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Geostatistical Spatio-Temporal Modeling of Landscape Spatial Heterogeneity

机译:景观空间异质性的地统计时空建模

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This study provides a new approach to characterize the spatial structures within high spatial resolution (~20m) remote sensing imagery as the weighted linear combination of two stochastic models: a Poisson line mosaic model and a multi-Gaussian model. We first apply this approach to describe the nature of the processes structuring distinct types of landscape. We show that the mosaic model is an indicator of strong NDVI discontinuities within the image,mainly generated by anthropogenic processes such as the mosaic pattern of agricultural site. The multi-Gaussian model shows evidence of diffuse and continuous variation of NDVI over natural vegetation and forest sites,generally engendered by ecological and environmental processes. We implement a method based on the simultaneous use of the first- and second-order variograms to distinguish between the multi-Gaussian and the mosaic model,and to retrieve the fraction of the image variance explained by each model. The second part of this paper consists in applying the previous stochastic models to a series of remote sensing images taken at a single site for modeling the temporal variations in surface spatial heterogeneity observed over an agricultural site. We build a model describing the temporal course of the image second-order variogram as a function of crop seasonality. Once calibrated from a temporal sampling of few high spatial resolution scenes,this model proves to be powerful to predict the second-order variogram at a date at which the high spatial resolution scene is not available,and thus to retrieve the spatial heterogeneity within an area of ~1km through the seasonal cycle with a mean relative accuracy of 20%.
机译:这项研究提供了一种新的方法来表征高空间分辨率(〜20m)遥感影像中的空间结构,这是两种随机模型(泊松线镶嵌模型和多高斯模型)的加权线性组合。我们首先应用这种方法来描述构造不同类型景观的过程的性质。我们表明,镶嵌模型是图像中强烈的NDVI不连续性的指标,主要是由人为过程(例如农业地点的镶嵌图案)产生的。多高斯模型显示了NDVI在自然植被和森林地带的扩散和连续变化的证据,通常是生态和环境过程造成的。我们基于同时使用一阶和二阶变异函数来实现一种方法,以区分多高斯模型和镶嵌模型,并检索每个模型解释的图像变异分数。本文的第二部分包括将以前的随机模型应用于在单个站点上拍摄的一系列遥感图像,以对在农业站点上观察到的表面空间异质性的时间变化建模。我们建立了一个模型,将图像二阶变异函数的时间过程描述为作物季节性的函数。一旦从少数几个高空间分辨率场景的时间采样中进行了校准,该模型就证明了在高空间分辨率场景不可用的日期预测二阶变异函数的强大功能,从而可以检索区域内的空间异质性。在整个季节周期内约1公里,平均相对准确度为20%。

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