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Reliability in constrained Gauss-Markov models: An analytical and differential approach with applications in photogrammetry.

机译:约束高斯-马尔可夫模型的可靠性:一种在摄影测量学中的应用的分析和微分方法。

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摘要

Reliability analysis explains the contribution of each observation in an estimation model to the overall redundancy of the model, taking into account the geometry of the network as well as the precision of the observations themselves. It is principally used to design networks resistant to outliers in the observations by making the outliers more detectible using standard statistical tests. It has been studied extensively, and principally, in (linearized) Gauss-Markov models. We show how the same analysis may be extended to various rank-deficient and constrained (linearized) Gauss-Markov models and present preliminary work for its use in unconstrained Gauss-Helmert models. In particular, we analyze the prominent "reliability matrix" of the constrained model to separate the contribution of the constraints to the redundancy of the observations from the observations themselves.; In addition, we make extensive use of matrix differential calculus to find the Jacobian of the reliability matrix with respect to the parameters that define the network through both the original design and constraint matrices. The resulting Jacobian matrix reveals the sensitivity of elements of the observation reliability matrix (and the redundancy numbers along its diagonal) to particular design parameters and allows the model to identify weak areas in the network where changes in observations may result in unreliable observations.; We apply the analytical framework to photogrammetric networks in which the exterior orientation parameters of images comprising a block are directly observed by calibrated GPS/INS systems. Such directly oriented blocks offer the potential of significantly reduced ground control survey cost but suffer from lack of redundancy. Tie-point observations provide some redundancy (for relative orientation only and even a few collinear tie-point and tie-point distance constraints improve the reliability of these direct observations by as much as 33%. Using the same theory we compare networks in which tie-points are observed on multiple photos (n-fold points and tie-points are observed in photo pairs only (two-fold points. Apparently, the use of n-fold tie-points does not significantly degrade the reliability of the direct exterior observation observations. Coplanarity constraints added to the common two-fold points do not add significantly to the reliability of the direct exterior orientation observations.; The differential calculus results may be used to provide a new measure of redundancy number stability in networks. We show that a typical photogrammetric network with n-fold tie-points was less stable with respect to at least some tie-point movement than an equivalent network with n-fold tie-points decomposed into many two-fold tie-points.
机译:可靠性分析考虑了网络的几何形状以及观测值本身的精度,解释了估计模型中每个观测值对模型整体冗余的贡献。它主要用于通过使用标准统计检验使异常值更易于检测来设计对观察值具有异常值的网络。已经广泛地,主要地在(线性化的)高斯-马尔可夫模型中对其进行了研究。我们展示了如何将相同的分析扩展到各种秩不足和约束(线性化)的Gauss-Markov模型,并介绍其在无约束的Gauss-Helmert模型中的使用的初步工作。特别是,我们分析了约束模型的突出的“可靠性矩阵”,以将约束对观测冗余的贡献与观测本身分开。另外,我们大量使用矩阵微积分来求出关于可靠性矩阵的雅可比矩阵,该矩阵通过原始设计矩阵和约束矩阵来定义网络。所得的雅可比矩阵揭示了观测可靠性矩阵的元素(及其对角线的冗余数)对特定设计参数的敏感性,并允许该模型识别网络中的薄弱区域,在这些薄弱区域中,观测值的变化可能导致观测值不可靠。我们将分析框架应用于摄影测量网络,其中通过校准的GPS / INS系统直接观察包含块的图像的外部方向参数。这种直接定向的模块具有显着降低地面控制测量成本的潜力,但缺乏冗余性。联络点观测提供了一些冗余(仅对于相对方向,甚至一些共线联络点和联络点距离约束将这些直接观测的可靠性提高了多达33%。使用相同的理论,我们比较了其中联络的网络多张照片上观察到双点(仅在照片对中观察到双折点(双折点)。显然,使用双折点不会显着降低直接外部观察的可靠性观察到的共平面约束添加到共同的两重点不会显着增加直接外部定向观察的可靠性;微分计算结果可用于提供网络中冗余数稳定性的新度量。具有至少n个连接点的典型摄影测量网络在至少某些连接点移动方面不如分解具有n个折叠点的等效网络稳定nto许多双重联系点。

著录项

  • 作者

    Cothren, Jackson D.;

  • 作者单位

    The Ohio State University.;

  • 授予单位 The Ohio State University.;
  • 学科 Engineering Civil.; Geodesy.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 131 p.
  • 总页数 131
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 建筑科学;大地测量学;
  • 关键词

  • 入库时间 2022-08-17 11:44:23

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