Abstract

Vehicles on the road are rising in extensive numbers, particularly in proportion to the industrial revolution and growing economy. The significant use of vehicles has increased the probability of traffic rules violation, causing unexpected accidents, and triggering traffic crimes. In order to overcome these problems, an intelligent traffic monitoring system is required. The intelligent system can play a vital role in traffic control through the number plate detection of the vehicles. In this research work, a system is developed for detecting and recognizing of vehicle number plates using a convolutional neural network (CNN), a deep learning technique. This system comprises of two parts: number plate detection and number plate recognition. In the detection part, a vehicle’s image is captured through a digital camera. Then the system segments the number plate region from the image frame. After extracting the number plate region, a super resolution method is applied to convert the low-resolution image into a high-resolution image. The super resolution technique is used with the convolutional layer of CNN to reconstruct the pixel quality of the input image. Each character of the number plate is segmented using a bounding box method. In the recognition part, features are extracted and classified using the CNN technique. The novelty of this research is the development of an intelligent system employing CNN to recognize number plates, which have less resolution, and are written in the Bengali language.

Highlights

  • Vehicle Number Plate Recognition (VNPR) is an exoteric and effective research modal‐ity in the field of computer vision [1]

  • Recognizing vehicle number plates can help with authorization

  • The spatial super resolution technique used in this study showed high peaksignal signaltoto noise ratio (PSNR) (33.7845 dB) compared to other related works, such as interpolation‐

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Summary

Introduction

Vehicle Number Plate Recognition (VNPR) is an exoteric and effective research modal‐ity in the field of computer vision [1]. Vehicle Number Plate Recognition (VNPR) is an exoteric and effective research modal‐. As there are an increasing number of vehicles on the road, it is highly challenging to monitor and control the vehicles using existing systems (such as manual monitoring and monitoring by traffic police). Real time detection of number plates from moving vehicles is needed, for monitoring traffic systems, and for traffic law enforcement. Development in this area is slow and very challenging to implement from a practical point of view [2]. This research work aims to detect and recognize number plates in an intelligent way. The tests were carried out on vehicles in Dhaka city, in Bangladesh, al‐

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