We introduce a novel dense shape matching method for deformable, three-dimensional shapes. Differently from most existing techniques, our approach is general in that it allows the shapes to undergo deformations that are far from being isometric. We do this in a supervised learning framework which makes use of training data as represented by a small set of example shapes. From this set, we learn an implicit representation of a shape descriptor capturing the variability of the deformations in the given class. The learning paradigm we choose for this task is a random forest classifier. With the additional help of a spatial regularizer, the proposed method achieves significant improvements over the baseline approach and obtains state-of-the-art...
A particularly challenging setting of the shape matching problem arises when the shapes being matche...
In this paper, we propose a highly efficient metric learning approach to non-rigid 3D shape analysis...
We present a novel sparse modeling approach to non-rigid shape match-ing using only the ability to d...
We introduce a novel dense shape matching method for deformable, three-dimensional shapes. Different...
We propose a shape matching method that produces dense correspondences tuned to a specific class of ...
We propose a shape matching method that produces dense correspondences tuned to a specific class of ...
We introduce the first completely unsupervised correspondence learning approach for deformable 3D sh...
National audienceWe present an unsupervised data-driven approach for non-rigid shape matching. Shape...
We describe some techniques that can be used to represent and detect deformable shapes in images. Th...
International audienceWe present a new deep learning approach for matching deformable shapes by intr...
International audienceIn this work we present a novel approach for computing correspondences between...
In the last decades, researchers devoted considerable attention to shape matching. Correlating surfa...
This paper provides a novel framework that learns canonical embeddings for non-rigid shape matching....
Abstract. We consider the problem of establishing dense correspondences within a set of related shap...
A particularly challenging setting of the shape matching problem arises when the shapes being matche...
A particularly challenging setting of the shape matching problem arises when the shapes being matche...
In this paper, we propose a highly efficient metric learning approach to non-rigid 3D shape analysis...
We present a novel sparse modeling approach to non-rigid shape match-ing using only the ability to d...
We introduce a novel dense shape matching method for deformable, three-dimensional shapes. Different...
We propose a shape matching method that produces dense correspondences tuned to a specific class of ...
We propose a shape matching method that produces dense correspondences tuned to a specific class of ...
We introduce the first completely unsupervised correspondence learning approach for deformable 3D sh...
National audienceWe present an unsupervised data-driven approach for non-rigid shape matching. Shape...
We describe some techniques that can be used to represent and detect deformable shapes in images. Th...
International audienceWe present a new deep learning approach for matching deformable shapes by intr...
International audienceIn this work we present a novel approach for computing correspondences between...
In the last decades, researchers devoted considerable attention to shape matching. Correlating surfa...
This paper provides a novel framework that learns canonical embeddings for non-rigid shape matching....
Abstract. We consider the problem of establishing dense correspondences within a set of related shap...
A particularly challenging setting of the shape matching problem arises when the shapes being matche...
A particularly challenging setting of the shape matching problem arises when the shapes being matche...
In this paper, we propose a highly efficient metric learning approach to non-rigid 3D shape analysis...
We present a novel sparse modeling approach to non-rigid shape match-ing using only the ability to d...