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.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Multi-view fluid reconstruction | Synthetic data (test) | rhoH RMSE1.309 | 8 | |
| Novel View Synthesis | ScalarFlow real captures (test) | PSNR25.97 | 7 | |
| Single-view fluid reconstruction | Real capture 5 new random views | PSNR29.42 | 6 | |
| Single-view Reconstruction | Real capture 5 random views 1.0 (test) | PSNR29.42 | 6 | |
| Re-simulation | ScalarFlow real captures (test) | PSNR24.55 | 4 |