A Deep Learning Development for Automatic License Plate Detection with Text Extraction Capability

Automatic License Plate Detection with Text Extraction Capability

Authors

  • Sabri Nasser Hussein Murshed Dokhan Universiti Tun Hussein Onn Malaysia Author
  • Nureize Arbaiy Universiti Tun Hussein Onn Malaysia Author

Keywords:

Automatic License Plate Detection with Text Extraction Capability, ALPR System, ANPR System

Abstract

Vehicle identification and tracking are essential in traffic surveillance systems, which prioritize safety and efficiency. Security personnel still manually observe medium-sized structures. Security officers physically record license plate numbers after visually examining passing automobiles. This process is time-consuming and error prone. This project aims to create a web-based deep learning system for automated license plate identification with text extraction at UTHM, Malaysia. A variety of car license plates will train the system. A convolutional neural network will immediately detect and interpret license plate text. The user may submit a vehicle photo to the online interface, and the system will recognize the license plate number and return a picture with the highlighted plate. The system will be tested on a set of concepts using accuracy and precision criteria. Traffic management and vehicle identification might employ the created technology.

 

Downloads

Download data is not yet available.

Author Biography

  • Nureize Arbaiy, Universiti Tun Hussein Onn Malaysia

     

     

Downloads

Published

29-08-2024

Issue

Section

Articles

How to Cite

DOKHAN, S., & Arbaiy, N. (2024). A Deep Learning Development for Automatic License Plate Detection with Text Extraction Capability: Automatic License Plate Detection with Text Extraction Capability. Applied Information Technology And Computer Science, 5(1), 1171-1190. https://penerbit.uthm.edu.my/periodicals/index.php/aitcs/article/view/11918