Physics-Informed Diffusion Models for SAR Ship Wake Generation from Text Prompts
Journal:
arXiv
Published Date:
Apr 28, 2025
Abstract
Detecting ship presence via wake signatures in SAR imagery is attracting
considerable research interest, but limited annotated data availability poses
significant challenges for supervised learning. Physics-based simulations are
commonly used to address this data scarcity, although they are slow and
constrain end-to-end learning. In this work, we explore a new direction for
more efficient and end-to-end SAR ship wake simulation using a diffusion model
trained on data generated by a physics-based simulator. The training dataset is
built by pairing images produced by the simulator with text prompts derived
from simulation parameters. Experimental result show that the model generates
realistic Kelvin wake patterns and achieves significantly faster inference than
the physics-based simulator. These results highlight the potential of diffusion
models for fast and controllable wake image generation, opening new
possibilities for end-to-end downstream tasks in maritime SAR analysis.