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Attention-Based Learning for Fluid State Interpolation and Editing in a Time-Continuous Framework

Published 12 Jun 2024 in cs.LG and cs.GR | (2406.08188v1)

Abstract: In this work, we introduce FluidsFormer: a transformer-based approach for fluid interpolation within a continuous-time framework. By combining the capabilities of PITT and a residual neural network (RNN), we analytically predict the physical properties of the fluid state. This enables us to interpolate substep frames between simulated keyframes, enhancing the temporal smoothness and sharpness of animations. We demonstrate promising results for smoke interpolation and conduct initial experiments on liquids.

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