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    张银胜, 童俊毅, 陈戈, 单梦姣, 王硕洋, 单慧琳

    Synthetic aperture optical image restoration based on multi-scale feature enhancement

    Zhang Yin-Sheng, Tong Jun-Yi, Chen Ge, Shan Meng-Jiao, Wang Shuo-Yang, Shan Hui-Lin
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    • 受物理孔径大小和光线散射等影响, 合成孔径光学系统成像因通光面积不足和相位失真而出现降质模糊. 传统合成孔径光学系统成像复原算法对噪声敏感, 过于依赖退化模型, 自适应性差. 对此提出一种基于生成对抗网络的光学图像复原方法, 采用U-Net结构获取图像多级尺度特征, 利用基于自注意力的混合域注意力提高网络在空间、通道上的特征提取能力, 构造多尺度特征融合模块和特征增强模块, 融合不同尺度特征间的信息, 优化了编解码层的信息交互方式, 增强了整体网络对原始图像真实结构的关注力, 避免在复原过程中被振铃现象产生的伪影干扰. 实验结果表明, 与其他现有方法相比, 该方法在峰值信噪比、结构相似性和感知相似度评估指标上分别提高了1.51%, 4.42%和5.22%, 有效解决合成孔径光学系统成像结果模糊退化的问题.
      With the wide applications of high-resolution imaging technology in topographic mapping, astronomical observation, and military reconnaissance and other fields, the requirements for imaging resolution of optical system are becoming higher and higher . According to the diffraction limit and Rayleigh criterion, the imaging resolution of the optical system is proportional to the size of the aperture of the system, but affected by the material and the processing of the optical component: the single aperture of the optical system cannot be infinitely enlarged. Therefore the synthetic aperture technology is proposed to replace the single large aperture optical system. Owing to the effect of sub-aperture arrangement and light scattering, the imaging of synthetic aperture optical system will be degraded because of insufficient light area and phase distortion. The traditional imaging restoration algorithm of synthetic aperture optical system is sensitive to noise, overly relies on degraded model, requires a lot of manually designed models, and has poor adaptability. To solve this problem, a multi-scale feature enhancement method of restoring the synthetic aperture optical image is proposed in this work. U-Net is used to obtain multi-scale feature, and self-attention in mixed domain is used to improve the ability of of the network to extract the features in space and channel. Multi-scale feature fusion module and feature enhancement module are constructed to fuse the information between features on different scales. The information interaction mode of the codec layer is optimized, the attention of the whole network to the real structure of the original image is enhanced, and the artifact interference caused by ringing is avoided in the process of restoration. The final experimental results are 1.51%, 4.42% and 5.22% higher than those from the advanced deep learning algorithms in the evaluation indexes of peak signal-to-noise ratio, structural similarity and perceived similarity, respectively. In addition, the method presented in this work has a good restoration effect on the degraded images to different degrees of synthetic aperture, and can effectively restore the degraded images and the images with abnormal light, so as to solve the problem of imaging degradation of synthetic aperture optical system. The feasibility of deep learning method in synthetic aperture optical image restoration is proved.
          通信作者:单慧琳,shanhuilin@nuist.edu.cn
        • 基金项目:国家自然科学基金(批准号: 62071240, 62106111)资助的课题.
          Corresponding author:Shan Hui-Lin,shanhuilin@nuist.edu.cn
        • Funds:Project supported by the National Natural Science Foundation of China (Grant Nos. 62071240, 62106111).
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      • Hardware and software Configuration
        Operating system
        programming language
        Windows10
        Programming framework Pytorch2.0.0+ python3.9.16
        CPU 12th Gen Intel(R)
        Core(TM) i9-12900 KF
        GPU Nvidia GeForce RTX3090
        Memory 32G
        Video memory 24G
        下载: 导出CSV

        对比算法 PSNR/dB SSIM LPIPS FID
        Wiener filtering 15.227 0.5452 0.0896 3.9776
        Deblur GAN 22.379 0.7011 0.0383 1.2534
        SRN 17.639 0.6588 0.0697 2.1246
        MPR-Net 24.725 0.7364 0.0515 0.5728
        Stripformer 26.013 0.7556 0.0384 0.7138
        Ours 26.408 0.7890 0.0363 0.8979
        下载: 导出CSV

        对比算法 PSNR/dB SSIM LPIPS
        Deblur GAN 16.867 0.6278 0.1006
        SRN 19.369 0.7454 0.0545
        MPR-Net 20.166 0.7624 0.0437
        Stripformer 22.023 0.7472 0.0483
        Ours 22.162 0.7702 0.0426
        下载: 导出CSV

        消融策略 U-Net 多尺度特征聚合模块 特征增强模块 混合域注意力 多尺度判别器 PSNR/dB SSIM LPIPS FID
        策略1 19.306 0.5865 0.0841 1.2976
        策略2 21.904 0.6714 0.0833 1.0742
        策略3 23.872 0.6927 0.0579 0.9103
        策略4 25.425 0.7563 0.0515 0.9157
        策略5 23.261 0.7401 0.0604 0.9247
        策略6 22.558 0.7342 0.0739 0.9508
        策略7 23.074 0.7095 0.0637 0.9460
        策略8 20.839 0.6584 0.0799 0.9882
        策略9 22.944 0.6627 0.0682 0.9763
        本文策略 26.408 0.7890 0.0363 0.8979
        下载: 导出CSV
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      计量
      • 文章访问数:1676
      • PDF下载量:66
      • 被引次数:0
      出版历程
      • 收稿日期:2023-11-06
      • 修回日期:2024-01-17
      • 刊出日期:2024-03-20

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