Sparsely-Supervised Data Assimilation via Physics-Informed Schr\"odinger Bridge
arXiv cs.AI / 3/25/2026
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Key Points
- The paper addresses PDE-based data assimilation where sparse high-fidelity observations must be reconciled with governing physics, typically requiring slow per-instance test-time optimization.
- It proposes Physics-Informed Conditional Schrödinger Bridge (PICSB), an amortized reconstruction method that transports an informative low-fidelity prior to an observation-conditioned high-fidelity posterior without needing extra inference-time guidance.
- PICSB is designed to train without full high-fidelity endpoints by using an iterative surrogate-endpoint refresh scheme and by adding PDE residuals directly into the training loss.
- During sampling, the method enforces observations via hard conditioning and maintains competitive reconstruction accuracy while enabling extremely fast spatiotemporal field recovery on fluid PDE benchmarks.
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