Data-driven synthesis of smoke flows with CNN-based feature descriptors

Mengyu Chu, Nils Thuerey

Research output: Contribution to journalConference articlepeer-review

134 Scopus citations

Abstract

We present a novel data-driven algorithm to synthesize high resolution flow simulations with reusable repositories of space-time flow data. In our work, we employ a descriptor learning approach to encode the similarity between fluid regions with differences in resolution and numerical viscosity. We use convolutional neural networks to generate the descriptors from fluid data such as smoke density and flow velocity. At the same time, we present a deformation limiting patch advection method which allows us to robustly track deformable fluid regions. With the help of this patch advection, we generate stable space-time data sets from detailed fluids for our repositories. We can then use our learned descriptors to quickly localize a suitable data set when running a new simulation. This makes our approach very efficient, and resolution independent. We will demonstrate with several examples that our method yields volumes with very high effective resolutions, and non-dissipative small scale details that naturally integrate into the motions of the underlying flow.

Original languageEnglish
Article number69
JournalACM Transactions on Graphics
Volume36
Issue number4
DOIs
StatePublished - 2017
EventACM SIGGRAPH 2017 - Los Angeles, United States
Duration: 30 Jul 20173 Aug 2017

Keywords

  • Convolutional neural networks
  • Fluid simulation
  • Low-dimensional feature descriptors

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