Contrasting "geometric fitting", for which the noise level is taken as the asymptotic variable, with "statistical inference", for which the number of observations is taken as the asymptotic variable, we give a new definition of the "geometric AIC" and the "geometric MDL" as the counterparts of Akaike's AIC and Rissanen's MDL. We discuss various theoretical and practical problems that emerge from our analysis. Finally, we show, doing experiments using synthetic and real images, that the geometric MDL does not necessarily outperform the geometric AIC and that the two criteria have very different characteristics
An improved AIC-based criterion is derived for model selection in general smoothing-based modeling, ...
Model selection is of fundamental importance to high dimensional modelling featured in many contempo...
The Akaike information criterion (AIC) is a common tool for model selection. It is frequently used i...
Contrasting "geometric fitting", for which the noise level is taken as the asymptotic variable, with...
Contrasting “geometric fitting”, for which the noise level is taken as the asymptotic variable, with...
The author introduced the "geometric AIC" and the "geometric MDL" as model selection criteria for ge...
We first investigate the meaning of "statistical methods" for geometric inference based on i...
In order to facilitate smooth communications with researchers in other fields including statistics, ...
We give a formal definition of geometric fitting in a way that suits computer vision applications. W...
We investigate the meaning of "statistical methods" for geometric inference based on image feature p...
In order to facilitate smooth communications with researchers in other fields including statistics, ...
Geometric fitting is one of the most fundamental problems of computer vision. In [8], the author der...
A rigorous accuracy analysis is given to various techniques for estimating parameters of geometric m...
The convergence performance of typical numerical schemes for geometric fitting for computer vision a...
We show how information geometry throws new light on the interplay between goodness-of-fit and estim...
An improved AIC-based criterion is derived for model selection in general smoothing-based modeling, ...
Model selection is of fundamental importance to high dimensional modelling featured in many contempo...
The Akaike information criterion (AIC) is a common tool for model selection. It is frequently used i...
Contrasting "geometric fitting", for which the noise level is taken as the asymptotic variable, with...
Contrasting “geometric fitting”, for which the noise level is taken as the asymptotic variable, with...
The author introduced the "geometric AIC" and the "geometric MDL" as model selection criteria for ge...
We first investigate the meaning of "statistical methods" for geometric inference based on i...
In order to facilitate smooth communications with researchers in other fields including statistics, ...
We give a formal definition of geometric fitting in a way that suits computer vision applications. W...
We investigate the meaning of "statistical methods" for geometric inference based on image feature p...
In order to facilitate smooth communications with researchers in other fields including statistics, ...
Geometric fitting is one of the most fundamental problems of computer vision. In [8], the author der...
A rigorous accuracy analysis is given to various techniques for estimating parameters of geometric m...
The convergence performance of typical numerical schemes for geometric fitting for computer vision a...
We show how information geometry throws new light on the interplay between goodness-of-fit and estim...
An improved AIC-based criterion is derived for model selection in general smoothing-based modeling, ...
Model selection is of fundamental importance to high dimensional modelling featured in many contempo...
The Akaike information criterion (AIC) is a common tool for model selection. It is frequently used i...