TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/Lepard: Learning partial point cloud matching in rigid and...

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

Yang Li, Tatsuya Harada

2021-11-24CVPR 2022 13D Point Cloud MatchingPoint Cloud RegistrationPartial Point Cloud Matching3D Feature Matching
PaperPDFCode(official)

Abstract

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.

Results

TaskDatasetMetricValueModel
Partial Point Cloud Matching4DMatchIR80.9Li and Harada (θc=0.05)
Partial Point Cloud Matching4DMatchNFMR83.9Li and Harada (θc=0.05)
Partial Point Cloud Matching4DMatchIR82.7Li and Harada (θc=0.1)
Partial Point Cloud Matching4DMatchNFMR83.7Li and Harada (θc=0.1)
Partial Point Cloud Matching4DMatchIR85.4Li and Harada (θc=0.2)
Partial Point Cloud Matching4DMatchNFMR82.2Li and Harada (θc=0.2)
Partial Point Cloud Matching4DMatchIR59.3Predator (5000)
Partial Point Cloud Matching4DMatchNFMR56.8Predator (5000)
Partial Point Cloud Matching4DMatchIR60.4Predator (3000)
Partial Point Cloud Matching4DMatchNFMR56.4Predator (3000)
Partial Point Cloud Matching4DMatchIR55.3D3Feat (5000)
Partial Point Cloud Matching4DMatchNFMR56.1D3Feat (5000)
Partial Point Cloud Matching4DMatchIR54.7D3Feat (3000)
Partial Point Cloud Matching4DMatchNFMR55.5D3Feat (3000)
Partial Point Cloud Matching4DMatchIR60Predator (1000)
Partial Point Cloud Matching4DMatchNFMR53.3Predator (1000)
Partial Point Cloud Matching4DMatchIR52.7D3Feat (1000)
Partial Point Cloud Matching4DMatchNFMR51.6D3Feat (1000)

Related Papers

A Multi-Level Similarity Approach for Single-View Object Grasping: Matching, Planning, and Fine-Tuning2025-07-16Simultaneous Localization and Mapping Using Active mmWave Sensing in 5G NR2025-07-07CA-I2P: Channel-Adaptive Registration Network with Global Optimal Selection2025-06-26Correspondence-Free Multiview Point Cloud Registration via Depth-Guided Joint Optimisation2025-06-18MT-PCR: A Hybrid Mamba-Transformer with Spatial Serialization for Hierarchical Point Cloud Registration2025-06-16Robust Filtering -- Novel Statistical Learning and Inference Algorithms with Applications2025-06-13Rectified Point Flow: Generic Point Cloud Pose Estimation2025-06-05Cross-modal feature fusion for robust point cloud registration with ambiguous geometry2025-05-19