Abstract—Compressive sensing is an emerging technol-ogy which can recover a sparse signal vector of dimension n via a much smaller number of measurements than n. However, the existing compressive sensing methods may still suffer from relatively high recovery complexity, such as O(n3), or can only work efficiently when the signal is super sparse, sometimes without deterministic performance guarantees. In this paper, we propose a compressive sensing scheme with deterministic performance guarantees using expander-graphs-based measurement matrices and show that the signal recovery can be achieved with complexity O(n) even if the number of nonzero elements k grows linearly with n. We also investigate compressive sensing for approximately sparse ...
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...
We investigate the problem of reconstructing a high-dimensional nonnegative sparse vector from lower...
Compressive sensing is an emerging technology which can recover a sparse signal vector of dimension ...
Abstract—Expander graphs have been recently proposed to construct efficient compressed sensing algor...
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—We investigate the problem of reconstructing a high-dimensional nonnegative sparse vector f...
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...
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...
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...
We investigate the problem of reconstructing a high-dimensional nonnegative sparse vector from lower...
Compressive sensing is an emerging technology which can recover a sparse signal vector of dimension ...
Abstract—Expander graphs have been recently proposed to construct efficient compressed sensing algor...
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—We investigate the problem of reconstructing a high-dimensional nonnegative sparse vector f...
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...
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...
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...
We investigate the problem of reconstructing a high-dimensional nonnegative sparse vector from lower...