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Optimising UAV topographic surveys processed with structure-from-motion: Ground control quality, quantity and bundle adjustment

机译:通过动感结构优化无人机地形测量:地面控制质量,数量和捆束调整

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Structure-from-motion (SfM) algorithms greatly facilitate the production of detailed topographic models from photographs collected using unmanned aerial vehicles (UAVs). However, the survey quality achieved in published geomorphological studies is highly variable, and sufficient processing details are never provided to understand fully the causes of variability. To address this, we show how survey quality and consistency can be improved through a deeper consideration of the underlying photogrammetric methods. We demonstrate the sensitivity of digital elevation models (DEMs) to processing settings that have not been discussed in the geomorphological literature, yet are a critical part of survey georeferencing, and are responsible for balancing the contributions of tie and control points. We provide a Monte Carlo approach to enable geomorphologists to (1) carefully consider sources of survey error and hence increase the accuracy of SfM-based DEMs and (2) minimise the associated field effort by robust determination of suitable lower-density deployments of ground control. By identifying appropriate processing settings and highlighting photogrammetric issues such as over-parameterisation during camera self-calibration, processing artefacts are reduced and the spatial variability of error minimised. We demonstrate such DEM improvements with a commonly-used SfM-based software (PhotoScan), which we augment with semi-automated and automated identification of ground control points (GCPs) in images, and apply to two contrasting case studies an erosion gully survey (Taroudant, Morocco) and an active landslide survey (Super-Sauze, France). In the gully survey, refined processing settings eliminated step-like artefacts of up to similar to 50 mm in amplitude, and overall DEM variability with GCP selection improved from 37 to 16 mm. In the much more challenging landslide case study, our processing halved planimetric error to similar to 0.1 m, effectively doubling the frequency at which changes in landslide velocity could be detected. In both case studies, the Monte Carlo approach provided a robust demonstration that field effort could by substantially reduced by only deploying approximately half the number of GCPs, with minimal effect on the survey quality. To reduce processing artefacts and promote confidence in SfM-based geomorphological surveys, published results should include processing details which "include the image residuals for both tie points and GCPs, and ensure that these are considered appropriately within the workflow. (C) 2016 Elsevier B.V. All rights reserved.
机译:运动结构(SfM)算法极大地促进了使用无人飞行器(UAV)收集的照片生成详细的地形模型。但是,在已发表的地貌学研究中所达到的调查质量是高度可变的,并且从来没有提供足够的处理细节来完全理解可变性的原因。为了解决这个问题,我们展示了如何通过更深入地考虑基础摄影测量方法来提高调查质量和一致性。我们证明了数字高程模型(DEM)对处理设置的敏感性,这些处理设置在地貌学文献中尚未讨论,但仍是勘测地理配准的关键部分,并负责平衡平局和控制点的贡献。我们提供了一种蒙特卡洛方法,使地貌学家能够(1)仔细考虑测量误差的来源,从而提高基于SfM的DEM的准确性,以及(2)通过可靠地确定合适的低密度地面控制部署来最大程度地减少相关的现场工作。通过识别适当的处理设置并突出显示摄影测量问题,例如在相机自校准期间出现过参数化,可以减少处理伪像,并使误差的空间变异性最小化。我们使用常用的基于SfM的软件(PhotoScan)展示了这种DEM的改进,并通过半自动和自动识别图像中的地面控制点(GCP)进行了补充,并将其应用于两个对比案例研究中的侵蚀沟调查(摩洛哥塔鲁丹特(Taroudant)和活跃的滑坡调查(法国Super-Sauze)。在沟壑调查中,经过改进的处理设置消除了幅度高达50毫米的阶梯状伪像,并且选择GCP时的整体DEM可变性从37毫米提高到16毫米。在更具挑战性的滑坡案例研究中,我们的处理将平面误差减少了近一半,至0.1 m,有效地使检测滑坡速度变化的频率加倍。在这两个案例研究中,蒙特卡洛方法都提供了有力的证明,仅部署大约一半数量的GCP,就可以大大减少现场工作,而对调查质量的影响却很小。为减少处理伪像并增强对基于SfM的地貌学调查的信心,已发布的结果应包括处理细节,其中包括“包括结点和GCP的图像残差,并确保在工作流程中适当考虑这些残差。(C)2016 Elsevier BV版权所有。

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