An approximate sparse recovery system in $\ell_1$ norm consists of parameters $k$, $\epsilon$, $N$, an $m$-by-$N$ measurement $\Phi$, and a recovery algorithm, $\mathcal{R}$. Given a vector, $\mathbf{x}$, the system approximates $x$ by $\widehat{\mathbf{x}} = \mathcal{R}(\Phi\mathbf{x})$, which must satisfy $\|\widehat{\mathbf{x}}-\mathbf{x}\|_1 \leq (1+\epsilon)\|\mathbf{x}-\mathbf{x}_k\|_1$. We consider the 'for all' model, in which a single matrix $\Phi$, possibly 'constructed' non-explicitly using the probabilistic method, is used for all signals $\mathbf{x}$. The best existing sublinear algorithm by Porat and Strauss (SODA'12) uses $O(\epsilon^{-3} k\log(N/k))$ measurements and runs in time $O(k^{1-\alpha}N^\alpha)$ for any constant $\...
In this correspondence, we introduce a sparse approximation property of order s for a measurement ma...
International audienceWe discuss new methods for recovery of sparse signals which are based on l1 mi...
Compressive sensing is a method for recording a k-sparse signal x ∈ ℝ[superscript n] with (possibly ...
Abstract. An approximate sparse recovery system consists of parameters k,N, an m-by-N mea-surement m...
The purpose of this paper is to give a brief overview of the main results for sparse recovery via L ...
International audienceWe consider the problem of recovery of a sparse signal $x\in R^M$ from noisy o...
We initiate the study of trade-offs between sparsity and the number of measurements in sparse recove...
Recently, a series of exciting results have shown that it is possible to reconstruct a sparse signa...
In the problem of one-bit compressed sensing, the goal is to find a delta-close estimation of a k-sp...
In this correspondence, we introduce a sparse approximation property of order for a measurement matr...
It is well known in compressive sensing that l_1 minimization can recover the sparsest solution for ...
This paper develops a new method for recovering m-sparse signals that is simultaneously uniform and ...
We introduce a new class of measurement matrices for compressed sensing, using low order sum-maries ...
International audienceWe discuss two new methods of recovery of sparse signals from noisy observatio...
International audienceThe 1-norm was proven to be a good convex regularizer for the recovery of spar...
In this correspondence, we introduce a sparse approximation property of order s for a measurement ma...
International audienceWe discuss new methods for recovery of sparse signals which are based on l1 mi...
Compressive sensing is a method for recording a k-sparse signal x ∈ ℝ[superscript n] with (possibly ...
Abstract. An approximate sparse recovery system consists of parameters k,N, an m-by-N mea-surement m...
The purpose of this paper is to give a brief overview of the main results for sparse recovery via L ...
International audienceWe consider the problem of recovery of a sparse signal $x\in R^M$ from noisy o...
We initiate the study of trade-offs between sparsity and the number of measurements in sparse recove...
Recently, a series of exciting results have shown that it is possible to reconstruct a sparse signa...
In the problem of one-bit compressed sensing, the goal is to find a delta-close estimation of a k-sp...
In this correspondence, we introduce a sparse approximation property of order for a measurement matr...
It is well known in compressive sensing that l_1 minimization can recover the sparsest solution for ...
This paper develops a new method for recovering m-sparse signals that is simultaneously uniform and ...
We introduce a new class of measurement matrices for compressed sensing, using low order sum-maries ...
International audienceWe discuss two new methods of recovery of sparse signals from noisy observatio...
International audienceThe 1-norm was proven to be a good convex regularizer for the recovery of spar...
In this correspondence, we introduce a sparse approximation property of order s for a measurement ma...
International audienceWe discuss new methods for recovery of sparse signals which are based on l1 mi...
Compressive sensing is a method for recording a k-sparse signal x ∈ ℝ[superscript n] with (possibly ...