International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004
cloud shadows. The DS fusion removes this kind of error by.de-
creasing the credibility associated to this decision. The rate of
classification after DS fusion is 63 96 .
The final step is based on an evidential markovian approach.
Each classified pixel is studied with a spatial context and its own
mass function after the DS fusion [1]. The algorithm used in
this step is the evidential ICM (Iterative Conditional Mode). The
rate of good classification after this algorithm increase to 66 %
(fig.2.d).
CONCLUSION
The new evidential fusion approach can distinct in a better
way the uncertainty et inaccuracy notion in the mass functions.
The FSEM algorithm compared to others algorithms used in the
DS fusion enables possible to distribute a more realistic density
for each simple or composed hypothesis. We have seen that the
mass function initialization proposed in this article ease the fu-
sion process. The mass function are no more estimated using
an empirical approach, so the algorithm is completely automatic
and we do not need any a priori information about the data.
Application to remote sensing multispectral images with
some ecological indices and auxiliary data related to slope in-
formation give a better classification result on the final decision-
making. Redundant and heterogeneity information decrease
some ambiguities related to a lack of data and some artefacts.
Thus, the DS fusion developed method improves the result in
comparaison with the result of LANDSAT TM SEM classifica-
tion.
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