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ained
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xture
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X : vector associated to a pixel in the
* multispectral space.
P; : Caussian probability density function
for class 'i', implementing the fuzzy
mean and the fuzzy covariance matrix
Note that:
0 € f,00 g 1 X i,X
n
* F,(X) = 1
; $
i=l
'n' being the number of information classes.
It should be recalled that, in the con-
ventional approach, the largest £z(X) (i=
l,...,n) would be set equal to one and the
remaining (n-1) to zero. In the fuzzy
approach the 'n' membership functions
associated to a pixel are saved and
interpreted as a contribution of each
information class to the pixel spectral
response. Thus, the pixel components X;
are estimated by the membership functions.
4. EXPERIMENTS AND RESULTS
The Linear Mixture model | and the Fuzzy
Mixture model have been applied to Landsat
"TM data. The study. area is the Emas
National Park in Brazil. The park is
located in central-western Brazil at
approximately 189 south latitude(figure 1).
62° 54° 46°
Fig.l - Study Area Emas National Park
The climate is tropical. Winter is mild and
corresponds to the dry season (June through
September). Rains occur during the summer
season (October through May).
The vegatation covering this region
corresponds to the "cerrado". Vegetation
cover density varies across the Emas N.P..
Areas with a higher degree of soil moisture
present a higher vegetation density cover.
Areas presenting lower soil moisture contents
show more sparsely distributed vegetation.
During the dry season vegetation covering
the drier area becomes more susceptible to
fires. The fire that occurred in the park
in 1988 was confined to this area.
Mixture pixels are clearly present. The
"pure" information classes in this case are
vegetation and soil. "Pure" vegetation
909
pixels can be found in areas with higher
soil moisture contents (along the drainage
lines). Most of the park is then covered
by mixture pixels. The different proportions
of vegetation and soil can then be used
to estimate conditions across the park
with respect to general environmental
conditions.
The classification process was performed
considering five classes: two "pure"
classes (vegetation and soil) and three
mixture classes (0.75 vegetation and 0.25
soil, 0.5 vegetation and 0.5 soil, 0.25
vegetation and 0.75 soil).Computer programs
were developed in order to implement the
Linear Mixture model and the Fuzzy model
for the Brazilian image processing system
SITIM-150.
The Linear Mixture model was applied, to
estimate the mean vector and covariance
matrix of the mixture classes. The Caus-
sian maximum likelihood classifier was
then applied to the scene. Results are
presented in figure 2.
The Fuzzy model was also applied to the
same scene. Equation 5 was used to esti-
mate the membership grade of each pixel
with respect to two information classes:
vegetation and soil. A level slice criterion
was then applied in orderto define borders
between the three mixture classes. The
results are presented in figure 3.
The results of both methods are rather
similar and in agreement with field data.
The Linear Mixture model,however,presented
a more accurate classification result. This
method applies a maximum likelihood
classifier which is capable of better
estimating borders between the mixture
classes. The level slice method used to
define borders in the Fuzzy model clearly
presents a poorer performance.
5. CONCLUSION
The implementation of the mixture concept
to natural scenes can be a valuable tool
in natural resources. Variations in ve-
getation cover can be detected and
quantified. Useful information can be
obtained from this process. In the test
area presented in this study, only the
area with sparser vegetation, i.e., the
area corresponding to dry vegetation was
affected by a subsequent fire. This data
can then be understood as a variation in
soil and/or climate conditions.
REFERENCES
Haertel, V., Centeno, J. 1991, Utilizaçao
do conceito de pixel mistura no processo
de classificacao da cobertura vegetal em
bacias hidrograficas. Revista Brasileira
de Engenharia - Caderno de Recursos Hidri
cos. 9(2):87-100,
Heimes, J.F. 1977. Effects of scene pro-
portions on spectral reflectance in
lodgepole pine. M.Sc.thesis, Colorado
State University, Fort Collins, Colorado.
assisted
Ranson, J.K. 1975, Computer