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Modeling individual trees in an urban environment using dense discrete return LiDAR

机译:使用密集的离散返回LiDAR对城市环境中的单个树木建模

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The urban forest is becoming increasingly important in the contexts of urban green space, carbon sequestration and offsets, and socio-economic impacts. This has led to a recent increase in attention being paid to urban environmental management. Tree biomass, specifically, is a vital indicator of carbon storage and has a direct impact on urban forest health and carbon sequestration. As an alternative to expensive and time-consuming field surveys, remote sensing has been used extensively in measuring dynamics of vegetation and estimating biomass. Light detection and ranging (LiDAR) has proven especially useful to characterize the three dimensional (3D) structure of forests. In urban contexts however, information is frequently required at the individual tree level, necessitating the proper delineation of tree crowns. Yet, crown delineation is challenging for urban trees where a wide range of stress factors and cultural influences affect growth. In this paper high resolution LiDAR data were used to infer biomass based on individual tree attributes. A multi-tiered delineation algorithm was designed to extract individual tree-crowns. At first, dominant tree segments were obtained by applying watershed segmentation on the crown height model (CHM). Next, prominent tree top positions within each segment were identified via a regional maximum transformation and the crown boundary was estimated for each of the tree tops. Finally, undetected trees were identified using a best-fitting circle approach. After tree delineation, individual tree attributes were used to estimate tree biomass and the results were validated with associated field mensuration data. Results indicate that the overall tree detection accuracy is nearly 80%, and the estimated biomass model has an adjusted-R~2 of 0.5.
机译:在城市绿色空间,碳固存和碳补偿以及社会经济影响的背景下,城市森林变得越来越重要。这导致最近对城市环境管理的关注增加了。具体地说,树木生物量是碳储存的重要指标,并且直接影响城市森林健康和碳固存。作为昂贵且耗时的野外调查的替代方法,遥感已广泛用于测量植被动态和估算生物量。事实证明,光检测和测距(LiDAR)对表征森林的三维(3D)结构特别有用。但是,在城市环境中,经常需要在单个树木级别上提供信息,因此必须正确地描绘出树冠。然而,树冠的划定对于城市树木而言是具有挑战性的,因为城市树木受到各种各样的压力因素和文化影响而影响生长。在本文中,高分辨率LiDAR数据用于根据单个树的属性推断生物量。设计了多层划界算法以提取单个树冠。首先,通过在树冠高度模型(CHM)上应用分水岭分割来获得优势树段。接下来,通过区域最大变换确定每个段内突出的树梢位置,并估计每个树梢的树冠边界。最后,使用最佳拟合圆法确定未检测到的树木。树木划定后,使用单个树木属性来估计树木生物量,并使用相关的现场测量数据验证结果。结果表明,总的树木检测精度接近80%,估计的生物量模型的调整后R〜2为0.5。

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