Abstract
Software was developed to spatially assess key crop characteristics from remotely sensed imagery. Sectioning and Assessment of Remote Images (SARI®), written in IDL® works as an add-on to ENVI®, has been developed to implement precision agriculture strategies. SARI® splits field plot images into grids of rectangular “micro-images” or “micro-plots”. The micro-plot length and width were defined as multiples of the image spatial resolution. SARI® calculates different indicators for each micro-plot, including the integrated pixel digital values. Studies on weed patches were done with SARI® using ground-truth data and remote images of two wheat plots infested with Avena sterilis at LaFloridaII and Navajas (Southern Spain). Patches of A. sterilis represented 47.5 and 19.2% of the field areas at the two locations, respectively; the infested areas were a combination of a few large and several small patches. At LaFloridaII, 2.1% of all patches were >500 m2 and 55.0% of all patches were smaller than 10 m2. Based on ground-truth weed abundance data, SARI® output includes geo-referenced and visual herbicide prescription maps, which could be used with variable-rate application equipment.
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Abbreviations
- Wild oat:
-
Avena sterilis sp. sterilis L.
- Wheat:
-
Triticum durum L.
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This research was partially financed by the Spanish Commission of Science and Technology through the projects AGL2007-60926 and AGL2010-15506.
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Gómez-Candón, D., López-Granados, F., Caballero-Novella, J.J. et al. Sectioning remote imagery for characterization of Avena sterilis infestations. Part A: Weed abundance. Precision Agric 13, 322–336 (2012). https://doi.org/10.1007/s11119-011-9249-y
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DOI: https://doi.org/10.1007/s11119-011-9249-y