2007
DOI: 10.1002/ima.20095
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Scale and skew‐invariant road sign recognition

Abstract: A fast and robust method to detect and recognize scaled and skewed road signs is proposed in this paper. In the detection stage, the input color image is first quantized in HSV color model. Border tracing those regions with the same colors as road signs is adopted to find the regions of interest (ROI). The ROIs are then automatically adjusted to fit road sign shape models so as to facilitate detection verification even for scaled and skewed road signs in complicated scenes. Moreover, the ROI adjustment and ver… Show more

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Cited by 13 publications
(4 citation statements)
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“…Candidate objects were passed to a multi-layer perceptron (MLP) (operating in YCbCr) trained on RS and non-RS images. Colour quantisation in the HSV colour model was used by Liu et al [15] to find ROIs, followed by border tracing and ROI scaling.…”
Section: Sign Detection Using Colourmentioning
confidence: 99%
“…Candidate objects were passed to a multi-layer perceptron (MLP) (operating in YCbCr) trained on RS and non-RS images. Colour quantisation in the HSV colour model was used by Liu et al [15] to find ROIs, followed by border tracing and ROI scaling.…”
Section: Sign Detection Using Colourmentioning
confidence: 99%
“…Finally, the density and the edge orientation of these 49 areas can be as templates, with a matching scheme used to recognize the road signs. Liu [ 10 ] employed color equalization in a HSV color space to separate the color information in road signs. The area and aspect ratio were used to detect the Regions of Interest (ROI), which were then normalized to obtain 32 distributed radial areas.…”
Section: Related Workmentioning
confidence: 99%
“…Gao [8] proposed a system in which the input images first had to be transformed into the CIECAM97 color space so that regions of interest could be extracted. Liu [9] employed color equa lization in a HSV color space to separate the color informa tion in road signs. The area and aspect ratio were used to detect the region of interested (ROI), which was then nor malized to obtain 32 distributed radial areas.…”
Section: R Elated W Orksmentioning
confidence: 99%