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Fast Signal Recovery from Saturated Measurements by Linear Loss and Nonconvex Penalties

2018-09-12Unverified0· sign in to hype

He Fan, Huang Xiaolin, Liu Yipeng, Yan Ming

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Abstract

Sign information is the key to overcoming the inevitable saturation error in compressive sensing systems, which causes information loss and results in bias. For sparse signal recovery from saturation, we propose to use a linear loss to improve the effectiveness from existing methods that utilize hard constraints/hinge loss for sign consistency. Due to the use of linear loss, an analytical solution in the update progress is obtained, and some nonconvex penalties are applicable, e.g., the minimax concave penalty, the _0 norm, and the sorted _1 norm. Theoretical analysis reveals that the estimation error can still be bounded. Generally, with linear loss and nonconvex penalties, the recovery performance is significantly improved, and the computational time is largely saved, which is verified by the numerical experiments.

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