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融合小波引导与结构增强的SAR图像扩散超分辨(航天遥感图像智能处理与分析专栏)

王飞鸣,李孟霖,屈阳,潘斌   

  1. 南开大学
  • 收稿日期:2025-09-19 修回日期:2025-12-09 出版日期:2025-12-15 发布日期:2025-12-15
  • 通讯作者: 潘斌
  • 基金资助:
    国家重点研发计划;国家自然科学基金;中央高校基本科研业务费专项资金

Diffusion super-resolution of SAR images integrating wavelet guidance and structural enhancement

Feiming Wang1, 2, 2,Bin PAN2   

  1. 1. 南开大学
    2.
  • Received:2025-09-19 Revised:2025-12-09 Online:2025-12-15 Published:2025-12-15
  • Contact: Bin PAN
  • Supported by:
    National Key R&D Program of China;National Natural Science Foundation of China;Fundamental Research Funds for the Central Universities

摘要: 受散射特性与成像几何影响,单极化SAR图像存在相干斑噪声严重、图像退化显著等特性,导致其在超分辨重建任务中更容易出现纹理丢失与结构失真。针对这一问题,提出了一种融合频域处理和结构感知的扩散模型超分辨方法。该方法以潜在扩散模型为骨架,引入了小波条件引导模块和方向感知增强模块以提高模型性能。小波条件引导模块通过空间自适应归一化操作对高频子带进行多尺度调制,从而依据扩散时间步动态增强纹理表达与高频信息重建能力。方向感知增强模块集成多种自适应卷积核,嵌入编码器深层残差结构以增强压缩后的特征图对结构信息的敏感性。实验中,还建立融合相干斑噪声和模糊核的真实退化模型,以贴近真实成像链路。实验表明该方法在多数据集上显著优于现有框架,相比最优方法指标平均改善8.12\%,验证了该方法在SAR图像超分辨任务中的有效性与先进性。

关键词: SAR图像超分辨, 遥感, 扩散模型, 小波分解, 通道注意力

Abstract: Due to the influence of scattering characteristics and imaging geometry, single-polarization SAR images suffer from severe speckle noise and significant image degradation, which makes them more prone to texture loss and structural distortion in super-resolution reconstruction. To address this problem, a diffusion-based super-resolution method that integrates frequency-domain processing and structure awareness is proposed. The method uses a latent diffusion model as the backbone, and introduces a wavelet-conditioned guidance module and a direction-aware enhancement module to improve performance.The wavelet-conditioned guidance module performs multi-scale modulation on high-frequency sub-bands through spatially adaptive normalization, thereby dynamically enhancing texture representation and high-frequency reconstruction capability according to the diffusion timestep. The direction-aware enhancement module incorporates multiple adaptive convolution kernels and is embedded into the deep residual structures of the encoder to strengthen the sensitivity of the compressed feature maps to structural information. In the experiments, a realistic degradation model combining speckle noise and blur kernels is also constructed to better approximate the real imaging chain.Experimental results show that the proposed method achieves significant improvements over existing frameworks on multiple datasets, with an average improvement of 8.12% compared with the best competing method, demonstrating its effectiveness and advancement in SAR image super-resolution.

Key words: SAR image super-resolution, remote sensing, diffusion models, wavelet decomposition, channel attention

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