In this paper an effective unsupervised statistical identification technique for nonstationary nonlinear systems is presented. This technique extracts from the system outputs the multivariate relationships of the system natural modes, by means of the separation property of the Karhunen-Loève transform (KLT). Then, it applies a Self-Organizing Map (SOM) to the KLT output vectors in order to give an optimal representation of data. Finally, it exploits an optimized Expectation Maximization (EM) algorithm to find the optimal parameters of a Gaussian mixture model. The resulting statistical system identification is thus based on the estimation of the multivariate probability density function (PDF) of system outputs, whose convergence towards th...
This paper proposes an efficient methodology that is able to accurately recognize nondeterministic s...
Abstract —This contribution is devoted to the estimation of the parameters of multivariate Gaussian ...
International audienceThis contribution is devoted to the estimation of the parameters of multivaria...
In this paper an effective unsupervised statistical identification technique for nonstationary nonli...
This paper presents an effective blind statistical identification technique for nonstationary nonlin...
Cardiovascular diseases are one of the main causes of death around the world. Automatic classificati...
We present a novel nonparametric approach for identification of nonlinear systems. Exploiting the fr...
Gaussian process state-space models (GP-SSMs) are a very exible family of models of nonlinear dynami...
We address the problem of performing decision tasks and, in particular, classification and recogniti...
Abstract: Gaussian process state-space models (GP-SSMs) are a very flexible family of models of nonl...
A new signal classification approach is presented that is based upon modeling the dynamics of a syst...
System identification is of special interest in science and engineering. This article is concerned w...
State-space modeling provides a powerful tool for system identification and prediction. In linear sta...
This paper proposes an efficient methodology that is able to accurately recognize nondeterministic s...
Abstract —This contribution is devoted to the estimation of the parameters of multivariate Gaussian ...
International audienceThis contribution is devoted to the estimation of the parameters of multivaria...
In this paper an effective unsupervised statistical identification technique for nonstationary nonli...
This paper presents an effective blind statistical identification technique for nonstationary nonlin...
Cardiovascular diseases are one of the main causes of death around the world. Automatic classificati...
We present a novel nonparametric approach for identification of nonlinear systems. Exploiting the fr...
Gaussian process state-space models (GP-SSMs) are a very exible family of models of nonlinear dynami...
We address the problem of performing decision tasks and, in particular, classification and recogniti...
Abstract: Gaussian process state-space models (GP-SSMs) are a very flexible family of models of nonl...
A new signal classification approach is presented that is based upon modeling the dynamics of a syst...
System identification is of special interest in science and engineering. This article is concerned w...
State-space modeling provides a powerful tool for system identification and prediction. In linear sta...
This paper proposes an efficient methodology that is able to accurately recognize nondeterministic s...
Abstract —This contribution is devoted to the estimation of the parameters of multivariate Gaussian ...
International audienceThis contribution is devoted to the estimation of the parameters of multivaria...