Multi-Task Compressive Sensing

@inproceedings{Ji2007MultiTaskCS,
  title={Multi-Task Compressive Sensing},
  author={Shihao Ji and David B. Dunson and Lawrence Carin},
  year={2007}
}
Compressive sensing (CS) is a framework whereby one performs n non-adaptive measurements to constitute an n-dimensional vector v, with v used to recover an m-dimensional approximation ^ u to a desired m-dimensional signal u, with n ? m; this is performed under the assumption that u is sparse in the basis represented by the matrix “, the columns of which define discrete basis vectors. It has been demonstrated that with appropriate design of the compressive measurements used to define v, the… CONTINUE READING

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