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Signal Recovery With Certain Involved Convex Data-Fidelity Constraints

机译:具有某些涉及的凸数据保真度约束的信号恢复

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摘要

This paper proposes an optimization framework that can efficiently deal with convex data-fidelity constraints onto which the metric projections are difficult to compute. Although such an involved data-fidelity constraint is expected to play an important role in signal recovery under non-Gaussian noise contamination, the said difficulty precludes existing algorithms from solving convex optimization problems with the constraint. To resolve this dilemma, we introduce a fixed point set characterization of involved data-fidelity constraints based on a certain computable quasi-nonexpansive mapping. This characterization enables us to mobilize the hybrid steepest descent method to solve convex optimization problems with such a constraint. The proposed framework can handle a variety of involved data-fidelity constraints in a unified manner, without geometric approximation to them. In addition, it requires no computationally expensive procedure such as operator inversion and inner loop. As applications of the proposed framework, we provide image restoration under several types of non-Gaussian noise contamination with illustrative examples.
机译:该文提出了一种优化框架,该框架可以有效地处理度量预测难以计算的凸数据保真度约束。尽管这种涉及的数据保真度约束有望在非高斯噪声污染下的信号恢复中发挥重要作用,但上述困难使现有算法无法解决具有约束的凸优化问题。为了解决这一困境,我们引入了基于某种可计算的准非扩展映射的所涉及数据保真度约束的定点集表征。这种表征使我们能够调动混合最陡下降方法来求解具有这种约束的凸优化问题。所提出的框架可以以统一的方式处理各种涉及的数据保真度约束,而无需对它们进行几何近似。此外,它不需要计算成本高昂的过程,例如算子反转和内循环。作为所提出框架的应用,我们提供了几种类型的非高斯噪声污染下的图像恢复,并提供了说明性示例。

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