不一致非线性观测的信号恢复

P. L. Combettes, Zev Woodstock
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引用次数: 0

摘要

我们证明了信号恢复中的许多非线性观测模型可以用非膨胀算子表示。为了解决测量不准确的问题,我们提出求解一个变分不等式松弛,它保证在温和条件下具有解,如果它恰好是一致的,它与原始问题一致。然后,我们提出了一种有效的算法来解决它,以及在信号和图像恢复中的数值应用,包括一种提高稀疏性的实验算子理论方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Signal Recovery from Inconsistent Nonlinear Observations
We show that many nonlinear observation models in signal recovery can be represented using firmly nonexpansive operators. To address problems with inaccurate measurements, we propose solving a variational inequality relaxation which is guaranteed to possess solutions under mild conditions and which coincides with the original problem if it happens to be consistent. We then present an efficient algorithm for its solution, as well as numerical applications in signal and image recovery, including an experimental operator-theoretic method of promoting sparsity.
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