Methods based on local, viewpoint invariant features have proven capable of recognizing objects in spite of viewpoint changes, occlusion and clutter. However, these approaches fail when these factors are too strong, due to the limited repeatability and discriminative power of the features. As additional shortcomings, the objects need to be rigid and only their approximate location is found. We present a novel Object Recognition approach which overcomes these limitations. An initial set of feature correspondences is first generated. The method anchors on it and then gradually explores the surrounding area, trying to construct more and more matching features, increasingly farther from the initial ones. The resulting process covers the object ...
Most current local feature detectors/descriptors implicitly assume that the scene is (locally) plana...
We present an approach to recognition of complex objects in cluttered 3-D scenes that does not requi...
In this document, a localised approach to object recognition is discussed. Using Deep Vision's ...
We present a novel Object Recognition approach based on affine invariant regions. It actively counte...
This paper presents a method for extracting distinctive invariant features from images that can be u...
Amodelling system for object recognition and pose estimation is presented in this work, based on app...
Amodelling system for object recognition and pose estimation is presented in this work, based on app...
We present a new approach to appearance-based object recognition, which captures the relationships b...
There have been important recent advances in object recognition through the matching of invariant lo...
Object recognition is one of the main goals in computer vision. It is useful in task such as autonom...
Computer image understanding of pictorial information has many useful applications and is one of mos...
Most current local feature detectors/descriptors implicitly assume that the scene is (locally) plana...
The problem of object recognition has been at the forefront of computer vision research in the last ...
International audienceIn this article, we present a general frame for a system of au tomatic modelin...
In this paper we present a technique for object recognition and modelling based on local image featu...
Most current local feature detectors/descriptors implicitly assume that the scene is (locally) plana...
We present an approach to recognition of complex objects in cluttered 3-D scenes that does not requi...
In this document, a localised approach to object recognition is discussed. Using Deep Vision's ...
We present a novel Object Recognition approach based on affine invariant regions. It actively counte...
This paper presents a method for extracting distinctive invariant features from images that can be u...
Amodelling system for object recognition and pose estimation is presented in this work, based on app...
Amodelling system for object recognition and pose estimation is presented in this work, based on app...
We present a new approach to appearance-based object recognition, which captures the relationships b...
There have been important recent advances in object recognition through the matching of invariant lo...
Object recognition is one of the main goals in computer vision. It is useful in task such as autonom...
Computer image understanding of pictorial information has many useful applications and is one of mos...
Most current local feature detectors/descriptors implicitly assume that the scene is (locally) plana...
The problem of object recognition has been at the forefront of computer vision research in the last ...
International audienceIn this article, we present a general frame for a system of au tomatic modelin...
In this paper we present a technique for object recognition and modelling based on local image featu...
Most current local feature detectors/descriptors implicitly assume that the scene is (locally) plana...
We present an approach to recognition of complex objects in cluttered 3-D scenes that does not requi...
In this document, a localised approach to object recognition is discussed. Using Deep Vision's ...