Full text: XVIIIth Congress (Part B3)

   
mantic Model, 
of the (up to 
‘eature base to 
lge in semantic 
eated in many 
mage contents. 
and the image 
ile non-verified 
image analysis 
restellt werden, 
natisierung des 
len Merkmalen 
1 (SN) sind die 
dern aufgebaut 
AnalyseprozeB 
topographische 
ersten Schritt 
n einem allge- 
schritt zu einer 
ihren. 
re 
  
| and size, e.g. 
it object struc- 
get a specific 
ing alignment, 
atural' objects 
.g. settlement- 
essed in rules, 
ecisions. How- 
r uncertain in- 
unt during the 
these features 
à human oper- 
ated processing 
of external knowledge and general rules in structured form is 
necessary. Digital topographic databases offer such an exter- 
nal knowledge about the location, size, shape and semantic 
meaning of objects, which have to be extracted from satellite 
image information. In many countries — especially Europe and 
North-America — digital databases in this sense are created 
or will be finished in the next few years. For example the 
surveying administration in Germany digitize specific topo- 
graphic map series and aerial photographs to build up differ- 
ent digital databases, where ATKIS (Amtlich Topographisch- 
Kartographisches Informationssystem) is the most important 
one for an integrated processing with satellite image infor- 
mation. The relevant part of ATKIS for image analysis 
are mainly 3 digital landscape models DLM ( — Digitales 
Landschaftsmodell) related to different scales (1 : 25 000, 
1: 200 000, 1 : 1 000 000). This work is based on DLM200 
(1 : 200 000) because the improved image analysis should be 
used for updating the digital database iteratively. Therefore, 
the image information should include more details than the 
database to be updated. A second reason may be the better 
availability of information in this scale all over the world. 
In a first step this work concentrates on areal objects of 
DLM200, which are main classes of permanent usage, like 
settlements, forests, water areas and special agricultural ar- 
eas (meadows, vineyards etc.). For these objects we have 
a-priori a complete geometrical and semantical description 
for the whole image area. Therefore, by this symbolic formu- 
lated knowledge the integration of a model-driven top-down 
approach is possible, where in conventional satellite image 
analysis data-driven bottom-up methods are common. 
In contrast to this conventional methods, automated feature 
extraction and determination of semantic meaning has to take 
quite new aspects into account. Up to now an human opera- 
tor chooses interactively only few representative training areas 
during a supervised classification. This happens by visual in- 
terpretation and judgement of the operator based on his/her 
experience. 'Clean’ training areas are chosen, i.e. without dis- 
turbance or corruption, e.g. by mixture of classes (parks/lakes 
inside settlements), geometrical errors (displacements) at the 
edge of an object or digitizing errors. With DLM200 informa- 
tion all objects inside the image can be used as training areas 
to extract the actual values of the features out of the image, 
but the above mentioned disturbances have to be excluded. 
Therefore, a robust estimation of the features must be car- 
ried out. On the base of the extreme large samples an error 
tolerant method can be created (with the assumption that a 
majority of the whole concerned pixels in the DLM-objects 
are valid for the related class). 
Because of the object-oriented nature of the above mentioned 
features the basic concept of this new approach is to build up 
image segments (by means of DLM-Information), which are 
candidates for semantic objects. Inside these segments the 
features have to be determined ('learned’) as basic parameters 
for the decision process (chapter 4) by means of integrated 
knowledge processing. After this analysis a change detection 
can be carried out, which leads to an update of the digital 
database. 
3 FEATURE EXTRACTION 
3.1 Segmentation 
The results of common segmentation methods such as region 
growing or edge based methods are not satisfying for inho- 
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mogenous areas. Especially settlement areas show a great 
variability in reflectance values because of numerous mixed 
classes and mixed pixels, i.e. settlements usually contain 
also other classes like meadow, forest, water or agriculture 
((VOEGTLE, SCHILLING 1995)). Therefore, methods were 
developed which concentrate only to the significant charac- 
teristic of the object. With the assumption that this charac- 
teristic appears more often inside the concerning object than 
other ones, a robust segmentation can be achieved by mod- 
elling of the interrelations in the image information. So the 
segment boundaries can differ between image and database 
information, if the actual status (image) has changed (e.g. 
increasing of settlement areas, stubed areas in forest etc.). 
Example 'Settlement': Settlements are characterized by 
a clustering of artificial, man-made objects like buildings, 
streets etc., which contain no vegetation. Because of a (nor- 
mally) planned development, these objects have specific in- 
terrelations (e.g. distances) and build up specific structures. 
In the image information spatial clusters of pixels with a poor 
density of vegetation can be found in settlement areas. Be- 
cause of the great amount of other objects which can appear 
inside these areas, an enormous inhomogenity in reflectance 
values is usual. This phenomena (semantic class settlement 
don't coincide with reflectance class) results in dissatisfying 
segmentations. 
As preprocessing step of a new segmentation approach the 
pixels with a poor density of vegetation are extracted by the 
method of Normalized Difference Vegetation Index NDVI: 
(IR — R) 
NDVI = ————- 
(IR + R) 
where IR — reflectance value in near infrared domain 
R — reflectance value in visible red domain 
With a threshold operation based on a statistical analysis 
of the NDVI-histogramm the vegetationfree pixels can be 
marked directly or these pixels are used to build up a spec- 
tral signature for a consecutive classification. In both cases 
we get a more or less spatial clustered class of pixels (fig. 1 
and 2, Landsat TM, 26.04.1993). A first approach for mod- 
elling neighbourhood characteristic was tried by iterative ap- 
plication of mathematical morphology operators. The basic 
idesa was to close the (smaller) gaps by dilation, afterwards 
the original size should be achieved by the same amount of 
erosion. Investigations have shown the principle applicability 
of this method, but if the number of iterations is not high 
enough, the contourlines and the shape resp. are disturbed 
(fig. 3). If the number of iterations is too high, the shape 
gets totally smoothed. 
To overcome the problems of morphology operators another 
approach which is used normally in determination of Dig- 
ital Terrain Models (DTM), was investigated. Neighbour- 
hood relations can also be modelled by triangulation net- 
works, e.g. Delaunay triangulation, which connects adjacent 
elements with shortest distances (fig. 4). A statistic of tri- 
angle perimeters inside the training areas can be determined. 
This will be used to select thoses triangles belonging to a 
spatial cluster. After fusion of valid adjacent triangles we get 
segments congruent to the spatial clusters (fig. 5). 
This method has some important advantages compared with 
morphology operators: with the distances between adjacent 
  
	        
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