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Delineating Individual Trees from Lidar Data: A Comparison of Vector- and Raster-based Segmentation Approaches

机译:从激光雷达数据描绘单个树:基于矢量和基于栅格的分割方法的比较

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Light detection and ranging (lidar) data is increasingly being used for ecosystem monitoring across geographic scales. This work concentrates on delineating individual trees in topographically-complex, mixed conifer forest across the California’s Sierra Nevada. We delineated individual trees using vector data and a 3D lidar point cloud segmentation algorithm, and using raster data with an object-based image analysis (OBIA) of a canopy height model (CHM). The two approaches are compared to each other and to ground reference data. We used high density (9 pulses/m2), discreet lidar data and WorldView-2 imagery to delineate individual trees, and to classify them by species or species types. We also identified a new method to correct artifacts in a high-resolution CHM. Our main focus was to determine the difference between the two types of approaches and to identify the one that produces more realistic results. We compared the delineations via tree detection, tree heights, and the shape of the generated polygons. The tree height agreement was high between the two approaches and the ground data (r2: 0.93–0.96). Tree detection rates increased for more dominant trees (8–100 percent). The two approaches delineated tree boundaries that differed in shape: the lidar-approach produced fewer, more complex, and larger polygons that more closely resembled real forest structure.
机译:光检测和测距(激光)数据越来越多地用于跨地理尺度的生态系统监视。这项工作的重点是在加利福尼亚内华达山脉的地形复杂的混合针叶林中描绘出单独的树木。我们使用矢量数据和3D激光雷达点云分割算法,以及将栅格数据与冠层高度模型(CHM)的基于对象的图像分析(OBIA)一起使用,来描绘单个树。将这两种方法相互比较,并与地面参考数据进行比较。我们使用高密度(9脉冲/ m 2 ),谨慎的激光雷达数据和WorldView-2图像来描绘单个树木,并按物种或物种类型对其进行分类。我们还确定了一种校正高分辨率CHM中伪影的新方法。我们的主要重点是确定两种方法之间的区别,并确定产生更实际结果的方法。我们通过树检测,树高和生成的多边形的形状比较了轮廓。两种方法与地面数据之间的树高一致性很高(r 2 :0.93-0.96)。优势树的检出率提高了(8%–100%)。两种方法勾勒出形状各异的树边界:激光雷达法产生的多边形更少,更复杂,多边形更大,更接近真实的森林结构。

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