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Quantifying the spatial properties of forest canopy gaps using LiDAR imagery and GIS

机译:使用LiDAR影像和GIS量化林冠间隙的空间特性

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摘要

The spatial properties of gaps have an important influence upon the regeneration dynamics and species composition of forests. However, such properties can be difficult to quantify over large spatial areas using field measurements. This research considers how we conceptualize and define forest canopy gaps from a remote sensing point of view and highlights the inadequacies of passive optical remotely sensed data for delineating gaps. The study employs the analytical functions of a geographical information system to extract gap spatial characteristics from imagery acquired by an active remote sensing device, an airborne light detection and ranging instrument (LiDAR). These techniques were applied to an area of semi-natural broadleaved deciduous forest, in order to map gap size, shape complexity, vegetation height diversity and gap connectivity. A vegetation cover map derived from imagery from an airborne multispectral scanner was used in combination with the LiDAR data to characterize the dominant vegetation types within gaps. Although the quantification of these gap characteristics alone is insufficient to provide conclusive evidence on specific processes, the paper demonstrates how such information can be indicative of the general status of a forest and can provide new perspectives and possibilities or further ecological research and forest monitoring activities.
机译:空隙的空间特性对森林的更新动态和物种组成具有重要影响。但是,使用现场测量很难在较大的空间区域上量化此类属性。这项研究考虑了我们如何从遥感的角度概念化和定义森林冠层间隙,并强调了无源光学遥感数据在描述间隙方面的不足。该研究利用地理信息系统的分析功能,从由有源遥感设备,机载光检测和测距仪(LiDAR)采集的图像中提取间隙空间特征。这些技术被应用于半天然阔叶落叶林地区,以绘制间隙大小,形状复杂性,植被高度多样性和间隙连通性的地图。结合机载多光谱扫描仪的图像得出的植被覆盖图与LiDAR数据结合使用,以表征间隙内主要的植被类型。尽管仅对这些间隙特征的量化不足以提供具体过程的确凿证据,但本文证明了这些信息如何可以指示森林的总体状况,并可以提供新的观点和可能性或进一步的生态研究和森林监测活动。

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