Abstract—This paper studies the problem of estimating the vector input to a sparse linear transformation based on the observation of the output vector through a bank of arbitrary independent channels. The linear transformation is drawn ran-domly from an ensemble with mild regularity conditions. The central result is a decoupling principle in the large-system limit. That is, the optimal estimation of each individual symbol in the input vector is asymptotically equivalent to estimating the same symbol through a scalar additive Gaussian channel, where the aggregate effect of the interfering symbols is tantamount to a degradation in the signal-to-noise ratio. The degradation is determined from a recursive formula related to the score function o...
Abstract — In this paper, we collect and discuss some of the recent theoretical results on channel i...
Consider a Bernoulli-Gaussian complex n-vector whose components are X iBi, with Bi ∼Bernoulli-q and ...
International audienceWe assume the direct sum A ⊕ B for the signal subspace. As a result of post-me...
Abstract — Blind deconvolution arises naturally when dealing with finite multipath interference on a...
Let X1,..., Xn be a collection of iid discrete random variables, and Y1,..., Ym a set of noisy obser...
Abstract—We apply Guo and Wang’s relaxed belief propaga-tion (BP) method to the estimation of a rand...
In this work we derive fundamental limits for many linear and non-linear sparse signal processing mo...
In this work we derive fundamental limits for many linear and non-linear sparse signal processing mo...
Deconvolution consists in recovering the unknown input of a system given noisy measurements of the o...
We consider the estimation of a signal from the knowledge of its noisy linear random Gaussian projec...
In this paper, we study the performance limits of recovering the support of a sparse signal based on...
Abstract—We consider the estimation of an i.i.d. random vector observed through a linear transform f...
We derive fundamental sample complexity bounds for recovering sparse and structured signals for line...
Abstract—Consider a Bernoulli-Gaussian complex n-vector whose components are XiBi, with Bi ∼Bernoull...
We consider the estimation of an independent and identically distributed (i.i.d.) (possibly non-Gaus...
Abstract — In this paper, we collect and discuss some of the recent theoretical results on channel i...
Consider a Bernoulli-Gaussian complex n-vector whose components are X iBi, with Bi ∼Bernoulli-q and ...
International audienceWe assume the direct sum A ⊕ B for the signal subspace. As a result of post-me...
Abstract — Blind deconvolution arises naturally when dealing with finite multipath interference on a...
Let X1,..., Xn be a collection of iid discrete random variables, and Y1,..., Ym a set of noisy obser...
Abstract—We apply Guo and Wang’s relaxed belief propaga-tion (BP) method to the estimation of a rand...
In this work we derive fundamental limits for many linear and non-linear sparse signal processing mo...
In this work we derive fundamental limits for many linear and non-linear sparse signal processing mo...
Deconvolution consists in recovering the unknown input of a system given noisy measurements of the o...
We consider the estimation of a signal from the knowledge of its noisy linear random Gaussian projec...
In this paper, we study the performance limits of recovering the support of a sparse signal based on...
Abstract—We consider the estimation of an i.i.d. random vector observed through a linear transform f...
We derive fundamental sample complexity bounds for recovering sparse and structured signals for line...
Abstract—Consider a Bernoulli-Gaussian complex n-vector whose components are XiBi, with Bi ∼Bernoull...
We consider the estimation of an independent and identically distributed (i.i.d.) (possibly non-Gaus...
Abstract — In this paper, we collect and discuss some of the recent theoretical results on channel i...
Consider a Bernoulli-Gaussian complex n-vector whose components are X iBi, with Bi ∼Bernoulli-q and ...
International audienceWe assume the direct sum A ⊕ B for the signal subspace. As a result of post-me...