车牌识别外文文献翻译中英文.docx
《车牌识别外文文献翻译中英文.docx》由会员分享,可在线阅读,更多相关《车牌识别外文文献翻译中英文.docx(14页珍藏版)》请在冰豆网上搜索。
外文文献翻译
(含:
英文原文及中文译文)
文献出处:
Gao Q,WangX,Xie G.License Plate Recognition Based On Prior Knowledge[C]// IEEE International Conference on Automation and Logistics.IEEE,2007:
2964-2968.
英文原文
License Plate Recognition Based On Prior Knowledge
Qian Gao,Xinnian Wang and GongfuXie
Abstract - In this paper,a new algorithm based on improved BP (back propagation) neural network for Chinese vehicle license plate recognition (LPR) is described.The proposed approach provides a solution for the vehicle license plates (VLP) which were degraded severely.What it remarkably differs from the traditional methods is the application of prior knowledge of license plate to the procedure of location,segmentation and recognition.Color collocation is used to locate the license plate in the image.Dimensions of each character are constant,which is used to segment the character of VLPs.The Layout of the Chinese VLP is an important feature,which is used to construct a classifier for recognizing.The experimental results show that the improved algorithm is effective under the condition that the license plates were degraded severely.
Index Terms - License plate recognition,prior knowledge,vehicle license plates,neural network.
I.INTRODUCTION
Vehicle License-Plate (VLP) recognition is a very interesting but difficult problem.It is important in a number of applications such as weight-and-speed-limit,red traffic infringement,road surveys and park security[1].VLP recognition system consists of the plate location,the characters segmentation,and the characters recognition.These tasks become more sophisticated when dealing with plate images taken in various inclined angles or under various lighting,weather condition and cleanliness of the plate.Because this problem is usually used in real-time systems,it requires not only accuracy but also fast processing.Most existing VLP recognition methods[2],[3],[4],[5]reduce the complexity and increase the recognition rate by using some specific features of local VLPs and establishing some constrains on the position,distance from the camera to vehicles,and the inclined angles.In addition,neural network was used to increase the recognition rate[6],[7]but the traditional recognition methods seldom consider the prior knowledge of the local VLPs.In this paper,we proposed a new improved learning method of BP algorithm based on specific features of Chinese VLPs.The proposed algorithm overcomes the low speed convergence of BP neural network[8]
and remarkable increases the recognition rate especially under the condition that the license plate images were degrade severely.
II.SPECIFIC FEATURES OF CHINESE VLPS
A.Dimensions
According to the guideline for vehicle inspection[9],all license plates must be rectangular and have the dimensions and have all7characters written in a single line.Under practical environments,the distance from the camera to vehicles and the inclined angles are constant,so all characters of the license plate have a fixed width,and the distance between the medium axes of two adjoining characters is fixed and the ratio between width and height is nearly constant.Those features can be used to locate the plate and segment the individual character.B.Color collocation of the plate
There are four kinds of color collocation for the Chinese vehicle license plate.These color collocations are shown in table I.
TABLE I
Moreover,military vehicle and police wagon plates contain a red character which belongs to a specific character set.This feature can be used to improve the recognition rate.
C.Layout of the Chinese VLPS
The criterion of the vehicle license plate defines the characters layout of Chinese license plate.All standard license plates contain Chinese characters,numbers and letters which are shown in Fig.1.The first one is a Chinese character which is an abbreviation of Chinese provinces.The second one is a letter ranging from A to Z except the letter I.The third and fourth ones are letters or numbers.The fifth to seventh ones are numbers ranging from0to9only.However the first or the seventh ones may be red characters in special plates (as shown in Fig.1).
After segmentation process the individual character is extracted.Taking advantage of the layout and color collocation prior knowledge,the individual character will enter one of the classes:
abbreviations of Chinese provinces set,letters set,letters or numbers set,number set,special characters set.
(a)Typical layout
(b) Special character
Fig.1The layout of the Chinese license plate
III.THE PROPOSED ALGORITHM
This algorithm consists of four modules:
VLP location,character segmentation,character classification and character recognition.The main steps of the flowchart of LPR system are shown in Fig.2.
Firstly the license plate is located in an input image and characters are segmented.Then every individual character image enters the classifier to decide which class it belongs to,and finally the BP network decides which character the cha