4.7 Article

Sparse Data Driven Mesh Deformation

Journal

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TVCG.2019.2941200

Keywords

Strain; Shape; Deformable models; Interpolation; Computational modeling; Geometry; Manifolds; Data driven; sparsity; large scale deformation; real-time deformation

Funding

  1. Beijing Municipal Natural Science Foundation [L182016]
  2. National Natural Science Foundation of China [61872440, 61828204]
  3. Youth Innovation Promotion Association CAS
  4. Young Elite Scientists Sponsorship Program by CAST [2017QNRC001]
  5. CCF-Tencent Open Fund
  6. SenseTime Research Fund
  7. Open Project Program of State Key Laboratory of Virtual Reality Technology and Systems, Beihang University [VRLAB2019C01]

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A sparse blending method is proposed to automatically select a smaller number of deformation modes to compactly describe the desired deformation, addressing the issue of overfitting. The use of spatially localized deformation modes in the deformation basis leads to more meaningful, reliable, and efficient deformations.
Example-based mesh deformation methods are powerful tools for realistic shape editing. However, existing techniques typically combine all the example deformation modes, which can lead to overfitting, i.e., using an overly complicated model to explain the user-specified deformation. This leads to implausible or unstable deformation results, including unexpected global changes outside the region of interest. To address this fundamental limitation, we propose a sparse blending method that automatically selects a smaller number of deformation modes to compactly describe the desired deformation. This along with a suitably chosen deformation basis including spatially localized deformation modes leads to significant advantages, including more meaningful, reliable, and efficient deformations because fewer and localized deformation modes are applied. To cope with large rotations, we develop a simple but effective representation based on polar decomposition of deformation gradients, which resolves the ambiguity of large global rotations using an as-consistent-as-possible global optimization. This simple representation has a closed form solution for derivatives, making it efficient for our sparse localized representation and thus ensuring interactive performance. Experimental results show that our method outperforms state-of-the-art data-driven mesh deformation methods, for both quality of results and efficiency.

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