4.6 Article

Spectral Geometric Verification: Re-Ranking Point Cloud Retrieval for Metric Localization

Journal

IEEE ROBOTICS AND AUTOMATION LETTERS
Volume 8, Issue 5, Pages 2494-2501

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/LRA.2023.3255560

Keywords

Point cloud compression; Measurement; Location awareness; Pose estimation; Task analysis; Feature extraction; Time complexity; Localization; recognition; SLAM

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This paper presents an efficient spectral method called SpectralGV for geometric verification and re-ranking. It is able to identify the correct candidate among potential matches retrieved by global similarity search without requiring resource intensive point cloud registration.
In large-scale metric localization, an incorrect result during retrieval will lead to an incorrect pose estimate or loop closure. Re-ranking methods propose to take into account all the top retrieval candidates and re-order them to increase the likelihood of the top candidate being correct. However, state-of-the-art re-ranking methods are inefficient when re-ranking many potential candidates due to their need for resource intensive point cloud registration between the query and each candidate. In this work, we propose an efficient spectral method for geometric verification (named SpectralGV) that does not require registration. We demonstrate how the optimal inter-cluster score of the correspondence compatibility graph of two point clouds represents a robust fitness score measuring their spatial consistency. This score takes into account the subtle geometric differences between structurally similar point clouds and therefore can be used to identify the correct candidate among potential matches retrieved by global similarity search. SpectralGV is deterministic, robust to outlier correspondences, and can be computed in parallel for all potential candidates. We conduct extensive experiments on 5 large-scale datasets to demonstrate that SpectralGV outperforms other state-of-the-art re-ranking methods and show that it consistently improves the recall and pose estimation of 3 state-of-the-art metric localization architectures while having a negligible effect on their runtime.

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