A simple iterative algorithm based on weighted least-squares for errors-in-variables models: Examples of coordinate transformations

IF 1.2 Q4 REMOTE SENSING
Zhijun Kang
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引用次数: 0

Abstract

Abstract Although weighted total least-squares (WTLS) adjustment within the errors-in-variables (EIV) model is a rigorous method developed for parameter estimation, its exact solution is complicated since the matrix operations are extremely time-consuming in the whole repeated iteration process, especially when dealing with large data sets. This paper rewrites the EIV model to a similar Gauss–Markov model by taking the random error of the design matrix and observations into account, and reformulates it as an iterative weighted least-squares (IWLS) method without complicated theoretical derivation. IWLS approximates the “exact solution” of the general WTLS and provides a good balance between computational efficiency and estimation accuracy. Because weighted LS (WLS) method has a natural advantage in solving the EIV model, we also investigate whether WLS can directly replace IWLS and WTLS to implement the EIV model when the parameters in the EIV model are small. The results of numerical experiments confirmed that IWLS can obtain almost the same solution as the general WTLS solution of Jazaeri [21] and WLS can achieve the same accuracy as the general WTLS when the parameters are small.
基于加权最小二乘法的变量模型误差简单迭代算法:坐标变换示例
摘要尽管变量误差内加权总最小二乘法(WTLS)模型是一种严格的参数估计方法,但由于矩阵运算在整个重复迭代过程中非常耗时,尤其是在处理大数据集时,其精确解非常复杂。考虑到设计矩阵和观测值的随机误差,本文将EIV模型改写为类似的高斯-马尔可夫模型,并将其重新表述为迭代加权最小二乘法(IWLS),无需复杂的理论推导。IWLS近似于一般WTLS的“精确解”,并在计算效率和估计精度之间提供了良好的平衡。由于加权LS(WLS)方法在求解EIV模型方面具有天然的优势,我们还研究了当EIV模型中的参数较小时,WLS是否可以直接取代IWLS和WTLS来实现EIV模型。数值实验结果证实,IWLS可以获得与Jazaeri[21]的一般WTLS解几乎相同的解,并且当参数较小时,WLS可以获得与一般WTLS相同的精度。
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来源期刊
Journal of Applied Geodesy
Journal of Applied Geodesy REMOTE SENSING-
CiteScore
2.30
自引率
7.10%
发文量
30
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