Inferring the presence of signal sources plays an important role in statistical signal processing and wireless communications networks. In particular, knowing the number of signal sources embedded in noise is of great interest in cognitive radio. We propose a new algorithm for estimating the number of dominant sources observed by multiple sensors in the presence of multipath and corrupted by additive Gaussian noise. Our method is based on the exact distribution of the eigenvalues of the sample covariance matrix for multivariate Gaussian variables. Numerical results show that the new method has excellent performance, and is particularly important for situations with small sample size
In this contribution, we provide a theoretical study of two hypothesis tests allowing to detect the ...
International audienceThis paper introduces a new method to estimate the power transmitted by multip...
Independent component analysis can estimate unknown source signals from their mixtures under the ass...
Inferring the presence of signal sources plays an important role in statistical signal processing an...
AbstractIn this paper, the authors propose procedures for detection of the number of signals in pres...
In this paper, the authors propose procedures for detection of the number of signals in presence of ...
An important problem in sensor array processing is the estimation of the number of transmitted signa...
We propose a simple algorithm for improving the MDL (minimum description length) estimator of the nu...
Abstract—Spectrum sensing, i.e., detecting the presence of pri-mary users in a licensed spectrum, is...
AbstractIn this paper, the authors proposed model selection methods for determination of the number ...
Abstract—Spectrum sensing is a fundamental component in a cognitive radio. In this paper, we propose...
In this paper we consider signal detection in cognitive radio networks, under a non-parametric, mult...
Abstract—In this article, a general information-plus-noise transmission model is assumed, the receiv...
abstract: The problem of detecting the presence of a known signal in multiple channels of additive w...
This thesis submitted in partial fulfillment of the requirements for the degree of Masters of Scienc...
In this contribution, we provide a theoretical study of two hypothesis tests allowing to detect the ...
International audienceThis paper introduces a new method to estimate the power transmitted by multip...
Independent component analysis can estimate unknown source signals from their mixtures under the ass...
Inferring the presence of signal sources plays an important role in statistical signal processing an...
AbstractIn this paper, the authors propose procedures for detection of the number of signals in pres...
In this paper, the authors propose procedures for detection of the number of signals in presence of ...
An important problem in sensor array processing is the estimation of the number of transmitted signa...
We propose a simple algorithm for improving the MDL (minimum description length) estimator of the nu...
Abstract—Spectrum sensing, i.e., detecting the presence of pri-mary users in a licensed spectrum, is...
AbstractIn this paper, the authors proposed model selection methods for determination of the number ...
Abstract—Spectrum sensing is a fundamental component in a cognitive radio. In this paper, we propose...
In this paper we consider signal detection in cognitive radio networks, under a non-parametric, mult...
Abstract—In this article, a general information-plus-noise transmission model is assumed, the receiv...
abstract: The problem of detecting the presence of a known signal in multiple channels of additive w...
This thesis submitted in partial fulfillment of the requirements for the degree of Masters of Scienc...
In this contribution, we provide a theoretical study of two hypothesis tests allowing to detect the ...
International audienceThis paper introduces a new method to estimate the power transmitted by multip...
Independent component analysis can estimate unknown source signals from their mixtures under the ass...