HiPose: Hierarchical Binary Surface Encoding and Correspondence Pruning for RGB-D 6DoF Object Pose Estimation
About
In this work, we present a novel dense-correspondence method for 6DoF object pose estimation from a single RGB-D image. While many existing data-driven methods achieve impressive performance, they tend to be time-consuming due to their reliance on rendering-based refinement approaches. To circumvent this limitation, we present HiPose, which establishes 3D-3D correspondences in a coarse-to-fine manner with a hierarchical binary surface encoding. Unlike previous dense-correspondence methods, we estimate the correspondence surface by employing point-to-surface matching and iteratively constricting the surface until it becomes a correspondence point while gradually removing outliers. Extensive experiments on public benchmarks LM-O, YCB-V, and T-Less demonstrate that our method surpasses all refinement-free methods and is even on par with expensive refinement-based approaches. Crucially, our approach is computationally efficient and enables real-time critical applications with high accuracy requirements.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| 6DoF Pose Estimation | YCB-Video (test) | -- | 72 | |
| 6D Object Pose Estimation | LM-O (test) | Recall (Mean)89.6 | 22 | |
| 6D Object Pose Estimation | BOP Benchmark LM-O YCB-V T-LESS Synthetic PBR data only 2023 (train) | LM-O BOP Score79.9 | 6 |