134
(a) NDVI using uncorrected radiances (b) NDVI using corrected radiances
Figure 6 . Effect of atmospheric correction on NDVI vegetation index
ACKNOWLEDGEMENTS
The authors would like to thank Larry Biehl and Purdue University for supplying the Purdue Soils Reflectance
Database, and Stephane Jacquemoud for supplying source code for the PROSPECT model.
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USDA-AR'
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ABSTRACT:
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for vegetation studie;
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NDVI varies with th
tended to favor the c
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NDVI need to be mi
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promising towards th
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making a quantitativ
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