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基于无人机(UAV)成像和光谱混合分析的油菜籽产量遥感估算

Remote estimation of rapeseed yield with unmanned aerial vehicle (UAV) imaging and spectral mixture analysis.

作者信息

Gong Yan, Duan Bo, Fang Shenghui, Zhu Renshan, Wu Xianting, Ma Yi, Peng Yi

机构信息

1School of Remote Sensing and Information Engineering, Wuhan University, Wuhan, 430079 China.

3Lab for Remote Sensing of Crop Phenotyping, Wuhan University, Wuhan, 430079 China.

出版信息

Plant Methods. 2018 Aug 20;14:70. doi: 10.1186/s13007-018-0338-z. eCollection 2018.

Abstract

BACKGROUND

The accurate quantification of yield in rapeseed is important for evaluating the supply of vegetable oil, especially at regional scales.

METHODS

This study developed an approach to estimate rapeseed yield with remotely sensed canopy spectra and abundance data by spectral mixture analysis. A six-band image of the studied rapeseed plots was obtained by an unmanned aerial vehicle (UAV) system during the rapeseed flowering stage. Several widely used vegetation indices (VIs) were calculated from canopy reflectance derived from the UAV image. And the plot-level abundance of flower, leaf and soil, indicating the fraction of different components within the plot, was retrieved based on spectral mixture analysis on the six-band image and endmember spectra collected in situ for different components.

RESULTS

The results showed that for all tested indices VI multiplied by leaf-related abundance closely related to rapeseed yield. The product of Normalized Difference Vegetation Index and short-stalk-leaf abundance was the most accurate for estimating yield in rapeseed under different nitrogen treatments with the estimation errors below 13%.

CONCLUSION

This study gives an important indication that spectral mixture analysis needs to be considered when estimating yield by remotely sensed VI, especially for the image containing obviously spectral different components or for crops which have conspicuous flowers or fruits with significantly different spectra from their leave.

摘要

背景

准确量化油菜籽产量对于评估植物油供应至关重要,尤其是在区域尺度上。

方法

本研究开发了一种利用光谱混合分析,通过遥感冠层光谱和丰度数据估算油菜籽产量的方法。在油菜开花期,利用无人机系统获取了研究区域油菜地块的六波段图像。从无人机图像导出的冠层反射率计算了几种广泛使用的植被指数(VI)。基于对六波段图像和不同组分现场采集的端元光谱进行光谱混合分析,获取了地块层面花、叶和土壤的丰度,即表明了地块内不同组分的比例。

结果

结果表明,对于所有测试指数,VI与叶相关丰度的乘积与油菜籽产量密切相关。在不同施氮处理下,归一化差异植被指数与短茎叶丰度的乘积对油菜籽产量的估算最为准确,估算误差低于13%。

结论

本研究给出了一个重要提示,即利用遥感VI估算产量时需要考虑光谱混合分析,特别是对于包含明显光谱差异组分的图像,或者对于具有明显花朵或果实且其光谱与叶片有显著差异的作物。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/96df/6102863/c41d05b22d3d/13007_2018_338_Fig1_HTML.jpg

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