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A Bayesian object-based approach for estimating vegetation biophysical and biochemical variables from APEX at-sensor radiance data

机译:一种基于贝叶斯对象的方法,可从APEX传感器辐射数据估算植被生物物理和生化变量

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Vegetation variables such as leaf area index (LAI) and leaf chlorophyll content (Cab) are important inputs for vegetation growth models. LAI and Cab can be estimated from remote sensing data using either empirical or physically-based approaches. The latter are more generally applicable because they can easily be adapted to different sensors, acquisition geometries, and vegetation types. They estimate vegetation variables through inversion of radiative transfer models. Such inversions are ill-posed but can be regularized by coupling models, by using a priori information, and spatial and/or temporal constraints. Striving to improve the accuracy of LAI and Cab estimates from single remote sensing images, this contribution proposes a Bayesian object-based approach to invert at-sensor radiance data, combining the strengths of regularization by model coupling, as well as using a priori data and object-level spatial constraints. The approach was applied to a study area consisting of homogeneous agricultural fields, which were used as objects for applying the spatial constraints. LAI and Cab were estimated from at-sensor radiance data of the Airborne Prism Experiment (APEX) imaging spectrometer by inverting the coupled SLC-MODTRAN4 canopy-atmosphere model. The estimation was implemented in two steps. In the first step, up to six variables were estimated for each object using a Bayesian optimization algorithm. In the second step, a look-up-table (LUT) was built for each object with only LAI and Cab as free variables, constraining the values of all other variables to the values obtained in the first step. The results indicated that the Bayesian object-based approach estimated LAI more accurately (R~2 = 0.45 and RMSE = 1.0) than a LUT with a Bayesian cost function (LUT-BCF) approach (R2 = 0.22 and RIVISE = 2.1),and Cab with a smaller absolute bias (- 9 versus - 23 μg/cm~2). The results of this study are an important contribution to further improve the regularization of ill-posed RT model inversions. The proposed approach allows reducing uncertainties of estimated vegetation variables, which is essential to support various environmental applications. The definition of objects and a priori data in cases where less extensive ground data are available, as well as the definition of the observation covariance matrix, are critical issues which require further research.
机译:诸如叶面积指数(LAI)和叶绿素含量(Cab)之类的植被变量是植被生长模型的重要输入。可以使用基于经验的方法或基于物理的方法从遥感数据中估算出LAI和Cab。后者更通用,因为它们可以轻松地适应不同的传感器,采集几何形状和植被类型。他们通过辐射传递模型的反演来估算植被变量。这样的反演是不适当的,但是可以通过使用先验信息以及空间和/或时间约束通过耦合模型进行正则化。为了提高单幅遥感影像中LAI和Cab估计的准确性,该研究成果提出了一种基于贝叶斯对象的方法来反转传感器辐射度数据,结合了通过模型耦合进行正则化的强度,以及使用先验数据和对象级空间约束。该方法被应用于由均质农田组成的研究区域,这些农田被用作施加空间约束的对象。通过反转耦合的SLC-MODTRAN4冠层-大气模型,从机载棱镜实验(APEX)成像光谱仪的传感器辐射数据估算LAI和Cab。估算分两个步骤实施。第一步,使用贝叶斯优化算法为每个对象估计多达六个变量。第二步,为每个对象建立一个查找表(LUT),仅将LAI和Cab作为自由变量,将所有其他变量的值约束为第一步中获得的值。结果表明,与采用贝叶斯成本函数(LUT-BCF)方法的LUT(R2 = 0.22和RIVISE = 2.1)相比,基于贝叶斯的基于对象的方法更准确地估计LAI(R〜2 = 0.45和RMSE = 1.0),并且驾驶室的绝对偏差较小(-9对-23μg/ cm〜2)。这项研究的结果为进一步改善不适定RT模型反演的正则化做出了重要贡献。提议的方法可以减少估计的植被变量的不确定性,这对于支持各种环境应用至关重要。在缺乏较广泛的地面数据的情况下,对象的定义和先验数据以及观测协方差矩阵的定义是需要进一步研究的关键问题。

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