Traditional maximum entropy spectral estimation determines a power spectrum from covariance estimates. Here, we present a new approach to spectral estimation, which is based on the use of filter banks as a means of obtaining spectral interpolation data. Such data replaces standard covariance estimates. A computational procedure for obtaining suitable pole-zero (ARMA) models from such data is presented. The choice of the zeros (MA-part) of the model is completely arbitrary. By suitably choices of filterbank poles and spectral zeros, the estimator can be tuned to exhibit high resolution in targeted regions of the spectrum
The inclusion of adaptive methods in high-resolution spectral estimation algorithms is considered. T...
Several algorithms have been used in maximum entropy spectral analysis. Among them, the standard Bur...
On étudie la théorie et l'application pour plusieurs méthodes dans le domaine de l'estimation de la ...
Abstract—Structured covariances occurring in spectral analysis, filtering and identification need to...
Structured covariances occurring in spectral analysis, filtering and identification need to be estim...
Structured covariances occurring in spectral analysis, filtering and identification need to be estim...
A new spectral estimate, the maximum entropy method, is described. In the maximum entropy method, th...
ABSTRACT. In this paper a new method has been developed for estimating the power in maximum entropy ...
Spectral estimation can be defined as the art of recovering the frequency content in a measured sign...
The paper addresses the problem to estimate the power spectral density of an ARMA zero mean Gaussian...
We propose a robust interpolation algorithm for model-based spectral estimation. The interpolation d...
The inclusion of adaptive methods in high-resolution spectral estimation algorithms is considered. T...
The inclusion of adaptive methods in high-resolution spectral estimation algorithms is considered. T...
The inclusion of adaptive methods in high-resolution spectral estimation algorithms is considered. T...
Abstract—Subspace methods for spectral analysis can be adapted to the case where state covariance of...
The inclusion of adaptive methods in high-resolution spectral estimation algorithms is considered. T...
Several algorithms have been used in maximum entropy spectral analysis. Among them, the standard Bur...
On étudie la théorie et l'application pour plusieurs méthodes dans le domaine de l'estimation de la ...
Abstract—Structured covariances occurring in spectral analysis, filtering and identification need to...
Structured covariances occurring in spectral analysis, filtering and identification need to be estim...
Structured covariances occurring in spectral analysis, filtering and identification need to be estim...
A new spectral estimate, the maximum entropy method, is described. In the maximum entropy method, th...
ABSTRACT. In this paper a new method has been developed for estimating the power in maximum entropy ...
Spectral estimation can be defined as the art of recovering the frequency content in a measured sign...
The paper addresses the problem to estimate the power spectral density of an ARMA zero mean Gaussian...
We propose a robust interpolation algorithm for model-based spectral estimation. The interpolation d...
The inclusion of adaptive methods in high-resolution spectral estimation algorithms is considered. T...
The inclusion of adaptive methods in high-resolution spectral estimation algorithms is considered. T...
The inclusion of adaptive methods in high-resolution spectral estimation algorithms is considered. T...
Abstract—Subspace methods for spectral analysis can be adapted to the case where state covariance of...
The inclusion of adaptive methods in high-resolution spectral estimation algorithms is considered. T...
Several algorithms have been used in maximum entropy spectral analysis. Among them, the standard Bur...
On étudie la théorie et l'application pour plusieurs méthodes dans le domaine de l'estimation de la ...