A hybrid location‐dependent ultra convolutional neural network‐based vehicle number plate recognition approach for intelligent transportation systems

Author:

Ramasamy Sathya1ORCID,Selvarajan Ananthi2,Kaliyaperumal Vaidehi3,Aruchamy Prasanth4ORCID

Affiliation:

1. Department of Information Technology Kongunadu College of Engineering and Technology Tamil Nadu Trichy India

2. Department of Computer Science and Engineering Sri Eshwar College of Engineering Coimbatore Tamil Nadu India

3. Department of Artificial Intelligence and Data Science Stanley College of Engineering and Technology for Women Hyderabad Telangana India

4. Department of Electronics and Communication Engineering Sri Venkateswara College of Engineering Sriperumpudur Tamil Nadu India

Abstract

SummaryIn today's world, identifying the owner and proprietor of a vehicle that violates driving rules or does any unintentional work on the street is a challenging task. Inspection of each driver's license number takes a long time for a highway police officer. To overcome this, many researchers have introduced an automated number plate recognition approach which is usually a computer vision‐based technique to identify the vehicle's registration plate. However, the existing recognition approaches are lagged to extract the influential features which degrade the detection accuracy and increase the misclassification errors. In this article, a novel automated number plate recognition methodology has been proposed to identify the number plates accurately with minimal error rates. Primary, a new pretrained location‐dependent ultra convolutional neural network (LUCNN) is employed to learn the influential features from the input images. These obtained features are then fed into hybrid single‐shot fully convolutional detectors with a support vector machine (SSVM) classifier to separate the vehicle's city, model, and number from the registration location. At varied automobile distances, the proposed LUCNN + SSVM model is able to retrieve the number plate regions in the picture acquired from its back end. The performance results manifest that the proposed LUCNN + SSVM model attains a better accuracy of 98.75% and a lesser error range of 1.25% than the existing recognition models.

Publisher

Wiley

Subject

Computational Theory and Mathematics,Computer Networks and Communications,Computer Science Applications,Theoretical Computer Science,Software

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