• DocumentCode
    24611
  • Title

    Recovery From Linear Measurements With Complexity-Matching Universal Signal Estimation

  • Author

    Junan Zhu ; Baron, Dror ; Duarte, Marco F.

  • Author_Institution
    Dept. of Electr. & Comput. Eng., North Carolina State Univ., Raleigh, NC, USA
  • Volume
    63
  • Issue
    6
  • fYear
    2015
  • fDate
    15-Mar-15
  • Firstpage
    1512
  • Lastpage
    1527
  • Abstract
    We study the compressed sensing (CS) signal estimation problem where an input signal is measured via a linear matrix multiplication under additive noise. While this setup usually assumes sparsity or compressibility in the input signal during recovery, the signal structure that can be leveraged is often not known a priori. In this paper, we consider universal CS recovery, where the statistics of a stationary ergodic signal source are estimated simultaneously with the signal itself. Inspired by Kolmogorov complexity and minimum description length, we focus on a maximum a posteriori (MAP) estimation framework that leverages universal priors to match the complexity of the source. Our framework can also be applied to general linear inverse problems where more measurements than in CS might be needed. We provide theoretical results that support the algorithmic feasibility of universal MAP estimation using a Markov chain Monte Carlo implementation, which is computationally challenging. We incorporate some techniques to accelerate the algorithm while providing comparable and in many cases better reconstruction quality than existing algorithms. Experimental results show the promise of universality in CS, particularly for low-complexity sources that do not exhibit standard sparsity or compressibility.
  • Keywords
    Markov processes; Monte Carlo methods; compressed sensing; inverse problems; matrix multiplication; maximum likelihood estimation; signal reconstruction; signal sources; Kolmogorov complexity; MAP estimation; Markov chain Monte Carlo implementation; additive noise; complexity-matching universal signal estimation problem; compressed sensing; general linear inverse problem; input signal measurement; input signal recovery; linear matrix multiplication; linear measurement recovery; low-complexity source; maximum a posteriori estimation; minimum description length; signal reconstruction; stationary ergodic signal source estimation; universal CS recovery; Complexity theory; Computational modeling; Entropy; Estimation; Noise; Noise measurement; Signal processing algorithms; Compressed sensing; MAP estimation; Markov chain Monte Carlo; universal algorithms;
  • fLanguage
    English
  • Journal_Title
    Signal Processing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1053-587X
  • Type

    jour

  • DOI
    10.1109/TSP.2015.2393845
  • Filename
    7012111