Point Cloud Instance Segmentation using Probabilistic Embeddings
About
In this paper we propose a new framework for point cloud instance segmentation. Our framework has two steps: an embedding step and a clustering step. In the embedding step, our main contribution is to propose a probabilistic embedding space for point cloud embedding. Specifically, each point is represented as a tri-variate normal distribution. In the clustering step, we propose a novel loss function, which benefits both the semantic segmentation and the clustering. Our experimental results show important improvements to the SOTA, i.e., 3.1% increased average per-category mAP on the PartNet dataset.
Biao Zhang, Peter Wonka• 2019
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| 3D Instance Segmentation | ScanNet V2 (val) | Average AP5057.1 | 195 | |
| 3D Instance Segmentation | ScanNet v2 (test) | mAP39.6 | 135 | |
| 3D Instance Segmentation | ScanNet hidden v2 (test) | Cabinet AP@0.553.8 | 69 | |
| Instance Segmentation | PartNet 1.0 (test) | mAP (Chair)77.1 | 44 | |
| Instance Segmentation | ScanNet (val) | mAP33 | 39 | |
| 3D Instance Segmentation | ScanNet (test) | mAP39.6 | 15 | |
| Instance Segmentation | ScanNet (test) | mAP39.6 | 13 | |
| Part Instance Segmentation | PartNet (test) | AP5057.5 | 4 |
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