ArtFormer: Controllable Generation of Diverse 3D Articulated Objects
About
This paper presents a novel framework for modeling and conditional generation of 3D articulated objects. Troubled by flexibility-quality tradeoffs, existing methods are often limited to using predefined structures or retrieving shapes from static datasets. To address these challenges, we parameterize an articulated object as a tree of tokens and employ a transformer to generate both the object's high-level geometry code and its kinematic relations. Subsequently, each sub-part's geometry is further decoded using a signed-distance-function (SDF) shape prior, facilitating the synthesis of high-quality 3D shapes. Our approach enables the generation of diverse objects with high-quality geometry and varying number of parts. Comprehensive experiments on conditional generation from text descriptions demonstrate the effectiveness and flexibility of our method.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| 3D Articulated Object Generation | PartNet-Mobility | POR2.761 | 9 | |
| Part-Decomposed Single-View Articulated Object Generation | PartNet-Mobility (test) | RS-gIoU1.3165 | 7 | |
| Single-View Articulated Object Generation | ACD | RS dgIoU134.9 | 7 | |
| 3D Articulated Object Generation | PartNet-Mobility | Geometric Score3.95 | 5 | |
| Articulated Object Generation (Part Retrieval Shape) | PartNet-Mobility (test) | POR0.253 | 5 | |
| Text-Guided Object Alignment | Text-Guided Object Alignment | CLIP-R@1021.98 | 4 |