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首页> 外文期刊>Signal Processing. Image Communication: A Publication of the the European Association for Signal Processing >Approximate message passing-based compressed sensing reconstruction with generalized elastic net prior
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Approximate message passing-based compressed sensing reconstruction with generalized elastic net prior

机译:广义弹性网先验的基于近似消息传递的压缩感知重建

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In this paper, we study the compressed sensing reconstruction problem with generalized elastic net prior (GENP), where a sparse signal is sampled via a noisy underdetermined linear observation system, and an additional initial estimation of the signal (the GENP) is available during the reconstruction. We first incorporate the GENP into the LASSO and the approximate message passing (AMP) frameworks, denoted by GENP-LASSO and GENP-AMP respectively. We then focus on GENP-AMP and investigate its parameter selection, state evolution, and noise-sensitivity analysis. A practical parameterless version of the GENP-AMP is also developed, which does not need to know the sparsity of the unknown signal and the variance of the GENP. Simulation results with 1-D data and two different imaging applications are presented to demonstrate the efficiency of the proposed schemes. (C) 2015 Elsevier B.V. All rights reserved.
机译:在本文中,我们研究了具有广义弹性网先验(GENP)的压缩感知重建问题,该问题是通过嘈杂的不确定线性观测系统对稀疏信号进行采样的,并且在该过程中还可以对信号进行额外的初始估计(GENP)重建。我们首先将GENP合并到LASSO和近似消息传递(AMP)框架中,分别由GENP-LASSO和GENP-AMP表示。然后,我们专注于GENP-AMP并研究其参数选择,状态演变和噪声敏感性分析。还开发了实用的无参数版本的GENP-AMP,它不需要知道未知信号的稀疏性和GENP的方差。给出了具有一维数据和两种不同成像应用的仿真结果,以证明所提出方案的效率。 (C)2015 Elsevier B.V.保留所有权利。

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