SSD-6D: Making RGB-based 3D detection and 6D pose estimation great again
About
We present a novel method for detecting 3D model instances and estimating their 6D poses from RGB data in a single shot. To this end, we extend the popular SSD paradigm to cover the full 6D pose space and train on synthetic model data only. Our approach competes or surpasses current state-of-the-art methods that leverage RGB-D data on multiple challenging datasets. Furthermore, our method produces these results at around 10Hz, which is many times faster than the related methods. For the sake of reproducibility, we make our trained networks and detection code publicly available.
Wadim Kehl, Fabian Manhardt, Federico Tombari, Slobodan Ilic, Nassir Navab• 2017
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| 6D Pose Estimation | YCB-Video | -- | 148 | |
| 6D Object Pose Estimation | LineMOD | Average Accuracy79 | 50 | |
| 6D Object Pose Estimation | OccludedLINEMOD (test) | ADD(S)27.5 | 45 | |
| 6D Pose Estimation | LineMod (test) | Ape65 | 29 | |
| Object Pose Estimation | LineMod (test) | Average Accuracy76.69 | 21 | |
| 6D Pose Estimation | Occlusion dataset BOP challenge (test) | AR13.9 | 19 | |
| 6D Pose Estimation | LINEMOD 5 (test) | Avg Acc76.3 | 18 | |
| 6D Pose Estimation | LineMOD | ADD (S)79 | 16 | |
| 6D Object Pose Estimation | LineMOD standard (test) | Avg Accuracy76.7 | 14 | |
| 6D Object Pose Estimation | T-LESS Primesense SIXD BOP 2018 (test) | Object Recall (errvsd < 0.3)0.246 | 14 |
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