International audienceIn this paper, we propose a generic pre-filtering method of point descriptors which addresses the confusion problem due to repetitive patterns. This confusion often leads to wrong descriptor matches and prevents further processes such as object recognition, image indexation, super-resolution or stereo-vision. Our method sorts keypoints by their unicity without taking into account any visual element but the feature vectors's statistical properties thanks to a kernel density estimation approach. Both binary descriptors and floating point based descriptors are studied, regardless of their dimensions. Even if highly reduced in number, results show that keypoints subsets extracted are still relevant and our algorithm can be...
In this paper, we introduce a local image descriptor that is inspired by earlier detectors such as S...
This paper presents a new approach for feature description used in image processing and robust image...
Current best local descriptors are learned on a large data set of matching and non-matching keypoint...
International audienceIn this paper, we propose a generic pre-filtering method of point descriptors ...
This work tries to establish a bridge between the field of classical computer vision and document an...
This paper proposes a general method for improving image descriptors using discriminant projections....
This paper proposes a general method for improving image descriptors using discriminant projections....
Ce travail s’inscrit dans une tentative de liaison entre la communauté classique de la Vision par or...
We presented in the paper a new tactic, the first thing we have done is extracting the points of des...
We propose a novel and general framework to learn compact but highly discriminative floating-point a...
Abstract. Despite the progress made in the area of local image de-scriptors in recent years, virtual...
Abstract. Most object recognition algorithms use a large number of descriptors extracted in a dense ...
International audienceA great deal of features detectors and descriptors are proposed every years fo...
This paper presents a comparative study of descriptors keypoint algorithms doing a combination of d...
Abstract—We propose a novel and general framework to learn compact but highly discriminative floatin...
In this paper, we introduce a local image descriptor that is inspired by earlier detectors such as S...
This paper presents a new approach for feature description used in image processing and robust image...
Current best local descriptors are learned on a large data set of matching and non-matching keypoint...
International audienceIn this paper, we propose a generic pre-filtering method of point descriptors ...
This work tries to establish a bridge between the field of classical computer vision and document an...
This paper proposes a general method for improving image descriptors using discriminant projections....
This paper proposes a general method for improving image descriptors using discriminant projections....
Ce travail s’inscrit dans une tentative de liaison entre la communauté classique de la Vision par or...
We presented in the paper a new tactic, the first thing we have done is extracting the points of des...
We propose a novel and general framework to learn compact but highly discriminative floating-point a...
Abstract. Despite the progress made in the area of local image de-scriptors in recent years, virtual...
Abstract. Most object recognition algorithms use a large number of descriptors extracted in a dense ...
International audienceA great deal of features detectors and descriptors are proposed every years fo...
This paper presents a comparative study of descriptors keypoint algorithms doing a combination of d...
Abstract—We propose a novel and general framework to learn compact but highly discriminative floatin...
In this paper, we introduce a local image descriptor that is inspired by earlier detectors such as S...
This paper presents a new approach for feature description used in image processing and robust image...
Current best local descriptors are learned on a large data set of matching and non-matching keypoint...