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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >A generalized regression-based unmixing model for mapping forest cover fractions throughout three decades of Landsat data
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A generalized regression-based unmixing model for mapping forest cover fractions throughout three decades of Landsat data

机译:一种基于广义回归的解密模型,用于在整个三十年的Landsat数据中映射森林覆盖分数

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The Landsat archive offers great potential for monitoring forest cover change, and new approaches moving from categorical towards continuous change products emerge rapidly. Most approaches, however, require vast amounts of high-quality reference data, limiting their applicability across space and time. We here propose the use of a generalized regression-based unmixing approach to overcome this limitation. The unmixing approach relies on temporally generalized machine learning regression models (random forest regression [RFR] and support vector regression [SVR]), which are trained on synthetically mixed data from a multi-year library of pure and hence easy to identify image spectra. We apply the model to three decades of Landsat data, mapping both overall forest cover and broadleaved/coniferous forest cover fractions across space and time. The resulting maps well represented the spatial-temporal patterns of forest (change) in our study region. The SVR model outperformed the RFR model, yielding accuracies of r(2) = 0.74/RMSE = 0.18 for the forest cover fraction maps, r(2) = 0.50/RMSE = 0.24 for the broadleaved forest cover fraction maps, and r(2) = 0.59/RMSE = 0.23 for coniferous forest cover fraction maps, respectively. Highest map errors were found in mature stands, residential areas, and recently disturbed forests. We also found some variability in forest cover fractions for stable forest pixels over time, which were explained by variation in Landsat image acquisition dates. We conclude that regression-based unmixing using synthetically mixed training data from a multi-year spectral library offers an innovative strategy for mapping forest cover fractions and forest types throughout the Landsat archive that likely can be extended to large areas.
机译:Landsat档案提供了监测森林覆盖变化的巨大潜力,并且从分类到连续变化产品的新方法迅速出现。然而,大多数方法都需要大量的高质量参考数据,限制其跨空间和时间的适用性。我们在此提出使用总论基于回归的未混合方法来克服这种限制。解密的方法依赖于时间普遍的机器学习回归模型(随机森林回归[RFR]和支持向量回归[SVR]),其在来自多年纯粹的文库库的合成混合数据上培训,因此易于识别图像光谱。我们将该模型应用于三十年的Landsat数据,覆盖整体森林覆盖和阔叶/针叶林覆盖空间和时间。由此产生的地图很好地代表了我们研究区域的森林空间模式(变化)。 SVR模型优于RFR模型,造成森林覆盖分数图的R(2)= 0.74 / RMSE = 0.18的rFR模型,R(2)= 0.50 / Rmse = 0.24用于阔叶林覆盖分数图,以及R(2用于针叶林覆盖分数图的0.59 / Rmse = 0.23分别。在成熟的展台,住宅区和最近干扰的森林中发现了最高的地图错误。我们还发现森林覆盖分数的一些可变性,随着时间的推移,稳定的森林像素随着时间的推移来解释,这是通过Landsat图像采集日期的变化来解释的。我们得出结论,使用来自多年光谱库的合成混合训练数据的基于回归的解混提供了一种在整个Landsat档案中映射森林覆盖分数和森林类型的创新策略,这可能会扩展到大区域。

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