UAV-based high-throughput phenotyping to increase prediction and selection accuracy in maize varieties under artificial MSV inoculation

被引:32
|
作者
Chivasa, Walter [1 ]
Mutanga, Onisimo [2 ]
Burgueno, Juan [3 ]
机构
[1] Int Maize & Wheat Improvement Ctr CIMMYT, Nairobi, Kenya
[2] Univ KwaZulu Natal, Sch Agr Earth & Environm Sci, Pietermaritzburg, South Africa
[3] CIMMYT, El Batan, Texcoco, Mexico
关键词
Maize; UAV; Multispectral data; Remote sensing; Maize streak virus; High-throughput phenotyping; Yield prediction; YIELD PREDICTION; YELLOW RUST; GRAIN-YIELD; NITROGEN APPLICATION; REFLECTANCE SPECTRA; VEGETATION INDEXES; DISEASE DETECTION; IDENTIFICATION; RESISTANCE; IMPROVE;
D O I
10.1016/j.compag.2021.106128
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
The use of unmanned aerial vehicles? (UAV) remotely sensed data in crop evaluation is revolutionizing the field of plant phenotyping. This study was conducted to (1) develop protocol to predict maize streak virus (MSV) and grain yield using UAV-derived multispectral data; and (2) identify the suitable predictor variables and ideal phenological stages for MSV and grain yield prediction. Twenty-five maize varieties were evaluated under artificial MSV inoculation. Manual scoring and multispectral imaging measurements were performed at midvegetative, flowering and mid-grain filling stages. UAV-derived data were acquired in the multispectral bands of Green (0.53?0.57 ?m), Red (0.64?0.68 ?m), Red-edge (0.73?0.74 ?m) and Near-Infrared (0.77?0.81 ?m). Eight vegetation indices were determined: NDVI (normalized difference vegetation index), NDVIred-edge, GNDVI (green normalized difference vegetation index), SR (simple ratio), CIgreen (green chlorophyll index), CIred-edge (red-edge chlorophyll index), SAVI (soil-adjusted vegetation index) and OSAVI (optimized SAVI). Finally, predictions of MSV and grain yield were performed with 36 models using multiple regression, decision trees and linear regression. Frequently selected variables for MSV prediction were Green band at vegetative (61.5%), Red band at vegetative (68.4%) and flowering (80.4%), and GNDVI at mid-vegetative (88.7%). The best MSV predictors were GNDVI (r = 0.84; RMSE = 0.85), CIgreen (r = 0.83; RMSE = 0.86) and Red band (r = 0.77; RMSE = 0.99) measured at mid-vegetative stage. Six out of 36 models were selected as ideal for predicting maize grain yield: RF-REF-NIRF (r = 0.69; RMSE = 0.65); NDVIREG-GNDVIG (r = 0.74; RMSE = 0.56); RV-NIRV (r = 0.84; RMSE = 0.37); and the tree with the largest correlations are RV-NIRV-RF (r = 0.86; RMSE = 0.32); GNDVIVOSAVIV (r = 0.84; RMSE = 0.36); GV-RV-NIRV (r = 0.84; RMSE = 0.35); the last two of which were at midvegetative stage. We conclude that UAV-based multispectral remote sensing is a reliable tool for phenotyping MSV disease and grain yield prediction, and mid-vegetative appear to be the most ideal phenological stage for MSV and grain yield prediction.
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页数:14
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