Exploiting Statistical Dependencies in Sparse Representations for Signal Recovery

被引:93
|
作者
Peleg, Tomer [1 ]
Eldar, Yonina C. [1 ,2 ]
Elad, Michael [3 ]
机构
[1] Technion Israel Inst Technol, Dept Elect Engn, IL-32000 Haifa, Israel
[2] Stanford Univ, Stanford, CA 94305 USA
[3] Technion Israel Inst Technol, Dept Comp Sci, IL-32000 Haifa, Israel
基金
以色列科学基金会;
关键词
Bayesian estimation; Boltzmann machine (BM); decomposable model; denoising; greedy pursuit; image patches; maximum a posteriori (MAP); message passing; MRF; pseudo-likelihood; sequential subspace optimization (SESOP); signal synthesis; sparse representations; unitary dictionary; UNION;
D O I
10.1109/TSP.2012.2188520
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Signal modeling lies at the core of numerous signal and image processing applications. A recent approach that has drawn considerable attention is sparse representation modeling, in which the signal is assumed to be generated as a combination of a few atoms from a given dictionary. In this work we consider a Bayesian setting and go beyond the classic assumption of independence between the atoms. The main goal of this paper is to introduce a statistical model that takes such dependencies into account and show how this model can be used for sparse signal recovery. We follow the suggestion of two recent works and assume that the sparsity pattern is modeled by a Boltzmann machine, a commonly used graphical model. For general dependency models, exact MAP and MMSE estimation of the sparse representation becomes computationally complex. To simplify the computations, we propose greedy approximations of the MAP and MMSE estimators. We then consider a special case in which exact MAP is feasible, by assuming that the dictionary is unitary and the dependency model corresponds to a certain sparse graph. Exploiting this structure, we develop an efficient message passing algorithm that recovers the underlying signal. When the model parameters defining the underlying graph are unknown, we suggest an algorithm that learns these parameters directly from the data, leading to an iterative scheme for adaptive sparse signal recovery. The effectiveness of our approach is demonstrated on real-life signals-patches of natural images-where we compare the denoising performance to that of previous recovery methods that do not exploit the statistical dependencies.
引用
收藏
页码:2286 / 2303
页数:18
相关论文
共 50 条
  • [11] SPARSE GENOMIC STRUCTURAL VARIANT DETECTION: EXPLOITING PARENT-CHILD RELATEDNESS FOR SIGNAL RECOVERY
    Banuelos, Mario
    Almanza, Rubi
    Adhikari, Lasith
    Marcia, Roummel F.
    Sindi, Suzanne
    2016 IEEE STATISTICAL SIGNAL PROCESSING WORKSHOP (SSP), 2016,
  • [12] On uniqueness of sparse signal recovery
    Hu, Xiao-Li
    Wen, Jiajun
    Wong, Wai Keung
    Tong, Le
    Cui, Jinrong
    SIGNAL PROCESSING, 2018, 150 : 66 - 74
  • [13] Sparse signal recovery with unknown signal sparsity
    Wenhui Xiong
    Jin Cao
    Shaoqian Li
    EURASIP Journal on Advances in Signal Processing, 2014
  • [14] Sparse signal recovery with unknown signal sparsity
    Xiong, Wenhui
    Cao, Jin
    Li, Shaoqian
    EURASIP JOURNAL ON ADVANCES IN SIGNAL PROCESSING, 2014, : 1 - 8
  • [15] Improved statistical sparse decomposition principle method for underdetermined blind source signal recovery
    Chuanchuan W.
    Yonghu Z.
    Liandong W.
    Weihong F.
    J. China Univ. Post Telecom., 6 (94-102): : 94 - 102
  • [16] Improved statistical sparse decomposition principle method for underdetermined blind source signal recovery
    Wang Chuanchuan
    Zeng Yonghu
    Wang Liandong
    Fu Weihong
    The Journal of China Universities of Posts and Telecommunications, 2019, 26 (06) : 94 - 102
  • [17] Improved statistical sparse decomposition principle method for underdetermined blind source signal recovery
    Wang Chuanchuan
    Zeng Yonghu
    Wang Liandong
    Fu Weihong
    The Journal of China Universities of Posts and Telecommunications, 2019, (06) : 94 - 102
  • [18] Subgradient projection for sparse signal recovery with sparse noise
    Sun, Tao
    Zhang, Hui
    Cheng, Lizhi
    ELECTRONICS LETTERS, 2014, 50 (17) : 1200 - 1201
  • [19] BOOTSTRAPPED SPARSE BAYESIAN LEARNING FOR SPARSE SIGNAL RECOVERY
    Giri, Ritwik
    Rao, Bhaskar D.
    CONFERENCE RECORD OF THE 2014 FORTY-EIGHTH ASILOMAR CONFERENCE ON SIGNALS, SYSTEMS & COMPUTERS, 2014, : 1657 - 1661
  • [20] AUDIO SIGNAL REPRESENTATIONS FOR FACTORIZATION IN THE SPARSE DOMAIN
    Moussallam, Manuel
    Daudet, Laurent
    Richard, Gael
    2011 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH, AND SIGNAL PROCESSING, 2011, : 513 - 516