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arxiv: 1704.04456 · v2 · pith:SMVURDOZnew · submitted 2017-04-14 · 💻 cs.GR · cs.LG

Liquid Splash Modeling with Neural Networks

classification 💻 cs.GR cs.LG
keywords modelsplashnetworksneuraldetailformationliquidmethod
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This paper proposes a new data-driven approach to model detailed splashes for liquid simulations with neural networks. Our model learns to generate small-scale splash detail for the fluid-implicit-particle method using training data acquired from physically parametrized, high resolution simulations. We use neural networks to model the regression of splash formation using a classifier together with a velocity modifier. For the velocity modification, we employ a heteroscedastic model. We evaluate our method for different spatial scales, simulation setups, and solvers. Our simulation results demonstrate that our model significantly improves visual fidelity with a large amount of realistic droplet formation and yields splash detail much more efficiently than finer discretizations.

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