The generalized entropies of Rényi inspire new measures for estimating signal information and complexity in the time-frequency plane. When applied to a time-frequency representation (TFR) from Cohen's class or the affine class, the Rényi entropies conform closely to the notion of complexity that we use when visually inspecting time-frequency images. These measures possess several additional interesting and useful properties, such as accounting and cross-component and transformation invariances, that make them natural for time-frequency analysis. This paper comprises a detailed study of the properties and several potential applications of the Rényi entropies, with emphasis on the mathematical foundations for quadratic TFRs. In particular, fo...
A key characteristic of a nonstationary signal, when analyzed in the time-frequency domain, is the s...
Rényi entropy is receiving an important attention as a data analysis tool in many practical applicat...
This presentation addresses a synthetic overview and comparison of the main and novel techniques rel...
The generalized entropies of Rényi inspire new measures for estimating signal information and comple...
Journal PaperThe generalized entropies of Renyi inspire new measures for estimating signal informati...
Conference PaperIn search of a nonparametric indicator of deterministic signal complexity, we link t...
Conference PaperMany functions have been proposed for estimating signal information content and comp...
The Renyi Entropy (ER) of a time-frequency distribution (TFD) has been used for estimating the signa...
The importance of Time-Frequency Distributions (TFDs) has been widely recognized in many fields afte...
This paper explores three groups of time–frequency distributions: the Cohen’s, affine, and reassigne...
The time-frequency Rényi entropy provides a measure of complexity of a nonstationary multicomponent ...
A key characteristic of a nonstationary signal, when analyzed in the time-frequency domain, is the s...
This invited paper - of a tutorial and review character - presents an overview of two classes of tim...
Identification of different specific signal components, produced by one or more sources, is a proble...
In the past twenty years, time-frequency distributions (TFDs) have become an indispensable tool for ...
A key characteristic of a nonstationary signal, when analyzed in the time-frequency domain, is the s...
Rényi entropy is receiving an important attention as a data analysis tool in many practical applicat...
This presentation addresses a synthetic overview and comparison of the main and novel techniques rel...
The generalized entropies of Rényi inspire new measures for estimating signal information and comple...
Journal PaperThe generalized entropies of Renyi inspire new measures for estimating signal informati...
Conference PaperIn search of a nonparametric indicator of deterministic signal complexity, we link t...
Conference PaperMany functions have been proposed for estimating signal information content and comp...
The Renyi Entropy (ER) of a time-frequency distribution (TFD) has been used for estimating the signa...
The importance of Time-Frequency Distributions (TFDs) has been widely recognized in many fields afte...
This paper explores three groups of time–frequency distributions: the Cohen’s, affine, and reassigne...
The time-frequency Rényi entropy provides a measure of complexity of a nonstationary multicomponent ...
A key characteristic of a nonstationary signal, when analyzed in the time-frequency domain, is the s...
This invited paper - of a tutorial and review character - presents an overview of two classes of tim...
Identification of different specific signal components, produced by one or more sources, is a proble...
In the past twenty years, time-frequency distributions (TFDs) have become an indispensable tool for ...
A key characteristic of a nonstationary signal, when analyzed in the time-frequency domain, is the s...
Rényi entropy is receiving an important attention as a data analysis tool in many practical applicat...
This presentation addresses a synthetic overview and comparison of the main and novel techniques rel...