Jesús Navarro-Moreno
University of Jaén
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Publication
Featured researches published by Jesús Navarro-Moreno.
IEEE Transactions on Signal Processing | 2008
Jesús Navarro-Moreno
A new autoregressive moving average (ARMA) predictor for widely linear systems is presented by using the innovations algorithm and under an improper treatment. The main characteristics of this predictor are its facility of implementation from a practical standpoint and a better performance with respect to the conventional predictor obtained from a proper processing.
IEEE Transactions on Signal Processing | 2009
Jesús Navarro-Moreno; Javier Moreno-Kayser; Rosa M. Fernández-Alcalá; Juan Carlos Ruiz-Molina
Recursive estimation algorithms for discrete complex-valued second-order stationary signals are derived following a widely linear processing approach. The formulation is very general in that it allows for a variety of estimation problems. The results are applied on a simulation example and a performance analysis is presented.
IEEE Signal Processing Letters | 2012
Jesús Navarro-Moreno; Rosa M. Fernández-Alcalá; Juan Carlos Ruiz-Molina
A series representation for continuous-time quaternion random signals is given. The series expansion is based on augmented statistics and provides uncorrelated scalar real-valued random variables. The proposed technique implies a dimension reduction of the four-dimensional original problem to a one-dimensional problem. As a particular case, the quaternion Karhunen-Loève expansion is obtained. Finally, two illustrative applications to the quaternion widely linear detection and estimation problems are presented.
IEEE Transactions on Information Theory | 2009
Jesús Navarro-Moreno; María Dolores Estudillo-Martínez; Rosa M. Fernández-Alcalá; Juan Carlos Ruiz-Molina
In this paper, the problem of estimating an improper complex-valued random signal in colored noise with an additive white part is addressed. We tackle the problem from a mathematical perspective and emphasize the advantages of this rigorous treatment. The formulation considered is very general in the sense that it permits us to estimate any functional of the signal of interest. Finally, the superiority of the widely linear estimation with respect to the conventional estimation techniques is both theoretically and experimentally illustrated.
IEEE Transactions on Information Theory | 2000
Jesús Navarro-Moreno; Juan Carlos Ruiz-Molina; Mariano J. Valderrama
An explicit and efficiently calculable solution is presented to the problem of linear least-mean-squared-error estimation of a signal process based upon noisy observations that is valid for finite intervals. This approach is based on approximate Karhunen-Loeve expansions of a stochastic process and can be extended to estimate a linear operation, in the sense of the quadratic mean, of the signal process.
IEEE Transactions on Signal Processing | 2014
Jesús Navarro-Moreno; Rosa M. Fernández-Alcalá; Juan Carlos Ruiz-Molina
This paper deals with the nonlinear minimum mean-squared error estimation problem by using a quaternion widely linear model. On the basis of the information supplied by a Gaussian signal and its square, a quaternion observation process is defined and then, by applying a widely linear processing, an optimal estimator for the continuous-time setting is provided. The special structure of the estimator proves its superiority over the complex-valued widely linear solution. The continuous-discrete version of the problem is also studied where the solution takes the form of a suboptimal estimator useful in practical applications. In addition, the particular case of signal plus noise is considered in which the suboptimal solution and its associated error can be implemented through an iterative algorithm. Two numerical simulation examples are presented showing the advantages of the proposed approach.
IEEE Transactions on Information Theory | 2001
Juan Carlos Ruiz-Molina; Jesús Navarro-Moreno; Antonia Oya
A new approach to the signal detection problem in continuous time is presented on the basis of approximate Karhunen-Loeve (K-L) expansions. This methodology gives approximate solutions to the problem of detecting either deterministic or Gaussian signals in Gaussian noise. Furthermore, for this last problem an approximate estimator-correlator representation is provided which approaches the optimum detection statistic.
Signal Processing | 2013
Jesús Navarro-Moreno; Rosa M. Fernández-Alcalá; Clive Cheong Took; Danilo P. Mandic
An efficient widely linear prediction algorithm is introduced for the class of wide-sense stationary quaternion signals. Specifically, using second order statistics information in the quaternion domain, a multivariate Durbin-Levison-like algorithm is derived. The proposed solution can be applied under a very general formulation of the problem, allowing for the estimation of a function of the quaternion signal which is observed through a system with both additive/multiplicative noises.
Signal Processing | 2012
Jesús Navarro-Moreno; Rosa M. Fernández-Alcalá; Juan Carlos Ruiz-Molina; José Manuel Quesada-Rubio
Suboptimal linear and nonlinear continuous-discrete filters for improper complex valued signals are given. The estimators are derived from a generalized improper Karhunen-Loeve expansion of the signal involved and take the form of recursive algorithms which can easily be implemented in practice. Two examples show that the technique is feasible.
IEEE Transactions on Signal Processing | 2005
Rosa M. Fernández-Alcalá; Jesús Navarro-Moreno; Juan Carlos Ruiz-Molina
Recursive algorithms are designed for the computation of the optimal linear filter and all types of predictors and smoothers of a signal vector corrupted by a white noise correlated with the signal. These algorithms are derived under both continuous and discrete time formulation of the problem. The only hypothesis imposed is that the correlation functions involved are factorizable kernels. The main contribution of this work with respect to previous studies lies in allowing correlation between the signal and the observation noise, which is useful in applications to feedback control and feedback communications. Moreover, recursive computational formulas are obtained for the error covariances associated with the above estimates.