首页> 外文期刊>International journal of applied earth observation and geoinformation >Use of MSI/Sentinel-2 and airborne LiDAR data for mapping vegetation and studying the relationships with soil attributes in the Brazilian semi-arid region
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Use of MSI/Sentinel-2 and airborne LiDAR data for mapping vegetation and studying the relationships with soil attributes in the Brazilian semi-arid region

机译:使用MSI / Sentinel-2和机载LIDAR数据进行植被,并在巴西半干旱地区与土壤属性的关系

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The Caatinga is an important ecosystem in the semi-arid region of northeast Brazil and a natural laboratory for the study of plant adaptation to seasonal water stress or prolonged droughts. The soil water availability for plants depends on plant root depth and soil properties. Here, we combined for the first time the remote sensing classification of Caatinga physiognomies with soil information derived from geostatistical analysis to relate vegetation distribution with physico-chemical attributes of soils. We evaluated the potential of multi-temporal data acquired by the MultiSpectral Instrument (MSI)/Sentinel-2 for Random Forest (RF) classification of seven physiognomies. In addition, we analyzed the contribution of airborne LiDAR metrics to improve classification accuracy compared to six vegetation indices (VIs) and 10 reflectance bands from the MSI instrument. Using a detailed soil survey, the spatial distribution of the vegetation physiognomies mapped by RF was associated with the variability of 20 physico-chemical attributes of 75 soil profiles submitted to principal components analysis (PCA) and ordinary kriging. The results showed gains in overall classification accuracy with use of the multi temporal data over the mono-temporal observations. Gains in classification of arboreous Caatinga were also observed after the insertion of LiDAR metrics in the analysis, especially the percentage of vegetation cover with height greater than 5 m, the terrain elevation and the standard deviation of vegetation height. Overall, the most important metrics for classification were the VIs, especially the Enhanced Vegetation Index (EVI), Normalized Difference Infrared Index (NDII-1), Optimized Soil-Adjusted Vegetation Index (OSAVI) and the Normalized Difference Vegetation Index (NDVI). The most important MSI/Sentinel-2 bands were positioned in the red-edge spectral interval. From PCA, soil attributes responsible for most of the data variance were related to soil fertility, soil depth and rock fragments in the surface horizon. The amounts of gravels and pebbles were factors of physiognomic variability with shrub and sub-shrub Caatinga occurring preferentially over shallow and stony soils. By contrast, arboreous Caatinga occurred over soils with total profile depth greater than 1 m. Finally, areas of sub-shrub Caatinga had greater values of cation exchange capacity (CEC) and water retention at field capacity than areas of arboreous Caatinga. The differences were statistically significant at 95% confidence level, as indicated by Mann-Whitney U tests.
机译:Caatinga是巴西东北地区半干旱地区的重要生态系统,以及研究植物适应季节性水应激或延长干旱的自然实验室。植物的土壤水量可用性取决于植物根深度和土壤性质。在这里,我们首次结合了遥感分类的Caatinga PhyogmoMies与地质学分析的土壤信息将植被分布与土壤的物理化学属性联系起来。我们评估了由多光谱仪器(MSI)/ Sentinel-2获取的多时间数据的潜力,用于随机森林(RF)分类七个物理学。此外,我们分析了空气传播的LIDAR指标的贡献,以提高分类准确性,而MSI仪器的六个植被指数(VI)和10个反射带相比。使用详细的土壤调查,RF映射的植被地貌的空间分布与提交给主成分分析(PCA)和普通Kriging的75种土壤谱的20个物理化学物质的可变性有关。结果在整体分类准确性下,使用多时间数据通过单时刻观察来提升。在分析中插入激光雷达度量后,还观察到仲裁核分类的增益,特别是植被覆盖的百分比高于5米,地形高度和植被高度的标准偏差。总体而言,分类最重要的指标是VI,特别是增强植被指数(EVI),归一化差异红外指数(NDII-1),优化的土壤调整后植被指数(奥萨瓦)和归一化差异植被指数(NDVI)。最重要的MSI / Sentinel-2带位于红边频谱间隔。从PCA,负责大多数数据方差的土壤属性与地面地平线的土壤肥力,土壤深度和岩石碎片有关。砾石和鹅卵石的量是对灌木和亚灌木包装的地理变异性的因素,优先在浅和石土壤上发生。相比之下,仲裁成分发生在土壤上,总轮廓深度大于1米。最后,亚灌木包装区域的区域具有比仲裁成分的区域更大的阳离子交换能力(CEC)和水潴留的值。如Mann-Whitney U测试所表明,差异在95%的置信水平下具有统计学意义。

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