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Deconvolving Poissonian images by a novel hybrid variational model

机译:通过新型混合变分模型对泊松图像进行反卷积

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摘要

In this paper, we propose a novel hybrid variational model for deconvolving Poissonian images by describing the original image as two parts - a cartoon part characterized by total variation, and a detailed part which has sparse representation over the wavelet basis. Fast and efficient iterative algorithms based on the split Bregman method are then employed. Under some conditions we prove the convergence properties of the iterative algorithms. Experiments demonstrate that the proposed hybrid model efficiently removes the noise and avoids the staircase effect simultaneously, which leads to a visually pleasant deconvolution result.
机译:在本文中,我们通过将原始图像描述为两个部分(一个具有总变化特征的卡通部分和一个在小波基础上具有稀疏表示的详细部分)来描述一种用于解卷积泊松图像的新型混合变分模型。然后采用基于分裂Bregman方法的快速有效的迭代算法。在某些条件下,我们证明了迭代算法的收敛性。实验表明,提出的混合模型有效地去除了噪声并同时避免了阶梯效应,从而产生了令人愉悦的反卷积结果。

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