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Ellipse Fitting

A collection of ellipse fitting algorithms:

  • Least-Squares with algebraic distance [2]
  • Least-Squares with orthogonal distance [3]
  • Gradient-Weighted Least-Sqaures [2]
  • M-Estimator (Cauchy)
  • Least Median of Squares

If you find that code helpful please cite my paper [1].

How to use

Use the main.m file. You can use it like this:

main(0,0,24,12,0,0.25,[0.5 * pi 1.5 * pi],200,30,0)

for a simulation of an ellipse with center (0;0) , axes a=24 & b=12, alpha=0, noise variance of 0.25, interval of measurements [0.5 * pi;1.5 * pi], # measurements 200, without outlier.

With

main(0,0,24,12,0,0.25,[0.5 * pi 1.5 * pi],200,30,1)

outliers are added to the simulation.

References:

[1] Sebastian Dingler, "Fitting ellipses to noisy measurements.", arXiv preprint arXiv:2111.05359, 2021.

[2] Zhengyou Zhang, "Parameter estimation techniques: a tutorial with application to conic fitting", Image and Vision Computing, 15(1):59 - 76, 1997.

[3] Sung Joon Ahn, W. Rauh, and M. Recknagel, "Ellipse fitting and parameter assessment of circular object targets for robot vision", Intelligent Robots and Systems, 1999.

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Ellipse Fitting with Least-Square and Robust Estimators

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