompassing data collection, processing, and result compilation, significantly outperforming traditional license plate recognition (LPR) systems. This innovation not only marks a technological leap in license plate recognition but also offers strategic solutions for enhancing traffic management and smart city infrastructure globally.

Files

93 35078 IJECE 14% Faizah.pdf

Files (3.6 MB)

Name Size Download all
md5:28a07b28f53c3df0a837f22d41edfc24
3.6 MB Preview Download