Point Cloud Sampling via Graph Balancing and Gershgorin Disc Alignment
Abstract
3D point cloud (PC) -- a collection of discrete geometric samples of a physical object's surface -- is typically large in size, which entails expensive subsequent operations like viewpoint image rendering and object recognition. Leveraging on recent advances in graph sampling, we propose a fast PC sub-sampling algorithm that reduces its size while preserving the overall object shape. Specifically, to articulate a sampling objective, we first assume a super-resolution (SR) method based on feature graph Laplacian regularization (FGLR) that reconstructs the original high-resolution PC, given 3D points chosen by a sampling matrix \H. We prove that minimizing a worst-case SR reconstruction error is equivalent to maximizing the smallest eigenvalue of a matrix \H^{\top} \H + \mu \cL, where is a symmetric, positive semi-definite matrix computed from the neighborhood graph connecting the 3D points. Instead, for fast computation we maximize a lower bound \lambda^-_{\min}(\H^{\top} \H + \mu \cL) via selection of \H in three steps. Interpreting as a generalized graph Laplacian matrix corresponding to an unbalanced signed graph , we first approximate with a balanced graph with the corresponding generalized graph Laplacian matrix . Second, leveraging on a recent theorem called Gershgorin disc perfect alignment (GDPA), we perform a similarity transform so that Gershgorin disc left-ends of are all aligned at the same value . Finally, we perform PC sub-sampling on using a graph sampling algorithm to maximize \lambda^-_{\min}(\H^{\top} \H + \mu \cL_p) in roughly linear time. Experimental results show that 3D points chosen by our algorithm outperformed competing schemes both numerically and visually in SR reconstruction quality.
Cite
@article{arxiv.2103.06153,
title = {Point Cloud Sampling via Graph Balancing and Gershgorin Disc Alignment},
author = {Chinthaka Dinesh and Gene Cheung and Ivan Bajic},
journal= {arXiv preprint arXiv:2103.06153},
year = {2021}
}