Subscribe Now Subscribe Today
Science Alert
 
Blue
   
Curve Top
Information Technology Journal
  Year: 2013 | Volume: 12 | Issue: 1 | Page No.: 127-133
DOI: 10.3923/itj.2013.127.133
 
Facebook Twitter Digg Reddit Linkedin StumbleUpon E-mail

Implementation and Comparison of the License Plate Algorithms: A Case Study

Zhi-Jiang Xu, Sheng-Feng Yu, Hui Wang, Li-Min Meng and K.L. Du

Abstract:
License plate location is a critical part in the license plate detection and recognition system. It is sensitive to weather, illumination and the size of license plate. A variety of license plate location algorithms is proposed, which have limited adaptability. In order to resolve the above mentioned problem, this study improves the image preprocessing, image filtering and discrimination of pseudo-regions in 6 different algorithms based on the corner detection, on wavelet transform, on HSV color space, on RGB color space, on license plate texture and on the integrated features of license plate respectively. The experiments show that the improved algorithms have strong robust.
PDF Fulltext XML References Citation Report Citation
 RELATED ARTICLES:
  •    A Novel Adaptive Regularized Possibilistic Linear Models Based Median Filter ARBMF for Image Noise Suppression
  •    Research on Color Image Segmentation Based on RS for Intelligent Vehicle Navigation
  •    Feature Extraction by Using Non-linear and Unsupervised Neural Networks
  •    Texture Classification Based on Extraction of Skeleton Primitives Using Wavelets
How to cite this article:

Zhi-Jiang Xu, Sheng-Feng Yu, Hui Wang, Li-Min Meng and K.L. Du, 2013. Implementation and Comparison of the License Plate Algorithms: A Case Study. Information Technology Journal, 12: 127-133.

DOI: 10.3923/itj.2013.127.133

URL: https://scialert.net/abstract/?doi=itj.2013.127.133

COMMENT ON THIS PAPER
 
 
 

 

 
 
 
 
 
 
 
 
 

 
 
 
 
 

Curve Bottom