Efficient Neural Style Transfer for Volumetric Simulations

Author:

Aurand Joshua1,Ortiz Raphael1,Nauer Silvia1,Azevedo Vinicius C.1

Affiliation:

1. DisneyResearch|Studios, Switzerland

Abstract

Artistically controlling fluids has always been a challenging task. Recently, volumetric Neural Style Transfer (NST) techniques have been used to artistically manipulate smoke simulation data with 2D images. In this work, we revisit previous volumetric NST techniques for smoke, proposing a suite of upgrades that enable stylizations that are significantly faster, simpler, more controllable and less prone to artifacts. Moreover, the energy minimization solved by previous methods is camera dependent. To avoid that, a computationally expensive iterative optimization performed for multiple views sampled around the original simulation is needed, which can take up to several minutes per frame. We propose a simple feed-forward neural network architecture that is able to infer view-independent stylizations that are three orders of the magnitude faster than its optimization-based counterpart.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Graphics and Computer-Aided Design

Reference56 articles.

1. Kai Bai , Wei Li , Mathieu Desbrun , and Xiaopei Liu . 2019. Dynamic Upsampling of Smoke through Dictionary-based Learning. (oct 2019 ). arXiv:1910.09166 http://arxiv.org/abs/1910.09166 Kai Bai, Wei Li, Mathieu Desbrun, and Xiaopei Liu. 2019. Dynamic Upsampling of Smoke through Dictionary-based Learning. (oct 2019). arXiv:1910.09166 http://arxiv.org/abs/1910.09166

2. Predicting high-resolution turbulence details in space and time

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5. Graham Collier. 2022. Raya and the Last Dragon. https://www.sidefx.com/community/raya-and-the-last-dragon/ Graham Collier. 2022. Raya and the Last Dragon. https://www.sidefx.com/community/raya-and-the-last-dragon/

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