Abstract

This paper addresses the issue of estimating the parameters of nonlinear models using heteroscedastic data. A weighted least squares problem formulation where the sum of the Mahalanobis distance for all measurements is minimized, forms the framework of this paper. Determining the Mahalanobis distance requires the gradient of the cost function with respect to the noisy measurements which can be computationally expensive and infeasible for model which are discontinuous. A derivative free approach to determine the Mahalanobis distance as an error metric is proposed using the Unscented Transformation. The advantages of using the proposed approach include: a black box approach to evaluate the gradient weighted objective function precluding the need for analytical gradients and an improved estimation of the covariance. Numerical results for various applications such as triangulation using radar measurements, ellipse, and super ellipse fitting demonstrate the benefits of the proposed approach. Heteroscedastic data resulting from real X-ray images are also used to illustrate the potential of the proposed approach.

Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call