Litcius/Paper detail

Learning meaningful controls for fluids

Mengyu Chu, Nils Thuerey, Hans‐Peter Seidel, Christian Theobalt, Rhaleb Zayer

2021ACM Transactions on Graphics22 citationsDOIOpen Access PDF

Abstract

While modern fluid simulation methods achieve high-quality simulation results, it is still a big challenge to interpret and control motion from visual quantities, such as the advected marker density. These visual quantities play an important role in user interactions: Being familiar and meaningful to humans, these quantities have a strong correlation with the underlying motion. We propose a novel data-driven conditional adversarial model that solves the challenging and theoretically ill-posed problem of deriving plausible velocity fields from a single frame of a density field. Besides density modifications, our generative model is the first to enable the control of the results using all of the following control modalities: obstacles, physical parameters, kinetic energy, and vorticity. Our method is based on a new conditional generative adversarial neural network that explicitly embeds physical quantities into the learned latent space, and a new cyclic adversarial network design for control disentanglement. We show the high quality and versatile controllability of our results for density-based inference, realistic obstacle interaction, and sensitive responses to modifications of physical parameters, kinetic energy, and vorticity. Code, models, and results can be found at https://github.com/RachelCmy/den2vel.

Topics & Concepts

Computer scienceControllabilityInferenceArtificial intelligenceGenerative grammarTheoretical computer scienceMathematicsApplied mathematicsGenerative Adversarial Networks and Image SynthesisComputer Graphics and Visualization TechniquesHuman Pose and Action Recognition
Learning meaningful controls for fluids | Litcius