DynaKPM:鲁棒盲超分辨率重建的动态核先验调制网络
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1.贵州省先进医学成像与智能计算全省重点实验室 贵阳 550025; 2.贵州大学计算机科学与技术学院 贵阳 550025

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TN911.73

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贵州省科技计划项目(黔科合支撑[2023]一般446)、国家自然科学基金(62161004)项目资助


DynaKPM: Dynamic kernel prior modulation network for robust blind super-resolution reconstruction
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1.Key Laboratory of Advanced Medical Imaging and Intelligent Computing of Guizhou Provinc,Guiyang 550025, China; 2.School of Computer Science and Technology, Guizhou University,Guiyang 550025, China

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    摘要:

    针对盲超分辨率重建中核估计偏差与非盲方法先验失配的关键难题,本研究提出基于退化核解耦评估的动态先验调制新范式。通过建立退化核窗宽幅度的解耦评估机制,揭示核窗宽估计误差对非盲重建网络的泛化性能具有决定性影响。基于此,本工作创新性构建双阶段优化框架:在核估计阶段引入损失函数松弛约束策略,通过避免过多损失函数影响核窗宽的精确估计,增强估计核与非盲先验的兼容性;同时设计动态核先验调制网络,采用双路径特征协同优化机制,其中锐化特征模块通过高频梯度强化提取图像锐化先验,模糊衰减特征模块通过均值滤波抑制噪声干扰,并提取具有区域退化差异的模糊衰减先验特征,二者通过先验调制层生成退化调制向量,实现核特征空间的动态校准。实验验证表明,动态核先验调制网络在Set5数据集2×高斯模糊场景下PSNR提升1.92 dB,BSD100数据集4×强噪声场景下提升0.61 dB,显著优于现有最优方法。该方法有效解决了复合退化场景下的核先验失配问题,为实际复杂退化场景下的盲超分重建提供了创新性解决方案。

    Abstract:

    This study proposes a new paradigm of dynamic prior modulation based on degradation kernel decoupling evaluation to address the key challenges of kernel estimation bias and non blind method prior mismatch in blind super resolution reconstruction. By establishing a decoupling evaluation mechanism for degraded kernel window width amplitude, it is revealed that the estimation error of kernel window width has a decisive impact on the generalization performance of non blind reconstruction networks. Based on this, this work innovatively constructs a two-stage optimization framework: introducing a loss function relaxation constraint strategy in the kernel estimation stage, enhancing the compatibility between the estimation kernel and non blind priors by avoiding excessive loss functions affecting the accurate estimation of kernel window width; simultaneously design a dynamic kernel prior modulation network, adopting a dual path feature collaborative optimization mechanism. The sharpening feature module extracts image sharpening prior through high-frequency gradient enhancement, while the fuzzy attenuation feature module suppresses noise interference through mean filtering and extracts fuzzy attenuation prior features with regional degradation differences. The two generate degradation modulation vectors through prior modulation layers to achieve dynamic calibration of the kernel feature space. Experimental verification shows that dynamic kernel prior modulation network improves PSNR by 1.92 dB in Set5 dataset with 2×Gaussian blur scenes and 0.61 dB in BSD100 dataset with 4×strong noise scenes, significantly better than existing optimal methods. This method effectively solves the problem of kernel prior mismatch in complex degraded scenarios, providing an innovative solution for blind super-resolution reconstruction in actual complex degraded scenarios.

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吴运嘉,曹颖,邓泽宇,王丽会. DynaKPM:鲁棒盲超分辨率重建的动态核先验调制网络[J].电子测量技术,2026,49(1):176-187

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  • 在线发布日期: 2026-02-11
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