In: Wagner W., Szekely, B. (eds.): ISPRS TC VII Symposium - 100 Years ISPRS, Vienna, Austria, July 5-7, 2010, IAPRS, Vol. XXXVIII, Part 7B
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5. CONCLUSION
In this paper, we applied the model proposed in (Feitosa et al.,
2009) on a set of very high resolutionIKONOS II images of
urban areas within the city of Rio de Janeiro, Brazil.
The results are consistent with the ones presented in (Feitosa et
al., 2009), where series of Landsat images over an agricultural
area were subjected to multitemporal interpretation.
The experiments results presented here and in (Feitosa et al.,
2009) indicate that the multitemporal classification design
based on fuzzy Markov chains generally brings an accuracy
gain in relation to the monotemporal approach. Furthermore, it
has been shown that the more accurate the information coming
from the earlier date, the higher is its contribution to the
multitemporal classification performance. In fact, the fuzzy
Markov chain method seem to be particularly beneficial
whenever there is information regarding the earlier date (t) that
is significantly more accurate than the available information
about the later date (t+1).
We should recall that the assumption underlying the proposed
multitemporal classification model is the existence of a
significant temporal correlation between the data sets. If an
application does not meet this condition, the method is not
expected to work properly at all.
Future research should tackle a number of other important
issues. Experiments should be performed with more time points.
In this case, conditions on the length of the Markov chain could
also be investigated. Broader series of experiments with other
geographic regions and types of images should also be carried
out.
It would be also interesting to investigate other optimization
algorithms, since genetic algorithms spend too much processing
time and do not guarantee that the global optimum solution is
found. A possible candidate for this optimization task could be
some sort of least squares-based algorithm.
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ACKNOWLEDGEMENTS
This work was supported by CNPq (Brazilian National Counsel
of Technological and Scientific Development), FINEP
(Brazilian Innovation Agency) and FAPERJ (Carlos Chagas
Filho Research Support Agency of the State of Rio de Janeiro).
We would also like to thank the Government of the State of Rio
de Janeiro, Secretaria de Estado do Ambiente (SEA) for funding
the PIMAR project.
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