Extracting semantically related parts across models remains challenging, especially without supervision. The common approach is to co-analyze a model collection, while assuming the existence of descriptive geometric features that can directly identify related parts. In the presence of large shape variations, common geometric features, however, are no longer sufficiently descriptive. In this paper, we explore an indirect top-down approach, where instead of part geometry, part arrangements extracted from each model are compared. The key observation is that while a direct comparison of part geometry can be ambiguous, part arrangements, being higher level structures, remain consistent, and hence can be used to discover latent commonalities amon...
Figure 1: The co-segmentation result of the Candelabra set by our algorithm. Starting from the over-...
International audienceA popular mode of shape synthesis involves mixing and matching parts from diff...
Learning powerful deep generative models for 3D shape synthesis is largely hindered by the difficult...
Extracting semantically related parts across models remains challenging, especially without supervis...
As large repositories of 3D shape collections continue to grow, un-derstanding the data, especially ...
Increasing availability of large repositories of 3D models has triggered a lot of research interests...
Composing structures from different 3D shapes is a fundamental task in many computer graphics applic...
Due to recent developments in modeling software and advances in acquisition techniques for 3D geomet...
We address the problem of automatic recognition of graspable parts in man-made 3D shapes, which exhi...
A popular mode of shape synthesis involves mixing and matching parts from different objects to form ...
Computational modeling of part relations of shapes is a challenging problem that has been addressed ...
In this thesis, we address the challenge of computing correspondences between dissimilar shapes. Thi...
We perform co-analysis of a set of man-made 3D objects to allow the creation of novel instances deri...
Figure 1: The co-segmentation result of the Candelabra set by our algorithm. Starting from the over-...
We introduce co-variation analysis as a tool for modeling the way part geometries and configurations...
Figure 1: The co-segmentation result of the Candelabra set by our algorithm. Starting from the over-...
International audienceA popular mode of shape synthesis involves mixing and matching parts from diff...
Learning powerful deep generative models for 3D shape synthesis is largely hindered by the difficult...
Extracting semantically related parts across models remains challenging, especially without supervis...
As large repositories of 3D shape collections continue to grow, un-derstanding the data, especially ...
Increasing availability of large repositories of 3D models has triggered a lot of research interests...
Composing structures from different 3D shapes is a fundamental task in many computer graphics applic...
Due to recent developments in modeling software and advances in acquisition techniques for 3D geomet...
We address the problem of automatic recognition of graspable parts in man-made 3D shapes, which exhi...
A popular mode of shape synthesis involves mixing and matching parts from different objects to form ...
Computational modeling of part relations of shapes is a challenging problem that has been addressed ...
In this thesis, we address the challenge of computing correspondences between dissimilar shapes. Thi...
We perform co-analysis of a set of man-made 3D objects to allow the creation of novel instances deri...
Figure 1: The co-segmentation result of the Candelabra set by our algorithm. Starting from the over-...
We introduce co-variation analysis as a tool for modeling the way part geometries and configurations...
Figure 1: The co-segmentation result of the Candelabra set by our algorithm. Starting from the over-...
International audienceA popular mode of shape synthesis involves mixing and matching parts from diff...
Learning powerful deep generative models for 3D shape synthesis is largely hindered by the difficult...