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Matching Distance and Geometric Distribution Aided Learning Multiview Point Cloud Registration

Shiqi Li, Jihua Zhu, Yifan Xie, Naiwen Hu, Di Wang

Year
2024
Citations
8

Abstract

Multiview point cloud registration plays a crucial role in robotics, automation, and computer vision fields. This letter concentrates on pose graph construction and motion synchronization within multiview registration. Previous methods for pose graph construction often pruned fully connected graphs or constructed sparse graph using global feature aggregated from local descriptors, which may not consistently yield reliable results. To identify dependable pairs for pose graph construction, we design a network model that extracts information from the matching distance between point cloud pairs. For motion synchronization, we propose another neural network model to calculate the absolute pose in a data-driven manner, rather than optimizing inaccurate handcrafted loss functions. Our model takes into account geometric distribution information and employs a modified attention mechanism to facilitate flexible and reliable feature interaction. Experimental results on diverse indoor and outdoor datasets confirm the effectiveness and generalizability of our approach.

Keywords

Point cloudComputer visionMatching (statistics)Computer scienceArtificial intelligencePoint set registrationPoint (geometry)Image registrationDistribution (mathematics)Computer graphics (images)

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