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Estimation of planted forest leaf area index from TM imagery using the algorithm based on geometric-optical model

机译:基于几何光学模型的算法估计TM图像的种植林叶区指数

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Global leaf area index (LAI) products such as MODIS LAI product et al. have relatively low spatial resolution (250m–7km) and can not meet the needs of high spatial resolution remote sensing applications. Therefore, it is necessary to explore the feasibility of the algorithm based on physical model for LAI retrieval using high spatial resolution remote sensing imagery. This study utilized the algorithm based on Four-scale model to derive LAI in planted forest from TM imagery. A set of land cover type dependent relationships between LAI and Simple Ratio (SR) are provided for various solar and view anlges. Bidirectional reflectance distribution function (BRDF) and clumping representation at canopy scale are both considered in the algorithm. The empirical model using NDVI as predicted variable is also considered for LAI estimation. A validation study was conducted with in-situ measurements of LAI in planted forest from Zhangye, Gansu province. Better accuracy in LAI prediction was observed from the inversion algorithm based on Four-scale model (R2=0.67, RMSE=0.50) than that from NDVI (R2=0.59, RMSE=0.67) compared with measured LAI, especially when LAI > 2.00. Moreover, the sensitivity analysis of inversed LAI to bands reflectance was carried out. LAI was more sensitive to reflectance at red band (ρred) than that at near infrared band (ρnir), with uncertainty value of reflectance range from −10% to −30%. This study prove the effectiveness of the algorithm based on Four-scale model in LAI estimation from TM imagery in planted forest and will be helpful in further developing physical models for high spatial resolution LAI retrieval.
机译:全球叶面积指数(LAI)产品如Modis Lai Product等。空间分辨率(250m-7km)具有相对较低的空间分辨率,不能满足高空间分辨率遥感应用的需求。因此,有必要使用高空间分辨率遥感图像基于LAI检索物理模型来探讨算法的可行性。本研究利用了基于四尺度模型的算法,从TM图像中衍生出林林。为各种太阳能和视图轴提供了一组LAI与简单比(SR)之间的覆盖型依赖关系。在算法中考虑双向反射率分布函数(BRDF)和Clumping表示。还考虑了使用NDVI作为预测变量的经验模型进行赖估计。在甘肃省张掖的林林中采用赖特的原位测量进行了验证研究。从基于四尺度模型(R 2 = 0.67,RMSE = 0.50)的反转算法观察到LAI预测中的更好的精度(R 2 = 0.59 ,RMSE = 0.67)与测量的LAI相比,特别是当LAI> 2.00时。此外,进行了反思赖频反射率的敏感性分析。 Lai对红色带(ρred)的反射率更敏感,而不是近红外带(ρnir),反射率的不确定值范围为-10%至-30%。本研究证明了基于TM Imagery在种植林中TM Imagery中的四尺度模型的算法的有效性,并将有助于进一步开发高空间分辨率Lai检索的物理模型。

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