In this work we consider one-dimensional blind deconvolution with prior knowledge of signal autocorrelations in the classical framework of polynomial factorization. In particular this univariate case highly suffers from several non-trivial ambiguities and therefore blind deconvolution is known to be ill-posed in general. However, if additional autocorrelation information is available and the corresponding polynomials are co-prime, blind deconvolution is uniquely solvable up to global phase. Using lifting, the outer product of the unknown vectors is the solution to a (convex) semi-definite program (SDP) demonstrating that -theoretically- recovery is computationally tractable. However, for practical applications efficient algorithms are requi...
We consider simultaneous blind deconvolution of r source signals from their noisy superposition, a p...
This thesis addresses the blind deconvolution problem in which the input sig-nals to a multi-input m...
Blind image deconvolution refers to the process of determining both an exact image and the blurring ...
In this work we consider one-dimensional blind deconvolution with prior knowledge of signal autocorr...
This note considers the problem of blind identification of a linear, time-invariant (LTI) system whe...
We study the question of reconstructing two signals $f$ and $g$ from their convolution $y =...
We consider the problem of recovering two unknown vectors, w and x, of length L from their circular ...
Abstract. This paper is devoted to blind deconvolution and blind separation problems. Blind deconvol...
We introduce a novel cascade demixing structure for multichannel blind deconvolution in nonminimum ...
We study the question of extracting a sequence of functions {fi,gi}si=1 from observing only the sum ...
This paper is focused on the solution of the blind deconvolution problem, here modeled as a separabl...
Abstract—In this paper, we present a new filter decomposition method for multichannel blind deconvol...
This paper describes a nonlinear least squares framework to solve a separable nonlinear ill-posed in...
In this paper we consider the classical problem of blind deconvolution of multiple signals from its ...
Recently the one-dimensional time-discrete blind deconvolution problem was shown to be solvable uniq...
We consider simultaneous blind deconvolution of r source signals from their noisy superposition, a p...
This thesis addresses the blind deconvolution problem in which the input sig-nals to a multi-input m...
Blind image deconvolution refers to the process of determining both an exact image and the blurring ...
In this work we consider one-dimensional blind deconvolution with prior knowledge of signal autocorr...
This note considers the problem of blind identification of a linear, time-invariant (LTI) system whe...
We study the question of reconstructing two signals $f$ and $g$ from their convolution $y =...
We consider the problem of recovering two unknown vectors, w and x, of length L from their circular ...
Abstract. This paper is devoted to blind deconvolution and blind separation problems. Blind deconvol...
We introduce a novel cascade demixing structure for multichannel blind deconvolution in nonminimum ...
We study the question of extracting a sequence of functions {fi,gi}si=1 from observing only the sum ...
This paper is focused on the solution of the blind deconvolution problem, here modeled as a separabl...
Abstract—In this paper, we present a new filter decomposition method for multichannel blind deconvol...
This paper describes a nonlinear least squares framework to solve a separable nonlinear ill-posed in...
In this paper we consider the classical problem of blind deconvolution of multiple signals from its ...
Recently the one-dimensional time-discrete blind deconvolution problem was shown to be solvable uniq...
We consider simultaneous blind deconvolution of r source signals from their noisy superposition, a p...
This thesis addresses the blind deconvolution problem in which the input sig-nals to a multi-input m...
Blind image deconvolution refers to the process of determining both an exact image and the blurring ...