Abstract—Expander graphs have been recently proposed to construct efficient compressed sensing algorithms. In particular, it has been shown that any -dimensional vector that is -sparse can be fully recovered using measurements and only simple recovery iterations. In this paper, we improve upon this result by considering expander graphs with expansion coefficient beyond and show that, with the same number of measurements, only recovery iterations are required, which is a significant improvement when is large. In fact, full recovery can be accomplished by at most very simple iterations. The number of iterations can be reduced arbitrarily close to , and the recovery algorithm can be implemented very efficiently using a simple pri...
We revisit the asymptotic analysis of probabilistic construction of adjacency matrices of expander g...
We investigate the problem of reconstructing a high-dimensional nonnegative sparse vector from lower...
We investigate the problem of reconstructing a high-dimensional nonnegative sparse vector from lower...
Expander graphs have been recently proposed to construct efficient compressed sensing algorithms. In...
Expander graphs have been recently proposed to construct efficient compressed sensing algorithms. In...
Expander graphs have been recently proposed to construct efficient compressed sensing algorithms. In...
Expander graphs have been recently proposed to construct efficient compressed sensing algorithms. In...
Expander graphs have been recently proposed to construct efficient compressed sensing algorithms. In...
Expander graphs have been recently proposed to construct efficient compressed sensing algorithms. In...
Abstract—Compressive sensing is an emerging technol-ogy which can recover a sparse signal vector of ...
Compressive sensing is an emerging technology which can recover a sparse signal vector of dimension ...
This paper studies compressed sensing for the recovery of non-negative sparse vectors from a smaller...
This paper studies compressed sensing for the recovery of non-negative sparse vectors from a smaller...
This paper studies compressed sensing for the recovery of non-negative sparse vectors from a smaller...
Abstract—We investigate the problem of reconstructing a high-dimensional nonnegative sparse vector f...
We revisit the asymptotic analysis of probabilistic construction of adjacency matrices of expander g...
We investigate the problem of reconstructing a high-dimensional nonnegative sparse vector from lower...
We investigate the problem of reconstructing a high-dimensional nonnegative sparse vector from lower...
Expander graphs have been recently proposed to construct efficient compressed sensing algorithms. In...
Expander graphs have been recently proposed to construct efficient compressed sensing algorithms. In...
Expander graphs have been recently proposed to construct efficient compressed sensing algorithms. In...
Expander graphs have been recently proposed to construct efficient compressed sensing algorithms. In...
Expander graphs have been recently proposed to construct efficient compressed sensing algorithms. In...
Expander graphs have been recently proposed to construct efficient compressed sensing algorithms. In...
Abstract—Compressive sensing is an emerging technol-ogy which can recover a sparse signal vector of ...
Compressive sensing is an emerging technology which can recover a sparse signal vector of dimension ...
This paper studies compressed sensing for the recovery of non-negative sparse vectors from a smaller...
This paper studies compressed sensing for the recovery of non-negative sparse vectors from a smaller...
This paper studies compressed sensing for the recovery of non-negative sparse vectors from a smaller...
Abstract—We investigate the problem of reconstructing a high-dimensional nonnegative sparse vector f...
We revisit the asymptotic analysis of probabilistic construction of adjacency matrices of expander g...
We investigate the problem of reconstructing a high-dimensional nonnegative sparse vector from lower...
We investigate the problem of reconstructing a high-dimensional nonnegative sparse vector from lower...