Image features are obtained by using some kind of interest point detector, which often is based on a symmetric matrix such as the structure tensor or the Hessian matrix. These features need to be invariant to rotation and to some degree also to scaling in order to be useful for feature matching in applications such as image registration. Recently, the spinor tensor has been proposed for edge detection. It was investigated herein how it also can be used for feature matching and it will be proven that some simplifications, leading to variations of the response function based on the tensor, will improve its characteristics. The result is a set of different approaches that will be compared to the well known methods using the Hessian and t...
peer reviewedWe present an innovative method for detecting interest points (IPs) in grayscale and co...
Detection of some interest points on an object is useful for many applications, such as local shape ...
Finding correspondent feature points represents a challenge for many decades and has involved a lot ...
Image features are obtained by using some kind of interest point detector, which often is based on a...
Interest point detectors are a common processing step in low-level computer vision. Current interest...
Interest point detectors are a common processing step in low-level computer vision. Current interest...
The performance of matching and object recognition methods based on interest points depends on both ...
Image encoding using interest points is a common technique in computer vision. In this paper we pres...
This paper presents a new interest points detector whose goal is to better catch visual attention th...
International audienceThis paper presents a novel approach for detecting affine invariant interest p...
We propose a novel technique for detecting rotation- and scale-invariant interest points from the lo...
International audienceThis paper presents a new method for detecting scale invariant interest points...
© The Author(s) 2012. This article is published with open access at Springerlink.com Abstract Scale-...
This report evaluates the stability of two image interest point detectors, star-pattern points and p...
International audienceIn this paper we propose a novel approach for detecting interest points invari...
peer reviewedWe present an innovative method for detecting interest points (IPs) in grayscale and co...
Detection of some interest points on an object is useful for many applications, such as local shape ...
Finding correspondent feature points represents a challenge for many decades and has involved a lot ...
Image features are obtained by using some kind of interest point detector, which often is based on a...
Interest point detectors are a common processing step in low-level computer vision. Current interest...
Interest point detectors are a common processing step in low-level computer vision. Current interest...
The performance of matching and object recognition methods based on interest points depends on both ...
Image encoding using interest points is a common technique in computer vision. In this paper we pres...
This paper presents a new interest points detector whose goal is to better catch visual attention th...
International audienceThis paper presents a novel approach for detecting affine invariant interest p...
We propose a novel technique for detecting rotation- and scale-invariant interest points from the lo...
International audienceThis paper presents a new method for detecting scale invariant interest points...
© The Author(s) 2012. This article is published with open access at Springerlink.com Abstract Scale-...
This report evaluates the stability of two image interest point detectors, star-pattern points and p...
International audienceIn this paper we propose a novel approach for detecting interest points invari...
peer reviewedWe present an innovative method for detecting interest points (IPs) in grayscale and co...
Detection of some interest points on an object is useful for many applications, such as local shape ...
Finding correspondent feature points represents a challenge for many decades and has involved a lot ...