REPO

Memoirs of the Faculty of Engineering, Okayama University 39巻 1号
2005-01 発行

Optimality of Maximum Likelihood Estimation for GeometricFitting and the KCR Lower Bound

金谷 健一 Department of Information Technology, Okayama University Kaken ID publons researchmap
Publication Date
2005-01
Abstract
Geometric fitting is one of the most fundamental problems of computer vision. In [8], the author derived a theoretical accuracy bound (KCR lower bound) for geometric fitting in general and proved that maximum likelihood (ML) estimation is statistically optimal. Recently, Chernov and Lesort [3] proved a similar result, using a weaker assumption. In this paper, we compare their formulation with the author’s and describe the background of the problem. We also review recent topics including semiparametric models and discuss remaining issues.
ISSN
0475-0071
NCID
AA10699856
NAID