Hybrid Long and Short Range Flows for Point Cloud Filtering
Dasith de Silva Edirimuni, Xuequan Lu, Ajmal Saeed Mian, Lei Wei, Gang Li, Scott Schaefer, Ying He

TL;DR
This paper introduces HybridPF, a novel point cloud filtering method that combines short-range score-based and long-range flow-based techniques, achieving state-of-the-art denoising results with faster inference.
Contribution
The paper proposes a hybrid filtering approach with parallel modules for short and long-range information, and a dynamic graph convolutional decoder for improved inference.
Findings
Achieves state-of-the-art denoising performance.
Faster inference compared to existing methods.
Effective integration of short and long-range filtering trajectories.
Abstract
Point cloud capture processes are error-prone and introduce noisy artifacts that necessitate filtering/denoising. Recent filtering methods often suffer from point clustering or noise retaining issues. In this paper, we propose Hybrid Point Cloud Filtering () that considers both short-range and long-range filtering trajectories when removing noise. It is well established that short range scores, given by , may provide the necessary displacements to move noisy points to the underlying clean surface. By contrast, long range velocity flows approximate constant displacements directed from a high noise variant patch towards the corresponding clean surface . Here, noisy patches are viewed as intermediate states between the high noise variant and the clean patches. Our intuition is that long range information from velocity flow models…
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