Cross-Sensor SAR Data Generation Using Diffusion Models and Feature Migration
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Abstract:
Different synthetic aperture radar (SAR) sensors vary significantly in resolution, polarization modes, and frequency bands, making it difficult to directly apply existing models to newly launched SAR satellites. These new systems require large amounts of labeled data for model retraining, but collecting sufficient data in a short time is often infeasible. To address this contradiction, this paper proposes a data generation and transfer framework, integrating a stable diffusion model with attention distillation, that leverages historical SAR data to synthesize training data tailored to the unique characteristics of new SAR systems. Specifically, we fine-tune the low-rank adaptation (LoRA) modules within the multimodal diffusion transformer (MM-DiT) architecture to enable class-controllable SAR image generation guided by textual prompts. To ensure that the generated images reflect the statistical properties and imaging characteristics of the target SAR system, we further introduce an attention distillation mechanism that transfers sensor-specific features, such as spatial texture, speckle distribution, and structural patterns, from real target-domain data to the generative model. Extensive experiments on multi-class aircraft target datasets from two real spaceborne SAR systems demonstrate the effectiveness of the proposed approach in alleviating data scarcity and supporting cross-sensor remote sensing applications.
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This work was supported in part by the National Natural Science Foundations of China (Nos.62201027, 62271034 ).
WU Xuanting, ZHANG Fan, MA Fei, YIN Qiang, ZHOU Yongsheng. Cross-Sensor SAR Data Generation Using Diffusion Models and Feature Migration[J]. Transactions of Nanjing University of Aeronautics & Astronautics,2025,(4):509-524