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Multivariate quantification of landscape spatial heterogeneity using variogram models

机译:利用变异函数模型对景观空间异质性进行多变量量化

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摘要

The monitoring of earth surface processes at a global scale requires high temporal frequency remote sensing observations provided up to now by moderate spatial resolution sensors (from 250 m to 7 kin). Non-linear estimation processes of land surface variables derived from remote sensing data can be biased by the surface spatial heterogeneity within the moderate spatial resolution pixel. Quantifying this surface spatial heterogeneity is thus required to correct non-linear estimation processes of land surface variables. The first step in this process is to properly characterize the scale of spatial variation of the processes structuring the landscape. Since the description of land surface processes generally involves various spectral bands, a multivariate approach to characterize the surface spatial heterogeneity from multi-spectral remote sensing observations has to be established. This work aims at quantifying the landscape spatial heterogeneity captured by red and near infrared high spatial resolution images using direct and cross-variograms modeled together with the geostatistical linear model of coregionalization. This model quantifies the overall spatial variability and correlation of red and near infrared reflectances over the scene. In addition, it provides an explicit understanding of the landscape spatial structures captured by red and near infrared reflectances and is thus appropriate to describe landscapes composed of areas with contrasted red and near infrared spectral properties. The application of the linear model of coregionalization to 18 contrasted landscapes provides a spatial signature of red and near infrared spectral properties characterizing each type of landscape. Low vegetation cover sites are characterized by positive spatial correlation between red and near infrared. The mosaic pattern of vegetation fields and bare soil fields over crop sites generates high and negative spatial correlation between red and near infrared and increases the spatial variability of red and near infrared. On forest sites, the important amount of vegetation limits the spatial variability of red and the shadow effects mainly captured by near infrared induce a low and positive spatial correlation between red and near infrared. Finally, the linear model of coregionalization applied to red and near infrared is shown to be more powerful than the univariate variogram modeling applied to NDVI because the second order stationarity hypothesis on which variogram modeling relies is more frequently verified for red and near infrared than for NDVI. (C) 2007 Elsevier Inc. All rights reserved.
机译:在全球范围内对地表过程的监视需要中度空间分辨率传感器(从250 m至7 kin)提供的高时频遥感观测。源自遥感数据的陆地表面变量的非线性估计过程可能会受到中等空间分辨率像素内的表面空间异质性的影响。因此,需要对这种表面空间异质性进行量化,以校正陆地表面变量的非线性估计过程。此过程的第一步是正确表征构成景观的过程的空间变化程度。由于陆地表面过程的描述通常涉及各种光谱带,因此必须建立一种从多光谱遥感观测中表征表面空间异质性的多元方法。这项工作旨在使用直接和交叉变异函数以及共分区的地统计线性模型对量化的红色和近红外高分辨率空间图像捕获的景观空间异质性进行量化。该模型量化了整个场景的整体空间变异性以及红色和近红外反射率的相关性。另外,它提供了对由红色和近红外反射率捕获的景观空间结构的清晰理解,因此适合描述由具有对比的红色和近红外光谱特性的区域组成的景观。将共分区线性模型应用到18个对比的景观中,可提供表征每种景观的红色和近红外光谱特性的空间特征。植被覆盖率低的特点是红色和近红外之间存在正空间相关性。作物地上的植被场和裸露的土壤场的马赛克图案在红色和近红外之间产生高负相关的空间关系,并增加红色和近红外的空间变异性。在森林地区,大量的植被限制了红色的空间变异性,并且主要由近红外捕获的阴影效应导致红色和近红外之间的空间正相关性较低。最后,显示应用于红色和近红外的共分区线性模型比应用于NDVI的单变量变异函数模型更强大,因为红色和近红外比NDVI更频繁地验证了变异函数模型所依赖的二阶平稳性假设。 (C)2007 Elsevier Inc.保留所有权利。

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