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Assessing the Accuracy of Multi-Temporal Built-Up Land Layers across Rural-Urban Trajectories in the United States

机译:评估美国跨城乡轨迹的多时相建成土地层的准确性

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摘要

Global data on settlements, built-up land and population distributions are becoming increasingly available and represent important inputs to a better understanding of key demographic processes such as urbanization and interactions between human and natural systems over time. One persistent drawback that prevents user communities from effectively and objectively using these data products more broadly, is the absence of thorough and transparent validation studies. This study develops a validation framework for accuracy assessment of multi-temporal built-up land layers using integrated public parcel and building records as validation data. The framework is based on measures derived from confusion matrices and incorporates a sensitivity analysis for potential spatial offsets between validation and test data as well as tests for the effects of varying criteria of the abstract term built-up land on accuracy measures. Furthermore, the framework allows for accuracy assessments by strata of built-up density, which provides important insights on the relationship between classification accuracy and development intensity to better instruct and educate user communities on quality aspects that might be relevant to different purposes. We use data from the newly-released Global Human Settlement Layer (GHSL), for four epochs since 1975 and at fine spatial resolution (38m), in the United States for a demonstration of the framework. The results show very encouraging accuracy measures that vary across study areas, generally improve over time but show very distinct patterns across the rural-urban trajectories. Areas of higher development intensity are very accurately classified and highly reliable. Rural areas show low degrees of accuracy, which could be affected by misalignment between the reference data and the data under test in areas where built-up land is scattered and rare. However, a regression analysis, which examines how well GHSL can estimate built-up land using spatially aggregated analytical units, indicates that classification error is mainly of thematic nature. Thus, caution should be taken in using the data product in rural regions. The results can be useful in further improving classification procedures to create measures of the built environment. The validation framework can be extended to data-poor regions of the world using map data and Volunteered Geographic Information.
机译:关于定居,建成土地和人口分布的全球数据越来越多,它们代表了重要的输入,有助于更好地了解关键的人口统计过程,例如城市化以及人类与自然系统之间的相互作用。持久的缺点使用户无法有效,客观地更广泛地使用这些数据产品,这是缺乏彻底而透明的验证研究的结果。这项研究开发了一个验证框架,用于使用集成的公共包裹和建筑记录作为验证数据来对多时间建成土地层进行准确性评估。该框架基于从混淆矩阵得出的度量,并结合了敏感性分析,用于验证和测试数据之间的潜在空间偏移,以及对抽象术语集结土地的不同标准对准确性度量的影响进行的测试。此外,该框架允许根据堆积密度的层次进行准确性评估,从而提供有关分类准确性与开发强度之间关系的重要见解,以便更好地指导和教育用户社区有关可能与不同目的相关的质量方面。我们使用新发布的全球人类住区层(GHSL)的数据(自1975年以来的四个纪元,以良好的空间分辨率(38m))在美国进行了演示。结果显示,非常令人鼓舞的准确性测度因研究区域而异,通常随着时间的推移而提高,但在整个城乡轨迹中却表现出截然不同的模式。开发强度较高的区域可以非常准确地分类,并且高度可靠。农村地区显示出较低的准确度,这可能会受到参考数据和被测数据在未开发土地稀疏和稀疏地区的位置不一致的影响。但是,回归分析检查了GHSL使用空间汇总的分析单位对建成土地的估算能力,表明分类错误主要是主题性质。因此,在农村地区使用数据产品时应谨慎。该结果可用于进一步改进分类程序以创建所构建环境的度量。可以使用地图数据和志愿者地理信息将验证框架扩展到世界上数据贫乏的地区。

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