We propose a shape matching method that produces dense correspondences tuned to a specific class of shapes and deformations. In a scenario where this class is represented by a small set of example shapes, the proposed method learns a shape descriptor capturing the variability of the deformations in the given class. The approach enables the wave kernel signature to extend the class of recognized deformations from near isometries to the deformations appearing in the example set by means of a random forest classifier. With the help of the introduced spatial regularization, the proposed method achieves significant improvements over the baseline approach and obtains state-of-the-art results while keeping short computation times
International audienceWe propose a self-supervised approach to deep surface deformation. Given a pai...
This paper describes work aimed at the unsupervised learning of shape-classes from shock trees. We c...
Abstract. This paper describes work aimed at the unsupervised learning of shape-classes from shock t...
We propose a shape matching method that produces dense correspondences tuned to a specific class of ...
We introduce a novel dense shape matching method for deformable, three-dimensional shapes. Different...
We introduce a novel dense shape matching method for deformable, three-dimensional shapes. Different...
We introduce the first completely unsupervised correspondence learning approach for deformable 3D sh...
We present a novel sparse modeling approach to non-rigid shape match-ing using only the ability to d...
National audienceWe present an unsupervised data-driven approach for non-rigid shape matching. Shape...
Abstract. We consider the problem of establishing dense correspondences within a set of related shap...
In the last decades, researchers devoted considerable attention to shape matching. Correlating surfa...
We present a method to match three dimensional shapes under non-isometric deformations, topology cha...
International audienceIn this work we present a novel approach for computing correspondences between...
Recent efforts in the area of joint object matching approach the problem by taking as input a set of...
Similarity and correspondence are two fundamental archetype problems in shape analysis, encountered ...
International audienceWe propose a self-supervised approach to deep surface deformation. Given a pai...
This paper describes work aimed at the unsupervised learning of shape-classes from shock trees. We c...
Abstract. This paper describes work aimed at the unsupervised learning of shape-classes from shock t...
We propose a shape matching method that produces dense correspondences tuned to a specific class of ...
We introduce a novel dense shape matching method for deformable, three-dimensional shapes. Different...
We introduce a novel dense shape matching method for deformable, three-dimensional shapes. Different...
We introduce the first completely unsupervised correspondence learning approach for deformable 3D sh...
We present a novel sparse modeling approach to non-rigid shape match-ing using only the ability to d...
National audienceWe present an unsupervised data-driven approach for non-rigid shape matching. Shape...
Abstract. We consider the problem of establishing dense correspondences within a set of related shap...
In the last decades, researchers devoted considerable attention to shape matching. Correlating surfa...
We present a method to match three dimensional shapes under non-isometric deformations, topology cha...
International audienceIn this work we present a novel approach for computing correspondences between...
Recent efforts in the area of joint object matching approach the problem by taking as input a set of...
Similarity and correspondence are two fundamental archetype problems in shape analysis, encountered ...
International audienceWe propose a self-supervised approach to deep surface deformation. Given a pai...
This paper describes work aimed at the unsupervised learning of shape-classes from shock trees. We c...
Abstract. This paper describes work aimed at the unsupervised learning of shape-classes from shock t...