International audienceGiven the spectrogram of an unknown signal embedded in a Gaussian noise, the Minimal Statistics Maximum Likelihood (MiniSMaL) estimator of the noise time-varying power spectrum is presented and a method to tune one of its parameter is studied. The objective of the minimal statistics approach is to separate the signal of interest from the noise in order to estimate properly the probabilistic properties of the latter. Considering an initial time-frequency estimation neighborhood, the strategy relies on the selection of a minimal subset containing the timefrequency coefficients with the smallest values. Estimators of the noise are then sought from this minimal subset. In this work the case of a spectrogram constructed fro...
International audienceAn approach to the spectral estimation for some classes of non-stationary rand...
Time series modeling as the sum of a deterministic signal and an autoregressive (AR) process is stud...
We deal with the problem of mean square optimal estimation of linear functionals which depend on the...
International audienceGiven the spectrogram of an unknown signal embedded in a Gaussian noise, the M...
Abstract. This contribution presents and analyses an algorithm for the enhancement of noisy speech s...
International audienceWe present in this paper an estimation method of the parameters of a generaliz...
based on the spectral kurtosis of the minimal statistics: application to underwater nois
The concern of the studies reported in this manuscript is the localization of a signal in the time-f...
An asymptotic analysis is carried out for an approximate method of estimating the parameters of the ...
International audienceThis paper focuses on the spectral analysis of time series. The samples of the...
This paper considers continuous time estimation of non-random data corrupted by random noise. The st...
Journal PaperCurrent theories of a time-varying spectrum of a nonstationary process all involve, eit...
The bias-variance trade-off is an important issue is spectrum estimation. In 1982, Thomson introduce...
A new time-varying autoregressive modeling has been proposed as a tool for time-frequency analysis o...
AbstractThis paper considers continuous time estimation of non-random data corrupted by random noise...
International audienceAn approach to the spectral estimation for some classes of non-stationary rand...
Time series modeling as the sum of a deterministic signal and an autoregressive (AR) process is stud...
We deal with the problem of mean square optimal estimation of linear functionals which depend on the...
International audienceGiven the spectrogram of an unknown signal embedded in a Gaussian noise, the M...
Abstract. This contribution presents and analyses an algorithm for the enhancement of noisy speech s...
International audienceWe present in this paper an estimation method of the parameters of a generaliz...
based on the spectral kurtosis of the minimal statistics: application to underwater nois
The concern of the studies reported in this manuscript is the localization of a signal in the time-f...
An asymptotic analysis is carried out for an approximate method of estimating the parameters of the ...
International audienceThis paper focuses on the spectral analysis of time series. The samples of the...
This paper considers continuous time estimation of non-random data corrupted by random noise. The st...
Journal PaperCurrent theories of a time-varying spectrum of a nonstationary process all involve, eit...
The bias-variance trade-off is an important issue is spectrum estimation. In 1982, Thomson introduce...
A new time-varying autoregressive modeling has been proposed as a tool for time-frequency analysis o...
AbstractThis paper considers continuous time estimation of non-random data corrupted by random noise...
International audienceAn approach to the spectral estimation for some classes of non-stationary rand...
Time series modeling as the sum of a deterministic signal and an autoregressive (AR) process is stud...
We deal with the problem of mean square optimal estimation of linear functionals which depend on the...