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A new spectral similarity water index for the estimation of leaf water content from hyperspectral data of leaves

机译:叶片高光谱数据估计叶片水含量的新光谱相似性水指标

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The variability of leaf water content has considerable significance for plant-environment interactions, ecosystem functioning and crop growth. This paper describes a methodology used to create spectral similarity water indices (SWIs) to accurately retrieve leaf water content based on the similarity between the leaf reflectance spectra and the specific water absorption spectrum. The abilities of six common distance metrics to capture spectral features were tested using two in situ datasets (LOPEX93 and PANAMA) and one simulation dataset (PROSPECT). These three datasets were also used to determine the most appropriate spectral intervals and to verify the performance of SWIs against six frequently used spectral indices that were specifically designed to estimate vegetation water content. Our results demonstrate that the Spectral Angle Cosine (SAC) is the most effective metric to capture useful spectral information pertinent to the equivalent water thickness (EWT), and three spectral intervals (9701150, 1330-1350 and 1584-1760 nm) are suitable for the retrieval of leaf water content. The SWIs were then created based on the SAC distances in these three spectral intervals respectively. The results demonstrate that SWISAC indices are better indicators of leaf water content and more tolerant to species differences than the six spectral indices, including the Shortwave Angle Normalized Index (SANI), Shortwave Angle Slope Index (SASI), Moisture Stress Index (MSI), Normalized Difference Infrared Index (NDII), Normalized Difference Water Index (NDWI) and Maximum Difference Water Index (MDWI). In addition, the most accurate estimates of EWT were achieved from a single SAC distance with nRMSE of 4.08% ((R) over bar (2) = 0.98), 3.63% ((R) over bar (2) = 0.95) and 8.11% ((R) over bar (2) = 0.80) for PROSPECT, LOPEX93 and PANAMA, respectively. Models that combine two SAC distances from the near-infrared and shortwave infrared regions produce an even better overall performance. Spectral similarity metrics may be a new effective tool to capture useful spectral information pertinent to leaf biochemical components, not only EWT but also other components such as chlorophyll and nitrogen content and they have potential to be adapted to canopy level observations. (C) 2017 Elsevier Inc. All rights reserved.
机译:叶含水含量的可变性对于植物 - 环境相互作用,生态系统功能和作物生长具有相当大的意义。本文介绍了一种用于创造光谱相似性水指数(SWIS)的方法,以基于叶反射谱和特定吸水光谱之间的相似性来精确地检索叶片水含量。使用两个入位数据集(LOPEX93和PANAMA)和一个仿真数据集(展望)测试六个公共距离度量以捕获光谱特征的能力。这三个数据集还用于确定最合适的光谱间隔,并验证SWIS对六种常用光谱指标的性能,专门设计用于估计植被含水量。我们的结果表明,光谱角余弦(SAC)是捕获与等效水厚度(EWT)相关的有用光谱信息的最有效度量,并且三个光谱间隔(9701150,1330-1350和1584-1760nm)适合于检索叶水含量。然后基于这三个光谱间隔的SAC距离基于SAC距离来创建SWIS。结果表明,SWISAC指数是叶含水量的更好指标,比六种光谱指数更耐叶含水量和更容忍物种差异,包括短波角度归一化指数(SANI),短波角度斜率指数(SASI),水分应激指数(MSI),归一化差异红外指数(NDII),归一化差水指数(NDWI)和最大差水指数(MDWI)。此外,从单个囊距离的距离为4.08%((r)上方(2)= 0.98),3.63%(2)= 0.95)和8.11分别为前景,LOPEX93和巴拿马的百分比((r)(2)= 0.80)。与近红外线和短波红外区域相结合的两个SAC距离的模型产生了更好的整体性能。光谱相似度量可以是捕获与叶生化组分相关的有用的光谱信息的新有效工具,不仅是EWT,而且还具有诸如叶绿素和氮含量的其他组分,并且它们具有适应冠层水平观察的可能性。 (c)2017年Elsevier Inc.保留所有权利。

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