Estimating Fuel Moisture in Grasslands Using UAV-Mounted Infrared and Visible Light Sensors
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L. Monika Moskal | Van R. Kane | Ernesto Alvarado | Nastassia Barber | William E. Mell | W. Mell | L. M. Moskal | V. Kane | E. Alvarado | Nastassia Barber
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