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Sources of error in accuracy assessment of thematic land-cover maps in the Brazilian Amazon

机译:巴西亚马逊专题土地覆盖图准确性评估中的错误来源

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Valid measures of map accuracy are critical, yet can be inaccurate even when following well-established procedures. Accuracy assessment is particularly problematic when thematic classes lie along a land-cover continuum, and boundaries between classes are ambiguous. In this study, we examined error sources introduced during accuracy assessment of a regional land-cover map generated from Landsat Thematic Mapper (TM) data in Rondonia, southwestern Brazil. In this dynamic, highly fragmented landscape, the dominant land-cover classes represent a continuum from pasture to second growth to primary forest. We used high spatial resolution, geocoded videography as a reference, and focused on second-growth forest because of its potential contribution to the regional carbon balance. To quantify subjectivity in reference data labeling, we compared reference data produced by five trained interpreters. We also quantified the impact of other error sources, including geolocation errors between the map and reference data, land-cover changes between dates of data collection, heterogeneous reference samples, and edge pixels. Interpreters disagreed on classification of almost 30% of the samples; mixed reference samples and samples located in transitional classes accounted for a majority of disagreements. Agreement on second-growth forest labels between any two interpreters averaged below 50%, while agreement on primary forest was over 90%. Greater than 30% of disagreement between map and reference data was attributed to geolocation error, and 2.4% of disagreement was attributed to change in land cover between dates. After geocorrection, 24% of remaining disagreements corresponded to reference samples with mixed land cover, and 47%) corresponded to edge pixels on the classified map. These findings suggest that: (1) labels of continuous land-cover types are more subjective and variable than commonly assumed, especially for transitional classes; however, using multiple interpreters to produce the reference data classification increases reference data accuracy; and (2) validation data sets that include only non-mixed, non-edge samples are likely to result in overly optimistic accuracy estimates, not representative of the map as a whole. These results suggest that different regional estimates of second-growth extent may be inaccurate and difficult to compare.
机译:有效的地图准确度衡量至关重要,但即使遵循公认的程序,也可能不准确。当主题课程沿着土地覆盖的连续体分布,并且课程之间的界限不明确时,准确性评估尤其成问题。在这项研究中,我们研究了在巴西西南部朗多尼亚的Landsat Thematic Mapper(TM)数据生成的区域土地覆盖图的准确性评估期间引入的误差源。在这个动态,高度分散的景观中,主要的土地覆盖类别代表了从牧场到次生林再到原始森林的连续过程。我们使用高空间分辨率,经地理编码的摄影作为参考,并着眼于次生林,因为它对区域碳平衡具有潜在的贡献。为了量化参考数据标签中的主观性,我们比较了五名训练有素的口译员提供的参考数据。我们还量化了其他误差源的影响,包括地图和参考数据之间的地理位置误差,数据收集日期之间的土地覆被变化,异构参考样本和边缘像素。口译员不同意对将近30%的样本进行分类;混合参考样品和位于过渡类中的样品占大多数分歧。任意两名口译人员之间关于次生林标签的协议平均低于50%,而关于原始林的协议则超过90%。地图和参考数据之间的差异超过30%归因于地理位置误差,而数据差异的2.4%归因于日期之间的土地覆盖变化。经过地理校正后,剩余差异的24%对应于具有混合土地覆盖的参考样本,而47%的对应于分类地图上的边缘像素。这些发现表明:(1)连续土地覆盖类型的标签比通常的假设更具主观性和可变性,尤其是对于过渡性类别而言;但是,使用多个解释器来生成参考数据分类会提高参考数据的准确性; (2)仅包含非混合,非边缘样本的验证数据集可能会导致过于乐观的准确性估算,而不代表整个地图。这些结果表明,不同地区对第二增长程度的估计可能不准确并且难以比较。

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