基于地基激光雷达和多季节航空摄影数据的城市绿林树木属性评价

IF 1.2 Q3 BIODIVERSITY CONSERVATION
A. Kabonen, N. Ivanova
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引用次数: 2

摘要

激光雷达和无人机技术的进步使高分辨率数据成为可能,这些数据可用于单个树木检测和评估树木属性。这些评价的准确性对于具有高树种多样性以及落叶和落叶条件的林分仍不清楚。本研究的目的是评估不同物候阶段混交林和针叶林林分中从摄影测量点云和冠层高度模型以及地面激光雷达云中提取的树顶检测和单株树高的质量。这项研究是在彼得罗扎沃茨克国立大学(俄罗斯卡累利阿共和国)的植物园进行的。使用Phantom 4 Pro四轴飞行器在植物园(> 200种树种)进行了四次飞行任务(2019-2021年),分别在无叶、叶片生物量生长、全叶和秋叶变色期间进行。使用徕卡BLK 360进行单次地面激光扫描。获得了多季节超高分辨率正射影像图(1.1 ~ 2.8 cm/pixel)、摄影测量点云(平均密度为4200点/m2)和激光雷达云(11 600点/m2)。进一步分析了3个不同树种组成、树木密度和立地面积的样地。从摄影测量点云中自动检测树顶,并使用R环境软件估计其高度。我们发现大多数树木(78.9%)通过基于在全叶和秋季着色期间收集的摄影测量数据的算法被正确检测出来。假阳性(FP)和假阴性(FN)的数量随着落叶乔木绿色生物量的减少而增加。无论树密度如何,锥形冠针叶树(西伯利亚冷杉、巴尔samea、fraseri、冷杉、黑松、蒙古松、西伯利亚落叶松)的树木检测质量比平均值提高了9.4%,而椭球形冠针叶树(西方胡柏、松属)或阔叶树密度较高的树木检测质量下降了10%。无叶期树木检测质量最低(F = 0.49)。在全叶期和秋色期获得的高值(F = 0.84)表明树木检测质量总体良好。对于生物量生长期,该值(F = 0.69)也表明树木检测结果质量较高。我们还发现,使用摄影测量数据估算的树木高度与激光雷达云测量的树木高度非常匹配(R2 = 0.99)。圆锥树冠的针叶树精度最高。我们还根据摄影测量点云估算了2019年至2021年间不同树种的高度增量。年高度增长量最大的是西伯利亚松(52 cm),最小的是孟氏伪杉木(32 cm)。总的来说,我们的研究结果表明,在植物园或城市公园的多物种林分以及天然林中,使用摄影测量和激光雷达数据进行树木测绘和估计树木属性的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tree attribute assessment in urban greenwood using ground-based LiDAR and multiseasonal aerial photography data
Advances in LiDAR and unmanned aerial vehicle technology have made high-resolution data available, which can be used for individual tree detection and assessing tree attributes. The accuracy of these assessments is still not clear for stands with high tree species diversity as well as leaf-off and leaf-on conditions. The aim of this study was to assess the quality of tree top detection and individual tree heights extracted from photogrammetric point clouds and canopy height models as well as ground-based LiDAR clouds in mixed and coniferous forest stands depending on the phenological stage. The study has been carried out in the Botanical Garden of the Petrozavodsk State University (Republic of Karelia, Russia). Four flight missions (in 2019–2021) using Phantom 4 Pro quadcopter were conducted in the arboretum (> 200 tree species) during periods of leafless, leaf biomass growth, full foliage and autumn leaf colouration. A single ground-based laser scanning was performed using a Leica BLK 360. Multiseasonal ultra-high resolution orthophoto mosaics (1.1–2.8 cm/pixel), photogrammetric point clouds (average density is 4200 points/m2), as well as LiDAR clouds (11 600 points/m2) were obtained. Further analysis was performed on three sites differing in tree species composition, tree density and site area. Tree tops were automatically detected from photogrammetric point clouds and their heights were estimated using R environment software. We found that most of the trees (78.9%) were correctly detected by algorithms based on photogrammetric data collected in periods of full foliage and autumn colouration. We also found that the number of false positive (FP) and false negative (FN) cases increased with decreasing in green biomass on deciduous trees. Compared with an average value, tree detection quality increased by 9.4% for coniferous trees with cone-shaped crowns (Abies sibirica, A. balsamea, A. fraseri, Picea abies, P. pungens, P. omorika, Pseudotsuga menziesii, Larix sibirica) regardless of the tree density, and tree detection quality decreased by 10% for coniferous trees with an ellipsoidal-shaped crowns (e.g. Thuja occidentalis, genus Pinus) or in cases for broad-leaved trees with high tree density. The lowest value of tree detection quality (F = 0.49) was found for the leafless period. High values (F = 0.84) obtained for periods of full foliage and autumn colouration indicates that tree detection quality was well in general. For the biomass growth period, this value (F = 0.69) also indicates a high quality of tree detection results. We also found that tree heights estimated using photogrammetric data well matched with tree heights measured on LiDAR clouds (R2 = 0.99). The highest accuracy was obtained for coniferous trees with cone-shaped crowns. We also estimated the height increments of different tree species between 2019 and 2021 based on photogrammetric point clouds. The highest annual height increment was obtained for Pinus sibirica (52 cm), and the lowest for Pseudotsuga menziesii (32 cm). Overall, our results have shown the potential to use photogrammetric and LiDAR data for tree mapping and estimating tree attributes in multi-species forest stands of arboretums or urban parks, as well as in natural forests.
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来源期刊
Nature Conservation Research
Nature Conservation Research BIODIVERSITY CONSERVATION-
CiteScore
4.70
自引率
5.90%
发文量
34
审稿时长
13 weeks
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