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Título

Mapping crop planting quality in sugarcane from UAV imagery: A pilot study in Nicaragua

AutorLuna, Inti; Lobo, Agustín CSIC ORCID
Palabras claveGap
Nicaragua
Planting quality
Precision agriculture
Sugarcane
UAV
Fecha de publicaciónjun-2016
EditorMultidisciplinary Digital Publishing Institute
CitaciónRemote Sensing, 8(6): Article number 500 (2016)
ResumenSugarcane is an important economic resource for many tropical countries and optimizing plantations is a serious concern with economic and environmental benefits. One of the best ways to optimize the use of resources in those plantations is to minimize the occurrence of gaps. Typically, gaps open in the crop canopy because of damaged rhizomes, unsuccessful sprouting or death young stalks. In order to avoid severe yield decrease, farmers need to fill the gaps with new plants. Mapping gap density is therefore critical to evaluate crop planting quality and guide replanting. Current field practices of linear gap evaluation are very labor intensive and cannot be performed with sufficient intensity as to provide detailed spatial information for mapping, which makes replanting difficult to perform. Others have used sensors carried by land vehicles to detect gaps, but these are complex and require circulating over the entire area. We present a method based on processing digital mosaics of conventional images acquired from a small Unmanned Aerial Vehicle (UAV) that produced a map of gaps at 23.5 cm resolution in a study area of 8.7 ha with 92.9% overall accuracy. Linear Gap percentage estimated from this map for a grid with cells of 10 m × 10 m linearly correlates with photo-interpreted linear gap percentage with a coefficient of determination (R2)= 0.9; a root mean square error (RMSE) = 5.04; and probability (p) ≪ 0.01. Crop Planting Quality levels calculated from image-derived gaps agree with those calculated from a photo-interpreted version of currently used field methods (Spearman coefficient = 0.92). These results clearly demonstrate the effectiveness of processing mosaics of Unmanned Aerial System (UAS) images for mapping gap density and, together with previous studies using satellite and hand-held spectroradiometry, suggests the extension towards multi-spectral imagery to add insight on plant condition.
Versión del editorhttp://dx.doi.org/10.3390/rs8060500
URIhttp://hdl.handle.net/10261/134286
DOI10.3390/rs8060500
ISSN2072-4292
E-ISSN2072-4292
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