Colour Vision Model-Based Approach for Segmentation of Traffic Signs

被引:0
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作者
Xiaohong Gao
Kunbin Hong
Peter Passmore
Lubov Podladchikova
Dmitry Shaposhnikov
机构
[1] Middlesex University,School of Computing Science
[2] Rostov State University,Laboratory of Neuroinformatics of Sensory and Motor Systems, A.B. Kogan Research Institute for Neurocybernetics
关键词
Colour; Image Processing; Pattern Recognition; Computer Vision; Colour Space;
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学科分类号
摘要
This paper presents a new approach to segment traffic signs from the rest of a scene via CIECAM, a colour appearance model. This approach not only takes CIECAM into practical application for the first time since it was standardised in 1998, but also introduces a new way of segmenting traffic signs in order to improve the accuracy of colour-based approach. Comparison with the other CIE spaces, including CIELUV and CIELAB, and RGB colour space is also carried out. The results show that CIECAM performs better than the other three spaces with 94%, 90%, and 85% accurate rates for sunny, cloudy, and rainy days, respectively. The results also confirm that CIECAM does predict the colour appearance similar to average observers.
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