International audienceA variety of deep functional maps have been proposed recently, from fully supervised to totally unsupervised, with a range of loss functions as well as different regularization terms. However, it is still not clear what are minimum ingredients of a deep functional map pipeline and whether such ingredients unify or generalize all recent work on deep functional maps. We show empirically minimum components for obtaining state of the art results with different loss functions, supervised as well as unsupervised. Furthermore, we propose a novel framework designed for both full-to-full as well as partial to full shape matching that achieves state of the art results on all benchmark datasets outperforming even the fully su...
NeurIPS 2022. Code and data: https://github.com/craigleili/AttentiveFMapsInternational audienceIn th...
This paper provides a novel framework that learns canonical embeddings for non-rigid shape matching....
Shape matching is a fundamental problem in computer graphics with many applications. Functional maps...
In traditional deep functional maps for non-rigid shape correspondence, estimating a functional map ...
International audienceCycle consistency has long been exploited as a powerful prior for jointly opti...
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...
Shape matching is a fundamental operation in digital geometry processing and computer graphics. Chal...
Shape correspondence is a fundamental problem in computer vision, computer graphics, and related fie...
Classical formulations of the shape matching problem involve the definition of a matching cost that ...
We introduce a new framework for learning dense correspondence between deformable 3D shapes. Existin...
International audienceState-of-the-art fully intrinsic networks for non-rigid shape matching often s...
International audienceWe consider the problem of non-rigid shape matching using the functional map f...
NeurIPS 2022. Code and data: https://github.com/craigleili/AttentiveFMapsInternational audienceIn th...
This paper provides a novel framework that learns canonical embeddings for non-rigid shape matching....
Shape matching is a fundamental problem in computer graphics with many applications. Functional maps...
In traditional deep functional maps for non-rigid shape correspondence, estimating a functional map ...
International audienceCycle consistency has long been exploited as a powerful prior for jointly opti...
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...
Shape matching is a fundamental operation in digital geometry processing and computer graphics. Chal...
Shape correspondence is a fundamental problem in computer vision, computer graphics, and related fie...
Classical formulations of the shape matching problem involve the definition of a matching cost that ...
We introduce a new framework for learning dense correspondence between deformable 3D shapes. Existin...
International audienceState-of-the-art fully intrinsic networks for non-rigid shape matching often s...
International audienceWe consider the problem of non-rigid shape matching using the functional map f...
NeurIPS 2022. Code and data: https://github.com/craigleili/AttentiveFMapsInternational audienceIn th...
This paper provides a novel framework that learns canonical embeddings for non-rigid shape matching....
Shape matching is a fundamental problem in computer graphics with many applications. Functional maps...