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A global land-cover validation data set, II: augmenting a stratified sampling design to estimate accuracy by region and land-cover class

机译:全球土地覆盖物验证数据集,II:增加分层抽样设计以按区域和土地覆盖物类别估算准确性

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摘要

A global validation database that can be used to assess the accuracy of multiple global and regional land-cover maps would yield significant cost savings and enhance comparisons of accuracy of different maps. Because the global validation database should expand over time as new validation data are contributed, the sampling design must be constructed so that it is simple to increase the sample size from a specific region (e.g. a continent or country) or from targeted land-cover classes to improve standard errors of the accuracy estimates. Stratified random sampling provides the desired adaptability to augment a sample to address regional or class-specific accuracy objectives. The proposed global validation database will be initiated from a baseline global stratified sample and then this baseline sample will be augmented to address accuracy objectives related to a specific map or region. The strata are constructed from a modified Koppen climate classification and population density. The theory and formulas for estimating accuracy from the combined baseline and augmented stratified samples are presented, and an example application is provided in which the regional accuracy of a land-cover map is assessed. The stratification used for the baseline global sample is retained when the augmented sample is subsequently selected. Alternatively, it is possible to 'restrat-ify' the design so that the land-cover classes of a particular map are used as strata when selecting an augmented sample. The protocol for restratifying the design is presented, but the complexity of this option makes it less practical than retaining the initial strata when selecting an augmented sample.
机译:可用于评估多个全球和区域土地覆盖图的准确性的全球验证数据库将节省大量成本,并增强不同图的准确性的比较。由于随着新的验证数据的提供,全球验证数据库应随着时间的推移而扩展,因此必须设计采样设计,以便轻松地从特定区域(例如,大洲或国家)或目标土地覆盖类别中增加样本量改善准确性估算的标准误差。分层随机抽样可提供所需的适应性,以增加样本以解决区域或特定类别的精度目标。拟议的全球验证数据库将从基线的全球分层样本开始,然后将该基线样本进行扩充,以解决与特定地图或区域相关的准确性目标。地层是根据修改后的科彭气候分类和人口密度构建的。提出了从组合基线和扩展分层样本中估算精度的理论和公式,并提供了一个示例应用程序,其中评估了土地覆盖图的区域精度。随后选择增强样本时,将保留用于基准全局样本的分层。或者,可以“重新定型”设计,以便在选择扩充样本时将特定地图的土地覆盖类别用作地层。提出了重新验证设计的协议,但是此选项的复杂性使其与选择扩展样本时保留初始层相比不实用。

著录项

  • 来源
    《International journal of remote sensing》 |2012年第22期|p.6975-6993|共19页
  • 作者单位

    College of Environmental Science and Forestry, State University of New York, Syracuse, NY 13210, USA;

    Department of Geography and Environment, Boston University, Boston, MA 02215, USA;

    Department of Geography and Environment, Boston University, Boston, MA 02215, USA;

    Department of Environmental Science, Centre for Geoinformation, Wageningen University, 6708 PB Wageningen, The Netherlands;

    Department of Geography and Environment, Boston University, Boston, MA 02215, USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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