ISPRS Commission III, Vol.34, Part 3A ,,Photogrammetric Computer Vision“, Graz, 2002
A COMBINED ESTIMATION-DEFORMATION MODEL FOR AREA DETECTION:
APPLICATION TO TOPOGRAPHIC AREA FEATURE UPDATE
Sylvie Jodouin, Layachi Bentabet, Djemel Ziou, Jean Vaillancourt, Costas Armenakis
Université de Sherbrooke, Québec, Canada
KEY WORDS: active contour, multispectral boundary finding, region-based segmentation, MAP, change detection, topographic
databases update, Raster and vector information, integration.
ABSTRACT:
This paper presents a fully automated approach for area detection based on multi-spectral images and features from a topographic
database. The vectors residing in the database are refined using active contours (snakes) according to updated information provided
by the multi-spectral images. The conventional methods of defining the external energy of the snake based on statistical measures
or gradient-based boundary finding are often corrupted by poor image quality. Here a method to integrate the two approaches is
proposed using an estimation of the maximum a posteriori (MAP) segmentation in an effort to form a unified approach that is
robust to noise and poor edges. We further propose to improve the accuracy of the resulting boundary location an update of the
snake topology. A number of experiments are performed on both synthetic and LANDSAT 7 images to evaluate the approach.
1. INTRODUCTION
Topographic databases are gaining popularity as a reference
tool in many fields of application. The providers of topographic
information are currently concerned with how to maintain data
updated and also how to increase its accuracy with limited
resources. Moreover, the evolving needs for current basic
spatial data requires reliable and fast processing methods to
address these concerns. This problem could be overcome
through image processing techniques, which allow increasing
accuracy of both geometric and temporal features. An
increasing number of methods for updating spatial information
based on image processing began to appear in the latest years.
From the proposed methods, we are mostly interested with
those based on the snakes. The proposed approaches deal with
different type of images, mainly with single band satellite
(Bentabet et al, 2001; Horritt, 1999) or airborne (Auclair-
Fortier et al., 2001) images and from different type of sensors
such as radar or optical. The snake model is defined according
to the geometry of the target feature. Some works present
linear snakes to search linear features such as road (Bentabet
et al, 2001; Auclair-Fortier et al., 2001). Others present closed
snakes to obtain a description of area features such as water
regions (Horritt, 1999).
In this paper, we propose a method to update existing area
features from a given topographic database using of multi-
spectral images. The available database vectors provide an
interesting initialization for the area localization process. In
this context, the closed snake approach was presented as a
natural solution. The main contribution of this work is the
formulation of the external forces, which deform the snake by
combining both statistical and boundaries information.
The region-based and the boundary finding measures provide
us with complementary information. By reviewing the existing
works focusing on the integration of region-based information
with boundary information, we conclude that they are mainly
made within image segmentation framework (Chakraborty and
Duncan, 1999). The boundary-based methods have superior
localization properties. Also, they are robust to changes in the
gray-level distribution since they look at the derivative
information. However, they often give high rate of false edges
due to textured regions. In addition, a weak response is
produced when far from the boundaries of the area. The region-
based and especially statistical methods supply a good model
for textured regions and good response when far from the
edges. Furthermore, region-based methods have the advantage
of being less susceptible to noise than other methods that
involves derivative information. Unfortunately, these methods
suffer from the problems of poor localization and over-
segmentation.
As pointed out in the above discussion, the region and
boundary based methods have their different advantages and
disadvantages. This brings us to the fact that integration
methods are likely to perform better than either of the methods
alone. An integration method will combine the complementary
strength of these individual methods and decrease their
drawbacks, as pointed out in (Chakraborty and Duncan, 1999;
Pavlidis and Liow, 1990; Tek and Kimia, 1995). Many works
have addressed the problem of combination of region-based
and boundary-based methods. Some studies focus on the Al
techniques, which define a set of rules in order to deal with
conflicting situations (Pavlidis and Liow, 1990). Another way
of achieving combination is the reaction-diffusion method (Tek
and Kima, 1995). However, the problem is that if any one of
the processes makes error (e.g., a false edge), it is propagated
to the final solution. Chakraborty et al. propose to use the game
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