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A Bayesian max-product EM algorithm for reconstructing structured sparse signals

机译:用于重构结构化稀疏信号的贝叶斯最大乘积EM算法

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We present a Bayesian expectation-maximization (EM) algorithm for sparse signal reconstruction via belief propagation. The measurements follow an underdetermined linear model where the regression-coefficient vector is the sum of an unknown sparse signal component and a zero-mean white Gaussian component with an unknown variance. We use a hidden Markov tree (HMT) to describe the probabilistic dependence structure of the binary state variables that identify the nonzero signal coefficients and assign a noninformative prior to the nonzero signal coefficients. Our signal reconstruction scheme is based on an EM iteration that aims at maximizing the posterior distribution of the sparse signal component and its state variables given the variance of the random signal component. We employ a max-product algorithm to implement the maximization (M) step of our EM iteration. The variance of the random signal component is a regularization parameter that controls the sparsity of the sparse signal component. We select this tuning parameter by maximizing an unconstrained sparsity selection (USS) objective function. Our numerical examples show that the proposed algorithm achieves a better reconstruction performance compared with the state-of-the-art methods.
机译:我们提出了一种通过信念传播进行稀疏信号重建的贝叶斯期望最大化(EM)算法。测量遵循不确定的线性模型,其中回归系数向量是未知稀疏信号分量和方差未知的零均值白高斯分量之和。我们使用隐马尔可夫树(HMT)来描述识别非零信号系数并在非零信号系数之前分配非信息量的二进制状态变量的概率依存结构。我们的信号重构方案基于EM迭代,该迭代旨在在给定随机信号分量的方差的情况下最大化稀疏信号分量及其状态变量的后验分布。我们采用max-product算法来实现EM迭代的最大化(M)步骤。随机信号分量的方差是控制稀疏信号分量稀疏性的正则化参数。我们通过最大化无约束稀疏选择(USS)目标函数来选择此调整参数。我们的数值示例表明,与最新方法相比,该算法具有更好的重建性能。

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