2020
DOI: 10.3390/rs12020249
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Agronomic Traits Analysis of Ten Winter Wheat Cultivars Clustered by UAV-Derived Vegetation Indices

Abstract: Timely and accurate estimation of crop yield variability before harvest is crucial in precision farming. This study is aimed to evaluate the ability of cluster analysis based on Vegetation Indices (VIs) that were obtained from UAVs to predict the spatial variability on agronomic traits of ten winter wheat cultivars. Five VIs groups were identified and the ground truth yield-related data were analyzed for clusters validation. The yield data revealed a value of 6.91 t ha−1 for the first cluster with the highest … Show more

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Cited by 27 publications
(21 citation statements)
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“…This study also includes two irrigation conditions, which provides more useful information for a diverse group of scientists and producers. Additionally, this project used clustering algorithms to classify grain yields regardless of genotype and compared it with clustering of NDVI data, which is a fairly new practice [38]. The results from clustering analysis of NDVI and yield could be utilized for management and productivity zone-based precision agriculture.…”
Section: Introductionmentioning
confidence: 99%
“…This study also includes two irrigation conditions, which provides more useful information for a diverse group of scientists and producers. Additionally, this project used clustering algorithms to classify grain yields regardless of genotype and compared it with clustering of NDVI data, which is a fairly new practice [38]. The results from clustering analysis of NDVI and yield could be utilized for management and productivity zone-based precision agriculture.…”
Section: Introductionmentioning
confidence: 99%
“…Once the stereo pairs of the images are taken from the UAV camera sensors, these are processed using known control points and orthorectified based on the digital surface model (DSM) produced by the triangulation of the stereo pairs [9]. In many applications, the detection of vegetated areas is essential, as in the case of monitoring agricultural areas or forests [10][11][12][13]. Even if vegetation is not a goal of a study, vegetation needs to be masked out to produce a digital elevation model (DEM) and provide realistic contours of the area.…”
Section: Introductionmentioning
confidence: 99%
“…Different VIs have unique characteristics, and more spectral features can be identified by using multiple VIs to obtain high monitoring accuracy. Marino and Alvino (2020) used the soil adjusted vegetation index (SAVI), NDVI and OSAVI to characterize 10 winter wheat varieties in a field at different growth stages and obtained optimal biomass monitoring results. Villoslada et al (2020) combined 13 VIs to obtain the highest accuracy.…”
Section: Vegetation Indicesmentioning
confidence: 99%