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Characterization and Classification of Vegetation Canopy Structure and Distribution within the Great Smoky Mountains National Park Using LiDAR

机译:利用LIDAR的大烟山国家公园内植被冠层结构和分布的特点及分类

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Vegetation canopy structure is a critically important habitat characteristic for many threatened and endangered birds and other animal species, and it is key information needed by forest and wildlife managers for monitoring and managing forest resources, conservation planning and fostering biodiversity. Advances in Light Detection and Ranging (LiDAR) technologies have enabled remote sensing-based studies of vegetation canopies by capturing three-dimensional structures, yielding information not available in two-dimensional images of the landscape provided by traditional multi-spectral remote sensing platforms. However, the large volume data sets produced by airborne LiDAR instruments pose a significant computational challenge, requiring algorithms to identify and analyze patterns of interest buried within LiDAR point clouds in a computationally efficient manner, utilizing state-of-art computing infrastructure. We developed and applied a computationally efficient approach to analyze a large volume of LiDAR data and characterized the vegetation canopy structures for 139,859 hectares (540 sq. miles) in the Great Smoky Mountains National Park. This study helps improve our understanding of the distribution of vegetation and animal habitats in this extremely diverse ecosystem.
机译:植物冠层结构是许多受威胁和濒危的鸟类和其他动物物种极为重要的栖息地特征,它是森林和野生动物管理人员的监督和管理森林资源,保护规划和促进生物多样性所需的关键信息。在光探测的进步和测距(LIDAR)技术已经通过拍摄的三维结构,产生在由传统的多光谱遥感平台提供的景观的二维图像不可用信息启用植被檐进行的遥感研究报告。然而,通过机载激光雷达仪器所产生的大量的数据集构成显著计算挑战,需要算法来识别和分析的在计算上高效的方式埋置的LiDAR点云内的感兴趣的图案,利用状态的最先进的计算基础设施。我们开发和应用有效的计算方法来分析大量的LiDAR数据和表征植被冠层结构的大烟山国家公园139859公顷(540平方英里)。这项研究有助于提高我们的植被和动物栖息地的这种极其多样化的生态系统分布的认识。

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