Multiple clues for license plate detection and recognition

This paper addresses a license plate detection and recognition (LPR) task on still images of trucks. The main contribution of our LPR system is the fusion of different segmentation algorithms used to improve the license plate detection. We also compare the performance of two kinds of classifiers for...

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Autores principales: Negri, P., Tepper, M., Acevedo, D., Jacobo, J., Mejail, M.
Formato: Artículo publishedVersion
Publicado: 2010
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Acceso en línea:http://hdl.handle.net/20.500.12110/paper_03029743_v6419LNCS_n_p269_Negri
http://repositoriouba.sisbi.uba.ar/gsdl/cgi-bin/library.cgi?a=d&c=artiaex&d=paper_03029743_v6419LNCS_n_p269_Negri_oai
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id I28-R145-paper_03029743_v6419LNCS_n_p269_Negri_oai
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spelling I28-R145-paper_03029743_v6419LNCS_n_p269_Negri_oai2020-10-19 Negri, P. Tepper, M. Acevedo, D. Jacobo, J. Mejail, M. 2010 This paper addresses a license plate detection and recognition (LPR) task on still images of trucks. The main contribution of our LPR system is the fusion of different segmentation algorithms used to improve the license plate detection. We also compare the performance of two kinds of classifiers for optical character recognition (OCR): one based on the a contrario framework using the shape contexts as features and the other based on a SVM classifier using the intensity pixel values as features. © 2010 Springer-Verlag. Fil:Tepper, M. Universidad de Buenos Aires. Facultad de Ciencias Exactas y Naturales; Argentina. Fil:Acevedo, D. Universidad de Buenos Aires. Facultad de Ciencias Exactas y Naturales; Argentina. Fil:Mejail, M. Universidad de Buenos Aires. Facultad de Ciencias Exactas y Naturales; Argentina. application/pdf http://hdl.handle.net/20.500.12110/paper_03029743_v6419LNCS_n_p269_Negri info:eu-repo/semantics/openAccess http://creativecommons.org/licenses/by/2.5/ar Lect. Notes Comput. Sci. 2010;6419 LNCS:269-276 License plate detection Pixel values Segmentation algorithms Shape contexts Still images SVM classifiers License plate detection Optical character recognition (OCR) Pixel values Segmentation algorithms Shape contexts Still images SVM classifiers Automobiles Classifiers Computer vision Feature extraction Character recognition Image segmentation License plates (automobile) Optical character recognition Optical character recognition Pattern recognition Multiple clues for license plate detection and recognition info:eu-repo/semantics/article info:ar-repo/semantics/artículo info:eu-repo/semantics/publishedVersion http://repositoriouba.sisbi.uba.ar/gsdl/cgi-bin/library.cgi?a=d&c=artiaex&d=paper_03029743_v6419LNCS_n_p269_Negri_oai
institution Universidad de Buenos Aires
institution_str I-28
repository_str R-145
collection Repositorio Digital de la Universidad de Buenos Aires (UBA)
topic License plate detection
Pixel values
Segmentation algorithms
Shape contexts
Still images
SVM classifiers
License plate detection
Optical character recognition (OCR)
Pixel values
Segmentation algorithms
Shape contexts
Still images
SVM classifiers
Automobiles
Classifiers
Computer vision
Feature extraction
Character recognition
Image segmentation
License plates (automobile)
Optical character recognition
Optical character recognition
Pattern recognition
spellingShingle License plate detection
Pixel values
Segmentation algorithms
Shape contexts
Still images
SVM classifiers
License plate detection
Optical character recognition (OCR)
Pixel values
Segmentation algorithms
Shape contexts
Still images
SVM classifiers
Automobiles
Classifiers
Computer vision
Feature extraction
Character recognition
Image segmentation
License plates (automobile)
Optical character recognition
Optical character recognition
Pattern recognition
Negri, P.
Tepper, M.
Acevedo, D.
Jacobo, J.
Mejail, M.
Multiple clues for license plate detection and recognition
topic_facet License plate detection
Pixel values
Segmentation algorithms
Shape contexts
Still images
SVM classifiers
License plate detection
Optical character recognition (OCR)
Pixel values
Segmentation algorithms
Shape contexts
Still images
SVM classifiers
Automobiles
Classifiers
Computer vision
Feature extraction
Character recognition
Image segmentation
License plates (automobile)
Optical character recognition
Optical character recognition
Pattern recognition
description This paper addresses a license plate detection and recognition (LPR) task on still images of trucks. The main contribution of our LPR system is the fusion of different segmentation algorithms used to improve the license plate detection. We also compare the performance of two kinds of classifiers for optical character recognition (OCR): one based on the a contrario framework using the shape contexts as features and the other based on a SVM classifier using the intensity pixel values as features. © 2010 Springer-Verlag.
format Artículo
Artículo
publishedVersion
author Negri, P.
Tepper, M.
Acevedo, D.
Jacobo, J.
Mejail, M.
author_facet Negri, P.
Tepper, M.
Acevedo, D.
Jacobo, J.
Mejail, M.
author_sort Negri, P.
title Multiple clues for license plate detection and recognition
title_short Multiple clues for license plate detection and recognition
title_full Multiple clues for license plate detection and recognition
title_fullStr Multiple clues for license plate detection and recognition
title_full_unstemmed Multiple clues for license plate detection and recognition
title_sort multiple clues for license plate detection and recognition
publishDate 2010
url http://hdl.handle.net/20.500.12110/paper_03029743_v6419LNCS_n_p269_Negri
http://repositoriouba.sisbi.uba.ar/gsdl/cgi-bin/library.cgi?a=d&c=artiaex&d=paper_03029743_v6419LNCS_n_p269_Negri_oai
work_keys_str_mv AT negrip multiplecluesforlicenseplatedetectionandrecognition
AT tepperm multiplecluesforlicenseplatedetectionandrecognition
AT acevedod multiplecluesforlicenseplatedetectionandrecognition
AT jacoboj multiplecluesforlicenseplatedetectionandrecognition
AT mejailm multiplecluesforlicenseplatedetectionandrecognition
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