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Trust-Region Eigenvalue Filtering for Projected Newton

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Author

Honglin Chen (Columbia University), Hsueh-Ti Derek Liu (University of British Columbia and Roblox), Alec Jacobson (University of Toronto and Adobe), David I.W. Levin (University of Toronto and NVIDIA), Changxi Zheng (Columbia University)

Venue

SIGGRAPH ASIA 2024

Abstract

We introduce a novel adaptive eigenvalue filtering strategy to stabilize and accelerate the optimization of Neo-Hookean energy and its variants under the Projected Newton framework. For the first time, we show that Newton's method, Projected Newton with eigenvalue clamping and Projected Newton with absolute eigenvalue filtering can be unified using ideas from the generalized trust region method. Based on the trust-region fit, our model adaptively chooses the correct eigenvalue filtering strategy to apply during the optimization. Our method is simple but effective, requiring only two lines of code change in the existing Projected Newton framework. We validate our model outperforms stand-alone variants across a number of experiments on quasistatic simulation of deformable solids over a large dataset.