Non-Gaussianity of signals/noise often results in significant performance degradation for systems, which are designed using the Gaussian assumption. So non-Gaussian signals/noise require a different modelling and processing approach. In this paper, we discuss a new Bayesian estimation technique for non-Gaussian signals corrupted by colored non Gaussian noise. The method is based on using zero mean finite Gaussian Mixture Models (GMMs) for signal and noise. The estimation is done using an adaptive non-causal nonlinear filtering technique. The method involves deriving an estimator in terms of the GMM parameters, which are in turn estimated using the EM algorithm. The proposed filter is of finite length and offers computational feasibility. Th...
In signal processing literature, noise's sources are often assumed to be Gaussian. However, in many ...
Gaussian mixtures are a common density representation in nonlinear, non-Gaussian Bayesian state esti...
A Bayesian filtering algorithm is developed for a class of state-space systems that can be modelled ...
Non-Gaussianity of signals/noise often results in significant performance degradation for systems, w...
In many real–life Bayesian estimation problems, it is appro-priate to consider non-Gaussian noise di...
The problem addressed in this paper is that of estimating signal and noise parameters from a mixture...
In many real-life Bayesian estimation problems, it is appropriate to consider non-Gaussian noise dis...
International audienceIn many real-life Bayesian estimation problems, it is appropriate to consider ...
© 2017 IEEEThe goal of this study is to use Gaussian process (GP) regression models to estimate the ...
A Bayesian approach to estimate parameters of signals embedded in complex Gaussian noise with unknow...
In signal processing literature, noise’s source are often assumed to be Gaussian. However, in many f...
Obtaining the best linear unbiased estimator (BLUE) of noisy signals is a traditional but powerful a...
A Bayesian approach to estimate parameters of signals embedded in complex Gaussian noise with unknow...
In this study, we investigate online Bayesian estimation of the measurement noise density of a given...
AbstractA new multi-target filtering algorithm, termed as the Gaussian sum probability hypothesis de...
In signal processing literature, noise's sources are often assumed to be Gaussian. However, in many ...
Gaussian mixtures are a common density representation in nonlinear, non-Gaussian Bayesian state esti...
A Bayesian filtering algorithm is developed for a class of state-space systems that can be modelled ...
Non-Gaussianity of signals/noise often results in significant performance degradation for systems, w...
In many real–life Bayesian estimation problems, it is appro-priate to consider non-Gaussian noise di...
The problem addressed in this paper is that of estimating signal and noise parameters from a mixture...
In many real-life Bayesian estimation problems, it is appropriate to consider non-Gaussian noise dis...
International audienceIn many real-life Bayesian estimation problems, it is appropriate to consider ...
© 2017 IEEEThe goal of this study is to use Gaussian process (GP) regression models to estimate the ...
A Bayesian approach to estimate parameters of signals embedded in complex Gaussian noise with unknow...
In signal processing literature, noise’s source are often assumed to be Gaussian. However, in many f...
Obtaining the best linear unbiased estimator (BLUE) of noisy signals is a traditional but powerful a...
A Bayesian approach to estimate parameters of signals embedded in complex Gaussian noise with unknow...
In this study, we investigate online Bayesian estimation of the measurement noise density of a given...
AbstractA new multi-target filtering algorithm, termed as the Gaussian sum probability hypothesis de...
In signal processing literature, noise's sources are often assumed to be Gaussian. However, in many ...
Gaussian mixtures are a common density representation in nonlinear, non-Gaussian Bayesian state esti...
A Bayesian filtering algorithm is developed for a class of state-space systems that can be modelled ...