• DocumentCode
    1525252
  • Title

    Sparse Recovery From Combined Fusion Frame Measurements

  • Author

    Boufounos, Petros ; Kutyniok, Gitta ; Rauhut, Holger

  • Author_Institution
    Mitsubishi Electr. Res. Labs., Cambridge, MA, USA
  • Volume
    57
  • Issue
    6
  • fYear
    2011
  • fDate
    6/1/2011 12:00:00 AM
  • Firstpage
    3864
  • Lastpage
    3876
  • Abstract
    Sparse representations have emerged as a powerful tool in signal and information processing, culminated by the success of new acquisition and processing techniques such as compressed sensing (CS). Fusion frames are very rich new signal representation methods that use collections of subspaces instead of vectors to represent signals. This work combines these exciting fields to introduce a new sparsity model for fusion frames. Signals that are sparse under the new model can be compressively sampled and uniquely reconstructed in ways similar to sparse signals using standard CS. The combination provides a promising new set of mathematical tools and signal models useful in a variety of applications. With the new model, a sparse signal has energy in very few of the subspaces of the fusion frame, although it does not need to be sparse within each of the subspaces it occupies. This sparsity model is captured using a mixed l1/l2 norm for fusion frames. A signal sparse in a fusion frame can be sampled using very few random projections and exactly reconstructed using a convex optimization that minimizes this mixed l1/l2 norm. The provided sampling conditions generalize coherence and RIP conditions used in standard CS theory. It is demonstrated that they are sufficient to guarantee sparse recovery of any signal sparse in our model. More over, a probabilistic analysis is provided using a stochastic model on the sparse signal that shows that under very mild conditions the probability of recovery failure decays exponentially with in creasing dimension of the subspaces.
  • Keywords
    convex programming; probability; sensor fusion; signal detection; signal representation; signal sampling; stochastic processes; acquisition technique; combined fusion frame measurement; compressed sensing; convex optimization; information processing; mathematical tools; probabilistic analysis; sampling condition; signal model; signal processing; signal representation method; sparse recovery; sparse representation; sparse signal; stochastic model; Analytical models; Coherence; Minimization; Null space; Probabilistic logic; Sensors; Sparse matrices; $ell_1$-minimization; $ell_{1,2}$-minimization; Compressed sensing (CS); fusion frames; mutual coherence; random matrices; sparse recovery;
  • fLanguage
    English
  • Journal_Title
    Information Theory, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0018-9448
  • Type

    jour

  • DOI
    10.1109/TIT.2011.2143890
  • Filename
    5773047