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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004
studies and reducing data redundancy method between spectral
bands. In this analysis, PCA transformation was applied to
SPOT XS image of the Sivas Basin.
As is seen clearly in Figure 6, this spectral enhancement mode
provides satisfactory results to differentiate geologic units of the
region. Spectral differences in RGB display indicate also
observing of regional structural features. These clongations
approximately in NE-SW trending also determine the southern
boundary of the Sivas Basin (Figure 6).
Figure 6: PCA (123) components on a full-scene SPOT XS
image.
3.3. Classification
An unsupervised classification has been applied to differentiate
geological units to Landsat TM image of the study area. To
determine numbers of the spectral classes, 1/500.000 scaled
geological map of the region has been considered. Figure 5
shows this relationship. But this method has not satisfactory
results as PCA method because of proximities in spectral
differences of the geologic units of the region.
But, presence of a distinctive basin (Kangal) which were made
up of mainly by younger Neogene deposits and plateau basalts
in yellow and pink tones is observed clearly in the lower parts
of the images.
Figure 7: Unsupervised classification result of SPOT XS image.
4. DEM ANALYSIS
In this study, DEM analysis was chosen as a robust assessment
tool inferring structural features. High-resolution digital
elevation data sets derived from radar systems has been most
reliable public sources to evaluate any region structurally.
Topographic analysis efforts in geosciences have been
supported using digital elevation models (Pollard, 2002). As is
well known, visualisation techniques support and facilitate
interpretations as well as evaluation of data quality, and thus
enhancement of the model itself.
In this study, we will use two different SRTM-3 (N39E036 and
N39E037) data of Sivas Basin. Observed orientations of the
structural features of the Sivas Basin can be seen in Figure 8.
The Kizilirmak River floor, which transects the basin obliquely
in NE-SW direction, is parallel to the general trends of the
basin. Although no considerable seismic data could be found in
historic earthquake database, some authors claim that this river
floor can be represented as an active fault (Inan, 1993; Kocyigit
and Beyhan, 1998).
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Figure 8: SRTM-3 data is helpful to asses