• Corpus ID: 22289512

On the Hessian of Shape Matching Energy

@article{Fei2016OnTH,
  title={On the Hessian of Shape Matching Energy},
  author={Yun Fei},
  journal={ArXiv},
  year={2016},
  volume={abs/1604.02483}
}
  • Yun Fei
  • Published 8 April 2016
  • Computer Science
  • ArXiv
In this technical report we derive the analytic form of the Hessian matrix for shape matching energy. Shape matching (Fig. 1) is a useful technique for meshless deformation, which can be easily combined with multiple techniques in real-time dynamics (refer to [MHTG05, BMM15] for more details). Nevertheless, it has been rarely applied in scenarios where implicit (such as backward differentiation formulas) integrators are required, and hence strong viscous damping effect, though popular in… 

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