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Bayesian sparse signal recovery based on log-Laplacian prior

机译:基于Log-Laplacian之前的贝叶斯稀疏信号恢复

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This paper proposes a Bayesian sparse signal recovery algorithm. To improve performance on sparse representation, the log-Laplacian distribution is first defined. With a narrow main lobe and high tail values, it is used as a prior of the sparse signal to model the sparse characteristic. Note that analytical inference of the posterior of the sparse signal is a challenge, because the proposed log-Laplacian prior is not conjugate to the Gaussian likelihood. A maximum a posterior (MAP) estimation-based sparse signal recovery algorithm is further proposed. During the reconstruction of the sparse signal, MAP and maximum likelihood estimation are utilized to estimate the scaling parameter and noise variance, respectively, so as to avoid manual tuning of parameters. Additionally, with the use of the conjugate-gradient algorithm, large matrix inversion is avoided and computational efficiency is improved. Experimental results based on both simulated and measured data validate the effectiveness of the proposed log-Laplacian prior-based sparse signal recovery algorithm. Further, it is applied to micromotion parameters estimation and inverse synthetic aperture radar imaging to confirm its validity. (C) 2018 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:本文提出了贝叶斯稀疏信号恢复算法。为了提高对稀疏表示的性能,首先定义日志拉普拉斯分布。具有窄的主叶和高尾值,用作稀疏信号的前部以模拟稀疏特性。注意,稀疏信号后部的分析推理是一个挑战,因为所提出的Log-Laplacian之前未与高斯可能性缀合。进一步提出了最大后(MAP)基于估计的稀疏信号恢复算法。在重建稀疏信号期间,利用MAP和最大似然估计分别估计缩放参数和噪声方差,以避免手动调整参数。另外,通过使用共轭梯度算法,避免了大的矩阵反转,并且提高了计算效率。基于模拟和测量数据的实验结果验证了所提出的Log-Laplacian先前的稀疏信号恢复算法的有效性。此外,它应用于微型参数估计和逆合成孔径雷达成像以确认其有效性。 (c)2018年光学仪表工程师协会(SPIE)

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