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Robust Phase Retrieval via ADMM with Outliers

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arxiv 1702.06157 v1 pith:JR5Y7RFO submitted 2017-02-03 cs.IT cs.IRmath.IT

Robust Phase Retrieval via ADMM with Outliers

classification cs.IT cs.IRmath.IT
keywords admmcriterionleastoutliersphaseretrievalabsoluteaccuracy
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An outlier-resistance phase retrieval algorithm based on alternating direction method of multipliers (ADMM) is devised in this letter. Instead of the widely used least squares criterion that is only optimal for Gaussian noise environment, we adopt the least absolute deviation criterion to enhance the robustness against outliers. Considering both intensity- and amplitude-based observation models, the framework of ADMM is developed to solve the resulting non-differentiable optimization problems. It is demonstrated that the core subproblem of ADMM is the proximity operator of the L1-norm, which can be computed efficiently by soft-thresholding in each iteration. Simulation results are provided to validate the accuracy and efficiency of the proposed approach compared to the existing schemes.

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