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Tree Species Detection Accuracies Using Discrete Point Lidar and Airborne Waveform Lidar

机译:离散点激光雷达和机载波形激光雷达的树种检测精度

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Species information is a key component of any forest inventory. However, when performing forest inventory from aerial scanning Lidar data, species classification can be very difficult. We investigated changes in classification accuracy while identifying five individual tree species (Douglas-fir, western redcedar, bigleaf maple, red alder, and black cottonwood) in the Pacific Northwest United States using two data sets: discrete point Lidar data alone and discrete point data in combination with waveform Lidar data. Waveform information included variables which summarize the frequency domain representation of all waveforms crossing individual trees. Discrete point data alone provided 79.2 percent overall accuracy (kappa = 0.74) for all 5 species and up to 97.8 percent (kappa = 0.96) when comparing individual pairs of these 5 species. Incorporating waveform information improved the overall accuracy to 85.4 percent (kappa = 0.817) for five species, and in several two-species comparisons. Improvements were most notable in comparing the two conifer species and in comparing two of the three hardwood species.
机译:物种信息是任何森林清单的关键组成部分。但是,从航空扫描激光雷达数据执行森林清查时,物种分类可能非常困难。我们使用两个数据集(仅离散点激光雷达数据和离散点数据)确定了美国西北太平洋地区的五种树种(道格拉斯冷杉,西部红杉,大叶枫,红al木和黑杨木),同时研究了分类准确性的变化。结合波形激光雷达数据。波形信息包括变量,这些变量总结了穿过单个树的所有波形的频域表示。仅离散点数据就为所有5个物种提供了79.2%的整体准确度(kappa = 0.74),当比较这5个物种的单独对时,高达97.8%(kappa = 0.96)。合并波形信息后,五种动物的整体准确度提高了85.4%(kappa = 0.817),并进行了两种物种的比较。比较两个针叶树种和比较三个硬木树种中的两个时,改进最为明显。

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