Joint Image Deblur and Poisson Denoising based on Adaptive Dictionary Learning

Xiangyang Zhang, Hongqing Liu, Zhen Luo, Yi Zhou
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Abstract

This paper describes a blind image reconstruction algorithm for blurred image under Poisson noise. To that aim, in this work, the group sparse domain is explored to sparsely represent the image and blur kernel, and then $\ell_{1} -$norm is utilized to enforce the sparse solutions. In doing so, a joint optimization framework is developed to estimate the blur kernel matrix while removing Poisson noise. To effectively solve the developed optimization, a two-step iteration scheme involving two sub-problems is proposed. For each subproblem, the alternating direction method of multipliers (ADMM) algorithm is devised to estimate the blur or denoise. The experimental simulations demonstrate that the proposed algorithm is superior to other approaches in terms of restoration quality and performance metrics.
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基于自适应字典学习的联合图像去模糊和泊松去噪
提出了一种针对泊松噪声下模糊图像的盲图像重建算法。为此,在本工作中,探索了群稀疏域来稀疏表示图像和模糊核,然后利用$\ell_{1} -$范数来强制稀疏解。在此过程中,开发了一个联合优化框架来估计模糊核矩阵,同时去除泊松噪声。为了有效地解决所开发的优化问题,提出了一种包含两个子问题的两步迭代方案。针对每个子问题,设计了交替方向乘法器(ADMM)算法来估计模糊或噪声。实验结果表明,该算法在恢复质量和性能指标上都优于其他方法。
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