In: Wagner W., Székely, B. (eds.): ISPRS TC VII Symposium - 100 Years ISPRS, Vienna, Austria, July 5-7, 2010, IAPRS, Vol. XXXVIII, Part 7B
In: Wagr
Land cover class
Range
Skid factor
1
Screes and boulders
>30 cm
1.2- 1.3
2
Shrubs or mountain pines
Mounds w. veg. cover
Cattle treading
Screes
>1 m
> 50 cm
10 - 30 cm
1.6- 1.8
3
Grass veg. inch low bushes
Fine debris mixed with veg.
Small mounds w. veg. cover
Grass veg. inch superficial
cattle treading
< 1 m
< 10 cm
< 50 cm
2.0 - 2.4
4
Compact grassland
Solid rock
Fine debris mixed with soil
Moist sinks
2.6-3.2
Table 1. Skid factors assigned to land cover types featuring
varying roughness (Margreth, 2007).
The current standard way of assessing surface and/or terrain
roughness is using empirical methods in the field. Taking the
macro-level as example, terrain features are described
approximately via wavelength and amplitude of sinusoids.
Roughness assessment on meso- and micro-level can be carried
out by fitting ductile slats to the surface. All these methods
require on-site inspections which gets extremely time-
consuming and costly for large-area assessments. Remote
sensing offers the advantage of an area-wide standardized
survey and is expected to deliver roughness assessments in
comparable accuracy.
In this paper we describe an approach to classify forested areas
based on their vertical vegetation structure using ALS data. We
see roughness as a multi-scale level concept, i.e. ranging from
fine-scale soil characteristics to description of understory and
lower tree level. Results of our ‘vertical roughness mapping’
concept can be valuable input for forest monitoring in particular
with regard to natural hazard modeling.
2. STUDY AREA AND DATA
The study area covering approximately 10 square kilometers is
located in the ‘Bucklige Welt’, a hilly region in the south
eastern part of Lower Austria (about 70 km south of the Vienna
basin) also known as ‘land of the 1,000 hills’ (see figure 1).
Widely dominated by forest of varying characteristics (i.e.
deciduous, coniferous, and mixed forest) this is a typical rural
area interrupted by a few small settlements (e.g. HaBbach,
Kirchau, Kulm) and patches of agricultural land. In line with
the overall characteristics of the ‘Bucklige Welt’ region the
study site which belongs to the municipal area of Warth
features hilly terrain conditions with maximal 300 meters
elevation difference.
Employing a full waveform Airborne Laser Scanning (FWF-
ALS) system ALS data were acquired in the framework of a
commercial terrain mapping project covering the entire Federal
State of Lower Austria (acquisition period: spring 2007). In
spring favorable leaf-off conditions without snow cover could
be guaranteed. For the presented research project 3D point
clouds organized in tiles and consisting of XYZ coordinate
triples (ASCII XYZ format) were delivered. Originally ALS-
inherent information about scan geometry and radiometric
information was not available for further analysis.
Figure 1. Study area ‘Bucklige Welt’, Lower Austria.
3. ALS BASED ROUGHNESS DESCRIPTION
This paper concentrates on products based on parameters that
can be derived directly from the ALS point cloud. Only by
using the 3D point cloud maximum information content is
guaranteed, while preserving the highest data density and not
introducing any biasing decisions on suitable target raster
resolution, filter or aggregation strategies (Hbfle, 2007). On the
end-user side however, it is much more convenient and
applicable to deal with pre-processed ‘roughness images’, i.e.
featuring substantially reduced amount of data and simple raster
data structure, which can be dealt with easily in standard GIS
and remote sensing software packages. Computation of
additional point cloud attributes and subsequent generalized
raster layers requires a sophisticated software implementation,
including both the mathematical definitions and intelligent
management of the large amount of data which arises when
working with high density laser point data.
In the following paragraphs different roughness parameters
calculated on the basis of the initial ALS point cloud are
described and resulting raster layer products are illustrated. In
the definition of surface roughness in this context all ALS
terrain points within a 0.2 m range to the ground are considered.
The terrain roughness concept on the other hand just comprises
objects (i.e. point clusters) close but explicitly above the terrain
(>0.2 m), whereas two different vegetation story layers were
analyzed for this paper: (1) very low brushwood or undergrowth
from 0.2 m to 1.0 m such as bushes and shrubs, and (2)
understory vegetation from 0.2 m to 3.0 m, e.g. being indicative
for different tree types.
As the objective of the presented approach was to ‘look through
the forest canopy’ and map the entire vertical vegetation
structure (i.e. ‘roughness’ on various levels inside the woods)
non-forested regions were masked out using a previously
derived forest mask. This mask had been produced
implementing an integrated analysis approach considering
aerial imagery and ALS data (i.e. Object-based Image Analysis,
OBIA).
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