Real-world data such as multimedia, biomedical, and telecommunication signals are formed of specific structures. However, these structures only determine some general properties of the data while the unknown or unpredictable parts are assumed to be random. This fact suggests that we can use stochastic models to explain real-world signals. Processes such as Gaussian white noise or Gaussian ARMA processes are well-known examples which are extensively used in modeling some components of the natural signals
This work is unique as it provides a uniform treatment of the Fourier theories of functions (Fourier...
International audienceThis work is unique as it provides a uniform treatment of the Fourier theories...
The field of compressive sensing deals with the recovery of a sparse signal from a small set of me...
AbstractA definition of white noise processes in strong sense, main properties of the noise, a chara...
We introduce a general distributional framework that results in a unifying description and character...
Abstract — We introduce a general distributional framework that results in a unifying description an...
Stochastic processes are probabilistic models of data streams such as speech, audio and video signal...
This thesis introduces a methodology for modeling stochastic signals that have either Gaussian or ap...
Random signals and noise are present in many engineering systems and networks. Signal processing tec...
We introduce a general distributional framework that results in a unifying description and character...
This book is an introduction to pattern theory, the theory behind the task of analyzing types of sig...
AbstractThe definition of a random periodic process, the main properties of the process, and a chara...
Pattern theory is a distinctive approach to the analysis of all forms of real-world signals. At its ...
The theory of sparse stochastic processes offers a broad class of statistical models to study signal...
This thesis examines the issues of modeling and estimation of space-time stochastic processes in the...
This work is unique as it provides a uniform treatment of the Fourier theories of functions (Fourier...
International audienceThis work is unique as it provides a uniform treatment of the Fourier theories...
The field of compressive sensing deals with the recovery of a sparse signal from a small set of me...
AbstractA definition of white noise processes in strong sense, main properties of the noise, a chara...
We introduce a general distributional framework that results in a unifying description and character...
Abstract — We introduce a general distributional framework that results in a unifying description an...
Stochastic processes are probabilistic models of data streams such as speech, audio and video signal...
This thesis introduces a methodology for modeling stochastic signals that have either Gaussian or ap...
Random signals and noise are present in many engineering systems and networks. Signal processing tec...
We introduce a general distributional framework that results in a unifying description and character...
This book is an introduction to pattern theory, the theory behind the task of analyzing types of sig...
AbstractThe definition of a random periodic process, the main properties of the process, and a chara...
Pattern theory is a distinctive approach to the analysis of all forms of real-world signals. At its ...
The theory of sparse stochastic processes offers a broad class of statistical models to study signal...
This thesis examines the issues of modeling and estimation of space-time stochastic processes in the...
This work is unique as it provides a uniform treatment of the Fourier theories of functions (Fourier...
International audienceThis work is unique as it provides a uniform treatment of the Fourier theories...
The field of compressive sensing deals with the recovery of a sparse signal from a small set of me...