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典型文献
Evaluation of UAV-derived multimodal remote sensing data for biomass prediction and drought tolerance assessment in bioenergy sorghum
文献摘要:
Screening for drought tolerance is critical to ensure high biomass production of bioenergy sorghum in arid or semi-arid environments.The bottleneck in drought tolerance selection is the challenge of accurately predicting biomass for a large number of genotypes.Although biomass prediction by low-altitude remote sensing has been widely investigated on various crops,the performance of the predic-tions are not consistent,especially when applied in a breeding context with hundreds of genotypes.In some cases,biomass prediction of a large group of genotypes benefited from multimodal remote sensing data;while in other cases,the benefits were not obvious.In this study,we evaluated the performance of single and multimodal data(thermal,RGB,and multispectral)derived from an unmanned aerial vehicle(UAV)for biomass prediction for drought tolerance assessments within a context of bioenergy sorghum breeding.The biomass of 360 sorghum genotypes grown under well-watered and water-stressed regimes was predicted with a series of UAV-derived canopy features,including canopy structure,spectral reflec-tance,and thermal radiation features.Biomass predictions using canopy features derived from the mul-timodal data showed comparable performance with the best results obtained with the single modal data with coefficients of determination(R2)ranging from 0.40 to 0.53 under water-stressed environment and 0.11 to 0.35 under well-watered environment.The significance in biomass prediction was highest with multispectral followed by RGB and lowest with the thermal sensor.Finally,two well-recognized yield-based drought tolerance indices were calculated from ground truth biomass data and UAV predicted bio-mass,respectively.Results showed that the geometric mean productivity index outperformed the yield stability index in terms of the potential for reliable predictions by the remotely sensed data.Collectively,this study demonstrated a promising strategy for the use of different UAV-based imaging sensors to quantify yield-based drought tolerance.
文献关键词:
作者姓名:
Jiating Li;Daniel P.Schachtman;Cody F.Creech;Lin Wang;Yufeng Ge;Yeyin Shi
作者机构:
Department of Biological Systems Engineering,University of Nebraska-Lincoln,Lincoln,NE 68583,USA;Department of Agronomy and Horticulture,Center for Plant Science Innovation,University of Nebraska-Lincoln,Lincoln,NE 68588,USA;Center for Plant Science Innovation,University of Nebraska-Lincoln,Lincoln,NE 68588,USA;Department of Agronomy and Horticulture,Panhandle Research and Extension Center,University of Nebraska-Lincoln,Scottsbluff,NE 69361,USA
引用格式:
[1]Jiating Li;Daniel P.Schachtman;Cody F.Creech;Lin Wang;Yufeng Ge;Yeyin Shi-.Evaluation of UAV-derived multimodal remote sensing data for biomass prediction and drought tolerance assessment in bioenergy sorghum)[J].作物学报(英文版),2022(05):1363-1375
A类:
timodal
B类:
Evaluation,UAV,derived,multimodal,sensing,data,biomass,drought,tolerance,bioenergy,sorghum,Screening,critical,ensure,production,arid,semi,environments,bottleneck,selection,challenge,accurately,predicting,large,number,genotypes,Although,by,altitude,has,been,widely,investigated,various,crops,performance,are,consistent,especially,when,applied,breeding,context,hundreds,In,some,cases,group,benefited,from,while,other,benefits,were,obvious,this,study,evaluated,single,thermal,RGB,multispectral,unmanned,aerial,vehicle,assessments,within,grown,under,well,watered,stressed,regimes,was,predicted,series,canopy,features,including,structure,reflec,tance,radiation,Biomass,predictions,using,showed,comparable,best,results,obtained,coefficients,determination,ranging,significance,highest,followed,lowest,Finally,two,recognized,yield,indices,calculated,ground,truth,respectively,Results,that,geometric,mean,productivity,outperformed,stability,terms,potential,reliable,remotely,sensed,Collectively,demonstrated,promising,strategy,use,different,imaging,sensors,quantify
AB值:
0.468198
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