APHY
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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004
character of the pixel which integrates the topographic
conditions, moisture, climatic, ecological of the observed
target. This mixing of information is at the same time the
«strength» of the spatial image and paradoxically, it could
constitute a mask which would prevent the direct access
to the object «soil» searched. This mask is different every
time and its identification or interpretation would come
back to unveil the anomaly.
Légende
3] Alluvial
Calcimagnesic
Colluvial
Hydromorphic
Isohumic
[]
[]
[3
E
B Lithosol
[]
E]
ü
B
Regosol
B] Complex unite
Steet
Township
Vers Dun o Bong
Vers Jin BR
Figure 3. Pedological map of the township of KSAR SBAHI
and BERRICHE
Samples choice of the soils
classifies
Training phase
and
Statistical analysis
Y.
Automatic classification Neximmn 1 kelihood: minimum distance:
pornllelepiped: Mibalabonis and Spectral Angle Nap
Results analyzes
Anomalies
Interprétation
Interprétation
Jormalisation of
sen
hypothesis
Figure 4. General organization chart of the approach
The powerful of the anomaly contributes to the
understanding of factors which influence the spectral
signatures considerably and to the identification of limits
101
of remote sensing when it comes to spectral
characterization of objects on the ground (figure 5).
BM Unclassified Courbes spectroles des sols
Minite Complexe : 1 T 7
v 0.40 3
Wiithosol 2 Ë ]
5 zn À
n ; a i
sol aluvin: N x 4
OÖ nznr 4
Wisohumique g 03r > 1
hydromorphe E [ d = f Ne” +
Mnuages d 0.25 ee j X. EE OR 1
Bo x Zi ]
céréales isis Lr 1
urbain % 0.20} 4. d
s t 7 N
Byin d’'alep 5 E uertit "
= e
=
5
[S
1 2 3 | 4
Les bondes TM du 25/09/89
Figure 5. spectrals signatures characterization of 15" training
regions of different objects.
Six algorithms of classification were exploited: the
Maximum Likelihood, the minimum distance,
MAHALANOBIS, the method parallelepiped and the
approach of SAM « Spectral Mapper Angle». The choice
of the samples- image is made on the basis of the
pedological map in the BERRICHE plain (BNEDER,
1994), where 13 range of samples (representative 10
classes of soils) were selected.
3. RESULTS AND DISCUSSIONS
We confronted the results of different classifications
with the pedological digitised map before, by the research
of the pixels well classified with regard to the map and
those that were badly classified and/ or unclassified
(Figure 6).
399()000
3985000
B lnon classer
MH BUnite Complexe
3 25 Wiithosol
«+ Msol alluvial
“ Misohumiqué
Gé Mhydromorphe
i
3980990
Figure 6a: Results of classifications by Maximum Likelihood method
(northern part) of the September 1989 image