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SAR-to-LiDAR mapping for tree volume prediction in the Kruger National Park

机译:克鲁格国家公园的树木体积预测SAR-to-LIDAR映射

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In this paper a neural network is used to perform a mapping between Synthetic Aperture Radar (SAR) backscatter information and LiDAR measurements, and the performance of the neural network model is evaluated against that of a multiple linear regression model. Our aim is to find a relationship between SAR backscatter information and the LiDAR tree volume measurements on a number of land uses in South Africa's Kruger National Park, using a linear as well as a non-linear model. We also seek to find the optimal grid cell size as well as the best combination of SAR polarisation- and decomposition parameters. Our findings suggest that there exists a linear or at least a near-linear relationship between the SAR backscatter information and the LiDAR measurements in South African savannas and that the addition of polarisation- and decomposition parameters to the input of the models aid in improving the Root Mean Squared Error (RMSE) performance.
机译:在本文中,神经网络用于执行合成孔径雷达(SAR)反向散射信息和LIDAR测量之间的映射,并且评估神经网络模型的性能与多元线性回归模型的性能。我们的目标是使用线性以及非线性模型在南非克鲁格国家公园的许多土地使用的SAR反向散射信息和LIDAR树卷测量之间找到一种关系。我们还寻求找到最佳的网格单元格,以及SAR偏振和分解参数的最佳组合。我们的研究结果表明,SAR反向散射信息和南非大草原的激光雷达测量之间存在线性或至少近线性关系,并将偏振和分解参数添加到模型的输入方面有助于改善根均值平方误差(RMSE)性能。

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