Title page for ETD etd-07022004-132444


Type of Document Master's Thesis
Author Diaz Acosta, Beatriz
Author's Email Address bdiazaco@vt.edu
URN etd-07022004-132444
Title Experiments in Image Segmentation for Automatic US License Plate Recognition
Degree Master of Science
Department Computer Science
Advisory Committee
Advisor Name Title
Ehrich, Roger W. Committee Chair
Abbott, A. Lynn Committee Member
Ribbens, Calvin J. Committee Member
Wyatt, Christopher L. Committee Member
Keywords
  • Data Cluster Analysis
  • Hough Transform
  • Spectral Analysis
  • Color Image Segmentation
  • License Plate Recognition
  • Minimum-Variance Quantization
Date of Defense 2004-06-18
Availability unrestricted
Abstract
License plate recognition/identification (LPR/I) applies image processing and character recognition technology to identify vehicles by automatically reading their license plates. In the United States, however, each state has its own standard-issue plates, plus several optional styles, which are referred to as special license plates or varieties. There is a clear absence of standardization and multi-colored, complex backgrounds are becoming more frequent in license plates. Commercially available optical character recognition (OCR) systems generally fail when confronted with textured or poorly contrasted backgrounds, therefore creating the need for proper image segmentation prior to classification. The image segmentation problem in LPR is examined in two stages: license plate region detection and license plate character extraction from background. Three different approaches for license plate detection in a scene are presented: region distance from eigenspace, border location by edge detection and the Hough transform, and text detection by spectral analysis. The experiments for character segmentation involve the RGB, HSV/HSI and 1976 CIE L*a*b* color spaces as well as their Karhunen-Loéve transforms. The segmentation techniques applied include multivariate hierarchical agglomerative clustering and minimum-variance color quantization. The trade-off between accuracy and computational expense is used to select a final reliable algorithm for license plate detection and character segmentation. The spectral analysis approach together with the K-L L*a*b* transformed color quantization are found experimentally as the best alternatives for the two identified image segmentation stages for US license plate recognition.
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