We introduce a new framework for learning dense correspondence between deformable 3D shapes. Existing learning based approaches model shape correspondence as a labelling problem, where each point of a query shape receives a label identifying a point on some reference domain; the correspondence is then constructed a posteriori by composing the label predictions of two input shapes. We propose a paradigm shift and design a structured prediction model in the space of functional maps, linear operators that provide a compact representation of the correspondence. We model the learning process via a deep residual network which takes dense descriptor fields defined on two shapes as input, and outputs a soft map between the two given objects. The re...
Shape correspondence from 3D deformation learning has attracted appealing academy interests recently...
Establishing correspondence between distinct objects is an important and nontrivial task: correctnes...
This paper provides a novel framework that learns canonical embeddings for non-rigid shape matching....
We introduce a new framework for learning dense correspondence between deformable geometric domains ...
International audienceWe present a novel learning-based approach for computing correspondences betwe...
International audienceWe present a novel method for computing correspondences across 3D shapes using...
In traditional deep functional maps for non-rigid shape correspondence, estimating a functional map ...
We introduce the first completely unsupervised correspondence learning approach for deformable 3D sh...
International audienceWe present a new deep learning approach for matching deformable shapes by intr...
International audienceIn this paper, we propose a fully differentiable pipeline for estimating accur...
Shape correspondence is a fundamental problem in computer vision, computer graphics, and related fie...
We present a new local descriptor for 3D shapes, directly applicable to a wide range of shape analys...
International audienceCycle consistency has long been exploited as a powerful prior for jointly opti...
We tackle the problem of learning the geometry of multiple categories of deformable objects jointly....
Shape correspondence from 3D deformation learning has attracted appealing academy interests recently...
Establishing correspondence between distinct objects is an important and nontrivial task: correctnes...
This paper provides a novel framework that learns canonical embeddings for non-rigid shape matching....
We introduce a new framework for learning dense correspondence between deformable geometric domains ...
International audienceWe present a novel learning-based approach for computing correspondences betwe...
International audienceWe present a novel method for computing correspondences across 3D shapes using...
In traditional deep functional maps for non-rigid shape correspondence, estimating a functional map ...
We introduce the first completely unsupervised correspondence learning approach for deformable 3D sh...
International audienceWe present a new deep learning approach for matching deformable shapes by intr...
International audienceIn this paper, we propose a fully differentiable pipeline for estimating accur...
Shape correspondence is a fundamental problem in computer vision, computer graphics, and related fie...
We present a new local descriptor for 3D shapes, directly applicable to a wide range of shape analys...
International audienceCycle consistency has long been exploited as a powerful prior for jointly opti...
We tackle the problem of learning the geometry of multiple categories of deformable objects jointly....
Shape correspondence from 3D deformation learning has attracted appealing academy interests recently...
Establishing correspondence between distinct objects is an important and nontrivial task: correctnes...
This paper provides a novel framework that learns canonical embeddings for non-rigid shape matching....