Evaluation of SfM for surface characterization of a snow-covered glacier through comparison with aerial lidar

IF 1.3 Q3 REMOTE SENSING Journal of Unmanned Vehicle Systems Pub Date : 2020-05-01 DOI:10.1139/juvs-2019-0006
E. Bash, B. Moorman, B. Menounos, Allison Gunther
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引用次数: 9

Abstract

The combined use of unmanned aerial vehicles (UAVs) and structure-from-motion (SfM) is rapidly growing as a cost-effective alternative to airborne laser scanning (lidar) for reconstructing glacier surfaces. Here we present a thorough analysis of the precision and accuracy of a photogrammetric point cloud (PPC) constructed through SfM from UAV-acquired imagery over the spring snow surface at Haig Glacier, Alberta, Canada, the first of its kind in a glaciological setting. An aerial lidar survey conducted concurrently with UAV surveys was used to examine spatial patterns in the PPC accuracy. We found a median error in the PPC of −0.046 ± 0.067 m, with a 95% quantile of 0.218 m. Mean precision of the PPC was 0.199 m, with large spatially clustered outliers. We found an association between high-error, low-precision, and high-surface roughness in the PPC, likely due to illumination characteristics of the snow surface. Glacier surface reconstructions are important for geodetic mass balance measurements, giving key insights into changing climate where in situ measurements are difficult to obtain. The PPC errors are small enough that they would have minimal effects on total mass balance, should the technique be applied across the glacier.
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通过与航空激光雷达的比较,评估SfM对积雪冰川表面特征的影响
无人机(UAV)和运动结构(SfM)的结合使用正在迅速发展,成为重建冰川表面的机载激光扫描(激光雷达)的一种具有成本效益的替代方案。在这里,我们对加拿大阿尔伯塔省黑格冰川春季雪面上通过无人机获取的图像通过SfM构建的摄影测量点云(PPC)的精度和准确性进行了全面分析,这是冰川学环境中的首次。与无人机调查同时进行的航空激光雷达调查用于检查PPC精度的空间模式。我们发现PPC的中值误差为-0.046 ± 0.067 m,95%的分位数为0.218 m。PPC的平均精度为0.199 m,具有较大的空间聚集异常值。我们发现PPC中的高误差、低精度和高表面粗糙度之间存在关联,这可能是由于雪表面的照明特性造成的。冰川表面重建对于大地质量平衡测量很重要,为难以获得原位测量的气候变化提供了关键见解。PPC误差很小,如果该技术在冰川上应用,它们对总质量平衡的影响很小。
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CiteScore
5.30
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0.00%
发文量
2
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