Distributed Compressed Sensing Dror

@inproceedings{Baron2005DistributedCS,
  title={Distributed Compressed Sensing Dror},
  author={Dror Baron and Michael B. Wakin and Marco F. Duarte and Shriram Sarvotham and Richard G. Baraniuk},
  year={2005}
}
Compressed sensing is an emerging field based on the revelation that a small collection of linear projections of a sparse signal contains enough information for reconstruction. In this paper we introduce a new theory for distributed compressed sensing (DCS) that enables new distributed coding algorithms for multi-signal ensembles that exploit both intraand inter-signal correlation structures. The DCS theory rests on a new concept that we term the joint sparsity of a signal ensemble. We study in… CONTINUE READING

Similar Papers

Citations

Publications citing this paper.
SHOWING 1-10 OF 317 CITATIONS

Compressed Sensing in Multi-Signal Environments.

VIEW 7 EXCERPTS
CITES METHODS & BACKGROUND
HIGHLY INFLUENCED

A joint recovery algorithm for distributed compressed sensing

  • Trans. Emerging Telecommunications Technologies
  • 2012
VIEW 10 EXCERPTS
CITES BACKGROUND, RESULTS & METHODS
HIGHLY INFLUENCED

Classifiction for hyperspectral imagery based on nonlocal weighted joint sparsity model

  • 2012 4th Workshop on Hyperspectral Image and Signal Processing (WHISPERS)
  • 2012
VIEW 4 EXCERPTS
CITES METHODS
HIGHLY INFLUENCED

Compressed Anomaly Detection with Multiple Mixed Observations

VIEW 10 EXCERPTS
CITES METHODS
HIGHLY INFLUENCED

Inner–Outer Support Set Pursuit for Distributed Compressed Sensing

  • IEEE Transactions on Signal Processing
  • 2018
VIEW 5 EXCERPTS
CITES METHODS & BACKGROUND
HIGHLY INFLUENCED

Bayesian learning for the Type-3 joint sparse signal recovery

  • 2016 IEEE International Conference on Communications (ICC)
  • 2016
VIEW 11 EXCERPTS
CITES METHODS, RESULTS & BACKGROUND
HIGHLY INFLUENCED

Distributed compressive sensing of light field

  • Precision Engineering Measurements and Instrumentation
  • 2015
VIEW 4 EXCERPTS
CITES BACKGROUND & METHODS
HIGHLY INFLUENCED

On joint recovery of sparse signals with common supports

  • 2015 IEEE International Symposium on Information Theory (ISIT)
  • 2015
VIEW 14 EXCERPTS
CITES METHODS & BACKGROUND
HIGHLY INFLUENCED

FILTER CITATIONS BY YEAR

2005
2019

CITATION STATISTICS

  • 63 Highly Influenced Citations

  • Averaged 13 Citations per year from 2017 through 2019

References

Publications referenced by this paper.
SHOWING 1-10 OF 54 REFERENCES

Signal Reconstruction From Noisy Random Projections

  • IEEE Transactions on Information Theory
  • 2006
VIEW 5 EXCERPTS
HIGHLY INFLUENTIAL

Simultaneous sparse approximation via greedy pursuit

  • Proceedings. (ICASSP '05). IEEE International Conference on Acoustics, Speech, and Signal Processing, 2005.
  • 2005
VIEW 6 EXCERPTS
HIGHLY INFLUENTIAL

A Wavelet Tour of Signal Processing

VIEW 4 EXCERPTS
HIGHLY INFLUENTIAL

Compressed sensing

  • IEEE Transactions on Information Theory
  • 2006
VIEW 10 EXCERPTS
HIGHLY INFLUENTIAL

Near-Optimal Signal Recovery From Random Projections: Universal Encoding Strategies?

  • IEEE Transactions on Information Theory
  • 2006
VIEW 4 EXCERPTS
HIGHLY INFLUENTIAL