Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Automatic Jordanian License Plate Detection and Recognition System Using Deep Learning Techniques

View through CrossRef
Recently, the number of vehicles on the road, especially in urban centers, has increased dramatically due to the increasing trend of individuals towards urbanization. As a result, manual detection and recognition of vehicles (i.e., license plates and vehicle manufacturer) become an arduous task and beyond human capabilities. In this paper, we have developed a system using transfer learning-based DL techniques for automatic identification of Jordanian vehicles. The YOLOv3 (You Only Look Once) model was re-trained using transfer learning to accomplish the license plate detection, character recognition, and vehicle logo detection. While VGG16 (Visual Geometry Group) model was retrained to accomplish the vehicle logo recognition. To train and test these models, four datasets have been collected. The first dataset consists of 7,035 Jordanian vehicle images, the second dataset consist of 7,176 Jordanian license plates, and the third dataset consists of 8,271 Jordanian vehicle images. These datasets have been used to train and test the YOLOv3 model for Jordanian license plate detection, character recognition, and vehicle logo detection, respectively. While the fourth dataset consists of 158,230 vehicle logo images used to train and test the VGG16 model for the vehicle logo recognition. Text measures were used to evaluate the performance of our developed system. Moreover, mean average precision (mAP) measure was used to evaluate the YOLOv3 model of the detection tasks (i.e., license plate detection and vehicle logo detection). For license plate detection, the precision, recall, F-measure, and mAP were 99.6%, 100%, 99.8%, and 99.9%, respectively. While for character recognition, the precision, recall, and F-measure were 100%, 99.9%, and 99.95%, respectively. The performance of license plate recognition stage was evaluated by evaluating these two sub-stages as a sequence, where the precision, recall, and F-measure were 99.8%, 99.8%, and 99.8%, respectively. Furthermore, for vehicle logo detection, the precision, recall, F-measure, and mAP were 99%, 99.6%, 99.3%, and 99.1%, respectively, while for vehicle logo recognition, the precision, recall, F-measure were 98%, 98%, and 98%, respectively. The performance of vehicle logo recognition stage was evaluated by evaluating these two sub-stages as a sequence, where the precision, recall, and F-measure were 95.3%, 99.5%, and 97.4%, respectively.
Title: Automatic Jordanian License Plate Detection and Recognition System Using Deep Learning Techniques
Description:
Recently, the number of vehicles on the road, especially in urban centers, has increased dramatically due to the increasing trend of individuals towards urbanization.
As a result, manual detection and recognition of vehicles (i.
e.
, license plates and vehicle manufacturer) become an arduous task and beyond human capabilities.
In this paper, we have developed a system using transfer learning-based DL techniques for automatic identification of Jordanian vehicles.
The YOLOv3 (You Only Look Once) model was re-trained using transfer learning to accomplish the license plate detection, character recognition, and vehicle logo detection.
While VGG16 (Visual Geometry Group) model was retrained to accomplish the vehicle logo recognition.
To train and test these models, four datasets have been collected.
The first dataset consists of 7,035 Jordanian vehicle images, the second dataset consist of 7,176 Jordanian license plates, and the third dataset consists of 8,271 Jordanian vehicle images.
These datasets have been used to train and test the YOLOv3 model for Jordanian license plate detection, character recognition, and vehicle logo detection, respectively.
While the fourth dataset consists of 158,230 vehicle logo images used to train and test the VGG16 model for the vehicle logo recognition.
Text measures were used to evaluate the performance of our developed system.
Moreover, mean average precision (mAP) measure was used to evaluate the YOLOv3 model of the detection tasks (i.
e.
, license plate detection and vehicle logo detection).
For license plate detection, the precision, recall, F-measure, and mAP were 99.
6%, 100%, 99.
8%, and 99.
9%, respectively.
While for character recognition, the precision, recall, and F-measure were 100%, 99.
9%, and 99.
95%, respectively.
The performance of license plate recognition stage was evaluated by evaluating these two sub-stages as a sequence, where the precision, recall, and F-measure were 99.
8%, 99.
8%, and 99.
8%, respectively.
Furthermore, for vehicle logo detection, the precision, recall, F-measure, and mAP were 99%, 99.
6%, 99.
3%, and 99.
1%, respectively, while for vehicle logo recognition, the precision, recall, F-measure were 98%, 98%, and 98%, respectively.
The performance of vehicle logo recognition stage was evaluated by evaluating these two sub-stages as a sequence, where the precision, recall, and F-measure were 95.
3%, 99.
5%, and 97.
4%, respectively.

Related Results

Vehicle Number Plate Detection and Recognition Using Deep Learning
Vehicle Number Plate Detection and Recognition Using Deep Learning
[1] M. Bensouilah, M. N. Zennir, and M. Taffar, “An ALPR system-based deep networks for the detection and recognition,” in Proceedings of the 10th International Conference on Patte...
THE LICENCE PLATE PROOF OF IDENTITY RECKLESS STIRRING VEHICLES
THE LICENCE PLATE PROOF OF IDENTITY RECKLESS STIRRING VEHICLES
This study introduces a novel approach aimed at improving Automatic License Plate Recognition (ALPR) systems, addressing the common issue of poor-quality license plate images. The ...
Depth-aware salient object segmentation
Depth-aware salient object segmentation
Object segmentation is an important task which is widely employed in many computer vision applications such as object detection, tracking, recognition, and ret...
Analytical Studies on Techniques and Algorithms of Automatic Number Plate Recognition
Analytical Studies on Techniques and Algorithms of Automatic Number Plate Recognition
The city's efforts to improve traffic make a big step forward when license plates can be read. It explains how an intelligent transportation system should work and what steps shoul...
Detecting Similarity License Plate Vehicle License Via Using Deep CNNs in Complex Surroundings
Detecting Similarity License Plate Vehicle License Via Using Deep CNNs in Complex Surroundings
As our society has developed, cars on the road have increased. Manual license plate recognition is challenging since it is significantly slower in real-time than when performed by ...
Automatic License Plate Recognition System Using YOLOv4
Automatic License Plate Recognition System Using YOLOv4
In this research paper, we’ll talk about ALPR technology, which has gained popularity recently because of all the many ways it may be used. The fundamental benefit of this technolo...
Modified ANPR using Neural Networks
Modified ANPR using Neural Networks
Number Plate Recognition is a mass observation technique which is used to identify the vehicles. The identification and acknowledgement of a vehicle license plate is a key method i...
Design and implementation of lightweight vehicle license plate recognition module utilizing open CV and Tesseract OCR library
Design and implementation of lightweight vehicle license plate recognition module utilizing open CV and Tesseract OCR library
Background/Objectives: In order to recognize the license plates automatically, we design and implement a vehicle license plate recognition module that extracts characters of licens...

Back to Top