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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004
Figure 8. Training areas Figure 9. Classified image
The multispectral image Spot-1 of which we lay out consists of
three channels XSi (20m X 20m), i=1, 2, 3 resulting from scene
50-282 of February 23, 1986. The image of size 256x256
pixels represents the area of Blida in Algeria as shown in figure
10.
„Rostomia-, ‚Casbah‘ ^
rage
2 "Alger
eB Le Li
>
Dousouda-Les Bai
Douaou
AOL TR AE
Faraukh: 2 ;
= Hammam Melouane
BLIDA
pie Tala Ai Douar 82
„Sidi Kebír 5 Mordi_ „Tachert ;
Bordj, sa el Habous Bel Kreit — 77 ma Hlima. ; st
1 Ayyäch, Dayar Tádjnánt ,Chrea.- Tirhiit Ouadrar "Aut, „Oulad: Be”
„Talaouch Ye ,Guergoür ;B Hande ^, ,Aeungal
AUT WT ho yn S rs oF"
Y x os ,Douar Boù Knäna ,Bahata
: ,Quled, Brahim JMoul Aba " 8B Pouaouka Radjimi
‘el Quail P 5 8 Annseur B Khenag
;Tamesguid k JJarhelalet Oulad Hammadi ,Ouled Sidi Ahmar
c
Figure 10. Map of North of Algeria situating the region of
Blida.
The classification is supervised in the sense that the algorithm
assumes the knowledge of number of classes and their
characteristics. The training on the satellite image allows us to
define seven (07) classes detailed in table 11, and their
localization is shown in figure 14.
Classes | Themes
Less dense urban zone
Less dense natural vegetation
Naked ground, aerodrome of
Blida
Non cultivated fields
Dense urban zone (city of Blida)
Cultivated fields
Dense natural vegetation
All AS tc [t32j—
Table 11. The classes of the scene of BLIDA (ALGERIA)
Figure 12. The three
bands of the satellite
image of Blida.
Figure 13. Color composite of the three bands. (RGB: XS3,
XS2 et XS1).
Figure 14. The training areas of the satellite image.
The resolution of equation 16 necessitates the knowledge of
classification and restoration parameters. For our
implementation, we have made the choice experimentally.
Since the performance of the method depends not only on the
choice of parameters, but it also depends on the function ©, we
have tested the algorithm with different functions and we
present in figure 15 the result obtained with the function of
Hebert & Leahy. It has been proved mathematically that convex
functions leads to convergence of criterion. The
experimentation shows that the non convex functions may give
better results, but the convergence is not guaranteed.
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