CMRT09: Object Extraction for 3D City Models, Road Databases and Traffic Monitoring - Concepts, Algorithms, and Evaluation
106
In Figure 4 a schematic overview of the used classification sys
tem is depicted. A multispectral classification is carried out to
assign the road objects to the different classes. The results of the
multispectral classification combined with the membership func
tion leads to the assignment of the road objects to the different
states.
Multispectral Classification
r~l r~I
water forest clouds roads
Figure 4: Schematic overview of the classification system
4 RESULTS AND EVALUATION
The presented system has been exemplarily tested with two sce
narios representing flood disasters. In both cases roads are as
sessed concerning their trafficability. The first scenario is the Elbe
flood in the year 2002 near Dessau, Germany. Three different
data sources are used for the assessment: Firstly, an IK.ONOS-
Image with four channels (red, green, blue and infrared), cf. Fig
ure 5. The ground-sampling distance of the panchromatic chan
nel is 1 meter and the color-channels is 4 meter. As second
source a digital elevation model with a resolution of 10 meters
is used. Finally, the objects to be assessed are taken form the
ATKIS (German Official Topographic Cartographic Information
System) database. The test scene covers an area of 33 km 2 , which
contains 5484 line segments. In the following investigations only
the road objects are studied.
The second study area is located in Gloucesterhire Region in
Southeast England. In July 2007 the record flood level at Tewkes
bury was measured. During the flooding a TerraSAR-X scene in
StripMap mode with a spatial resolution of 3 meter was acquired.
The polarization is HH, which is more efficient than HV or VV
to distinguish flooded areas (Henry et ah, 2003). The test scene
covers an area of of 9,5 km 2 . Additionally, linear membership
functions from the original rivers are derived and an automati
cally extracted flood mask is used. As GIS-objects 522 roads
from OpenStreetMap are assessed.
The test scenarios are very appropriate to test the classification
system due to their diverse global context and the different kinds
of roads. The roads vary from paths to highways. Both test sce
narios are evaluated using manually derived reference data. The
availability of reference data describing the real status of roads
during the flooding is very difficult caused by the fast changes of
the water level and the accessibility of the roads. One possibil
ity is to derive the reference data from the image itself, which is
done for the Elbe scenario. This kind of reference data does not
describe the ground truth, but the information which is possible
to get from the studied image. In the case of the Gloucesterhire
scenario high resolution airborne image with a resolution of 20
cm are available. This imagery which was acquired half a day
later than the studied TerraSAR-X scene was used to infer the ex
act ground truth. To draw conclusions from the following results,
it is important to consider the kind of used reference data.
The result of the Elbe scene is visualized in Figure 5. The red
lines refer to flooded roads, green lines to trafficable roads and
the yellow lines point out, that no decision is possible by the auto
matic system. In Figure 6 a detail of the original IKONOS image
and the assessed roads is shown.
Figure 5: Automatic assessment of roads using the classification
system: flooded roads (red), trafficable roads (green) and possibly
flooded roads (yellow)
Figure 6: Detail of original and assessed IKONOS scene
Comparing the result with the manually generated reference leads
to the numerical results shown in Table 1. "Correct assignment”
means that the manually generated classification is identical with
the automatic approach. In the case of "Manuel control neces
sary” the automatic approach leads to the state possibly flooded
whereas the manual classification assigns the line segments to
flooded or trafficable. The other way around denotes the expres
sion "Possibly correct assignment". "Wrong assignment”’ means
that one approach classifies the line segment to flooded and the
other to trafficable. With the current implementation of the sys
tem the approach achieves a correct assignment for 78% of the
road objects. Only a very small value of false assignments is
obtained. This result is deteriorated due to the 5% of "Possibly
wrong assignments”. Less than 1/5 of all road segments (17%)