Publication | Closed Access
Segregator: Global Point Cloud Registration with Semantic and Geometric Cues
20
Citations
24
References
2023
Year
Unknown Venue
EngineeringPoint Cloud ProcessingPoint CloudLocalizationImage AnalysisSemantic InformationData ScienceGeometric DistributionPattern RecognitionImage RegistrationComputational GeometryPoint FeaturesGeometric ModelingMachine VisionComputer ScienceStructure From MotionComputer VisionSpatial VerificationNatural SciencesGeometric CuesMulti-view Geometry
This paper presents Segregator, a global point cloud registration framework that exploits both semantic information and geometric distribution to efficiently build up outlier-robust correspondences and search for inliers. Current state-of-the-art algorithms rely on point features to set up putative correspondences and refine them by employing pair-wise distance consistency checks. However, such a scheme suffers from degenerate cases, where the descriptive capability of local point features downgrades, and unconstrained cases, where length-preserving (1-TRIMs)-based checks cannot sufficiently constrain whether the current observation is consistent with others, resulting in a complexified NP-complete problem to solve. To tackle these problems, on the one hand, we propose a novel degeneracy-robust and efficient corresponding procedure consisting of both instance-level semantic clusters and geometric-level point features. On the other hand, Gaussian distribution-based translation and rotation invariant measurements (G-TRIMs) are proposed to conduct the consistency check and further constrain the problem size. We validated our proposed algorithm on extensive real-world data-based experiments. The code is available: https://github.com/Pamphlett/Segregator.
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