SPaM: soft patch matching for non-rigid pointcloud registration

Front Robot AI. 2023 Jul 17:10:1019579. doi: 10.3389/frobt.2023.1019579. eCollection 2023.

Abstract

3d reconstruction of deformable objects in dynamic scenes forms the fundamental basis of many robotic applications. Existing mesh-based approaches compromise registration accuracy, and lose important details due to interpolation and smoothing. Additionally, existing non-rigid registration techniques struggle with unindexed points and disconnected manifolds. We propose a novel non-rigid registration framework for raw, unstructured, deformable point clouds purely based on geometric features. The global non-rigid deformation of an object is formulated as an aggregation of locally rigid transformations. The concept of locality is embodied in soft patches described by geometrical properties based on SHOT descriptor and its neighborhood. By considering the confidence score of pairwise association between soft patches of two scans (not necessarily consecutive), a computed similarity matrix serves as the seed to grow a correspondence graph which leverages rigidity terms defined in As-Rigid-As-Possible for pruning and optimization. Experiments on simulated and publicly available datasets demonstrate the capability of the proposed approach to cope with large deformations blended with numerous missing parts in the scan process.

Keywords: as rigid as possible; deformable registration; non-rigid registration; patch matching; pointcloud registration; soft patches.

Grants and funding

This paper is supported by funding from Meat and Livestock Australia (MLA) grant number B.GBP.0051. This work was possible due to the financial and in kid support and efforts of many individuals from NSW Department of Primary Industries, University of Technology Sydney, Local Land Services, and Meat and Livestock Australia.