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Journal of Graphics ›› 2025, Vol. 46 ›› Issue (3): 614-624.DOI: 10.11996/JG.j.2095-302X.2025030614

• Computer Graphics and Virtual Reality • Previous Articles     Next Articles

Feedback-based iterative sampling denoising framework for point clouds with high-level noise

WANG Changchang(), JIANG Kun, JIANG Kai, ZHANG Peng, SU Zhiyong()   

  1. School of Automation, Nanjing University of Science & Technology, Nanjing Jiangsu 210094, China
  • Received:2024-08-19 Accepted:2024-11-25 Online:2025-06-30 Published:2025-06-13
  • Contact: SU Zhiyong
  • About author:First author contact:

    WANG Changchang (2000-), master student. His main research interest covers computer vision. E-mail:1812025077@qq.com

  • Supported by:
    National Key Research and Development Program of China(2022QY0102)

Abstract:

During the 3D point cloud collection process, point cloud data is easily interfered by noise due to factors such as measurement anomalies, edge scattering, and the material properties of the measured object. However, the current depth point cloud denoising algorithms perform poorly under high-level noise conditions and can easily lead to smoothing of sharp features. To address this problem, a feedback-based sampling denoising framework for point clouds with high-level noise was proposed, with the aim of enhancing the performance of existing supervised denoising algorithms under high-level noise conditions. First, the noisy point cloud was denoised using the existing supervised noise network to obtain a pre-denoised point cloud. Second, the original noisy point cloud and the pre-denoised point cloud were jointly input into the sampling module to obtain a fusion point cloud containing geometric details and edge features. Third, the feedback-aware refinement network denoised the fused point cloud under the guidance of feedback from the pre-denoised point cloud to obtain the denoising result for this round of iterations. Finally, by using the denoised result from the current iteration as the feedback for the next round and as input to the sampling fusion module, the process was iterated progressively until the final denoising result was obtained. Experimental results demonstrated that this framework enhanced the performance of existing supervised point cloud noise denoising algorithms under high-level noise conditions, exhibiting excellent denoising effects and feature retention capabilities.

Key words: point cloud denoising, point cloud sampling, high-level noise, feedback mechanism, iteration

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