Huisi Wu's research while affiliated with Shenzhen University and other places

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Publications (3)


Corrigendum to “Learning-based 3D surface optimization from medical image reconstruction” Optics and Lasers in Engineering 103 (2018) 110-118
  • Article

August 2018

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26 Reads

Optics and Lasers in Engineering

Mingqiang Wei

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Xianglin Guo

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[...]

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Jing Qin
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Learning-based 3D surface optimization from medical image reconstruction

April 2018

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56 Reads

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24 Citations

Optics and Lasers in Engineering

Mesh optimization has been studied from the graphical point of view: It often focuses on 3D surfaces obtained by optical and laser scanners. This is despite the fact that isosurfaced meshes of medical image reconstruction suffer from both staircases and noise: Isotropic filters lead to shape distortion, while anisotropic ones maintain pseudo-features. We present a data-driven method for automatically removing these medical artifacts while not introducing additional ones. We consider mesh optimization as a combination of vertex filtering and facet filtering in two stages: Offline training and runtime optimization. In specific, we first detect staircases based on the scanning direction of CT/MRI scanners, and design a staircase-sensitive Laplacian filter (vertex-based) to remove them; and then design a unilateral filtered facet normal descriptor (uFND) for measuring the geometry features around each facet of a given mesh, and learn the regression functions from a set of medical meshes and their high-resolution reference counterparts for mapping the uFNDs to the facet normals of the reference meshes (facet-based). At runtime, we first perform staircase-sensitive Laplacian filter on an input MC (Marching Cubes) mesh, and then filter the mesh facet normal field using the learned regression functions, and finally deform it to match the new normal field for obtaining a compact approximation of the high-resolution reference model. Tests show that our algorithm achieves higher quality results than previous approaches regarding surface smoothness and surface accuracy.


Tensor Voting Guided Mesh Denoising

January 2016

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190 Reads

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66 Citations

IEEE Transactions on Automation Science and Engineering

Mesh denoising is imperative for improving imperfect surfaces acquired by scanning devices. The main challenge is to faithfully retain geometric features and avoid introducing additional artifacts when removing noise. Unlike the existing mesh denoising techniques that focus only on either the first-order features or high-order differential properties, our approach exploits the synergy when facet normals and quadric surfaces are integrated to recover a piecewise smooth surface. In specific, we vote on surface normal tensors from robust statistics to guide the creation of consistent subneighborhoods subsequently used by moving least squares (MLS). This voting naturally leads to a conceptually simple way that gives a unified mesh-denoising framework for not only handling noise but also enabling the recovering of surfaces with both sharp and small-scale features. The effectiveness of our framework stems from: 1) the multiscale tensor voting that avoids the influence from noise; 2) the effective energy minimization strategy to searching the consistent subneighborhoods; and 3) the piecewise MLS that fully prevents the side effects from different subneighborhoods during surface fitting. Our framework is direct, practical, and easy to understand. Comparisons with the state-of-The-Art methods demonstrate its outstanding performance on feature preservation and artifact suppression.

Citations (2)


... However, identifying the absolute space from a given microstructure continues to be questionable; even this question could be predictable. The published works [41][42][43] provide the responses and address significant contributions proposing a performed mesh quality in M3C, with improved smoothing algorithms such as Laplacian smoothing or dihedral angle control. There are other mathematical models in both materials science and geometry. ...

Reference:

Finite element modelling of complex 3D image data with quantification and analysis
Learning-based 3D surface optimization from medical image reconstruction
  • Citing Article
  • April 2018

Optics and Lasers in Engineering

... In this process, 3D signals are smoothed to achieve mesh smoothing, such as the smoothing of vertex positions and face normal vectors. Although many previous studies focused on mesh denoising by utilizing filter-based [17][18][19][20][21][22][23], feature-extraction-based [24][25][26], and optimization-based [27][28][29] approaches, the extraction of geometric features remains a challenging task, particularly in the presence of substantial noise and aliasing artifacts. ...

Tensor Voting Guided Mesh Denoising
  • Citing Article
  • January 2016

IEEE Transactions on Automation Science and Engineering