Author
Hunt Jr, Earle | |
Hively, Wells - Dean | |
Daughtry, Craig | |
McCarty, Gregory | |
FUJIKAWA, S - INTELLITECH MICROSYSTEMS | |
NG, T - INTELLITECH MICROSYSTEMS | |
TRANCHITELLA, MICHAEL - INTELLITECH MICROSYSTEMS | |
LINDEN, DAVID - INTELLITECH MICROSYSTEMS | |
YOEL, DAVID - INTELLITECH MICROSYSTEMS |
Submitted to: Meeting Abstract
Publication Type: Proceedings Publication Acceptance Date: 10/1/2008 Publication Date: 11/17/2009 Citation: Hunt, E.R., Hively, W.D., Daughtry, C.S., McCarty, G.W., Fujikawa, S.J., Ng, T.L., Tranchitella, M., Linden, D.S., Yeol, D. 2008. Remote sensing crop leaf area index using unmanned airbone vehicles. In: Proceedings of the 17th William T. Pecora Memorial Remote Sensing Symposium, November 16-20, 2008, Denver, Colorado. Paper 18. Interpretive Summary: Technical Abstract: Remote sensing with unmanned airborne vehicles (UAVs) has more potential for within-season crop management than conventional satellite imagery because: (1) pixels have very high resolution, (2) cloud cover would not prevent acquisition during critical periods of growth, and (3) quick delivery of information to the user is possible. We modified a digital camera to obtain blue, green and near-infrared (NIR) photographs at low cost and without post-processing. The modified color-infrared digital camera was mounted in a Vector-P UAV (IntelliTech Microsystems, Bowie, Maryland), which was flown at two elevations to obtain a pixel size of 6 cm at 210 m elevation and 3 cm at 115 m elevation. Winter wheat was planted early and late in adjoining fields on the Eastern Shore of Maryland (39° 2’ 2” N, 76° 10’ 36” W). Each planting was divided into 6 north-south strips with different nitrogen treatments, which created large variation in leaf area index (LAI). Inspection of the color-infrared photographs revealed large spatial variation in biomass and leaf area index within each treatment strip. As with most aerial photographs, there were problems in the imagery with lens vignetting and vegetation anisotropy. The green normalized difference vegetation index [GNDVI = (NIR - green)/(NIR + green)] reduced the effect of these image problems and was linearly correlated with leaf area index and biomass. With very high spatial resolution, pixels in which the soil reflectance dominates can be masked out, and only pure crop pixels could be used to estimate crop nitrogen requirements. |