We examine statistical approaches to two significant areas of deconvolution - Blind Deconvolution (BD) and Robust Deconvolution (RD) for stochastic stationary signals. For BD, we review some major classical and new methods in a unified framework of nonGaussian signals. The first class of algorithms we look at falls into the class of Minimum Entropy Deconvolution (MED) algorithms. We discuss the similarities between them despite differences in origins and motivations. We give new theoretical results concerning the behaviour and generality of these algorithms and give evidence of scenarios where they may fail. In some cases, we present new modifications to the algorithms to overcome these shortfalls. Following our discussion on the M...
Recently, a new blind adaptive deconvolution algorithm was proposed based on a new closed-form appro...
This chapter contains sections titled: Introduction Difficulties of the Deconvolution Prob...
Abstract — The blind deconvolution of signals composed of statistically dependent samples is an impo...
[[abstract]]A performance analysis is proposed for Bernoulli-Gaussian processes distorted by a linea...
We consider the problem of denoising a function observed after a convolution with a random filter in...
We present results for the comparison of six deconvolution techniques. The methods we consider are b...
The need for reconstructing an unobserved and inaccessible stochastic process is widely encountered ...
Deconvolution is an important preprocessing procedure often needed in the spectral analysis of tra...
The need for reconstructing an unobserved and inaccessible stochastic process is widely encountered ...
[[abstract]]This paper considers the design of robust deconvolution filters for linear discrete time...
International audienceWe consider linear inverse problems in a nonparametric statistical framework. ...
In this paper, we consider the issue of devising a flexible nonlinear function for multichannel blin...
A new deconvolution methodology that uses Bayesian techniques is introduced. Our method is based on ...
In many numerical applications, for instance in image deconvolution, the nonnegativity of the comp...
. The deconvolution problem is addressed in stages beginning with the interpolation problem when lit...
Recently, a new blind adaptive deconvolution algorithm was proposed based on a new closed-form appro...
This chapter contains sections titled: Introduction Difficulties of the Deconvolution Prob...
Abstract — The blind deconvolution of signals composed of statistically dependent samples is an impo...
[[abstract]]A performance analysis is proposed for Bernoulli-Gaussian processes distorted by a linea...
We consider the problem of denoising a function observed after a convolution with a random filter in...
We present results for the comparison of six deconvolution techniques. The methods we consider are b...
The need for reconstructing an unobserved and inaccessible stochastic process is widely encountered ...
Deconvolution is an important preprocessing procedure often needed in the spectral analysis of tra...
The need for reconstructing an unobserved and inaccessible stochastic process is widely encountered ...
[[abstract]]This paper considers the design of robust deconvolution filters for linear discrete time...
International audienceWe consider linear inverse problems in a nonparametric statistical framework. ...
In this paper, we consider the issue of devising a flexible nonlinear function for multichannel blin...
A new deconvolution methodology that uses Bayesian techniques is introduced. Our method is based on ...
In many numerical applications, for instance in image deconvolution, the nonnegativity of the comp...
. The deconvolution problem is addressed in stages beginning with the interpolation problem when lit...
Recently, a new blind adaptive deconvolution algorithm was proposed based on a new closed-form appro...
This chapter contains sections titled: Introduction Difficulties of the Deconvolution Prob...
Abstract — The blind deconvolution of signals composed of statistically dependent samples is an impo...