Sparse recovery or compressed sensing is the problem of estimating a signal from noisy linear measurements of that signal. Sparse recovery has traditionally been used in areas like image acquisition, streaming algorithms, genetic testing, and, more recently, for image recovery tasks. Over the last decade many techniques have been developed for sparse recovery under various guarantees. We develop new lower bound techniques and show the tightness of existing results for the following variants of the sparse recovery problem: (i) adaptive sparse recovery, (ii) sparse recovery under high SNR, (iii) deterministic L2 heavy hitters, and, (iv) compressed sensing with generative models.Computer Science
Recovery of the sparsity pattern (or support) of an unknown sparse vector from a limited number of n...
The recently-proposed theory of distilled sensing establishes that adaptivity in sampling can dramat...
It is well known in compressive sensing that l_1 minimization can recover the sparsest solution for ...
Sparse recovery or compressed sensing is the problem of estimating a signal from noisy linear measur...
International audienceWe show that several classical quantities controlling compressed-sensing perfo...
It is now well understood that (1) it is possible to reconstruct sparse signals exactly from what ap...
In this paper, we analyze the information theoretic lower bound on the necessary number of samples n...
This paper considers constrained lscr1 minimization methods in a unified framework for the recovery ...
The two major approaches to sparse recovery are L_1-minimization and greedy methods. Recently, Neede...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/2...
This paper introduces a novel approach for recovering sparse signals using sorted L1/L2 minimization...
Compressed sensing has shown that it is possible to reconstruct sparse high dimensional signals from...
It is well known that ℓ_1 minimization can be used to recover sufficiently sparse unknown signals fr...
It is now well understood that (1) it is possible to reconstruct sparse signals exactly from what ap...
In compressed sensing, to recover a sparse signal or nearly sparse signal from noisy measurements, ...
Recovery of the sparsity pattern (or support) of an unknown sparse vector from a limited number of n...
The recently-proposed theory of distilled sensing establishes that adaptivity in sampling can dramat...
It is well known in compressive sensing that l_1 minimization can recover the sparsest solution for ...
Sparse recovery or compressed sensing is the problem of estimating a signal from noisy linear measur...
International audienceWe show that several classical quantities controlling compressed-sensing perfo...
It is now well understood that (1) it is possible to reconstruct sparse signals exactly from what ap...
In this paper, we analyze the information theoretic lower bound on the necessary number of samples n...
This paper considers constrained lscr1 minimization methods in a unified framework for the recovery ...
The two major approaches to sparse recovery are L_1-minimization and greedy methods. Recently, Neede...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/2...
This paper introduces a novel approach for recovering sparse signals using sorted L1/L2 minimization...
Compressed sensing has shown that it is possible to reconstruct sparse high dimensional signals from...
It is well known that ℓ_1 minimization can be used to recover sufficiently sparse unknown signals fr...
It is now well understood that (1) it is possible to reconstruct sparse signals exactly from what ap...
In compressed sensing, to recover a sparse signal or nearly sparse signal from noisy measurements, ...
Recovery of the sparsity pattern (or support) of an unknown sparse vector from a limited number of n...
The recently-proposed theory of distilled sensing establishes that adaptivity in sampling can dramat...
It is well known in compressive sensing that l_1 minimization can recover the sparsest solution for ...