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Retrieval of Mangrove Aboveground Biomass at the Individual Species Level with WorldView-2 Images

机译:使用WorldView-2图像检索单个物种级别的红树林地上生物量

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Previous research studies have demonstrated that the relationship between remote sensing-derived parameters and aboveground biomass (AGB) could vary across different species types. However, there are few studies that calibrate reliable statistical models for mangrove AGB. This study quantifies the differences of accuracy in AGB estimation between the results obtained with and without the consideration of species types using Worldview-2 images and field surveys. A Back Propagation Artificial Neural Network (BP ANN) based model is developed for the accurate estimation of uneven-aged and dense mangrove forest biomass. The contributions of the input variables are further quantified using a “Weights” method based on BP ANN model. Two types of mangrove species, Sonneratia apetala (S. apetala) and Kandelia candel (K. candel), are examined in this study. Results show that the species type information is the most important variable for AGB estimation, and the red edge band and the associated vegetation indices from WorldView-2 images are more sensitive to mangrove AGB than other bands and vegetation indices. The RMSE of biomass estimation at the incorporation of species as a dummy variable is 19.17% lower than that of the mixed species level. The results demonstrate that species type information obtained from the WorldView-2 images can significantly improve of the accuracy of the biomass estimation.
机译:先前的研究表明,遥感参数与地上生物量(AGB)之间的关系可能因不同物种而异。但是,很少有研究能够校准红树林AGB的可靠统计模型。这项研究量化了在使用和不使用Worldview-2影像和田野调查的情况下,在获得和未考虑物种类型的结果之间,AGB估算准确性的差异。建立了基于反向传播人工神经网络(BP ANN)的模型,用于准确估算年龄不均和茂密的红树林生物量。使用基于BP神经网络模型的“权重”方法进一步量化输入变量的贡献。在这项研究中,研究了两种类型的红树林物种,Sonneratia apetala(S. apetala)和Kandelia candel(K. candel)。结果表明,物种类型信息是进行AGB估算的最重要变量,WorldView-2影像的红色边缘带和相关的植被指数比其他带和植被指数对红树林AGB更为敏感。纳入物种作为虚拟变量的生物量估计的RMSE比混合物种水平的RMSE低19.17%。结果表明,从WorldView-2图像获得的物种类型信息可以显着提高生物量估计的准确性。

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