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International Benchmarking of the Individual Tree Detection Methods for Modeling 3-D Canopy Structure for Silviculture and Forest Ecology Using Airborne Laser Scanning

机译:使用机载激光扫描对3D林冠层结构进行造林和森林生态建模的单个树木检测方法的国际基准

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Canopy structure plays an essential role in biophysical activities in forest environments. However, quantitative descriptions of a 3-D canopy structure are extremely difficult because of the complexity and heterogeneity of forest systems. Airborne laser scanning (ALS) provides an opportunity to automatically measure a 3-D canopy structure in large areas. Compared with other point cloud technologies such as the image-based Structure from Motion, the power of ALS lies in its ability to penetrate canopies and depict subordinate trees. However, such capabilities have been poorly explored so far. In this paper, the potential of ALS-based approaches in depicting a 3-D canopy structure is explored in detail through an international benchmarking of five recently developed ALS-based individual tree detection (ITD) methods. For the first time, the results of the ITD methods are evaluated for each of four crown classes, i.e., dominant, codominant, intermediate, and suppressed trees, which provides insight toward understanding the current status of depicting a 3-D canopy structure using ITD methods, particularly with respect to their performances, potential, and challenges. This benchmarking study revealed that the canopy structure plays a considerable role in the detection accuracy of ITD methods, and its influence is even greater than that of the tree species as well as the species composition in a stand. The study also reveals the importance of utilizing the point cloud data for the detection of intermediate and suppressed trees. Different from what has been reported in previous studies, point density was found to be a highly influential factor in the performance of the methods that use point cloud data. Greater efforts should be invested in the point-based or hybrid ITD approaches to model the 3-D canopy structure and to further explore the potential of high-density and multiwavelengths ALS data.
机译:冠层结构在森林环境中的生物物理活动中起着至关重要的作用。但是,由于森林系统的复杂性和异质性,对3D冠层结构进行定量描述非常困难。机载激光扫描(ALS)提供了自动测量大面积3-D篷结构的机会。与其他点云技术(例如来自Motion的基于图像的结构)相比,ALS的强大之处在于它能够穿透树冠并描绘下级树木。但是,到目前为止,此类功能的开发很少。在本文中,通过对五种最近开发的基于ALS的个体树检测(ITD)方法进行国际基准测试,详细探讨了基于ALS的方法在描述3-D冠层结构中的潜力。第一次,针对四个树冠类别(即优势树,共显树,中间树和抑制树)中的每一个树评估了ITD方法的结果,这为了解使用ITD描绘3-D冠层结构的当前状态提供了见识。方法,尤其是在性能,潜力和挑战方面。这项基准研究表明,冠层结构在ITD方法的检测准确性中起着相当重要的作用,其影响力甚至比林木物种以及林分中的物种组成更大。该研究还揭示了利用点云数据检测中间树和抑制树的重要性。与以前的研究不同,发现点密度是使用点云数据的方法性能的重要影响因素。应该在基于点或混合ITD的方法上投入更多的精力,以对3-D顶篷结构进行建模并进一步探索高密度和多波长ALS数据的潜力。

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