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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Automated regolith landform mapping using airborne geophysics and remote sensing data, Burkina Faso, West Africa
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Automated regolith landform mapping using airborne geophysics and remote sensing data, Burkina Faso, West Africa

机译:自动化的极乐性地貌映射,使用空中地球物理和遥感数据,西非布基纳法索

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AbstractWe have studied the regolith landform distribution in the area of Gaoua, western Burkina Faso, using an integration of geophysical and remote sensing data. Concentration maps of K, Th, U, as well as their ratios, were computed from airborne gamma-ray spectrometry data to assess the geochemical composition of the regolith. The mineralogy of the surfaces was mapped via the analysis of multispectral ASTER and Landsat scenes. Pauli-decomposition data retrieved from polarimetric ALOS PALSAR and Radarsat-2 images were included to characterize the surface properties of the regolith material. Morphometric variables such as slope, curvature, and relative relief were derived from the SRTM digital elevation model to quantify the topographic parameters of the different regolith landforms. An artificial neural network implementation, ADVANGEO, was then employed to extract four basic regolith landform units from the satellite and airborne data. Relic ferruginous duricrusts rich in hematite and goethite belonging to the High glacis, erosional surfaces represented by rock outcrops and suboutcrops, alluvial sediments, and soft pediment materials of the Middle and Low glacis were mapped successfully in the region. The results were compared with the existing geomorphological maps, an independent visual classification, and field observations. We found that the distribution and shape of the iron-rich duricrusts are more accurate than portrayed in the current maps. The best results, with an overall accuracy of 94.21% and a kappa value of 0.92, were obtained for a dataset consisting of gamma-ray spectrometry data combined with derivatives of the SRTM digital elevation model augmented by Land
机译:<![cdata [ 抽象 我们研究了使用地球物理和地球物理学的集成的Gaoua地区的regolith地貌分布遥感数据。 K,Th,U以及比率的浓度图是从空气传播的伽马射线光谱数据计算的,以评估极细胞的地球化学组成。表面的矿物学通过分析多光谱烧烤器和地岸景场景来映射。包括从偏振alo波纹和雷达拉特-2图像中检索的pauli分解数据,以表征石油质材料的表面性质。诸如斜率,曲率和相对浮雕等形态学变量源自SRTM数字高度模型,以量化不同的极象地貌的地形参数。然后采用人工神经网络实现,Advangeo,用于从卫星和空气传播数据中提取四个基本的螺旋石地形单元。富含赤毛腾和甲磺酸盐的遗传般的铁纤维,属于高凝血石,由岩石露头和次孔,冲积沉积物和中低甘蔗的软漆材料代表的侵蚀表面成功地映射。将结果与现有的地貌图,独立的视觉分类和现场观察进行了比较。我们发现铁富含量的分布和形状比当前地图中的描绘更准确。对于由伽马射线光谱测定数据组成的数据集,获得了94.21%的总精度为94.21%和κ值为0.92的最佳结果。与土地的SRTM数字高度模型的衍生物组成

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