C-GenReg: Training-Free 3D Point Cloud Registration by Multi-View-Consistent Geometry-to-Image Generation with Probabilistic Modalities Fusion
arXiv cs.CV / 4/21/2026
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Key Points
- C-GenReg is a training-free framework for 3D point cloud registration that addresses poor cross-modality and cross-environment generalization in learning-based methods.
- It transfers the point-cloud matching problem into an auxiliary image domain by using a world foundation model to generate multi-view-consistent RGB representations from input geometry, without any fine-tuning.
- A vision foundation model then extracts dense correspondences from the generated multi-view images, and these pixel matches are lifted back into 3D using the original depth maps.
- The method improves robustness via a “Match-then-Fuse” probabilistic cold-fusion strategy that combines correspondence posteriors from both the generated-RGB branch and the raw geometry branch, yielding calibrated confidence without additional learning.
- Experiments on indoor and outdoor benchmarks show strong zero-shot performance and improved cross-domain generalization, including a demonstration on real outdoor LiDAR data where no imagery is available.
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