Parameter estimation techniques: a tutorial with application to conic fitting

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Almost all problems in computer vision are related in one form or another to the problem of estimating parameters from noisy data. In this tutorial, we present what is probably the most commonly used techniques for parameter estimation. These include linear least-squares (pseudo-inverse and eigen analysis); orthogonal least-squares; gradient-weighted least-squares; bias-corrected renormalization; Kalman filtering; and robust techniques (clustering, regression diagnostics, M-estimators, least median of squares). Particular attention has been devoted to discussions about the choice of appropriate minimization criteria and the robustness of the different techniques. Their application to conic fitting is described.

论文关键词:Parameter estimation,Least-squares,Bias correction,Kalman filtering,Robust regression

论文评审过程:Received 20 November 1995, Revised 18 April 1996, Accepted 22 April 1996, Available online 19 May 1998.

论文官网地址:https://doi.org/10.1016/S0262-8856(96)01112-2