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Open AccessJournal ArticleDOI

Expectation-Maximization Gaussian-Mixture Approximate Message Passing

Jeremy Vila, +1 more
- 01 Oct 2013 - 
- Vol. 61, Iss: 19, pp 4658-4672
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TLDR
An empirical-Bayesian technique is proposed that simultaneously learns the signal distribution while MMSE-recovering the signal-according to the learned distribution-using AMP, and model the non-zero distribution as a Gaussian mixture, and learn its parameters through expectation maximization, using AMP to implement the expectation step.
Abstract
When recovering a sparse signal from noisy compressive linear measurements, the distribution of the signal's non-zero coefficients can have a profound effect on recovery mean-squared error (MSE). If this distribution was a priori known, then one could use computationally efficient approximate message passing (AMP) techniques for nearly minimum MSE (MMSE) recovery. In practice, however, the distribution is unknown, motivating the use of robust algorithms like LASSO-which is nearly minimax optimal-at the cost of significantly larger MSE for non-least-favorable distributions. As an alternative, we propose an empirical-Bayesian technique that simultaneously learns the signal distribution while MMSE-recovering the signal-according to the learned distribution-using AMP. In particular, we model the non-zero distribution as a Gaussian mixture and learn its parameters through expectation maximization, using AMP to implement the expectation step. Numerical experiments on a wide range of signal classes confirm the state-of-the-art performance of our approach, in both reconstruction error and runtime, in the high-dimensional regime, for most (but not all) sensing operators.

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Citations
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Journal ArticleDOI

AMP-Inspired Deep Networks for Sparse Linear Inverse Problems

TL;DR: This paper proposes two novel neural-network architectures that decouple prediction errors across layers in the same way that the approximate message passing (AMP) algorithms decouple them across iterations: through Onsager correction.
Journal ArticleDOI

Compressed Channel Estimation for Intelligent Reflecting Surface-Assisted Millimeter Wave Systems

TL;DR: Simulation results show that the proposed method can provide an accurate channel estimate and achieve a substantial training overhead reduction and the inherent sparsity in mmWave channels is exploited.
Journal ArticleDOI

Compressed Sensing for Energy-Efficient Wireless Telemonitoring of Noninvasive Fetal ECG Via Block Sparse Bayesian Learning

TL;DR: Experimental results show that the block sparse Bayesian learning framework, compared to other algorithms such as current CS algorithms and wavelet algorithms, can greatly reduce code execution in CPU in the data compression stage.
Journal ArticleDOI

Channel Estimation in Broadband Millimeter Wave MIMO Systems With Few-Bit ADCs

TL;DR: In this article, a broadband channel estimation algorithm for mmWave multiple input multiple output (MIMO) systems with few-bit analog-to-digital converters (ADCs) is proposed.
Proceedings ArticleDOI

Channel estimation in millimeter wave MIMO systems with one-bit quantization

TL;DR: A modified EM algorithm is proposed that exploits sparsity and has better performance than the conventional EM algorithm and is presented as a solution to the channel estimation problem for millimeter wave MIMO systems with one-bit analog-to-digital converters.
References
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Proceedings ArticleDOI

Universality in polytope phase transitions and iterative algorithms

TL;DR: The high-dimensional (large N) behavior of the iterates of F for polynomial functions F is studied, and it is proved that it is universal, i.e. it depends only on the first two moments of the entries of A.
Proceedings ArticleDOI

A generalized framework for learning and recovery of structured sparse signals

TL;DR: An object-oriented software paradigm for implementing the framework for recovering single- or multi-timestep sparse signals that can learn and exploit a variety of probabilistic forms of structure is described.