Confronting Ambiguity in 6D Object Pose Estimation via Score-Based Diffusion on SE(3)
About
Addressing pose ambiguity in 6D object pose estimation from single RGB images presents a significant challenge, particularly due to object symmetries or occlusions. In response, we introduce a novel score-based diffusion method applied to the $SE(3)$ group, marking the first application of diffusion models to $SE(3)$ within the image domain, specifically tailored for pose estimation tasks. Extensive evaluations demonstrate the method's efficacy in handling pose ambiguity, mitigating perspective-induced ambiguity, and showcasing the robustness of our surrogate Stein score formulation on $SE(3)$. This formulation not only improves the convergence of denoising process but also enhances computational efficiency. Thus, we pioneer a promising strategy for 6D object pose estimation.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| 6D Object Pose Estimation | SYMSOL | Average Error0.37 | 6 | |
| 6D Object Pose Estimation | SYMSOL-T (test) | R Error (tet)0.59 | 4 | |
| 6D Object Pose Estimation | T-LESS Average of 30 objects | MSPD93.16 | 3 |