2019
DOI: 10.3390/rs11101244
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UAV and Ground Image-Based Phenotyping: A Proof of Concept with Durum Wheat

Abstract: Climate change is one of the primary culprits behind the restraint in the increase of cereal crop yields. In order to address its effects, effort has been focused on understanding the interaction between genotypic performance and the environment. Recent advances in unmanned aerial vehicles (UAV) have enabled the assembly of imaging sensors into precision aerial phenotyping platforms, so that a large number of plots can be screened effectively and rapidly. However, ground evaluations may still be an alternative… Show more

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Cited by 81 publications
(80 citation statements)
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“…It appears that the optimal period to assess wheat grain yield may be during the early and late crop growth stages, while mid-season should be avoided for the reasons observed in this study. However, these results in contrast with [34] who observed better correlations to predict grain yield of 23 wheat genotypes in irrigated condition than rainfed condition during grain filling growth stages using handheld sensors and UAV platforms measurements, which performed similarly in predicting yield.…”
Section: Relationship Between Ndvi and Grain Yieldcontrasting
confidence: 94%
See 1 more Smart Citation
“…It appears that the optimal period to assess wheat grain yield may be during the early and late crop growth stages, while mid-season should be avoided for the reasons observed in this study. However, these results in contrast with [34] who observed better correlations to predict grain yield of 23 wheat genotypes in irrigated condition than rainfed condition during grain filling growth stages using handheld sensors and UAV platforms measurements, which performed similarly in predicting yield.…”
Section: Relationship Between Ndvi and Grain Yieldcontrasting
confidence: 94%
“…Plant genotypes respond differently to climate, soil type, irrigation, and other management practices, thus we need as many studies as possible to complement the existing literature. As the field of high throughput plant phenotyping (HTPP) for plant breeding and selection, is still in its infancy [30][31][32], this study is a valuable addition to this rapidly growing field [16,[33][34][35][36]. Use of several genotypes in this study adds breadth to the relationship between spectral measurements and yield in winter wheat.…”
Section: Introductionmentioning
confidence: 99%
“…Downsampling the imagery produces smaller data sets that can be registered more quickly. Importantly, current phenotyping studies use either Pix4DMapper (Pix4D, Prilly, Switzerland) or AgiSoft (AgiSoft, St. Petersburg, Russia), both of which rely heavily on these strategies to produce canopy mosaics (Shi et al, 2016; Condorelli et al, 2018; Enciso et al, 2019; Gracia‐Romero et al, 2019; Johansen et al, 2019; Wang et al, 2019).…”
Section: Figurementioning
confidence: 99%
“…Approaches for a wide range of plant traits (morphological, physiological, phenological or ecological) are already been developed, evaluated and improved. We have used the heritability parameter as an indicator to compare across studies showing that both ground and aerial platforms combined with appropriate sensors and models have the potential to significantly contribute to the efficiency of breeding programs by increasing the accuracy of selection and subsequently the genetic gain [103]. However, in a broad sense we can assume that ground level platforms are mostly used as experimental solutions, almost always custom-designed and they are not considered to be the most suitable for implementing globally generalizable systems.…”
Section: Current Platforms and Sensors In Field-high-throughput Phenomentioning
confidence: 99%