Learning Shape Templates with Structured Implicit Functions
About
Template 3D shapes are useful for many tasks in graphics and vision, including fitting observation data, analyzing shape collections, and transferring shape attributes. Because of the variety of geometry and topology of real-world shapes, previous methods generally use a library of hand-made templates. In this paper, we investigate learning a general shape template from data. To allow for widely varying geometry and topology, we choose an implicit surface representation based on composition of local shape elements. While long known to computer graphics, this representation has not yet been explored in the context of machine learning for vision. We show that structured implicit functions are suitable for learning and allow a network to smoothly and simultaneously fit multiple classes of shapes. The learned shape template supports applications such as shape exploration, correspondence, abstraction, interpolation, and semantic segmentation from an RGB image.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| 3D Shape Reconstruction | ShapeNet table | Chamfer Distance1.57 | 9 | |
| 3D Shape Reconstruction | ShapeNet airplane | Chamfer Distance0.44 | 6 | |
| 3D Shape Reconstruction | ShapeNet rifle | Chamfer Distance0.42 | 6 | |
| 3D Shape Reconstruction | ShapeNet watercraft | Chamfer Distance0.78 | 6 | |
| 3D Shape Reconstruction | ShapeNet (bench) | Chamfer Distance0.82 | 6 | |
| 3D Shape Reconstruction | ShapeNet cabinet | Chamfer Distance1.1 | 6 | |
| 3D Shape Reconstruction | ShapeNet Car | Chamfer Distance1.08 | 6 | |
| 3D Shape Reconstruction | ShapeNet chair | Chamfer Distance1.54 | 6 | |
| 3D Shape Reconstruction | ShapeNet (display) | Chamfer Distance0.97 | 6 | |
| 3D Shape Reconstruction | ShapeNet lamp | Chamfer Distance3.42 | 6 |