HyperGCT: A Dynamic Hyper-GNN-Learned Geometric Constraint for 3D Registration
Geometric constraints between feature matches are critical in 3D point cloud registration problems. Existing approaches typically model unordered matches as a consistency graph and sample consistent matches to generate hypotheses. However, explicit graph construction introduces noise, posing great challenges for handcrafted geometric constraints to render consistency among matches. To overcome this, we propose HyperGCT, a flexible dynamic Hyper-GNN-learned geometric constraint that leverages high-order consistency among 3D correspondences. To our knowledge, HyperGCT is the first method that mines robust geometric constraints from dynamic hypergraphs for 3D registration. By dynamically optimizing the hypergraph through vertex and edge feature aggregation, HyperGCT effectively captures the correlations among correspondences, leading to accurate hypothesis generation. Extensive experiments on 3DMatch, 3DLoMatch, KITTI-LC, and ETH show that HyperGCT achieves state-of-the-art performance. Furthermore, our method is robust to graph noise, demonstrating a significant advantage in terms of generalization. The code will be released.
View on arXiv@article{zhang2025_2503.02195, title={ HyperGCT: A Dynamic Hyper-GNN-Learned Geometric Constraint for 3D Registration }, author={ Xiyu Zhang and Jiayi Ma and Jianwei Guo and Wei Hu and Zhaoshuai Qi and Fei Hui and Jiaqi Yang and Yanning Zhang }, journal={arXiv preprint arXiv:2503.02195}, year={ 2025 } }