This paper illustrates different approaches to the analysis of biological signals based on non-linear methods. The performance of such approaches, despite the greater methodological and computational complexity is, in many instances, more successful compared to linear approaches, in enhancing important parameters for both physiological studies and clinical protocols. The methods introduced employ median filters for pattern recognition, adaptive segmentation, data compression, prediction and data modelling as well as multivariate estimators in data clustering through median learning vector quantizers. Another approach described uses Wiener-Volterra kernel technique to obtain a satisfactory estimation and causality test among EEG recordings. ...
In the light of the results obtained during the last two decades in analysis of signals by time ...
In this paper comparison of the two innovative signal processing methods for analysis of both EEG an...
Machine Learning and Signal Processing have myriad applications in healthcare from automating the ad...
This paper illustrates different approaches to the analysis of biological signals based on non-linea...
Biosignals are physiological signals that are recorded from various parts of the body. Some of the m...
This paper is intended to give a broad overview of the complex area of biomedical and their use in s...
This thesis focuses on statistical methods for non-stationary signals. The methods considered or dev...
This thesis presents new nonlinear digital signal processing algorithms, multivariate nonlinear mode...
In the light of the results obtained during the last two decades in analysis of signals by time ser...
A new nonlinear filtering technique is presented allowing extraction of relevant biological signals ...
This paper presents the application of a novel algorithm on virtually generated data from patients d...
A method to perform time-varying (TV) nonlinear prediction of biomedical signals in the presence of ...
In this paper, a MATLAB-based graphical user interface (GUI) software tool for general biomedical si...
This paper investigates the characterization ability of linear and nonlinear features and proposes c...
Application of non-linear dynamics methods to the physiological sciences demonstrated that non-linea...
In the light of the results obtained during the last two decades in analysis of signals by time ...
In this paper comparison of the two innovative signal processing methods for analysis of both EEG an...
Machine Learning and Signal Processing have myriad applications in healthcare from automating the ad...
This paper illustrates different approaches to the analysis of biological signals based on non-linea...
Biosignals are physiological signals that are recorded from various parts of the body. Some of the m...
This paper is intended to give a broad overview of the complex area of biomedical and their use in s...
This thesis focuses on statistical methods for non-stationary signals. The methods considered or dev...
This thesis presents new nonlinear digital signal processing algorithms, multivariate nonlinear mode...
In the light of the results obtained during the last two decades in analysis of signals by time ser...
A new nonlinear filtering technique is presented allowing extraction of relevant biological signals ...
This paper presents the application of a novel algorithm on virtually generated data from patients d...
A method to perform time-varying (TV) nonlinear prediction of biomedical signals in the presence of ...
In this paper, a MATLAB-based graphical user interface (GUI) software tool for general biomedical si...
This paper investigates the characterization ability of linear and nonlinear features and proposes c...
Application of non-linear dynamics methods to the physiological sciences demonstrated that non-linea...
In the light of the results obtained during the last two decades in analysis of signals by time ...
In this paper comparison of the two innovative signal processing methods for analysis of both EEG an...
Machine Learning and Signal Processing have myriad applications in healthcare from automating the ad...