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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004
1 Lama c»?
fá(&. y) == FF € 2 iS ) (10)
2no;,(s)
Thus, by generalizing the approach defined in Caillol ef al.
[5], the pixel density is given by the following formula :
K—-1 K
p(ys) A s (ys ES > f Tufaeus)de. (101)
$21 izl jze4rl
where 7; and 7;; correspond to, respectively, the a priori proba-
bility of the pure and the fuzzy classes.
With the bayesian theory, we can describe the a posteriori
probability for each class :
- for the set of pure classes :
T; fiys)
P. = 0;/ Y, = Ys) =
D(ys)
(12)
- for the set of fuzzy classes :
1
f Aufl, Ys )de
P Tg = 0 zv Y Im Us =
( fil ) PlYs)
(13)
From the definition of the above probabilities we can esti-
mate the unknown parameters : ;, T;j, Tij, Mi, m;, 0;, 0; from
a sample of X. À full description of the FSEM algorithm can be
found in [7].
FSEM applied to multispectral data
The fuzzy statistical analysis described previously is defined
for only one spectral band. However the data on which we work
are are made of several, say N, bands. Those N images have
to be analysed, so in this context the unobservable random field
can ne represented by X" — (XN es.
The introduction of the multidimensionnal property of the
data increases the algorithmic complexity of the problem. The
generalization of the equations (12,13) to NV bands is not trivial.
The solution is to set a simplifying hypothesis in order to make
the algorithm practically realizable. The most used hypothesis
is the conditional independence which stipulates that, knowing
the class 0;, the joint density of two variables y! and y? is the
product of the densities of each variable :
ful y2) 9 fi(yl).fi(y2) (14)
This hypothesis can be reinforce by applying a principal com-
ponent analysis (PCA) which reduces the inter-band correlation
and decrease the number of spectral bands. The equation (11) is
written for a number N of spectral bands in the following way :
K—1 K
p(y) u + f mig ise yl de (15)
jl jm
The simplification of equation 15 with the independence
conditional hypothesis result in the following formula :
K-—1 K
K N
Pa?) - 3m I Eso Y: fe sut
i=) ns]
2=1;j=itl n=}
(16)
FUZZY STATISTICAL METHOD FOR MASS FUNCTION
INITIALIZATION
Mathematically, we can define non-normalized masses for all
the simple et composed hypotheses as follows :
"m - TTA (ys) (17)
n=l
l N
M0, U0, = / Il Faj (€, Ys )de (18)
0 n=l
where fi(ys) and f;;(e, ys) are the conditional densities des-
cribed in the previous section.
APPLICATION TO REMOTE SENSING IMAGES
Data set
The studied zone is the region of “Grand Lake”, located in the
area of Gooze Bay, Labrador. It is mainly composed of different
forest densities and clear cuts. The last cartographic update rea-
lized in 1988.
We use the PCA on the LANDSAT image to reduce the data
to three bands containing 95% of the information. We also com-
pute the Tasseled cap images, to extract the brightness, green-
ness and wetness informations, see figure 1.b to 1.d. We also
have auxiliary information relative to the altitude of the studied
area (fig.1.e). All this complementary and redundant informa-
tion have to be extracted in a rigorous way and the orthogonal
sum of DS is used to combine them.
The extraction of the information is carried out by the FSEM
algorithm from PCA data and Tasseled Cap images. The pure
and fuzzy densities extracted are used in the initialization pro-
cess to compute simple and composed hypotheses of the eviden-
tial theory. We apply a sober filter on the altitude information,
it results in a map containing the slope information of the area.
We use this information to initialize the mass functions accor-
ding to a slope threshold above which confidence for simple and
composed hypotheses “water” or “boggy” is weak.
Results analysis
A simple probabilistic unsupervised classification based on
the SEM algorithm gives 55 % of good classification (fig.2.a).
The contribution of DS fusion initialized by the FSEM algo-
rithm with the Tasseled Cap transformation can improve the
classification quality in particular for boggy and vegetation
classes. The rate of classification is 61 % (fig.2.b). The contribu-
tion of slope information (fig.2.c) removes some natural artefact
related to LANDSAT TM data acquisition. In fact, the shadow
of some clouds is classified like “water” or “boggy” with the
SEM algorithm. Some pixels classified as water or boggy are on
high slope areas which is not realistic. Those pixels are in fact
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