TOPOGRAPHIC NORMALISATION OR APPLICATION OF GEO-SPATIAL RELATIONS FOR
IMPROVED LAND COVER CLASSIFICATION IN THE ALORA AREA (SPAIN)?
G.F. Epema
W.G. Wielemaker
Department of Environmental Sciences, Wageningen Agricultural University, The Netherlands
Commission VII, Working Group 4
KEY WORDS: Remote, Sensing, Land, Use, Classification, Knowledge Base, Landsat
ABSTRACT
The Alora area (Spain) is a complex and heterogeneous environment. Classification results of land cover with four broad
land cover classes (irrigated tree crops, rain-fed tree crops, annual crops and semi-natural vegetation) using Landsat
Thematic Mapper data show still reasonable accuracy. Different methods are compared to enhance this classification
further. Topographic normalization based on a DEM, using both Lambertian and non-Lambertian reflectance models did
not improve the classification results. However, a knowledge-based post classification sorting based on relationships
between topography, landscape, soil data and land cover considerably improved the accuracy of the land cover
classification of the study area. This implies that a better land cover classification can be obtained when using additional
geo-spatial data, from existing databases or during ground truth collection, than when using land cover data only.
1. INTRODUCTION
Knowledge about land cover and land use has become
increasingly important. There is no doubt that remote
sensing is the best way to obtain data over large areas
quickly, and at an affordable price. However, the level of
discrimination achieved by the satellite image
classification is sometimes quite low. The discrimination
of different land cover types by digital classification of
satellite imagery is difficult in complex and
heterogeneous environments like the study area (the Alora
region, province of Malaga, Spain). In such
environments, the digital classification of remote sensing
satellite data offers information with a reliability,
typically in the order of 70% (Schuiling, 1995). Despite
great efforts to improve the spectral characterization, only
minor improvements in classification accuracy are
generally the result.
This study aims at an approach to achieve high
classification accuracy for land cover by combining
ancillary data and remote sensing data. In this respect two
different approaches are tested.
One approach is used to get better results by mitigating
the topographic effect while the other approach uses
contextual information in a knowledge base, including
topography, to obtain better land cover classification
results.
In the first approach, it will be tried to remove the
topographic effect by modifying the surface radiance
values recorded by the satellite sensors using the cosine
of the angle of incidence and inclination derived from a
digital elevation model of the area. After this procedure,
images were again classified.
In the second approach, also statistical relations derived
from an existing database of the test area containing
agronomic and other data will be examined. Most
emphasis is however on the use of a knowledge base
using knowledge of domain experts who worked in the
area and study of their publications (Fresco and Guiking,
1998, Wielemaker et al, 1996).
The results of the different approaches will be compared
by evaluating classification accuracy.
2. MATERIALS AND METHODS
The major input materials were:
1) satellite imagery. The used image is a Landsat
Thematic Mapper image of May 1995 with a ground
resolution of about 30 x 30 meters.
2) Digital Elevation Model. This model is derived from
stereo photos and has a spatial resolution of 10
meters,
3) Geo-database of Alora. Within the framework of a
training program on "sustainable land use" an
extensive data set exists of field observations and
interpretations related to agronomy, landscape and
soil data. This set was used to evaluate classification
accuracy of the different approaches.
The three approaches of classification of this study are
presented in figure 1: (1) a standard supervised
342 Intemational Archives of Photogrammetry and Remote Sensing. Vol. XXXII, Part 7, Budapest, 1998
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