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Spatial analysis of remote sensing image classification accuracy

机译:遥感影像分类精度的空间分析

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The error matrix is the most common way of expressing the accuracy of remote sensing image classifications, such as land cover. However, it and the measures that can be calculated from it have been criticised for not providing any indication of the spatial distribution of errors. Other research has identified the need for methods to analyse the spatial non-stationarity of error and to visualise the spatial variation in classification uncertainty. This research uses geographically weighted approaches to model the spatial variations in the accuracy of both (crisp) Boolean and (soft) fuzzy land cover classes. Remotely sensed data were classified using a maximum likelihood classifier and a fuzzy classifier to predict Boolean and fuzzy land cover classes respectively. Field data were collected at sub-pixel locations and used to generate soft and crisp validation data. A Geographically Weighted Regression was used to analyse spatial variations in the relationships between observations of Boolean land cover in the field and land cover classified from remote sensing imagery. A geographically weighted difference measure was used to analyse spatial variations in fuzzy land cover accuracy. Maps of the spatial distribution of accuracy were created for fuzzy and Boolean classes. This research demonstrates that data collected as part of a standard remote sensing validation exercise can be used to estimate mapped, spatial distributions of accuracy that would augment standard accuracy measures reported in the error matrix. It suggests that geographically weighted approaches, and the spatially explicit representations of accuracy they support, offer the opportunity to report land cover accuracy in a more informative way.
机译:误差矩阵是表达遥感图像分类(如土地覆被)准确性的最常用方法。但是,由于没有提供任何指示错误的空间分布的方式而受到批评,并且该方法可以从中计算得出。其他研究已经确定需要用于分析误差的空间非平稳性并可视化分类不确定性中空间变化的方法。这项研究使用地理加权方法来模拟(清晰)布尔值和(软)模糊土地覆被类别的准确性中的空间变化。使用最大似然分类器和模糊分类器对遥感数据进行分类,以分别预测布尔值和模糊土地覆被分类。场数据是在亚像素位置收集的,用于生成柔和清晰的验证数据。地理加权回归用于分析空间中布尔型土地覆盖的观测值与遥感影像分类的土地覆盖率之间的关系中的空间变化。地理加权差异度量用于分析模糊土地覆被准确性的空间变化。为模糊和布尔类创建了精度的空间分布图。这项研究表明,作为标准遥感验证练习的一部分而收集的数据可用于估计精度的映射空间分布,这将增加误差矩阵中报告的标准精度度量。它表明,地理加权方法及其支持的精度在空间上的表示方式,为以更丰富的信息方式报告土地覆被精度提供了机会。

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