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首页> 外文期刊>Biodiversity and Conservation >Improved methods for measuring forest landscape structure: LiDAR complements field-based habitat assessment.
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Improved methods for measuring forest landscape structure: LiDAR complements field-based habitat assessment.

机译:改进的森林景观结构测量方法:LiDAR补充了基于野外的栖息地评估。

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Conservation and monitoring of forest biodiversity requires reliable information about forest structure and composition at multiple spatial scales. However, detailed data about forest habitat characteristics across large areas are often incomplete due to difficulties associated with field sampling methods. To overcome this limitation we employed a nationally available light detection and ranging (LiDAR) remote sensing dataset to develop variables describing forest landscape structure across a large environmental gradient in Switzerland. Using a model species indicative of structurally rich mountain forests (hazel grouse Bonasa bonasia), we tested the potential of such variables to predict species occurrence and evaluated the additional benefit of LiDAR data when used in combination with traditional, sample plot-based field variables. We calibrated boosted regression trees (BRT) models for both variable sets separately and in combination, and compared the models' accuracies. While both field-based and LiDAR models performed well, combining the two data sources improved the accuracy of the species' habitat model. The variables retained from the two datasets held different types of information: field variables mostly quantified food resources and cover in the field and shrub layer, LiDAR variables characterized heterogeneity of vegetation structure which correlated with field variables describing the understory and ground vegetation. When combined with data on forest vegetation composition from field surveys, LiDAR provides valuable complementary information for encompassing species niches more comprehensively. Thus, LiDAR bridges the gap between precise, locally restricted field-data and coarse digital land cover information by reliably identifying habitat structure and quality across large areas.
机译:保护和监测森林生物多样性需要在多个空间尺度上提供有关森林结构和组成的可靠信息。但是,由于与田间采样方法有关的困难,有关大面积森林栖息地特征的详细数据通常不完整。为了克服这一限制,我们采用了全国可用的光检测和测距(LiDAR)遥感数据集来开发描述瑞士大环境梯度上森林景观结构的变量。我们使用指示结构丰富的高山森林(榛子松鸡Bonasa bonasia)的模型物种,测试了此类变量预测物种发生的潜力,并评估了与传统的基于样地的实地变量结合使用时,LiDAR数据的额外优势。我们分别或组合校准了两个变量集的增强回归树(BRT)模型,并比较了模型的准确性。虽然基于现场的模型和LiDAR模型均表现良好,但将两个数据源结合起来可以提高物种栖息地模型的准确性。从这两个数据集中保留的变量具有不同类型的信息:田间变量主要量化食物资源并覆盖田间和灌木层,LiDAR变量表征植被结构的异质性,与描述地下植被和地面植被的田间变量相关。与来自实地调查的森林植被组成数据结合时,LiDAR可提供有价值的补充信息,以更全面地涵盖物种生态位。因此,LiDAR通过可靠地识别大区域的栖息地结构和质量,弥合了精确的局部受限野外数据与粗糙的数字土地覆盖信息之间的鸿沟。

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