Detail publikace
Automatic Traffic Sign Detection and Recognition Using Colour Segmentation and Shape Identification
HORÁK, K. DAVÍDEK, D. ČÍP, P.
Originální název
Automatic Traffic Sign Detection and Recognition Using Colour Segmentation and Shape Identification
Anglický název
Automatic Traffic Sign Detection and Recognition Using Colour Segmentation and Shape Identification
Jazyk
en
Originální abstrakt
The paper describes a colour-based segmentation method of European traffic signs for detection in an image and a feature-based recognition method for categorizing them into given classes. At first, we have performed analysis of several well-known colour spaces as the RGB, HSV and YCbCr often used for segmentation purposes. The HSV colour space has been chosen as the most convenient for segmentation step and colour-based models of traffic signs representatives were created. Next, the fast radial symmetry (FRS) detection method and the Harris corner detector were used to recognize circles, triangles and squares as main geometrical shapes of the traffic signs. For these purposes a new gallery of real-life images containing traffic signs has been created and analysed. Overall efficiency of our recognition method is approx. 93 % on our gallery and is usable for real-time implementations.
Anglický abstrakt
The paper describes a colour-based segmentation method of European traffic signs for detection in an image and a feature-based recognition method for categorizing them into given classes. At first, we have performed analysis of several well-known colour spaces as the RGB, HSV and YCbCr often used for segmentation purposes. The HSV colour space has been chosen as the most convenient for segmentation step and colour-based models of traffic signs representatives were created. Next, the fast radial symmetry (FRS) detection method and the Harris corner detector were used to recognize circles, triangles and squares as main geometrical shapes of the traffic signs. For these purposes a new gallery of real-life images containing traffic signs has been created and analysed. Overall efficiency of our recognition method is approx. 93 % on our gallery and is usable for real-time implementations.
Dokumenty
BibTex
@article{BUT127252,
author="Karel {Horák} and Daniel {Davídek}",
title="Automatic Traffic Sign Detection and Recognition Using Colour Segmentation and Shape Identification",
annote="The paper describes a colour-based segmentation method of European traffic signs for detection in an image and a feature-based recognition method for categorizing them into given classes. At first, we have performed analysis of several well-known colour spaces as the RGB, HSV and YCbCr often used for segmentation purposes. The HSV colour space has been chosen as the most convenient for segmentation step and colour-based models of traffic signs representatives were created. Next, the fast radial symmetry (FRS) detection method and the Harris corner detector were used to recognize circles, triangles and squares as main geometrical shapes of the traffic signs. For these purposes a new gallery of real-life images containing traffic signs has been created and analysed. Overall efficiency of our recognition method is approx. 93 % on our gallery and is usable for real-time implementations.",
address="EDP Sciences",
booktitle="Proceedings of the 3rd International Conference on Industrial Engineering and Applications 2016.",
chapter="127252",
doi="10.1051/matecconf/20166817002",
edition="Volume 68",
howpublished="online",
institution="EDP Sciences",
number="17002",
volume="68",
year="2016",
month="august",
pages="1--6",
publisher="EDP Sciences",
type="journal article in Web of Science"
}