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首页> 外文期刊>IEEE Transactions on Image Processing >Novel Cooperative Neural Fusion Algorithms for Image Restoration and Image Fusion
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Novel Cooperative Neural Fusion Algorithms for Image Restoration and Image Fusion

机译:用于图像复原和图像融合的新型合作神经融合算法

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摘要

To deal with the problem of restoring degraded images with non-Gaussian noise, this paper proposes a novel cooperative neural fusion regularization (CNFR) algorithm for image restoration. Compared with conventional regularization algorithms for image restoration, the proposed CNFR algorithm can relax need of the optimal regularization parameter to be estimated. Furthermore, to enhance the quality of restored images, this paper presents a cooperative neural fusion (CNF) algorithm for image fusion. Compared with existing signal-level image fusion algorithms, the proposed CNF algorithm can greatly reduce the loss of contrast information under blind Gaussian noise environments. The performance analysis shows that the proposed two neural fusion algorithms can converge globally to the robust and optimal image estimate. Simulation results confirm that in different noise environments, the proposed two neural fusion algorithms can obtain a better image estimate than several well known image restoration and image fusion methods
机译:针对非高斯噪声恢复退化图像的问题,提出了一种新的协作神经融合正则化(CNFR)算法进行图像恢复。与传统的图像正则化算法相比,本文提出的CNFR算法可以放宽对需要估计的最佳正则化参数的需求。此外,为了提高恢复图像的质量,本文提出了一种用于图像融合的协作神经融合(CNF)算法。与现有的信号级图像融合算法相比,提出的CNF算法可以大大减少在高斯盲噪声环境下对比度信息的损失。性能分析表明,所提出的两种神经融合算法可以全局收敛到鲁棒和最优的图像估计。仿真结果证实,在几种噪声环境下,与几种著名的图像复原和图像融合方法相比,所提出的两种神经融合算法可以获得更好的图像估计。

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