Summary The goal of statistical scale space analysis is to extract scale-dependent features from noisy data. The data could be for example an observed time series or digital image in which case features in either different temporal or spatial scales would be sought. Since the 1990s, a number of statistical approaches to scale space analysis have been developed, most of them using smoothing to capture scales in the data, but other interpretations of scale have also been proposed. We review the various statistical scale space methods proposed and mention some of their applications
Smoothing methods and SiZer are a useful statistical tool for discovering statistically significant ...
This paper develops a methodology for Þnding which features in a noisy image are strong enough to be...
This paper develops a methodology for Þnding which features in a noisy image are strong enough to be...
The number of scale-space statistical algorithms has been greatly increased over the last 15 years. ...
Scale space theory from computer vision leads to an interesting and novel approach to nonparametric ...
A method to capture the scale-dependent features in a random signal is proposed with the main focus ...
The extrema in a signal and its first few derivatives pro-vide a useful general purpose qualitative ...
Abstract — Scale-space theory provides a well-founded framework for modelling image structures at mu...
In the high-level operations of computer vision it is taken for granted that image features have bee...
Abstract We propose a new scale space method for the discovery of structure in the correlation betwe...
In this thesis we have studied linear and non-linear scale-spaces with the emphasis on some implemen...
In this study, the problem of feature extraction by scale-space methods is addressed. The modeling o...
Nonlinear scalespace should be based on a hierarchical statistical model of the image intensity func...
This paper develops a methodology for Þnding which features in a noisy image are strong enough to be...
Smoothing methods and SiZer are a useful statistical tool for discovering statistically significant ...
Smoothing methods and SiZer are a useful statistical tool for discovering statistically significant ...
This paper develops a methodology for Þnding which features in a noisy image are strong enough to be...
This paper develops a methodology for Þnding which features in a noisy image are strong enough to be...
The number of scale-space statistical algorithms has been greatly increased over the last 15 years. ...
Scale space theory from computer vision leads to an interesting and novel approach to nonparametric ...
A method to capture the scale-dependent features in a random signal is proposed with the main focus ...
The extrema in a signal and its first few derivatives pro-vide a useful general purpose qualitative ...
Abstract — Scale-space theory provides a well-founded framework for modelling image structures at mu...
In the high-level operations of computer vision it is taken for granted that image features have bee...
Abstract We propose a new scale space method for the discovery of structure in the correlation betwe...
In this thesis we have studied linear and non-linear scale-spaces with the emphasis on some implemen...
In this study, the problem of feature extraction by scale-space methods is addressed. The modeling o...
Nonlinear scalespace should be based on a hierarchical statistical model of the image intensity func...
This paper develops a methodology for Þnding which features in a noisy image are strong enough to be...
Smoothing methods and SiZer are a useful statistical tool for discovering statistically significant ...
Smoothing methods and SiZer are a useful statistical tool for discovering statistically significant ...
This paper develops a methodology for Þnding which features in a noisy image are strong enough to be...
This paper develops a methodology for Þnding which features in a noisy image are strong enough to be...