Lepard: Learning partial point cloud matching in rigid and deformable scenes

CVPR 2022  ·  Yang Li, Tatsuya Harada ·

We present Lepard, a Learning based approach for partial point cloud matching in rigid and deformable scenes. The key characteristics are the following techniques that exploit 3D positional knowledge for point cloud matching: 1) An architecture that disentangles point cloud representation into feature space and 3D position space. 2) A position encoding method that explicitly reveals 3D relative distance information through the dot product of vectors. 3) A repositioning technique that modifies the crosspoint-cloud relative positions. Ablation studies demonstrate the effectiveness of the above techniques. In rigid cases, Lepard combined with RANSAC and ICP demonstrates state-of-the-art registration recall of 93.9% / 71.3% on the 3DMatch / 3DLoMatch. In deformable cases, Lepard achieves +27.1% / +34.8% higher non-rigid feature matching recall than the prior art on our newly constructed 4DMatch / 4DLoMatch benchmark.

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Datasets


Introduced in the Paper:

4DMatch

Used in the Paper:

3DMatch DeformingThings4D
Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Partial Point Cloud Matching 4DMatch Li and Harada (θc=0.05) NFMR 83.9 # 1
IR 80.9 # 3
Partial Point Cloud Matching 4DMatch Predator (1000) NFMR 53.3 # 8
IR 60 # 5
Partial Point Cloud Matching 4DMatch D3Feat (3000) NFMR 55.5 # 7
IR 54.7 # 8
Partial Point Cloud Matching 4DMatch D3Feat (5000) NFMR 56.1 # 6
IR 55.3 # 7
Partial Point Cloud Matching 4DMatch Li and Harada (θc=0.1) NFMR 83.7 # 2
IR 82.7 # 2
Partial Point Cloud Matching 4DMatch Li and Harada (θc=0.2) NFMR 82.2 # 3
IR 85.4 # 1
Partial Point Cloud Matching 4DMatch Predator (5000) NFMR 56.8 # 4
IR 59.3 # 6
Partial Point Cloud Matching 4DMatch Predator (3000) NFMR 56.4 # 5
IR 60.4 # 4
Partial Point Cloud Matching 4DMatch D3Feat (1000) NFMR 51.6 # 9
IR 52.7 # 9

Methods


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