Full text: Proceedings, XXth congress (Part 2)

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A FRAMEWORK FOR ROAD CHANGE DETECTION AND MAP UPDATING 
Qiaoping Zhang ^ *. and Isabelle Couloigner? 
* Department of Geomatics Engineering University of Calgary — 2500 University Drive N.W. — Calgary, Alberta, 
Canada — T2N IN4 — (qzhang, couloigner)@geomatics.ucalgary.ca 
KEY WORDS: Road extraction, Change detection, Feature matching, Database updating, Spatio-temporal modeling 
ABSTRACT: 
The updating of road network databases is crucial to many Geographic Information System (GIS) applications such as navigation, 
urban planning, etc. This paper presents a comprehensive framework for image-based road network updating, in which the following 
three tasks are performed sequentially: road extraction from imagery, road change detection and updating, and spatio-temporal 
modeling. For road extraction a multi-resolution analysis approach is used in combination with a novel road junction detection 
method. The road change detection and updating is one of the typical issues in the map conflation field. Feature matching techniques 
are applied to determine the changed and unchanged portions of the road network. A conflation step is then used to create an updated 
road network in which the attributes will be transferred from the existing database to the new database based on the conjugate 
features resulting from the feature matching step. For a pragmatic road updating system, a spatio-temporal modeler should be 
encompassed to efficiently and effectively store and make use of both the updated and old databases. The proposed methodology has 
been tested on updating the Canadian National Topographic DataBase (NTDB) based on road extraction from remotely-sensed 
imagery. 
1. INTRODUCTION 
Keeping the road network database up-to-date is important to 
many Geographic Information System (GIS) applications (e.g., 
traffic management, emergency handling, etc). In the geomatics 
community, there are several options to update a road network 
map, including ground surveying, vector map comparison, 
image-based updating, etc. Image-based updating is based on 
feature extraction from remotely-sensed imagery, which has 
become even more important recently because of the high 
spatial resolution (1-4 meters), fast orbit repeatability, rich 
multi-spectrum information and stable, affordable acquisition 
cost of satellite imagery [Hu & Tao, 2002]. 
Research on image-based geospatial change detection is rather 
limited, at least compared to the body of work on object 
extraction [Agouris et al, 2001] Among the methods 
developed, we can mention particularly the work of Klang 
(1998). He developed a method for detecting changes between 
an existing road database and a satellite image. First, he used 
the road database to initialize an optimization process using a 
snake approach to correct road location. Then, he ran a line 
following process using a statistical approach to detect new 
roads, starting from the existing network. In Fortier et al. 
(2001), the authors extend the above approach by using road 
intersections. Road intersections improve matching between the 
road database and the lines on the image. Hypotheses for new 
road segments are generated from these line junctions. To avoid 
the pitfalls in GIS updates that result in storing multiple slightly 
different representations of an object that has actually remained 
unchanged, Agouris et al. (2001) extend the model of 
deformable contour models (snakes) to function in a differential 
mode. They introduce a new framework to differentiate change 
detection from the recording of numerous slightly different 
versions of objects that may remain unchanged. 
  
Although the snake model has been successfully applied in 
feature extraction from imagery and change detection as well, 
the review of the previous work shows that a snake model- 
based approach to road change detection and updating has the 
following problems: 
1) It requires the initial position of every snake which makes 
it of little use in finding new roads; 
2) It is very sensitive to the initial position. An undesirable 
initial snake will lead to an inaccurate result; 
3) In a typical road change detection scenario, there is an 
existing road database which provides an initial version of 
the snake. Very often, however, the end points of the 
existing road polyline will not be accurate enough to lead 
the road nodes to the desired positions after snake 
deformation; 
4) It is also sensitive to the noise in the digital numbers along 
the road lines, which is often the case due to the complex 
radiometric background. 
Usually a road updating processing will involve several issues, 
such as 1) the improvement of the weak positional accuracy of 
the existing road locations that remain unchanged; 2) the 
updating of the changed road; 3) the detection of the new roads; 
and 4) the transfer of attribute data from the previous version of 
the road database. These issues are among the typical concerns 
in map conflation research area. Map conflation is the process 
of creating a new database based on two or more different 
databases covering the same area [Cobb et al., 1998]. The new 
database is superior to any single one in the whole, with high 
accuracy, rich attribute information, up-to-date, etc. 
This paper will present a framework for image-based road 
change detection and map updating. 
Corresponding author. Qiaoping Zhang — qzhang@geomatics.ucalgary.ca 
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