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Robust and effective mesh denoising using L0 sparse regularization

  • Yong Zhao
  • , Hong Qin
  • , Xueying Zeng
  • , Junli Xu
  • , Junyu Dong
  • Ocean University of China
  • Stony Brook University
  • Qingdao University of Science and Technology

Research output: Contribution to journalArticlepeer-review

37 Scopus citations

Abstract

Mesh denoising is of great practical importance in geometric analysis and processing. In this paper we develop a novel L0 sparse regularization method to robustly and reliably eliminate noises while preserving features with theoretic guarantee, and our assumption is that, local regions of a noise-free shape should be smooth unless they contain geometric features. Both vertex positions and facet normals are integrated into the L0 norm to measure the sparsity of geometric features, and are then optimized in a sparsity-controllable fashion. We design an improved alternating optimization strategy to solve the L0 minimization problem, which is proved to be both convergent and stable. As a result, our sparse regularization exhibits its advantage to distinguish features from noises. To further improve the computational performance, we propose a multi-layer approach based on joint bilateral upsampling to handle large and complicated meshes. Moreover, the aforementioned framework is naturally accommodating the need of denoising time-varying mesh sequences. Both theoretical analysis and various experimental results on synthetic and natural noises have demonstrated that, our method can robustly recover multifarious features and smooth regions of 3D shapes even with severe noise corruption, and outperform the state-of-the-art methods.

Original languageEnglish
Pages (from-to)82-97
Number of pages16
JournalCAD Computer Aided Design
Volume101
DOIs
StatePublished - Aug 2018

Keywords

  • L norm
  • Mesh denoising
  • Multi-layer approach
  • Non-convex optimization
  • Sparse regularization

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