首页> 外文期刊>International journal of applied earth observation and geoinformation >Retrieval of wheat leaf area index from AWiFS multispectral data using canopy radiative transfer simulation
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Retrieval of wheat leaf area index from AWiFS multispectral data using canopy radiative transfer simulation

机译:利用冠层辐射传输模拟从AWiFS多光谱数据中检索小麦叶面积指数

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Accurate representation of leaf area index (LAI) from high resolution satellite observations is obligatory for various modelling exercises and predicting the precise farm productivity. Present study compared the two retrieval approach based on canopy radiative transfer (CRT) method and empirical method using four vegetation indices (VI) (e.g. NDVI, NDWI, RVI and GNDVI) to estimate the wheat LAI. Reflectance observations available at very high (56m) spatial resolution from Advanced Wide-Field Sensor (AWiFS) sensor onboard Indian Remote Sensing (IRS) P6, Re source sat-1 satellite was used in this study. This study was performed over two different wheat growing regions, situated in different agro-climatic settings/environments: Trans-Gangetic Plain Region (TGPR) and Central Plateau and Hill Region (CPHR). Forward simulation of canopy reflectances in four AWiFS bands viz. green (0.52-0.59 μm), red (0.62-0.68 μm), NIR (0.77-0.86 μm) and SWIR (1.55-1.70 μm) were carried out to generate the look up table (LUT) using CRT model PROSAIL from all combinations of canopy intrinsic variables. An inversion technique based on minimization of cost function was used to retrieve LAI from LUT and observed AWiFS surface reflectances. Two consecutive wheat growing seasons (November 2005-March 2006 and November 2006-March 2007) datasets were used in this study. The empirical models were developed from first season data and second growing season data used for validation. Among all the models, LAI-NDVI empirical model showed the least RMSE (root mean square error) of 0.54 and 0.51 in both agro-climatic regions respectively. The comparison of PROSAIL retrieved LAI with in situ measurements of 2006-2007 over the two agro-climatic regions produced substantially less RMSE of 0.34 and 0.41 having more R~2 of 0.91 and 0.95 for TGPR and CPHR respectively in comparison to empirical models. Moreover, CRT retrieved LAI had less value of errors in all the LAI classes contrary to empirical estimates. The PROSAIL based retrieval has potential for operational implementation to determine the regional crop LAI and can be extendible to other regions after rigorous validation exercise.
机译:从高分辨率的卫星观测中准确地表示出叶面积指数(LAI),对于各种建模练习和预测精确的农场生产力都是必不可少的。目前的研究比较了两种基于冠层辐射传输(CRT)方法和经验方法的检索方法,并使用四个植被指数(VI)(例如NDVI,NDWI,RVI和GNDVI)来估算小麦的LAI。这项研究使用了印度遥感(IRS)P6,Resource sat-1卫星上的高级宽场传感器(AWiFS)传感器以非常高(56m)的空间分辨率获得的反射率观测结果。这项研究是在两个不同的小麦生长地区进行的,这些地区位于不同的农业气候环境/环境中:跨恒河平原地区(TGPR)和中部高原和丘陵地区(CPHR)。对四个AWiFS波段中的冠层反射率进行正向模拟,即。使用CRT模型PROSAIL从所有组合中进行了绿色(0.52-0.59μm),红色(0.62-0.68μm),NIR(0.77-0.86μm)和SWIR(1.55-1.70μm)生成查找表(LUT)冠层内在变量。使用基于成本函数最小化的反演技术从LUT中检索LAI并观察到AWiFS表面反射率。本研究使用了两个连续的小麦生长期(2005年11月至2006年3月以及2006年11月至2007年3月)。实证模型是根据用于验证的第一季数据和第二季生长数据开发的。在所有模型中,LAI-NDVI经验模型在两个农业气候区的最小RMSE(均方根误差)分别为0.54和0.51。与经验模型相比,在两个农业气候区域对PROSAIL取回的LAI与2006-2007年的原位测量结果进行比较,得出TGPR和CPHR的RMSE分别为0.34和0.41显着降低,R〜2分别为0.91和0.95。而且,与经验估计相反,CRT检索到的LAI在所有LAI类中的错误价值均较小。基于PROSAIL的检索具有用于实施操作以确定区域作物LAI的潜力,并且在经过严格的验证后可以扩展到其他区域。

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