Point Cloud Sampling via Graph Balancing and Gershgorin Disc Alignment
Chinthaka Dinesh, Gene Cheung, Ivan Bajic

TL;DR
This paper introduces a fast graph-based point cloud sub-sampling method that preserves object shape by maximizing a lower bound on eigenvalues related to graph Laplacians, improving reconstruction quality.
Contribution
It proposes a novel sub-sampling algorithm leveraging Gershgorin disc alignment and graph balancing to efficiently select points that enhance super-resolution reconstruction.
Findings
Outperforms existing methods in numerical accuracy.
Produces visually superior 3D reconstructions.
Operates in roughly linear time.
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…
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Taxonomy
Topics3D Shape Modeling and Analysis · Remote Sensing and LiDAR Applications · Advanced Optical Sensing Technologies
Methodspc
