Full text: XVIIIth Congress (Part B3)

    
  
  
  
  
  
  
  
    
  
  
  
  
  
  
  
  
  
  
    
   
    
  
      
    
   
   
    
    
    
   
    
    
       
     
   
     
    
    
   
    
  
ındh, J.-O., 
es 201-206, 
chstumsver- 
i. Master's 
an segmen- 
odels. /EEE 
hine Intelli- 
ge Segmen- 
26(9):1277- 
n. Springer, 
ing in belief 
Bayesschen 
PF, Univer- 
mantic mo- 
rial images. 
itors, Auto- 
n Aerial and 
Basel. 
lustering for 
ure models. 
Machine In- 
EVALUATING MODEL FIDELITY IN AN AERIAL IMAGE ANALYSIS SYSTEM 
F. Quint  M. Sties 
Institute for Photogrammetry and Remote Sensing 
University of Karlsruhe 
76128 Karlsruhe, Germany 
quint@ipf.bau-verm.uni-karlsruhe.de 
Commission Ill, Working Group 3 
KEY WORDS: Aerial Image Understanding, Model, Knowledge Base, Semantic Networks 
ABSTRACT 
The purpose of the system MOSES is the automatic recognition of objects in aerial images. To direct the model based 
structura! image analysis, one has to evaluate each state of the analysis process. One We present in this article the procedures 
used in MOSES to calculate a part of these valuations, the model fidelity, which is a measure for the goodness of match 
between the chosen image primitives and the specific model. Metrics defined on a parametric representation of the primitives 
are used to evaluate the model fidelity. The results of the image analysis process directed by these valuations are presented. 
KURZFASSUNG 
Das System MOSES dient der automatischen Erkennung von Objekten in Luftbildern. Zur Steuerung der modellbasierten, 
strukturellen Bildanalyse sind Bewertungen des aktuellen Analysezustandes anzugeben. In diesem Artikel werden die in MOSES 
verwendete Verfahren zur Berechnung eines Teils dieser Bewertungen, der Modelltreue, vorgestellt. Die Modelltreue ist ein MaB 
für die Übereinstimmung zwischen den gewáhlten Bildprimitiven und dem spezifischen Modell. Zu ihrer Berechnung werden 
Metriken auf einer parametrischen Darstellung der Primitiven verwendet. Ergebnisse des Bildanalyse unter Verwendung der 
vorgestellten Modelltreue werden erläutert. 
1 INTRODUCTION 
| scene description | 
| scene description D EH specific model | 
generic model 
Understanding of aerial images is one of the most challeng- 
ing tasks in computer vision. Due to its complexity, a model 
based analysis has been found to be mandatory since sev- 
eral years, see e.g. (McKeown et al., 1985), (Nicolin and 
Gabler, 1987), (Matsuyama and Hwang, 1990), (Sandakly and 
Giraudon, 1994), (Stilla, 1995). In our system MOSES (Map 
Oriented SEmantic image underStanding) (Quint and Sties, 
1995) we too perform a structural, model based analysis. We 
are interested in the recognition of objects in urban environ- 
ment using large scale aerial images. 
  
  
    
      
    
    
    
generic model 
pum mme mu mm 
map domain 
scene domain 
image domain 
generative model 
2 MOSES 
One of the main characteristics of the system MOSES is that Figure 1: Architecture of the system MOSES 
large scale topographical maps are used to automatically re- 
fine the models used for image analysis. The architecture of 
our system is shown in Fig. 1. The generative model contains 2.1 Map analysis 
domain independent, common sense knowledge the system 
designer has about the environment. The generic models in 
the map domain and in the image domain are specializations 
of the generative model and they reflect the particularities of 
the representations of our environment in the map and image 
respectively. The models contain both declarative knowledge, 
which describes the structure of the objects, and procedural 
knowledge, which contains the methods used during the map 
and image analysis process. As a repository for the models ; ; 
semantic networks (Findler, 1979) are used, as implemented The nodes of the semantic network represent objects, parts 
by the system ERNEST (Kummert et al., 1993). and subparts of the scene. They are described with attributes, 
which in this case mainly contain the geometric properties of 
In the first phase, the generic model in the map domain is 
used to analyse the map, which is available as a list of di- 
gitized contours. The procedure by which map analysis is 
performed is similar to the one used in the image analysis 
process and will be described in a following section. The 
result of the map analysis is a description of the scene, as 
far as it can be constructed out of the map data. This scene 
description is also stored in a semantic network. 
The generative model and the generic models are that part 
of the system which is build by the system developer. The 
models and scene descriptions described in the sequel are 
automatically build in analysis processes. Analysis takes place 
in three phases. 
International Archives of Photogrammetry and Remote Sensing. Vol. XXXI, Part B3. Vienna 1996 
the scene objects. Links between the nodes represent rela- 
tions between the corresponding objects or parts. Two typical 
relations are the part-of relation, which describes the struc- 
ture of the scene objects and the specialization relation, along 
which properties of objects are inherited. 
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