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Individual Tree Crown Delineation Using Multispectral LiDAR Data

机译:使用多光谱激光雷达数据的个别树冠描绘

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摘要

In this study, multispectral Light Detection and Ranging (LiDAR) data were utilized to improve delineation of individual tree crowns (ITC) as an important step in individual tree analysis. A framework to integrate spectral and height information for ITC delineation was proposed, and the multi-scale algorithm for treetop detection developed in one of our previous studies was improved. In addition, an advanced region-based segmentation method that used detected treetops as seeds was proposed for segmentation of individual crowns based on their spectral, contextual, and height information. The proposed methods were validated with data acquired using Teledyne Optech’s Titan LiDAR sensor. The sensor was operated at three wavelengths (1550 nm, 1064 nm, and 532 nm) within a study area located in the city of Toronto, ON, Canada. The proposed method achieved 80% accuracy, compared with manual delineation of crowns, considering both matched and partially matched crowns, which was 12% higher than that obtained by the earlier marker-controlled watershed (MCW) segmentation technique. Furthermore, the results showed that the integration of spectral and height information improved ITC delineation using either the proposed framework or MCW segmentation, compared with using either spectral or height information individually.
机译:在该研究中,利用多光谱射击检测和测距(LIDAR)数据来改善单个树冠(ITC)描绘作为个体树分析的重要步骤。提出了一种用于ITC描绘的频谱和高度信息的框架,并且改善了我们以前的研究之一开发的Treetop检测的多尺度算法。此外,提出了一种基于先进的区域的分割方法,用于基于其光谱,上下文和高度信息分割单个冠状的检测到的树梢。通过使用Teledyne Optan的Titan LIDAR传感器获得的数据验证了所提出的方法。在加拿大,在加拿大市中心的研究区域内,传感器在三个波长(1550nm,1064nm和532nm)内操作。考虑到匹配和部分匹配的冠状,所提出的方法精度达到了80%的精度,比通过早期标记控制的流域(MCW)分割技术高12%。此外,结果表明,与单独使用频谱或高度信息相比,使用所提出的框架或MCW分割的频谱和高度信息的集成改进了ITC描绘。

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