This paper investigates the characterization ability of linear and nonlinear features and proposes combining such features in order to improve the classification of biological signals, in particular single-trial electroencephalogram (EEG) and electrocardiogram (ECG) data. For this purpose, three data sets composed of ECG, epileptic EEG and finger-movement EEG were utilized. The characterization ability of seven nonlinear features namely the approximate entropy, largest Lyapunov exponents, correlation dimension, nonlinear prediction error, Hurst exponent, higher order autocovariance and asymmetry due to time reversal are compared with two linear features namely the autoregressive (AR) reflection coefficients and AR model coefficients. The fe...
Abstract Background Epilepsy is a neurological disorder from which almost 50 million people have bee...
This paper develops a novel framework for feature extraction based on a combination of Linear Discri...
Epilepsy is a brain abnormality that leads its patients to suffer from seizures, which conditions th...
The use of both linear autoregressive model coefficients and nonlinear measures for classification o...
The use of both linear autoregressive model coefficients and nonlinear measures for classification o...
Machine Learning and Signal Processing have myriad applications in healthcare from automating the ad...
AbstractEpilepsy is a critical brain disorder which can be detected through the signals captured fro...
In this paper we study the effect of nonlinear preprocessing techniques in the classification of ele...
This article was developed with the particular interest of characterize and study EEG signals as a p...
Arrhythmia is a cardiac condition caused by abnormal electrical activity of the heart, and an electr...
Abstract- In this study, we analyze the characteristic of biological signals using nonlinear data an...
Electrocardiogram (ECG) signal analysis has received special attention of the researchers in the rec...
This paper illustrates different approaches to the analysis of biological signals based on non-linea...
A new approach based on the consideration that electroencephalogram (EEG) signals are chaotic signal...
The aim of this study is to obtain an automated medical diagnosis-support system about epilepsy by c...
Abstract Background Epilepsy is a neurological disorder from which almost 50 million people have bee...
This paper develops a novel framework for feature extraction based on a combination of Linear Discri...
Epilepsy is a brain abnormality that leads its patients to suffer from seizures, which conditions th...
The use of both linear autoregressive model coefficients and nonlinear measures for classification o...
The use of both linear autoregressive model coefficients and nonlinear measures for classification o...
Machine Learning and Signal Processing have myriad applications in healthcare from automating the ad...
AbstractEpilepsy is a critical brain disorder which can be detected through the signals captured fro...
In this paper we study the effect of nonlinear preprocessing techniques in the classification of ele...
This article was developed with the particular interest of characterize and study EEG signals as a p...
Arrhythmia is a cardiac condition caused by abnormal electrical activity of the heart, and an electr...
Abstract- In this study, we analyze the characteristic of biological signals using nonlinear data an...
Electrocardiogram (ECG) signal analysis has received special attention of the researchers in the rec...
This paper illustrates different approaches to the analysis of biological signals based on non-linea...
A new approach based on the consideration that electroencephalogram (EEG) signals are chaotic signal...
The aim of this study is to obtain an automated medical diagnosis-support system about epilepsy by c...
Abstract Background Epilepsy is a neurological disorder from which almost 50 million people have bee...
This paper develops a novel framework for feature extraction based on a combination of Linear Discri...
Epilepsy is a brain abnormality that leads its patients to suffer from seizures, which conditions th...