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Sparse-to-Dense Matching Network for Large-Scale LiDAR Point Cloud Registration

Fan Lü, Guang Chen, Yinlong Liu, Yibing Zhan, Zhijun Li, Dacheng Tao, Changjun Jiang

2023IEEE Transactions on Pattern Analysis and Machine Intelligence28 citationsDOI

Abstract

Point cloud registration is a fundamental problem in 3D computer vision. Previous learning-based methods for LiDAR point cloud registration can be categorized into two schemes: dense-to-dense matching methods and sparse-to-sparse matching methods. However, for large-scale outdoor LiDAR point clouds, solving dense point correspondences is time-consuming, whereas sparse keypoint matching easily suffers from keypoint detection error. In this paper, we propose SDMNet, a novel Sparse-to-Dense Matching Network for large-scale outdoor LiDAR point cloud registration. Specifically, SDMNet performs registration in two sequential stages: sparse matching stage and local-dense matching stage. In the sparse matching stage, we sample a set of sparse points from the source point cloud and then match them to the dense target point cloud using a spatial consistency enhanced soft matching network and a robust outlier rejection module. Furthermore, a novel neighborhood matching module is developed to incorporate local neighborhood consensus, significantly improving performance. The local-dense matching stage is followed for fine-grained performance, where dense correspondences are efficiently obtained by performing point matching in local spatial neighborhoods of high-confidence sparse correspondences. Extensive experiments on three large-scale outdoor LiDAR point cloud datasets demonstrate that the proposed SDMNet achieves state-of-the-art performance with high efficiency.

Topics & Concepts

Point cloudLidarMatching (statistics)Computer sciencePoint set registrationArtificial intelligenceOutlierScale (ratio)Pattern recognition (psychology)Computer visionPoint (geometry)Remote sensingMathematicsGeographyStatisticsGeometryCartographyRobotics and Sensor-Based LocalizationAdvanced Neural Network Applications3D Shape Modeling and Analysis