APPROXIMATE MAXIMUM-LIKELIHOOD ESTIMATION OF CIRCLE PARAMETERS USING A PHASE-CODED KERNEL (WedAmPO1)
Author(s) :
Emanuel Zelniker (University of Queensland, Australia)
Vaughan Clarkson (University of Queensland, Australia)
Abstract : The accurate fitting of a circle to noisy measurements of points on its circumference is an important and much-studied problem in statistics. Atherton and Kerbyson (Image and Vision Computing 17, 1999, 795-803) have proposed a complex convolutional circle parameter estimator. One of the estimators proposed is a `Phase-Coded Annulus' to estimate for the centre and radius. Zelniker and Clarkson (Digital Image Computing: Tech. and Appl. 2003, 509-518) have shown that it is possible to exactly describe the Maximum Likelihood Estimator (MLE) in terms of convolution under a certain model for ideal images formed from noisy circle points. In this paper, we investigate the relationship between the convolution of an ideal image with a Phase-Coded Kernel and the MLE. We compare our approximate MLE (AMLE) method to the Delogne-Kasa Estimator which uses a least squares approach to solve for the circle parameters, the MLE as well as the theoretical Cramer-Rao Lower Bound.

Menu