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Studying on red edge characteristics of maize leaf using visible ear-infrared imaging hyperspectra

机译:可见/近红外成像高光谱研究玉米叶片红边特征

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Ground-based hyperspectral imaging has a unique advantage in analyzing the component information of field crop due to its characteristics of combining image with spectrum. However, how to fully utilize its data advantages need to be studied specifically. This paper collected the spectral reflectance of corn leaves using the Pushbroom Imaging Spectrometer (PIS) in different growth stages. Then, the red edge position (REP) were identified through six algorithms: first derivative reflectance (FDR), polynomial function fitting (POLY), four points inserting (FPI), line extrapolate method(LEM), inverted gauss (IG), Lagrange interpolation (LAGR); and the correlation between REP and chlorophyll content was explored on the basis of studying the red edge amplitude changes. The results showed that: 1) The REP obtained by different algorithms changed between 690 nm and 740 nm in which the amplitude changes of red edge for the FDR, POLY and LAGR were maximum and varied from 692 nm to 730nm; the amplitude changes of the FPI and LEM varied from 713 nm to 740nm; while the IG algorithm was the narrowest and varied only between 702 nm and 710 nm. 2) Considering the relationship between REP and chlorophyll concentration under different conditions (i.e. growth stages, species, fertilization and leaf positions), the FDR and LAGR performed well in maize under different conditions; the IG was suitable for different growth stages; the FPI had a good effect in distinguishing different varieties; the POLY was suitable for different fertilization; the LEM had wider changes for red edge amplitude and a significant correlation with chlorophyll content, but the correlation coefficient was smaller than other algorithms and this phenomenon needed to be further studied. The above research results provided some references for quantitatively retrieving crop nutrients using ground-based hyperspectral imaging data.
机译:基于地面的高光谱成像具有分析图像和光谱的特点,在分析大田作物的成分信息方面具有独特的优势。但是,需要专门研究如何充分利用其数据优势。本文利用Pushbroom成像光谱仪(PIS)收集了玉米在不同生长阶段的叶片光谱反射率。然后,通过六种算法识别红色边缘位置(REP):一阶导数反射率(FDR),多项式函数拟合(POLY),四点插入(FPI),线外推法(LEM),反高斯(IG),拉格朗日插值(LAGR);在研究红边幅度变化的基础上,探讨了REP与叶绿素含量的相关性。结果表明:1)不同算法得到的REP在690nm至740nm之间变化,其中FDR,POLY和LAGR的红边幅度变化最大,在692nm至730nm之间变化。 FPI和LEM的幅度变化在713nm至740nm之间变化;而IG算法最窄,仅在702 nm至710 nm之间变化。 2)考虑到REP与叶绿素浓度在不同条件下(即生长期,品种,施肥和叶片位置)之间的关系,在不同条件下玉米的FDR和LAGR表现良好; IG适用于不同的成长阶段; FPI在区分不同品种方面有很好的效果; POLY适合于不同的施肥; LEM的红色边缘幅度变化较宽,并且与叶绿素含量具有显着的相关性,但相关系数比其他算法要小,这一现象有待进一步研究。以上研究结果为利用地面高光谱成像数据定量检索作物养分提供了参考。

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