In: Wagner W., Szekely, B. (eds.): ISPRS TC VII Symposium - 100 Years ISPRS, Vienna, Austria, July 5-7, 2010, IAPRS, Vol. XXXVIII, Part 7B
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Figure 1. Overview of the study area: a) digital surface model of the city of Vienna, b) normalized digital surface model (nDSM) of
the study area in the Vienna Woods. In the subareas 1-4 additional analyses are done (see Sect. 3.3).
2. STUDY AREA AND DATA
The study area is located in the western part of Vienna (Fig. 1),
in the so-called Vienna Woods, and covers about 200 hectares
forest and a small part of an urban area. The study area is part
of the UNESCO biosphere reserve Wienerwald 1 , which was
installed by the provinces of Lower Austria and Vienna in
2005. Since the 19 th century the Wienerwald region has been
used as a traditional recreation area for Viennese and
inhabitants of Lower Austria, which are living in the immediate
vicinity. In general, the landscape of the Vienna wood is
characterized by individual deciduous forests, which are closely
interlinked with meadows while the forests are dominated by
oak and hornbeam, beech at higher altitudes, and ash in the
peak region of north-facing slopes. Within the investigated area
the dominating tree species are red beech (.Fagus sylvatica) with
~51%, oaks (Quercus robur, Quercus petraea) with ~23% and
hornbeam (Carpinus betulus) with ~16%. The remaining areas
are covered with ~6% larch (Larix decidua), 2% clearings and
other deciduous and coniferous tree species. The forests are
characterized by a balanced age class distribution (tree ages
vary between 5 and 180 years) and with tree heights varying
between 2.0 m and 45.0 m. The clearings are partly covered by
very dense brushwood i.e. blackberry. Furthermore, some
young forest stands covered with very dense red beech {Fagus
sylvatica) are available.
For the study area full-waveform airborne laser scanning (FWF-
ALS) data was provided by the city of Vienna (MA41
Stadtvermessung) and was acquired in the framework of a
commercial terrain mapping project, fully covering the city of
Vienna. The FWF-ALS data was acquired with a Riegl LMS-
Q560 by the company Diamond Airborne Sensing 2 in
cooperation with AREA Vermessung ZT GmbH 3 in January
2007. The average point density is greater than 30 echoes per
square meter. The pre-processing of the FWF-ALS data was
done from the company AREA Vermessung ZT GmbH using
the Riegl software packages 4 . For the current study the geo-
referenced 3D echo points and the determined attributes for
each echo, i.e. the echo width and the amplitude, serve as input
for the following analyses.
1 http://www.biosphaerenpark-wienerwald.org
2 http://www.diamond-air.at/airbomesensing.html
3 http://www.area-vermessung.at/
4 http://www.riegl.com/nc/products/airbome-scanning/
The digital terrain model (DTM) was calculated using the
SCOP++ (2010) software. For the determination of the digital
surface model (DSM) the approach described in Hollaus et al.
(2010) was applied using the OPALS (2010) software. Finally,
the normalized digital surface model (nDSM) was calculated by
subtracting the DTM from the DSM (cf. Fig. lb). The derived
topographic models (DTM, DSM, nDSM) have a spatial
resolution of 0.5 m. The DTM is used for normalizing the 3D
echo points (dz) and therefore, for the selection of terrain and
near-terrain echoes (cf. Sect. 3.1 and 3.2). The nDSM is used
for visualization purposes only.
3. TERRAIN ROUGHNESS PARAMETERS FROM
FWF-ALS DATA
Looking at roughness from the ALS sensing technique point of
view (Fig. 2), the spatial scale of observation plays a crucial
role. Roughness with a spatial scale of up to a few decimeters
cannot be determined directly by using the ALS range
measurements (i.e. XYZ of point cloud) because of the range
accuracy (Kraus, 2007), which generally lies far above the
given laser wavelength of a few micrometers. Hence, micro
structures can only be determined indirectly, for example, by
using the strength of reflection of a laser echo (i.e. amplitude),
which is correlated with target reflectivity but also surface
roughness (Wagner et al., 2004).
Macro structure > d d> Meso structure » X X> Mici o structure
different roof shapes different elevated small roughness of the
objects surface and materials
d... footprint diameter [dm]; X ... wavelength [pm]
Figure 2. Scales of roughness in terms of the ALS sensing
technique (modified from Jutzi and Stilla, 2005).