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Generating Liquid Simulations with Deformation-aware Neural Networks
[article]
2019
arXiv
pre-print
We propose a novel approach for deformation-aware neural networks that learn the weighting and synthesis of dense volumetric deformation fields. Our method specifically targets the space-time representation of physical surfaces from liquid simulations. Liquids exhibit highly complex, non-linear behavior under changing simulation conditions such as different initial conditions. Our algorithm captures these complex phenomena in two stages: a first neural network computes a weighting function for
arXiv:1704.07854v4
fatcat:benfmgsv6rf4lclrvceesp4py4