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of features (six were sufficient) that were common to both
images using the 20 m resolution image as “slave” and the 10 m
image as “master”. Features taken as ground control points
(GCPs) were line intersections, field boundaries and street
intersections. The registration process was executed by running
the interactive ground control point selection program to
generate the control point file (Essadiki, M, 2004).
Figure 7. SPOT HRV panchromatic image of study area
A bilinear interpolation was used for resampling, which does
not introduce geometric artefacts. The differences between GCP
locations on the slave and master image were submitted to a
least squares regression analysis that interrelated both image
coordinates. The resulting residuals were less than one-half
element spacing in both row and column, denoting that a good
registration was achieved. Three files were created, representing
the resampled three multispectral bands that were merged
afterwards.
Figure 8. SPOT HRV color composite image of study area
The data are usually enhanced after correction. In order to
highlight the three classes of spatial features: homogeneous
areas, edges (boundaries) and lines, a set of feature extraction
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XXXIX-B7, 2012
XXII ISPRS Congress, 25 August — 01 September 2012, Melbourne, Australia
operators are applied to enhance the image. This operation
consists in using a 3 x 3 kernel filter (convolution) moved
across the image which yields a transformed image. Each
element of a sub-image is processed with its eight neighbours in
the input image by multiplying all elements by their respective
weighting coefficients and the results are summed. The result is
assigned to the central element in the output image.
Furthermore a saturation enhancement was used to improve the
image interpretability (Essadiki, M, 2004).
Having the high ground resolution panchromatic 10 m image
and the multispectral resolution 20 m images, the basic idea was
to merge them to use the double data set to get a better image
with more details.
The combination process used to integrate the two images was
as follows: first the panchromatic image was enhanced, then the
multispectral images was atmospheric-corrected and saturation
enhancement of colours were applied. In the end a
normalization of the bands and their combination was made.
Figure 9. SPOT HRV pansharpened image of study area
Based on the fact that intensity I (digital number, DN, of each
pixel) depends mostly on external factors, such as sun angles,
surface orientation, shadow, a band normalization was used
which splits the intensity and reflectance to allow proper feature
extraction. This was carried out by dividing the DN value of the
panchromatic band by the DNs sum of the three multispectral
bands for each image pixel (resampled to 10 m scene pixel).
Ip/Id x scaling factor, where Ip is the DN of panchromatic
image pixel and Id is R+G+B= sum norm. First, for all image
pixels the three bands (R, G, B) sum which represents the total
intensity was calculated and the result was merged with the
enhanced panchromatic image to get the ratio. The final step
was to merge the ratio result and the enhanced multispectral
image.
The wider color range in the resulted images allows
distinguishing waters, vegetation and soils classes. Main
morphologic features as streets, city's parceled structure,
uncovered soils and different vegetation types (compact or
isolated trees, grass vegetation) are revealed.
Digital processing has been done using Idrisi Andes GIS
software.