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Spatial cross-validation and bootstrap for the assessment of prediction rules in remote sensing: The R package sperrorest

机译:用于评估遥感预测规则的空间交叉验证和引导程序:R包最恐怖

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Novel computational and statistical prediction methods such as the support vector machine are becoming increasingly popular in remote-sensing applications and need to be compared to more traditional approaches like maximum-likelihood classification. However, the accuracy assessment of such predictive models in a spatial context needs to account for the presence of spatial autocorrelation in geospatial data by using spatial cross-validation and bootstrap strategies instead of their now more widely used non-spatial equivalent. These spatial resampling-based estimation procedures were therefore implemented in a new package ‘sperrorest’ for the open-source statistical data analysis software R. This package is introduced using the example of the detection of rock-glacier flow structures from IKONOS-derived Gabor texture features and terrain attribute data.
机译:诸如支持向量机之类的新型计算和统计预测方法在遥感应用中正变得越来越流行,需要与更传统的方法(例如最大似然分类)进行比较。但是,此类预测模型在空间环境中的准确性评估需要考虑使用空间交叉验证和自举策略(而不是现在更广泛使用的非空间等效方法)来解决地理空间数据中空间自相关的问题。这些基于空间重采样的估算程序因此在开源统计数据分析软件R的“新功能”包中实现。此包以从IKONOS派生的Gabor纹理检测岩石冰川流动结构为例进行介绍要素和地形属性数据。

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