International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004
Feature Oriented Principal Components Selection is based on the
examination of PCA eigenvector loadings to decide which of the
principal component will extract information directly related to
the theoretical spectral signatures of specific targets. The
methodology relies specifically on the selective input of only four
image bands for PCA. This technique performed by using four
selected TM bands in order to highlight the spectral response of
iron-oxide minerals (absorption in visible TM bands 1 & 2 and
higher reflection in TM3) and hydroxyl-bearing (clay) minerals
(absorption in TM7, higher reflectance in TM5).
Yenipinar
Figure 4. Color composite of Crosta H, H+F and F as RGB.
2.1.4 Least Squares Fitting Method: The technique assumes
that the bands used as input values are behaving as the variables of
a linear expression. And the ‘y’ value of the equation, namely the
predicted band information, gives us a calculated output value.
This predicted band is what that band should be according to the
linear equation. The problem of having vegetation responsible of
some reflectance in the bands that are used to map clay minerals
can therefore be omitted by using this technique. The vegetation is
mapped in the predicted band with the values that are calculated
just by using the reflectance information in the other bands. The
minerals which are sensitive to a specific band are then
differentiated from the features which are reflective to the other
bands as well; just by taking the difference between the predicted
values and the original values. Calling this difference, the residual,
color composites are displayed with the specific anomalously
reflective features and then interpreted (Fig. 5) (Clark et al.,
1990).
2.2 Mineral Mapping by using Spectral Reflectance Data
The technique is purely based on the band rationing process. More
than the band selection criteria, a filtering script based on the
statistical calculations is developed. The technique can be
summarized as in a flow chart in Figure 6.
Spectral reflectance data of the alteration minerals is statistically
processed according to the TM band intervals. Descriptive
statistics like the minimum, maximum, mean and standard
deviation are calculated for the TM band intervals separately for
every mineral.
388
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Figure 5 Color composite of LS-Fit. residual bands 3, 7 and | as RGB.
P-P and Q-Q plots are analyzed to obtain information about the
distribution type of the data belonging to the band intervals for
every mineral. Generally data is found to be normally distributed.
For all of the data it is therefore assumed to be normally
distributed, although it is not an accurate assumption for the whole
data.
Two standard deviations are added to the mean value to have the
upper limit and subtracted to have the lower limit of the mineral
mask that is used to filter the band ratios.
The analysis performed in this section includes the processing and
filtering of selected alteration minerals which are Kaolinite, Illite,
Montmorillonite, Pyrophyllite, Alunite, Orthoclase, Quartz,
Epidote, Chlorite, Hematite, Goethite and Jarosite. Basically band
ratio technique is applied and filtered according to the statistically
calculated ratio intervals for. these minerals. Band ratios are
selected according to the spectral curves, band combinations that
will give distinctive ratios (very high or very low) are preferred. In
Figure 7 Kaolinite pixels are mapped that have passed from the
filter.
2.3 Accuracy Assessment
The pixels in the reference image and the image obtained after
spectral analysis method are correlated to calculate the percentage
accuracies (Table 3). Counted pixel values are shown in the table.
Accordingly the (1,1) value is the pixels both mapped in the
original data and in the spectral analysis result; (0,1) is the pixels
displayed by original and missed by the analysis; (1,0) pixels are
displayed only by analysis result and not exist in the original data
and value of (0,0) are the pixels both did not displayed by original
data and analysis result. Overall accuracy is calculated as % 70.7,
Correlation Matrix
Total Commission
15814 76
Result 65535 17
57,32 8,15
Omission
42.68 91,85
Table 3. Accuracy assessment matrix
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