Vision models based identification of traffic signs
Conference paper
Gao, X., Podladchikova, L., Shaposhnikov, D., Shevtsova, N., Hong, K., Batty, S., Golovan, A. and Gusakova, V. 2002. Vision models based identification of traffic signs. 1st European Conference on Colour Graphics, Imaging, and Vision. University of Poitiers, France 02 - 05 Apr 2002 Society for Imaging Science and Technology.
Type | Conference paper |
---|---|
Title | Vision models based identification of traffic signs |
Authors | Gao, X., Podladchikova, L., Shaposhnikov, D., Shevtsova, N., Hong, K., Batty, S., Golovan, A. and Gusakova, V. |
Abstract | During the last 10 years, computer hardware technology has been improved rapidly. Large memory, storage is no longer a problem. Therefore some trade-off (dirty and quick algorithms) for traffic sign recognition between accuracy and speed should be improved. In this study, a new approach has been developed for accurate and fast recognition of traffic signs based on human vision models. It applies colour appearance model CIECAM97s to segment traffic signs from the rest of scenes. A Behavioural Model of Vision (BMV) is then utilised to identify the signs after segmented images are converted into grey-level representation. Two standard traffic sign databases are established. One is British traffic signs and the other is Russian traffic signs. Preliminary results show that around 90% signs taken from the British road with various viewing conditions have been correctly identified. |
Research Group | Artificial Intelligence group |
Conference | 1st European Conference on Colour Graphics, Imaging, and Vision |
Proceedings Title | CGIV'2002: First European conference on colour in graphics, imaging, and vision: Final programme and proceedings |
ISBN | |
Hardcover | 9780892082391 |
Hardcover | 0892082399 |
Publisher | Society for Imaging Science and Technology |
Publication dates | |
2002 | |
Publication process dates | |
Deposited | 01 Apr 2009 |
Output status | Published |
Web address (URL) | https://library.imaging.org/admin/apis/public/api/ist/website/downloadArticle/cgiv/1/1/art00011 |
Scopus EID | 2-s2.0-0141918479 |
Web of Science identifier | WOS:000184048100011 |
Language | English |
https://repository.mdx.ac.uk/item/816q7
57
total views0
total downloads0
views this month0
downloads this month