• DocumentCode
    56620
  • Title

    Remote Sensing With Simulated Unmanned Aircraft Imagery for Precision Agriculture Applications

  • Author

    Hunt, E. Raymond ; Daughtry, Craig S. T. ; Mirsky, Steven B. ; Hively, W. Dean

  • Author_Institution
    Hydrol. & Remote Sensing Lab., USDA-ARS Beltsville Agric. Res. Center, Beltsville, MD, USA
  • Volume
    7
  • Issue
    11
  • fYear
    2014
  • fDate
    Nov. 2014
  • Firstpage
    4566
  • Lastpage
    4571
  • Abstract
    An important application of unmanned aircraft systems (UAS) may be remote-sensing for precision agriculture, because of its ability to acquire images with very small pixel sizes from low altitude flights. The objective of this study was to compare information obtained from two different pixel sizes, one about a meter (the size of a small vegetation plot) and one about a millimeter. Cereal rye (Secale cereale) was planted at the Beltsville Agricultural Research Center for a winter cover crop with fall and spring fertilizer applications, which produced differences in biomass and leaf chlorophyll content. UAS imagery was simulated by placing a Fuji IS-Pro UVIR digital camera at 3-m height looking nadir. An external UV-IR cut filter was used to acquire true-color images; an external red cut filter was used to obtain color-infrared-like images with bands at near-infrared, green, and blue wavelengths. Plot-scale Green Normalized Difference Vegetation Index was correlated with dry aboveground biomass (r = 0.58), whereas the Triangular Greenness Index (TGI) was not correlated with chlorophyll content. We used the SamplePoint program to select 100 pixels systematically; we visually identified the cover type and acquired the digital numbers. The number of rye pixels in each image was better correlated with biomass (r = 0.73), and the average TGI from only leaf pixels was negatively correlated with chlorophyll content (r = -0.72). Thus, better information for crop requirements may be obtained using very small pixel sizes, but new algorithms based on computer vision are needed for analysis. It may not be necessary to geospatially register large numbers of photographs with very small pixel sizes. Instead, images could be analyzed as single plots along field transects.
  • Keywords
    agriculture; remote sensing; vegetation mapping; Beltsville Agricultural Research Center; Fuji IS-Pro UVIR digital camera; SamplePoint program; Secale cereale; UAS application; UAS imagery; acquired digital number; average TGI; biomass difference; blue wavelength; cereal rye; color-infrared-like image; computer vision based algorithm; cover type; crop requirement; dry aboveground biomass; external UV-IR cut filter; external red cut filter; fall fertilizer application; green wavelength; large photograph number; leaf chlorophyll content difference; leaf pixel; low altitude flight; nadir; near-infrared wavelength; plot-scale green normalized difference vegetation index; precision agriculture application; remote sensing; rye pixel number; simulated unmanned aircraft imagery; small vegetation plot; spring fertilizer application; triangular greenness index; true-color image; very small pixel size information; winter cover crop; Agriculture; Biomass; Indexes; Nitrogen; Remote sensing; Unmanned aerial vehicles; Vegetation mapping; Color-infrared photography; Green Normalized Difference Vegetation Index (GNDVI); Secale cereale; Triangular Greenness Index (TGI); nitrogen fertilization; true-color photography; unmanned aircraft systems (UAS); winter cover crop;
  • fLanguage
    English
  • Journal_Title
    Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of
  • Publisher
    ieee
  • ISSN
    1939-1404
  • Type

    jour

  • DOI
    10.1109/JSTARS.2014.2317876
  • Filename
    6837422