In this contribution the Minimum Statistics noise power spectral density estimator [1] is revised for the particular case of highly correlated data which is observed for example when framewise processing with considerable frame overlap is performed. For this special case the noise power estimator tends to underesti-mate the noise power. We identify the variance estimator in the Minimum Statistics approach of being the origin of the observed underestimation. The variance estimator controls the bias com-pensation which is necessary to infer the mean power from a minimum value. This estimator turns out to be biased when the data is correlated. We provide an expression that describes the bias and show that by exploiting this the noise power est...
We propose a novel method for noise power spectrum estimation in speech enhancement. This method cal...
This thesis attempts to estimate the power spectral density of low frequency semiconductor noise ove...
The relative contribution by a noiselessly observed input signal to the power of a possibly disturbe...
Abstract. This contribution presents and analyses an algorithm for the enhancement of noisy speech s...
In this paper, we analyze the minimum mean square error (MMSE) based spectral noise power estimator ...
A well-known result states that, without noise, it is better to overestimate the support of a sparse...
International audienceA well-known result [1, Lemma 3.4] states that, without noise, it is better to...
We consider estimation of the common probability density f of i.i.d. random variables Xi that are ob...
Many compensation techniques, both in the model and feature domain, require an estimate of the noise...
The problem of estimating the power spectrum from noisy autocorrelation values is considered in this...
This paper presents a new method for estimating the nonstationary noise power spectral density given...
We revisit a recently introduced power spectrum estimation technique based on Gibbs sampling, with t...
A novel noise power spectral density (PSD) estimator for disturbed speech signals which operates in ...
Consider a signal s(t) in presence of an additive noise n(t) and suppose that another noise v(t), st...
For any quantitative data interpretation it is crucial to have information about the noise variances...
We propose a novel method for noise power spectrum estimation in speech enhancement. This method cal...
This thesis attempts to estimate the power spectral density of low frequency semiconductor noise ove...
The relative contribution by a noiselessly observed input signal to the power of a possibly disturbe...
Abstract. This contribution presents and analyses an algorithm for the enhancement of noisy speech s...
In this paper, we analyze the minimum mean square error (MMSE) based spectral noise power estimator ...
A well-known result states that, without noise, it is better to overestimate the support of a sparse...
International audienceA well-known result [1, Lemma 3.4] states that, without noise, it is better to...
We consider estimation of the common probability density f of i.i.d. random variables Xi that are ob...
Many compensation techniques, both in the model and feature domain, require an estimate of the noise...
The problem of estimating the power spectrum from noisy autocorrelation values is considered in this...
This paper presents a new method for estimating the nonstationary noise power spectral density given...
We revisit a recently introduced power spectrum estimation technique based on Gibbs sampling, with t...
A novel noise power spectral density (PSD) estimator for disturbed speech signals which operates in ...
Consider a signal s(t) in presence of an additive noise n(t) and suppose that another noise v(t), st...
For any quantitative data interpretation it is crucial to have information about the noise variances...
We propose a novel method for noise power spectrum estimation in speech enhancement. This method cal...
This thesis attempts to estimate the power spectral density of low frequency semiconductor noise ove...
The relative contribution by a noiselessly observed input signal to the power of a possibly disturbe...