Full text: XVIIIth Congress (Part B2)

  
definitions were considered. The combination allows for 
great visualisation and analytic capabilities. The ERDAS 
software was used and contains various tools not only to 
interactively digitise graphic objects in both feature and 
image space but also for cursor linking and object-to- 
mask mapping in-between image and feature space. This 
study provided a description of the classification proce- 
dures and a baseline for more detailed mapping and 
monitoring using remote sensing-supported change 
detection techniques. 
STUDY AREA AND OBJECTIVES 
The study area was located in Austria south of the city of 
Salzburg. It covers mostly an alpine landscape in the 
Northern Alps with elevations up to 2700 m above 
sealevel. Only the Salzach valley is highly populated 
while the alpine parts are covered by very few 
settlements. The satellite data rectangle covers the study 
area itself as well as great parts of the National Park 
Berchtesgaden (Germany) on the other side of the 
border. The idea is to implement a National Park 
adjacent to the existing one consisting of the same 
ecosystem and divided only by artificial boundaries. For 
the Berchtesgaden area, various data in digital format 
exist and GIS-techniques have been used for more than 
ten years. A landcover map was derived in 1985 at an 
original scale of 1:10000 from airphoto interpretation 
using a very detailed classification theme. The objective 
of this work was to use existing information for super- 
vised classification and accuracy assessment. Thus, a 
hierarchical classification scheme was developed, but 
even with generalisation, not all original classes could be 
assigned to new classes. Therefore a hybrid parame- 
tric/non-parametric classification procedure was chosen 
to 'cover additional parts of the feature space. 
METHODOLOGY 
The Landsat TM data were chosen for use in this project 
over SPOT data because they contain spectral infor- 
mation from a broader portion of the electromagnetic 
spectrum. This was seen as being more important for 
vegetation discrimination than the better spatial resolu- 
tion of SPOT data. Aerial photography was used as an 
ancillary source of information, especially for the image 
processing procedures of geocorrection, data enhance- 
ment and supervised classification. ERDAS software was 
used for image processing and the Arc/Info Geographic 
Information System (GIS) for vector data manipulation. 
The six non-thermal bands of a TM-scene from August 
1990 were classified. Image normalisation was applied 
16 
on the basis of a 50 meter Digital Elevation Model 
(DEM). 
Different unsupervised classification techniques were 
tested. The lower parts surrounding the study area were 
excluded prior to clustering. Repeated experiments with 
different numbers of classes were performed but classes 
that fell in forest sites could not be comprehensively 
identified. The maximum likelihood decision rule for a 
supervised classification approach was chosen. This type 
of classifier, called parametric, has been the most 
commonly applied classification technique because of its 
well developed theoretical base and its successful 
application with different data types and different 
applications (Bolstad and Lillesand 1991). With the para- 
metric technique, the classifier must be trained with class 
signatures defined by a statistical summary of the mean 
vector and the covariance matrix normally acquired by 
the analyst selecting samples. It is known that problems 
arise if samples are too homogeneous in any one band 
or the sample size is too small. The classifier also 
assumes that the distribution of the sample data is 
normal in all bands, a condition which is sometimes 
violated for certain classes (Ince 1987). Therefore, Kloer 
(1994) suggests the complementary use of the para- 
metric and non-parametric approaches. He underlines, 
that the non-parametric classification method has poten- 
tials and limitations as well. Some researchers have used 
non-parametric methods mainly for the classification of 
natural surfaces (Skidmore and Turner 1988) These 
methods make no assumption about the shape of the 
spectral distribution of data sets except that they can be 
grouped by a discriminant function and are expected to 
present advantages in spectrally irregular situations. 
Masseli et al. (1992) looked upon them as an attempt to 
overcome the well known problem of the low corres- 
pondence between cover categories and defined spectral 
classes. These authors state, that in practice, non- 
parametric methods have been demonstrated to perform 
far better than the conventional parametric procedures in 
many applications. The feature space object-based 
classifier has the problem of overlap. Since no proba- 
bilities are computed, the only means of resolution is to 
consider the order in which the classes are processed. 
The pixel in an overlapping area is assigned to the first or 
last class for which it is tested and many pixels of an 
image will not be assigned to any class in an output 
classified image. 
International Archives of Photogrammetry and Remote Sensing. Vol. XXXI, Part B2. Vienna 1996 
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