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Non-destructive shoot biomass evaluation using a handheld NDVI sensor for field-grown staking Yam (Dioscorea rotundata Poir.)

机译:使用手持式NDVI传感器进行现场生长的铆接纱(Dioscorea Totundata Poir。)的非破坏性拍摄生物量评估

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Crop phenotyping is a key process used to accelerate breeding programs in the era of high-throughput genotyping. However, most rapid phenotyping methods developed to date have focused on major cereals or legumes, and their application to minor crops has been delayed. In this study, we developed a non-destructive method to predict shoot biomass by measuring spectral reflectance in staking yam (Dioscorea rotundata ). The normalized difference vegetation index (NDVI) was evaluated using a handheld sensor that was vertically scanned from the top to the bottom of a plant alongside the stake. A linear regression model was constructed to predict shoot biomass through Bayesian analysis using NDVI as a parameter. The model well predicted the observed values of shoot biomass, irrespective of the growth stage and genotypes. Conversely, the model tended to underestimate the shoot biomass when the actual shoot biomass exceeded 150?g plant~(?1); this was compensated for when the parameter green area, calculated from plant image, was included in the model. This method reduced the time, cost, effort, and field space needed for shoot biomass evaluation compared with that needed for the sampling method, enabling shoot biomass phenotyping for a large population of plants. A total of 210 cross-populated plants were evaluated, and a correlation analysis was performed between the predicted shoot biomass and tuber yield. In addition to the prediction of tuber yield, this method could also be applied for the evaluation of crop models and stress tolerance, as well as for genetic analyses.
机译:作物表型是用于加速高通量基因分型时代的育种计划的关键过程。然而,迄今为止开发的大多数快速的表型方法都集中在主要谷物或豆类上,它们对轻微作物的应用已经推迟。在这项研究中,我们开发了一种非破坏性方法来通过测量铆接纱线( Dioscorea圈子)中的光谱反射来预测拍摄生物量。使用手持式传感器评估归一化差异植被指数(NDVI),该手持式传感器与植物的底部垂直扫描到桩的顶部。建造线性回归模型以通过使用NDVI作为参数来通过贝叶斯分析预测拍摄生物量。模型良好地预测了观察到的芽生物质的值,而不管生长阶段和基因型如何。相反,当实际拍摄生物量超过150μg植物时,模型倾向于低估射击生物量〜(?1);这是根据植物图像计算的参数绿色区域,包括在模型中。该方法减少了拍摄生物量评价所需的时间,成本,努力和现场空间,与采样方法所需的相比,使射击生物质表型对大量植物进行射击。评估了总共210个交叉口植物,在预测的芽生物质和块茎产率之间进行了相关性分析。除了预测块茎产量之外,还可以应用这种方法用于评估作物模型和应力耐受性,以及遗传分析。

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