International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004
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Figure 7. The results of applying the decision rules: (a) R1, (c)
R2, (e) R3 for the CASI-48 image and (b) R1, (d) R2,
(f) R3 for the CASI-32 image.
About the fusion of primary results, we can say that the final
target maps is more reliable and precise. Especially for CASI-
32 images, the results of R3 in which all of the techniques have
detected the pixel under test as target material. Also, they are
able to identify the single non-target pixels surrounded by target
pixels. But for CASI-48 images the results of R2 are better than
others. So, results of fusion are more affected by the size of
resolution than the rules. Then, however the fusion technique
can enhance the results, but the role of primary mapping
techniques is important and may be applied for pure target
mapping.
ACKNOWLEDGEMENTS
We thank the CNES (Centre National d'Etudes Spatiales,
France) for providing the hyperspectral images and the other
data over the city of Toulouse.
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