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Removing multiplicative noise using A data-fidelity term and nonlocal total variation

机译:使用数据保真术语和非本体总变化去除乘法噪声

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In this paper, we consider a hybrid method for removing multiplicative noise e.g. speckle noise. Our model consists of l1 data-fidelity term and the nonlocal total variation as regularizer. The l1 data-fidelity term can preserve edges during despecking framework in the curvelet domain. We import the nonlocal total variation as regularizer which can recover the textures and local geometry structures. Moreover, the efficiency of the algorithm adopted here is based on operator Augmented Lagrangian for the hybrid method. Experiments show that the proposed scheme outperforms the most recent methods in this field.
机译:在本文中,我们考虑一种用于去除乘法噪声的混合方法。 斑点噪音。 我们的模型包括L 1 数据保真术语和非识别总变化为常规器。 L 1 数据保真术语可以在曲线结构域中的虚空框架期间保持边缘。 我们将非局部总变化导入常规器,可以恢复纹理和局部几何结构。 此外,这里采用的算法的效率基于混合方法的操作员增强拉格朗日。 实验表明,该方案优于该领域最近的方法。

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