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Deep Neural Networks for Forest Growing Stock Volume Retrieval: A Comparative Analysis for L-band SAR data

机译:森林森林股票体积检索深度神经网络:L波段SAR数据的比较分析

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The aim of this study was to evaluate the utility of deep learning (DL) approaches to estimate forest growing stock volume from L-band SAR data over areas characterized by diverse species composition. For comparison, parametric models were also used. When using one independent variable (i.e. HV backscatter coefficient) the lowest estimation errors were observed for the empirical model followed by Random Forests (RF). Increasing the number of independent variables resulted in marginally more accurate results for the machine learning approaches. However, for the studied area, DL approaches did not improve GSV retrieval when compared to RF or empirical modelling suggesting that L-band data sensitivity to GSV values is the main limiting factor.
机译:本研究的目的是评估深度学习(DL)方法的效用,以估计来自L频段SAR数据的森林股票体积,这些区域通过各种各样的物种组成的区域。为了比较,还使用参数模型。当使用一个独立变量(即HV反向散射系数)时,对于经验模型,观察到最低估计误差,然后是随机林(RF)。增加独立变量的数量导致机器学习方法的略微更准确的结果。然而,对于研究区域,与RF或经验建模相比,DL方法没有提高GSV检索,表明L波段数据对GSV值的敏感性是主要限制因素。

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