MAP Support Detection for Greedy Sparse Signal Recovery Algorithms in Compressive Sensing

Type: Article

Publication Date: 2016-06-14

Citations: 47

DOI: https://doi.org/10.1109/tsp.2016.2580527

Abstract

A reliable support detection is essential for a greedy algorithm to reconstruct a sparse signal accurately from compressed and noisy measurements. This paper proposes a novel support detection method for greedy algorithms, which is referred to as "\textit{maximum a posteriori (MAP) support detection}". Unlike existing support detection methods that identify support indices with the largest correlation value in magnitude per iteration, the proposed method selects them with the largest likelihood ratios computed under the true and null support hypotheses by simultaneously exploiting the distributions of sensing matrix, sparse signal, and noise. Leveraging this technique, MAP-Matching Pursuit (MAP-MP) is first presented to show the advantages of exploiting the proposed support detection method, and a sufficient condition for perfect signal recovery is derived for the case when the sparse signal is binary. Subsequently, a set of iterative greedy algorithms, called MAP-generalized Orthogonal Matching Pursuit (MAP-gOMP), MAP-Compressive Sampling Matching Pursuit (MAP-CoSaMP), and MAP-Subspace Pursuit (MAP-SP) are presented to demonstrate the applicability of the proposed support detection method to existing greedy algorithms. From empirical results, it is shown that the proposed greedy algorithms with highly reliable support detection can be better, faster, and easier to implement than basis pursuit via linear programming.

Locations

  • IEEE Transactions on Signal Processing - View
  • arXiv (Cornell University) - View - PDF
  • DataCite API - View

Similar Works

Action Title Year Authors
+ Greedy Sparse Signal Recovery Algorithm Based on Bit-wise MAP detection 2019 Jeongmin Chae
Song Nam Hong
+ Fast Greedy Approaches for Compressive Sensing of Large-Scale Signals 2015 Sung-Hsien Hsieh
Chun-Shien Lu
Soo‐Chang Pei
+ Greedy Sparse Signal Recovery with Tree Pruning 2014 Jaeseok Lee
Suhyuk Kwon
Jun Won Choi
Byonghyo Shim
+ PDF Chat Oracle-Order Recovery Performance of Greedy Pursuits With Replacement Against General Perturbations 2013 Laming Chen
Yuantao Gu
+ Successful Recovery Performance Guarantees of Noisy SOMP 2021 Wei Zhang
Taejoon Kim
+ PDF Chat Generalized Orthogonal Matching Pursuit 2012 Jian Wang
Seokbeop Kwon
Byonghyo Shim
+ Greedy Subspace Pursuit for Joint Sparse Recovery 2016 Kyung Su Kim
Sae-Young Chung
+ Bayesian Approach with Extended Support Estimation for Sparse Regression 2019 Kyung-Su Kim
Sae-Young Chung
+ Successful Recovery Performance Guarantees of SOMP Under the L2-norm of Noise 2021 Wei Zhang
Taejoon Kim
+ Greedy Subspace Pursuit for Joint Sparse Recovery 2016 Kyung Su Kim
Sae-Young Chung
+ On the Noise Robustness of Simultaneous Orthogonal Matching Pursuit 2016 Jean‐François Determe
JĂ©rĂŽme Louveaux
Laurent Jacques
François Horlin
+ A Fast Non-Gaussian Bayesian Matching Pursuit Method for Sparse Reconstruction 2012 Mudassir Masood
Tareq Y. Al-Naffouri
+ A Fast Non-Gaussian Bayesian Matching Pursuit Method for Sparse Reconstruction 2012 Mudassir Masood
Tareq Y. Al-Naffouri
+ PDF Chat Sparse Signal Reconstruction via Iterative Support Detection 2010 Yilun Wang
Wotao Yin
+ PDF Chat A New Analysis for Support Recovery With Block Orthogonal Matching Pursuit 2018 Haifeng Li
Jinming Wen
+ Generalized Residual Ratio Thresholding 2019 Sreejith Kallummil
Sheetal Kalyani
+ PDF Chat Support Recovery With Orthogonal Matching Pursuit in the Presence of Noise 2015 Jian Wang
+ PDF Chat Greedy Algorithms for Hybrid Compressed Sensing 2020 Ching-Lun Tai
Sung-Hsien Hsieh
Chun-Shien Lu
+ Greedy Signal Recovery Review 2008 Deanna Needell
Joel A. Tropp
Roman Vershynin
+ Greedy Sparse Signal Reconstruction Using Matching Pursuit Based on Hope-tree 2017 Zhetao Li
Hongqing Zeng
Chengqing Li
Jun Fang