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Improving remotely sensed species identification through efficient training data collection
28th April 2014

Improving remotely sensed species identification through efficient training data collection

Biodiversity
Savannas
Africa
South Africa
Machine Learning

Imaging spectroscopy and appropriate field data opens new doors to study biodiversity

Baldeck, C.A. and G.P. Asner
Remote Sensing 6:2682-2698.
Published in 2014
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