Regular Papers

International Journal of Control, Automation and Systems 2017; 15(6): 2942-2949

Published online December 12, 2017

https://doi.org/10.1007/s12555-016-0332-z

© The International Journal of Control, Automation, and Systems

Multi-Task Convolutional Neural Network System for License Plate Recognition

Hong-Hyun Kim, Je-Kang Park, Joo-Hee Oh, and Dong-Joong Kang*

Pusan National University

Abstract

License plate recognition is an active research field as demands sharply increase with the development of Intelligent Transportation System (ITS). However, since the license plate recognition(LPR) is sensitive to the conditions of the surrounding environment such as a complicated background in the image, viewing angle and illumination change, it is still difficult to correctly recognize letters and digits on LPR. This study applies Deep Convolutional Neural Network (DCNN) to the license plate recognition. The DCNN is a method of which the performance has recently been proven to have an excellent generalization error rate in the field of image recognition. The proposed layer structure of the DCNN used in this study consists of a combination of a layer for judging the existence of a license plate and a layer for recognizing digits and characters. This learning method is based on Multi- Task Learning (MTL). Through experiments using real images, this study shows that this layer structure classifies digits and characters more accurately than the DCNN using a conventional layer does. We also use artificial images generated directly for training model."

Keywords Deep convolutional neural network, license plate recognition, machine learning, multi task learning.

Article

Regular Papers

International Journal of Control, Automation and Systems 2017; 15(6): 2942-2949

Published online December 1, 2017 https://doi.org/10.1007/s12555-016-0332-z

Copyright © The International Journal of Control, Automation, and Systems.

Multi-Task Convolutional Neural Network System for License Plate Recognition

Hong-Hyun Kim, Je-Kang Park, Joo-Hee Oh, and Dong-Joong Kang*

Pusan National University

Abstract

License plate recognition is an active research field as demands sharply increase with the development of Intelligent Transportation System (ITS). However, since the license plate recognition(LPR) is sensitive to the conditions of the surrounding environment such as a complicated background in the image, viewing angle and illumination change, it is still difficult to correctly recognize letters and digits on LPR. This study applies Deep Convolutional Neural Network (DCNN) to the license plate recognition. The DCNN is a method of which the performance has recently been proven to have an excellent generalization error rate in the field of image recognition. The proposed layer structure of the DCNN used in this study consists of a combination of a layer for judging the existence of a license plate and a layer for recognizing digits and characters. This learning method is based on Multi- Task Learning (MTL). Through experiments using real images, this study shows that this layer structure classifies digits and characters more accurately than the DCNN using a conventional layer does. We also use artificial images generated directly for training model."

Keywords: Deep convolutional neural network, license plate recognition, machine learning, multi task learning.

IJCAS
December 2024

Vol. 22, No. 12, pp. 3545~3811

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