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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Spatial structure and landscape associations of SRTM error
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Spatial structure and landscape associations of SRTM error

机译:SRTM错误的空间结构和景观关联

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This paper evaluates the spatial structure of Shuttle Radar Topography Mission (SRTM) error and its associations with globally available topographic and land cover variables across a wide range of landscapes. Two continental-scale SRTM elevation data samples were extracted, along with collocated National Elevation Dataset (NED) elevations, MODIS composite forest cover percentage, and global ecoregion major habitat type codes. The larger punctual sample contained nearly 247,000 sites on a regular grid across the conterminous United States, while the smaller areal sample consisted of 37,500 45″×45″ rectangular regions on a regular grid. Sub-pixel positional mismatch was accounted for by finding and using the best local fit between the 1 arc sec horizontal resolution NED product and the 3 arc sec (3″) horizontal resolution SRTM product. Slope and aspect were calculated for all samples. Using the larger point sample, we identified associations between SRTM error, defined as NED-SRTM 3″ differences, with these land cover and terrain derivative variables. Using the areal sample, we developed semivariograms of elevation error for tens of thousands of small regions across the United States, as well as for sets of these regions with common slope and landcover properties. This facilitated a more comprehensive evaluation of the spatial structure of SRTM error than has previously been done. The punctual sample RMSE was 8.6. m, conforming to previous estimates of SRTM error, but many errors in excess of 50 m were identified. Nearly 90% of these large errors were positive and correlated with high forest cover percentage. Overall, SRTM elevations consistently overestimated the surface. Forest cover and slope were positively correlated with positive bias. A strong association of aspect with SRTM error was noted, with positive error magnitudes peaking for aspects oriented to the northwest and negative error magnitudes peaking for slopes facing southeast. Error bias, standard deviation, and semivariograms differed substantially across ecoregion types. These variables were incorporated in a regression model to predict SRTM error: this model explained nearly 60% of the total error variation and has the potential to substantially improve the SRTM data product worldwide using globally available datasets.
机译:本文评估了航天飞机雷达地形任务(SRTM)误差的空间结构,以及它与各种景观中全球可用的地形和土地覆盖变量之间的关系。提取了两个大陆规模的SRTM高程数据样本,以及并置的国家高程数据集(NED)高程,MODIS复合森林覆盖率和全球生态区主要栖息地类型代码。较大的点状样本在整个美国范围内的规则网格上包含近247,000个位置,而较小的面积样本由常规网格上的37,500个45“×45”矩形区域组成。通过找到并使用1弧秒水平分辨率NED产品和3弧秒(3“)水平分辨率SRTM产品之间的最佳局部拟合来解决亚像素位置不匹配的问题。计算所有样品的斜率和纵横比。使用较大的点样本,我们确定了SRTM误差(定义为NED-SRTM 3“差异)与这些土地覆被和地形导数变量之间的关联。使用面积样本,我们开发了美国成千上万个小区域以及具有共同坡度和土地覆盖属性的这些区域集的高程误差半变异函数。与以前相比,这有助于更全面地评估SRTM错误的空间结构。准时样本RMSE为8.6。 m,符合先前对SRTM误差的估计,但是发现了许多超过50 m的误差。这些大错误中有将近90%为正,并与森林覆盖率高有关。总体而言,SRTM高程始终高估了地面。森林覆盖率和坡度与正偏差呈正相关。注意到方面与SRTM误差有很强的关联,朝西北方向的方面正误差幅度达到峰值,而面向东南的斜坡则出现负误差幅度达到峰值。误差偏倚,标准差和半变异函数在不同的生态区域类型之间存在很大差异。将这些变量合并到回归模型中以预测SRTM错误:此模型可解释近60%的总误差变化,并具有使用全球可用的数据集显着改善全球SRTM数据产品的潜力。

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