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Improving the estimation of leaf area index from multispectral remotely sensed data.

机译:从多光谱遥感数据改进叶面积指数的估计。

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Leaf Area Index (LAI) is an important structural property of surface vegetation. Many algorithms use LAI in regional and global biogeochemical, ecological, and meteorological applications. This dissertation reports several new, improved methods to estimate LAI from remotely sensed data.; To improve LAI estimation, a new atmospheric correction algorithm was developed for the Enhanced Thematic Mapper Plus (ETM+) imagery. It can effectively estimate the spatial distribution of atmospheric aerosols and retrieve surface reflectance under general atmospheric and surface conditions. This method was validated using ground measurements at Beltsville, Maryland. Several examples are given to correct AVIRIS (Airborne Visible/Infrared Imaging Spectrometer), MODIS (Moderate Resolution Imaging Spectroradiometer) and SeaWiFS (Sea-viewing Wide Field-of-view Sensor) data using the new algorithm.; Next, a genetic algorithm (GA) was incorporated into the optimization process of radiative transfer (RT) model inversion for LAI retrieval. Different ETM+ band combinations and the number of “genes” employed in the GA were examined to evaluate their effectiveness. The LAI estimates from ETM+ using this method were reasonably accurate when compared with field measured LAI.; A new hybrid method, which integrates both the RT model simulation and the nonparametric statistical methods, was developed to estimate LAI. Two non-parametric methods were applied, the neural network ((NN) algorithms and the projection pursuit regression (PPR) algorithms. A soil reflectance index (SRI) was proposed to account for variable soil background reflectances. Both atmospherically corrected surface reflectances and raw top-of-atmosphere (TOA) radiances from ETM+ were tested. It was found that the best way to estimate LAI was to use the red and near infrared band combination of surface reflectance. In an application of this hybrid method to MODIS, the PPR and NN methods were compared. MODIS LAI standard products (MOD 15) were found to have larger values than my results in the study area.
机译:叶面积指数(LAI)是表层植被的重要结构性质。许多算法在区域和全球生物地球化学,生态和气象应用中使用LAI。本文报告了几种从遥感数据估计LAI的改进方法。为了改善LAI估算,针对增强型主题映射器Plus(ETM +)图像开发了一种新的大气校正算法。它可以有效地估计大气气溶胶的空间分布,并在一般大气和地面条件下获取表面反射率。使用马里兰州贝尔茨维尔的地面测量方法对该方法进行了验证。给出了使用新算法校正AVIRIS(机载可见/红外成像光谱仪),MODIS(中分辨率成像光谱仪)和SeaWiFS(海景宽视场传感器)数据的示例。接下来,将遗传算法(GA)纳入了用于LAI检索的辐射传递(RT)模型反演的优化过程。检查了GA中使用的不同ETM +频段组合和“基因”的数量,以评估其有效性。与现场测量的LAI相比,使用此方法从ETM +获得的LAI估算值相当准确。开发了一种新的混合方法,将RT模型仿真和非参数统计方法相结合,以估计LAI。应用了两种非参数方法,即神经网络算法和投影寻踪回归算法,提出了一种土壤反射率指数 SRI 来解决土壤背景反射率的变化问题。测试了大气校正的表面反射率和ETM +的原始大气顶(TOA)辐射,发现估计LAI的最佳方法是使用表面反射率的红色和近红外波段组合。将MODIS混合方法与PDIS和NN方法进行了比较,发现MODIS LAI标准产品(MOD 15)具有比我在研究区域中的结果更大的价值。

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