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Applications of structure-from-motion photogrammetry to fluvial geomorphology.

机译:运动构造摄影测量技术在河流地貌中的应用。

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摘要

Since 2011, Structure-from-Motion Multi-View Stereo Photogrammetry (SfM or SfM-MVS) has gone from an overlooked computer vision technique to an emerging methodology for collecting low-cost, high spatial resolution three-dimensional data for topographic or surface modeling in many academic fields. This dissertation examines the applications of SfM to the field of fluvial geomorphology. My research objectives for this dissertation were to determine the error and uncertainty that are inherent in SfM datasets, the use of SfM to map and monitor geomorphic change in a small river restoration project, and the use of SfM to map and extract data to examine multi-scale geomorphic patterns for 32 kilometers of the Middle Fork John Day River. SfM provides extremely consistent results, although there are systematic errors that result from certain survey patterns that need to be accounted for in future applications. Monitoring change on small restoration stream channels with SfM gave a more complete spatial perspective than traditional cross sections on small-scale geomorphic change. Helicopter-based SfM was an excellent platform for low-cost, large scale fluvial remote sensing, and the data extracted from the imagery provided multi-scalar perspectives of downstream patterns of channel morphology. This dissertation makes many recommendations for better and more efficient SfM surveys at all of the spatial scales surveyed. By implementing the improvements laid out here and by other authors, SfM will be a powerful tool that will make 3D data collection more accessible to the wider geomorphic community.
机译:自2011年以来,动态结构多视图立体摄影测量法(SfM或SfM-MVS)已从被忽视的计算机视觉技术发展成为一种新兴的方法,用于收集低成本,高空间分辨率的三维数据以进行地形或表面建模在许多学术领域。本文探讨了SfM在河流地貌学领域的应用。本论文的研究目标是确定SfM数据集固有的误差和不确定性,使用SfM绘制和监测小型河流恢复项目中的地貌变化以及使用SfM绘制和提取数据以检查多个中叉约翰·戴特河(John Day River)32公里的大尺度地貌模式。 SfM提供了极其一致的结果,尽管某些调查模式会导致系统错误,需要在将来的应用程序中加以考虑。与传统的小规模地貌变化剖面相比,使用SfM监测小型恢复河道的变化提供了更完整的空间视角。基于直升机的SfM是低成本,大规模河流遥感的绝佳平台,并且从图像中提取的数据提供了通道形态下游模式的多尺度观点。本文针对在所有被调查的空间尺度上进行更好,更有效的SfM调查提出了许多建议。通过实施此处和其他作者提出的改进措施,SfM将成为功能强大的工具,使更广泛的地貌界人士更容易访问3D数据收集。

著录项

  • 作者

    Dietrich, James Thomas.;

  • 作者单位

    University of Oregon.;

  • 授予单位 University of Oregon.;
  • 学科 Remote sensing.;Geomorphology.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 124 p.
  • 总页数 124
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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