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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Mapping The Understorey Of Deciduous Woodland From Leaf-on And Leaf-off Airborne Lidar Data: A Case Study In Lowland Britain
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Mapping The Understorey Of Deciduous Woodland From Leaf-on And Leaf-off Airborne Lidar Data: A Case Study In Lowland Britain

机译:从有叶和无叶的机载激光雷达数据绘制落叶林地下层的情况:以英国低地为例

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This study examines the understorey information present in discrete-return LiDAR (Light Detection And Ranging) data acquired for temperate deciduous woodland in mid summer (leaf-on) and in early spring when the understorey had mostly leafed out, but the overstorey had only just begun budburst (referred to here as leaf-off). The woodland is ancient, semi-natural broadleaf and has a heterogeneous structure with a mostly closed canopy overstorey and a patchy understorey layer. In this study, the understorey was defined as suppressed trees and shrubs growing beneath an overstorey canopy. Forest mensuration data for the study site were examined to identify thresholds (taking the 95th percentile) for crown depth as a percentage of crown top height for the six overstorey tree species present. These data were used in association with a digital tree species map and leaf-on first return LiDAR data, to identify the possible depth of space available below the overstorey canopy in which an understorey layer could exist. The leaf-off last return LiDAR data were then examined to identify whether they contained information on where this space was occupied by suppressed trees or shrubs forming an understorey. Thus, understorey was mapped from the leaf-off last return data where the height was below the predicted crown depth. A height threshold of 1 m was applied to separate the ground vegetation layer from the understorey. The derived understorey model formed a discontinuous layer covering 46.4 ha (or 31% of the study site), with an average height of 2.64 m and a 77% correspondence with field data on the presence/absence of suppressed trees and shrubs (kappa 0.53). Because the first return data in leaf-on and leaf-off conditions were very similar (differing by an average of just 0.87 m), it was also possible to map the understorey layer using leaf-off data alone. The resultant understorey model covered 39.4 ha (or 26% of the study site), and had a 72% correspondence with field data on the presence/absence of suppressed trees and shrubs (kappa 0.45). This moderate reduction in the area of understorey mapped and associated accuracy came with a saving of half of all data acquisition and pre-processing costs. Whilst the understorey modelling presented here undoubtedly benefited from the specific timing of LiDAR data acquisition and from ancillary data available for the study site, the conclusions have resonance beyond this case study. Given that the understorey and overstorey canopies in lowland broadleaf woodland can merge into one another, the modelling of understorey information from discrete-return LiDAR data must consider overstorey canopy characteristics and laser penetration through the overstorey. It is not adequate in such circumstances to apply simple height thresholds to LiDAR height frequency distributions, as this is unlikely to distinguish whether a return has backscattered from the lower parts of the overstorey canopy or from near the surface of the understorey canopy.
机译:这项研究调查了在夏季中期(叶上)和春季初层(主要是下层落叶)但温带落叶林获得的离散返回LiDAR(光检测和测距)数据中存在的下层信息。开始发芽(在此称为“叶子脱落”)。林地是古老的,半天然的阔叶林,具有异质结构,大部分为封闭的冠层,下层为片状。在本研究中,底层被定义为在高层檐下生长的被压抑的树木和灌木。检查了研究地点的森林测定数据,以确定树冠深度的阈值(占第95个百分位数)占目前存在的六种超高树种的树冠最高高度的百分比。这些数据与数字树种地图和叶上首次返回的LiDAR数据结合使用,以识别可能存在下层的下层冠层下方可用的空间深度。然后检查最后离开的返回的LiDAR数据,以确定它们是否包含有关此空间被抑制的树木或灌木丛所占据的信息。因此,从高度低于预测的树冠深度的叶的最后返回数据映射下层。应用1 m的高度阈值将地面植被层与底层分开。导出的地下层模型形成了一个不连续的层,覆盖了46.4公顷(或研究场地的31%),平均高度为2.64 m,与被抑制树木和灌木存在/不存在的田间数据对应为77%(kappa 0.53) 。因为在上叶子和下叶子条件下的首次返回数据非常相似(平均相差仅0.87 m),所以也可以仅使用下叶子数据来绘制地下层。最终的地下模型覆盖了39.4公顷(占研究地点的26%),并且与田间数据是否存在被抑制的树木和灌木(72kappa 0.45)具有72%的对应关系。底层存储区域的面积和相关准确性的这种适度减少带来了一半的数据采集和预处理成本节省。虽然这里介绍的底层模型无疑受益于LiDAR数据采集的特定时间以及研究现场可用的辅助数据,但结论超出了本案例研究范围。鉴于低地阔叶林地中的下层和上层冠层可以相互融合,因此基于离散返回LiDAR数据的下层信息建模必须考虑层上的冠层特性和激光穿过层上的穿透。在这种情况下,仅对LiDAR高度频率分布应用简单的高度阈值是不够的,因为这不太可能区分回程是从高层檐篷的下部还是从底层檐篷的表面向后散射。

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