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基于无人机多光谱遥感数据的水稻叶面积指数反演模型研究

殷琴亮 刘洋 李建武 张玉烛

杂交水稻2026,Vol.41Issue(2):37-47,11.
杂交水稻2026,Vol.41Issue(2):37-47,11.DOI:10.16267/j.cnki.1005-3956.20250403.066

基于无人机多光谱遥感数据的水稻叶面积指数反演模型研究

Inversion Models of Rice Leaf Area Index Based on UAV Multispectral Remote Sensing Data

殷琴亮 1刘洋 2李建武 3张玉烛4

作者信息

  • 1. 湖南农业大学 农学院,湖南 长沙 410128
  • 2. 湖南杂交水稻研究中心,湖南 长沙 410125
  • 3. 湖南杂交水稻研究中心,湖南 长沙 410125||隆平农业科技黄埔研究院,广东 广州 510700
  • 4. 隆平农业科技黄埔研究院,广东 广州 510700
  • 折叠

摘要

Abstract

Taking three indica conventional rice varieties as the research objects,a trial was carried out in Yueyang City,Hunan Province.The multispectral remote sensing images and the data of leaf area index(LAI)at six rice growth stages(14,21,35,42,56,and 73 days after transplanting)were obtained by UAV and manual measurement.Different methods were used to build the intertemporal and non-intertemporal prediction models for rice LAI inversion,and the model prediction performance(fitting effect and prediction accuracy)was evaluated.Through Pearson correlation analysis,five vegetation indices closely related to rice LAI were selected,which were normalized difference red edge index(NDRE),green normalized difference vegetation index(GNDVI),normalized difference vegetation index(NDVI),leaf chlorophyll index(LCI),and optimized soil-adjusted vegetation index(OSAVI).Two multivariate regression methods,stepwise regression and Lasso regression,and two machine learning regression methods,random forest(RF)and support vector machine(SVM),were used to construct intertemporal and non-intertemporal prediction models for rice LAI inversion,respectively.The prediction performance of each model was evaluated based on coefficient of determination(R2)and root mean square error(RMSE).The results showed that among the intertemporal prediction models for rice LAI inversion,the SVM model had the better overall prediction performance,and it had the highest prediction accuracy(R2 of 0.562)on the 56th day after transplanting and the lowest prediction accuracy(R2 of 0.095)on the 14th day on the validation set.Among the non-intertemporal prediction models for rice LAI inversion,the RF model had the better overall prediction performance,with R2 of and above 0.562(up to 0.856)at various growth stages on the validation set,demonstrating stable prediction performance.Overall,the machine learning models had higher prediction performance than the multivariate regression models.Although the intertemporal prediction models for rice LAI inversion showed a certain migration ability,they varied greatly at different growth stages,and it was still necessary to optimize the modeling strategy according to the characteristics of different stages.

关键词

叶面积指数/无人机多光谱/遥感/反演/机器学习回归/多元回归

Key words

leaf area index/UAV multispectre/remote sensing/inversion/machine learning regression/multivariate regression

分类

农业科技

引用本文复制引用

殷琴亮,刘洋,李建武,张玉烛..基于无人机多光谱遥感数据的水稻叶面积指数反演模型研究[J].杂交水稻,2026,41(2):37-47,11.

基金项目

湖南省农业科技创新资金项目(2024CX07) (2024CX07)

杂交水稻

1005-3956

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