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Terrestrial lidar remote sensing of forests: Maximum likelihood estimates of canopy profile, leaf area index, and leaf angle distribution

机译:陆地激光雷达对森林的遥感:林冠轮廓,叶面积指数和叶角度分布的最大似然估计

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affording new opportunities for ecosystem studies, but its actual utility depends largely on efficacies of lidar analysis methods. To improve characterizing forest canopies with TLS, we forged a methodological paradigm that combines physics and statistics to derive foliage profile, leaf area index (LAI), and leaf angle distribution (LAD): We modeled laser-vegetation interactions probabilistically and then developed a maximum likelihood estimator (MLE) of vegetation parameters. Unlike classical gap-based algorithms, MLE explicitly accommodates laser scanning geometries, fully leverages raw laser ranging data, and simultaneously derives foliage profile and LAD. We evaluated MLE using both synthetic lidar data and real TLS scans at sites in Everglades National Park, USA. Estimated LAI differed between algorithms by an average of 26%. Compared to classical gap analyses, MLE derived foliage density profile and LAD more accurately. Also, MLE has a rigorous statistical foundation and generated error intervals better indicative of the true uncertainties of estimated canopy parameters an aspect often overlooked but essential for credible use of lidar vegetation products. The theoretical justification and experimental evidence converge to suggest that classical gap methods are sub-optimal for exploiting tiny-footprint lidar data and MLE offers a paradigm-shifting alternative. We envision that MLE will further boost confident use of terrestrial lidar as a versatile tool for environmental applications, such as forest survey, ecological conservation, and ecosystem management. (C) 2015 Elsevier B.V. All rights reserved.
机译:为生态系统研究提供了新的机会,但其实际用途在很大程度上取决于激光雷达分析方法的效率。为了使用TLS改进表征森林冠层的方法,我们建立了一种方法论范式,将物理和统计学相结合以得出叶面轮廓,叶面积指数(LAI)和叶角分布(LAD):我们概率性地模拟了激光与植被的相互作用,然后建立了最大值植被参数的似然估计器(MLE)。与传统的基于间隙的算法不同,MLE明确适应了激光扫描的几何形状,充分利用了原始激光测距数据,同时导出了树叶轮廓和LAD。我们在美国大沼泽国家公园的现场使用合成激光雷达数据和真实TLS扫描评估了MLE。不同算法之间的估计LAI平均相差26%。与经典的间隙分析相比,MLE可以更准确地得出树叶密度分布图和LAD。而且,MLE具有严格的统计基础,并且生成的误差间隔可以更好地指示估计的冠层参数的真实不确定性,而这是一个经常被忽略但对于可靠使用激光雷达植被产品必不可少的方面。理论上的证明和实验证据的融合表明,经典的间隙方法对于利用微小的激光雷达数据是次优的,而MLE提供了范式转换的选择。我们预计,MLE将进一步提高人们对地面激光雷达的信心,使之成为用于森林应用,森林保护,生态保护和生态系统管理等环境应用的多功能工具。 (C)2015 Elsevier B.V.保留所有权利。

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