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Voxel-Based Spatial Filtering Method for Canopy Height Retrieval from Airborne Single-Photon Lidar

机译:基于Voxel的机载单光子激光雷达冠层高度反演空间滤波方法

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Airborne single-photon lidar (SPL) is a new technology that holds considerable potential for forest structure and carbon monitoring at large spatial scales because it acquires 3D measurements of vegetation faster and more efficiently than conventional lidar instruments. However, SPL instruments use green wavelength (532 nm) lasers, which are sensitive to background solar noise, and therefore SPL point clouds require more elaborate noise filtering than other lidar instruments to determine canopy heights, particularly in daytime acquisitions. Histogram-based aggregation is a commonly used approach for removing noise from photon counting lidar data, but it reduces the resolution of the dataset. Here we present an alternate voxel-based spatial filtering method that filters noise points efficiently while largely preserving the spatial integrity of SPL data. We develop and test our algorithms on an experimental SPL dataset acquired over Garrett County in Maryland, USA. We then compare canopy attributes retrieved using our new algorithm with those obtained from the conventional histogram binning approach. Our results show that canopy heights derived using the new algorithm have a strong agreement with field-measured heights ( r 2 = 0.69, bias = 0.42 m, RMSE = 4.85 m) and discrete return lidar heights ( r 2 = 0.94, bias = 1.07 m, RMSE = 2.42 m). Results are consistently better than height accuracies from the histogram method (field data: r 2 = 0.59, bias = 0.00 m, RMSE = 6.25 m; DRL: r 2 = 0.78, bias = ?0.06 m and RMSE = 4.88 m). Furthermore, we find that the spatial-filtering method retains fine-scale canopy structure detail and has lower errors over steep slopes. We therefore believe that automated spatial filtering algorithms such as the one presented here can support large-scale, canopy structure mapping from airborne SPL data.
机译:机载单光子激光雷达(SPL)是一项新技术,因为与常规激光雷达仪器相比,它可以更快,更高效地获取植被的3D测量值,因此在大空间尺度上具有巨大的森林结构和碳监测潜力。但是,SPL仪器使用对背景太阳噪声敏感的绿色波长(532 nm)激光器,因此,SPL点云需要比其他激光雷达仪器更复杂的噪声过滤来确定机盖高度,尤其是在白天采集时。基于直方图的聚合是从光子计数激光雷达数据中去除噪声的常用方法,但是它降低了数据集的分辨率。在这里,我们提出了一种替代的基于体素的空间滤波方法,该方法可以有效地过滤噪声点,同时很大程度上保留SPL数据的空间完整性。我们在美国马里兰州加勒特县获得的实验SPL数据集上开发和测试算法。然后,我们将使用新算法检索的树冠属性与从常规直方图合并方法获得的树冠属性进行比较。我们的结果表明,使用新算法得出的顶篷高度与现场测得的高度(r 2 = 0.69,偏差= 0.42 m,RMSE = 4.85 m)和离散返回激光雷达高度(r 2 = 0.94,偏差= 1.07)具有很强的一致性。 m,RMSE = 2.42 m)。结果始终比直方图方法的高度精度好(现场数据:r 2 = 0.59,偏差= 0.00 m,RMSE = 6.25 m; DRL:r 2 = 0.78,偏差=?0.06 m,RMSE = 4.88 m)。此外,我们发现空间滤波方法保留了小规模的冠层结构细节,并且在陡坡上具有较低的误差。因此,我们认为,自动空间滤波算法(如此处介绍的算法)可以支持从机载SPL数据进行的大规模树冠结构映射。

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