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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

TaskDatasetResultRank
3D Instance SegmentationScanNet V2 (val)
Average AP5057.1
195
3D Instance SegmentationScanNet v2 (test)
mAP39.6
135
3D Instance SegmentationScanNet hidden v2 (test)
Cabinet AP@0.553.8
69
Instance SegmentationPartNet 1.0 (test)
mAP (Chair)77.1
44
Instance SegmentationScanNet (val)
mAP33
39
3D Instance SegmentationScanNet (test)
mAP39.6
15
Instance SegmentationScanNet (test)
mAP39.6
13
Part Instance SegmentationPartNet (test)
AP5057.5
4
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