Abstract:
Any solid object can be decomposed into a collection of convex polytopes (in short, convexes). When a small number of convexes are used, such a decomposition can be thoug...Show MoreMetadata
Abstract:
Any solid object can be decomposed into a collection of convex polytopes (in short, convexes). When a small number of convexes are used, such a decomposition can be thought of as a piece-wise approximation of the geometry. This decomposition is fundamental in computer graphics, where it provides one of the most common ways to approximate geometry, for example, in real-time physics simulation. A convex object also has the property of being simultaneously an explicit and implicit representation: one can interpret it explicitly as a mesh derived by computing the vertices of a convex hull, or implicitly as the collection of half-space constraints or support functions. Their implicit representation makes them particularly well suited for neural network training, as they abstract away from the topology of the geometry they need to represent. However, at testing time, convexes can also generate explicit representations – polygonal meshes – which can then be used in any downstream application. We introduce a network architecture to represent a low dimensional family of convexes. This family is automatically derived via an auto-encoding process. We investigate the applications of this architecture including automatic convex decomposition, image to 3D reconstruction, and part-based shape retrieval.
Date of Conference: 13-19 June 2020
Date Added to IEEE Xplore: 05 August 2020
ISBN Information:
ISSN Information:
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Convex Decomposition ,
- 3D Reconstruction ,
- Convex Hull ,
- 3D Mesh ,
- Computer Graphics ,
- Convex Objective ,
- Implicit Representation ,
- Semantic ,
- Computer Vision ,
- Point Cloud ,
- Reconstruction Accuracy ,
- Curse Of Dimensionality ,
- Implicit Function ,
- Object Surface ,
- 3D Geometry ,
- Nature Of Representations ,
- Standard Representation ,
- Collection Of Parameters ,
- Signed Distance Function ,
- Geometric Primitives
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Convex Decomposition ,
- 3D Reconstruction ,
- Convex Hull ,
- 3D Mesh ,
- Computer Graphics ,
- Convex Objective ,
- Implicit Representation ,
- Semantic ,
- Computer Vision ,
- Point Cloud ,
- Reconstruction Accuracy ,
- Curse Of Dimensionality ,
- Implicit Function ,
- Object Surface ,
- 3D Geometry ,
- Nature Of Representations ,
- Standard Representation ,
- Collection Of Parameters ,
- Signed Distance Function ,
- Geometric Primitives