Li Yi, Wang Zhao, He Wang, Minhyuk Sung, Leonidas Guibas
We introduce a novel 3D object proposal approach named Generative Shape Proposal Network (GSPN) for instance segmentation in point cloud data. Instead of treating object proposal as a direct bounding box regression problem, we take an analysis-by-synthesis strategy and generate proposals by reconstructing shapes from noisy observations in a scene. We incorporate GSPN into a novel 3D instance segmentation framework named Region-based PointNet (R-PointNet) which allows flexible proposal refinement and instance segmentation generation. We achieve state-of-the-art performance on several 3D instance segmentation tasks. The success of GSPN largely comes from its emphasis on geometric understandings during object proposal, which greatly reducing proposals with low objectness.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Object Detection | ScanNetV2 | mAP@0.25 | 30.6 | GSPN |
| Object Detection | ScanNetV2 | mAP@0.5 | 17.7 | GSPN |
| 3D | ScanNetV2 | mAP@0.25 | 30.6 | GSPN |
| 3D | ScanNetV2 | mAP@0.5 | 17.7 | GSPN |
| 3D Object Detection | ScanNetV2 | mAP@0.25 | 30.6 | GSPN |
| 3D Object Detection | ScanNetV2 | mAP@0.5 | 17.7 | GSPN |
| 2D Classification | ScanNetV2 | mAP@0.25 | 30.6 | GSPN |
| 2D Classification | ScanNetV2 | mAP@0.5 | 17.7 | GSPN |
| 2D Object Detection | ScanNetV2 | mAP@0.25 | 30.6 | GSPN |
| 2D Object Detection | ScanNetV2 | mAP@0.5 | 17.7 | GSPN |
| 16k | ScanNetV2 | mAP@0.25 | 30.6 | GSPN |
| 16k | ScanNetV2 | mAP@0.5 | 17.7 | GSPN |