REPO

Memoirs of the Faculty of Engineering, Okayama University 37巻 1号
2002-11 発行

For Geometric Inference from Images, What Kind of Statistical Model Is Necessary?

Kanatani, Kenichi Department of Information Technology, Okayama University Kaken ID publons researchmap
Publication Date
2002-11
Abstract
In order to facilitate smooth communications with researchers in other fields including statistics, this paper investigates the meaning of "statistical methods" for geometric inference based on image feature points, We point out that statistical analysis does not make sense unless the underlying "statistical ensemble" is clearly defined. We trace back the origin of feature uncertainty to image processing operations for computer vision in general and discuss the implications of asymptotic analysis for performance evaluation in reference to "geometric fitting", "geometric model selection", the "geometric AIC", and the "geometric MDL". Referring to such statistical concepts as "nuisance parameters", the "Neyman-Scott problem", and "semiparametric models", we point out that simulation experiments for performance evaluation will lose meaning without carefully considering the assumptions involved and intended applications.
ISSN
0475-0071
NCID
AA10699856
NAID