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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Adaptive stopping criterion for top-down segmentation of ALS point clouds in temperate coniferous forests
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Adaptive stopping criterion for top-down segmentation of ALS point clouds in temperate coniferous forests

机译:温带针叶林ALS点云自上而下分割的自适应停止准则

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The development of new approaches to individual tree crown delineation for forest inventory and management is an important area of ongoing research. The increasing availability of high density ALS (Airborne Laser Scanning) point clouds offers the opportunity to segment the individual tree crowns and deduce their geometric properties with a high level of accuracy. Top-down segmentation methods such as normalized cut are established approaches for delineation of single trees in ALS point clouds. However, overlapping crowns and branches of nearby trees frequently cause over- and under-segmentation due to the difficulty of defining a single criterion for stopping the partitioning process. In this work, we investigate an adaptive stopping criterion based on the visual appearance of trees within the point clouds. We focus on coniferous trees due to their well-defined crown shapes in comparison to deciduous trees. This approach is based on modeling the coniferous tree crowns with elliptic paraboloids to infer whether a given 3D scene contains exactly one or more than one tree. For each processed scene, candidate tree peaks are generated from local maxima found within the point cloud. Next, paraboloids are fitted at the peaks using a random sample consensus procedure and classified based on their geometric properties. The decision to stop or continue partitioning is determined by finding a set of non-overlapping paraboloids. Experiments were performed on three plots from the Bavarian Forest National Park in Germany. Based on validation data from the field inventory, results show that our approach improves the segmentation quality by up to 10% across plots with different properties, such as average tree height and density. This indicates that the new adaptive stopping criterion for normalized cut segmentation is capable of delineating tree crowns more accurately than a static stopping criterion based on a constant Ncut threshold value.
机译:开发用于森林清单和管理的单个树冠划界的新方法是正在进行研究的重要领域。高密度ALS(机载激光扫描)点云的可用性不断提高,提供了分割单个树冠并以高精确度推论其几何特性的机会。自上而下的分割方法(例如归一化分割)是在ALS点云中描绘单个树的方法。但是,由于难以定义用于停止分区过程的单个标准,因此附近树木的树冠和树枝重叠经常导致过度分割和分割不足。在这项工作中,我们研究了基于点云内树木的视觉外观的自适应停止准则。由于与针叶树相比,针叶树具有清晰的树冠形状,因此我们将重点放在针叶树上。此方法基于使用椭圆形抛物面建模针叶树冠以推断给定3D场景是否恰好包含一棵或多于一棵树。对于每个经过处理的场景,将从点云中找到的局部最大值生成候选树峰。接下来,使用随机样本共识程序将抛物面拟合到峰上,并根据其几何特性对其进行分类。通过查找一组不重叠的抛物面来确定停止或继续进行分区的决定。在德国巴伐利亚森林国家公园的三个地块上进行了实验。根据来自现场清单的验证数据,结果表明,我们的方法可在具有不同属性(例如平均树高和密度)的地块上将分割质量提高多达10%。这表明用于归一化分割的新的自适应停止准则比基于恒定Ncut阈值的静态停止准则能够更准确地描绘树冠。

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