We give a formal definition of geometric fitting in a way that suits computer vision applications. We point out that the performance of geometric fitting should be evaluated in the limit of small noise rather than in the limit of a large number of data as recommended in the statistical literature. Taking the KCR lower bound as an optimality requirement and focusing on the linearized constraint case, we compare the accuracy of Kanatani's renormalization with maximum likelihood (ML) approaches including the FNS of Chojnacki et al. and the HEIV of Leedan and Meer. Our analysis reveals the existence of a method superior to all these. </p
A rigorous accuracy analysis is given to various techniques for estimating parameters of geometric m...
We investigate the meaning of "statistical methods" for geometric inference based on image feature p...
This paper is concerned with model fitting in the presence of noise and outliers. Previously it has ...
We give a formal definition of geometric fitting in a way that suits computer vision applications. W...
We give a formal definition of geometric fitting in a way that suits computer vision applications. W...
We give a formal definition of geometric fitting in a way that suits computer vision applications. W...
Geometric fitting is one of the most fundamental problems of computer vision. In [8], the author der...
Geometric fitting is one of the most fundamental problems of computer vision. In [8], the author der...
Geometric fitting is one of the most fundamental problems of computer vision. In [8], the author der...
The convergence performance of typical numerical schemes for geometric fitting for computer vision a...
The convergence performance of typical numerical schemes for geometric fitting for computer vision a...
The convergence performance of typical numerical schemes for geometric fitting for computer vision a...
A rigorous accuracy analysis is given to various techniques for estimating parameters of geometric m...
We summarize techniques for optimal geometric estimation from noisy observations for computer vision...
A rigorous accuracy analysis is given to various techniques for estimating parameters of geometric m...
A rigorous accuracy analysis is given to various techniques for estimating parameters of geometric m...
We investigate the meaning of "statistical methods" for geometric inference based on image feature p...
This paper is concerned with model fitting in the presence of noise and outliers. Previously it has ...
We give a formal definition of geometric fitting in a way that suits computer vision applications. W...
We give a formal definition of geometric fitting in a way that suits computer vision applications. W...
We give a formal definition of geometric fitting in a way that suits computer vision applications. W...
Geometric fitting is one of the most fundamental problems of computer vision. In [8], the author der...
Geometric fitting is one of the most fundamental problems of computer vision. In [8], the author der...
Geometric fitting is one of the most fundamental problems of computer vision. In [8], the author der...
The convergence performance of typical numerical schemes for geometric fitting for computer vision a...
The convergence performance of typical numerical schemes for geometric fitting for computer vision a...
The convergence performance of typical numerical schemes for geometric fitting for computer vision a...
A rigorous accuracy analysis is given to various techniques for estimating parameters of geometric m...
We summarize techniques for optimal geometric estimation from noisy observations for computer vision...
A rigorous accuracy analysis is given to various techniques for estimating parameters of geometric m...
A rigorous accuracy analysis is given to various techniques for estimating parameters of geometric m...
We investigate the meaning of "statistical methods" for geometric inference based on image feature p...
This paper is concerned with model fitting in the presence of noise and outliers. Previously it has ...