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Modelling relationships between birds and vegetation structure using airborne LiDAR data: a review with case studies from agricultural and woodland environments

机译:利用机载LiDAR数据对鸟类与植被结构之间的关系进行建模:结合农业和林地环境的案例研究进行回顾

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摘要

Airborne LiDAR (Light Detection and Ranging) is a remote sensing technology that offers the ability to collect high horizontal sampling densities of high vertical resolution vegetation height data, over larger spatial extents than could be obtained by field survey. The influence of vegetation structure on the bird is a key mechanism underlying bird–habitat models. However, manual survey of vegetation structure becomes prohibitive in terms of time and cost if sampling needs to be of sufficient density to incorporate fine-grained heterogeneity at a landscape extent. We show that LiDAR data can help bridge the gap between grain and extent in organism–habitat models. Two examples are provided of bird–habitat models that use structural habitat information derived from airborne LiDAR data. First, it is shown that data on crop and field boundary height can be derived from LiDAR data, and so have the potential to predict the distribution of breeding Sky Larks in a farmed landscape. Secondly, LiDAR-retrieved canopy height and structural data are used to predict the breeding success of Great Tits and Blue Tits in broad-leaved woodland. LiDAR thus offers great potential for parameterizing predictive bird–habitat association models. This could be enhanced by the combination of LiDAR data with multispectral remote sensing data, which enables a wider range of habitat information to be derived, including both structural and compositional characteristics.
机译:机载LiDAR(光检测和测距)是一种遥感技术,具有比垂直调查获得的更大的空间范围内的高垂直分辨率植被高度数据的高水平采样密度的采集能力。植被结构对鸟类的影响是鸟类栖息地模型的关键机制。但是,如果采样需要足够的密度以在景观范围内纳入细粒度的异质性,则在时间和成本方面,人工调查植被结构将变得不可行。我们表明,LiDAR数据可以帮助弥合有机体-栖息地模型中谷物和程度之间的差距。提供了两个示例的鸟类-栖息地模型,这些模型使用了从机载LiDAR数据得出的结构性栖息地信息。首先,研究表明,可以从LiDAR数据中获得有关作物和田间边界高度的数据,因此有可能预测耕种景观中云雀繁殖的分布。其次,利用LiDAR采集的冠层高度和结构数据来预测大叶和蓝雀在阔叶林地中的繁殖成功。因此,激光雷达为参数化预测鸟类与栖息地的关联模型提供了巨大的潜力。可以通过将LiDAR数据与多光谱遥感数据相结合来增强此功能,从而可以导出更广泛的栖息地信息,包括结构和成分特征。

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