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Integrating field sampling, geostatistics and remote sensing to map wetland vegetation in the Pantanal, Brazil

机译:结合野外采样,地统计学和遥感技术绘制巴西潘塔纳尔湿地植被图

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Development of efficient methodologies for mapping wetland vegetation is of key importance to wetland conservation. Here we propose the integration of a number of statistical techniques, in particular cluster analysis, universal kriging and error propagation modelling, to integrate observations from remote sensing and field sampling for mapping vegetation communities and estimating uncertainty. The approach results in seven vegetation communities with a known floral composition that can be mapped over large areas using remotely sensed data. The relationship between remotely sensed data and vegetation patterns, captured in four factorial axes, were described using multiple linear regression models. There were then used in a universal kriging procedure to reduce the mapping uncertainty. Cross-validation procedures and Monte Carlo simulations were used to quantify the uncertainty in the resulting map. Cross-validation showed that accuracy in classification varies according with the community type, as a result of sampling density and configuration. A map of uncertainty derived from Monte Carlo simulations revealed significant spatial variation in classification, but this had little impact on the proportion and arrangement of the communities observed. These results suggested that mapping improvement could be achieved by increasing the number of field observations of those communities with a scattered and small patch size distribution; or by including a larger number of digital images as explanatory variables in the model. Comparison of the resulting plant community map with a flood duration map, revealed that flooding duration is an important driver of vegetation zonation. This mapping approach is able to integrate field point data and high-resolution remote-sensing images, providing a new basis to map wetland vegetation and allow its future application in habitat management, conservation assessment and long-term ecological monitoring in wetland landscapes.
机译:开发有效的湿地植被测绘方法对湿地保护至关重要。在这里,我们建议整合多种统计技术,尤其是聚类分析,通用克里金法和误差传播建模,以整合来自遥感和野外采样的观测资料,以绘制植被群落并估算不确定性。该方法产生了七个具有已知花卉组成的植被群落,可以使用遥感数据在大面积上绘制地图。使用多个线性回归模型描述了在四个阶乘轴上捕获的遥感数据与植被格局之间的关系。然后在通用克里金程序中使用它来减少映射的不确定性。交叉验证程序和蒙特卡洛模拟用于量化结果图中的不确定性。交叉验证显示,由于抽样密度和配置的不同,分类的准确性随社区类型的不同而不同。从蒙特卡洛模拟得出的不确定性图揭示了分类的显着空间变化,但这对观察到的群落的比例和排列影响不大。这些结果表明,可以通过增加那些散布且斑块尺寸分布较小的社区的实地观察数量来实现地图改进。或通过在模型中包含大量数字图像作为解释变量。将生成的植物群落图与洪水持续时间图进行比较,发现洪水持续时间是植被分区的重要驱动力。这种测绘方法能够整合场点数据和高分辨率遥感影像,为测绘湿地植被提供了新的基础,并将其将来应用于湿地景观的栖息地管理,保护评估和长期生态监测。

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