In this paper, we address the problem of detection, in the frequency domain, of a M-dimensional time series modeled as the output of a M × K MIMO filter driven by a K-dimensional Gaussian white noise, and disturbed by an additive M-dimensional Gaussian colored noise. We consider the study of test statistics based of the Spectral Coherence Matrix (SCM) obtained as renormalization of the smoothed periodogram matrix of the observed time series over N samples, and with smoothing span B. To that purpose, we consider the asymptotic regime in which M, B, N all converge to infinity at certain specific rates, while K remains fixed. We prove that the SCM may be approximated in operator norm by a correlated Wishart matrix, for which Random Matrix Theo...
Random matrix serves as one of the key tools in understanding the eigen-structure of large dimension...
45 p. improved presentation; more proofs provided.International audienceThis paper introduces a unif...
Consider the empirical autocovariance matrix at a given non-zero time lag based on observations from...
In this paper, we address the problem of detection, in the frequency domain, of a M-dimensional time...
International audienceThis paper analyzes the detection of a M-dimensional useful signal modeled as ...
This paper analyzes the detection of a M-dimensional useful signal modeled as the output of a M × K ...
Sample auto-covariance matrix plays a crucial role in high dimensional times series analysis. In thi...
We investigate the asymptotic distribution of the maximum of a frequency smoothed estimate of the sp...
Correlation tests of multiple Gaussian signals are typically formulated as linear spectral statistic...
This paper is devoted to the estimation of the minimal dimension P of the state-space realizations o...
We consider linear spectral statistics built from the block-normalized correlation matrix of a set o...
This paper investigates the classical statistical signal processing problem of detecting a signal in...
International audienceThis paper is devoted to the problem of testing equality between the covarianc...
This article is concerned with the spectral behavior of $p$-dimensional linear processes in...
Testing the independence of the entries of multidimensional Gaussian observations is a very importan...
Random matrix serves as one of the key tools in understanding the eigen-structure of large dimension...
45 p. improved presentation; more proofs provided.International audienceThis paper introduces a unif...
Consider the empirical autocovariance matrix at a given non-zero time lag based on observations from...
In this paper, we address the problem of detection, in the frequency domain, of a M-dimensional time...
International audienceThis paper analyzes the detection of a M-dimensional useful signal modeled as ...
This paper analyzes the detection of a M-dimensional useful signal modeled as the output of a M × K ...
Sample auto-covariance matrix plays a crucial role in high dimensional times series analysis. In thi...
We investigate the asymptotic distribution of the maximum of a frequency smoothed estimate of the sp...
Correlation tests of multiple Gaussian signals are typically formulated as linear spectral statistic...
This paper is devoted to the estimation of the minimal dimension P of the state-space realizations o...
We consider linear spectral statistics built from the block-normalized correlation matrix of a set o...
This paper investigates the classical statistical signal processing problem of detecting a signal in...
International audienceThis paper is devoted to the problem of testing equality between the covarianc...
This article is concerned with the spectral behavior of $p$-dimensional linear processes in...
Testing the independence of the entries of multidimensional Gaussian observations is a very importan...
Random matrix serves as one of the key tools in understanding the eigen-structure of large dimension...
45 p. improved presentation; more proofs provided.International audienceThis paper introduces a unif...
Consider the empirical autocovariance matrix at a given non-zero time lag based on observations from...