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不同光照和露水对基于主动式归一化植被指数(NDVI)、RGB和激光雷达的地面覆盖估计的影响

Impact of Varying Light and Dew on Ground Cover Estimates from Active NDVI, RGB, and LiDAR.

作者信息

Deery David M, Smith David J, Davy Robert, Jimenez-Berni Jose A, Rebetzke Greg J, James Richard A

机构信息

CSIRO Agriculture and Food, Canberra, ACT, Australia.

CSIRO Agriculture and Food, Yanco, NSW, Australia.

出版信息

Plant Phenomics. 2021 May 27;2021:9842178. doi: 10.34133/2021/9842178. eCollection 2021.

Abstract

Canopy ground cover (GC) is an important agronomic measure for evaluating crop establishment and early growth. This study evaluates the reliability of GC estimates, in the presence of varying light and dew on leaves, from three different ground-based sensors: (1) normalized difference vegetation index (NDVI) from the commercially available GreenSeeker®; (2) RGB images from a digital camera, where GC was determined as the portion of pixels from each image meeting a greenness criterion (i.e., (Green - Red)/(Green + Red) > 0); and (3) LiDAR using two separate approaches: (a) GC from LiDAR red reflectance (whereby red reflectance less than five was classified as vegetation) and (b) GC from LiDAR height (whereby height greater than 10 cm was classified as vegetation). Hourly measurements were made early in the season at two different growth stages (tillering and stem elongation), among wheat genotypes highly diverse for canopy characteristics. The active NDVI showed the least variation through time and was particularly stable, regardless of the available light or the presence of dew. In addition, between-sample-time Pearson correlations for NDVI were consistently high and significant ( < 0.0001), ranging from 0.89 to 0.98. In comparison, GC from LiDAR and RGB showed greater variation across sampling times, and LiDAR red reflectance was strongly influenced by the presence of dew. Excluding times when the light was exceedingly low, correlations between GC from RGB and NDVI were consistently high (ranging from 0.79 to 0.92). The high reliability of the active NDVI sensor potentially affords a high degree of flexibility for users by enabling sampling across a broad range of acceptable light conditions.

摘要

冠层地面覆盖度(GC)是评估作物定植和早期生长的一项重要农艺措施。本研究评估了在叶片光照和露水条件各异的情况下,三种不同地面传感器估算GC的可靠性:(1)商用GreenSeeker®的归一化植被指数(NDVI);(2)数码相机的RGB图像,其中GC被确定为每张图像中符合绿色度标准(即(绿色-红色)/(绿色+红色)>0)的像素比例;(3)激光雷达,采用两种不同方法:(a)基于激光雷达红色反射率的GC(红色反射率小于5的被归类为植被)和(b)基于激光雷达高度的GC(高度大于10厘米的被归类为植被)。在小麦冠层特征差异极大的基因型中,于季节早期的两个不同生长阶段(分蘖期和拔节期)进行了每小时一次的测量。活性NDVI随时间变化最小,特别稳定,无论光照条件如何或是否有露水。此外,NDVI在样本时间之间的皮尔逊相关性始终很高且显著(<0.0001),范围从0.89到0.98。相比之下,激光雷达和RGB估算的GC在采样时间上变化更大,且激光雷达红色反射率受露水存在的影响很大。排除光照极低的时段,RGB估算的GC与NDVI之间的相关性始终很高(范围从0.79到0.92)。活性NDVI传感器的高可靠性可能为用户提供了高度的灵活性,使其能够在广泛的可接受光照条件下进行采样。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b190/8240513/ba00b125baeb/PLANTPHENOMICS2021-9842178.001.jpg

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