The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Vol. XXXVII. Part B7. Beijing 2008
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ACKNOWLEDGMENTS
This work is helped by the CNPq (through the ENVIAIR project
linked to the CNPq-INRIA relations), the IAI (Inter American
Institute) for Global Change Research through the CRN2
project: “Land use change in the Rio de la Praia Basin : linking
biophysical and human factors to predict trends, assess impacts
and support viable strategies for the future ”, the ANR (Agence
Nationale de la Recherche) through the DURAMAZ project :
“Sustainable development in the Brazilian Amazonia” and the
European Union through the SENSOR-TTCproject: “Land use
change, biofuels and rural development in the La Plata Basin
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