Full text: Proceedings, XXth congress (Part 4)

  
this method can be used for RS image interpretation. Figure 6.a 
Gives a part of a SPOT XSS image of Ameland, one the islands in 
the North of the Netherlands. Figure 6.b. shows a first image 
classification result with segments that have been identified under 
different spectral classes which could be related to land cover 
classes. The variety of spectral classes in this area is often due to 
local variations which were not relevant for land cover 
classification, this resulted in the identification of too many and 
too small area land cover segments (objects). Therefore similarity 
measures have been formulated between these spectral classes; 
adjacent segments could now be aggregated into larger units by a 
stepwise relaxation procedure based on these similarity measures. 
The results are shown in Figure 6.c and d, the last result proved to 
give a relevant output for land use mapping in this area. 
5. FUNCTIONAL OBJECT AGGREGATION 
51 Object aggregation and generalization 
It is certainly not always so that object aggregation can be 
achieved within the framework of one class hierarchy. In many 
cases objects will be aggregated to form new functional units. 
This is illustrated in Figure 7 where houses and factories are 
assigned to a more general class of buildings, but then these 
buildings and the lots they are on form real estate units and a 
contiguous set of these units forms a street block. Similarly 
sidewalks and roadways form streets. 
These aggregation steps follow a bottom-up procedure in the 
sense that starting from the elementary objects composite objects 
of increasing complexity are constructed in an upward direction, 
in Figure 7 from left to right (Smaalen, 2003). These rules for the 
construction of aggregates are based on topological (adjacency) 
relations between objects, as in the previous section; in Figure 7 
the elementary. objects that form an aggregated object are linked 
by a connected adjacency graph. But the semantic rules are no 
longer specified within the context of a class generalization 
hierarchy or based on thematic similarity rules. 
Object Classes 
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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B4. Istanbul 2004 
This method has been applied to the topographic data of Figure 8. 
This figure shows how houses gardens and streets are aggregated 
in two steps to urban land use units. Similarly farm plots are 
aggregated to from generalised units under the class of 
agricultural land use. The source data for these figures have been 
taken from TOP10 Vector Dataset from (1:10 000 topographic 
map) the Netherlands Topographic Service. 
Aggregation level Aggregation level 2 Aggregation level 3 Aggregation level 4 
(Sup«l) 
   
     
Figure 9: Classification hierarchies related to 
aggregation levels (Molenaar, 1998). 
5.2 Aggregation levels and classification systems 
Each aggregation level within such a hierarchy will have its own 
(sub) context within a thematic field, expressed through a 
classification system with related attribute structures. This means 
that each aggregation level requires its own thematic definitions ' 
implying that each aggregation level will have its own 
classification hierarchy. : 
This should be structured so that the generated attribute structures 
provide the information which is relevant for the objects at each 
aggregation level, see Figure 9. In the example of 
Figure 7. the levels refer to urban land use. The 
different (sub)contexts are related by the fact that 
sets of objects at one level can be aggregated to 
form the objects at the next higher level. There 
are often also relationships between various 
(stest) classes of the different class hierarchies related to 
the aggregation levels. 
There are bottom-up relationships between the 
objects at different levels in the sense that the 
state information of the lowest level objects, as 
contained in the attribute data, can be transferred 
upwards to give state information about the 
objects at higher levels. There are also tóp-down 
relationships in the sense that the behaviour of 
lower level objects will be constrained by the 
information contained in the higher level objects. 
  
  
  
  
  
  
  
e Such vertical relationships have also been 
mans defined in the context of gencral systems theory 
Dl sweat (Bertalanfy, 1968). In (Klijn, 1995) they have 
been observed in the context of landscape 
ecology. 
Figure 7: Functional object aggregations in an urban land use context 
(Smaalen, 2003) 
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