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Mapping a priori defined plant associations using remotely sensed vegetation characteristics

机译:使用遥感植被特征映射先验定义的植物关联

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Incorporation of a priori defined plant associations into remote sensing products is a major challenge that has only recently been confronted by the remote sensing community. We present an approach to map the spatial distribution of such associations by using plant indicator values (IVs) for salinity, moisture and nutrients as an intermediate between spectral reflectance and association occurrences. For a 12km~2 study site in the Netherlands, the relations between observed IVs at local vegetation plots and visible and near-infrared (VNIR) and short-wave infrared (SWIR) airborne reflectance data were modelled using Gaussian Process Regression (GPR) (R~2 0.73, 0.64 and 0.76 for salinity, moisture and nutrients, respectively). These relations were applied to map IVs for the complete study site. Association occurrence probabilities were modelled as function of IVs using a large database of vegetation plots with known association and IVs. Using the mapped IVs, we calculated occurrence probabilities of 19 associations for each pixel, resulting in both a crisp association map with the most likely occurring association per pixel, as well as occurrence probability maps per association. Association occurrence predictions were assessed by a local vegetation expert, which revealed that the occurrences of associations situated at frequently predicted indicator value combinations were over predicted. This seems primarily due to biases in the GPR predicted IVs, resulting in associations with envelopes located in extreme ends of IVs being scarcely predicted.Although the results of this particular study were not fully satisfactory, the method potentially offers several advantages compared to current vegetation classification techniques, like site-independent calibration of association probabilities, site-independent selection of associations and the provision of IV maps and occurrence probabilities per association. If the prediction of IVs can be improved, this method may thus provide a viable roadmap to bring a priori defined plant associations into the domain of remote sensing.
机译:将先验定义的植物协会纳入遥感产品是一项重大挑战,直到最近遥感领域才面临该挑战。我们提出一种方法,通过使用盐度,水分和养分的植物指标值(IVs)作为光谱反射率与关联发生之间的中间值,来映射此类关联的空间分布。在荷兰的一个12 km〜2的研究站点中,使用高斯过程回归(GPR)对本地植被样地上观察到的IV与可见光和近红外(VNIR)和短波红外(SWIR)机载反射数据之间的关系进行了建模(盐度,水分和养分分别为R〜2 0.73、0.64和0.76)。这些关系应用于整个研究地点的地图IV。使用具有已知关联和IV的大型植被图数据库,将关联发生概率建模为IV的函数。使用映射的IV,我们为每个像素计算了19个关联的出现概率,从而生成了每个像素中最可能出现关联的清晰关联图以及每个关联的出现概率图。协会发生预测由当地植被专家评估,结果表明位于频繁预测的指标值组合处的协会发生被过度预测。这似乎主要归因于GPR预测的IVs的偏差,导致几乎不预测与位于IVs末端的包膜的关联。尽管这项特定研究的结果并不完全令人满意,但与当前的植被分类相比,该方法可能具有几个优势技巧,例如关联概率的站点无关校准,关联的站点无关选择以及每个关联的IV映射和出现概率的提供。如果可以改进IV的预测,则此方法可以提供可行的路线图,以将先验定义的植物关联带入遥感领域。

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