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Multiscale Estimation of Leaf Area Index from Satellite Observations Based on an Ensemble Multiscale Filter

机译:基于集合多尺度滤波器的卫星观测叶面积指数多尺度估计

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Currently, multiple leaf area index (LAI) products retrieved from remote sensing data are widely used in crop growth monitoring, land-surface process simulation and studies of climate change. However, most LAI products are only retrieved from individual satellite observations, which may result in spatial-temporal discontinuities and low accuracy in these products. In this paper, a new method was developed to simultaneously retrieve multiscale LAI data from satellite observations with different spatial resolutions based on an ensemble multiscale filter (EnMsF). The LAI average values corresponding to the date of satellite observations were calculated from the multi-year Moderate Resolution Imaging Spectroradiometer (MODIS) LAI product and were used as a priori knowledge for LAI in order to construct an initial ensemble multiscale tree (EnMsT). Satellite observations obtained at different spatial resolutions were then applied to update the LAI values at each node of the EnMsT using a two-sweep filtering procedure. Next, the retrieved LAI values at the finest scale were used as a priori knowledge for LAI for the new round of construction and updating of the EnMsT, until the sum of the difference of LAI values at each node of the EnMsT between two adjacent updates is less than a given threshold. The method was tested using Thematic Mapper (TM) or Enhanced Thematic Mapper Plus (ETM+) surface reflectance data and MODIS surface reflectance data from five sites that have different vegetation types. The results demonstrate that the retrieved LAI values for each spatial resolution were in good agreement with the aggregated LAI reference map values for the corresponding spatial resolution. The retrieved LAI values at the coarsest scale provided better accuracy with the aggregated LAI reference map values (root mean square error (RMSE) = 0.45) compared with that obtained from the MODIS LAI values (RMSE = 1.30).
机译:当前,从遥感数据中检索到的多叶面积指数(LAI)产品被广泛用于作物生长监测,土地表面过程模拟和气候变化研究。但是,大多数LAI产品仅从单个卫星观测中获取,这可能导致这些产品的时空不连续性和较低的准确性。在本文中,开发了一种新方法,该方法基于集合多尺度滤波器(EnMsF)同时从具有不同空间分辨率的卫星观测中同时检索多尺度LAI数据。从多年的中分辨率成像光谱仪(MODIS)LAI产品计算出与卫星观测日期相对应的LAI平均值,并将其用作LAI的先验知识,以构建初始整体多尺度树(EnMsT)。然后,采用两次扫描滤波程序,将以不同空间分辨率获得的卫星观测结果应用于更新EnMsT各个节点处的LAI值。接下来,将获得的最佳规模的LAI值用作LAI的先验知识,以进行新一轮的EnMsT构建和更新,直到两次相邻更新之间EnMsT的每个节点处的LAI值之和为小于给定的阈值。使用主题映射器(TM)或增强型主题映射器Plus(ETM +)的表面反射率数据和来自五个具有不同植被类型的地点的MODIS表面反射率数据对方法进行了测试。结果表明,每种空间分辨率的检索到的LAI值与相应空间分辨率的聚合LAI参考图值相吻合。与从MODIS LAI值(RMSE = 1.30)得出的结果相比,以最粗糙的尺度检索到的LAI值在汇总的LAI参考图值(均方根误差(RMSE)= 0.45)的情况下具有更高的准确性。

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