A Moment Matching-Based Method for Sparse and Noisy Point Cloud Registration
By: Xingyi Li , Han Zhang , Ziliang Wang and more
Potential Business Impact:
Helps robots see better in messy places.
Point cloud registration is a key step in robotic perception tasks, such as Simultaneous Localization and Mapping (SLAM). It is especially challenging in conditions with sparse points and heavy noise. Traditional registration methods, such as Iterative Closest Point (ICP) and Normal Distributions Transform (NDT), often have difficulties in achieving a robust and accurate alignment under these conditions. In this paper, we propose a registration framework based on moment matching. In particular, the point clouds are regarded as i.i.d. samples drawn from the same distribution observed in the source and target frames. We then match the generalized Gaussian Radial Basis moments calculated from the point clouds to estimate the rigid transformation between two frames. Moreover, such method does not require explicit point-to-point correspondences among the point clouds. We further show the consistency of the proposed method. Experiments on synthetic and real-world datasets show that our approach achieves higher accuracy and robustness than existing methods. In addition, we integrate our framework into a 4D Radar SLAM system. The proposed method significantly improves the localization performance and achieves results comparable to LiDAR-based systems. These findings demonstrate the potential of moment matching technique for robust point cloud registration in sparse and noisy scenarios.
Similar Papers
Register Any Point: Scaling 3D Point Cloud Registration by Flow Matching
CV and Pattern Recognition
Makes 3D scans match perfectly, even with bad data.
PKSS-Align: Robust Point Cloud Registration on Pre-Kendall Shape Space
CV and Pattern Recognition
Aligns 3D shapes even with missing or noisy parts.
Quality-controlled registration of urban MLS point clouds reducing drift effects by adaptive fragmentation
CV and Pattern Recognition
Maps cities accurately and fast.