PartSDF: Part-Based Implicit Neural Representation for Composite 3D Shape Parametrization and Optimization
About
Accurate 3D shape representation is essential in engineering applications such as design, optimization, and simulation. In practice, engineering workflows require structured, part-based representations, as objects are inherently designed as assemblies of distinct components. However, most existing methods either model shapes holistically or decompose them without predefined part structures, limiting their applicability in real-world design tasks. We propose PartSDF, a supervised implicit representation framework that explicitly models composite shapes with independent, controllable parts while maintaining shape consistency. Thanks to its simple but innovative architecture, PartSDF outperforms both supervised and unsupervised baselines in reconstruction and generation tasks. We further demonstrate its effectiveness as a structured shape prior for engineering applications, enabling precise control over individual components while preserving overall coherence. Code available at https://github.com/cvlab-epfl/PartSDF.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Heart Shape Reconstruction | Cardiac MRI ACDC M&Ms M&Ms-2 Missing Part (test) | Contour Distance (Myocardium)0.686 | 11 | |
| Heart Shape Reconstruction | Cardiac MRI (ACDC/M&Ms/M&Ms-2) Complete Input (test) | Myocardium Contour Distance (CD)0.68 | 6 | |
| Shape Reconstruction | Mixers (test) | MCD1.298 | 5 | |
| Cardiac shape reconstruction | Synthetic Cardiac SAX, 2CH, 4CH slices | Contour Distance (Myocardium) (mm)2.434 | 5 | |
| Cardiac shape reconstruction | Synthetic Cardiac SAX slices | Myo CD (mm)4.066 | 5 | |
| Cardiac shape reconstruction | Real-world CMR SAX slices | Myo CD (mm)4.721 | 5 | |
| Shape Reconstruction | PartNet Chairs (test) | MCD3.567 | 5 |