International audienceEstablishing a correspondence between two non-rigidly deforming shapes is one of the most fundamental problems in visual computing. Existing methods often show weak resilience when presented with challenges innate to real-world data such as noise, outliers, self-occlusion etc. On the other hand, auto-decoders have demonstrated strong expressive power in learning geometrically meaningful latent embeddings. However, their use in shape analysis has been limited. In this paper, we introduce an approach based on an auto-decoder framework, that learns a continuous shape-wise deformation field over a fixed template. By supervising the deformation field for points on-surface and regularizing for points off-surface through a no...
We present a novel, variational and statistical approach for shape registration. Shapes of interest ...
We present a framework for learning 3D object shapes and dense cross-object 3D correspondences from ...
We introduce a novel dense shape matching method for deformable, three-dimensional shapes. Different...
International audienceEstablishing a correspondence between two non-rigidly deforming shapes is one ...
Establishing a correspondence between two non-rigidly deforming shapes is one of the most fundamenta...
International audienceWe propose a self-supervised approach to deep surface deformation. Given a pai...
National audienceWe present an unsupervised data-driven approach for non-rigid shape matching. Shape...
International audienceWe present a new deep learning approach for matching deformable shapes by intr...
Learning 3D shape representation with dense correspondence for deformable objects is a fundamental p...
International audienceIn this work we present a novel approach for computing correspondences between...
Shape correspondence from 3D deformation learning has attracted appealing academy interests recently...
The registration of surfaces with non-rigid deformation, especially non-isometric deformations, is a...
Establishing reliable correspondences between object surfaces is a fundamental operation, required i...
We introduce the first completely unsupervised correspondence learning approach for deformable 3D sh...
We present a novel variational and statistical approach for shape registration. Shapes of interest a...
We present a novel, variational and statistical approach for shape registration. Shapes of interest ...
We present a framework for learning 3D object shapes and dense cross-object 3D correspondences from ...
We introduce a novel dense shape matching method for deformable, three-dimensional shapes. Different...
International audienceEstablishing a correspondence between two non-rigidly deforming shapes is one ...
Establishing a correspondence between two non-rigidly deforming shapes is one of the most fundamenta...
International audienceWe propose a self-supervised approach to deep surface deformation. Given a pai...
National audienceWe present an unsupervised data-driven approach for non-rigid shape matching. Shape...
International audienceWe present a new deep learning approach for matching deformable shapes by intr...
Learning 3D shape representation with dense correspondence for deformable objects is a fundamental p...
International audienceIn this work we present a novel approach for computing correspondences between...
Shape correspondence from 3D deformation learning has attracted appealing academy interests recently...
The registration of surfaces with non-rigid deformation, especially non-isometric deformations, is a...
Establishing reliable correspondences between object surfaces is a fundamental operation, required i...
We introduce the first completely unsupervised correspondence learning approach for deformable 3D sh...
We present a novel variational and statistical approach for shape registration. Shapes of interest a...
We present a novel, variational and statistical approach for shape registration. Shapes of interest ...
We present a framework for learning 3D object shapes and dense cross-object 3D correspondences from ...
We introduce a novel dense shape matching method for deformable, three-dimensional shapes. Different...