Full text: CMRT09

In: Stilla U, Rottensteiner F, Paparoditis N (Eds) CMRT09. IAPRS, Vol. XXXVIII, Part 3/W4 — Paris, France, 3-4 September, 2009 
CIRCULAR ROAD SIGN EXTRACTION FROM STREET LEVEL IMAGES USING COLOUR, 
SHAPE AND TEXTURE DATABASE MAPS 
A. Arlicot *, B. Soheilian and N. Paparoditis 
Institut Géographique National, Laboratoire Matis, 73, avenue de Paris, 94165 Saint-Mandé cedex, France 
aurore.arlicot@polytech.univ-nantes.fr, bahman.soheilian@ign.fr, nicolas.paparoditis@ign.fr 
http ://recherche.ign.fr/labos/matis/ 
KEY WORDS: mobile mapping system, road sign recognition, color detection, ellipse detection, pattern matching 
ABSTRACT 
Detection and recognition of road signs can constitute useful tools in driving assistance and autonomous navigation 
systems. We aim at generating a road sign database that can be used for both georeferencing in autonomous vehicle 
navigation systems and also in high scale 3D city modelling. This paper proposes a robust algorithm that can detect road 
signs shape and recognizes their types. 
1 INTRODUCTION 
Road signs are very important features for providing rules 
of navigation. Indeed, they are key landmarks when navi 
gating on the roads. Their visual properties are very strong 
because they have been designed to be remarkable and un- 
missible objects. Road signs are thus key objects to en 
rich road model databases to generate roadbooks, short 
est paths, etc. The automatic detection and recognition of 
road signs from images (together with objects such as road 
marks) is thus a key topic and issue for road model updat 
ing but also for tomorrow's applications of these databases, 
i.e. driving assistance, and accurate localisation functions 
for autonomous navigation. Most of the previous work in 
image based road sign extraction deal with three following 
issues: 
• Color detection : road signs are often red or blue 
with some black and white. Many authors used this 
property to detect them. Often, color base rules are 
defined in a color space and used for segmentation, 
(de la Escalera, 1997) use RGB color space and work 
with relations between the red , green and blue. Other 
authors works with color spaces that are less sensitive 
to lighting changes. Although the HSI (Hue, Satu 
ration, Intensity) space is the most common (Piccioli 
et al., 1996). More complicated color space such as 
LCH (Lightness, Chroma, Hue) (Shaposhnikov et al., 
2002) and CIELAB (Reina et al., 2006) are also used. 
• Shape detection: road signs forms are often rect 
angular, triangular or circular. In order to strengthen 
the detection, some authors propose to detect these 
geometric forms within ROIs * 1 provided by color de 
tection. (Ishizuka and Hirai, 2004) present an algo 
rithm for circular road sign detection. (Habib and Jha, 
2007) propose an algorithm for road sign forms de 
tection by line fitting. An interesting measure of el- 
lipticity, rectangularity, and triangularity is proposed 
by (Rosin, 2003). 
• T^pe recognition: It consists in recognising road 
sign type using its pictorial information. It is often 
*A. Arlicot is currently at Polytech’Nantes, IRCCyN lab France. 
1 Region of Interest 
performed by comparing the inside texture of a de 
tected road sign with the textures in a database. For 
this purpose different kind of algorithms are used in 
the state of the art. (Priese et al., 1995) propose an 
algorithm that is based on neural networks. SIFT de 
scriptors are used by (Aly and Alaa, 2004). (de la Es 
calera et al., 2004) used intensity correlation score as 
a measure of similarity to compare the detected road 
sign with a set of standard signs. 
2 OUR STRATEGY 
We propose an algorithm consisting in three main steps. 
Diagram of Figure 1 shows the pipeline of our algorithm. 
First step uses color properties of signs and perform a pre 
detection (Section 3). It provides a set of ROIs in image 
space. Then, an ellipse detection algorithm is applied to 
detect circular shape signs within the ROIs (Section 4). 
The detected shapes are considered as road sign hypothe 
ses. Final step consists in validation or rejection of hy 
potheses. This is performed by matching detected hypothe 
ses with a set of standard circular signs of the same color 
(Section 5). Results and evaluations are presented in Sec 
tion 6. 
3 COLOR DETECTION 
A large number of road signs are blue or red. It can sim 
plify their detection by looking for red and blue pixels. 
However their RGB values depend on illumination condi 
tions. We use HSV (Hue, Saturation, Value, see Equation 
1) color space because it is robust against variable condi 
tions of luminosity. In order to choose the adapted thresh 
old of saturation and hue, we learn these parameters from 
a set of road sign sample in different illumination condi 
tions. Figure 2(a) shows our running example image and 
result of blue color detection is shown in Figure 2(b). In 
order to provide ROIs, connected pixels are labeled (see 
Figure 2(c)). Each label defines a window in image space. 
The following form detection and validation steps are per 
formed within these windows.
	        
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