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Monitoring leaf area index after heading stage using hyperspectral remote sensing data in rice

机译:利用水稻高光谱遥感数据监测抽穗期叶面积指数

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Leaf area index (LAI), as an important characterization parameter, reflects the canopy structural characteristics of crops. It is commonly used to estimate foliage cover, as well as forecasting crop growth and yield [1,2,3]. Because LAI is functionally linked to the canopy spectral reflectance, its retrieval from remote sensing data has prompted many investigations and studies in recent years. The common and widely used approach has been to develop relationships between ground-measured LAI and vegetation indices [1,4,5]. These vegetation indices performed well at the early stage of crop growth, but the estimation accuracy are greatly decreased in the late growth stages, especially after heading stage. A major problem in the use of these indices arises from the fact that canopy reflectance, it is strongly dependent on both structural and biochemical properties of the canopy [6,7,8]. In the late period of crop growth, panicles changed the canopy structure of crops and affected the crop canopy spectral reflectance [9,10]. This study compared the accuracy of monitoring LAI by using the spectral reflectance that measured the entire canopy and those canopies with panicles removed, and proposed a convenient method to removal of the effect of panicles on canopy reflectance and to enhance the prediction accuracy of LAI after heading stage of rice.
机译:叶面积指数(LAI)作为重要的表征参数,反映了农作物的冠层结构特征。它通常用于估计树叶覆盖率以及预测作物生长和单产[1,2,3]。由于LAI在功能上与冠层光谱反射率相关,因此从遥感数据中检索LAI促使了近年来的许多研究。普遍且广泛使用的方法是建立地面测量的LAI与植被指数之间的关系[1,4,5]。这些植被指数在作物生长的早期阶段表现良好,但估计精度在生育后期尤其是抽穗期后大大降低。使用这些指数的主要问题来自冠层反射率这一事实,它强烈取决于冠层的结构和生化特性[6,7,8]。在作物生长的后期,穗改变了作物的冠层结构并影响了作物冠层的光谱反射率[9,10]。本研究通过测量整个冠层和去除穗的冠层的光谱反射率,比较了监测LAI的准确性,并提出了一种方便的方法来消除穗对冠层反射率的影响,并提高航向后LAI的预测精度水稻的阶段。

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