Learning Interpretable PDE Representations for Generative Reconstructions with Structured Sparsity
arXiv cs.LG / 4/28/2026
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Key Points
- The paper introduces LatentPDE, a latent diffusion framework aimed at improving scientific field reconstruction under limited measurements such as noise, incomplete spatial coverage, and low resolution.
- LatentPDE resolves sparse-observation reconstruction and super-resolution jointly, while emphasizing physical compliance rather than relying on soft loss penalties or hard-to-interpret latent representations.
- The method enforces interpretability by directly parameterizing latent variables as coefficients and source terms of an assumed governing PDE, yielding an inherently structured latent space.
- Experiments across varied data-gap configurations show that the model can reconstruct dynamics at arbitrary target resolutions and also track predictive uncertainty.
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