Invariance to geometric transformations is a highly desirable property of automatic classifiers in many image recognition tasks. Nevertheless, it is unclear to which extent state-of-the-art classifiers are invariant to basic transformations such as rotations and translations. This is mainly due to the lack of general methods that properly measure such an invariance. In this paper, we propose a rigorous and systematic approach for quantifying the invariance to geometric transformations of any classifier. Our key idea is to cast the problem of assessing a classifier's invariance as the computation of geodesics along the manifold of transformed images. We propose the Manitest method, built on the efficient Fast Marching algorithm to compute th...
International audienceEven if lots of object invariant descriptors have been proposed in the literat...
In this document we review and compare some of the classical and modern techniques for solving the p...
Ce mémoire de thèse porte sur l’élaboration de systèmes de reconnaissance d’image qui sont robustes ...
The systems and concepts described in this paper document the evolution of the geometric invariance ...
AbstractThe systems and concepts described in this paper document the evolution of the geometric inv...
Geometric image transformations that arise in the real world, such as scaling and rotation, have bee...
Transformation manifolds are quite attractive for image analysis applications that require transform...
One approach to computer object recognition and modeling the brain's ventral stream involves unsuper...
Identifying suitable image features is a central challenge in computer vision, ranging from represen...
In this paper, a new invariant feature of two-dimensional contours is reported: the Invariance Signa...
Humans are endowed with the ability to grasp the overall meaning or the gist of a complex visual sce...
For many pattern recognition tasks, the ideal input feature would be invariant to multiple confoundi...
The analysis of collections of visual data, e.g., their classification, modeling and clustering, has...
While CNNs have enabled tremendous progress in computer vision for a variety of tasks, robust genera...
In the context of neural networks, equivariance or invariance to transformations can induce a better...
International audienceEven if lots of object invariant descriptors have been proposed in the literat...
In this document we review and compare some of the classical and modern techniques for solving the p...
Ce mémoire de thèse porte sur l’élaboration de systèmes de reconnaissance d’image qui sont robustes ...
The systems and concepts described in this paper document the evolution of the geometric invariance ...
AbstractThe systems and concepts described in this paper document the evolution of the geometric inv...
Geometric image transformations that arise in the real world, such as scaling and rotation, have bee...
Transformation manifolds are quite attractive for image analysis applications that require transform...
One approach to computer object recognition and modeling the brain's ventral stream involves unsuper...
Identifying suitable image features is a central challenge in computer vision, ranging from represen...
In this paper, a new invariant feature of two-dimensional contours is reported: the Invariance Signa...
Humans are endowed with the ability to grasp the overall meaning or the gist of a complex visual sce...
For many pattern recognition tasks, the ideal input feature would be invariant to multiple confoundi...
The analysis of collections of visual data, e.g., their classification, modeling and clustering, has...
While CNNs have enabled tremendous progress in computer vision for a variety of tasks, robust genera...
In the context of neural networks, equivariance or invariance to transformations can induce a better...
International audienceEven if lots of object invariant descriptors have been proposed in the literat...
In this document we review and compare some of the classical and modern techniques for solving the p...
Ce mémoire de thèse porte sur l’élaboration de systèmes de reconnaissance d’image qui sont robustes ...