使用总变化为10的张量截断核范数的彩色图像补全使用总变化为10的张量截断核范数的彩色图像补全

K. EL Qate, S. Mohaoui, A. Hakim, S. Raghay
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引用次数: 0

摘要

近年来,在几种补全方法和算法出现的背后,隐藏着数据不完整的问题。截断核范数被认为是矩阵和张量情况下的一种强大的低秩方法。然而,低秩方法不能表征数据中显示的一些附加信息,如平滑性或特征保持性。本文提出了一种基于凸截断核范数和非凸稀疏全变分的张量补全模型。值得注意的是,我们开发了一种交替最小化算法,该算法结合了凸步骤的加速近端梯度和非凸步骤的投影算子来解决优化问题。实验和对比结果表明,我们的算法对完井过程有显著的影响。
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Color image completion using tensor truncated nuclear norm with l0 total variationColor image completion using tensor truncated nuclear norm with l0 total variation
In recent years, the problem of incomplete data has been behind the appearance of several completion methods and algorithms. The truncated nuclear norm has been known as a powerful low-rank approach both for the matrix and the tensor cases. However, the low-rank approaches are unable to characterize some additional information exhibited in data such as the smoothness or feature-preserving properties. In this work, a tensor completion model based on the convex truncated nuclear norm and the nonconvex-sparse total variation is introduced. Notably, we develop an alternating minimization algorithm that combines the accelerating proximal gradient for the convex step and a projection operator for the nonconvex step to solve the optimization problem. Experiments and comparative results show that our algorithm has a significant impact on the completion process.
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CiteScore
1.10
自引率
10.00%
发文量
18
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