首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Mapping urban-rural gradients of settlements and vegetation at national scale using Sentinel-2 spectral-temporal metrics and regression-based unmixing with synthetic training data
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Mapping urban-rural gradients of settlements and vegetation at national scale using Sentinel-2 spectral-temporal metrics and regression-based unmixing with synthetic training data

机译:使用Sentinel-2光谱 - 时间指标和基于综合训练数据的哨声训练数据在国家规模上映射城乡和植被的城乡和植被

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摘要

The increasing impact of humans on land and ongoing global population growth requires an improved understanding of land cover (LC) and land use (LU) processes related to settlements. The heterogeneity of built-up areas and infrastructures as well as the importance of not only mapping, but also characterizing anthropogenic structures suggests using a sub-pixel mapping approach for analysing related LC from space. We implement a regression-based unmixing approach for mapping built-up surfaces and infrastructure, woody vegetation and non-woody vegetation for all of Germany and Austria at 10 m resolution to demonstrate the potential of sub-pixel mapping. We map LC fractions for one point in time, using all available Sentinel-2 data from 2017 and 2018 (< 70% cloud cover). We combine the concept of synthetically mixed training data with statistical aggregations from spectral-temporal metrics (STM) derived from Sentinel-2 reflectance time series. We specifically examine how STM can be used for creating synthetically mixed training data. STM are known to facilitate large area mapping by being largely independent of image acquisition dates and inherently incorporate phenological information. Vegetation is an important part of settlements and time series information supports its mapping. Synthetically mixed training data facilitates a streamlined training by using pure reference spectra to generate artificial mixtures as input to regression modelling of LC fractions in mixed pixels. We here show how combining both offers great potential for wall-to-wall LC fraction mapping. We further investigate the positive effect of STM on map results by comparing the performance of different subsets of STM combinations. Our results indicate that many STM combinations containing spectral variability and vegetation indices provide suitable input to creating synthetic training data for regression-based fraction mapping. Results for built-up surfaces and infrastructure (MAE 0.13/RMSE 0.18 at 20 m resolution), woody vegetation (0.18, 0.22) and non-woody vegetation (0.14, 0.19) are highly consistent across Germany and Austria. Only a few surface types were not accurately predicted in our nation-wide mapping. Further research is required to optimize mapping of temporally invariant bare soil and rock surfaces that show spectral similarity to built-up surfaces and infrastructure. The proposed methodology combines benefits of both regression-based modelling with synthetically mixed training data and STM, and thus facilitates mapping of LC fractions on a national scale and at high resolution. Such information will allow to better characterize settlements and identifying processes such as densification that are best represented by continuous LC mapping.
机译:人类对土地和持续全球人口增长的影响日益增加需要改善对与定居点相关的土地覆盖(LC)和土地利用(LU)进程的了解。内置区域和基础设施的异质性以及不仅对映射的重要性,而且表征了人类学结构的表征,而且使用子像素映射方法来分析来自空间的相关LC。我们在10米的分辨率下实施了一种基于回归的未混凝土,用于绘制内置表面和基础设施,木质植被和非木质植被,以证明子像素映射的潜力。我们使用来自2017年和2018(<70%云覆盖)的所有可用的Sentinel-2数据来映射LC分数。我们将综合混合训练数据的概念与来自Sentinel-2反射时间序列的光谱 - 时间度量(STM)的统计聚集组合。我们专门研究STM如何用于创建合成混合训练数据。已知STM通过在很大程度上独立于图像采集日期并固有地包含挥发性信息来促进大面积映射。植被是定居点的重要组成部分,时间序列信息支持其映射。合成混合的训练数据通过使用纯参考光谱来利用简化的培训,以产生人造混合物作为混合像素中LC分数的回归建模的输入。我们在这里展示了如何结合的墙壁LC分数映射提供了很大的潜力。我们通过比较STM组合的不同子集的性能,进一步研究了STM对地图结果的积极影响。我们的结果表明,许多包含频谱变异性和植被指数的STM组合提供了适当的输入,以创建基于回归的分数映射的合成训练数据。结果为德国和奥地利的木质植被(0.18,0.22),木质植被(0.18,0.22)和非木质植被(0.14,0.19)。在我们的全国范围内映射中只能准确预测几种表面类型。需要进一步的研究来优化时间不变的裸片和岩石表面的映射,该裸露的土壤和岩石表面显示出与内置表面和基础设施的光谱相似性。所提出的方法与合成混合训练数据和STM的基于回归的建模的益处相结合,从而促进了LC分数的映射,在全国范围内和高分辨率。这些信息将允许更好地表征定居点并识别最能由连续LC映射所代表的致密化等过程。

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