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Multiscale quality assessment of Global Human Settlement Layer scenes against reference data using statistical learning

机译:使用统计学习,根据参考数据对全球人类住区层场景进行多尺度质量评估

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A method for quality assessment of the Global Human Settlement Layer scenes against reference data is presented. It relies on two settlement metrics; the local average and gradient functions that quantify the notions of settlement density and flexible settlement limits respectively. They are both utilized as generalization functions for increasing the level of abstraction of the sets under comparison. Generalization compensates for inaccuracies of the automatic target extraction method and can be computed at multiple scales. The comparison between the target built-up layers and the reference data employs an ordered multi-scale, linear regression computing the goodness of fit measure R~2. An optimized assessment procedure is investigated in a pilot study and is further employed in a big data exercise. A newly introduced quality metric returns the agreement between automatically extracted built-up from a set of 13605 scenes and the MODIS 500 urban layer, that was found too be as high as 91% for selected sensors. A final experiment attempts a performance increase at lower scales by correlating the target layer with automatically selected training subsets. At 50 m the adjusted R~2 increases by 3% with a mean squared error improvement of 2% compared to the performance achieved without statistical learning. The experiment suggests that the GHSL assessment at a global scale can be carried out based on limited high resolution reference data of minimal spatial coverage.
机译:提出了一种针对参考数据对全球人类住区层场景进行质量评估的方法。它依赖于两个结算指标。局部平均和梯度函数分别量化了沉降密度和灵活沉降极限的概念。它们都被用作泛化函数,以提高比较中的集合的抽象水平。泛化弥补了自动目标提取方法的不准确性,可以在多个尺度上进行计算。目标堆积层与参考数据之间的比较采用有序多尺度线性回归来计算拟合度R〜2的优劣。在初步研究中对优化的评估程序进行了研究,并将其进一步应用于大数据研究中。新引入的质量度量标准返回了从一组13605个场景中自动提取的建筑物与MODIS 500城市层之间的一致性,对于选定的传感器,该发现也高达91%。最终实验通过将目标层与自动选择的训练子集相关联,尝试在较低级别上提高性能。与没有统计学习的性能相比,在50 m处,调整后的R〜2增加3%,平均平方误差提高2%。实验表明,可以基于空间覆盖最小的有限高分辨率参考数据进行全球GHSL评估。

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