International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV. Part B2. Istanbul 2004
considerable disadvantage is that new buildings cant be
detected which is essential for updates of existing data set like
building layers in GIS or 3D city models.
Figure 1: Grey-value coded representation of a nDSM
(test site Karlsruhe’)
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be, 1
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Figure 2: Segmented buildings of the scenery shown above.
different segments have different colour
4. CHANGE DETECTION
The term change detection is used in lots of very different
contexts. À major interest in change detection technologies
exists in projects which aim at environmental monitoring tasks.
In this field, the term is often used for methods capable to
extract differences in the appearance of natural habitats at
different dates. e.g. the spread and development of species
occurring in forests (see e.g. Bhattacharyya et. al, 2002).
alterations caused by human settlement activities
development of the city of Istanbul, see Altan et. al., 2002) or
impacts of natural disasters (e.g. Maffra & Honikel, 2002).
Most approaches do not concentrate on analysing single objects
(e.g. single trees of a forest) but on indicating changed arcas.
Some approaches continue with a classification of the changes
in the sense that the old and new state of these areas is
classified, e.g. according to land use or occurring species.
(eig.
In recent years, other applications of change detection
approaches arose which are concerned with an object-wise
analysis, focussing often on buildings. In contrast to the already
mentioned change detection approaches, the task in theses
projects is not to analyse the usage or cover of a special area,
but to rate the state of a special object at a special date in
comparison to its state at another one. Above all, this means to
observe its geometry (changes) Such information can be
integrated in spatial databases for e.g. urban planning and
management purposes (see e.g. Matikainen et. al, 2003;
430
Jung, 2004). Therefore, this is a kind of general, application
independent data source. But it can be acquired and used for
specific, present problems, too, e.g. disaster management tasks
(compare e.g. Steinle et. al., 2001). The application can have
implications on the used methodologies, especially the degree
of automation, and the categorisation of occurring changes.
Nevertheless, there exist three main groups of building states
which are incorporated in most approaches: mew, missing (or
not-confirmed) and not-altered (or confirmed). Dependent on
the specific application, these classes can be further sub-divided
and other classes may be added.
For the project which is presented in this paper, the following
five classes were defined:
* not-altered buildings
* added-on buildings
* reduced buildings
* new buildings
* demolished buildings
The approach developed in this project is automatic, exclusively
based on height data and object-based, i.e. it analyses those
objects extracted by segmentation and classification approach
which was described in chapter 3. The change detection is
carried out in three main steps:
1) extraction of buildings that can not be evaluated
2) extraction and further analysis of objects that do not
sufficiently match with the objects at the other date to
identify new, modified and demolished buildings
3) classification of the remaining objects into not-altered.
added-on and reduced buildings
In the following, the individual steps are described in more
detail.
4.1 Not-analysable buildings
In this work, data captured by TopoSys I sensor was compared
to such of TopoSys II (chapter 2). As TopoSys I sensor is less
sensitive than TopoSys II a number of deviations could be
observed (e.g. Steinle & Báhr. 2002). One of these deviations is
caused by the characteristic of the sensors when weakly
reflecting material is hit. Using TopoSys Il. such objects do not
stick out in the derived DSM, whereas they are missing in
DSMs computed on the basis of TopoSys I measurements
(Figure 3 to Figure 6 show an example).
c
In the Figure 4 - Figure 6 grey-value coded (visualisations of)
DSMs are shown, which were computed on the basis of laser
scanning data. The brighter the colour, the higher the regarded
region. Black coloured areas show lack of measurement data. It
is obvious, that the dark roofed building was only partly resp.
nearly not registered by TopoSys 1 sensor.
This effect is related to the system's ability to differentiate
between the backscattered measurement signal and background
noise. TopoSys I did not have a receiving unit capable enough
to register the poor pulse intensity scattered back by the roof in
the example, whereas TopoSys II shows a significantly higher
sensitivity.
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