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arxiv:2503.05333

PhysicsGen: Can Generative Models Learn from Images to Predict Complex Physical Relations?

Published on Mar 7
· Submitted by mspitzna on Mar 13
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Abstract

The image-to-image translation abilities of generative learning models have recently made significant progress in the estimation of complex (steered) mappings between image distributions. While appearance based tasks like image in-painting or style transfer have been studied at length, we propose to investigate the potential of generative models in the context of physical simulations. Providing a dataset of 300k image-pairs and baseline evaluations for three different physical simulation tasks, we propose a benchmark to investigate the following research questions: i) are generative models able to learn complex physical relations from input-output image pairs? ii) what speedups can be achieved by replacing differential equation based simulations? While baseline evaluations of different current models show the potential for high speedups (ii), these results also show strong limitations toward the physical correctness (i). This underlines the need for new methods to enforce physical correctness. Data, baseline models and evaluation code http://www.physics-gen.org.

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edited 5 days ago

We introduce PhysicsGen, a benchmark for estimating complex physical relations using image-to-image generative models. Our dataset, now available via Hugging Face Datasets, contains ~300k image pairs across three diverse simulation scenarios.
Dataset: https://huggingface.co/datasets/mspitzna/physicsgen

Key Findings:

  • Accuracy: They perform well on simple problems but struggle with higher order relations.
  • Model Behavior: Different models exhibit distinct error patterns; for example, diffusion models often generate multiple candidate outputs, reflecting challenges in capturing complex dynamics.
  • Speed: Generative models can replace iterative solvers with speed-ups up to 20,000×.

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