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A priori evaluation of two-stage cluster sampling for accuracy assessment of large-area land-cover maps

机译:两阶段整群抽样的先验评估,用于大面积土地覆盖图的准确性评估

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摘要

Two-stage cluster sampling reduces the cost of collecting accuracy assessment reference data by constraining sample elements to fall within a limited number of geographic domains (clusters). However, because classification error is typically positively spatially, correlated, within-cluster correlation may reduce the precision of the accuracy estimates. The detailed population information to quantify a priori the effect of within-cluster correlation on precision is typically unavailable. Consequently, a convenient, practical approach to evaluate the likely performance of a two-stage cluster sample is needed. We describe such an a priori evaluation protocol focusing on the spatial distribution of the sample by land-cover class across different cluster sizes and costs of different sampling options, including options not imposing clustering. This protocol also assesses the two-stage design's adequacy for estimating the precision of accuracy estimates for rare land-cover classes. We illustrate the approach using two large-area, regional accuracy assessments from the National Land-Cover Data (NLCD), and describe how the a priori evaluation was used as a decision-making tool when implementing the NLCD design.
机译:通过将样本元素限制在有限数量的地理域(集群)内,两阶段聚类抽样降低了收集准确性评估参考数据的成本。但是,由于分类误差通常在空间上呈正相关,因此,集群内相关可能会降低准确性估计的精度。通常无法获得详细的群体信息来量化集群内相关性对精度的先验影响。因此,需要一种方便实用的方法来评估两阶段聚类样本的可能性能。我们描述了这样一个先验评估协议,该协议着重于按土地覆盖类别划分的样本在不同聚类大小和不同采样选项(包括不施加聚类的选项)的成本上的空间分布。该协议还评估了两阶段设计的适用性,以评估稀有土地覆盖类别的准确性估算的精度。我们使用来自国家土地覆盖数据(NLCD)的两个大区域区域精度评估来说明该方法,并描述在实施NLCD设计时如何将先验评估用作决策工具。

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