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The assessment of data mining algorithms for modelling Savannah Woody cover using multi-frequency (X-, C- and L-band) synthetic aperture radar (SAR) datasets

机译:评估使用多频(X,C和L波段)合成孔径雷达(SAR)数据集对Savannah Woody覆盖物建模的数据挖掘算法

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The woody component in African Savannahs provides essential ecosystem services such as fuel wood and construction timber to large populations of rural communities. Woody canopy cover (i.e. the percentage area occupied by woody canopy or CC) is a key parameter of the woody component. Synthetic Aperture Radar (SAR) is effective at assessing the woody component, because of its capacity to image within-canopy properties of the vegetation while offering an all-weather capacity to map relatively large extents of the woody component. This study compared the modelling accuracies of woody canopy cover (CC), in South African Savannahs, through the assessment of a set of modelling approaches (Linear Regression, Support Vector Machines, REPTree decision tree, Artificial Neural Network and Random Forest) with the use of X-band (TerraSAR-X), C-band (RADARSAT-2) and L-band (ALOS PALSAR) datasets. This study illustrated that the ANN, REPTree and RF non-parametric modelling algorithms were the most ideal with high CC prediction accuracies throughout the different scenarios. Results also illustrated that the acquisition of L-band data be prioritized due to the high accuracies achieved by the L-band dataset alone in comparison to the individual shorter wavelengths. The study provides promising results for developing regional savannah woody cover maps using limited LiDAR training data and SAR images.
机译:非洲大草原地区的木质成分为大量农村社区提供了必不可少的生态系统服务,例如薪柴和建筑木材。木质遮盖层(即木质遮盖或CC占据的面积百分比)是木质组件的关键参数。合成孔径雷达(SAR)可有效评估木质成分,因为它具有成像植被冠层内部特性的能力,同时提供了全天候的能力,可以绘制相对较大程度的木质成分。这项研究通过评估一组建模方法(线性回归,支持向量机,REPTree决策树,人工神经网络和随机森林),对南非大草原地区木冠层(CC)的建模精度进行了比较。 X波段(TerraSAR-X),C波段(RADARSAT-2)和L波段(ALOS PALSAR)数据集。这项研究表明,在不同情况下,具有高CC预测精度的ANN,REPTree和RF非参数建模算法是最理想的。结果还表明,由于与单独的较短波长相比,单独由L波段数据集实现的高精度,L波段数据的获取应优先考虑。这项研究为使用有限的LiDAR训练数据和SAR图像开发区域热带稀树草原木质覆盖图提供了可喜的结果。

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