In this paper, we present modifications of the iterative hard thresholding (IHT) method for recovery of jointly row-sparse and low-rank matrices. In particular, a Riemannian version of IHT is considered which significantly reduces computational cost of the gradient projection in the case of rank-one measurement operators, which have concrete applications in blind deconvolution. Experimental results are reported that show near-optimal recovery for Gaussian and rank-one measurements, and that adaptive stepsizes give crucial improvement. A Riemannian proximal gradient method is derived for the special case of unknown sparsity
Recovering sparse vectors and low-rank matrices from noisy linear measurements has been the focus of...
It is well known that ℓ_1 minimization can be used to recover sufficiently sparse unknown signals fr...
International audienceLow-rank tensor recovery (LRTR), i.e., the recovery of tensors having low-rank...
In this paper, we present modifications of the iterative hard thresholding (IHT) method for recovery...
In this paper, we present modifications of the iterative hard thresholding (IHT) method for recovery...
We establish theoretical recovery guarantees of a family of Riemannian optimization algo-rithms for ...
In this paper, we present and analyze a new set of low-rank recovery algorithms for linear inverse p...
This thesis is concerned with a class of methods known collectively as iterative thresholding algori...
This paper establishes a sharp condition on the restricted isometry property (RIP) for both the spar...
We consider the problem of recovering an unknown low-rank matrix X with (possibly) non-orthogonal, e...
It is well known that ℓ_1 minimization can be used to recover sufficiently sparse unknown signals fr...
We present a new recovery analysis for a standard compressed sensing algorithm, Iterative Hard Thres...
We introduce an iterative algorithm designed to find row-sparse matrices X ∈ RN×K solution of an und...
It is well known that `1 minimization can be used to recover sufficiently sparse unknown signals fro...
A spectrally sparse signal of order $r$ is a mixture of $r$ damped or undamped complex sinu...
Recovering sparse vectors and low-rank matrices from noisy linear measurements has been the focus of...
It is well known that ℓ_1 minimization can be used to recover sufficiently sparse unknown signals fr...
International audienceLow-rank tensor recovery (LRTR), i.e., the recovery of tensors having low-rank...
In this paper, we present modifications of the iterative hard thresholding (IHT) method for recovery...
In this paper, we present modifications of the iterative hard thresholding (IHT) method for recovery...
We establish theoretical recovery guarantees of a family of Riemannian optimization algo-rithms for ...
In this paper, we present and analyze a new set of low-rank recovery algorithms for linear inverse p...
This thesis is concerned with a class of methods known collectively as iterative thresholding algori...
This paper establishes a sharp condition on the restricted isometry property (RIP) for both the spar...
We consider the problem of recovering an unknown low-rank matrix X with (possibly) non-orthogonal, e...
It is well known that ℓ_1 minimization can be used to recover sufficiently sparse unknown signals fr...
We present a new recovery analysis for a standard compressed sensing algorithm, Iterative Hard Thres...
We introduce an iterative algorithm designed to find row-sparse matrices X ∈ RN×K solution of an und...
It is well known that `1 minimization can be used to recover sufficiently sparse unknown signals fro...
A spectrally sparse signal of order $r$ is a mixture of $r$ damped or undamped complex sinu...
Recovering sparse vectors and low-rank matrices from noisy linear measurements has been the focus of...
It is well known that ℓ_1 minimization can be used to recover sufficiently sparse unknown signals fr...
International audienceLow-rank tensor recovery (LRTR), i.e., the recovery of tensors having low-rank...