Regularization Using Denoising: Exact and Robust Signal Recovery

Ruturaj G. Gavaskar, K. Chaudhury
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引用次数: 3

Abstract

We consider the problem of signal reconstruction from linearly corrupted data using plug-and-play (PnP) regularization. As opposed to traditional sparsity-promoting regularizers, PnP uses an off-the-shelf denoiser within a proximal algorithm such as ISTA or ADMM for image reconstruction. Although PnP has become popular in the imaging community, its regularization capacity is not fully understood. For example, it is not known if PnP can in theory recover a signal from few noiseless measurements as in classical compressed sensing and if the recovery is robust. We explore these questions in this work and present some theoretical and experimental results. In particular, we prove that if the denoiser in question has low rank and if the ground- truth lies in the range of the denoiser, then it can be recovered exactly from noiseless measurements. To the best of knowledge, this is first such result. Furthermore, we show using numerical simulations that even if the aforementioned conditions are violated, PnP recovery is robust in practice. We formulate a theorem regarding the recovery error based on these observations.
使用去噪的正则化:精确和鲁棒的信号恢复
我们考虑了用即插即用(PnP)正则化从线性损坏数据中重建信号的问题。与传统的提高稀疏性的正则化器相反,PnP在近端算法(如ISTA或ADMM)中使用现成的去噪器进行图像重建。尽管PnP在成像界已经很流行,但其正则化能力尚未完全了解。例如,理论上PnP能否像经典压缩感知那样从少量无噪声测量中恢复信号,以及恢复是否具有鲁棒性,目前尚不清楚。我们在这项工作中探讨了这些问题,并提出了一些理论和实验结果。特别地,我们证明了如果所讨论的去噪器是低秩的,并且如果地真值在去噪器的范围内,那么它可以从无噪声测量中准确地恢复。据我所知,这是第一次出现这样的结果。此外,我们通过数值模拟表明,即使违反上述条件,PnP恢复在实践中也是鲁棒的。在此基础上,提出了一个关于恢复误差的定理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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