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Positional Accuracy of Spatial Data: Non-Normal Distributions and a Critique of the National Standard for Spatial Data Accuracy

机译:空间数据的位置精度:非正态分布和对空间数据精度国家标准的批评

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摘要

Spatial data quality is a paramount concern in all GIS applications. Existing spatial data accuracy standards, including the National Standard for Spatial Data Accuracy (NSSDA) used in the United States, commonly assume the positional error of spatial data is normally distributed. This research has characterized the distribution of the positional error in four types of spatial data: GPS locations, street geocoding, TIGER roads, and LIDAR elevation data. The positional error in GPS locations can be approximated with a Rayleigh distribution, the positional error in street geocoding and TIGER roads can be approximated with a log-normal distribution, and the positional error in LIDAR elevation data can be approximated with a normal distribution of the original vertical error values after removal of a small number of outliers. For all four data types considered, however, these solutions are only approximations, and some evidence of non-stationary behavior resulting in lack of normality was observed in all four datasets. Monte-Carlo simulation of the robustness of accuracy statistics revealed that the conventional 100% Root Mean Square Error (RMSE) statistic is not reliable for non-normal distributions. Some degree of data trimming is recommended through the use of 90% and 95% RMSE statistics. Percentiles, however, are not very robust as single positional accuracy statistics. The non-normal distribution of positional errors in spatial data has implications for spatial data accuracy standards and error propagation modeling. Specific recommendations are formulated for revisions of the NSSDA.
机译:在所有GIS应用程序中,空间数据质量都是至关重要的。现有的空间数据准确性标准,包括在美国使用的国家空间数据准确性国家标准(NSSDA),通常假定空间数据的位置误差是正态分布的。这项研究已经表征了四种类型的空间数据中的位置误差分布:GPS位置,街道地理编码,TIGER道路和LIDAR高程数据。 GPS位置中的位置误差可以通过瑞利分布来近似,街道地理编码和TIGER道路中的位置误差可以通过对数正态分布来近似,LIDAR高程数据中的位置误差可以通过正态分布来近似。去除少量异常值后的原始垂直误差值。但是,对于所考虑的所有四个数据类型,这些解决方案仅是近似值,并且在所有四个数据集中均观察到一些非平稳行为导致缺乏正态性的证据。准确性统计数据的鲁棒性的蒙特卡洛模拟显示,常规的100%均方根误差(RMSE)统计数据对于非正态分布不可靠。建议通过使用90%和95%的RMSE统计数据进行某种程度的数据修整。但是,百分位数作为单个位置精度统计数据不是很可靠。空间数据中位置误差的非正态分布对空间数据精度标准和误差传播建模具有影响。为修订NSSDA制定了具体建议。

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