4.7 Article

Single-Stage Adaptive Multi-Scale Point Cloud Noise Filtering Algorithm Based on Feature Information

Journal

REMOTE SENSING
Volume 14, Issue 2, Pages -

Publisher

MDPI
DOI: 10.3390/rs14020367

Keywords

point cloud denoising; kd-tree; grey relational analysis; principal component analysis; adaptive threshold; bilateral filtering algorithm

Funding

  1. National Natural Science Foundation of China [51709147]
  2. China Postdoctoral Science Foundation [2021M701713]
  3. Central University Special Funding for Basic Scientific Research [30918012201]

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This paper proposes a single-stage adaptive multi-scale noise filtering algorithm for point clouds based on feature information. The algorithm divides the point cloud into different regions using adaptive thresholds, and filters them separately to enhance computational efficiency and filtering performance.
This paper proposes a single-stage adaptive multi-scale noise filtering algorithm for point clouds, based on feature information, which aims to mitigate the fact that the current laser point cloud noise filtering algorithm has difficulty quickly completing the single-stage adaptive filtering of multi-scale noise. The feature information from each point of the point cloud is obtained based on the efficient k-dimensional (k-d) tree data structure and amended normal vector estimation methods, and the adaptive threshold is used to divide the point cloud into large-scale noise, a feature-rich region, and a flat region to reduce the computational time. The large-scale noise is removed directly, the feature-rich and flat regions are filtered via improved bilateral filtering algorithm and weighted average filtering algorithm based on grey relational analysis, respectively. Simulation results show that the proposed algorithm performs better than the state-of-art comparison algorithms. It was, thus, verified that the algorithm proposed in this paper can quickly and adaptively (i) filter out large-scale noise, (ii) smooth small-scale noise, and (iii) effectively maintain the geometric features of the point cloud. The developed algorithm provides research thought for filtering pre-processing methods applicable in 3D measurements, remote sensing, and target recognition based on point clouds.

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