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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Towards a novel backdating strategy for creating built-up land time series data using contemporary spatial constraints
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Towards a novel backdating strategy for creating built-up land time series data using contemporary spatial constraints

机译:朝着使用当代空间限制创建建立陆地时间序列数据的新型回溯策略

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摘要

For retrospective land cover change analysis extending back in time earlier than approximately the year 2000, multispectral remote sensing data such as the Landsat archive are often the only available and systematically archived data source. However, the spatial resolution of such observations often impedes the change analysis of geographic phenomena that may occur at sub-pixel level, such as changes in built-up land. In such cases, the integration of these data products with increasingly available contemporary high resolution settlement data employed as spatial constraints can potentially mitigate this drawback. Little research has been done regarding the quantitative potential of such integrative approaches, often due to the lack of multi-temporal reference data about changes in built-up area at sufficient spatio-temporal granularity and extent. In this contribution, we present and evaluate a time-series based approach for built-up area change analysis using Landsat time series data, spatially constrained by contemporary building footprint data. We evaluate the potential of our approach using a highly accurate multi-temporal reference database of built-up areas created through integrating publicly available building footprint and cadastral data in selected regions of the United States of America.
机译:对于追溯土地覆盖更改分析,早于2000年早期延伸的时间,诸如Landsat归档之类的多光谱遥感数据通常是唯一可用和系统归档的数据源。然而,这种观测的空间分辨率通常会阻碍可能发生在子像素水平的地理现象的变化分析,例如建筑物的变化。在这种情况下,这些数据产品的整合与作为空间约束所采用的越来越多的当代高分辨率结算数据可能可能会减轻这种缺点。对这种综合方法的定量潜力进行了很少的研究,通常是由于缺乏关于内置区域的变化的多时间参考数据,以足够的时空粒度和程度。在这一贡献中,我们使用Landsat时间序列数据显示和评估基于时间序列的内置区域改变分析方法,通过当代建筑足迹数据来限制。我们使用通过整合美利坚合众国所选地区的公开可用的建筑占地面积和地籍数据来提供高度准确的多时间参考数据库来评估我们的方法的潜力。

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