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用于预测小麦中氮和水含量及分布的高光谱分布图的研制()

The Development of Hyperspectral Distribution Maps to Predict the Content and Distribution of Nitrogen and Water in Wheat ().

作者信息

Bruning Brooke, Liu Huajian, Brien Chris, Berger Bettina, Lewis Megan, Garnett Trevor

机构信息

Australian Plant Phenomics Facility, The Plant Accelerator, School of Agriculture, Food & Wine, University of Adelaide, Urrbrae, SA, Australia.

Ecology and Evolutionary Biology, School of Biological Sciences, University of Adelaide, Adelaide, SA, Australia.

出版信息

Front Plant Sci. 2019 Oct 30;10:1380. doi: 10.3389/fpls.2019.01380. eCollection 2019.

Abstract

Quantifying plant water content and nitrogen levels and determining water and nitrogen phenotypes is important for crop management and achieving optimal yield and quality. Hyperspectral methods have the potential to advance high throughput phenotyping efforts by providing a rapid, accurate, and nondestructive alternative for estimating biochemical and physiological plant traits. Our study (i) acquired hyperspectral images of wheat plants using a high throughput phenotyping system, (ii) developed regression models capable of predicting water and nitrogen levels of wheat plants, and (iii) applied the regression coefficients from the best-performing models to hyperspectral images in order to develop prediction maps to visualize nitrogen and water distribution within plants. Hyperspectral images were collected of four wheat () genotypes grown in nine soil nutrient conditions and under two water treatments. Five multivariate regression methods in combination with 10 spectral preprocessing techniques were employed to find a model with strong predictive performance. Visible and near infrared wavelengths (VNIR: 400-1,000nm) alone were not sufficient to accurately predict water and nitrogen content (validation R = 0.56 and R = 0.59, respectively) but model accuracy was improved when shortwave-infrared wavelengths (SWIR: 1,000-2,500nm) were incorporated (validation R = 0.63 and R = 0.66, respectively). Wavelength reduction produced equivalent model accuracies while reducing model size and complexity (validation R = 0.69 and R = 0.66 for water and nitrogen, respectively). Developed distribution maps provided a visual representation of the concentration and distribution of water within plants while nitrogen maps seemed to suffer from noise. The findings and methods from this study demonstrate the high potential of high-throughput hyperspectral imagery for estimating and visualizing the distribution of plant chemical properties.

摘要

量化植物含水量和氮含量以及确定水分和氮素表型对于作物管理以及实现最佳产量和品质至关重要。高光谱方法有潜力推动高通量表型分析工作,为估算植物生化和生理特性提供一种快速、准确且无损的替代方法。我们的研究:(i)使用高通量表型系统获取小麦植株的高光谱图像;(ii)开发能够预测小麦植株水分和氮含量的回归模型;(iii)将表现最佳模型的回归系数应用于高光谱图像,以绘制预测图,直观呈现植物体内氮和水分的分布。在9种土壤养分条件和2种水分处理下,对4个小麦()基因型植株采集了高光谱图像。采用5种多元回归方法并结合10种光谱预处理技术,以找到具有强大预测性能的模型。仅利用可见和近红外波长(VNIR:400 - 1000nm)不足以准确预测水分和氮含量(验证R分别为0.56和0.59),但纳入短波红外波长(SWIR:1000 - 2500nm)时模型精度得到提高(验证R分别为0.63和0.66)。波长约简在减小模型规模和复杂度的同时产生了相当的模型精度(水分和氮的验证R分别为0.69和0.66)。所绘制的分布图直观呈现了植物体内水分的浓度和分布,而氮素图似乎受到噪声干扰。本研究的结果和方法证明了高通量高光谱成像在估算和可视化植物化学性质分布方面具有很高潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1998/6831646/73c94d13a425/fpls-10-01380-g001.jpg

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