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A geostatistical approach for mapping thematic classification accuracy and evaluating the impact of inaccurate spatial data on ecological model predictions

机译:地统计方法,用于绘制主题分类的精度并评估不正确的空间数据对生态模型预测的影响

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Spatial information in the form of geographical information system coverages and remotely sensed imagery is increasingly used in ecological modeling. Examples include maps of land cover type from which ecologically relevant properties, such as biomass or leaf area index, are derived. Spatial information, however, is not error-free: acquisition and processing errors, as well as the complexity of the physical processes involved, make remotely sensed data imperfect measurements of ecological attributes. It is therefore important to first assess the accuracy of the spatial information being used and then evaluate the impact of such inaccurate information on ecological model predictions. In this paper, the role of geostatistics for mapping thematic classification accuracy through integration of abundant image-derived (soft) and sparse higher accuracy (hard) class labels is presented. Such assessment leads to local indices of map quality, which can be used for guiding additional ground surveys. Stochastic simulation is proposed for generating multiple alternative realizations (maps) of the spatial distribution of the higher accuracy class labels over the study area. All simulated realizations are consistent with the available pieces of information (hard and soft labels) up to their validated level of accuracy. The simulated alternative class label representations can be used for assessing joint spatial accuracy, i.e. classification accuracy regarding entire spatial features read from the thematic map. Such realizations can also serve as input parameters to spatially explicit ecological models; the resulting distribution of ecological responses provides a model of uncertainty regarding the ecological model prediction. A case study illustrates the generation of alternative land cover maps for a Landsat Thematic Mapper (TM) subscene, and the subsequent construction of local map quality indices. Simulated land cover maps are then input into a biogeochemical model for assessing uncertainty regarding net primary production (NPP).
机译:以地理信息系统覆盖范围和遥感图像形式出现的空间信息越来越多地用于生态建模中。示例包括土地覆盖类型图,可从中得出与生态相关的特性(例如生物量或叶面积指数)。但是,空间信息并非没有错误:采集和处理错误以及所涉及的物理过程的复杂性使遥感数据无法完美地衡量生态属性。因此,重要的是首先评估所用空间信息的准确性,然后评估这种不准确信息对生态模型预测的影响。本文提出了地统计学通过整合丰富的图像派生(软)和稀疏更高准确度(硬)类别标签来映射主题分类准确度的作用。这样的评估会得出当地的地图质量指标,可用于指导其他地面调查。提出了随机模拟,以生成研究区域内较高精度的类标签的空间分布的多个替代实现(图)。所有模拟实现均与可用信息(硬标签和软标签)一致,直至达到其经过验证的准确性水平。模拟的替代类标签表示可以用于评估联合空间精度,即,关于从专题图读取的整个空间特征的分类精度。这样的实现也可以作为空间明确生态模型的输入参数。生态响应的结果分布为生态模型预测提供了不确定性模型。案例研究说明了Landsat Thematic Mapper(TM)子场的替代土地覆盖图的生成,以及随后的当地地图质量指标的构建。然后将模拟的土地覆盖图输入到生物地球化学模型中,以评估有关净初级生产(NPP)的不确定性。

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