| Submission name | |||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| Submission time (UTC) | April 25, 2022, 6:52 p.m. | ||||||||||
| User | lahav | ||||||||||
| Task | Model-based 6D localization of seen objects | ||||||||||
| Dataset | ITODD | ||||||||||
| Training model type | Default | ||||||||||
| Training image type | Synthetic (only PBR images provided for BOP Challenge 2020 were used) | ||||||||||
| Description | Single view. Dataset splits: train_pbr | ||||||||||
| Evaluation scores |
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| User | lahav |
|---|---|
| Publication | Coupled Iterative Refinement for 6D Multi-Object Pose Estimation, CVPR 2022 |
| Implementation | https://github.com/princeton-vl/coupled-iterative-refinement |
| Training image modalities | RGB-D |
| Test image modalities | RGB-D |
| Description | We propose a new approach to 6D object pose estimation which consists of an end-to-end differentiable architecture that makes use of geometric knowledge. Our approach it- eratively refines both pose and correspondence in a tightly coupled manner, allowing us to dynamically remove outliers to improve accuracy. We use a novel differentiable layer to perform pose refinement by solving an optimization problem we refer to as Bidirectional Depth-Augmented Perspective- N-Point (BD-PnP). |
| Computer specifications | 2 RTX-3090s |