Combined Use of Low-Cost Remote Sensing Techniques and δ13C to Assess Bread Wheat Grain Yield under Different Water and Nitrogen Conditions
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Citation
Salima Yousfi, Adrian Gracia-Romero, Nassim Kellas, Mohamed Kaddour, Ahmed Chadouli, Mohammed Karrou, José Luis Araus, Maria Dolores Serret. (31/5/2019). Combined Use of Low-Cost Remote Sensing Techniques and δ13C to Assess Bread Wheat Grain Yield under Different Water and Nitrogen Conditions. Agronomy, 9 (6).
Abstract
Vegetation indices and canopy temperature are the most usual remote sensing approaches
to assess cereal performance. Understanding the relationships of these parameters and yield may
help design more efficient strategies to monitor crop performance. We present an evaluation of
vegetation indices (derived from RGB images and multispectral data) and water status traits
(through the canopy temperature, stomatal conductance and carbon isotopic composition)
measured during the reproductive stage for genotype phenotyping in a study of four wheat
genotypes growing under different water and nitrogen regimes in north Algeria. Differences among
the cultivars were reported through the vegetation indices, but not with the water status traits. Both
approximations correlated significantly with grain yield (GY), reporting stronger correlations under
support irrigation and N-fertilization than the rainfed or the no N-fertilization conditions. For Nfertilized trials (irrigated or rainfed) water status parameters were the main factors predicting
relative GY performance, while in the absence of N-fertilization, the green canopy area (assessed
through GGA) was the main factor negatively correlated with GY. Regression models for GY
estimation were generated using data from three consecutive growing seasons. The results
highlighted the usefulness of vegetation indices derived from RGB images predicting GY.