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Machine-Learning Fusion of Polsar and Lidar Data for Tropical Forest Canopy Height Estimation

机译:热带森林冠层高度估计的Polsar和LIDAR数据的机器学习融合

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This paper investigates the benefits of integrating polarimetric radar variables with LiDAR samples using Support Vector Machine (SVM) to estimate forest canopy height. Multiple polarimetric variables are required as an input to ensure consistent height retrieval performance across a broad range of forest heights. We train the SVM with LiDAR samples and different polarimetric variables based on 5000 samples (less than 1% of the full subset) collected across the images using a stratified random sampling approach. The trained SVM was applied to the rest of the image using the same variables but excluding the LiDAR samples. The estimated height was cross validated versus LiDAR-derived height (RH100) yielding overall good accuracy with r2=0.86 and RMSE = 6.8 m.
机译:本文研究了使用支持向量机(SVM)与LIDAR样品集成了极化雷达变量的好处,以估算森林冠层高度。需要多个偏振变量作为输入,以确保跨越广泛的森林高度的一致高度检索性能。我们使用分层随机采样方法在图像上收集的5000个样本(小于1%的完整子集),使用LIDAR样本和不同的偏振变量训练SVM。使用相同的变量将训练的SVM应用于其余图像,但不包括LIDAR样本。估计的高度是交叉验证的与激光雷达衍生的高度(RH100)与r产生整体良好精度 2 = 0.86和RMSE = 6.8米。

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