首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >An accurate and computationally efficient algorithm for ground peak identification in large footprint waveform LiDAR data
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An accurate and computationally efficient algorithm for ground peak identification in large footprint waveform LiDAR data

机译:一种精确且计算效率高的大足迹波形LiDAR数据中地面峰值识别算法

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Large footprint waveform LiDAR sensors have been widely used for numerous airborne studies. Ground peak identification in a large footprint waveform is a significant bottleneck in exploring full usage of the waveform datasets. In the current study, an accurate and computationally efficient algorithm was developed for ground peak identification, called Filtering and Clustering Algorithm (FICA). The method was evaluated on Land, Vegetation, and Ice Sensor (LVIS) waveform datasets acquired over Central NY. FICA incorporates a set of multi-scale second derivative filters and a k-means clustering algorithm in order to avoid detecting false ground peaks. FICA was tested in five different land cover types (deciduous trees, coniferous trees, shrub, grass and developed area) and showed more accurate results when compared to existing algorithms. More specifically, compared with Gaussian decomposition, the RMSE ground peak identification by FICA was 2.82 m (5.29 m for GD) in deciduous plots, 3.25 m (4.57 m for GD) in coniferous plots, 2.63 m (2.83 m for GD) in shrub plots, 0.82 m (0.93 m for GD) in grass plots, and 0.70 m (0.51 m for GD) in plots of developed areas. FICA performance was also relatively consistent under various slope and canopy coverage (CC) conditions. In addition, FICA showed better computational efficiency compared to existing methods. FICA's major computational and accuracy advantage is a result of the adopted multi-scale signal processing procedures that concentrate on local portions of the signal as opposed to the Gaussian decomposition that uses a curve-fitting strategy applied in the entire signal. The FICA algorithm is a good candidate for large-scale implementation on future space-borne waveform LiDAR sensors.
机译:大波形波形LiDAR传感器已广泛用于许多机载研究。在探查波形数据集的充分利用方面,大面积波形中的地峰识别是一个重要的瓶颈。在当前的研究中,开发了一种精确且计算效率高的地面峰识别算法,称为滤波和聚类算法(FICA)。在纽约中央地区获得的土地,植被和冰雪传感器(LVIS)波形数据集上对该方法进行了评估。 FICA合并了一组多尺度的二阶导数滤波器和k-means聚类算法,以避免检测到错误的接地峰。 FICA在五种不同的土地覆被类型(落叶树,针叶树,灌木,草和发达地区)中进行了测试,与现有算法相比,其结果更为准确。更具体地讲,与高斯分解相比,通过FICA进行的RMSE地面峰识别在落叶地中为2.82 m(对于GD为5.29 m),在针叶地中为3.25 m(对于GD为4.57 m),在灌木中为2.63 m(对于GD为2.83 m)。地块,在草地中为0.82 m(GD为0.93 m),在发达地区为0.70 m(GD为0.51 m)。在各种斜坡和树冠覆盖(CC)条件下,FICA的性能也相对一致。此外,与现有方法相比,FICA显示出更好的计算效率。 FICA的主要计算和准确性优势是采用了多尺度信号处理程序的结果,该程序专注于信号的局部部分,而不是使用对整个信号应用曲线拟合策略的高斯分解。 FICA算法非常适合在未来的星载波形LiDAR传感器上大规模实施。

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