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  • Rice University ELEC 301 Projects

    This module is included inLens: Rice University ELEC 301 Project Lens
    By: Rice University ELEC 301As a part of collection:"ECE 301 Projects Fall 2003"

    Click the "Rice University ELEC 301 Projects" link to see all content affiliated with them.

  • Rice University OCW

    This module is included inLens: Rice University OpenCourseWare
    By: OpenCourseWare ConsortiumAs a part of collection:"ECE 301 Projects Fall 2003"

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References and Thanks

Module by: Genaro Picazo

Summary: Our ELEC 301 Project for Fall 2003. By: Chris Omidiran, Genaro Picazo, Ian Wells, Daniel Wu

Acknowledgements

Special thanks to Richard Baraniuk and Joel Tropp for their generous assistance on the project.

References

  1. Tropp, Joel A. (2003). Greed Is Good: Algorithmic Results for Sparse Approximation.
  2. Tropp, J. A., Gilbert, A. C., Muthukrishnan, S., Strauss, M. J. (2003). Improved Sparse Approximation Over Quasi-Incoherent Dictionaries.
  3. Pati, Y. C, Rezaifer, R., Krishnaprased, P. S.,. (1993). Orthogonal Matching: Recursive Function Approximation with Application to Wavelet Decomposition, in Asiloman Configuration on Signals, Systems, and Computer.
  4. Skretting, K., Husoy, J. H. (2003). Partial Search Vector Selection for Sparse Signal Representation. Stavanger University.
  5. Seng, N.,. (2003). Adaptive Decomposition in Electromagnetics. St. John's College.

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