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Comparing map-based and library-based training approaches for urban land-cover fraction mapping from Sentinel-2 imagery

机译:与Sentinel-2图像的城市陆地覆盖分数映射进行比较基于地图和基于库的培训方法

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摘要

An improved trade-off between resolution, coverage and revisit time, makes Sentinel-2 multispectral imagery an interesting data source for mapping the composition and spatial-temporal dynamics of urban land cover. To fully realize the potential of Sentinel-2's high amount of available data, efficient urban mapping workflows are required. Machine learning regression is a powerful approach to produce subpixel land cover fractions from remote sensing imagery, yet it requires mixed spectra for model training for which the fractions of the land cover classes present in the pixel are known. Typically, this data is obtained by sampling spectra from the image to be unmixed, and corresponding land-cover fractions from higher-resolution land cover reference data, i.e. map based training. We propose synthetic mixing of library spectra as an alternative for producing land cover fraction training data for regression modelling, i.e. library-based training. The approach is applied to a Sentinel-2 image of the city of Brussels (Belgium) and part of its urban fringe for mapping Vegetation, Impervious, and Soil (VIS) fractions at 20 m resolution. VIS fraction maps obtained with library-based training have mean absolute errors below 0.1 for all three surface types. The composition of these three key surface categories and their spatial distribution is well represented for the entire area in resulting maps. As a proof of concept, library-based training is compared with the map-based training approach. The more flexible library-based training not only achieves similar mapping accuracies, but in most cases, outperforms the map-based training approach in terms of bias and magnitude of error. The outcome of the research suggests that use of spectral libraries and synthetic mixing may provide an efficient modelling framework for regression-based mapping from Sentinel-2 imagery in operational contexts.
机译:解决方案,覆盖率和重新访问时间之间的改进权衡,使Sentinel-2多光谱图像成为映射城市覆盖的组成和空间动态的有趣数据源。为了充分实现Sentinel-2的大量可用数据的潜力,需要高效的城市映射工作流程。机器学习回归是一种强大的方法来生产来自遥感图像的子像素覆盖分数,但它需要混合光谱,用于模型训练,其中存在于像素中存在的陆地覆盖类的分数。通常,该数据是通过从图像中的谱抽样来获得的,并且来自更高分辨率的陆地覆盖参考数据的相应陆覆盖分数,即基于地图的训练。我们提出了文库光谱的合成混合作为生产回归建模的土地覆盖分数训练数据的替代方案,即基于库的培训。该方法适用于布鲁塞尔市(比利时)的Sentinel-2形象,以及其在20米的分辨率下将植被,不透水和土壤(Vis)分数映射的部分城市边缘。使用基于库的训练获得的VIACTION映射具有以下三种表面类型的2 0.1的绝对误差。这三个关键表面类别的组成及其空间分布在得到的地图中的整个区域很好地代表。作为概念证据,将基于库的培训与基于地图的培训方法进行了比较。基于库的库培训更灵活不仅可以实现类似的映射精度,而且在大多数情况下,在偏置和误差幅度方面优于基于地图的培训方法。该研究的结果表明,使用光谱库和合成混合可以提供一种有效的模型建模框架,用于从运营背景下的Sentinel-2图像的基于回归的映射。

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