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Book Chapter
Traffic Sign Recognition Using Discriminative Local Features
Book Series
Lecture Notes in Computer Science
Publisher
Springer Berlin / Heidelberg
ISSN
0302-9743 (Print) 1611-3349 (Online)
Volume
Volume 4723/2007
Book
Advances in Intelligent Data Analysis VII
DOI
10.1007/978-3-540-74825-0
Copyright
2007
ISBN
978-3-540-74824-3
DOI
10.1007/978-3-540-74825-0_32
Pages
355-366
Subject Collection
Computer Science
SpringerLink Date
Wednesday, August 22, 2007
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Traffic Sign Recognition Using Discriminative Local Features
Andrzej Ruta
1
, Yongmin Li
1
and Xiaohui Liu
1
(1)
School of Information Systems, Computing and Mathematics, Brunel University, Uxbridge, Middlesex UB8 3PH, UK
Abstract
Real-time road sign recognition has been of great interest for many years. This problem is often addressed in a two-stage procedure involving detection and classification. In this paper a novel approach to sign representation and classification is proposed. In many previous studies focus was put on deriving a set of discriminative features from a large amount of training data using global feature selection techniques e.g. Principal Component Analysis or AdaBoost. In our method we have chosen a simple yet robust image representation built on top of the Colour Distance Transform (CDT). Based on this representation, we introduce a feature selection algorithm which captures a variable-size set of local image regions ensuring maximum dissimilarity between each individual sign and all other signs. Experiments have shown that the discriminative local features extracted from the template sign images enable simple minimum-distance classification with error rate not exceeding 7%.
Andrzej
Ruta
Email:
Andrzej.Ruta@brunel.ac.uk
Yongmin
Li
Email:
Yongmin.Li@brunel.ac.uk
Xiaohui
Liu
Email:
Xiaohui.Liu@brunel.ac.uk
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