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A Robust Algorithm for Estimating Surface Fractional Vegetation Cover from Landsat Data

机译:基于Landsat数据估算地表植被覆盖度的鲁棒算法

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Fractional vegetation cover (FVC) is an essential land surface parameter for Earth surface process simulations and global change studies. The currently existing FVC products are mostly obtained from low or medium resolution remotely sensed data, while many applications require the fine spatial resolution FVC product. The availability of well-calibrated coverage of Landsat imagery over large areas offers an opportunity for the production of FVC at fine spatial resolution. Therefore, the objective of this study is to develop a general and reliable land surface FVC estimation algorithm for Landsat surface reflectance data under various land surface conditions. Two machine learning methods multivariate adaptive regression splines (MARS) model and back-propagation neural networks (BPNNs) were trained using samples from PROSPECT leaf optical properties model and the scattering by arbitrarily inclined leaves (SAIL) model simulations, which included Landsat reflectance and corresponding FVC values, and evaluated to choose the method which had better performance. Thereafter, the MARS model, which had better performance in the independent validation, was evaluated using ground FVC measurements from two case study areas. The direct validation of the FVC estimated using the proposed algorithm (Heihe: R 2 = 0.8825, RMSE = 0.097; Chengde using Landsat 7 ETM+: R 2 = 0.8571, RMSE = 0.078, Chengde using Landsat 8 OLI: R 2 = 0.8598, RMSE = 0.078) showed the proposed method had good performance. Spatial-temporal assessment of the estimated FVC from Landsat 7 ETM+ and Landsat 8 OLI data confirmed the robustness and consistency of the proposed method. All these results indicated that the proposed algorithm could obtain satisfactory accuracy and had the potential for the production of high-quality FVC estimates from Landsat surface reflectance data.
机译:分数植被覆盖度(FVC)是用于地球表面过程模拟和全球变化研究的重要陆地表面参数。当前存在的FVC产品主要是从低分辨率或中分辨率的遥感数据中获得的,而许多应用则需要精细的空间分辨率FVC产品。校准好的大面积Landsat影像覆盖范围的可用性为以精细的空间分辨率制作FVC提供了机会。因此,本研究的目的是为各种陆地条件下的Landsat地表反射率数据开发一种通用可靠的地表FVC估计算法。使用PROSPECT叶片光学特性模型的样本和任意倾斜叶片的散射(SAIL)模型模拟​​训练了两种机器学习方法多元自适应回归样条(MARS)模型和反向传播神经网络(BPNN),其中包括Landsat反射率和相应的FVC值,并进行评估以选择性能更好的方法。此后,使用来自两个案例研究区域的地面FVC测量评估了在独立验证中具有更好性能的MARS模型。使用提出的算法估算的FVC的直接验证(黑河:R 2 = 0.8825,RMSE = 0.097;承德使用Landsat 7 ETM +:R 2 = 0.8571,RMSE = 0.078,承德使用Landsat 8 OLI:R 2 = 0.8598,RMSE = 0.078)表明该方法具有良好的性能。从Landsat 7 ETM +和Landsat 8 OLI数据估算的FVC的时空评估证实了该方法的鲁棒性和一致性。所有这些结果表明,所提出的算法可以获得令人满意的精度,并且具有从Landsat表面反射率数据中生成高质量FVC估计的潜力。

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