Papers
Topics
Authors
Recent
Search
2000 character limit reached

VRHCF: Cross-Source Point Cloud Registration via Voxel Representation and Hierarchical Correspondence Filtering

Published 15 Mar 2024 in cs.CV | (2403.10085v1)

Abstract: Addressing the challenges posed by the substantial gap in point cloud data collected from diverse sensors, achieving robust cross-source point cloud registration becomes a formidable task. In response, we present a novel framework for point cloud registration with broad applicability, suitable for both homologous and cross-source registration scenarios. To tackle the issues arising from different densities and distributions in cross-source point cloud data, we introduce a feature representation based on spherical voxels. Furthermore, addressing the challenge of numerous outliers and mismatches in cross-source registration, we propose a hierarchical correspondence filtering approach. This method progressively filters out mismatches, yielding a set of high-quality correspondences. Our method exhibits versatile applicability and excels in both traditional homologous registration and challenging cross-source registration scenarios. Specifically, in homologous registration using the 3DMatch dataset, we achieve the highest registration recall of 95.1% and an inlier ratio of 87.8%. In cross-source point cloud registration, our method attains the best RR on the 3DCSR dataset, demonstrating a 9.3 percentage points improvement. The code is available at https://github.com/GuiyuZhao/VRHCF.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (32)
  1. “Cross-source point cloud registration: Challenges, progress and prospects,” Neurocomputing, p. 126383, 2023.
  2. “Geometric transformer for fast and robust point cloud registration,” in CVPR, 2022, pp. 11143–11152.
  3. “Spinnet: Learning a general surface descriptor for 3d point cloud registration,” in CVPR, 2021, pp. 11753–11762.
  4. “Predator: Registration of 3d point clouds with low overlap,” in CVPR, 2021, pp. 4267–4276.
  5. “Hybridpoint: Point cloud registration based on hybrid point sampling and matching,” in ICME, 2023, pp. 2021–2026.
  6. “A coarse-to-fine algorithm for matching and registration in 3d cross-source point clouds,” IEEE TCSVT, vol. 28, no. 10, pp. 2965–2977, 2017.
  7. “Accurate registration of cross-modality geometry via consistent clustering,” IEEE TVCG, 2023.
  8. “Fast registration for cross-source point clouds by using weak regional affinity and pixel-wise refinement,” in ICME, 2019, pp. 1552–1557.
  9. “A method for registration of 3-d shapes,” IEEE TPAMI, vol. 14, no. 2, pp. 239–256, 1992.
  10. “Pointnet: Deep learning on point sets for 3d classification and segmentation,” in CVPR, 2017, pp. 652–660.
  11. “Random sample consensus: a paradigm for model fitting with applications to image analysis and automated cartography,” Communications of the ACM, vol. 24, no. 6, pp. 381–395, 1981.
  12. “A comprehensive survey on point cloud registration,” arXiv preprint arXiv:2103.02690, 2021.
  13. “Go-icp: Solving 3d registration efficiently and globally optimally,” in ICCV, 2013, pp. 1457–1464.
  14. “Cicp: Cluster iterative closest point for sparse–dense point cloud registration,” Rob. Auton. Syst., vol. 108, pp. 66–86, 2018.
  15. “A graph-matching approach for cross-view registration of over-view and street-view based point clouds,” ISPRS J. Photogramm., vol. 185, pp. 2–15, 2022.
  16. “Speal: Skeletal prior embedded attention learning for cross-source point cloud registration,” arXiv preprint arXiv:2312.08664, 2023.
  17. “Deep hough voting for robust global registration,” in ICCV, 2021, pp. 15994–16003.
  18. “Deep global registration,” in CVPR, 2020, pp. 2514–2523.
  19. “Pointdsc: Robust point cloud registration using deep spatial consistency,” in CVPR, 2021, pp. 15859–15869.
  20. “3dregnet: A deep neural network for 3d point registration,” in CVPR, 2020, pp. 7191–7201.
  21. “A spectral technique for correspondence problems using pairwise constraints,” in ICCV, 2005, vol. 2, pp. 1482–1489.
  22. “Sc2-pcr: A second order spatial compatibility for efficient and robust point cloud registration,” in CVPR, 2022, pp. 13221–13231.
  23. “3d registration with maximal cliques,” in CVPR, 2023, pp. 17745–17754.
  24. “Learning to find good correspondences,” in CVPR, 2018, pp. 2666–2674.
  25. “Pointnet++: Deep hierarchical feature learning on point sets in a metric space,” NeurIPS, vol. 30, 2017.
  26. “Loftr: Detector-free local feature matching with transformers,” in CVPR, 2021, pp. 8922–8931.
  27. “Lightglue: Local feature matching at light speed,” in ICCV, 2023.
  28. “Generalized-icp.,” in Robotics: science and systems, 2009, vol. 2, p. 435.
  29. “Cofinet: Reliable coarse-to-fine correspondences for robust pointcloud registration,” NeurIPS, vol. 34, pp. 23872–23884, 2021.
  30. “Spherenet: Learning a noise-robust and general descriptor for point cloud registration,” IEEE Trans. Geosci. Remote Sens., pp. 1–1, 2023.
  31. “Rotation-invariant transformer for point cloud matching,” in CVPR, 2023, pp. 5384–5393.
  32. “The perfect match: 3d point cloud matching with smoothed densities,” in CVPR, 2019, pp. 5545–5554.
Citations (1)

Summary

Paper to Video (Beta)

Whiteboard

No one has generated a whiteboard explanation for this paper yet.

Open Problems

We haven't generated a list of open problems mentioned in this paper yet.

Continue Learning

We haven't generated follow-up questions for this paper yet.

Collections

Sign up for free to add this paper to one or more collections.