Weighted Least-Squares Fitting of Circles with Variance Component Estimation

34 Pages Posted: 28 Jun 2022

See all articles by Xing Fang

Xing Fang

Wuhan University

Yu Hu

Wuhan University

Wenxian Zeng

Wuhan University

Orhan Akyilmaz

Istanbul Technical University

Abstract

Although the least squares (LS) fitting of circle has been widely known in measurement, the weighted LS fitting of circle is not thoroughly investigated, in particular, when the prior weight information is only partly known. Based on the Gauss-Helmert model (GHM), we first investigate the invariance on translation and rotation. The results show that though the translational invariance holds, the rotation invariance is broken except for some specific weight structures. As the main finding of this paper, we develop the VCE theory directly adapting to the nonlinear GHM representation of the circle fitting problem where the weight information is not exactly known. In the simulated example and the real applications, we show that: (1) The conclusions about the invariance of translation and rotation are validated. (2) The estimated variance components can perfectly represent the uncertainty of different point groups or different coordinate components from the statistical perspective.

Keywords: Geometric ft, Variance component estimation, Least-squares, Gauss-Helmert model, Brogar Ring, Corinth, Point cloud

Suggested Citation

Fang, Xing and Hu, Yu and Zeng, Wenxian and Akyilmaz, Orhan, Weighted Least-Squares Fitting of Circles with Variance Component Estimation. Available at SSRN: https://ssrn.com/abstract=4148157 or http://dx.doi.org/10.2139/ssrn.4148157

Xing Fang

Wuhan University ( email )

Wuhan
China

Yu Hu

Wuhan University ( email )

Wuhan
China

Wenxian Zeng (Contact Author)

Wuhan University ( email )

Wuhan
China

Orhan Akyilmaz

Istanbul Technical University ( email )

Ayazaga Kampusu
Fen Edebiyat Fakultesi
İstanbul
Turkey

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