A Multi-Pass GAN for Fluid Flow Super-Resolution
June 04, 2019 Β· Entered Twilight Β· π PACMCGIT
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Repo contents: GAN, LICENSE, README.md, datagen, resources, tools_wscale
Authors
Maximilian Werhahn, You Xie, Mengyu Chu, Nils Thuerey
arXiv ID
1906.01689
Category
cs.GR: Graphics
Cross-listed
cs.LG,
physics.comp-ph
Citations
64
Venue
PACMCGIT
Repository
https://github.com/maxwerhahn/Multi-pass-GAN
β 20
Last Checked
22 days ago
Abstract
We propose a novel method to up-sample volumetric functions with generative neural networks using several orthogonal passes. Our method decomposes generative problems on Cartesian field functions into multiple smaller sub-problems that can be learned more efficiently. Specifically, we utilize two separate generative adversarial networks: the first one up-scales slices which are parallel to the XY-plane, whereas the second one refines the whole volume along the Z-axis working on slices in the YZ-plane. In this way, we obtain full coverage for the 3D target function and can leverage spatio-temporal supervision with a set of discriminators. Additionally, we demonstrate that our method can be combined with curriculum learning and progressive growing approaches. We arrive at a first method that can up-sample volumes by a factor of eight along each dimension, i.e., increasing the number of degrees of freedom by 512. Large volumetric up-scaling factors such as this one have previously not been attainable as the required number of weights in the neural networks renders adversarial training runs prohibitively difficult. We demonstrate the generality of our trained networks with a series of comparisons to previous work, a variety of complex 3D results, and an analysis of the resulting performance.
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