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生态学杂志 ›› 2025, Vol. 44 ›› Issue (4): 1306-1313.doi: 10.13292/j.1000-4890.202504.003

• 研究报告 • 上一篇    下一篇

基于无人机高光谱的冬小麦LAI估算及LAI遥感产品检验

李军玲1,李梦夏1,熊坤2,田宏伟1,张渝晨1,3,余卫东1*
  

  1. 1中国气象局·河南省农业气象保障与应用技术重点开放实验室, 河南省气象科学研究所, 郑州 450003; 2商丘市气象局, 河南商丘 476000; 3安阳国家气候观象台, 河南安阳 455000)

  • 出版日期:2025-04-10 发布日期:2025-04-14

Estimation of winter wheat leaf area index (LAI) and validation of LAI remote sensing products based on UAV hyperspectral imagery.

LI Junling1, LI Mengxia1, XIONG Kun2, TIAN Hongwei1, ZHANG Yuchen1,3, YU Weidong1*   

  1. (1CMA·Henan Agrometeorological Support and Applied Technique Key Laboratory/Henan Institute of Meteorological Sciences, Zhengzhou 450003, China; 2Shangqiu Meteorological Service, Shangqiu 476000, Henan, China; 3Anyang National Climate Observatory, Anyang 455000, Henan, China).

  • Online:2025-04-10 Published:2025-04-14

摘要: 冬小麦叶面积指数(LAI)的动态变化,可用于其长势监测和估产。针对目前地面观测数据和卫星数据的尺度不匹配易引起的尺度效应,以及常用的多光谱数据相对高光谱数据的弱敏感性,为有效利用高光谱信息,优选出最佳波段进而构建LAI估算模型以提高LAI估测精度,本文引入无人机高光谱数据作为地面观测和卫星数据的桥梁进行相关研究。实验获取了冬小麦返青期地面实测LAI数据、无人机高光谱数据、高分一号卫星(GF-1)数据。在此基础上,首先对高光谱数据进行不同形式的特征变量变换和计算。通过建立感兴趣区,计算得到和地面观测尺度一致的无人机影像像元。最后进行同尺度下多个植被指数及光谱变换形式和LAI的相关性分析,筛选LAI敏感波段或指数,开展基于无人机和GF-1卫星的不同尺度下冬小麦LAI反演。结果表明:冬小麦LAI敏感波段或指数为635、655、693、704、714、721、724、763、806、813、900和936 nm一阶导,714、717、763、767、784、806、813、900、903和936 nm二阶导以及敏感光谱指数SDyDVIMSAVI2、NLISAVI,并利用多元逐步回归、偏最小二乘法、岭回归等构建无人机高光谱影像LAI反演模型,通过精度比较认为岭回归建模最优;基于升尺度方法建立了GF1冬小麦LAI估算模型,并将模拟结果作为相对真值对LAI遥感反演产品进行了真实性检验,FY3_1KM_LAI产品和GF_1KM_LAI产品相关系数达到0.787,说明FY3_LAI产品和相对真值有很强的相关性,可以用于日常业务服务和科研中。本文通过尺度扩展分析不同数据来源下反演模型精度,探讨不同遥感信息源在估算冬小麦LAI方面的能力,对作物管理提供科学指导,也为精准农业研究提供理论依据。


关键词: 叶面积指数, 高分一号卫星, 无人机高光谱数据, 真实性检验, 岭回归

Abstract: The variations of leaf area index (LAI) can be used to monitor growth status and estimate yields of winter wheat. However, there are several limitations in available studies, including scale mismatch between ground observation data and satellite data leading to scale effect and the weak sensitivity of commonly used multispectral data relative to hyperspectral data. To effectively use the hyperspectral information and select the best bands, LAI estimation models were proposed with the aim of improving LAI estimation accuracy. In this study, we used unmanned aerial vehicle (UAV) hyperspectral data, serving as a bridge between ground observations and satellite data. We acquired ground-measured LAI data, UAV hyperspectral data, and GF-1 data during the greening period of winter wheat. Different forms of transformation and calculation of characteristic variables were conducted on the hyperspectral data, followed by establishing the area of interest. UAV image pixels with the same scale as ground observation were calculated. We further conducted correlation analyses between LAI and various spectral transformation forms as well as vegetation indices at the same scale. LAI sensitive bands or indices were filtered. LAI inversion at different scales based on UAVs and GF-1 satellites was developed. The results showed that the sensitive bands or indices of winter wheat LAI were 635, 655, 693, 704, 714, 721, 724, 763, 806, 813, 900, 936 nm first derivative, 714, 717, 763, 767, 784, 806, 813, 900, 903, 936 nm  second derivative, as well as the sensitive spectral indices SDy, DVI, MSAVI2, NLI, and SAVI. An inversion model for estimating LAI from UAV hyperspectral images was developed utilizing various techniques, such as stepwise regression, partial least squares, and ridge regression. According to accuracy comparisons, ridge regression model was considered the optimal. Based on the upscaling method, a GF-1 winter wheat LAI estimation model was constructed. The simulation results were used as relative true values to validate the LAI remote sensing inversion products. The correlation coefficient between FY3_1KM_LAI products and GF_1KM_LAI products reached 0.787, indicating a strong correlation between FY3_LAI products and relative truth. This suggests that the results could be applied in daily operational services and research. In this study, we addressed the accuracy of inversion models under different data sources by upscaling, and discussed the ability of different remote sensing information sources in estimating LAI of winter wheat. Our results provided scientific guidance for crop management and theoretical basis for precision agriculture research.


Key words: leaf area index, GF-1, UAV hyperspectral data, validation, ridge regression