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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B4. Istanbul 2004
found, whereas in medium size cities the expected structure
dominate, meaning that three or more major roads will meet in
the city centre. In large cities the opposite trend can be
observed: major streets will run around the city but in the centre
itself only minor streets or even pedestrian areas will be
located.
This could be one useful information for setting up rules, which
can be found automatically with data mining mechanism.
: village or small town
«= 5.000 — 10.000 residents
small town
ca. 40.000 residents
large city
ca. 520.000 inhabitants
Figure 5. Typical arrangements of streets in the city centre
depending on the dimension of the town.
2. Junctions of roads have been investigated regarding the
existence of nodes with four outgoing lines. The intention was
to look into detail, if there are reasoning mechanisms to cut
settlement areas into partitions, especially if the lines will meet
approximately orthogonal (CRS type).
Among other things it came up, that highways will be
represented by separate clusters with solely one edge (ELL-
junctions), with the exception of the access roads. Naturally
there are only a few intersections with highways, the parts
between are direct polylines without branches.
As shown in figure 6 it could be one of a criteria to determine
highways respectively to distinguish their access roads from
their carriage-ways in data sets. It can be very helpful to
validate further structures like the neighbourhood of settlement
areas in the vicinity of an highway access.
[=
one edge cluster”,
the highway is easy to locate in the middle.
ec
Figure 6. All red lines are
339
The analysis of junction or node types can also help to
distinguish between different features on a geometric level:
when looking at different linear networks, it gets clear, that
certain junction types only occur with certain objects — or do
not or only rarely occur with certain objects (figure 7). E.g. the
4-junction mentioned above mainly can be found in road
networks — and hardly ever in river networks, as in nature it is
very rare, that four streams will meet in the same place.
Another extreme example are lines which typically do not
intersect at all or only at (very rare) saddle points.
It does not lead to new knowledge, but to new information to
the computer. This investigation can shed light on the content
of a data set, especially which line elements belong to the road
network. In this context the obvious rule can turn into a very
helpful information.
Figure 7. Appearance of different line elements: roads, rivers,
administrative boundaries, contour lines
Furthermore the investigation into the nodes with four outgoing
lines led to following conclusion regarding a partitioning: these
CRS nodes can be of a separating nature, especially along the
major roads. It is similar to a Voronoi diagram, which here,
however, does not exist on the basis of geometric distance, but
rather on the topographic detail of the intersection of four lines.
Figure 8 documents the results of the analysis in two different
data sets, one French and one German data set. Especially along
the major roads the data set is segmented into different
partitions. In the figure on the left side you can see, that the data
set is split in two main sections each on the left and on the right
side of the picture. In the middle a valley with major roads and
a town is located.
dec
Figure 8. Clustering of road networks by analyzing the CRS
nodes. Left: French data set. Right: German data set.
Other measures we are going to investigate is the "straightness"
of a linear object, i.e. a collection of polylines that can be
traversed more or less straightly. A method to derive these so-
called strokes is described in Thomson and Richardson (1999)
and has been used for network generalization and classification
by Elias (2002).
On the basis of described processes we are able to examine the
data sets and the above mentioned results in more detail,
whereby supervised and unsupervised models can hardly be
kept apart at this stage. The following factors could be decisive
for further (supervised and unsupervised) interpretations: size of
a single mesh, length of segments between nodes, frequency of