INTEGRATION AND USAGE OF INDICES, FEATURE COMPONENTS AND TOPOGRAPHY
IN VEGETATION CLASSIFICATION FOR REGIONAL BIODIVERSITY ASSESSMENT
. 1 +2 . 3 ne CH d
Aysegül Domaç , Ugur Zeydanli”, Ertan Yesilnacar”, M. Lütfi Süzen*
! Conservation GIS Laboratory, Department of Biology, Middle East Technical University, Ankara, TURKEY
aysegul@kafkaskoruma.net
? Conservation GIS Laboratory, Department of Biology, Middle East Technical University, Ankara, TURKEY
* Department of Geomatics, University of Melbourne, 3010, Melbourne, Victoria, AUSTRALIA
ertan@sunrise.sli.unimelb.edu.au
* RS —GIS Lab. Department of Geology, Middle East Technical University, Ankara, TURKEY suzen@metu.edu.tr
KEY WORDS: Remote Sensing, Vegetation, Classification, Accuracy, Ecology, Spectral
ABSTRACT:
The classification of vegetation has been an important research subject in botany, ecology, geography, and other disciplines
to map the differences in vegetation types. Classifying vegetation by remote sensing is valuable because it can determine
vegetation distribution and occurrence for very large areas in a short time. Advances in technology have led to developments
in methods of vegetation classification, leading to the creation of new and more sophisticated components and powerful
techniques. Classifying original bands and/or image components may cause unsatisfactory results in spectrally chaotic fields.
In such cases, the demand for accurate land-use, land-cover, vegetation, and forestry information may require more
explanatory components those components should represent specific information for target land-covers and not contain
redundant knowledge.
In this study, spectral bands of Landsat Thematic Mapper and topographic data were used as an input. Different image
components and indices were produced and then used in the Maximum Likelihood Classification method. In order to find out
proper inputs for our case, newly produced components and indices were statistically compared and the bands that include
the information about vegetation are selected. Overall accuracy parameter that is obtained from the Error Matrix helped to
evaluate the results of the classification. Results obtained in this study suggest that using these spectrally improved bands and
indices; the accuracy of the classification could be increased up to 10-15 percent.
1. Introduction
With the aid of classical vegetation indices or raw input
The need to map wide areas with limited resources forced bands hardly any classification can fulfill this need; hence
the improvement of vegetation classification methods by some improvements should have to be made either by post
using satellite images. Conservation agencies use these classification sorting or by adding new components
images to extract variety of vegetation types in order to derived from the original input bands to the classification
assess the biodiversity of a region. Among the possible process. The extraction of spectral information related to
commercial satellite systems, Landsat images have got this type of target from Landsat TM imagery has been
some serious advantages over other systems such that: 30 achieved through the use of image processing techniques
m ground resolution yields as a convenient resolution for such as band rationing and principal component analysis
regional vegetation studies with a minimum mapping unit (Sabine1999). The major fact behind this new component
of 100 ha., the spectral coverage fits well to the vegetation adding is to create a spectral subset of the data itself and to
spectra, and the wide swath width yields in less number of create more explanatory variables which can be used to
images to process which maintains the coherence of the exploit the variance of the vegetation types that are desired
imagery. Furthermore Landsat system is a mature system to be mapped from imagery. Due to the high similarity
dating back to early 1970's, hence plenty of researchers among individual bands of a multispectral image,
have exploited many mapping methods. However still the statistical data compression tools like principal component
classification results are way off the desired levels, only analysis (PCA) are often applied in image analysis and
major homogenized groups of forest can be discriminated, image classification to reduce the amount of redundant
yet the conservation measures require a more detailed information (Ricotta et a/., 1999). The objective of the
legend. Subdivision of this multi-spectral continuum into study was to improve the accuracy of vegetation
meaningful vegetation classes is a major challenge that classification by using future components which were
requires careful consideration (Brook and Kenkel, 2002). constituted by using raw bands and various vegetation
For instance, visual analysis of different bands/colour indices.
composites from a multispectral dataset with constant
pixel resolution still reflects the same spatial structure, 3. Studv Area
even if the contrast between different scene elements (i.e. :
forest patches versus non-forest patches) might Study area is located in the Southern part of Turkey in the
considerably vary for the different band combinations Mediterranean region and covers approximately 235km’
(Bryan, 1988). (Figure 1). Elevation values of the region vary between
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