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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Tropical forest canopy height estimation from combined polarimetric SAR and LiDAR using machine-learning
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Tropical forest canopy height estimation from combined polarimetric SAR and LiDAR using machine-learning

机译:采用机器学习的热带森林冠层高度估计和LIDAR

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Forest height is an important forest biophysical parameter which is used to derive important information about forest ecosystems, such as forest above ground biomass. In this paper, the potential of combining Polarimetric Synthetic Aperture Radar (PolSAR) variables with LiDAR measurements for forest height estimation is investigated. This will be conducted using different machine learning algorithms including Random Forest (RFs), Rotation Forest (RoFs), Canonical Correlation Forest (CCFs) and Support Vector Machine (SVMs). Various PolSAR parameters are required as input variables to ensure a successful height retrieval across different forest heights ranges. The algorithms are trained with 5000 LiDAR samples (less than 1% of the full scene) and different polarimetric variables. To examine the dependency of the algorithm on input training samples, three different subsets are identified which each includes different features: subset 1 is quiet diverse and includes non-vegetated region, short/sparse vegetation (0-20 m), vegetation with mid-range height (20-40 m) to tall/dense ones (40-60 m); subset 2 covers mostly the dense vegetated area with height ranges 40-60 m; and subset 3 mostly covers the non-vegetated to short/sparse vegetation (0-20 m) .The trained algorithms were used to estimate the height for the areas outside the identified subset. The results were validated with independent samples of LiDAR-derived height showing high accuracy (with the average R-2 = 0.70 and RMSE = 10 m between all the algorithms and different training samples). The results confirm that it is possible to estimate forest canopy height using Po1SAR parameters together with a small coverage of LiDAR height as training data.
机译:森林高度是一个重要的森林生物物理参数,用于推导有关森林生态系统的重要信息,例如地上生物质的森林。本文研究了与森林高度估计的激光雷达测量相结合的偏振合成孔径雷达(POLSAR)变量的电位。这将使用不同的机器学习算法进行,包括随机森林(RFS),旋转林(ROF),规范相关林(CCF)和支持向量机(SVM)。各种POLSAR参数是输入变量所必需的,以确保在不同森林高度范围内成功的高度检索。算法培训,有5000个激光雷达样本(少于完整场景的1%)和不同的偏振变量。为了检查算法在输入训练样本上的依赖性,识别出三个不同的子集,每个子​​集包括不同的特征:子集1是安静的多样化,包括非植被区域,短/稀疏植被(0-20米),中间植被范围高度(20-40米)到高/密集的(40-60米);子集2主要覆盖高度的茂密植被区域40-60米;并且子集3主要覆盖非植被的短/稀疏植被(0-20米)。训练有素的算法用于估计所识别的子集外部的区域的高度。结果验证了LIDAR衍生高度的独立样本,显示出高精度(平均R-2 = 0.70和所有算法之间的RMSE = 10M)。结果证实,可以使用PO1SAR参数估算森林冠层高度,以及Lidar高度的小额覆盖范围作为训练数据。

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