MLITSep 5, 2012

A Max-Product EM Algorithm for Reconstructing Markov-tree Sparse Signals from Compressive Samples

arXiv:1209.1064v45 citations
Originality Incremental advance
AI Analysis

This work addresses signal reconstruction for compressive sensing applications, but it is incremental as it builds on existing Bayesian and EM frameworks with a specific Markov-tree structure.

The authors tackled the problem of reconstructing Markov-tree sparse signals from compressive samples by proposing a Bayesian EM algorithm using belief propagation, achieving competitive performance in signal and image reconstruction experiments compared to existing state-of-the-art methods.

We propose a Bayesian expectation-maximization (EM) algorithm for reconstructing Markov-tree sparse signals via belief propagation. The measurements follow an underdetermined linear model where the regression-coefficient vector is the sum of an unknown approximately sparse signal and a zero-mean white Gaussian noise with an unknown variance. The signal is composed of large- and small-magnitude components identified by binary state variables whose probabilistic dependence structure is described by a Markov tree. Gaussian priors are assigned to the signal coefficients given their state variables and the Jeffreys' noninformative prior is assigned to the noise variance. Our signal reconstruction scheme is based on an EM iteration that aims at maximizing the posterior distribution of the signal and its state variables given the noise variance. We construct the missing data for the EM iteration so that the complete-data posterior distribution corresponds to a hidden Markov tree (HMT) probabilistic graphical model that contains no loops and implement its maximization (M) step via a max-product algorithm. This EM algorithm estimates the vector of state variables as well as solves iteratively a linear system of equations to obtain the corresponding signal estimate. We select the noise variance so that the corresponding estimated signal and state variables obtained upon convergence of the EM iteration have the largest marginal posterior distribution. We compare the proposed and existing state-of-the-art reconstruction methods via signal and image reconstruction experiments.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes