Statistical self-similarity of random processes in continuous-domains is defined through invariance of their statistics to time or spatial scaling. In discrete-time, scaling by an arbitrary factor of signals can be accomplished through frequency warping, and statistical self-similarity is defined by the discrete-time continuous-dilation scaling operation. Unlike other self-similarity models mostly relying on characteristics of continuous self-similarity other than scaling, this model provides a way to express discrete-time statistical self-similarity using scaling of discrete-time signals. This dissertation studies the discrete-time self-similarity model based on the new scaling operation, and develops its properties, which reveals relation...
Self similarity has taken great interest in computer networks since modeling of Ethernet traffic via...
This work investigates the ability of the human visual system to discriminate self-similar Gaussian ...
This work is concerned with the analysis of self-similar stochastic pro-cesses, where statistical se...
Statistical self-similarity of random processes in continuous-domains is defined through invariance ...
This dissertation presents novel models for purely discrete-time self-similar processes and scale- i...
This thesis investigates the application of discrete-time statistically self-similar (DTSS) systems ...
An estimator of the self-similarity parameter for certain classes of random processes is presented. ...
In order to closely simulate the real network scenario thereby verify the effectiveness of protocol ...
Introduction A self-similar process is loosely defined as a stochastic process which generates a sa...
The purpose of this paper is to study the self-similar properties of discrete-time long memory proce...
URL des Documents de travail :http://ces.univ-paris1.fr/cesdp/CESFramDP2007.htmClassification JEL : ...
AbstractAn adaptive sampling scheme is presented for discrete representation of complex patterns in ...
The purpose of this paper is to study the self-similar properties of discrete-time long memory proce...
Introduction A stochastic process Y (t) is defined as self-similar with self-similarity parameter H...
Recent studies of real teletraffic data in modern computer networks have shown that teletraffic exhi...
Self similarity has taken great interest in computer networks since modeling of Ethernet traffic via...
This work investigates the ability of the human visual system to discriminate self-similar Gaussian ...
This work is concerned with the analysis of self-similar stochastic pro-cesses, where statistical se...
Statistical self-similarity of random processes in continuous-domains is defined through invariance ...
This dissertation presents novel models for purely discrete-time self-similar processes and scale- i...
This thesis investigates the application of discrete-time statistically self-similar (DTSS) systems ...
An estimator of the self-similarity parameter for certain classes of random processes is presented. ...
In order to closely simulate the real network scenario thereby verify the effectiveness of protocol ...
Introduction A self-similar process is loosely defined as a stochastic process which generates a sa...
The purpose of this paper is to study the self-similar properties of discrete-time long memory proce...
URL des Documents de travail :http://ces.univ-paris1.fr/cesdp/CESFramDP2007.htmClassification JEL : ...
AbstractAn adaptive sampling scheme is presented for discrete representation of complex patterns in ...
The purpose of this paper is to study the self-similar properties of discrete-time long memory proce...
Introduction A stochastic process Y (t) is defined as self-similar with self-similarity parameter H...
Recent studies of real teletraffic data in modern computer networks have shown that teletraffic exhi...
Self similarity has taken great interest in computer networks since modeling of Ethernet traffic via...
This work investigates the ability of the human visual system to discriminate self-similar Gaussian ...
This work is concerned with the analysis of self-similar stochastic pro-cesses, where statistical se...