Many innovative applications require establishing correspondences among 3D geometric objects. However, the countless possible deformations of smooth surfaces make shape matching a challenging task. Finding an embedding to represent the different shapes in high-dimensional space where the matching is easier to solve is a well-trodden path that has given many outstanding solutions. Recently, a new trend has shown advantages in learning such representations. This novel idea motivated us to investigate which properties differentiate these data-driven embeddings and which ones promote state-of-the-art results. In this study, we analyze, for the first time, properties that arise in data-driven learned embedding and their relation to the shape-mat...
International audienceWe present Neural Correspondence Prior (NCP), a new paradigm for computing cor...
National audienceWe present an unsupervised data-driven approach for non-rigid shape matching. Shape...
3D data analysis is a fundamental problem in modern science, and recent advances such as deep learni...
Many innovative applications require establishing correspondences among 3D geometric objects. Howeve...
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....
International audienceIn this work, we present a novel learning-based framework that combines the lo...
We present a new approach to unsupervised shape correspondence learning between pairs of point cloud...
We propose to represent shapes as the deformation and combination of learnable elementary 3D structu...
Solving high-level tasks on 3D shapes such as classification, segmentation, vertex-to-vertex maps or...
We introduce the first completely unsupervised correspondence learning approach for deformable 3D sh...
We introduce a novel dense shape matching method for deformable, three-dimensional shapes. Different...
International audienceWe present a novel learning-based approach for computing correspondences betwe...
We introduce a novel dense shape matching method for deformable, three-dimensional shapes. Different...
International audienceWe present a new deep learning approach for matching deformable shapes by intr...
International audienceWe present Neural Correspondence Prior (NCP), a new paradigm for computing cor...
National audienceWe present an unsupervised data-driven approach for non-rigid shape matching. Shape...
3D data analysis is a fundamental problem in modern science, and recent advances such as deep learni...
Many innovative applications require establishing correspondences among 3D geometric objects. Howeve...
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....
International audienceIn this work, we present a novel learning-based framework that combines the lo...
We present a new approach to unsupervised shape correspondence learning between pairs of point cloud...
We propose to represent shapes as the deformation and combination of learnable elementary 3D structu...
Solving high-level tasks on 3D shapes such as classification, segmentation, vertex-to-vertex maps or...
We introduce the first completely unsupervised correspondence learning approach for deformable 3D sh...
We introduce a novel dense shape matching method for deformable, three-dimensional shapes. Different...
International audienceWe present a novel learning-based approach for computing correspondences betwe...
We introduce a novel dense shape matching method for deformable, three-dimensional shapes. Different...
International audienceWe present a new deep learning approach for matching deformable shapes by intr...
International audienceWe present Neural Correspondence Prior (NCP), a new paradigm for computing cor...
National audienceWe present an unsupervised data-driven approach for non-rigid shape matching. Shape...
3D data analysis is a fundamental problem in modern science, and recent advances such as deep learni...