Neural Implicit Representation for Building Digital Twins of Unknown Articulated Objects
About
We address the problem of building digital twins of unknown articulated objects from two RGBD scans of the object at different articulation states. We decompose the problem into two stages, each addressing distinct aspects. Our method first reconstructs object-level shape at each state, then recovers the underlying articulation model including part segmentation and joint articulations that associate the two states. By explicitly modeling point-level correspondences and exploiting cues from images, 3D reconstructions, and kinematics, our method yields more accurate and stable results compared to prior work. It also handles more than one movable part and does not rely on any object shape or structure priors. Project page: https://github.com/NVlabs/DigitalTwinArt
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Articulated Object Reconstruction | ArtGS-Multi | Axis Angle Error17.83 | 57 | |
| Articulated Object Reconstruction and Motion Estimation | PARIS Simulation | Axis Angle Error0.03 | 56 | |
| Articulated Object Reconstruction and Motion Estimation | PARIS Real | Axis Angle Error2.08 | 27 | |
| Articulated Object Reconstruction and Articulation Estimation | Multi-part object dataset | CD-s1.38 | 27 | |
| Articulated Object Modeling | PartNet-Mobility 3 movable parts | CD-s1.31 | 20 | |
| Articulated Shape Reconstruction | PartNet-Mobility v1 (test) | Box Error1.08 | 20 | |
| Joint-level Kinematic Estimation | PartNet-Mobility 3-part objects (test) | Axis Angle Error 00.38 | 20 | |
| Articulation Axis Estimation | PartNet-Mobility v1 (test) | Box Error3.96 | 20 | |
| Part Segmentation | Two-part objects | Fridge86.27 | 15 | |
| Articulation Estimation | Two-part objects Blade | Part Motion0.02 | 10 |