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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Multiscale analysis and validation of the MODIS LAI product - II: sampling strategy
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Multiscale analysis and validation of the MODIS LAI product - II: sampling strategy

机译:MODIS LAI产品的多尺度分析和验证-II:抽样策略

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The development of appropriate ground-based validation techniques is critical to assessing uncertainties associated with satellite databased products. In this paper, the second of a two-pan series, we present a method for validation of the Moderate Resolution Imaging Spectroradiometer Leaf Area Index (MODIS LAI) product with emphasis on the sampling strategy for field data collection. Using a hierarchical scene model, we divided 30-m resolution LAI and NDVI images from Maun (Botswarta), Harvard Forest (USA) and Ruokulahti Forest (Finland) into individual scale images of classes, region and pixel. Isolating the effects associated with different landscape scales through decomposition of semivariograms not only shows the relative contribution of different characteristic scales to the overall variation, but also displays the spatial structure of the different scales within a scene. We find that (1) patterns of variance at the class, region and pixel scale at these sites are different with respect to the dominance in order of the three levels of landscape organization within a scene; (2) the spatial structure of LAI shows similarity across the three sites, that is, ranges of semivariograms from scale of pixel, region and class are less than 1000 m. Knowledge gained from these analyses aids in formulation of sampling strategies for validation of biophysical products derived from moderate resolution sensors such as MODIS. For a homogeneous (within class) site, where the scales of class and region account for most of the spatial variation, a sampling strategy should focus more on using accurate land cover maps and selection of regions. However, for a heterogeneous (within class) site, accurate point measurements and GPS readings are needed.
机译:适当的地面验证技术的发展对于评估与卫星数据库产品相关的不确定性至关重要。在本文中,这是两部分平皿系列的第二部分,我们提出了一种验证中分辨率成像光谱仪叶面积指数(MODIS LAI)产品的方法,重点是野外数据收集的采样策略。使用分层场景模型,我们将来自Maun(博茨瓦塔),哈佛森林(美国)和Ruokulahti森林(芬兰)的30米分辨率LAI和NDVI图像分为类别,区域和像素的单个比例图像。通过半变异函数的分解来隔离与不同景观尺度相关的影响,不仅可以显示不同特征尺度对整体变化的相对贡献,还可以显示场景中不同尺度的空间结构。我们发现(1)这些位置的类别,区域和像素尺度的方差格局在优势方面是不同的,按照场景内景观组织的三个层次的顺序; (2)LAI的空间结构在三个位置上表现出相似性,即半变异函数的像素,区域和类别的尺度范围小于1000 m。从这些分析中获得的知识有助于制定采样策略,以验证源自中等分辨率传感器(如MODIS)的生物物理产品。对于同质(类内)站点,其中类和区域的比例占大部分空间变化,采样策略应更多地集中在使用准确的土地覆盖图和区域选择上。但是,对于异构(类内)站点,需要精确的点测量和GPS读数。

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