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Global Transport for Fluid Reconstruction with Learned Self-Supervision

About

We propose a novel method to reconstruct volumetric flows from sparse views via a global transport formulation. Instead of obtaining the space-time function of the observations, we reconstruct its motion based on a single initial state. In addition we introduce a learned self-supervision that constrains observations from unseen angles. These visual constraints are coupled via the transport constraints and a differentiable rendering step to arrive at a robust end-to-end reconstruction algorithm. This makes the reconstruction of highly realistic flow motions possible, even from only a single input view. We show with a variety of synthetic and real flows that the proposed global reconstruction of the transport process yields an improved reconstruction of the fluid motion.

Aleksandra Franz, Barbara Solenthaler, Nils Thuerey• 2021

Related benchmarks

TaskDatasetResultRank
Multi-view fluid reconstructionSynthetic data (test)
rhoH RMSE1.309
8
Novel View SynthesisScalarFlow real captures (test)
PSNR25.97
7
Single-view fluid reconstructionReal capture 5 new random views
PSNR29.42
6
Single-view ReconstructionReal capture 5 random views 1.0 (test)
PSNR29.42
6
Re-simulationScalarFlow real captures (test)
PSNR24.55
4
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