Yue Jibo, Feng Haikuan, Tian Qingjiu, Zhou Chengquan
Key Laboratory of Quantitative Remote Sensing in Agriculture of Ministry of Agriculture, Beijing Research Center for Information Technology in Agriculture, Beijing, 100097 China.
International Institute for Earth System Science, Nanjing University, Nanjing, 210023 China.
Plant Methods. 2020 Jul 31;16:104. doi: 10.1186/s13007-020-00643-z. eCollection 2020.
Timely and accurate estimates of canopy chlorophyll (Chl) a and b content are crucial for crop growth monitoring and agricultural management. Crop canopy reflectance depends on many factors, which can be divided into the following categories: (i) leaf effects (e.g., leaf pigments), (ii) canopy effects (e.g., Leaf Area Index [LAI]), and (iii) soil background reflectance (e.g., soil reflectance). The estimation of leaf variables, such as Chl contents, from reflectance at the canopy scale is usually less accurate than that at the leaf scale. In this study, we propose a Visible and Near-infrared (NIR) Angle Index (VNAI) to estimate the Chl content of soybean canopy, and soybean canopy Chl maps are produced using visible and NIR unmanned aerial vehicle (UAV) remote sensing images. The VNAI is insensitive to LAI and can be used for the multi-stage estimation of crop canopy Chl content.
Eleven previously used vegetation indices (VIs) (e.g., Pigment-specific Normalized Difference Index) were selected for performance comparison. The results showed that (i) most previously used Chl VIs were significantly correlated with LAI, and the proposed VNAI was more sensitive to Chl content than LAI; (ii) the VNAI-based estimates of Chl content were more accurate than those based on the other investigated VIs using (1) simulated, (2) real (field), and (3) real (UAV) datasets.
Most previously used Chl VIs were significantly correlated with LAI whereas the proposed VNAI was more sensitive to Chl content than to LAI, indicating that the VNAI may be more strongly correlated with Chl content than these previously used VIs. Multi-stage estimations of the Chl content of cropland obtained using the VNAI and broadband remote sensing images may help to obtain Chl maps with high temporal and spatial resolution.
及时、准确地估算冠层叶绿素a和b含量对于作物生长监测和农业管理至关重要。作物冠层反射率取决于许多因素,可分为以下几类:(i)叶片效应(如叶片色素),(ii)冠层效应(如叶面积指数[LAI]),以及(iii)土壤背景反射率(如土壤反射率)。从冠层尺度的反射率估算叶片变量,如叶绿素含量,通常不如在叶片尺度准确。在本研究中,我们提出了一种可见光和近红外(NIR)角度指数(VNAI)来估算大豆冠层的叶绿素含量,并使用可见光和近红外无人机(UAV)遥感图像生成大豆冠层叶绿素图。VNAI对LAI不敏感,可用于作物冠层叶绿素含量的多阶段估算。
选择了11个先前使用的植被指数(VIs)(如色素特异性归一化差异指数)进行性能比较。结果表明:(i)大多数先前使用的叶绿素VIs与LAI显著相关,而提出的VNAI对叶绿素含量比对LAI更敏感;(ii)使用(1)模拟、(2)真实(田间)和(3)真实(无人机)数据集时,基于VNAI的叶绿素含量估算比基于其他研究的VIs更准确。
大多数先前使用的叶绿素VIs与LAI显著相关,而提出的VNAI对叶绿素含量比对LAI更敏感,这表明VNAI可能比这些先前使用的VIs与叶绿素含量的相关性更强。使用VNAI和宽带遥感图像对农田叶绿素含量进行多阶段估算,可能有助于获得具有高时空分辨率的叶绿素图。