In the high-level operations of computer vision it is taken for granted that image features have been reliably detected. This paper addresses the problem of feature extraction by scale-space methods. This paper is based on two key ideas: to investigate the stochastic properties of scale-space representations, and to investigate the interplay between discrete and continuous images. These investigations are then used to predict the stochastic properties of sub-pixel feature detector
This paper develops a methodology for finding which features in a noisy image are strong enough to b...
This paper develops a methodology for Þnding which features in a noisy image are strong enough to be...
An inherent property of objects in the world is that they only exist as meaningful entities over cer...
In this study, the problem of feature extraction by scale-space methods is addressed. The modeling o...
Abstract — Scale-space theory provides a well-founded framework for modelling image structures at mu...
A basic problem when deriving information from measured data, such as images, originates from the fa...
Stochastic analysis of edge detectors can be made either by theoretical modeling of the image format...
Summary The goal of statistical scale space analysis is to extract scale-dependent features from noi...
Stochastic analysis of edge detectors can be made either by theoretical modeling of the image format...
The notion of a stochastic scale space has been introduced through a stochastic approximation to the...
A method to capture the scale-dependent features in a random signal is proposed with the main focus ...
This thesis, within the subfield of computer science known as computer vision, deals with the use of...
In this thesis we have studied linear and non-linear scale-spaces with the emphasis on some implemen...
The number of scale-space statistical algorithms has been greatly increased over the last 15 years. ...
International audienceWe introduce a feature descriptor based on stochastic differences between rand...
This paper develops a methodology for finding which features in a noisy image are strong enough to b...
This paper develops a methodology for Þnding which features in a noisy image are strong enough to be...
An inherent property of objects in the world is that they only exist as meaningful entities over cer...
In this study, the problem of feature extraction by scale-space methods is addressed. The modeling o...
Abstract — Scale-space theory provides a well-founded framework for modelling image structures at mu...
A basic problem when deriving information from measured data, such as images, originates from the fa...
Stochastic analysis of edge detectors can be made either by theoretical modeling of the image format...
Summary The goal of statistical scale space analysis is to extract scale-dependent features from noi...
Stochastic analysis of edge detectors can be made either by theoretical modeling of the image format...
The notion of a stochastic scale space has been introduced through a stochastic approximation to the...
A method to capture the scale-dependent features in a random signal is proposed with the main focus ...
This thesis, within the subfield of computer science known as computer vision, deals with the use of...
In this thesis we have studied linear and non-linear scale-spaces with the emphasis on some implemen...
The number of scale-space statistical algorithms has been greatly increased over the last 15 years. ...
International audienceWe introduce a feature descriptor based on stochastic differences between rand...
This paper develops a methodology for finding which features in a noisy image are strong enough to b...
This paper develops a methodology for Þnding which features in a noisy image are strong enough to be...
An inherent property of objects in the world is that they only exist as meaningful entities over cer...