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AN EFFICIENT ALGORITHM FOR ADAPTIVE TOTAL VARIATION BASED IMAGE DECOMPOSITION AND RESTORATION

机译:基于自适应总变化量的图像分解和恢复的高效算法

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摘要

With the aim to better preserve sharp edges and important structure features in the recovered image, this article researches an improved adaptive total variation regularization and H~(-1) norm fidelity based strategy for image decomposition and restoration. Computationally, for minimizing the proposed energy functional, we investigate an efficient numerical algorithm-the split Bregman method, and briefly prove its convergence. In addition, comparisons are also made with the classical OSV (Osher-Sole-Vese) model (Osher et al., 2003) and the TV-Gabor model (Aujol et al., 2006), in terms of the edge-preserving capability and the recovered results. Numerical experiments markedly demonstrate that our novel scheme yields significantly better outcomes in image decomposition and denoising than the existing models.
机译:为了更好地保留恢复图像中的锐利边缘和重要结构特征,本文研究了一种改进的自适应总变化正则化和基于H〜(-1)保真度的图像分解和恢复策略。在计算上,为了使所提出的能量泛函最小化,我们研究了一种有效的数值算法-分裂Bregman方法,并简要证明了其收敛性。此外,就边缘保留能力而言,还与经典OSV(Osher-Sole-Vese)模型(Osher等,2003)和TV-Gabor模型(Aujol等,2006)进行了比较。和恢复的结果。数值实验表明,与现有模型相比,我们的新方案在图像分解和去噪方面产生了明显更好的结果。

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