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A Directional Gradient-Curvature method for gap filling of gridded environmental spatial data with potentially anisotropic correlations

机译:方向梯度曲率法用于具有潜在各向异性相关性的网格环境空间数据的填充

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摘要

We introduce the Directional Gradient-Curvature (DGC) method, a novel approach for filling gaps in gridded environmental data. DGC is based on an objective function that measures the distance between the directionally segregated normalized squared gradient and curvature energies of the sample and entire domain data. DGC employs data-conditioned simulations, which sample the local minima configuration space of the objective function instead of the full conditional probability density function. Anisotropy and non-stationarity can be captured by the local constraints and the direction-dependent global constraints. DGC is computationally efficient and requires minimal user input, making it suitable for automated processing of large (e.g., remotely sensed) spatial data sets. Various effects are investigated on synthetic data. The gap-filling performance of DGC is assessed in comparison with established classification and interpolation methods using synthetic and real satellite data, including a skewed distribution of daily column ozone values. It is shown that DGC is competitive in terms of cross validation performance.
机译:我们介绍了方向梯度曲率(DGC)方法,这是一种用于填补网格化环境数据中缺口的新颖方法。 DGC基于目标函数,该目标函数可测量样本与整个域数据的方向分离的归一化平方梯度和曲率能量之间的距离。 DGC使用数据条件模拟,该模拟对目标函数的局部最小配置空间进行采样,而不是对整个条件概率密度函数进行采样。各向异性和非平稳性可以通过局部约束和与方向相关的全局约束来捕获。 DGC计算效率高,需要最少的用户输入,使其适用于大型(例如,遥感)空间数据集的自动处理。研究了对综合数据的各种影响。与已建立的分类和插值方法相比,使用合成和真实卫星数据(包括每日柱上臭氧值的偏斜分布)对DGC的填充性能进行了评估。结果表明,DGC在交叉验证性能方面具有竞争力。

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